GENE EXPRESSION PROFILING FOR IDENTIFICATION, MONITORING AND TREATMENT OF MELANOMA

Information

  • Patent Application
  • 20100248225
  • Publication Number
    20100248225
  • Date Filed
    November 06, 2007
    16 years ago
  • Date Published
    September 30, 2010
    13 years ago
Abstract
A method is provided in various embodiments for determining a profile data set for a subject with skin cancer or a condition related to skin cancer based on a sample from the subject, wherein the sample provides a source of RNAs. The method includes using amplification for measuring the amount of RNA corresponding to at least 1 constituent from Tables 1-6. The profile data set comprises the measure of each constituent, and amplification is performed under measurement conditions that are substantially repeatable.
Description
FIELD OF THE INVENTION

The present invention relates generally to the identification of biological markers associated with the identification of skin cancer. More specifically, the present invention relates to the use of gene expression data in the identification, monitoring and treatment of skin cancer and in the characterization and evaluation of conditions induced by or related to skin cancer.


BACKGROUND OF THE INVENTION

Skin cancer is the growth of abnormal cells capable of invading and destroying other associated skin cells. Skin cancer is the most common of all cancers, probably accounting for more than 50% of all cancers. Melanoma accounts for about 4% of skin cancer cases but causes a large majority of skin cancer deaths. The skin has three layers, the epidermis, dermis, and subcutis. The top layer is the epidermis. The two main types of skin cancer, non-melanoma carcinoma, and melanoma carcinoma, originate in the epidermis. Non-melanoma carcinomas are so named because they develop from skin cells other than melanocytes, usually basal cell carcinoma or a squamous cell carcinoma. Other types of non-melanoma skin cancers include Merkel cell carcinoma, dermatofibrosarcoma protuberans, Paget's disease, and cutaneous T-cell lymphoma. Melanomas develop from melanocytes, the skin cells responsible for making skin pigment called melanin. Melanoma carcinomas include superficial spreading melanoma, nodular melanoma, acral lentiginous melanoma, and lentigo maligna.


Basal cell carcinoma affects the skin's basal layer, the lowest layer of the epidermis. It is the most common type of skin cancer, accounting for more than 90 percent of all skin cancers in the United States. Basal cell carcinoma usually appears as a shiny translucent or pearly nodule, a sore that continuously heals and re-opens, or a waxy scar on the head, neck, arms, hands, and face. Occasionally, these nodules appear on the trunk of the body, usually as flat growths. Although this type of cancer rarely metastasizes, it can extend below the skin to the bone and cause considerable local damage. Squamous cell carcinoma is the second most common type of skin cancer. It is a malignant growth of the upper most layer of the epidermis and may appear as a crusted or scaly area of the skin with a red inflamed base that resemebes a growing tumor, non-healing ulcer, or crusted-over patch of skin. It is typically found on the rim of the ear, face, lips, and mouth but can spread to other parts of the body. Squamous cell carcinoma is generally more aggressive than basal cell carcinoma, and requires early treatment to prevent metastasis. Although the cure rate for both basal cell and squamous cell carcinoma is high when properly treated, both types of skin cancer increase the risk for developing melanomas.


Melanoma is a more serious type of cancer than the more common basal cell or squamous cell carcinoma. Because most malignant melanoma cells still produce melanin, melanoma tumors are often shaded brown or black, but can also have no pigment. Melanomas often appear on the body as a new mole. Other symptoms of melanoma include a change in the size, shape, or color of an existing mole, the spread of pigmentation beyond the border of a mole or mark, oozing or bleeding from a mole, and a mole that feels itchy, hard, lumpy, swollen, or tender to the touch.


Melanoma is treatable when detected in its early stages. However, it metastasizes quickly through the lymph system or blood to internal organs. Once melanoma metastasizes, it becomes extremely difficult to treat and is often fatal. Although the incidence of melanoma is lower than basal or squamous cell carcinoma, it has the highest death rate and is responsible for approximately 75% of all deaths from skin cancer in general.


Cumulative sun exposure, i.e., the amount of time spent unprotected in the sun is recognized as the leading cause of all types of skin cancer. Additional risk factors include blond or red hair, blue eyes, fair complexion, many freckles, severe sunburns as a child, family history of melanoma, dysplastic nevi (i.e., multiple atypical moles), multiple ordinary moles (>50), immune suppression, age, gender (increased frequency in men), xeroderma pigmentosum (a rare inherited condition resulting in a defect from an enzyme that repairs damage to DNA), and past history of skin cancer.


Treatment of skin cancer varies according to type, location, extent, and aggressiveness of the cancer and can include any one or combination of the following procedures: surgical excision of the cancerous skin lesion to reduce the chance of recurrence and preserve healthy skin tissue; chemotherapy (e.g., dacarbazine, sorafnib), and radiation therapy. Additionally, even when widespread, melanoma can spontaneously regress. These rare instances seem to be related to a patient's developing immunity to the melanoma. Thus, much research in treatment of melanoma has focused on ways to get patients' mmune system to react to their cancer, e.g., immunotherapy (e.g., Interleukin-2 (IL-2) and Interferon (IFN)), autologous vaccine therapy, adoptive T-Cell therapy, and gene therapy (used alone or in combination with surgicial procedures, chemotherapy, and/or radiation therapy).


Currently, the characterization of skin cancer, or conditions related to skin cancer is dependent on a person's ability to recognize the signs of skin cancer and perform regular self-examinations. An initial diagnosis is typically made from visual examination of the skin, a dermatoscopic exam, and patient feedback, and other questions about the patient's medical history. A definitive diagnosis of skin cancer and the stage of the disease's development can only be determined by a skin biopsy, i.e., removing a part of the lesion for microscopic examination of the cells, which causes the patient pain and discomfort. Metastatic melanomas can be detected by a variety of diagnostic procedures including X-rays, CT scans, MRIs, PET and PET/CTs, ultrasound, and LDH testing. However, once the cancer has metastasized, prognosis is very poor and can rapidly lead to death. Early detection of cancer, particularly melanoma, is crucial for a positive prognosis. Thus a need exists for better ways to diagnose and monitor the progression and treatment of skin cancer.


Additionally, information on any condition of a particular patient and a patient's response to types and dosages of therapeutic or nutritional agents has become an important issue in clinical medicine today not only from the aspect of efficiency of medical practice for the health care industry but for improved outcomes and benefits for the patients. Thus, there is the need for tests which can aid in the diagnosis and monitor the progression and treatment of skin cancer.


SUMMARY OF THE INVENTION

The invention is in based in part upon the identification of gene expression profiles (Precision Profiles™ ) associated with skin cancer. These genes are referred to herein as skin cancer associated genes or skin cancer associated constituents. More specifically, the invention is based upon the surprising discovery that detection of as few as one skin cancer associated gene in a subject derived sample is capable of identifying individuals with or without skin cancer with at least 75% accuracy. More particularly, the invention is based upon the surprising discovery that the methods provided by the invention are capable of detecting skin cancer by assaying blood samples.


In various aspects the invention provides methods of evaluating the presence or absence (e.g., diagnosing or prognosing) of skin cancer, based on a sample from the subject, the sample providing a source of RNAs, and determining a quantitative measure of the amount of at least one constituent of any constituent (e.g., skin cancer associated gene) of any of Tables 1, 2, 3, 4, 5, and 6 and arriving at a measure of each constituent.


Also provided are methods of assessing or monitoring the response to therapy in a subject having skin cancer, based on a sample from the subject, the sample providing a source of RNAs, determining a quantitative measure of the amount of at least one constituent of any constituent of Tables 1, 2, 3, 4, 5, 6 or 7, and arriving at a measure of each constituent. The therapy, for example, is immunotherapy. Preferably, one or more of the constituents listed in Table 7 is measured. For example, the response of a subject to immunotherapy is monitored by measuring the expression of TNFRSF10A, TMPRSS2, SPARC, ALOXS, PTPRC, PDGFA, PDGFB, BCL2, BAD, BAK1, BAG2, KIT, MUC1, ADAM17, CD19, CD4, CD40LG, CD86, CCR5, CTLA4, HSPA1A, IFNG, IL23A, PTGS2, TLR2, TGFB1, TNF, TNFRSF13B, TNFRSF10B, VEGF, MYC, AURKA , BAX, CDH1, CASP2, CD22, IGF1R, ITGA5, ITGAV, ITGB1, ITGB3, IL6R, JAK1, JAK2, JAK3, MAP3K1, PDGFRA, COX2, PSCA, THBS1, THBS2, TYMS, TLR1, TLR3, TLR6, TLR7, TLR9, TNFSF10, TNFSF13B, TNFRSF17, TP53, ABL1, ABL2, AKT1, KRAS , BRAF, RAF1, ERBB4, ERBB2, ERBB3, AKT2, EGFR, IL12 or IL15. The subject has received an immunotherapeutic drug such as anti CD19 Mab, rituximab, epratuzumab, lumiliximab, visilizumab (Nuvion), HuMax-CD38, zanolimumab, anti CD40 Mab, anti-CD40L, Mab, galiximab anti-CTLA-4 MAb, ipilimumab, ticilimumab, anti-SDF-1 MAb, panitumumab, nimotuzumab, pertuzumab, trastuzumab, catumaxomab, ertumaxomab, MDX-070, anti ICOS, anti IFNAR, AMG-479, anti-IGF-1R Ab, R1507, IMC-A12, antiangiogenesis MAb, CNTO-95, natalizumab (Tysabri), SM3, IPB-01, hPAM-4, PAM4, Imuteran, huBrE-3 tiuxetan, BrevaRex MAb, PDGFR MAb, IMC-3G3, GC-1008, CNTO-148 (Golimumab), CS-1008, belimumab, anti-BAFF MAb, or bevacizumab. Alternatively, the subject has received a placebo.


In a further aspect the invention provides methods of monitoring the progression of skin cancer in a subject, based on a sample from the subject, the sample providing a source of RNAs, by determining a quantitative measure of the amount of at least one constituent of any constituent of Tables 1, 2, 3, 4, 5, and 6 as a distinct RNA constituent in a sample obtained at a first period of time to produce a first subject data set and determining a quantitative measure of the amount of at least one constituent of any constituent of Tables 1, 2, 3, 4, 5, and 6 as a distinct RNA constituent in a sample obtained at a second period of time to produce a second subject data set. Optionally, the constituents measured in the first sample are the same constituents measured in the second sample. The first subject data set and the second subject data set are compared allowing the progression of skin cancer in a subject to be determined. The second subject is taken e.g., one day, one week, one month, two months, three months, 1 year, 2 years, or more after the first subject sample. Optionally the first subject sample is taken prior to the subject receiving treatment, e.g. chemotherapy, radiation therapy, or surgery and the second subject sample is taken after treatment.


In various aspects the invention provides a method for determining a profile data set, i.e., a skin cancer profile, for characterizing a subject with skin cancer or conditions related to skin cancer based on a sample from the subject, the sample providing a source of RNAs, by using amplification for measuring the amount of RNA in a panel of constituents including at least 1 constituent from any of Tables 1-6, and arriving at a measure of each constituent. The profile data set contains the measure of each constituent of the panel.


The methods of the invention further include comparing the quantitative measure of the constituent in the subject derived sample to a reference value or a baseline value, e.g. baseline data set. The reference value is for example an index value. Comparison of the subject measurements to a reference value allows for the present or absence of skin cancer to be determined, response to therapy to be monitored or the progression of skin cancer to be determined. For example, a similarity in the subject data set compares to a baseline data set derived form a subject having skin cancer indicates that presence of skin cancer or response to therapy that is not efficacious. Whereas a similarity in the subject data set compares to a baseline data set derived from a subject not having skin cancer indicates the absence of skin cancer or response to therapy that is efficacious. In various embodiments, the baseline data set is derived from one or more other samples from the same subject, taken when the subject is in a biological condition different from that in which the subject was at the time the first sample was taken, with respect to at least one of age, nutritional history, medical condition, clinical indicator, medication, physical activity, body mass, and environmental exposure, and the baseline profile data set may be derived from one or more other samples from one or more different subjects.


The baseline data set or reference values may be derived from one or more other samples from the same subject taken under circumstances different from those of the first sample, and the circumstances may be selected from the group consisting of (i) the time at which the first sample is taken (e.g., before, after, or during treatment cancer treatment), (ii) the site from which the first sample is taken, (iii) the biological condition of the subject when the first sample is taken.


The measure of the constituent is increased or decreased in the subject compared to the expression of the constituent in the reference, e.g., normal reference sample or baseline value. The measure is increased or decreased 10%, 25%, 50% compared to the reference level. Alternately, the measure is increased or decreased 1, 2, 5 or more fold compared to the reference level.


In various aspects of the invention the methods are carried out wherein the measurement conditions are substantially repeatable, particularly within a degree of repeatability of better than ten percent, five percent or more particularly within a degree of repeatability of better than three percent, and/or wherein efficiencies of amplification for all constituents are substantially similar, more particularly wherein the efficiency of amplification is within ten percent, more particularly wherein the efficiency of amplification for all constituents is within five percent, and still more particularly wherein the efficiency of amplification for all constituents is within three percent or less.


In addition, the one or more different subjects may have in common with the subject at least one of age group, gender, ethnicity, geographic location, nutritional history, medical condition, clinical indicator, medication, physical activity, body mass, and environmental exposure. A clinical indicator may be used to assess skin cancer or a condition related to skin cancer of the one or more different subjects, and may also include interpreting the calibrated profile data set in the context of at least one other clinical indicator, wherein the at least one other clinical indicator includes blood chemistry, X-ray or other radiological or metabolic imaging technique, molecular markers in the blood, other chemical assays, and physical findings.


At least 1, 2, 3, 4, 5, 6, 7, 8, 9, 10, 15, 20, 30 40, 50 or more constituents are measured. Preferably, BLVRB, MYC, RP51077B9.4, PLEK2, or PLXDC2 is measured. In one aspect, two constituents from Table 1 are measured. The first constituent is IRAK3 and the second constituent is PTEN.


In another aspect two constituents from Table 2 are measured. The first constituent is ADAM17, ALOX5, C1QA, CASP3, CCL5, CD4, CD8A, CXCR3, DPP4, EGR1, ELA2, GZMB, HMGB1, HSPA1A, ICAM1, IL18, IL18BP, mum IL1RN, M32, IL5, IRF1, LTA, MAPK14, MMP12, MMP9, MYC, PLAUR, or SERPINA1 and the second constituent is any other constituent from Table 2.


In a further aspect two constituents from Table 3 are measured. The first constituent is ABL1, ABL2, AKT1, ATM, BAD, BAX, BCL2, BRAF, BRCA1, CASP8, CCNE1, CDC25A, CDK2, CDK4, CDK5, CDKN1A, CDKN2A, CFLAR, E2F1, EGR1, ERBB2, GZMA, ICAM1, IFITM1, IFNG, IGFBP3, ITGA1, ITGA3, ITGB1, JUN, MMP9, or MYC, and the second constituent is any other constituent from Table 3.


In another aspect two constituents from Table 5 are measured. The first constituent is ACPP, ADAM17, ANLN, APC, AXIN2, BAX, BCAM, C1QA, C1QB, CA4, CASP3, CASP9, CAV1, CCL3, CCL5, CCR7, CD59, CD97, CDH1, CEACAM1, CNKSR2, CTNNA1, CTSD, CXCL1, DAD1, DIABLO, DLC1, E2F1, EGR1, ELA2, ESR1, ETS2, FOS, G6PD, GADD45A, GNB1, GSK3B, HMGA1, HMOX1, HOXA10, HSPA1A, IFI16, IGF2BP2, IGFBP3, IKBKE, IL8, ING2, IQGAP1, IRF1, ITGAL, LARGE, LGALS8, LTA, MAPK14, MEIS1, MLH1, MME, MMP9, MNDA, MSH2, MSH6, MTA1, MTF1, MYC, MYD88, NBEA, NCOA1, NEDD4L, NRAS, PLAU, PLEK2, PLXDC2, PTEN, PTGS2, PTPRC, PTPRK, RBM5, or RP51077B9.4 and the second constituent is any other constituent from Table 5.


In a further aspect two constituents from Table 6 are measured. The first constituent is ACOX1, BLVRB, C1QB, C20ORF108, CARD12, CNKSR2, CXCL16, F5, GLRX5, GYPA, GYPB, IGF2BP2, IL13RA1, IL1R2, IQGAP1, LARGE, MTA1, N4BP1, NBEA, NEDD4L, NEDD9, NOTCH2, NPTN, NUCKS1, PBX1, PGD, PLAUR, PLEK2, PLEKHQ1, PLXDC2, or PTPRK and the second constituent is any other constituent from Table 6.


Optionally, three constituents are measured from Table 4. The first constituent is BMI1, C1QB, CCR7, CDK6, CTNNB1, CXCR4, CYBA, DDEF1, E2F1, IQGAP1, IRAK3, ITGA4, MAPK1, MCAM, MDM2, MMP9, MNDA, NKIRAS2, PLAUR, PLEKHQ1, or PTEN, and the second constituent is CD34, CTNNB1, CXCR4, CYBA, IRAK3, ITGA4, MAPK1, MCAM, MDM2, MMP9, MNDA, NBN, NKIRAS2, PLAUR, PTEN, PTPRK, S100A4, or TNFSF13B. The third constituent is any other constituent selected from Table 4,


The constituents are selected so as to distinguish from a normal reference subject and a skin cancer-diagnosed subject. The skin cancer-diagnosed subject is diagnosed with different stages of cancer (i.e., stage 1, stage 2, stage 3 or stage 4), and active or inactive disease. Alternatively, the panel of constituents is selected as to permit characterizing the seventy of skin cancer in relation to a normal subject over time so as to track movement toward normal as a result of successful therapy and away from normal in response to cancer recurrence. Thus in some embodiments, the methods of the invention are used to determine efficacy of treatment of a particular subject.


Preferably, the constituents are selected so as to distinguish, e.g., classify between a normal and a skin cancer-diagnosed subject with at least 75%, 80%, 85%, 90%, 95%, 97%, 98%, 99% or greater accuracy. By “accuracy” is meant that the method has the ability to distinguish, e.g., classify, between subjects having skin cancer or conditions associated with skin cancer, and those that do not. Accuracy is determined for example by comparing the results of the Gene Precision Profiling™ to standard accepted clinical methods of diagnosing skin cancer, e.g., mammography, sonograms, and biopsy procedures. For example the combination of constituents are selected according to any of the models enumerated in Tables 1A, 2A, 3A, 4A, 5A or 6A.


In some embodiments, the methods of the present invention are used in conjunction with standard accepted clinical methods to diagnose skin cancer, e.g. visual examination of the skin, dermatoscopic exam, imaging techniques (including X-rays, CT scans, MRIs, PET and PET/CTs, ultrasound, and LDH testing), and biopsy.


By skin cancer or conditions related to skin cancer is meant a cancer is the growth of abnormal cells capable of invading and destroying other associated skin cells. Types of skin cancer include but are not limited to melanoma (e.g., non-melanotic melanoma, nodular melanoma, acral lentiginous melanoma, and lentigo maligna (active or inactive disease), and non-melanoma (e.g., basal cell carcinoma, squamous cell carcinoma, cutaneous T-cell lymphoma, Merkel cell carcinoma, dermatofibrosarcoma protuberans, and Paget's disease).


The sample is any sample derived from a subject which contains RNA. For example, the sample is blood, a blood fraction, body fluid, a population of cells or tissue from the subject, a breast cell, or a rare circulating tumor cell or circulating endothelial cell found in the blood.


Optionally one or more other samples can be taken over an interval of time that is at least one month between the first sample and the one or more other samples, or taken over an interval of time that is at least twelve months between the first sample and the one or more samples, or they may be taken pre-therapy intervention or post-therapy intervention. In such embodiments, the first sample may be derived from blood and the baseline profile data set may be derived from tissue or body fluid of the subject other than blood. Alternatively, the first sample is derived from tissue or bodily fluid of the subject and the baseline profile data set is derived from blood.


Also included in the invention are kits for the detection of skin cancer in a subject, containing at least one reagent for the detection or quantification of any constituent measured according to the methods of the invention and instructions for using the kit.


Unless otherwise defined, all technical and scientific terms used herein have the same meaning as commonly understood by one of ordinary skill in the art to which this invention belongs. Although methods and materials similar or equivalent to those described herein can be used in the practice or testing of the present invention, suitable methods and materials are described below. All publications, patent applications, patents, and other references mentioned herein are incorporated by reference in their entirety. In case of conflict, the present specification, including definitions, will control. In addition, the materials, methods, and examples are illustrative only and not intended to be limiting.


Other features and advantages of the invention will be apparent from the following detailed description and claims.





BRIEF DESCRIPTION OF THE DRAWINGS


FIG. 1 is a graphical representation of a 2-gene model for cancer based on disease-specific genes, capable of distinguishing between subjects afflicted with cancer and normal subjects with a discrimination line overlaid onto the graph as an example of the Index Function evaluated at a particular logit value. Values above and to the left of the line represent subjects predicted to be in the normal population. Values below and to the right of the line represent subjects predicted to be in the cancer population. ALOX5 values are plotted along the Y-axis, S100A6 values are plotted along the X-axis.



FIG. 2 is a graphical representation of a 3-gene model, IRAK3, MDM2, and PTEN, based on the Precision Profile™ for Melanoma (Table 1), capable of distinguishing between subjects afflicted with stage 1 melanoma (active and inactive disease) and normal subjects, with a discrimination line overlaid onto the graph as an example of the Index Function evaluated at a particular logit value. Values above and to the left of the line represent subjects predicted to be in the normal population. Values below and to the right of the line represent subjects predicted to be in the stage 1 melanoma population (active and inactive disease). IRAK3 and MDM2 values are plotted along the Y-axis, PTEN values are plotted along the X-axis.



FIG. 3 is a graphical representation of the Z-statistic values for each gene shown in Table 1B. A negative Z statistic means up-regulation of gene expression in stage 1 melanoma (active and inactive disease) vs. normal patients; a positive Z statistic means down-regulation of gene expression in stage 1 melanoma (active and inactive disease) vs. normal patients.



FIG. 4 is a graphical representation of a 2-gene model, LTA and MYC, based on the Precision Profile™ for Inflammatory Response (Table 2), capable of distinguishing between subjects afflicted with active melanoma (all stages) and normal subjects, with a discrimination line overlaid onto the graph as an example of the Index Function evaluated at a particular logit value. Values above and to the left of the line represent subjects predicted to be in the normal population. Values below and to the right of the line represent subjects predicted to be in the active melanoma population (all stages). LTA values are plotted along the Y-axis, MYC values are plotted along the X-axis.



FIG. 5 is a graphical representation of a melanoma index based on the 2-gene logistic regression model, LTA and MYC, capable of distinguishing between normal, healthy subjects and subjects suffering from active melanoma (all stages).



FIG. 6 is a graphical representation of a 2-gene model, CDK2 and MYC, based on the Human Cancer General Precision Profile™ (Table 3), capable of distinguishing between subjects afflicted with active melanoma (stages 2-4) and normal subjects, with a discrimination line overlaid onto the graph as an example of the Index Function evaluated at a particular logit value. Values above and to the left of the line represent subjects predicted to be in the normal population. Values below and to the right of the line represent subjects predicted to be in the active melanoma population (stages 2-4). CDK2 values are plotted along the Y-axis, MYC values are plotted along the X-axis.



FIG. 7 is a graphical representation of a 2-gene model, RP51077B9.4 and TEGT, based on the Cross-Cancer Precision Profile™ (Table 5), capable of distinguishing between subjects afflicted with active melanoma (stages 2-4) and normal subjects, with a discrimination line overlaid onto the graph as an example of the Index Function evaluated at a particular logit value. Values above the line represent subjects predicted to be in the normal population. Values below the line represent subjects predicted to be in the active melanoma population (stages 2-4). RP51077B9.4 values are plotted along the Y-axis, TEGT values are plotted along the X-axis.



FIG. 8 is a graphical representation of a 2-gene model, C1QB and PLEK2, based on the Melanoma Microarray Precision Profile™ (Table 6), capable of distinguishing between subjects afflicted with active melanoma (all stages) and normal subjects, with a discrimination line overlaid onto the graph as an example of the Index Function evaluated at a particular logit value. Values above and to the right of the line represent subjects predicted to be in the normal population. Values below and to the left of the line represent subjects predicted to be in the active melanoma population (all stages). C1QB values are plotted along the Y-axis, PLEK2 values are plotted along the X-axis.





DETAILED DESCRIPTION

Definitions


The following terms shall have the meanings indicated unless the context otherwise requires:


“Accuracy” refers to the degree of conformity of a measured or calculated quantity (a test reported value) to its actual (or true) value. Clinical accuracy relates to the proportion of true outcomes (true positives (TP) or true negatives (TN)) versus misclassified outcomes (false positives (FP) or false negatives (FN)), and may be stated as a sensitivity, specificity, positive predictive values (PPV) or negative predictive values (NPV), or as a likelihood, odds ratio, among other measures.


“Algorithm” is a set of rules for describing a biological condition. The rule set may be defined exclusively algebraically but may also include alternative or multiple decision points requiring domain-specific knowledge, expert interpretation or other clinical indicators.


An “agent” is a “composition” or a “stimulus”, as those terms are defined herein, or a combination of a composition and a stimulus.


“Amplification” in the context of a quantitative RT-PCR assay is a function of the number of DNA replications that are required to provide a quantitative determination of its concentration. “Amplification” here refers to a degree of sensitivity and specificity of a quantitative assay technique. Accordingly, amplification provides a measurement of concentrations of constituents that is evaluated under conditions wherein the efficiency of amplification and therefore the degree of sensitivity and reproducibility for measuring all constituents is substantially similar.


A “baseline profile data set” is a set of values associated with constituents of a Gene Expression Panel (Precision Profile™) resulting from evaluation of a biological sample (or population or set of samples) under a desired biological condition that is used for mathematically normative purposes. The desired biological condition may be, for example, the condition of a subject (or population or set of subjects) before exposure to an agent or in the presence of an untreated disease or in the absence of a disease. Alternatively, or in addition, the desired biological condition may be health of a subject or a population or set of subjects. Alternatively, or in addition, the desired biological condition may be that associated with a population or set of subjects selected on the basis of at least one of age group, gender, ethnicity, geographic location, nutritional history, medical condition, clinical indicator, medication, physical activity, body mass, and environmental exposure.


A “biological condition” of a subject is the condition of the subject in a pertinent realm that is under observation, and such realm may include any aspect of the subject capable of being monitored for change in condition, such as health; disease including cancer; trauma; aging; infection; tissue degeneration; developmental steps; physical fitness; obesity, and mood. As can be seen, a condition in this context may be chronic or acute or simply transient. Moreover, a targeted biological condition may be manifest throughout the organism or population of cells or may be restricted to a specific organ (such as skin, heart, eye or blood), but in either case, the condition may be monitored directly by a sample of the affected population of cells or indirectly by a sample derived elsewhere from the subject. The term “biological condition” includes a “physiological condition”.


“Body fluid” of a subject includes blood, urine, spinal fluid, lymph, mucosal secretions, prostatic fluid, semen, haemolymph or any other body fluid known in the art for a subject.


“Calibrated profile data set” is a function of a member of a first profile data set and a corresponding member of a baseline profile data set for a given constituent in a panel.


A “circulating endothelial cell” (“CEC”) is an endothelial cell from the inner wall of blood vessels which sheds into the bloodstream under certain circumstances, including inflammation, and contributes to the formation of new vasculature associated with cancer pathogenesis. CECs may be useful as a marker of tumor progression and/or response to antiangiogenic therapy.


A “circulating tumor cell” (“CTC”) is a tumor cell of epithelial origin which is shed from the primary tumor upon metastasis, and enters the circulation. The number of circulating tumor cells in peripheral blood is associated with prognosis in patients with metastatic cancer. These cells can be separated and quantified using immunologic methods that detect epithelial cells.


A “clinical indicator” is any physiological datum used alone or in conjunction with other data in evaluating the physiological condition of a collection of cells or of an organism. This term includes pre-clinical indicators.


“Clinical parameters” encompasses all non-sample or non-Precision Profiles™ of a subject's health status or other characteristics, such as, without limitation, age (AGE), ethnicity (RACE), gender (SEX), and family history of cancer.


A “composition” includes a chemical compound, a nutraceutical, a pharmaceutical, a homeopathic formulation, an allopathic formulation, a naturopathic formulation, a combination of compounds, a toxin, a food, a food supplement, a mineral, and a complex mixture of substances, in any physical state or in a combination of physical states.


To “derive” a profile data set from a sample includes determining a set of values associated with constituents of a Gene Expression Panel (Precision Profile™) either (i) by direct measurement of such constituents in a biological sample.


“Distinct RNA or protein constituent” in a panel of constituents is a distinct expressed product of a gene, whether RNA or protein. An “expression” product of a gene includes the gene product whether RNA or protein resulting from translation of the messenger RNA.


“FN” is false negative, which for a disease state test means classifying a disease subject incorrectly as non-disease or normal.


“FP” is false positive, which for a disease state test means classifying a normal subject incorrectly as having disease.


A “formula,” “algorithm,” or “model” is any mathematical equation, algorithmic, analytical or programmed process, statistical technique, or comparison, that takes one or more continuous or categorical inputs (herein called “parameters”) and calculates an output value, sometimes referred to as an “index” or “index value.” Non-limiting examples of “formulas” include comparisons to reference values or profiles, sums, ratios, and regression operators, such as coefficients or exponents, value transformations and normalizations (including, without limitation, those normalization schemes based on clinical parameters, such as gender, age, or ethnicity), rules and guidelines, statistical classification models, and neural networks trained on historical populations. Of particular use in combining constituents of a Gene Expression Panel (Precision Profile™) are linear and non-linear equations and statistical significance and classification analyses to determine the relationship between levels of constituents of a Gene Expression Panel (Precision Profile™) detected in a subject sample and the subject's risk of skin cancer. In panel and combination construction, of particular interest are structural and synactic statistical classification algorithms, and methods of risk index construction, utilizing pattern recognition features, including, without limitation, such established techniques such as cross-correlation, Principal Components Analysis (PCA), factor rotation, Logistic Regression Analysis (LogReg), Kolmogorov Smirnoff tests (KS), Linear Discriminant Analysis (LDA), Eigengene Linear Discriminant Analysis (ELDA), Support Vector Machines (SVM), Random Forest (RF), Recursive Partitioning Tree (RPART), as well as other related decision tree classification techniques (CART, LART, LARTree, FlexTree, amongst others), Shrunken Centroids (SC), StepAIC, K-means, Kth-Nearest Neighbor, Boosting, Decision Trees, Neural Networks, Bayesian Networks, Support Vector Machines, and Hidden Markov Models, among others. Other techniques may be used in survival and time to event hazard analysis, including Cox, Weibull, Kaplan-Meier and Greenwood models well known to those of skill in the art. Many of these techniques are useful either combined with a consituentes of a Gene Expression Panel (Precision Profile™) selection technique, such as forward selection, backwards selection, or stepwise selection, complete enumeration of all potential panels of a given size, genetic algorithms, voting and committee methods, or they may themselves include biomarker selection methodologies in their own technique. These may be coupled with information criteria, such as Akaike's Information Criterion (AIC) or Bayes Information Criterion (BIC), in order to quantify the tradeoff between additional biomarkers and model improvement, and to aid in minimizing overfit. The resulting predictive models may be validated in other clinical studies, or cross-validated within the study they were originally trained in, using such techniques as Bootstrap, Leave-One-Out (LOO) and 10-Fold cross-validation (10-Fold CV). At various steps, false discovery rates (FDR) may be estimated by value permutation according to techniques known in the art.


A “Gene Expression Panel” (Precision Profile™) is an experimentally verified set of constituents, each constituent being a distinct expressed product of a gene, whether RNA or protein, wherein constituents of the set are selected so that their measurement provides a measurement of a targeted biological condition.


A “Gene Expression Profile” is a set of values associated with constituents of a Gene Expression Panel (Precision Profile™) resulting from evaluation of a biological sample (or population or set of samples).


A “Gene Expression Profile Inflammation Index” is the value of an index function that provides a mapping from an instance of a Gene Expression Profile into a single-valued measure of inflammatory condition.


A Gene Expression Profile Cancer Index” is the value of an index function that provides a mapping from an instance of a Gene Expression Profile into a single-valued measure of a cancerous condition.


The “health” of a subject includes mental, emotional, physical, spiritual, allopathic, naturopathic and homeopathic condition of the subject.


“Index” is an arithmetically or mathematically derived numerical characteristic developed for aid in simplifying or disclosing or informing the analysis of more complex quantitative information. A disease or population index may be determined by the application of a specific algorithm to a plurality of subjects or samples with a common biological condition.


“Inflammation” is used herein in the general medical sense of the word and may be an acute or chronic; simple or suppurative; localized or disseminated; cellular and tissue response initiated or sustained by any number of chemical, physical or biological agents or combination of agents.


“Inflammatory state” is used to indicate the relative biological condition of a subject resulting from inflammation, or characterizing the degree of inflammation.


A “large number” of data sets based on a common panel of genes is a number of data sets sufficiently large to permit a statistically significant conclusion to be drawn with respect to an instance of a data set based on the same panel.


“Melanoma” is a type of skin cancer which develops from melanocytes, the skin cells in the epidermis which produce the skin pigment melanin. As used herein, melanoma includes melanoma, non-melanotic melanoma, nodular melanoma, acral lentiginous melanoma, and lentigo maligna. “Active melanoma” indicates a subject having melanoma with clinical evidence of disease, and includes subjects that have had blood drawn within 2-3 weeks post resection, although no clinical evidence of disease may be present after resection. “Inactive melanoma” indicates subjects having no clinicial evidence of disease.


“Non-melanoma” is a type of skin cancer which develops from skin cells other than melanocytes, and includes basal cell carcinoma, squamous cell carcinoma, cutaneous T-cell lymphoma, Merkel cell carcinoma, dermatofibrosarcoma protuberans, and Paget's disease.


“Negative predictive value” or “NPV” is calculated by TN/(TN+FN) or the true negative fraction of all negative test results. It also is inherently impacted by the prevalence of the disease and pre-test probability of the population intended to be tested.


See, e.g., O'Marcaigh A S, Jacobson R M, “Estimating the Predictive Value of a Diagnostic Test, How to Prevent Misleading or Confusing Results,” Clin. Ped. 1993, 32(8): 485-491, which discusses specificity, sensitivity, and positive and negative predictive values of a test, e.g., a clinical diagnostic test. Often, for binary disease state classification approaches using a continuous diagnostic test measurement, the sensitivity and specificity is summarized by Receiver Operating Characteristics (ROC) curves according to Pepe et al., “Limitations of the Odds Ratio in Gauging the Performance of a Diagnostic, Prognostic, or Screening Marker,” Am. J. Epidemiol 2004, 159 (9): 882-890, and summarized by the Area Under the Curve (AUC) or c-statistic, an indicator that allows representation of the sensitivity and specificity of a test, assay, or method over the entire range of test (or assay) cut points with just a single value. See also, e.g., Shultz, “Clinical Interpretation of Laboratory Procedures,” chapter 14 in Teitz, Fundamentals of Clinical Chemistry, Burtis and Ashwood (eds.), 4th edition 1996, W.B. Saunders Company, pages 192-199; and Zweig et al., “ROC Curve Analysis: An Example Showing the Relationships Among Serum Lipid and Apolipoprotein Concentrations in Identifying Subjects with Coronory Artery Disease,” Clin. Chem., 1992, 38(8): 1425-1428. An alternative approach using likelihood functions, BIC, odds ratios, information theory, predictive. , values, calibration (including goodness-of-fit), and reclassification measurements is summarized according to Cook, “Use and Misuse of the Receiver Operating Characteristic Curve in Risk Prediction,” Circulation 2007, 115: 928-935.


A “normal” subject is a subject who is generally in good health, has not been diagnosed with skin cancer, is asymptomatic for skin cancer, and lacks the traditional laboratory risk factors for skin cancer.


A “normative” condition of a subject to whom a composition is to be administered means the condition of a subject before administration, even if the subject happens to be suffering from a disease.


A “panel” of genes is a set of genes including at least two constituents.


A “population of cells” refers to any group of cells wherein there is an underlying commonality or relationship between the members in the population of cells, including a group of cells taken from an organism or from a culture of cells or from a biopsy, for example.


“Positive predictive value” or “PPV” is calculated by TP/(TP+FP) or the true positive fraction of all positive test results. It is inherently impacted by the prevalence of the disease and pre-test probability of the population intended to be tested.


“Risk” in the context of the present invention, relates to the probability that an event will occur over a specific time period, and can mean a subject's “absolute” risk or “relative” risk. Absolute risk can be measured with reference to either actual observation post-measurement for the relevant time cohort, or with reference to index values developed from statistically valid historical cohorts that have been followed for the relevant time period. Relative risk refers to the ratio of absolute risks of a subject compared either to the absolute risks of lower risk cohorts, across population divisions (such as tertiles, quartiles, quintiles, or deciles, etc.) or an average population risk, which can vary by how clinical risk factors are assessed. Odds ratios, the proportion of positive events to negative events for a given test result, are also commonly used (odds are according to the formula p/(1−p) where p is the probability of event and (1−p) is the probability of no event) to no-conversion.


“Risk evaluation,” or “evaluation of risk” in the context of the present invention encompasses making a prediction of the probability, odds, or likelihood that an event or disease state may occur, and/or the rate of occurrence of the event or conversion from one disease state to another, i.e., from a normal condition to cancer or from cancer remission to cancer, or from primary cancer occurrence to occurrence of a cancer metastasis. Risk evaluation can also comprise prediction of future clinical parameters, traditional laboratory risk factor values, or other indices of cancer results, either in absolute or relative terms in reference to a previously measured population. Such differing use may require different consituentes of a Gene Expression Panel (Precision Profile™) combinations and individualized panels, mathematical algorithms, and/or cut-off points, but be subject to the same aforementioned measurements of accuracy and performance for the respective intended use.


A “sample” from a subject may include a single cell or multiple cells or fragments of cells or an aliquot of body fluid, taken from the subject, by means including venipuncture, excretion, ejaculation, massage, biopsy, needle aspirate, lavage sample, scraping, surgical incision or intervention or other means known in the art. The sample is blood, urine, spinal fluid, lymph, mucosal secretions, prostatic fluid, semen, haemolymph or any other body fluid known in the art for a subject. The sample is also a tissue sample. The sample is or contains a circulating endotheliaicell or a circulating tumor cell.


“Sensitivity” is calculated by TP/(TP+FN) or the true positive fraction of disease subjects. “Skin cancer” is the growth of abnormal cells capable of invading and destroying other associated skin cells, and includes non-melanoma and melanoma.


“Specificity” is calculated by TN/(TN+FP) or the true negative fraction of non-disease or normal subjects.


By “statistically significant”, it is meant that the alteration is greater than what might be expected to happen by chance alone (which could be a “false positive”). Statistical significance can be determined by any method known in the art. Commonly used measures of significance include the p-value, which presents the probability of obtaining a result at least as extreme as a given data point, assuming the data point was the result of chance alone. A result is often considered highly significant at a p-value of 0.05 or less and statistically significant at a p-value of 0.10 or less. Such p-values depend significantly on the power of the study performed.


A “set” or “population” of samples or subjects refers to a defined or selected group of samples or subjects wherein there is an underlying commonality or relationship between the members included in the set or population of samples or subjects.


A “Signature Profile” is an experimentally verified subset of a Gene Expression Profile selected to discriminate a biological condition, agent or physiological mechanism of action.


A “Signature Panel” is a subset of a Gene Expression Panel (Precision Profile™), the constituents of which are selected to permit discrimination of a biological condition, agent or physiological mechanism of action.


A “subject” is a cell, tissue, or organism, human or non-human, whether in vivo, ex vivo or in vitro, under observation. As used herein, reference to evaluating the biological condition of a subject based on a sample from the subject, includes using blood or other tissue sample from a human subject to evaluate the human subject's condition; it also includes, for example, using a blood sample itself as the subject to evaluate, for example, the effect of therapy or an agent upon the sample.


A “stimulus” includes (i) a monitored physical interaction with a subject, for example ultraviolet A or B, or light therapy for seasonal affective disorder, or treatment of psoriasis with psoralen or treatment of cancer with embedded radioactive seeds, other radiation exposure, and (ii) any monitored physical, mental, emotional, or spiritual,activity or inactivity of a subject.


“Therapy” includes all interventions whether biological, chemical, physical, metaphysical, or combination of the foregoing, intended to sustain or alter the monitored biological condition of a subject.


“TN” is true negative, which for a disease state test means classifying a non-disease or normal subject correctly.


“TP” is true positive, which for a disease state test means correctly classifying a disease subject.


The PCT patent application publication number WO 01/25473, published Apr. 12, 2001, entitled “Systems and Methods for Characterizing a Biological Condition or Agent Using Calibrated Gene Expression Profiles,” filed for an invention by inventors herein, and which is herein incorporated by reference, discloses the use of Gene Expression Panels (Precision Profiles™) for the evaluation of (i) biological condition (including with respect to health and disease) and (ii) the effect of one or more agents on biological condition (including with respect to health, toxicity, therapeutic treatment and drug interaction).


In particular, the Gene Expression Panels (Precision Profiles™) described herein may be used, without limitation, for measurement of the following: therapeutic efficacy of natural or synthetic compositions or stimuli that may be formulated individually or in combinations or mixtures for a range of targeted biological conditions; prediction of toxicological effects and dose effectiveness of a composition or mixture of compositions for an individual or for a population or set of individuals or for a population of cells; determination of how two or more different agents administered in a single treatment might interact so as to detect any of synergistic, additive, negative, neutral or toxic activity; performing pre-clinical and clinical trials by providing new criteria for pre-selecting subjects according to informative profile data sets for revealing disease status; and conducting preliminary dosage studies for these patients prior to conducting phase 1 or 2 trials. These Gene Expression Panels (Precision Profiles™) may be employed with respect to samples derived from subjects in order to evaluate their biological condition.


The present invention provides Gene Expression Panels (Precision Profiles™) for the evaluation or characterization of skin cancer and conditions related to skin cancer in a subject. In addition, the Gene Expression Panels described herein also provide for the evaluation of the effect of one or more agents for the treatment skin cancer and conditions related to skin cancer.


The Gene Expression Panels (Precision Profiles™) are referred to herein as the Precision Profile™ for Melanoma, the Precision Profile™ for Inflammatory Response, the Human Cancer General Precision Profile™, the Precision Profile™ for EGR1, the Cross-Cancer Precision Profile™ and the Melanoma Microarray Precision Profile™. The Precision Profile™ for Melanoma Cancer includes one or more genes, e.g., constituents, listed in Table 1, whose expression is associated with skin cancer or a condition related to skin cancer. The Precision Profile™ for Inflammatory Response includes one or more genes, e.g., constituents, listed in Table 2, whose expression is associated with inflammatory response and cancer. The Human Cancer General Precision Profile™ includes one or more genes, e.g., constituents, listed in Table 3, whose expression is associated generally with human cancer (including without limitation prostate, breast, ovarian, cervical, lung, colon, and skin cancer).


The Precision Profile™ for EGR1 includes one or more genes, e.g., constituents listed in Table 4, whose expression is associated with the role early growth response (EGR) gene family plays in human cancer. The Precision Profile™ for EGR1 is composed of members of the early growth response (EGR) family of zinc finger transcriptional regulators; EGR1, 2, 3 & 4 and their binding proteins; NAB1 & NAB2 which function to repress transcription induced by some members of the EGR family of transactivators. In addition to the early growth response genes, The Precision Profile™ for EGR1 includes genes involved in the regulation of immediate early gene expression, genes that are themselves regulated by members of the immediate early gene family (and EGR1 in particular) and genes whose products interact with EGR1, serving as co-activators of transcriptional regulation.


The Cross-Cancer Precision Profile™ includes one or more genes, e.g., constituents listed in Table 5, whose expression has been shown, by latent class modeling, to play a significant role across various types of cancer, including without limitation, prostate, breast, ovarian, cervical, lung, colon, and skin cancer.


The Melanoma Microarray Precision Profile™ includes one or more genes, e.g., constituents, listed in Table 6, whose expression is associated with skin cancer or a condition related to skin cancer. The genes listed in Table 6 were derived from a combination of statistically significant disease specific genes (i.e., the Precision Profile for Melanoma, shown in Table 1), and genes derived from microarray studies based upon 4 whole blood melanoma subject samples (stage 4 melanoma), using the Human Genome U133 Plus 2.0 microarray (54,000 probe sets, >47,000 transcripts) for hybridization. For the array analysis a combination of GCOS (GeneChip Operating Software), Partek and GeneSpring were used.


Each gene of the Precision Profile™ for Melanoma, the Precision Profile™ for Inflammatory Response, the Human Cancer General Precision Profile™, the Precision Profile™ for EGR1, the Cross-Cancer Precision Profile™ and the Melanoma Microarray Precision Profile™, is referred to herein as a skin cancer associated gene or a skin cancer associated constituent. In addition to the genes listed in the Precision Profiles™ herein, skin cancer associated genes or skin cancer associated constituents include oncogenes, tumor suppression genes, tumor progression genes, angiogenesis genes, and lymphogenesis genes.


The present invention also provides a method for monitoring and determining the efficacy of immunotherapy, using the Gene Expression Panels (Precision Profiles™) described herein. Immunotherapy target genes include, without limitation, TNFRSF10A, TMPRSS2, SPARC, ALOX5, PTPRC, PDGFA, PDGFB, BCL2, BAD, BAK1, BAG2, KIT, MUC1, ADAM17, CD19, CD4, CD40LG, CD86, CCR5, CTLA4, HSPA1A, IFNG,1L23A, PTGS2, TLR2, TGFB1, TNF, TNFRSF13B, TNFRSF10B, VEGF, MYC, AURKA , BAX, CDH1, CASP2, CD22, IGF1R, ITGA5, ITGAV, ITGB1, ITGB3, IL6R, JAK1, JAK2, JAK3, MAP3K1, PDGFRA, COX2, PSCA, THBS1, THBS2, TYMS, TLR1, TLR3, TLR6, TLR7, TLR9, TNFSF10, TNFSF13B, TNFRSF17, TP53, ABL1, ABL2, AKT1, KRAS , BRAF, RAF1, ERBB4, ERBB2, ERBB3, AKT2, EGFR, IL12, and IL15. For example, the present invention provides a method for monitoring and determining the efficacy of immunotherapy by monitoring the immunotherapy associated genes, i.e., constituents, listed in Table 7.


It has been discovered that valuable and unexpected results may be achieved when the quantitative measurement of constituents is performed under repeatable conditions (within a degree of repeatability of measurement of better than twenty percent, preferably ten percent or better, more preferably five percent or better, and more preferably three percent or better). For the purposes of this description and the following claims, a degree of repeatability of measurement of better than twenty percent may be used as providing measurement conditions that are “substantially repeatable”. In particular, it is desirable that each time a measurement is obtained corresponding to the level of expression of a constituent in a particular sample, substantially the same measurement should result for substantially the same level of expression. In this manner, expression levels for a constituent in a Gene Expression Panel (Precision Profile™) may be meaningfully compared from sample to sample. Even if the expression level measurements for a particular constituent are inaccurate (for example, say, 30% too low), the criterion of repeatability means that all measurements for this constituent, if skewed, will nevertheless be skewed systematically, and therefore measurements of expression level of the constituent may be compared meaningfully. In this fashion valuable information may be obtained and compared concerning expression of the constituent under varied circumstances.


In addition to the criterion of repeatability, it is desirable that a second criterion also be satisfied, namely that quantitative measurement of constituents is performed under conditions wherein efficiencies of amplification for all constituents are substantially similar as defined herein. When both of these criteria are satisfied, then measurement of the expression level of one constituent may be meaningfully compared with measurement of the expression level of another constituent in a given sample and from sample to sample.


The evaluation or characterization of skin cancer is defined to be diagnosing skin cancer, assessing. the presence or absence of skin cancer, assessing the risk of developing skin cancer or assessing the prognosis of a subject with skin cancer, assessing the recurrence of skin cancer or assessing the presence or absence of a metastasis. Similarly, the evaluation or characterization of an agent for treatment of skin cancer includes identifying agents suitable for the treatment of skin cancer. The agents can be compounds known to treat skin cancer or compounds that have not been shown to treat skin cancer.


The agent to be evaluated or characterized for the treatment of skin cancer may be an alkylating agent (e.g., Cisplatin, Carboplatin, Oxaliplatin, BBR3464, Chlorambucil, Chlormethine, Cyclophosphamides, Ifosmade, Melphalan, Carmustine, Fotemustine, Lomustine, Streptozocin, Busulfan, Dacarbazine, Mechlorethamine, Procarbazine, Temozolomide, ThioTPA, and Uramustine); an anti-metabolite (e.g., purine (azathioprine, mercaptopurine), pyrimidine (Capecitabine, Cytarabine, Fluorouracil, Gemcitabine), and folic acid (Methotrexate, Pemetrexed, Raltitrexed)); a vinca alkaloid (e.g., Vincristine, Vinblastine, Vinorelbine, Vindesine); a taxane (e.g., paclitaxel, docetaxel, BMS-247550); an anthracycline (e.g., Daunorubicin, Doxorubicin, Epirubicin, Idarubicin, Mitoxantrone, Valrubicin, Bleomycin, Hydroxyurea, and Mitomycin); a topoisomerase inhibitor (e.g., Topotecan, Irinotecan ,Etoposide, and Teniposide); a monoclonal antibody (e.g., Alemtuzumab, Bevacizumab, Cetuximab, Gemtuzumab, Panitumumab, Rituximab, and Trastuzumab); a photosensitizer (e.g., Aminolevulinic acid, Methyl aminolevulinate, Porfimer sodium, and Verteporfin); a tyrosine kinase inhibitor (e.g., Gleevec™); an epidermal growth factor receptor inhibitor (e.g., Iressa™, erlotinib (Tarceva™), gefitinib); an FPTase inhibitor (e.g., FTIs (R115777, SCH66336, L-778,123)); a KDR inhibitor (e.g., SU6668, PTK787); a proteosome inhibitor (e.g., PS341); a TS/DNA synthesis inhibitor (e.g., ZD9331, Raltirexed (ZD1694, Tomudex), ZD9331, 5-FU)); an S-adenosyl-methionine decarboxylase inhibitor (e.g., SAM468A); a DNA methylating agent (e.g., TMZ); a DNA binding agent (e.g., PZA); an agent which binds and inactivates O6-alkylguanine AGT (e.g., BG); a c-raf-1 antisense oligo-deoxynucleotide (e.g., ISIS-5132 (CGP-69846A)); tumor immunotherapy (see Table 7); a steroidal and/or non-steroidal anti-inflammatory agent (e.g., corticosteroids, COX-2 inhibitors); or other agents such as Alitretinoin, Altretamine, Amsacrine, Anagrelide, Arsenic trioxide, Asparaginase, Bexarotene, Bortezomib, Celecoxib, Dasatinib, Denileukin Diftitox, Estramustine, Hydroxycarbamide, Imatinib, Pentostatin, Masoprocol, Mitotane, Pegaspargase, and Tretinoin.


Skin cancer and conditions related to skin cancer is evaluated by determining the level of expression (e.g., a quantitative measure) of an effective number (e.g., one or more) of constituents of a Gene Expression Panel (Precision Profile™) disclosed herein (i.e., Tables 1-6). By an effective number is meant the number of constituents that need to be measured in order to discriminate between a normal subject and a subject having skin cancer. Preferably the constituents are selected as to discriminate between a normal subject and a subject having skin cancer with at least 75% accuracy, more preferably 80%, 85%, 90%, 95%, 97%, 98%, 99% or greater accuracy.


The level of expression is determined by any means known in the art, such as for example quantitative PCR. The measurement is obtained under conditions that are substantially repeatable. Optionally, the qualitative measure of the constituent is compared to a reference or baseline level or value (e.g. a baseline profile set). In one embodiment, the reference or baseline level is a level of expression of one or more constituents in one or more subjects known not to be suffering from skin cancer (e.g., normal, healthy individual(s)). Alternatively, the reference or baseline level is derived from the level of expression of one or more constituents in one or more subjects known to be suffering from skin cancer. Optionally, the baseline level is derived from the same subject from which the first measure is derived. For example, the baseline is taken from a subject prior to receiving treatment or surgery for skin cancer, or at different time periods during a course of treatment. Such methods allow for the evaluation of a particular treatment for a selected individual. Comparison can be performed on test (e.g., patient) and reference samples (e.g., baseline) measured concurrently or at temporally distinct times. An example of the latter is the use of compiled expression information, e.g., a gene expression database, which assembles information about expression levels of cancer associated genes.


A reference or baseline level or value as used herein can be used interchangeably and is meant to be a relative to a number or value derived from population studies, including without limitation, such subjects having similar age range, subjects in the same or similar ethnic group, sex, or, in female subjects, pre-menopausal or post-menopausal subjects, or relative to the starting sample of a subject undergoing treatment for skin cancer. Such reference values can be derived from statistical analyses and/or risk prediction data of populations obtained from mathematical algorithms and computed indices of skin cancer. Reference indices can also be constructed and used using algorithms and other methods of statistical and structural classification.


In one embodiment of the present invention, the reference or baseline value is the amount of expression of a cancer associated gene in a control sample derived from one or more subjects who are both asymptomatic and lack traditional laboratory risk factors for skin cancer.


In another embodiment of the present invention, the reference or baseline value is the level of cancer associated genes in a control sample derived from one or more subjects who are not at risk or at low risk for developing skin cancer.


In a further embodiment, such subjects are monitored and/or periodically retested for a diagnostically relevant period of time (“longitudinal studies”) following such test to verify continued absence from skin cancer (disease or event free survival). Such period of time may be one year, two years, two to five years, five years, five to ten years, ten years, or ten or more years from the initial testing date for determination of the reference or baseline value. Furthermore, retrospective measurement of cancer associated genes in properly banked historical subject samples may be used in establishing these reference or baseline values, thus shortening the study time required, presuming the subjects have been appropriately followed during the intervening period through the intended horizon of the product. claim.


A reference or baseline value can also comprise the amounts of cancer associated genes derived from subjects who show an improvement in cancer status as a result of treatments and/or therapies for the cancer being treated and/or evaluated.


In another embodiment, the reference or baseline value is an index value or a baseline value. An index value or baseline value is a composite sample of an effective amount of cancer associated genes from one or more subjects who do not have cancer.


For example, where the reference or baseline level is comprised of the amounts of cancer associated genes derived from one or more subjects who have not been diagnosed with skin cancer, or are not known to be suffereing from skin cancer, a change (e.g., increase or decrease) in the expression level of a cancer associated gene in the patient-derived sample as compared to the expression level of such gene in the reference or baseline level indicates that the subject is suffering from or is at risk of developing skin cancer. In contrast, when the methods are applied prophylacticly, a similar level of expression in the patient-derived sample of a skin cancer associated gene compared to such gene in the baseline level indicates that the subject is not suffering from or is at risk of developing skin cancer.


Where the reference or baseline level is comprised of the amounts of cancer associated genes derived from one or more subjects who have been diagnosed with skin cancer, or are known to be suffereing from skin cancer, a similarity in the expression pattern in the patient-derived sample of a skin cancer gene compared to the skin cancer baseline level indicates that the subject is suffering from or is at risk of developing skin cancer.


Expression of a skin cancer gene also allows for the course of treatment of skin cancer to be monitored. In this method, a biological sample is provided from a subject undergoing treatment, e.g., if desired, biological samples are obtained from the subject at various time points before, during, or after treatment. Expression of a skin cancer gene is then determined and compared to a reference or baseline profile. The baseline profile may be taken or derived from one or more individuals who have been exposed to the treatment. Alternatively, the baseline level may be taken or derived from one or more individuals who have not been exposed to the treatment. For example, samples may be collected from subjects who have received initial treatment for skin cancer and subsequent treatment for skin cancer to monitor the progress of the treatment.


Differences in the genetic.makeup of individuals can result in differences in their relative abilities to metabolize various drugs. Accordingly, the Precision Profile™ for Melanoma (Table 1), the Precision Profile™ for Inflammatory Response (Table 2), the Human Cancer General Precision Profile™ (Table 3), the Precision Profile™ for EGR1 (Table 4), and the Cross-Cancer Precision Profile™ (Table 5) disclosed herein, allow for a putative therapeutic or prophylactic to be tested from a selected subject in order to determine if the agent is suitable for treating or preventing skin cancer in the subject. Additionally, other genes known to be associated with toxicity may be used. By suitable for treatment is meant determining whether the agent will be efficacious, not efficacious, or toxic for a particular individual. By toxic it is meant that the manifestations of one or more adverse effects of a drug when administered therapeutically. For example, a drug is toxic when it disrupts one or more normal physiological pathways.


To identify a therapeutic that is appropriate for a specific subject, a test sample from the subject is exposed to a candidate therapeutic agent, and the expression of one or more of skin cancer genes is determined. A subject sample is incubated in the presence of a candidate agent and the pattern of skin cancer gene expression in the test sample is measured and compared to a baseline profile, e.g., a skin cancer baseline profile or a non-skin cancer baseline profile or an index value. The test agent can be any compound or composition. For example, the test agent is a compound known to be useful in the treatment of skin cancer. Alternatively, the test agent is a compound that has not previously been used to treat skin cancer.


If the reference sample, e.g., baseline is from a subject that does not have skin cancer a similarity in the pattern of expression of skin cancer genes in the test sample compared to the reference sample indicates that the treatment is efficacious. Whereas a change in the pattern of expression of skin cancer genes in the test sample compared to the reference sample indicates a less favorable clinical outcome or prognosis. By “efficacious” is meant that the treatment leads to a decrease of a sign or symptom of skin cancer in the subject or a change in the pattern of expression of a skin cancer gene such that the gene expression pattern has an increase in similarity to that of a reference or baseline pattern. Assessment of skin cancer is made using standard clinical protocols. Efficacy is determined in association with any known method for diagnosing or treating skin cancer.


A Gene Expression Panel (Precision Profile™) is selected in a manner so that quantitative measurement of RNA or protein constituents in the Panel constitutes a measurement of a biological condition of.a subject. In one kind of arrangement, a calibrated profile data set is employed. Each member of the calibrated profile data set is a function of (i) a measure of a distinct constituent of a Gene Expression Panel (Precision Profile™) and (ii) a baseline quantity.


Additional embodiments relate to the use of an index or algorithm resulting from quantitative measurement of constituents, and optionally in addition, derived from either expert analysis or computational biology (a) in the analysis of complex data sets; (b) to control or normalize the influence of uninformative or otherwise minor variances in gene expression values between samples or subjects; (c) to simplify the characterization of a complex data set for comparison to other complex data sets, databases or indices or algorithms derived from complex data sets; (d) to monitor a biological condition of a subject; (e) for measurement of therapeutic efficacy of natural or synthetic compositions or stimuli that may be formulated individually or in combinations or mixtures for a range of targeted biological conditions; (f) for predictions of toxicological effects and dose effectiveness of a composition or mixture of compositions for an individual or for a population or set of individuals or for a population of cells; (g) for determination of how two or more different agents administered in a single treatment might interact so as to detect any of synergistic, additive, negative, neutral of toxic activity (h) for performing pre-clinical and clinical trials by providing new criteria for pre-selecting subjects according to informative profile data sets for revealing disease status and conducting preliminary dosage studies for these patients prior to conducting Phase 1 or 2 trials.


Gene expression profiling and the use of index characterization for a particular condition or agent or both may be used to reduce the cost of Phase 3 clinical trials and may be used beyond Phase 3 trials; labeling for approved drugs; selection of suitable medication in a class of medications for a particular patient that is directed to their unique physiology; diagnosing or determining a prognosis of a medical condition or an infection which may precede onset of symptoms or alternatively diagnosing adverse side effects associated with administration of a therapeutic agent; managing the health care of a patient; and quality control for different batches of an agent or a mixture of agents.


The Subject

The methods disclosed here may be applied to cells of humans, mammals or other organisms without the need for undue experimentation by one of ordinary skill in the art because all cells transcribe RNA and it is known in the art how to extract RNA from all types of cells.


subject can include those who have not been previously diagnosed as having skin cancer or a condition related to skin cancer (e.g., melanoma). Alternatively, a subject can also include those who have already been diagnosed as having skin cancer or a condition related to skin cancer (e.g., melanoma). Diagnosis of skin cancer is made, for example, from any one or combination of the following procedures: a medical history; a visual examination of the skin looking for common features of cancerous skin lesions, including but not limited to bumps, shiny translucent, pearly, or red nodules, a sore that continuously heals and re-opens, a crusted or scaly area of the skin with a red inflamed base that resembles a growing tumor, a non-healing ulcer, crusted-over patch of skin, new moles, changes in the size, shape, or color of an existing mole, the spread of pigmentation beyond the border of a mole or mark, oozing or bleeding from a mole, and a mole that feels itchy, hard, lumpy, swollen, or tender to the touch; a dermatoscopic exam; imaging techniques including X-rays, CT scans, MRIs, PET and PET/CTs, ultrasound, and LDH testing; and biopsy, including shave, punch, incisional, and excsisional biopsy.


Optionally, the subject has been previously treated with a surgical procedure for removing skin cancer or a condition related to skin cancer (e.g., melanoma), including but not limited to any one or combination of the following treatments: cryosurgery, i.e., the process of freezing with liquid nitrogen; curettage and electrodessication, i.e., the scraping of the lesion and destruction of any remaining malignant cells with an electric current; removal of a lesion layer-by-layer down to normal margins (Moh's surgery). Optionally, the subject has previously been treated with any one or combination of the following therapeutic treatments: chemotherapy (e.g., dacarbazine, sorafnib); radiation therapy; immunotherapy (e.g., Interleukin-2 and/or Interfereon to boost the body's immune reaction to cancer cells); autologous vaccine therapy (where the patient's own tumor cells are made into a vaccine that will cause the patient's body to make antibodies against skin cancer); adoptive T-cell therapy (where the patient's T-cells that target melanocytes are extracted then expanded to large quantities, then infused back into the patient); and gene therapy (modifying the genetics of tumors to make them more susceptible to attacks by cancer-fighting drugs); or any of the agents previously described; alone, or in combination with a surgical procedure for removing skin cancer, as previously described.


A subject can also include those who are suffering from, or at risk of developing skin cancer or a condition related to skin cancer (e.g., melanoma), such as those who exhibit known risk factors skin cancer. Known risk factors for skin cancet.include, but are not limited to cumulative sun exposure, blond or red hair, blue eyes, fair complexion, many freckles, severe sunburns as a child, family history of skin cancer (e.g., melanoma), dysplastic nevi, atypical moles, multiple ordinary moles (>50), immune suppression, age, gender (increased frequency in men), xeroderma pigmentosum (a rare inherited condition resulting in a defect from an enzyme that repairs damage to DNA), and past history of skin cancer.


A subject can also include those who are suffering from different stages of skin cancer, e.g., Stage 1 through Stage 4 melanoma. An individual diagnosed with Stage 1 indicatesthat no lymph nodes or lymph ducts contain cancer cells (i.e., there are no positive lymph nodes) and there is no sign of cancer spread. In this stage, the primary melanoma is less than 2.0 mm thick or less than 1.0 mm thick and ulcerated, i.e., the covering layer of the skin over the tumor is broken. Stage 2 melanomas also have no sign of spread or positive lymph nodes Stage 2 melanomas are over 2.0 mm thick or over 1.0 mm thick and ulcerated. Stage 3 indicates all melanomas where there are positive lymph nodes, but no sign of the cancer having spread anywhere else in the body. Stage 4 melanomas have spread elsewhere in the body, away from the primary site.


Selecting Constituents of a Gene Expression Panel (Precision Profile™)

The general approach to selecting constituents of a Gene Expression Panel (Precision Profile™) has been described in PCT application publication number WO 01/25473, incorporated herein in its entirety. A wide range of Gene Expression Panels (Precision Profiles™) have been designed and experimentally validated, each panel providing a quantitative measure of biological condition that is derived from a sample of blood or other tissue. For each panel, experiments have verified that a Gene Expression Profile using the panel's constituents is informative of a biological condition. (It has also been demonstrated that in being informative of biological condition, the Gene Expression Profile is used, among other things, to measure the effectiveness of therapy, as well as to provide a target for therapeutic intervention).


In addition to the the Precision ProfileTM for Melanoma (Table 1), the Precision Profile™ for Inflammatory Response (Table 2), the Human Cancer General Precision Profile™ (Table 3), the Precision Profile™ for EGR1 (Table 4), and the Cross-Cancer Precision Profile™ (Table 5), include relevant genes which may be selected for a given Precision Profiles™, such as the Precision Profiles™ demonstrated herein to be useful in the evaluation of skin cancer and conditions related to skin cancer.


Inflammation and Cancer

Evidence has shown that cancer in adults arises frequently in the setting of chronic inflammation. Epidemiological and experimental studies provide stong support for the concept that inflammation facilitates malignant growth. Inflammatory components have been shown to 1) induce DNA damage, which contributes to genetic instability (e.g., cell mutation) and transformed cell proliferation (Balkwill and Mantovani, Lancet 357:539-545 (2001)); 2) promote angiogenesis, thereby enhancing tumor growth and invasiveness (Coussens L. M. and Z. Werb, Nature 429:860-867 (2002)); and 3) impair myelopoiesis and hemopoiesis, which cause immune dysfunction and inhibit immune surveillance (Kusmartsev and Gabrilovic, Cancer Immunol. Immunother. 51:293-298 (2002); Serafini et al., Cancer Immunol. Immunther. 53:64-72 (2004)).


Studies suggest that inflammation promotes malignancy via proinflammatory cytokines, including but not limited to IL-1β, which enhance immune suppression through the induction of myeloid suppressor cells, and that these cells down regulate immune surveillance and allow the outgrowth and proliferation of malignant cells by inhibiting the activation and/or function of tumor-specific lymphocytes. (Bunt et al., J. Immunol. 176: 284-290 (2006). Such studies are consistent with findings that myeloid suppressor cells are found in many cancer patients, including lung and breast cancer, and that chronic inflammation in some of these malignancies may enhance malignant growth (Coussens L. M. and Z. Werb, 2002).


Additionally, many cancers express an extensive repertoire of chemokines and chemokine receptors, and may be characterized by dis-regulated production of chemokines and abnormal chemokine receptor signaling and expression. Tumor-associated chemokines are thought to play several roles in the biology of primary and metastatic cancer such as: control of leukocyte infiltration into the tumor, manipulation of the tumor immune response, regulation of angiogenesis, autocrine or paracrine growth and survival factors, and control of the movement of the cancer cells. Thus, these activities likely contribute to growth within/outside the tumor microenvironment and to stimulate anti-tumor host responses.


As tumors progress, it is common to observe immune deficits not only within cells in the tumor microenvironment but also frequently in the systemic circulation. Whole blood contains representative populations of all the mature cells of the immune system as well as secretory proteins associated with cellular communications. The earliest observable changes of cellular immune activity are altered levels of gene expression within the various immune cell types. Immune responses are now understood to be a rich, highly complex tapestry of cell-cell signaling events driven by associated pathways and cascades all involving modified activities of gene transcription. This highly interrelated system of cell response is immediately activated upon any immune challenge, including the events surrounding host response to skin cancer and treatment. Modified gene expression precedes the release of cytokines and other immunologically important signaling elements.


As such, inflammation genes, such as the genes listed in the Precision Profile™ for Inflammatory Response (Table 2) are useful for distinguishing between subjects suffering from skin cancer and normal subjects, in addition to the other gene panels, i.e., Precision Profiles™, described herein.


Early Growth Response Gene Family and Cancer

The early growth response (EGR) genes are rapidly induced following mitogenic stimulation in diverse cell types, including fibroblasts, epithelial cells and B lymphocytes. The EGR genes are members of the broader “Immediate Early Gene” (IEG) family, whose genes are activated in the first round of response to extracellular signals such as growth factors and neurotransmitters, prior to new protein synthesis. The IEG's are well known as early regulators of cell growth and differentiation signals, in addition to playing a role in other cellular processes. Some other well characterized members of the LEG family include the c-myc, c-fos and c-jun oncogenes. Many of the immediate early gene products function as transcription factors and DNA-binding proteins, though other IEG's also include secreted proteins, cytoskeletal proteins and receptor subunits. EGR1 expression is induced by a wide variety of stimuli. It is rapidly induced by mitogens such as platelet derived growth factor (PDGF), fibroblast growth factor (FGF), and epidermal growth factor (EGF), as well as by modified lipoproteins, shear/mechanical stresses, and free radicals. Interestingly, expression of the EGR1 gene is also regulated by the oncogenes v-raf, v-fps and v-src as demonstrated in transfection analysis of cells using promoter-reporter constructs. This regulation is mediated by the serum response elements (SREs) present within the EGR1 promoter region. It has also been demonstrated that hypoxia, which occurs during development of cancers, induces EGR1 expression. EGR1 subsequently enhances the expression of endogenous EGFR, which plays an important role in cell growth (over-expression of EGFR can lead to transformation). Finally, EGR1 has also been shown to be induced by Smad3, a signaling component of the TGFB pathway.


In its role as a transcriptional regulator, the EGR1 protein binds specifically to the G+C rich EGR consensus sequence present within the promoter region of genes activated by EGR1. EGR1 also interacts with additional proteins (CREBBP/EP300) which co-regulate transcription of EGR1 activated genes. Many of the genes activated by EGR1 also stimulate the expression of EGR1, creating a positive feedback loop. Genes regulated by EGR1 include the mitogens: platelet derived growth factor (PDGFA), fibroblast growth factor (FGF), and epidermal growth factor (EGF) in addition to TNF, IL2, PLAU, ICAM1, TP53, ALOX5, PTEN, FN1 and TGFB1.


As such, early growth response genes, or genes associated therewith, such as the genes listed in the Precision Profile™ for EGR1 (Table 4) are useful for distinguishing between subjects suffering from skin cancer and normal subjects, in addition to the other gene panels, i.e., Precision Profiles™, described herein.


In general, panels may be constructed and experimentally validated by one of ordinary skill in the art in accordance with the principles articulated in the present application.


Gene Epression Profiles Based on Gene Expression Panels of the Present Invention

Tables 1A-1C were derived from a study of the gene expression patterns described in Example 3 below. Table 1A describes all 2 and 3-gene logistic regression models based on genes from the Precision Profile™ for Melanoma (Table 1) which are capable of distinguishing between subjects suffering from stage 1 melanoma (active and inactive disease) and normal subjects with at least 75% accuracy. For example, the first row of Table 1A, describes a 3-gene model, IRAK3, MDM2 and PTEN, capable of correctly classifying stage 1 melanoma-afflicted subjects (active and inactive disease) with 84.3% accuracy, and normal subjects with 84% accuracy.


Tables 2A-2C were derived from a study of the gene expression patterns described in Example 4 below. Table 2A describes all 1 and 2-gene logistic regression models based on genes from the Precision Profile™ for Inflammatory Response (Table 2), which are capable of distinguishing between subjects suffering from active melanoma (all stages) and normal subjects with at least 75% accuracy. For example, the first row of Table 2A, describes a 2-gene model, LTA and MYC, capable of correctly classifying active melanoma-afflicted subjects (all stages) with 92.0% accuracy, and normal subjects with 93.8% accuracy.


Tables 3A-3C were derived from a study of the gene expression patterns described in Example 5 below. Table 3A describes all 1 and 2-gene logistic regression models based on genes from the Human Cancer General Precision Profile™ (Table 3), which are capable of distinguishing between subjects suffering from active melanoma (stages 2-4) and normal subjects with at least 75% accuracy. For example, the first row of Table 3A, describes a 2-gene model, CDK2 and MYC, capable of correctly classifying active melanoma-afflicted subjects (stages 2-4) with 87.8% accuracy, and normal subjects with 87.8% accuracy.


Tables 4A-4B were derived from a study of the gene expression patterns described in Example 6 below. Table 4A describes all 3-gene logistic regression models based on genes from the Precision Profile™ for EGR1 (Table 4), which are capable of distinguishing between subjects suffering from active melanoma (stags 2-4) and normal subjects with at least 75% accuracy. For example, the first row of Table 4A, describes a 3-gene model, S100A6, TGFB1, and TP53, capable of correctly classifying active melanoma-afflicted subjects (stages 2-4) with 81.6% accuracy, and normal subjects with 82.6% accuracy.


Tables 5A-5C were derived from a study of the gene expression patterns described in Example 7 below. Table 5A describes all 1 and 2-gene logistic regression models based on genes from the Cross-Cancer Precision Profile™ (Table 5), which are capable of distinguishing between subjects suffering from active melanoma (stages 2-4) and normal subjects with at least 75% accuracy. For example, the first row of Table 5A, describes a 2-gene model, RP51077B9.4 and TEGT, capable of correctly classifying active melanoma-afflicted subjects (all stages) with 93.9% accuracy, and normal subjects with 93.6% accuracy.


Tables 6A-6C were derived from a study of the gene expression patterns described in Example 8 below. Table 6A describes all 1 and 2-gene logistic regression models based on genes from the Melanoma Microarray Precision Profile™ (Table 6), which are capable of distinguishing between subjects suffering from active melanoma (all stages) and normal subjects with at least 75% accuracy. For example, the first row of Table 6A, describes a 2-gene model, C1QB and PLEK2, capable of correctly classifying active melanoma-afflicted subjects (all stages) with 91.1% accuracy, and normal subjects with 90% accuracy.


Design of Assays

Typically, a sample is run through a panel in replicates of three for each target gene (assay); that is, a sample is divided into aliquots and for each aliquot the concentrations of each constituent in a Gene Expression Panel (Precision Profile™) is measured. From over thousands of constituent assays, with each assay conducted in triplicate, an average coefficient of variation was found (standard deviation/average)*100, of less than 2 percent among the normalized ACt measurements for each assay (where normalized quantitation of the target mRNA is determined by the difference in threshold cycles between the internal control (e.g., an endogenous marker such as 18S rRNA, or an exogenous marker) and the gene of interest. This is a measure called “intra-assay variability”. Assays have also been conducted on different occasions using the same sample material. This is a measure of “inter-assay variability”. Preferably, the average coefficient of variation of intra- assay variability or inter-assay variability is less than 20%, more preferably less than 10%, more preferably less than 5%, more preferably less than 4%, more preferably less than 3%, more preferably less than 2%, and even more preferably less than 1%.


It has been determined that it is valuable to use the quadruplicate or triplicate test results to identify and eliminate data points that are statistical “outliers”; such data points are those that differ by a percentage greater, for example, than 3% of the average of all three or four values. Moreover, if more than one data point in a set of three or four is excluded by this procedure, then all data for the relevant constituent is discarded.


Measurement of Gene Expression for a Constituent in the Panel

For measuring the amount of a particular RNA in a sample, methods known to one of ordinary skill in the art were used to extract and quantify transcribed RNA from a sample with respect to a constituent of a Gene Expression Panel (Precision Profile™). (See detailed protocols below. Also see PCT application publication number WO 98/24935 herein incorporated by reference for RNA analysis protocols). Briefly, RNA is extracted from a sample such as any tissue, body fluid, cell (e.g., circulating tumor cell) or culture medium in which a population of cells of a subject might be growing. For example, cells may be lysed and RNA eluted in a suitable solution in which to conduct a DNAse reaction. Subsequent to RNA extraction, first strand synthesis may be performed using a reverse transcriptase. Gene amplification, more specifically quantitative PCR assays, can then be conducted and the gene of interest calibrated against an internal marker such as 18S rRNA (Hirayama et al., Blood 92, 1998: 46-52). Any other endogenous marker can. be used, such as 28S-25S rRNA and 5S rRNA. Samples are measured in multiple replicates, for example, 3 replicates. In an embodiment of the invention, quantitative PCR is performed using amplification, reporting agents and instruments such as those supplied commercially by Applied Biosystems (Foster City, Calif.). Given a defined efficiency of amplification of target transcripts, the point (e.g., cycle number) that signal from amplified target template is detectable may be directly related to the amount of specific message transcript in the measured sample. Similarly, other quantifiable signals such as fluorescence, enzyme activity, disintegrations per minute, absorbance, etc., when correlated to a known concentration of target templates (e.g., a reference standard curve) or normalized to a standard with limited variability can be used to quantify the number of target templates in an unknown sample.


Although not limited to amplification methods, quantitative gene expression techniques may utilize amplification of the target transcript. Alternatively or in combination with amplification of the target transcript, quantitation of the reporter signal for an internal marker generated by the exponential increase of amplified product may also be used. Amplification of the target template may be accomplished by isothermic gene amplification strategies or by gene amplification by thermal cycling such as PCR.


It is desirable to obtain a definable and reproducible correlation between the amplified target or reporter signal, i.e., internal marker, and the concentration of starting templates. It has been discovered that this objective can be achieved by careful attention to, for example, consistent primer-template ratios and a strict adherence to a narrow permissible level of experimental amplification efficiencies (for example 80.0 to 100%+/−5% relative efficiency, typically 90.0 to 100%+/−5% relative efficiency, more typically 95.0 to 100%+/−2%, and most typically 98 to 100%+/−1% relative efficiency). In determining gene expression levels with regard to a single Gene Expression Profile, it is necessary that all constituents of the panels, including endogenous controls, maintain similar amplification efficiencies, as defined herein, to permit accurate and precise relative measurements for each constituent. Amplification efficiencies are regarded as being “substantially similar”, for the purposes of this description and the following claims, if they differ by no more than approximately 10%, preferably by less than approximately 5%, more preferably by less than approximately 3%, and more preferably by less than approximately 1%. Measurement conditions are regarded as being “substantially repeatable, for the purposes of this description and the following claims, if they differ by no more than approximately +/−10% coefficient of variation (CV), preferably by less than approximately +/−5% CV, more preferably +/−2% CV. These constraints should be observed over the entire range of concentration levels to be measured associated with the relevant biological condition. While it is thus necessary for various embodiments herein to satisfy criteria that measurements are achieved under measurement conditions that are substantially repeatable and wherein specificity and efficiencies of amplification for all constituents are substantially similar, nevertheless, it is within the scope of the present invention as claimed herein to achieve such measurement conditions by adjusting assay results that do not satisfy these criteria directly, in such a manner as to compensate for errors, so that the criteria are satisfied after suitable adjustment of assay results.


In practice, tests are run to assure that these conditions are satisfied. For example, the design of all primer-probe sets are done in house, experimentation is performed to determine which set gives the best performance. Even though primer-probe design can be enhanced using computer techniques known in the art, and notwithstanding common practice, it has been found that experimental validation is still useful. Moreover, in the course of experimental validation, the selected primer-probe combination is associated with a set of features:


The reverse primer should be complementary to the coding DNA strand. In one embodiment, the primer should be located across an intron-exon junction, with not more than four bases of the three-prime end of the reverse primer complementary to the proximal exon. (If more than four bases are complementary, then it would tend to competitively amplify genomic DNA.)


In an embodiment of the invention, the primer probe set should amplify cDNA of less than 110 bases in length and should not amplify, or generate fluorescent signal from, genomic DNA or transcripts or cDNA from related but biologically irrelevant loci.


A suitable target of the selected primer probe is first strand cDNA, which in one embodiment may be prepared from whole blood as follows:


(a) Use of Whole Blood for Ex Vivo Assessment of a Biological Condition


Human blood is obtained by venipuncture and prepared for assay. The aliquots of heparinized, whole blood are mixed with additional test therapeutic compounds and held at 37° C. in an atmosphere of 5% CO2 for 30 minutes. Cells are lysed and nucleic acids, e.g., RNA, are extracted by various standard means.


Nucleic acids, RNA and or DNA, are purified from cells, tissues or fluids of the test population of cells. RNA is preferentially obtained from the nucleic acid mix using a variety of standard procedures (or RNA Isolation Strategies, pp. 55-104, in RNA Methodologies, A laboratory guide for isolation and characterization, 2nd edition, 1998, Robert E. Farrell, Jr., Ed., Academic Press), in the present using a filter-based RNA isolation system from Ambion (RNAqueous™, Phenol-free Total RNA Isolation Kit; Catalog #1912, version 9908; Austin, Tex.).


(b) Amplification Strategies.


Specific RNAs are amplified using message specific primers or random primers. The specific primers are synthesized from data obtained from public databases (e.g., Unigene, National Center for Biotechnology Information, National Library of Medicine, Bethesda, Md.), including information from genomic and cDNA libraries obtained from humans and other animals. Primers are chosen to preferentially amplify from specific RNAs obtained from the test or indicator samples (see, for example, RT PCR, Chapter 15 in RNA Methodologies, A Laboratory Guide for Isolation and Characterization, 2nd edition, 1998, Robert E. Farrell, Jr., Ed., Academic Press; or Chapter 22 pp. 143-151, RNA Isolation and Characterization Protocols, Methods in Molecular Biology, Volume 86, 1998, R. Rapley and D. L. Manning Eds., Human Press, or Chapter 14 Statistical refinement of primer design parameters; or Chapter 5, pp. 55-72, PCR Applications: protocols for functional genomics, M. A. Innis, D. H. Gelfand and J. J. Sninsky, Eds., 1999, Academic Press). Amplifications are carried out in either isothermic conditions or using a thermal cycler (for example, a ABI 9600 or 9700 or 7900 obtained from Applied Biosystems, Foster City, Calif.; see Nucleic acid detection methods, pp. 1-24, in Molecular Methods for Virus Detection, D. L. Wiedbrauk and D. H., Farkas, Eds., 1995, Academic Press). Amplified nucleic acids are detected using fluorescent-tagged detection oligonucleotide probes (see, for example, Taqman™ PCR Reagent Kit, Protocol, part number 402823, Revision A, 1996, Applied Biosystems, Foster City Calif.) that are identified and synthesized from publicly known databases as described for the amplification primers.


For example, without limitation, amplified cDNA is detected and quantified using detection systems such as the ABI Prism® 7900 Sequence Detection System (Applied Biosystems (Foster City, Calif.)), the Cepheid SmartCycler® and Cepheid GeneXpert® Systems, the Fluidigm BioMark™ System, and the Roche LightCycler® 480 Real-Time PCR System. Amounts of specific RNAs contained in the test sample can be related to the relative quantity of fluorescence observed (see for example, Advances in Quantitative PCR Technology: 5′ Nuclease Assays, Y. S. Lie and C. J. Petropolus, Current Opinion in Biotechnology, 1998, 9:43-48, or Rapid Thermal Cycling and PCR Kinetics, pp. 211-229, chapter 14 in PCR applications: protocols for functional genomics, M. A. Innis, D. H. Gelfand and J. J. Sninsky, Eds., 1999, Academic Press). Examples of the procedure used with several of the above-mentioned detection systems are described below. In some embodiments, these procedures can be used for both whole blood RNA and RNA extracted from cultured cells (e.g., without limitation, CTCs, and CECs). In some embodiments, any tissue, body fluid, or cell(s) (e.g., circulating tumor cells (CTCs) or circulating endothelial cells (CECs)) may be used for ex vivo assessment of a biological condition affected by an agent. Methods herein may also be applied using proteins where sensitive quantitative techniques, such as an Enzyme Linked ImmunoSorbent Assay (ELISA) or mass spectroscopy, are available and well-known in the art for measuring the amount of a protein constituent (see WO 98/24935 herein incorporated by reference).


An example of a procedure for the synthesis of first strand cDNA for use in PCR amplification is as follows:


Materials


1. Applied Biosystems TAQMAN Reverse Transcription Reagents Kit (P/N 808-0234). Kit Components: 10× TaqMan RT Buffer, 25 mM Magnesium chloride, deoxyNTPs mixture, Random Hexamers, RNase Inhibitor, MultiScribe Reverse Transcriptase (50 U/mL) (2) RNase/DNase free water (DEPC Treated Water from Ambion (P/N 9915G), or equivalent).


Methods


1. Place RNase Inhibitor and MultiScribe Reverse Transcriptase on ice immediately. All other reagents can be thawed at room temperature and then placed on ice.


2. Remove RNA samples from −80° C. freezer and thaw at room temperature and then place immediately on ice.


3. Prepare the following cocktail of Reverse Transcriptase Reagents for each 100 mL RT reaction (for multiple samples, prepare extra cocktail to allow for pipetting error):
















1 reaction (mL)
11X, e.g. 10 samples (μL)




















10X RT Buffer
10.0
110.0



25 mM MgCl2
22.0
242.0



dNTPs
20.0
220.0



Random Hexamers
5.0
 55.0



RNAse Inhibitor
2.0
 22.0



Reverse Transcriptase
2.5
 27.5



Water
18.5
203.5



Total:
80.0
880.0 (80 μL per sample)










4. Bring each RNA sample to a total volume of 20 μL in a 1.5 mL microcentrifuge tube (for example, remove 10 μL RNA and dilute to 20 μL with RNase/DNase free water, for whole blood RNA use 20 μL total RNA) and add 80 tL RT reaction mix from step 5,2,3. Mix by pipetting up and down.


5. Incubate sample at room temperature for 10 minutes.


6. Incubate sample at 37° C. for 1 hour.


7. Incubate sample at 90° C. for 10 minutes.


8. Quick spin samples in microcentrifuge.


9. Place sample on ice if doing PCR immediately, otherwise store sample at −20° C. for future use.


10. PCR QC should be run on all RT samples using 18S and β-actin.


Following the synthesis of first strand cDNA, one particular embodiment of the approach for amplification of first strand cDNA by PCR, followed by detection and quantification of constituents of a Gene Expression Panel (Precision Profile™) is performed using the ABI Prism® 7900 Sequence Detection System as follows:


Materials


1. 20× Primer/Probe Mix for each gene of interest.


2. 20× Primer/Probe Mix for 18S endogenous control.


3. 2× Taqman Universal PCR Master Mix.


4. cDNA transcribed from RNA extracted from cells.


5. Applied Biosystems 96-Well Optical Reaction Plates.


6. Applied Biosystems Optical Caps, or optical-clear film.


7. Applied Biosystem Prism® 7700 or 7900 Sequence Detector.


Methods


1. Make stocks of each Primer/Probe mix containing the Primer/Probe for the gene of interest, Primer/Probe for 18S endogenous control, and 2× PCR Master Mix as follows. Make sufficient excess to allow for pipetting error e.g., approximately 10% excess. The following example illustrates a typical set up for one gene with quadruplicate samples testing two conditions (2 plates).















1X (1 well) (μL)



















2X Master Mix
7.5



20X 18S Primer/Probe Mix
0.75



20X Gene of interest Primer/Probe Mix
0.75



Total
9.0










2. Make stocks of cDNA targets by diluting 95 μL of cDNA into 2000 μL of water. The amount of cDNA is adjusted to give Ct values between 10 and 18, typically between 12 and 16.


3. Pipette 9 μL of Primer/Probe mix into the appropriate wells of an Applied Biosystems 384-Well Optical Reaction Plate.


4. Pipette 10 μL of cDNA stock solution into each well of the Applied Biosystems 384-Well Optical Reaction Plate.


5. Seal the plate with Applied Biosystems Optical Caps, or optical-clear film.


6. Analyze the plate on the ABI Prism® 7900 Sequence Detector.


In another embodiment of the invention, the use of the primer probe with the first strand cDNA as described above to permit measurement of constituents of a Gene Expression Panel (Precision Profile™) is performed using a QPCR assay on Cepheid SmartCycler® and GeneXpert® Instruments as follows:

  • I. To run a QPCR assay in duplicate on the Cepheid SmartCycler® instrument containing three target genes and one reference gene, the following procedure should be followed.


A. With 20× Primer/Probe Stocks.


Materials

    • 1. SmartMix™-HM lyophilized Master Mix.
    • 2. Molecular grade water.
    • 3. 20× Primer/Probe Mix for the 18S endogenous control gene. The endogenous control gene will be dual labeled with VIC-MGB or equivalent.
    • 4. 20× Primer/Probe Mix for each for target gene one, dual labeled with FAM-BHQ1 or equivalent.
    • 5. 20× Primer/Probe Mix for each for target gene two, dual labeled with Texas Red-BHQ2 or equivalent.
    • 6. 20× Primer/Probe Mix for each for target gene three, dual labeled with Alexa 647-BHQ3 or equivalent.
    • 7. Tris buffer, pH 9.0
    • 8. cDNA transcribed from RNA extracted from sample.
    • 9. SmartCycler® 25 μL tube.
    • 10. Cepheid SmartCycler® instrument.


Methods

    • 1. For each cDNA sample to be investigated, add the following to a sterile 650 μL tube.



















SmartMix ™-HM lyophilized Master Mix
1
bead



20X 18S Primer/Probe Mix
2.5
μL



20X Target Gene 1 Primer/Probe Mix
2.5
μL



20X Target Gene 2 Primer/Probe Mix
2.5
μL



20X Target Gene 3 Primer/Probe Mix
2.5
μL



Tris Buffer, pH 9.0
2.5
μL



Sterile Water
34.5
μL



Total
47
μL












    • Vortex the mixture for 1 second three times to completely mix the reagents. Briefly centrifuge the tube after vortexing.

    • 2. Dilute the cDNA sample so that a 3 μL addition to the reagent mixture above will give an 18S reference gene CT value between 12 and 16.

    • 3. Add 3 μL of the prepared cDNA sample to the reagent mixture bringing the total volume to 50 μL. Vortex the mixture for 1 second three times to completely mix the reagents. Briefly centrifuge the tube after vortexing.

    • 4. Add 25 μL of the mixture to each of two SmartCycler® tubes, cap the tube and spin for 5 seconds in a microcentrifuge having an adapter for SmartCycler® tubes.

    • 5. Remove the two SmartCycler® tubes from the microcentrifuge and inspect for air bubbles. If bubbles are present, re-spin, otherwise, load the tubes into the SmartCycler® instrument.

    • 6. Run the appropriate QPCR protocol on the SmartCycler®, export the data and analyze the results.





B. With Lyophilized SmartBeads™.


Materials

    • 1. SmartMix™-HM lyophilized Master Mix.
    • 2. Molecular grade water.
    • 3. SmartBeads™ containing the 18S endogenous control gene dual labeled with VIC-MGB or equivalent, and the three target genes, one dual labeled with FAM-BHQ1 or equivalent, one dual labeled with Texas Red-BHQ2 or equivalent and one dual labeled with Alexa 647-BHQ3 or equivalent.
    • 4. Tris buffer, pH 9.0
    • 5. cDNA transcribed from RNA extracted from sample.
    • 6. SmartCycler® 25 μL tube.
    • 7. Cepheid SmartCycler® instrument.


Methods

    • 1. For each cDNA sample to be investigated, add the following to a sterile 650 μL tube.



















SmartMix ™-HM lyophilized Master Mix
1
bead



SmartBead ™ containing four primer/probe sets
1
bead



Tris Buffer, pH 9.0
2.5
μL



Sterile Water
44.5
μL



Total
47
μL












    • Vortex the mixture for 1 second three times to completely mix the reagents. Briefly centrifuge the tube after vortexing.

    • 2. Dilute the cDNA sample so that a 3 μL addition to the reagent mixture above will give an 18S reference gene CT value between 12 and 16.

    • 3. Add 3 μL of the prepared cDNA sample to the reagent mixture bringing the total volume to 50 μL. Vortex the mixture for 1 second three times to completely mix the reagents. Briefly centrifuge the tube after vortexing.

    • 4. Add 25 μL of the mixture to each of two SmartCycler® tubes, cap the tube and spin for 5 seconds in a microcentrifuge having an adapter for SmartCycler® tubes.

    • 5. Remove the two SmartCycler® tubes from the microcentrifuge and inspect for air bubbles. If bubbles are present, re-spin, otherwise, load the tubes into the SmartCycler® instrument.

    • 6. Run the appropriate QPCR protocol on the SmartCycler®, export the data and analyze the results.



  • II. To run a QPCR assay on the Cepheid GeneXpert® instrument containing three target genes and one reference gene, the following procedure should be followed. Note that to do duplicates, two self contained cartridges need to be loaded and run on the GeneXpert® instrument.



Materials

    • 1. Cepheid GeneXpert® self contained cartridge preloaded with a lyophilized SmartMix™-HM master mix bead and a lyophilized SmartBead™ containing four primer/probe sets.
    • 2. Molecular grade water, containing Tris buffer, pH 9.0.
    • 3. Extraction and purification reagents.
    • 4. Clinical sample (whole blood, RNA, etc.)
    • 5. Cepheid GeneXpert® instrument.


Methods

    • 1. Remove appropriate GeneXpert® self contained cartridge from packaging.
    • 2. Fill appropriate chamber of self contained cartridge with molecular grade water with


Tris buffer, pH 9.0.

    • 3. Fill appropriate chambers of self contained cartridge with extraction and purification reagents.
    • 4. Load aliquot of clinical sample into appropriate chamber of self contained cartridge.
    • 5. Seal cartridge and load into GeneXpert® instrument.
    • 6. Run the appropriate extraction and amplification protocol on the GeneXpert® and analyze the resultant data.


In yet another embodiment of the invention, the use of the primer probe with the first strand cDNA as described above to permit measurement of constituents of a Gene Expression Panel (Precision Profile™) is performed using a QPCR assay on the Roche LightCycler® 480 Real-Time PCR System as follows:


Materials

    • 1. 20× Primer/Probe stock for the 18S endogenous control gene. The endogenous control gene may be dual labeled with either VIC-MGB or VIC-TAMRA.
    • 2. 20× Primer/Probe stock for each target gene, dual labeled with either FAM-TAMRA or FAM-BHQ 1.
    • 3. 2× LightCycler® 490 Probes Master (master mix).
    • 4. 1× cDNA sample stocks transcribed from RNA extracted from samples.
    • 5. 1× TE buffer, pH 8.0.
    • 6. LightCycler® 480 384-well plates.
    • 7. Source MDx 24 gene Precision Profile™ 96-well intermediate plates.
    • 8. RNase/DNase free 96-well plate.
    • 9. 1.5 mL microcentrifuge tubes.
    • 10. Beckman/Coulter Biomek® 3000 Laboratory Automation Workstation,
    • 11. Velocityll Bravo™ Liquid Handling Platform.
    • 12. LightCycler® 480 Real-Time PCR System.


Methods

    • 1. Remove a Source MDx 24 gene Precision Profile™ 96-well intermediate plate from the freezer, thaw and spin in a plate centrifuge.
    • 2. Dilute four (4) 1× cDNA sample stocks in separate 1.5 mL microcentrifuge tubes with the total final volume for each of 540 μL.
    • 3. Transfer the 4 diluted cDNA samples to an empty RNase/DNase free 96-well plate using the Biomek® 3000 Laboratory Automation Workstation.
    • 4. Transfer the cDNA samples from the cDNA plate created in step 3 to the thawed and centrifuged Source MDx 24 gene Precision Profile™ 96-well intermediate plate using Biomek® 3000 Laboratory Automation Workstation. Seal the plate with a foil seal and spin in a plate centrifuge.
    • 5. Transfer the contents of the cDNA-loaded Source MDx 24 gene Precision Profile™ 96, well intermediate plate to a new LightCycler® 480 384-well plate using the Bravo™ Liquid Handling Platform. Seal the 384-well plate with a LightCycler® 480 optical sealing foil and spin in a plate centrifuge for 1 minute at 2000 rpm.
    • 6. Place the sealed in a dark 4° C. refrigerator for a minimum of 4 minutes.
    • 7. Load the plate into the LightCycler® 480 Real-Time PCR System and start the LightCycler® 480 software. Chose the appropriate run parameters and start the run.
    • 8. At the conclusion of the run, analyze the data and export the resulting CP values to the database.


In some instances, target gene FAM measurements may be beyond the detection limit of the particular platform instrument used to detect and quantify constituents of a Gene Expression Panel (Precision Profile™). To address the issue of “undetermined” gene expression measures as lack of expression for a particular gene, the detection limit may be reset and the “undetermined” constituents may be “flagged”. For example without limitation, the ABI Prism® 7900HT Sequence Detection System reports target gene FAM measurements that are beyond the detection limit of the instrument (>40 cycles) as “undetermined”. Detection Limit Reset is performed when at least 1 of 3 target gene FAM CT replicates are not detected after 40 cycles and are designated as “undetermined”. “Undetermined” target gene FAM CT replicates are re-set to 40 and flagged. CT normalization (Δ CT) and relative expression calculations that have used re-set FAM CT values are also flagged.


Baseline Profile Data Sets

The analyses of samples from single individuals and from large groups of individuals provide a library of profile data sets relating to a particular panel or series of panels. These profile data sets may be stored as records in a library for use as baseline profile data sets. As the term “baseline” suggests, the stored baseline profile data sets serve as comparators for providing a calibrated profile data set that is informative about a biological condition or agent. Baseline profile data sets may be stored in libraries and classified in a number of cross-referential ways. One form of classification may rely on the characteristics of the panels from which the data sets are derived. Another form of classification may be by particular biological condition, e.g., melanoma. The concept of a biological condition encompasses any state in which a cell or population of cells may be found at any one time. This state may reflect geography of samples, sex of subjects or any other discriminator. Some of the discriminators may overlap. The libraries may also be accessed for records associated with a single subject or. particular clinical trial. The classification of baseline profile data sets may further be annotated with medical information about a particular subject, a medical condition, and/or a particular agent.


The choice of a baseline profile data set for creating a calibrated profile data set is related to the biological condition to be evaluated, monitored, or predicted, as well as, the intended use of the calibrated panel, e.g., as to monitor drug development, quality control or other uses. It may be desirable to access baseline profile data sets from the same subject for whom a first profile data set is obtained or from different subject at varying times, exposures to stimuli, drugs or complex compounds; or may be derived from like or dissimilar populations or sets of subjects. The baseline profile data set may be normal, healthy baseline.


The profile data set may arise from the same subject for which the first data set is obtained, where the sample is taken at a separate or similar time, a different or similar site or in a different or similar biological condition. For example, a sample may be taken before stimulation or after stimulation with an exogenous compound or substance, such as before or after therapeutic treatment. Alternatively the sample is taken before or include before or after a surgical procedure for skin cancer. The profile data set obtained from the unstimulated sample may serve as a baseline profile data set for the sample taken after stimulation. The baseline data set may also be derived from a library containing profile data sets of a population or set of subjects having some defining characteristic or biological condition. The baseline profile data set may also correspond to some ex vivo or in vitro properties associated with an in vitro cell culture. The resultant calibrated profile data sets may then be stored as a record in a database or library along with or separate from the baseline profile data base and optionally the first profile data set although the first profile data set would normally become incorporated into a baseline profile data set under suitable classification criteria. The remarkable consistency of Gene Expression Profiles associated with a given biological condition makes it valuable to store profile data, which can be used, among other things for normative reference purposes. The normative reference can serve to indicate the degree to which a subject conforms to a given biological condition (healthy or diseased) and, alternatively or in addition, to provide a target for clinical intervention.


Calibrated Data

Given the repeatability achieved in measurement of gene expression, described above in connection with “Gene Expression Panels” (Precision Profiles™) and “gene amplification”, it was concluded that where differences occur in measurement under such conditions, the differences are attributable to differences in biological condition. Thus, it has been found that calibrated profile data sets are highly reproducible in samples taken from the same individual under the same conditions. Similarly, it has been found that calibrated profile data sets are reproducible in samples that are repeatedly tested. Also found have been repeated instances wherein calibrated profile data sets obtained when samples from a subject are exposed ex vivo to a compound are comparable to calibrated profile data from a sample that has been exposed to a sample in vivo.


Calculation of Calibrated Profile Data Sets and Computational Aids

The calibrated profile data set may be expressed in a spreadsheet or represented graphically for example, in a bar chart or tabular form but may also be expressed in a three dimensional representation. The function relating the baseline and profile data may be a ratio expressed as a logarithm. The constituent may be itemized on the x-axis and the logarithmic scale may be on the y-axis. Members of a calibrated data set may be expressed as a positive value representing a relative enhancement of gene expression or as a negative value representing a relative reduction in gene expression with respect to the baseline.


Each member of the calibrated profile data set should be reproducible within a range with respect to similar samples taken from the subject under similar conditions. For example, the calibrated profile data sets may be reproducible within 20%, and typically within 10%. In accordance with embodiments of the invention, a pattern of increasing, decreasing and no change in relative gene expression from each of a plurality of gene loci examined in the Gene Expression Panel (Precision Profile™) may be used to prepare a calibrated profile set that is informative with regards to a biological condition, biological efficacy of an agent treatment conditions or for comparison to populations or sets of subjects or samples, or for comparison to populations of cells. Patterns of this nature may be used to identify likely candidates for a drug trial, used alone or in combination with other clinical indicators to be diagnostic or prognostic with respect to a biological condition or may be used to guide the development of a pharmaceutical or nutraceutical through manufacture, testing and marketing.


The numerical data obtained from quantitative gene expression and numerical data from calibrated gene expression relative to a baseline profile data set may be stored in databases or digital storage mediums and may be retrieved for purposes including managing patient health care or for conducting clinical trials or for characterizing a drug. The data may be transferred in physical or wireless networks via the World Wide Web, email, or internet access site for example or by hard copy so as to be collected and pooled from distant geographic sites.


The method also includes producing a calibrated profile data set for the panel, wherein each member of the calibrated profile data set is a function of a corresponding member of the first profile data set and a corresponding member of a baseline profile data set for the panel, and wherein the baseline profile data set is related to the skin cancer or a condition related to skin cancer to be evaluated, with the calibrated profile data set being a comparison between the first profile data set and the baseline profile data set, thereby providing evaluation of skin cancer or a condition related to skin cancer of the subject.


In yet other embodiments, the function is a mathematical function and is other than a simple difference, including a second function of the ratio of the corresponding member of first profile data set to the corresponding member of the baseline profile data set, or a logarithmic function. In such embodiments, the first sample is obtained and the first profile data set quantified at a first location, and the calibrated profile data set is produced using a network to access a database stored on a digital storage medium in a second location, wherein the database may be updated to reflect the first profile data set quantified from the sample. Additionally, using a network may include accessing a global computer network.


In an embodiment of the present invention, a descriptive record is stored in a single database or multiple databases where the stored data includes the raw gene expression data (first profile data set) prior to transformation by use of a baseline profile data set, as well as a record of the baseline profile data set used to generate the calibrated profile data set including for example, annotations regarding whether the baseline profile data set is derived from a particular Signature Panel and any other annotation that facilitates interpretation and use of the data.


Because the data is in a universal format, data handling may readily be done with a computer. The data is organized so as to provide an output optionally corresponding to a graphical representation of a calibrated data set.


The above described data storage on a computer may provide the information in a form that can be accessed by a user. Accordingly, the user may load the information onto a second access site including downloading the information. However, access may be restricted to users having a password or other security device so as to protect the medical records contained within. A feature of this embodiment of the invention is the ability of a user to add new or annotated records to the data set so the records become part of the biological information.


The graphical representation of calibrated profile data sets pertaining to a product such as a drug provides an opportunity for standardizing a product by means of the calibrated profile, more particularly a signature profile. The profile may be used as a feature with which to demonstrate relative efficacy, differences in mechanisms of actions, etc. compared to other drugs approved for similar or different uses.


The various embodiments of the invention may be also implemented as a computer program product for use with a computer system. The product may include program code for deriving a first profile data set and for producing calibrated profiles. Such implementation may include a series of computer instructions fixed either on a tangible medium, such as a computer readable medium (for example, a diskette, CD-ROM, ROM, or fixed disk), or transmittable to a computer system via a modem or other interface device, such as a communications adapter coupled to a network. The network coupling may be for example, over optical or wired communications lines or via wireless techniques (for example, microwave, infrared or other transmission techniques) or some combination of these. The series of computer instructions preferably embodies all or part of the functionality previously described herein with respect to the system. Those skilled in the art should appreciate that such computer instructions can be written in a number of programming languages for use with many computer architectures or operating systems. Furthermore, such instructions may be stored in any memory device, such as semiconductor, magnetic, optical or other memory devices, and may be transmitted using any communications technology, such as optical, infrared, microwave, or other transmission technologies. It is expected that such a computer program product may be distributed as a removable medium with accompanying printed or electronic documentation (for example, shrink wrapped software), preloaded with a computer system (for example, on system ROM or fixed disk), or distributed from a server or electronic bulletin board over a network (for example, the Internet or World Wide Web). In addition, a computer system is further provided including derivative modules for deriving a first data set and a calibration profile data set.


The calibration profile data sets in graphical or tabular form, the associated databases, and the calculated index or derived algorithm, together with information extracted from the panels, the databases, the data sets or the indices or algorithms are commodities that can be sold together or separately for a variety of purposes as described in WO 01/25473.


In other embodiments, a clinical indicator may be used to assess the skin cancer or a condition related to skin cancer of the relevant set of subjects by interpreting the calibrated profile data set in the context of at least one other clinical indicator, wherein the at least one other clinical indicator is selected from the group consisting of blood chemistry, X-ray or other radiological or metabolic imaging technique, molecular markers in the blood (e.g., human leukocyte antigen (HLA) phenotype), other chemical assays, and physical findings.


Index Construction

In combination, (i) the remarkable consistency of Gene Expression Profiles with respect to a biological condition across a population or set of subject or samples, or across a population of cells and (ii) the use of procedures that provide substantially reproducible measurement of constituents in a Gene Expression Panel (Precision Profile™) giving rise to a Gene Expression Profile, under measurement conditions wherein specificity and efficiencies of amplification for all constituents of the panel are substantially similar, make possible the use of an index that characterizes a Gene. Expression Profile, and which therefore provides a measurement of a biological condition.


An index may be constructed using an index function that maps values in a Gene Expression Profile into a single value that is pertinent to the biological condition at hand. The values in a Gene Expression Profile are the amounts of each constituent of the Gene Expression Panel (Precision Profile™). These constituent amounts form a profile data set, and the index function generates a single value—the index—from the members of the profile data set.


The index function may conveniently be constructed as a linear sum of terms, each term being what is referred to herein as a “contribution function” of a member of the profile data set. For example, the contribution function may be a constant times a power of a member of the profile data set. So the index function would have the form






I=ΣCiMi
P(i),


where I is the index, Mi is the value of the member i of the profile data set, Ci is a constant, and P(i) is a power to which Mi is raised, the sum being formed for all integral values of i up to the number of members in the data set. We thus have a linear polynomial expression. The role of the coefficient.Ci for a particular gene expression specifies whether a higher ΔCt value for this gene either increases (a positive Ci) or decreases (a lower value) the likelihood of skin cancer, the ΔCt values of all other genes in the expression being held constant.


The values Ci and P(i) may be determined in a number of ways, so that the index I is informative of the pertinent biological condition. One way is to apply statistical techniques, such as latent class modeling, to the profile data sets to correlate clinical data or experimentally derived data, or other data pertinent to the biological condition. In this connection, for example, may be employed the software from Statistical Innovations, Belmont, Massachusetts, called. Latent Gold®. Alternatively, other simpler modeling techniques may be employed in a manner known in the art. The index function for skin cancer may be constructed, for example, in a manner that a greater degree of skin cancer (as determined by the profile data set for the any of the Precision Profiles™ (listed in Tables 1-6) described herein) correlates with a large value of the index function.


Just as a baseline profile data set, discussed above, can be used to provide an appropriate normative reference, and can even be used to create a Calibrated profile data set, as discussed above, based on the normative reference, an index that characterizes a Gene Expression Profile can also be provided with a normative value of the index function used to create the index. This normative value can be determined with respect to a relevant population or set of subjects or samples or to a relevant population of cells, so that the index may be interpreted in relation to the normative value. The relevant population or set of subjects or samples, or relevant population of cells may have in common a property that is at least one of age range, gender, ethnicity, geographic location, nutritional history, medical condition, clinical indicator, medication, physical activity, body mass, and environmental exposure.


As an example, the index can be constructed, in relation to a normative Gene Expression Profile for a population or set of healthy subjects, in such a way that a reading of approximately 1 characterizes normative Gene Expression Profiles of healthy subjects. Let us further assume that the biological condition that is the subject of the index is skin cancer; a reading of 1 in this example thus corresponds to a Gene Expression Profile that matches the norm for healthy subjects. A substantially higher reading then may identify a subject experiencing skin cancer, or a condition related to skin cancer. The use of 1 as identifying a normative value, however, is only one possible choice; another logical choice is to use 0 as identifying the normative value. With this choice, deviations in the index from zero can be indicated in standard deviation units (so that values lying between −1 and +1 encompass 90% of a normally distributed reference population or set of subjects. Since it was determined that Gene Expression Profile values (and accordingly constructed indices based on them) tend to be normally distributed, the 0-centered index constructed in this manner is highly informative. It therefore facilitates use of the index in diagnosis of disease and setting objectives for treatment.


Still another embodiment is a method of providing an index pertinent to skin cancer or conditions related to skin cancer of a subject based on a first sample from the subject, the first sample providing a source of RNAs, the method comprising deriving from the first sample a profile data set, the profile data set including a plurality of members, each member being a quantitative measure of the amount of a distinct RNA constituent in a panel of constituents selected so that measurement of the constituents is indicative of the presumptive signs of skin cancer, the panel including at least one of any of the genes listed in the Precision Profiles™ (listed in Tables 1-6). In deriving the profile data set, such measure for each constituent is achieved under measurement conditions that are substantially repeatable, at least one measure from the profile data set is applied to an index function that provides a mapping from at least one measure of the profile data set into one measure of the presumptive signs of skin cancer, so as to produce an index pertinent to the skin cancer or a condition related to skin cancer of the subject.


As another embodiment of the invention, an index function 1 of the form






I=C
0
+ΣC
i
M
1i
P1(i)
M
2i
P2(i),


can be employed, where M1 and M2 are values of the member i of the profile data set, Ci is a constant determined without reference to the profile data set, and P1 and P2 are powers to which M1 and M2 are raised. The role of P1(i) and P2(i) is to specify the specific functional form of the quadratic expression, whether in fact the equation is linear, quadratic, contains cross-product terms, or is constant. For example, when P1=P2=0, the index function is simply the sum of constants; when P1=1 and P2=0, the index function is a linear expression; when P1=P2=1, the index function is a quadratic expression.


The constant C0 serves to calibrate this expression to the biological population of interest that is characterized by having skin cancer. In this embodiment, when the index value equals 0, the odds are 50:50 of the subject having skin cancer vs a normal subject. More generally, the predicted odds of the subject having skin cancer is [exp(Ii)], and therefore the predicted probability of having skin cancer is [exp(Ii)]/[1+exp((Ii)]. Thus, when the index exceeds 0, the predicted probability that a subject has skin cancer is higher than 0.5, and when it falls below 0, the predicted probability is less than 0.5.


The value of C0 may be adjusted to reflect the prior probability of being in this population based on known exogenous risk factors for the subject. In an embodiment where C0 is adjusted as a function of the subject's risk factors, where the subject has prior probability pi of having skin cancer based on such risk factors, the adjustment is made by increasing (decreasing) the unadjusted C0 value by adding to C0 the natural logarithm of the following ratio: the prior odds of having skin cancer taking into account the risk factors/the overall prior odds of having skin cancer without taking into account the risk factors.


Performance and Accuracy Measures of the Invention

The performance and thus absolute and relative clinical usefulness of the invention may be assessed in multiple ways as noted above. Amongst the various assessments of performance, the invention is intended to provide accuracy in clinical diagnosis and prognosis. The accuracy of a diagnostic or prognostic test, assay, or method concerns the ability of the test, assay, or method to distinguish between subjects having skin cancer is based on whether the subjects have an “effective amount” or a “significant alteration” in the levels of a cancer associated gene. By “effective amount” or “significant alteration”, it is meant that the measurement of an appropriate number of cancer associated gene (which may be one or more) is different than the predetermined cut-off point (or threshold value) for that cancer associated gene and therefore indicates that the subject has skin cancer for which the cancer associated gene(s) is a determinant.


The difference in the level of cancer associated gene(s) between normal and abnormal is preferably statistically significant. As noted below, and without any limitation of the invention, achieving statistical significance, and thus the preferred analytical and clinical accuracy, generally but not always requires that combinations of several cancer associated gene(s) be used together in panels and combined with mathematical algorithms in order to achieve a statistically significant cancer associated gene index.


In the categorical diagnosis of a disease state, changing the cut point or threshold value of a.test (or assay) usually changes the sensitivity and specificity, but in a qualitatively inverse relationship. Therefore, in assessing the accuracy and usefulness of a proposed medical test, assay, or method for assessing a subject's condition, one should always take both sensitivity and specificity into account and be mindful of what the cut point is at which the sensitivity and specificity are being reported because sensitivity and specificity may vary significantly over the range of cut points. Use of statistics such as AUC, encompassing all potential cut point values, is preferred for most categorical risk measures using the invention, while for continuous risk measures, statistics of goodness-of-fit and calibration to observed results or other gold standards, are preferred.


Using such statistics, an “acceptable degree of diagnostic accuracy”, is herein defined as a test or assay (such as the test of the invention for determining an effective amount or a significant alteration of cancer associated gene(s), which thereby indicates the presence of skin cancer in which the AUC (area under the ROC curve for the test or assay) is at least 0.60, desirably at least 0.65, more desirably at least 0.70, preferably at least 0.75, more preferably at least 0.80, and most preferably at least 0.85.


By a “very high degree of diagnostic accuracy”, it is meant a test or assay in which the AUC (area under the ROC curve for the test or assay) is at least 0.75, desirably at least 0.775, more desirably at least 0.800, preferably at least 0.825, more preferably at least 0.850, and most preferably at least 0.875.


The predictive value of any test depends on the sensitivity and specificity of the test, and on the prevalence of the condition in the population being tested. This notion, based on Bayes' theorem, provides that the greater the likelihood that the condition being screened for is present in an individual or in the population (pre-test probability), the greater the validity of a positive test and the greater the likelihood that the result is a true positive. Thus, the problem with using a test in any population where there is a low likelihood of the condition being present is that a positive result has limited value (i.e., more likely to be a false positive). Similarly, in populations at very high risk, a negative test result is more likely to be a false negative.


As a result, ROC and AUC can be misleading as to the clinical utility of a test in low disease prevalence tested populations (defined as those with less than 1% rate of occurrences (incidence) per annum, or less than 10% cumulative prevalence over a specified time horizon). Alternatively, absolute risk and relative risk ratios as defined elsewhere in this disclosure can be employed to determine the degree of clinical utility. Populations of subjects to be tested can also be categorized into quartiles by the test's measurement values, where the top quartile (25% of the population) comprises the group of subjects with the highest relative risk for developing skin cancer, and the bottom quartile comprising the group of subjects having the lowest relative risk for developing skin cancer. Generally, values derived from tests or assays having over 2.5 times the relative risk from top to bottom quartile in a low prevalence population are considered to have a “high degree of diagnostic accuracy,” and those with five to seven times the relative risk for each quartile are considered to have a “very high degree of diagnostic accuracy.” Nonetheless, values derived from tests or assays having only 1.2 to 2.5 times the relative risk for each quartile remain clinically useful are widely used as risk factors for a disease. Often such lower diagnostic accuracy tests must be combined with additional parameters in order to derive meaningful clinical thresholds for therapeutic intervention, as is done with the aforementioned global risk assessment indices.


A health economic utility function is yet another means of measuring the performance and clinical value of a given test, consisting of weighting the potential categorical test outcomes based on actual measures of clinical and economic value for each. Health economic performance is closely related to accuracy, as a health economic utility function specifically assigns an economic value for the benefits of correct classification and the costs of misclassification of tested subjects. As a performance measure, it is not unusual to require a test to achieve a level of performance which results in an increase in health economic value per test (prior to testing costs) in excess of the target price of the test.


In general, alternative methods of determining diagnostic accuracy are commonly used for continuous measures, when a disease category or risk category (such as those at risk for having a bone fracture) has not yet been clearly defined by the relevant medical societies and practice of medicine, where thresholds for therapeutic use are not yet established, or where there is no existing gold standard for diagnosis of the pre-disease. For continuous measures of risk, measures of diagnostic accuracy for a calculated index are typically based on curve fit and calibration between the predicted continuous value and the actual observed values (or a historical index calculated value) and utilize measures such as R squared, Hosmer-Lemeshow P-value statistics and confidence intervals. It is not unusual for predicted values using such algorithms to be reported including a confidence interval (usually. 90% or 95% CI) based on a historical observed cohort's predictions, as in the test for risk of future breast cancer recurrence commercialized by Genomic Health, Inc. (Redwood City, California).


In general, by defining the degree of diagnostic accuracy, i.e., cut points on a ROC curve, defining an acceptable AUC value, and determining the acceptable ranges in relative concentration of what constitutes an effective amount of the cancer associated gene(s) of the invention allows for one of skill in the art to use the cancer associated gene(s) to identify, diagnose, or prognose subjects with a pre-determined level of predictability and performance.


Results from the cancer associated gene(s) indices thus derived can then be validated through their calibration with actual results, that is, by comparing the predicted versus observed rate of disease in a given population, and the best predictive cancer associated gene(s) selected for and optimized through mathematical models of increased complexity. Many such formula may be used; beyond the simple non-linear transformations, such as logistic regression, of particular interest in this use of the present invention are structural and synactic classification algorithms, and methods of risk index construction, utilizing pattern recognition features, including established techniques such as the Kth-Nearest Neighbor, Boosting, Decision Trees, Neural Networks, Bayesian Networks, Support Vector Machines, and Hidden Markov Models, as well as other formula described herein.


Furthermore, the application of such techniques to panels of multiple cancer associated gene(s) is provided, as is the use of such combination to create single numerical “risk indices” or “risk scores” encompassing information from multiple cancer associated gene(s) inputs. Individual B cancer associated gene(s) may also be included or excluded in the panel of cancer associated gene(s) used in the calculation of the cancer associated gene(s) indices so derived above, based on various measures of relative performance and calibration in validation, and employing through repetitive training methods such as forward, reverse, and stepwise selection, as well as with genetic algorithm approaches, with or without the use of constraints on the complexity of the resulting cancer associated gene(s) indices.


The above measurements of diagnostic accuracy for cancer associated gene(s) are only a few of the possible measurements of the clinical performance of the invention. It should be noted that the appropriateness of one measurement of clinical accuracy or another will vary based upon the clinical application, the population tested, and the clinical consequences of any potential misclassification of subjects. Other important aspects of the clinical and overall performance of the invention include the selection of cancer associated gene(s) so as to reduce overall cancer associated gene(s) variability (whether due to method (analytical) or biological (pre-analytical variability, for example, as in diurnal variation), or to the integration and analysis of results (post-analytical variability) into indices and cut-off ranges), to assess analyte stability or sample integrity, or to allow the use of differing sample matrices amongst blood, cells, serum, plasma, urine, etc.


Kits

The invention also includes a skin cancer detection reagent, i.e., nucleic acids that specifically identify one or more skin cancer or a condition related to skin cancer nucleic acids (e.g., any gene listed in Tables 1-6, oncogenes, tumor suppression genes, tumor progression genes, angiogenesis genes and lymphogenesis genes; sometimes referred to herein as skin cancer associated genes or skin cancer associated constituents) by having homologous nucleic acid sequences, such as oligonucleotide sequences, complementary to a portion of the skin cancer genes nucleic acids or antibodies to proteins encoded by the skin cancer gene nucleic acids packaged together in the form of a kit. The oligonucleotides can be fragments of the skin cancer genes. For example the oligonucleotides can be 200, 150, 100, 50, 25, 10 or less nucleotidesin, length. The kit may contain in separate containers a nucleic acid or antibody (either already bound to a solid matrix or packaged separately with reagents for binding them to the matrix), control formulations (positive and/or negative), and/or a detectable label. Instructions (i.e., written, tape, VCR, CD-ROM, etc.) for carrying out the assay may be included in the kit. The assay may for example be in the form of PCR, a Northern hybridization or a sandwich ELISA, as known in the art.


For example, skin cancer gene detection reagents can be immobilized on a solid matrix such as a porous strip to form at least one skin cancer gene detection site. The measurement or detection region of the porous strip may include a plurality of sites containing a nucleic acid. A test strip may also contain sites for negative and/or positive controls. Alternatively, control sites can be located on a separate strip from the test strip. Optionally, the different detection sites may contain different amounts of immobilized nucleic acids, i.e., a higher amount in the first detection site and lesser amounts in subsequent sites. Upon the addition of test sample, the number of sites displaying a detectable signal provides a quantitative indication of the amount of skin cancer genes present in.the sample. The detection sites may be configured in any suitably detectable shape and are typically in the shape of a bar or dot spanning the width of a test strip.


Alternatively, skin cancer detection genes can be labeled (e.g., with one or more fluorescent dyes) and immobilized on lyophilized beads to form at least one skin cancer gene detection site. The beads may also contain sites for negative and/or positive controls. Upon addition of the test sample, the number of sites displaying a detectable signal provides a quantitative indication of the amount of skin cancer genes present in the sample.


Alternatively, the kit contains a nucleic acid substrate array comprising one or more nucleic acid sequences. The nucleic acids on the array specifically identify one or more nucleic acid sequences represented by skin cancer genes (see Tables 1-6). In various embodiments, the expression of 1, 2, 3, 4, 5, 6, 7, 8, 9, 10, 15, 20, 25, 40 or 50 or more of the sequences represented by skin cancer genes (see Tables 1-6) can be identified by virtue of binding to the array. The substrate array can be on, i.e., a solid substrate, i.e., a “chip” as described in U.S. Pat. No. 5,744,305. Alternatively, the substrate array can be a solution array, i.e., Luminex, Cyvera, Vitra and Quantum Dots' Mosaic.


The skilled artisan can routinely make antibodies, nucleic acid probes, i.e., oligonucleotides, aptamers, siRNAs, antisense oligonucleotides, against any of the skin cancer genes listed in Tables 1-6.


Other Embodiments

While the invention has been described in conjunction with the detailed description thereof, the foregoing description is intended to illustrate and not limit the scope of the invention, which is defined by the scope of the appended claims. Other aspects, advantages, and modifications are within the scope of the following claims.


Examples
Example 1
Patient Population

RNA was isolated using the PAXgene System from blood samples obtained from a total of 200 subjects suffering from melanoma and 50 healthy, normal (i.e., not suffering from or diagnosed with skin cancer) subjects. These RNA samples were used for the gene expression analysis studies described in Examples 3-8 below.


The melanoma subjects that participated in the study included male and female subjects, each 18 years or older and able to provide consent. The study population included subjects having Stage 1, 2, 3, and 4 melanoma, and subjects having either active (i.e., clinical evidence of disease, and including subjects that had blood drawn within 2-3 weeks post resection even though clinical evidence of disease was not necessarily present after resection) or inactive disease (i.e., no clinical evidence of disease). Staging was evaluated and tracked according to tumor thickness and ulceration, spread to lymph nodes, and metastasis to distant organs.


Example 2
Enumeration and Classification Methodology Based on Logistic Regression Models Introduction

The following methods were used to generate the 1, 2, and 3-gene models capable of distinguishing between subjects diagnosed with skin cancer and normal subjects, with at least 75% classification accurary, described in Examples 3-8 below.


Given measurements on G genes from samples of NI subjects belonging to group 1 and N2 members of group 2, the purpose was to identify models containing g<G genes which discriminate between the 2 groups. The groups might be such that one consists of reference subjects (e.g., healthy, normal subjects) while the other group might have a specific disease, or subjects in group 1 may have disease A while those in group 2 may have disease B.


Specifically, parameters from a linear logistic regression model were estimated to predict a subject's probability of belonging to group 1 given his (her) measurements on the g genes in the model. After all the models were estimated (all G 1-gene models were estimated, as well as all








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,




and all (G 3)=G*(G−1)*(G−2)/6 3-gene models based on G genes (number of combinations taken 3 at a time from G)), they were evaluated using a 2-dimensional screening process. The first dimension employed a statistical screen (significance of incremental p-values) that eliminated models that were likely to overfit the data and thus may not validate when applied to new subjects. The second dimension employed a clinical screen to eliminate models for which the expected misclassification rate was higher thaman acceptable level. As a threshold analysis, the gene models showing less than 75% discrimination between N1 subjects belonging to group 1 and N2 members of group 2 (i.e., misclassification of 25% or more of subjects in either of the 2 sample groups), and genes with incremental p-values that were not statistically significant, were eliminated.


Methodological, Statistical and Computing Tools Used

The Latent GOLD program (Vermunt and Magidson, 2005) was used to estimate the logistic regression models. For efficiency in processing the models, the LG-Syntax™ Module available with version 4.5 of the program (Vermunt and Magidson, 2007) was used in batch mode, and all g-gene models associated with a particular dataset were submitted in a single run to be estimated. That is, all 1-gene models were submitted in a single run, all 2-gene models were submitted in a second run, etc.


The Data

The data consists of ΔCT values for each sample subject in each of the 2 groups (e.g., cancer subject vs. reference (e.g., healthy, normal subjects) on each of G(k) genes obtained from . a particular class k of genes. For a given disease, separate analyses were performed based on disease specific genes, including without limitation genes specific for prostate, breast, ovarian, cervical, lung, colon, and skin cancer, (k=1), inflammatory genes (k=2), human cancer general genes (k=3), genes from a cross cancer gene panel (k=4), and genes in the EGR family (k=5).


Analysis Steps

The steps in a given analysis of the G(k) genes measured on N1 subjects in group 1 and N2 subjects in group 2 are as follows:

  • 1) Eliminate low expressing genes: In some instances, target gene FAM measurements were beyond the detection limit (i.e., very high ΔCT values which indicate low expression) of the particular platform instrument used to detect and quantify constituents of a Gene Expression Panel (Precision Profile™). To address the issue of “undetermined” gene expression measures as lack of expression for a particular gene, the detection limit was reset and the “undetermined” constituents were “flagged”, as previously described. CT normalization (Δ CT) and relative expression calculations that have used re-set FAM CT values were also flagged. In some instances, these low expressing genes (i.e., re-set FAM CT values) were eliminated from the analysis in step 1 if 50% or more ΔCT values from either of the 2 groups were flagged. Although such genes were eliminated from the statistical analyses described herein, one skilled in the art would recognize that such genes may be relevant in a disease state.
  • 2) Estimate logistic regression (logit) models predicting P(i)=the probability of being in group 1 for each subject i=1,2, . . . , N1+N2. Since there are only 2 groups, the probability of being in group 2 equals 1−P(i). The maximum likelihood (ML) algorithm implemented in Latent GOLD 4.0 (Vermunt and Magidson, 2005) was used to estimate the model parameters. All 1-gene models were estimated first, followed by all 2-gene models and in cases where the sample sizes N1 and N2 were sufficiently large, all 3-gene models were estimated.
  • 3) Screen out models that fail to meet the statistical or clinical criteria: Regarding the statistical criteria, models were retained if the incremental p-values for the parameter estimates for each gene (i.e., for each predictor in the model) fell below the cutoff point alpha=0.05. Regarding the clinical criteria, models were retained if the percentage of cases within each group (e.g., disease group, and reference group (e.g., healthy, normal subjects) that was correctly predicted to be in that group was at least 75%. For technical details, see the section “Application of the Statistical and Clinical Criteria to Screen Models”.
  • 4) Each model yielded an index that could be used to rank the sample subjects. Such an index value could also be computed for new cases not included in the sample. See the section “Computing Model-based Indices for each Subject” for details on how this index was calculated.
  • 5) A cutoff value somewhere between the lowest and highest index value was selected and based on this cutoff, subjects with indices above the cutoff were classified (predicted to be) in the disease group, those below the cutoff were classified into the reference group (i.e., normal, healthy subjects). Based on such classifications, the percent of each group that is correctly classified was determined. See the section labeled “Classifying Subjects into Groups” for details on how the cutoff was chosen.
  • 6) Among all models that survived the screening criteria (Step 3), an entropy-based R2 statistic was used to rank the models from high to low, i.e., the models with the highest percent classification rate to the lowest percent classification rate. The top 5 such models are then evaluated with respect to the percent correctly classified and the one having the highest percentages was selected as the single “best” model. A discrimination plot was provided for the best model having an 85% or greater percent classification rate. For details on how this plot was developed, see the section “Discrimination Plots” below.


While there are several possible R2 statistics that might be used for this purpose, it was determined that the one based on entropy was most sensitive to the extent to which a model yields clear separation between the 2 groups. Such sensitivity provides a model which can be used as a tool by a practitioner (e.g., primary care physician, oncologist, etc.) to ascertain the necessity of future screening or treatment options. For more detail on this issue, see the section labeled “Using R2 Statistics to Rank Models” below.


Computing Model-Based Indices for Each Subject

The model parameter estimates were used to compute a numeric value (logit, odds or probability) for each diseased and reference subject (e.g., healthy, normal subject) in the sample. For illustrative purposes only, in an example of a 2-gene logit model for cancer containing the genes ALOX5 and S100A6, the following parameter estimates listed in Table A were obtained:













TABLE A









Cancer
alpha(1)
18.37



Normals
alpha(2)
−18.37



Predictors



ALOX5
beta(1)
−4.81



S100A6
beta(2)
2.79











For a given subject with particular ΔCT values observed for these genes, the predicted logit associated with cancer vs. reference (i.e., normals) was computed as:





LOGIT (ALOX5, S100A6)=[alpha(1)−alpha(2)]+beta(1)*ALOX5+beta(2)*S100A6.


The predicted odds of having cancer would be:





ODDS (ALOX5, S100A6)=exp[LOGIT (ALOX5, S100A6)]


and the predicted probability of belonging to the cancer group is:





P (ALOX5, S100A6)=ODDS (ALOX5, S100A6)/[1+ODDS (ALOX5, S100A6)]


Note that the ML estimates for the alpha parameters were based on the relative proportion of the group sample sizes. Prior to computing the predicted probabilities, the alpha estimates may be adjusted to take into account the relative proportion in the population to which the model will be applied (for example, without limitation, the incidence of prostate cancer in the population of adult men in the U.S., the incidence of breast cancer in the population of adult women in the U.S., etc.)


Classifying Subjects Into Groups

The “modal classification rule” was used to predict into which group a given case belongs. This rule classifies a case into the group for which the model yields the highest predicted probability. Using the same cancer example previously described (for illustrative purposes only), use of the modal classification rule would classify any subject having P>0.5 into the cancer group, the others into the reference group (e.g., healthy, normal subjects). The percentage of all N1 cancer subjects that were correctly classified were computed as the number of such subjects having P>0.5 divided by N1. Similarly, the percentage of all N2 reference (e.g., normal healthy) subjects that were correctly classified were computed as the number of such subjects having P≦0.5 divided by N2. Alternatively, a cutoff point P0 could be used instead of the modal classification rule so that any subject i having P(i)>P0 is assigned to the cancer group, and otherwise to the Reference group (e.g., normal, healthy group).


Application of the Statistical and Clinical Criteria to Screen Models
Clinical Screening Criteria

In order to determine whether a model met the clinical 75% correct classification criteria, the following approach was used:

    • A. All sample subjects were ranked from high to low by their predicted probability P (e.g., see Table B).
    • B. Taking P0(i)=P(i) for each subject, one at a time, the percentage of group 1 and group 2 that would be correctly classified, Pi(i) and P2(i) was computed.
    • C. The information in the resulting table was scanned and any models for which none of the potential cutoff probabilities met the clinical criteria (i.e., no cutoffs P0(i) exist such that both P1(i)>0.75 and P2(i)>0.75) were eliminated. Hence, models that did not meet the clinical criteria were eliminated.


The example shown in Table B has many cut-offs that meet this criteria. For example, the cutoff P0=0.4 yields correct classification rates of 92% for the reference group (i.e., normal, healthy subjects), and 93% for Cancer subjects. A plot based on this cutoff is shown in FIG. 1 and described in the section “Discrimination Plots”.


Statistical Screening Criteria

In order to determine whether a model met the statistical criteria, the following approach was used to compute the incremental p-value for each gene g=1,2, . . . , G as follows:

    • i. Let LSQ(0) denote the overall model L-squared output by Latent GOLD for an unrestricted model.
    • ii. Let LSQ(g) denote the overall model L-squared output by Latent GOLD for the restricted version of the model where the effect of gene g is restricted to 0.
    • iii. With 1 degree of freedom, use a ‘components of chi-square’ table to determine the p-value associated with the LR difference statistic LSQ(g)−LSQ(0).


Note that this approach required estimating g restricted models as well as 1 unrestricted model.


Discrimination Plots

For a 2-gene model, a discrimination plot consisted of plotting the ΔCT values for each subject in a scatterplot where the values associated with one of the genes served as the vertical axis, the other serving as the horizontal axis. Two different symbols were used for the points to denote whether the subject belongs to group 1 or 2.


A line was appended to a discrimination graph to illustrate how well the 2-gene model discriminated between the 2 groups. The slope of the line was determined by computing the ratio of the ML parameter estimate associated with the gene plotted along the horizontal axis divided by the corresponding estimate associated with the gene plotted along the vertical axis. The intercept of the line was determined as a function of the cutoff point. For the cancer example model based on the 2 genes ALOX5 and S100A6 shown in FIG. 1, the equation for the line associated with the cutoff of 0.4 is ALOX5=7.7+0.58*S100A6. This line provides correct classification rates of 93% and 92% (4 of 57 cancer subjects misclassified and only 4 of 50 reference (i.e., normal) subjects misclassified).


For a 3-gene model, a 2-dimensional slice defined as a linear combination of 2 of the genes was plotted along one of the axes, the remaining gene being plotted along the other axis. The particular linear combination was determined based on the parameter estimates. For example, if a 3rd gene were added to the 2-gene model consisting of ALOX5 and S 100A6 and the parameter estimates for ALOX5 and S100A6 were beta(1) and beta(2) respectively, the linear combination beta(1)*ALOX5+beta(2)*S100A6 could be used. This approach can be readily extended to the situation with 4 or more genes in the model by taking additional linear combinations. For example, with 4 genes one might use beta(1)*ALOX5+beta(2)*S100A6 along one axis and beta(3)*gene3+beta(4)*gene4 along the other, or beta(1)*ALOX5+beta(2)*S100A6+beta(3)*gene3 along one axis and gene4 along the other axis. When producing such plots with 3 or more genes, genes with parameter estimates having the same sign were chosen for combination.


Using R2 Statistics to Rank Models

The R2 in traditional OLS (ordinary least squares) linear regression of a continuous dependent variable can be interpreted in several different ways, such as 1) proportion of variance accounted for, 2) the squared correlation between the observed and predicted values, and 3) a transformation of the F-statistic. When the dependent variable is not continuous but categorical (in our models the dependent variable is dichotomous—membership in the diseased group or reference group), this standard R2 defined in terms of variance (see definition 1 above) is only one of several possible measures. The term ‘pseudo R2’ has been coined for the generalization of the standard variance-based R2 for use with categorical dependent variables, as well as other settings where the usual assumptions that justify OLS do not apply.


The general definition of the (pseudo) R2 for an estimated model is the reduction of errors compared to the errors of a baseline model. For the purpose of the present invention, the estimated model is a logistic regression model for predicting group membership based on 1 or more continuous predictors (ACT measurements of different genes). The baseline model is the regression model that contains no predictors; that is, a model where the regression coefficients are restricted to 0. More precisely, the pseudo R2 is defined as:






R
2=[Error(baseline)−Error(model)]/Error(baseline)


Regardless how error is defined, if prediction is perfect, Error(model)=0 which yields R2=1. Similarly, if all of the regression coefficients do in fact turn out to equal 0, the model is equivalent to the baseline, and thus R2=0. In general, this pseudo R2 falls somewhere between 0 and 1.


When Error is defined in terms of variance, the pseudo R2 becomes the standard R2. When the dependent variable is dichotomous group membership, scores of 1 and 0, −1 and +1, or any other 2 numbers for the 2 categories yields the same value for R2. For example, if the dichotomous dependent variable takes on the scores of 1 and 0, the variance is defined as P*(1−P) where P is the probability of being in 1 group and 1−P the probability of being in the other.


A common alternative in the case of a dichotomous dependent variable, is to define error in terms of entropy. In this situation, entropy can be defined as P*ln(P)*(1−P)*ln(1−P) (for further discussion of the variance and the entropy based R2, see Magidson, Jay, “Qualitative Variance, Entropy and Correlation Ratios for Nominal Dependent Variables,” Social Science Research 10 (June), pp. 177-194).


The R2 statistic was used in the enumeration methods described herein to identify the “best” gene-model. R2 can be calculated in different ways depending upon how the error variation and total observed variation are defined. For example, four different R2 measures output by Latent GOLD are based on:

  • a) Standard variance and mean squared error (MSE)
  • b) Entropy and minus mean log-likelihood (−MLL)
  • c) Absolute variation and mean absolute error (MAE)
  • d) Prediction errors and the proportion of errors under modal assignment (PPE)


Each of these 4 measures. equal 0 when the predictors provide zero discrimination between the groups, and equal 1 if the model is able to classify each subject into their actual group with 0 error. For each measure, Latent GOLD defines the total variation as the error of the baseline (intercept-only) model which restricts the effects of all predictors to 0. Then for each, R2 is defined as the proportional reduction of errors in the estimated model compared to the baseline model. For the 2-gene cancer example used to illustrate the enumeration methodology described herein, the baseline model classifies all cases as being in the diseased group since this group has a larger sample size, resulting in 50 misclassifications (all 50 normal subjects are misclassified) for a prediction error of 50/107=0.467. In contrast, there are only 10 prediction errors (=10/107=0.093) based on the 2-gene model using the modal assignment rule, thus yielding a prediction error R2 of 1−0.093/0.467=0.8. As shown in Exhibit 1, 4 normal and 6 cancer subjects would be misclassified using the modal assignment rule. Note that the modal rule utilizes P0=0.5 as the cutoff. If P0=0.4 were used instead, there would be only 8 misclassified subjects.


The sample discrimination plot shown in FIG. 1 is for a 2-gene model for cancer based on disease-specific genes. The 2 genes in the model are ALOX5 and S100A6 and only 8 subjects are misclassified (4 blue circles corresponding to normal subjects fall to the right and below the line, while 4 red Xs corresponding to misclassified cancer subjects lie above the line).


To reduce the likelihood of obtaining models that capitalize on chance variations in the observed samples the models may be limited to contain only M genes as predictors in the model. (Although a model may meet the significance criteria, it may overfit data and thus would not be expected to validate when applied to a new sample of subjects.) For example, for M=2, all models would be estimated which contain:







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Computation of the Z-Statistic

The Z-Statistic associated with the test of significance between the mean ΔCT values for the cancer and normal groups for any gene g was calculated as follows:

  • i. Let LL[g] denote the log of the likelihood function that is maximized under the logistic regression model that predicts group membership (Cancer vs. Normal) as a function of the ΔCT value associated with gene g. There are 2 parameters in this model—an intercept and a slope.
  • ii. Let LL(0) denote the overall model L-squared output by Latent GOLD for the restricted version of the model where the slope parameter reflecting the effect of gene g is restricted to 0. This model has only 1 unrestricted parameter−the intercept.
  • iii. With 2−1=1 degree of freedom (the difference in the number of unrestricted parameters in the models), one can use a ‘components of chi-square’ table to determine the p-value associated with the Log Likelihood difference statistic LLDiff=−2*(LL[0]−LL[g])=2*(LL[g]−LL[0]).
  • iv. Since the chi-squared statistic with 1 df is the square of a Z-statistic, the magnitude of the Z-statistic can be computed as the square root of the LLDiff. The sign of Z is negative if the mean ΔCT value for the cancer group on gene g is less than the corresponding mean for the normal group, and positive if it is greater.
  • v. These Z-statistics can be plotted as a bar graph. The length of the bar has a monotonic relationship with the p-value.









TABLE B







ΔCT Values and Model Predicted Probability of Cancer for Each Subject










ALOX5
S100A6
P
Group













13.92
16.13
1.0000
Cancer


13.90
15.77
1.0000
Cancer


13.75
15.17
1.0000
Cancer


13.62
14.51
1.0000
Cancer


15.33
17.16
1.0000
Cancer


13.86
14.61
1.0000
Cancer


14.14
15.09
1.0000
Cancer


13.49
13.60
0.9999
Cancer


15.24
16.61
0.9999
Cancer


14.03
14.45
0.9999
Cancer


14.98
16.05
0.9999
Cancer


13.95
14.25
0.9999
Cancer


14.09
14.13
0.9998
Cancer


15.01
15.69
0.9997
Cancer


14.13
14.15
0.9997
Cancer


14.37
14.43
0.9996
Cancer


14.14
13.88
0.9994
Cancer


14.33
14.17
0.9993
Cancer


14.97
15.06
0.9988
Cancer


14.59
14.30
0.9984
Cancer


14.45
13.93
0.9978
Cancer


14.40
13.77
0.9972
Cancer


14.72
14.31
0.9971
Cancer


14.81
14.38
0.9963
Cancer


14.54
13.91
0.9963
Cancer


14.88
14.48
0.9962
Cancer


14.85
14.42
0.9959
Cancer


15.40
15.30
0.9951
Cancer


15.58
15.60
0.9951
Cancer


14.82
14.28
0.9950
Cancer


14.78
14.06
0.9924
Cancer


14.68
13.88
0.9922
Cancer


14.54
13.64
0.9922
Cancer


15.86
15.91
0.9920
Cancer


15.71
15.60
0.9908
Cancer


16.24
16.36
0.9858
Cancer


16.09
15.94
0.9774
Cancer


15.26
14.41
0.9705
Cancer


14.93
13.81
0.9693
Cancer


15.44
14.67
0.9670
Cancer


15.69
15.08
0.9663
Cancer


15.40
14.54
0.9615
Cancer


15.80
15.21
0.9586
Cancer


15.98
15.43
0.9485
Cancer


15.20
14.08
0.9461
Normal


15.03
13.62
0.9196
Cancer


15.20
13.91
0.9184
Cancer


15.04
13.54
0.8972
Cancer


15.30
13.92
0.8774
Cancer


15.80
14.68
0.8404
Cancer


15.61
14.23
0.7939
Normal


15.89
14.64
0.7577
Normal


15.44
13.66
0.6445
Cancer


16.52
15.38
0.5343
Cancer


15.54
13.67
0.5255
Normal


15.28
13.11
0.4537
Cancer


15.96
14.23
0.4207
Cancer


15.96
14.20
0.3928
Normal


16.25
14.69
0.3887
Cancer


16.04
14.32
0.3874
Cancer


16.26
14.71
0.3863
Normal


15.97
14.18
0.3710
Cancer


15.93
14.06
0.3407
Normal


16.23
14.41
0.2378
Cancer


16.02
13.91
0.1743
Normal


15.99
13.78
0.1501
Normal


16.74
15.05
0.1389
Normal


16.66
14.90
0.1349
Normal


16.91
15.20
0.0994
Normal


16.47
14.31
0.0721
Normal


16.63
14.57
0.0672
Normal


16.25
13.90
0.0663
Normal


16.82
14.84
0.0596
Normal


16.75
14.73
0.0587
Normal


16.69
14.54
0.0474
Normal


17.13
15.25
0.0416
Normal


16.87
14.72
0.0329
Normal


16.35
13.76
0.0285
Normal


16.41
13.83
0.0255
Normal


16.68
14.20
0.0205
Normal


16.58
13.97
0.0169
Normal


16.66
14.09
0.0167
Normal


16.92
14.49
0.0140
Normal


16.93
14.51
0.0139
Normal


17.27
15.04
0.0123
Normal


16.45
13.60
0.0116
Normal


17.52
15.44
0.0110
Normal


17.12
14.46
0.0051
Normal


17.13
14.46
0.0048
Normal


16.78
13.86
0.0047
Normal


17.10
14.36
0.0041
Normal


16.75
13.69
0.0034
Normal


17.27
14.49
0.0027
Normal


17.07
14.08
0.0022
Normal


17.16
14.08
0.0014
Normal


17.50
14.41
0.0007
Normal


17.50
14.18
0.0004
Normal


17.45
14.02
0.0003
Normal


17.53
13.90
0.0001
Normal


18.21
15.06
0.0001
Normal


17.99
14.63
0.0001
Normal


17.73
14.05
0.0001
Normal


17.97
14.40
0.0001
Normal


17.98
14.35
0.0001
Normal


18.47
15.16
0.0001
Normal


18.28
14.59
0.0000
Normal


18.37
14.71
0.0000
Normal









Example 3
Precision Profile™ for Melanoma

Custom primers and probes were prepared for the targeted 63 genes shown in the Precision Profile™ for Melanoma (shown in Table 1), selected to be informative relative to biological state of melanoma patients. Gene expression profiles for the 63 melanoma specific genes were analyzed using 53 RNA samples obtained from stage 1 melanoma subjects (active and inactive disease), and the 50 RNA samples obtained from normal subjects, as described in Example 1.


Logistic regression models yielding the best discrimination between subjects diagnosed with stage 1 melanoma (active and inactive disease) and normal subjects were generated using the enumeration and classification methodology described in Example 2. A listing of all 2 and 3-gene logistic regression models capable of distinguishing between subjects diagnosed with stage 1 melanoma (active and inactive disease) and normal subjects with at least 75% accuracy is shown in Table 1A, (read from left to right).


As shown in Table 1A, the 2 and 3-gene models are identified in the first 3 columns on the left side of Table 1A, ranked by their entropy R2 value (shown in column 4, ranked from high to low). The number of subjects correctly classified or misclassified by each 2 or 3-gene model for each patient group (i.e., normal vs. melanoma) is shown in columns 5-8. The percent normal subjects and percent melanoma subjects correctly classified by the corresponding gene model is shown in columns 9 and 10. The incremental p-value for each first, second, and third gene in the 2 or 3-gene model is shown in columns 11-13 (note p-values smaller than 1×10−17 are reported as ‘0’). The total number of RNA samples analyzed in each patient group (i.e., normals vs. melanoma), after exclusion of missing values, is shown in columns 14 and 15. The values missing from the total sample number for normal and/or melanoma subjects shown in columns 14 and 15 correspond to instances in which values were excluded from the logistic regression analysis due to reagent limitations and/or instances where replicates did not meet quality metrics.


For example, the “best” logistic regression model (defined as the model with the highest entropy R2 value, as described in Example 2) based on the 63 genes included in the Precision Profile™ for Melanoma is shown in the first row of Table 1A, read left to right. The first row of Table lA lists a 3-gene model, IRAK3, MDM2, and PTEN, capable of classifying normal subjects with 84% accuracy, and stage 1 melanoma subjects (active and inactive disease) with 84.3% accuracy. A total number of 50 normal and 51 stage 1 melanoma RNA samples were analyzed for this 3-gene model, after exclusion of missing values. As shown in Table 1A, this 3-gene model correctly classifies 42 of the normal subjects as being in the normal patient population, and misclassifies 8 of the normal subjects as being in the stage 1 melanoma patient population (active and inactive disease). This 3-gene model correctly classifies 43 of the melanoma subjects as being in the stage 1 melanoma patient population, and misclassifies 8 of the melanoma subjects as being in the normal patient population. The p-value for the 1st gene, IRAK3, is 1.1E-06, the incremental p-value for the second gene, MDM2, is 0.0011, and the incremental p-value for the third gene in the 3-gene model, PTEN, is 1.8E-11.


A discrimination plot of the 3-gene model, IRAK3, MDM2 and PTEN, is shown in FIG. 2. As shown in FIG. 2, the normal subjects are represented by circles, whereas the stage 1 melanoma subjects (active and inactive disease) are represented by X's. The line appended to the discrimination graph in FIG. 2 illustrates how well the 3-gene model discriminates between the 2 groups. Values above and to the left of the line represent subjects predicted by the 3-gene model to be in the normal population. Values below and to the right of the line represent subjects predicted to be in the stage 1 melanoma population (active and inactive disease). As shown in FIG. 2, 8 normal subjects (circles) and 8 stage 1 melanoma subjects (X's) are classified in the wrong patient population.


The following equations describe the discrimination line shown in FIG. 2:





IRAK3MDM2=0.541283*IRAK3+0.458717*MDM2





IRAK3MDM2=2.962348+1.001169*PTEN


The formula for computing the intercept and slope parameters for the discrimination line as a function of the parameter estimates from the logit model and the cutoff point is given in Table C below. Subjects below and to the right of this discrimination line have a predicted probability of being in the diseased group higher than the cutoff probability of 0.486.









TABLE C







IRAK--MDM2--PTEN










Class1
















Group







Intercept



cutoff =
0.486


Cancer
8.1401


logit(cutoff) =
−0.05601


Normal
−8.1401


Predictors



alpha =
2.96235


IRAK3
−2.9645
−5.4768
0.54128
beta =
1.00117


MDM2
−2.5123

0.45872


PTEN
5.4832









A ranking of the top 42 melanoma specific genes for which gene expression profiles were obtained, from most to least significant, is shown in Table 1B. Table 1B summarizes the results of significance tests (Z-statistic and p-values) for the difference in the mean expression levels for normal subjects and subjects suffering from stage 1 melanoma (active and inactive disease). A negative Z-statistic means that the ΔCT for the stage 1 melanoma subjects is less than that of the normals, i.e., genes having a negative Z-statistic are up-regulated in stage 1 melanoma subjects as compared to normal subjects. A positive Z-statistic means that the ACT for the stage 1 melanoma subjects is higher than that of of the normals, i.e., genes with a positive Z-statistic are down-regulated in stage 1 melanoma subjects as compared to normal subjects. FIG. 3 shows a graphical representation of the Z-statistic for each of the 42 genes shown in Table 1B, indicating which genes are up-regulated and down-regulated in stage 1 melanoma subjects as compared to normal subjects.


The expression values (ACT) for the 3-gene model, IRAK3, MDM2 and PTEN, for each of the 51 stage 1 melanoma samples and 50 normal subject samples used in the analysis, and their predicted probability of having stage 1 melanoma, is shown in Table 1C. As shown in Table 1C, the predicted probability of a subject having stage 1 melanoma, based on the 3-gene model IRAK3, MDM2 and PTEN, is based on a scale of 0 to 1, “0” indicating no stage 1 melanoma (i.e., normal healthy subject), “1” indicating the subject has stage 1 melanoma (active and inactive disease). This predicted probability can be used to create a melanoma index based on the 3-gene model IRAK3, MDM2 and PTEN, that can be used as a tool by a practitioner (e.g., primary care physician, oncologist, etc.) for diagnosis of stage 1 melanoma (active and inactive disease) and to ascertain the necessity of future screening or treatment options.


Example 4
Precision Profile for Inflammatory Response

Custom primers and probes were prepared for the targeted 72 genes shown in the Precision Profile™ for Inflammatory Response (shown in Table 2), selected to be informative relative to biological state of inflammation and cancer. Gene expression profiles for the 72 inflammatory response genes were analyzed using 26 RNA samples obtained from melanoma subjects with active disease (stage 1 N=5, stage 2 N=7, stage 3 N=5, and stage 4 N=9) and the 32 of the RNA samples obtained from normal subjects, as described in Example 1.


Logistic regression models yielding the best discrimination between subjects diagnosed with active melanoma (all stages) and normal subjects were generated using the enumeration and classification methodology described in Example 2. A listing of all 1 and 2-gene logistic regression models capable of distinguishing between subjects diagnosed with active melanoma (all stages) and normal subjects with at least 75% accuracy is shown in Table 2A, (read from left to right).


As shown in Table 2A, the 1 and 2-gene models are identified in the first two columns on the left side of Table 2A, ranked by their entropy R2 value (shown in column 3, ranked from high to low). The number of subjects correctly classified or misclassified by each 1 or 2-gene model for each patient group (i.e., normal vs. melanoma) is shown in columns 4-7. The percent normal subjects and percent melanoma subjects correctly classified by the corresponding gene model is shown in columns 8 and 9. The incremental p-value for each first and second gene in the 1 or 2-gene model is shown in columns 10-11 (note p-values smaller than 1×10−17 are reported as ‘0’). The total number of RNA samples analyzed in each patient group (i.e., normals vs. melanoma) after exclusion of missing values, is shown in columns 12-13. The values missing from the total sample number for normal and/or melanoma subjects shown in columns 12-13 correspond to instances in which values were excluded from the logistic regression analysis due to reagent limitations and/or instances where replicates did not meet quality metrics.


For example, the “best” logistic regression model (defined as the model with the highest entropy R2 value, as described in Example 2) based on the 72 genes included in the Precision Profile™ for Inflammatory Response is shown in the first row of Table 2A, read left to right. The first row of Table 2A lists a 2-gene model, LTA and MYC, capable of classifying normal subjects with 93.8% accuracy, and active melanoma (all stages) subjects with 92% accuracy. Thirty-two normal and 25 active melanoma (all stages) RNA samples were analyzed for this 2-gene model, after exclusion of missing values. As shown in Table 2A, this 2-gene model correctly classifies 30 of the normal subjects as being in the normal patient population, and misclassifies 2 of the normal subjects as being in the active melanoma (all stages) patient population. This 2-gene model correctly classifies 23 of the active melanoma (all stages) subjects as being in the active melanoma (all stages) patient population, and misclassifies 2 of the active melanoma (all stages) subjects as being in the normal patient population. The p-value for the 1st gene, LTA, is 6.3E-07, the incremental p-value for the second gene, MYC is 3.8E-14.


A discrimination plot of the 2-gene model, LTA and MYC, is shown in FIG. 4. As shown in FIG. 4, the normal subjects are represented by circles, whereas the active melanoma (all stages) subjects are represented by X′s. The line appended to the discrimination graph in FIG. 4 illustrates how well the 2-gene model discriminates between the 2 groups. Values to the left of the line represent subjects predicted by the 2-gene model to be in the normal population. Values to the right of the line represent subjects predicted to be in the active melanoma (all stages) population. As shown in FIG. 4, 2 normal subjects (circles) and 2 active melanoma (all stages) subjects (X's) are classified in the wrong patient population.


The following equation describes the discrimination line shown in FIG. 4:





LTA=−0.4667+1.134062*MYC


The intercept (alpha) and slope (beta) of the discrimination line was computed as follows. A cutoff of 0.62505 was used to compute alpha (equals 0.511039 in logit units).


Subjects to the right of this discrimination line have a predicted probability of being in the diseased group higher than the cutoff probability of 0.62505.


The intercept C0=−0.4667 was computed by taking the difference between the intercepts for the 2 groups [−2.696−(2.696)=−5.392] and subtracting the log-odds of the cutoff probability (0.511039). This quantity was then multiplied by -1/X where X is the coefficient for LTA (−12.6486).


A ranking of the top 68 inflammatory response genes for which gene expression profiles were obtained, from most to least significant, is shown in Table 2B. Table 2B summarizes the results of significance tests (p-values) for the difference in the mean expression levels for normal subjects and subjects suffering from active melanoma (all stages).


The expression values (ACT) for the 2-gene model, LTA and MYC, for each of the 25 active melanoma (all stages) subjects and 32 normal subject samples used in the analysis, and their predicted probability of having active melanoma (all stages) is shown in Table 2C. In Table 2C, the predicted probability of a subject having active melanoma (all stages), based on the 2-gene model LTA and MYC, is based on a scale of 0 to 1, “0” indicating no active melanoma (all stages) (i.e., normal healthy subject), “1” indicating the subject has active melanoma (all stages). A graphical representation of the predicted probabilities of a subject having active melanoma (all stages) (i.e., a melanoma index), based on this 2-gene model, is shown in FIG. 5. Such an index can be used as a tool by a practitioner (e.g., primary care physician, oncologist, etc.) for diagnosis of active melanoma (all stages) and to ascertain the necessity of future screening or treatment options.


Example 5
Human Cancer General Precision Profile™

Custom primers and probes were prepared for the targeted 91 genes shown in the Human Cancer Precision Profile™ (shown in Table 3), selected to be informative relative to the biological condition of human cancer, including but not limited to ovarian, breast, cervical, prostate, lung, colon, and skin cancer. Gene expression profiles for these 91 genes were analyzed using 49 RNA samples obtained from melanoma subjects with active disease (stage 2 N=9, stage 3 N=18, stage 4 N=22), and 49 of the RNA samples obtained from the normal subjects, as described in Example 1.


Logistic regression models yielding the best discrimination between subjects diagnosed with active melanoma (stages 2-4) and normal subjects were generated using the enumeration and classification methodology described in Example 2. A listing of all 1 and 2-gene logistic regression models capable of distinguishing between subjects diagnosed with active melanoma (stages 2-4) and normal subjects with at least 75% accuracy is shown in Table 3A, (read from left to right).


As shown in Table 3A, the 1 and 2-gene models are identified in the first two columns on the left side of Table 3A, ranked by their entropy R2 value (shown in column 3, ranked from high to low). The number of subjects correctly classified or misclassified by each 1 or 2-gene model for each patient group (i.e., normal vs. melanoma) is shown in columns 4-7. The percent normal subjects and percent melanoma subjects correctly classified by the corresponding gene model is shown in columns 8 and 9. The incremental p-value for each first and second gene in the 1 or 2-gene model is shown in columns 10-11 (note p-values smaller than 1×10−17 are reported as ‘0’). The total number of RNA samples analyzed in each patient group (i.e., normals vs. melanoma) after exclusion of missing values, is shown in columns 12 and 13. The values missing from the total sample number for normal and/or melanoma subjects shown in columns 12-13 correspond to instances in which values were excluded from the logistic regression analysis due to reagent limitations and/or instances where replicates did not meet quality metrics.


For example, the “best” logistic regression model (defined as the model with the highest entropy R2 value, as described in Example 2) based on the 91 genes included in the Human Cancer General Precision Profile™ is shown in the first row of Table 3A, read left to right. The first row of Table 3A lists a 2-gene model, CDK2 and MYC, capable of classifying normal subjects with 87.8% accuracy, and active melanoma (stages 2-4) subjects with 87.8% accuracy. All 49 normal and 49 active melanoma (stages 2-4) RNA samples were analyzed for this 2-gene model, no values were excluded. As shown in Table 3A, this 2-gene model correctly classifies 43 of the normal subjects as being in the normal patient population, and misclassifies 6 of the normal subjects as being in the active melanoma (stages 2-4) patient population. This 2-gene model correctly classifies 43 of the active melanoma (stages 2-4) subjects as being in the active melanoma (stages 2-4) patient population, and misclassifies 6 of the active melanoma (stages 2-4) subjects as being in the normal patient population. The p-value for the 1st gene, CDK2, is 1.7E-08, the incremental p-value for the second gene, MYC is 1.1E-16.


A discrimination plot of the 2-gene model, CDK2 and MYC, is shown in FIG. 6. As shown in FIG. 6, the normal subjects are represented by circles, whereas the active melanoma (stages 2-4) subjects are represented by X′s. The line appended to the discrimination graph in FIG. 6 illustrates how well the 2-gene model discriminates between the 2 groups. Values above and to the left of the line represent subjects predicted by the 2-gene model to be in the normal-population. Values below and to the right of the line represent subjects predicted to be in the active melanoma (stages 2-4) population. As shown in FIG. 6, 6 normal subjects (circles) and 5 active melanoma (stages 2-4) subjects (X's) are classified in the wrong patient population.


The following equation describes the discrimination line shown in FIG. 6:





CDK2=3.734926+0.866365*MYC


The intercept (alpha) and slope (beta) of the discrimination line was computed as follows. A cutoff of 0.54025 was used to compute alpha (equals 0.161349 in logit units).


Subjects below and to the right of this discrimination line have a predicted probability of being in the diseased group higher than the cutoff probability of 0.54025.


The intercept C0=3.734926 was computed by taking the difference between the intercepts for the 2 groups [8.4555−(−8.4555)=16.911] and subtracting the log-odds of the cutoff probability (0.161349). This quantity was then multiplied by −1/X where X is the coefficient for CDK2 (−4.4846).


A ranking of the top 79 genes for which gene expression profiles were obtained, from most to least significant is shown in Table 3B. Table 3B summarizes the results of significance tests (p-values) for the difference in the mean expression levels for normal subjects and subjects suffering from active melanoma (stages 2-4).


The expression values (ΔCT) for the 2-gene model, CDK2 and MYC, for each of the 49 active melanoma (stages 2-4) subjects and 49 normal subject samples used in the analysis, and their predicted probability of having active melanoma (stages 2-4) is shown in Table 3C. In Table 3C, the predicted probability of a subject having active melanoma (stages 2-4), based on the 2-gene model CDK2 and MYC is based on a scale of 0 to 1, “0” indicating no active melanoma (stages 2-4) (i.e., normal healthy subject), “1” indicating the subject has active melanoma (stages 2-4). This predicted probability can be used to create a melanoma index based on the 2-gene model CDK2 and MYC, that can be used as a tool by a practitioner (e.g., primary care physician, oncologist, etc.) for diagnosis of active melanoma (stages 2-4) and to ascertain the necessity of future screening or treatment options.


Example 6
EGR1 Precision Profile™

Custom primers and probes were prepared for the targeted 39 genes shown in the Precision Profile™ for EGR1 (shown in Table 4), selected to be informative of the biological role early growth response genes play in human cancer (including but not limited to ovarian, breast, cervical, prostate, lung, colon, and skin cancer). Gene expression profiles for these 39 genes were analyzed using 53 RNA samples obtained from melanoma subjects with active disease (stage 1 N=4, stage 2 N=9, stage 3 N=18, stage 4 N=22), and 49 of the RNA from normal subjects, as described in Example 1.


Logistic regression models yielding the best discrimination between subjects diagnosed with active melanoma (stages 2-4 only, N=4 stage 1 values were excluded due to reagent limitations or because replicates did not meet quality metrics) and normal subjects were generated using the enumeration and classification methodology described in Example 2. A listing of all 3-gene logistic regression models capable of distinguishing between subjects diagnosed with active melanoma (stages 2-4) and normal subjects with at least 75% accuracy is shown in Table 4A, (read from left to right).


As shown in Table 4A, the 3-gene models are identified in the first three columns on the left side of Table 4A, ranked by their entropy R2 value (shown in column 4, ranked from high to low). The number of subjects correctly classified or misclassified by each 3-gene model for each patient group (i.e., normal vs. melanoma) is shown in columns 5-8. The percent normal subjects and percent melanoma subjects correctly classified by the corresponding gene model is shown in columns 9 and 10. The incremental p-value for each first and second and third gene in the 3-gene model is shown in columns 11-13 (note p-values smaller than 1×10−17 are reported as ‘0’). The total number of RNA samples analyzed in each patient group (i.e., normals vs. melanoma) after exclusion of missing values, is shown in columns 14 and 15. The values missing from the total sample number for normal and/or melanoma subjects shown in columns 14-15 correspond to instances in which values were excluded from the logistic regression analysis due to reagent limitations and/or instances where replicates did not meet quality metrics.


For example, the “best” logistic regression model (defined as the model with the highest entropy R2 value, as described in Example 2) based on the 39 genes included in the Precision Profile™ for EGR1 is shown in the first row of Table 4A, read left to right. The first row of Table 4A lists a 3-gene model, S100A6, TGFB1 and TP53, capable of classifying normal subjects with 82.6% accuracy, and active melanoma (stages 2-4) subjects with 81.6% accuracy. Forty-six of the normal and 49 active melanoma (stages 2-4) RNA samples were analyzed for this 3-gene model, after exclusion of missing values. As shown in Table 4A, this 3-gene model correctly classifies 38 of the normal subjects as being in the normal patient population, and misclassifies 8 of the normal subjects as being in the active melanoma (stages 2-4) patient population. This 3-gene model correctly classifies 40 of the active melanoma (stages 2-4) subjects as being in the active melanoma (stages 2-4) patient population, and misclassifies 9 of the active melanoma (stages 2-4) subjects as being in the normal patient population. The p-value for the 1st gene, S100A6, is 4.3E-09, the incremental p-value for the second gene, TGFB1 is 6.1E-11, and the incremental p-value for the third gene, TP53 is 9.5E-11.


A ranking of the top 32 genes for which gene expression profiles were obtained, from most to least significant is shown in Table 4B. Table 4B summarizes the results of significance tests (p-values) for the difference in the mean expression levels for normal subjects and subjects suffering from active melanoma (stages 2-4).


Example 7
Cross-Cancer Precision Profile™

Custom primers and probes were prepared for the targeted 110 genes shown in the Cross Cancer Precision Profile™ (shown in Table 5), selected to be informative relative to the biological condition of human cancer, including but not limited to ovarian, breast, cervical, prostate, lung, colon, and skin cancer. Gene expression profiles for these 110 genes were analyzed using 49 RNA samples obtained from melanoma subjects with active disease (stage 2 N=9, stage 3 N=18, stage 4 N=22), and 49 of the RNA samples obtained from normal subjects, as described in Example 1.


Logistic regression models yielding the best discrimination between subjects diagnosed with active melanoma (stages 2-4) and normal subjects were generated using the enumeration and classification methodology.described in Example 2. A listing of all 1 and 2-gene logistic regression models capable of distinguishing between subjects diagnosed with active melanoma (stages 2-4) and normal subjects with at least 75% accuracy is shown in Table 5A, (read from left to right).


As shown in Table 5A, the 1 and 2-gene models are identified in the first two columns on the left side of Table 5A, ranked by their entropy R2 value (shown in column 3, ranked from high to low). The number of subjects correctly classified or misclassified by each 1 or 2-gene model for each patient group (i.e., normal vs. melanoma) is shown in columns 4-7. The percent normal subjects and percent melanoma subjects correctly classified by the corresponding gene model is shown in columns 8 and 9. The incremental p-value for each first and second gene in the 1 or 2-gene model is shown in columns 10-11 (note p-values smaller than 1×10−17 are reported as ‘0’). The total number of RNA samples analyzed in each patient group (i.e., normals vs. melanoma) after exclusion of missing values, is shown in columns 12 and 13. The values missing from the total sample number for normal and/or melanoma subjects shown in columns 12-13 correspond to instances in which values were excluded from the logistic regression analysis due to reagent limitations and/or instances where replicates did not meet quality metrics.


For example, the “best” logistic regression model (defined as the model with the highest entropy R2 value, as described in Example 2) based on the 110 genes in the Human Cancer General Precision Profile™ is shown in the first row of Table 5A, read left to right. The first row of Table 5A lists a 2-gene model, RP51077B9.4 and TEGT, capable of classifying normal subjects with 93.6% accuracy, and active melanoma (stages 2-4) subjects with 93.9% accuracy. Forty-seven normal RNA samples and all 49 active melanoma (stages 2-4) RNA samples were used to analyze this 2-gene model after exclusion of missing values. As shown in Table 5A, this 2-gene model correctly classifies 44 of the normal subjects as being in the normal patient population and misclassifies 3 of the normal subjects as being in the active melanoma (stages 2-4) patient population. This 2-gene model correctly classifies 46 of the active melanoma (stages 2-4) subjects as being in the active melanoma (stages 2-4) patient population, and misclassifies only 3 of the active melanoma (stages 2-4) subjects as being in the normal patient population. The p-value for the 1st gene, RP51077B9.4 , is smaller than 1×10−17 (reported as “0”), the incremental p-value for the second gene, TEGT is 4.5E-09.


A discrimination plot of the 2-gene model, RP51077B9.4 and TEGT, is shown in FIG. 7. As shown in FIG. 7, the normal subjects are represented by circles, whereas the active melanoma (stages 2-4) subjects are represented by X's. The line appended to the discrimination graph in FIG. 7 illustrates how well the 2-gene model discriminates between the 2 groups. Values above and to the left of the line represent subjects predicted by the 2-gene model to be in the normal population. Values below and to the right of the line represent subjects predicted to be in the active melanoma (stages 2-4) population. As shown in FIG. 7, 3 normal subjects (circles) and 2 active melanoma (stages 2-4) subjects (X's) are classified in the wrong patient population.


The following equation describes the discrimination line shown in FIG. 7:





RP51077B9.4=9.98233+0.55205*TEGT


The intercept (alpha) and slope (beta) of the discrimination line was computed as follows. A cutoff of 0.41015 was used to compute alpha (equals −0.3633 in logit units).


Subjects below this discrimination line have a predicted probability of being in the diseased group higher than the cutoff probability of 0.41015.


The intercept C0=9.98233 was computed by taking the difference between the intercepts for the 2 groups [64.0656−(−64.0656)=128.1312] and subtracting the log-odds of the cutoff probability (−0.3633). This quantity was then multiplied by −1/X where X is the coefficient for RP51077B9.4 (−12.8722).


A ranking of the top 107 genes for which gene expression profiles were obtained, from most to least significant is shown in Table 5B. Table 5B summarizes the results of significance tests (p-values) for the difference in the mean expression levels for normal subjects and subjects suffering from active melanoma (stages 2-4).


The expression values (ΔCT) for the 2-gene model, RP51077B9.4 and TEGT, for each of the 49 active melanoma (stages 2-4) subjects and 47 normal subject samples used in the analysis, and their predicted probability of having active melanoma (stages 2-4) is shown in Table 5C. In Table 5C, the predicted probability of a subject having active melanoma (stages 2-4), based on the 2-gene model RP51077B9.4 and TEGT is based on a scale of 0 to 1, “0” indicating no active melanoma (stages 2-4) (i.e., normal healthy subject), “1” indicating the subject has active melanoma (stages 2-4). This predicted probability can be used to create a melanoma index based on the 2-gene model RP51077B9.4 and TEGT, that can be used as a tool by a practitioner (e.g., primary care physician, oncologist, etc.) for diagnosis of active melanoma (stages 2-4) and to ascertain the necessity of future screeningor treatment options.


Example 8
Melanoma Microarray Precision Profile™

Custom primers and probes were prepared for the targeted 72 genes shown in the Melanoma Microarray Precision Profile™ (shown in Table 6), selected to be informative relative to biological state of melanoma patients. Gene expression profiles for the 72 melanoma specific genes were analyzed using 45 RNA samples obtained from melanoma subjects with active disease (stage 1 N=5, stage 2 N=8, stage 3 N=11, stage 4 N=21), and the 50 RNA samples obtained from normal subjects, as described in Example 1.


Logistic regression models yielding the best discrimination between subjects diagnosed with active melanoma (all stages) and normal subjects were generated using the enumeration and classification methodology described in Example 2. A listing of all 1 and 2-gene logistic regression models capable of distinguishing between subjects diagnosed with active melanoma (all stages) and normal subjects with at least 75% accuracy is shown in Table 6A, (read from left to right).


As shown in Table 6A, the 1 and 2-gene models are identified in the first two columns on the left side of Table 6A, ranked by their entropy R2 value (shown in column 3, ranked from high to low). The number of subjects correctly classified or misclassified by each 1 or 2-gene model for each patient group (i.e., normal vs. melanoma) is shown in columns 4-7. The percent normal subjects and percent melanoma subjects correctly classified by the corresponding gene model is shown in columns 8 and 9. The incremental p-value for each first and second gene in the 1 or 2-gene model is shown in columns 10-11 (note p-values smaller than 1×10−17 are reported as ‘0’). The total number of RNA samples analyzed in each patient group (i.e., normals vs. melanoma) after exclusion of missing values, is shown in columns 12-13. The values missing from the total sample number for normal and/or melanoma subjects shown in columns 12-13 correspond to instances in which values were excluded from the logistic regression analysis due to reagent limitations and/or instances where replicates did not meet quality metrics.


For example, the “best” logistic regression model (defined as the model with the highest entropy R2 value, as described in Example 2) based on the 72 genes included in the Melanoma Microarray Precision Profile™ is shown in the first row of Table 6A, read left to right. The first row of Table 6A lists a 2-gene model, C1QB and PLEK2, capable of classifying normal subjects with 90.0% accuracy, and active melanoma (all stages) subjects with91.1% accuracy. All 50 normal and 45 active melanoma (all stages) RNA samples were analyzed for this 2-gene model, no values were excluded. As shown in Table 6A, this 2-gene model correctly classifies 45 of the normal subjects as being in the normal patient population, and misclassifies 5 of the normal subjects as being in the active melanoma (all stages) patient population. This 2-gene model correctly classifies 41 of the active melanoma (all stages) subjects as being in the active melanoma (all stages) patient population, and misclassifies 4 of the active melanoma (all stages) subjects as being in the normal patient population. The p-value for the 1st gene, C1QB, is 2.5E-07, the incremental p-value for the second gene, PLEK2 is 8.9E-16.


A discrimination plot of the 2-gene model, C1QB and PLEK2, is shown in FIG. 8. As shown in FIG. 8, the normal subjects are represented by circles, whereas the active melanoma (all stages) subjects are represented by X's. The line appended to the discrimination graph in FIG. 8 illustrates how well the 2-gene model discriminates between the 2 groups. Values to theright of the line represent subjects predicted by the 2-gene model to be in the normal population. Values to the left of the line represent subjects predicted to be in the active melanoma (all stages) population. As shown in FIG. 8, 5 normal subjects (circles) and 3 active melanoma (all stages) subjects (X's) are classified in the wrong patient population.


The following equation describes the discrimination line shown in FIG. 8:





C1QB=43.3782−1.1438*PLEK2


The intercept (alpha) and slope (beta) of the discrimination line was computed as follows. A cutoff of 0.44405 was used to compute alpha (equals −0.224741 in logit units).


Subjects to the left of this discrimination line have a predicted probability of being in the diseased group higher than the cutoff probability of 0.44405.


The intercept C0=43.3782 was computed by taking the difference between the intercepts for the 2 groups [56.4876−(−56.4876)=112.9752] and subtracting the log-odds of the cutoff probability (−0.224741). This quantity was then multiplied by −1/X where X is the coefficient for C1QB (−2.6096).


A ranking of the top 64 melanoma specific genes for which gene expression profiles were obtained, from most to least significant, is shown in Table 6B. Table 6B summarizes the results of significance tests (p-values) for the difference in the mean expression levels for normal subjects and subjects suffering from active melanoma (all stages).


The expression values (ΔCT) for the 2-gene model, C1QB and PLEK2, for each of the 45 active melanoma (all stages) subjects and 50 normal subject samples used in the analysis, and their predicted probability of having active melanoma (all stages) is shown in Table 6C. In Table 6C, the predicted probability of a subject having active melanoma (all stages), based on the 2-gene model C1QB and PLEK2, is based on a scale of 0 to 1, “0” indicating no active melanoma (all stages) (i.e., normal healthy subject), “1” indicating the subject has active melanoma (all stages). This predicted probability can be used to create a melanoma index based on the 2-gene model C1QB and PLEK2, that can be used as a tool by a practitioner (e.g., primary care physician, oncologist, etc.) for diagnosis of active melanoma (all stages) and to ascertain the necessity of future screening or treatment options.


These data support that Gene Expression Profiles with sufficient precision and calibration as described herein (1) can determine subsets of individuals with a known biological condition, particularly individuals with skin cancer or individuals with conditions related to skin cancer; (2) may be used to monitor the response of patients to therapy; (3) may be used to assess the efficacy and safety of therapy; and (4) may be used to guide the medical management of a patient by adjusting therapy to bring one or more relevant Gene Expression Profiles closer to a target set of values, which may be normative values or other desired or achievable. values.


Gene Expression Profiles are used for characterization and monitoring of treatment efficacy of individuals with skin cancer, or individuals with conditions related to skin cancer. Use of the algorithmic and statistical approaches discussed above to achieve such identification and to discriminate in such fashion is within the scope of various embodiments herein.


The references listed below are hereby incorporated herein by reference.


REFERENCES



  • Magidson, J. GOLDMineR User's Guide (1998). Belmont, Mass.: Statistical Innovations Inc.

  • Vermunt and Magidson (2005). Latent GOLD 4.0 Technical Guide, Belmont Mass.: Statistical Innovations.

  • Vermunt and Magidson (2007). LG-Syntax™ User's Guide: Manual for Latent GOLD® 4.5 Syntax Module, Belmont Mass.: Statistical Innovations.

  • Vermunt J. K. and J. Magidson. Latent Class Cluster Analysis in (2002) J. A. Hagenaars and A. L. McCutcheon (eds.), Applied Latent Class Analysis, 89-106. Cambridge: Cambridge University Press.

  • Magidson, J. “Maximum Likelihood Assessment of Clinical Trials Based on an Ordered Categorical Response.” (1996) Drug Information Journal, Maple Glen, Pa.: Drug Information Association, Vol. 30, No. 1, pp 143-170.










TABLE 1







Precision Profile ™ for Melanoma









Gene

Gene Accession


Symbol
Gene Name
Number





AKT1
v-akt murine thymoma viral oncogene homolog 1
NM_005163


APAF1
Apoptotic Protease Activating Factor 1
NM_013229


BBC3
BCL2 binding component 3
NM_014417


BMI1
BMI1 polycomb ring finger oncogene
NM_005180


C1QB
complement component 1, q subcomponent, B chain
NM_000491


CCL20
chemokine (C-C motif) ligand 20
NM_004591


CCR7
chemokine (C-C motif) receptor 7
NM_001838


CD34
CD34 antigen
NM_001773


CDH3
cadherin 3, type 1, P-cadherin (placental)
NM_001793


CDK6
cyclin-dependent kinase 6
NM_001259


CTNNB1
catenin (cadherin-associated protein), beta 1, 88 kDa
NM_001904


CXCL1
chemokine (C—X—C motif) ligand 1 (melanoma growth stimulating
NM_001511



activity, alpha)


CXCL2
Chemokine (C—X—C Motif) Ligand 2
NM_002089


CXCL3
chemokine (C—X—C motif) ligand 3
NM_002090


CXCR4
chemokine (C—X—C motif) receptor 4
NM_001008540


CYBA
cytochrome b-245, alpha polypeptide
NM_000101


DCT
dopachrome tautomerase (dopachrome delta-isomerase, tyrosine-related
NM_001922



protein 2)


DDEF1
development and differentiation enhancing factor 1
NM_018482


E2F1
E2F transcription factor 1
NM_005225


EDNRB
endothelin receptor type B
NM_000115


ERBB3
V-erb-b2 Erythroblastic Leukemia Viral Oncogene Homolog 3
NM_001982


FGF2
Fibroblast growth factor 2 (basic)
NM_002006


IL8
interleukin 8
NM_000584


IQGAP1
IQ motif containing GTPase activating protein 1
NM_003870


IRAK3
interleukin-1 receptor-associated kinase 3
NM_007199


ITGA4
integrin, alpha 4 (antigen CD49D, alpha 4 subunit of VLA-4 receptor)
NM_000885


KIT
v-kit Hardy-Zuckerman 4 feline sarcoma viral oncogene homolog
NM_000222


LDB2
LIM domain binding 2
NM_001290


LGALS3
lectin, galactoside-binding, soluble, 3 (galectin 3)
NM_002306


MAGEA1
melanoma antigen family A, 1 (directs expression of antigen MZ2-E)
NM_004988


MAGEA2
melanoma antigen family A, 2
NM_175743


MAGEA4
melanoma antigen family A, 4
NM_002362


MAP2K1IP1
mitogen-activated protein kinase kinase 1 interacting protein 1
NM_021970


MAPK1
mitogen-activated protein kinase 1
NM_138957


MCAM
melanoma cell adhesion molecule
NM_006500


MDM2
Mdm2, transformed 3T3 cell double minute 2, p53 binding protein
NM_002392



(mouse)


MITF
microphthalmia-associated transcription factor
NM_198159


MMP3
matrix metallopeptidase 3 (stromelysin 1, progelatinase)
NM_002422


MMP9
matrix metallopeptidase 9 (gelatinase B, 92 kDa gelatinase, 92 kDa type
NM_004994



IV collagenase)


MNDA
myeloid cell nuclear differentiation antigen
NM_002432


NBN
nibrin
NM_002485


NKIRAS2
NFKB inhibitor interacting Ras-like 2
NM_017595


NRCAM
neuronal cell adhesion molecule
NM_005010


PAX7
paired box gene 7
NM_002584


PBX3
pre-B-cell leukemia transcription factor 3
NM_006195


PLAUR
plasminogen activator, urokinase receptor
NM_002659


PLEKHQ1
pleckstrin homology domain containing, family Q member 1
NM_025201


PLK2
Polo-like kinase 2 (Drosophila)
NM_006622


PTEN
phosphatase and tensin homolog (mutated in multiple advanced cancers
NM_000314



1)


PTGIS
prostaglandin I2 (prostacyclin) synthase
NM_000961


PTPRK
protein tyrosine phosphatase, receptor type, K
NM_002844


RAB22A
RAB22A, member RAS oncogene family
NM_020673


RAB38
RAB38, member RAS oncogene family
NM_022337


S100A4
S100 calcium binding protein A4
NM_002961


SOX10
SRY (sex determining region Y)-box 10
NM_006941


STAT3
signal transducer and activator of transcription 3 (acute-phase response
NM_003150



factor)


STK4
serine/threonine kinase 4
NM_006282


TFAP2A
transcription factor AP-2 alpha (activating enhancer binding protein 2
NM_003220



alpha)


TNFRSF5
CD40 antigen (TNF receptor superfamily member 5)
NM_152854


TNFRSF6
Fas (TNF receptor superfamily, member 6)
NM_000043


TNFSF13B
Tumor necrosis factor (ligand) superfamily, member 13b
NM_006573


TSPY1
testis specific protein, Y-linked 1
NM_003308


VEGF
vascular endothelial growth factor
NM_003376
















TABLE 2







Precision Profile ™ for Inflammatory Response









Gene

Gene Accession


Symbol
Gene Name
Number





ADAM17
a disintegrin and metalloproteinase domain 17 (tumor necrosis factor,
NM_003183



alpha, converting enzyme)


ALOX5
arachidonate 5-lipoxygenase
NM_000698


APAF1
apoptotic Protease Activating Factor 1
NM_013229


C1QA
complement component 1, q subcomponent, alpha polypeptide
NM_015991


CASP1
caspase 1, apoptosis-related cysteine peptidase (interleukin 1, beta,
NM_033292



convertase)


CASP3
caspase 3, apoptosis-related cysteine peptidase
NM_004346


CCL3
chemokine (C-C motif) ligand 3
NM_002983


CCL5
chemokine (C-C motif) ligand 5
NM_002985


CCR3
chemokine (C-C motif) receptor 3
NM_001837


CCR5
chemokine (C-C motif) receptor 5
NM_000579


CD19
CD19 Antigen
NM_001770


CD4
CD4 antigen (p55)
NM_000616


CD86
CD86 antigen (CD28 antigen ligand 2, B7-2 antigen)
NM_006889


CD8A
CD8 antigen, alpha polypeptide
NM_001768


CSF2
colony stimulating factor 2 (granulocyte-macrophage)
NM_000758


CTLA4
cytotoxic T-lymphocyte-associated protein 4
NM_005214


CXCL1
chemokine (C—X—C motif) ligand 1 (melanoma growth stimulating
NM_001511



activity, alpha)


CXCL10
chemokine (C—X—C moif) ligand 10
NM_001565


CXCR3
chemokine (C—X—C motif) receptor 3
NM_001504


DPP4
Dipeptidylpeptidase 4
NM_001935


EGR1
early growth response-1
NM_001964


ELA2
elastase 2, neutrophil
NM_001972


GZMB
granzyme B (granzyme 2, cytotoxic T-lymphocyte-associated serine
NM_004131



esterase 1)


HLA-DRA
major histocompatibility complex, class II, DR alpha
NM_019111


HMGB1
high-mobility group box 1
NM_002128


HMOX1
heme oxygenase (decycling) 1
NM_002133


HSPA1A
heat shock protein 70
NM_005345


ICAM1
Intercellular adhesion molecule 1
NM_000201


IFI16
interferon inducible protein 16, gamma
NM_005531


IFNG
interferon gamma
NM_000619


IL10
interleukin 10
NM_000572


IL12B
interleukin 12 p40
NM_002187


IL15
Interleukin 15
NM_000585


IL18
interleukin 18
NM_001562


IL18BP
IL-18 Binding Protein
NM_005699


IL1B
interleukin 1, beta
NM_000576


IL1R1
interleukin 1 receptor, type I
NM_000877


IL1RN
interleukin 1 receptor antagonist
NM_173843


IL23A
interleukin 23, alpha subunit p19
NM_016584


IL32
interleukin 32
NM_001012631


IL5
interleukin 5 (colony-stimulating factor, eosinophil)
NM_000879


IL6
interleukin 6 (interferon, beta 2)
NM_000600


IL8
interleukin 8
NM_000584


IRF1
interferon regulatory factor 1
NM_002198


LTA
lymphotoxin alpha (TNF superfamily, member 1)
NM_000595


MAPK14
mitogen-activated protein kinase 14
NM_001315


MHC2TA
class II, major histocompatibility complex, transactivator
NM_000246


MIF
macrophage migration inhibitory factor (glycosylation-inhibiting factor)
NM_002415


MMP12
matrix metallopeptidase 12 (macrophage elastase)
NM_002426


MMP9
matrix metallopeptidase 9 (gelatinase B, 92 kDa gelatinase, 92 kDa type
NM_004994



IV collagenase)


MNDA
myeloid cell nuclear differentiation antigen
NM_002432


MYC
v-myc myelocytomatosis viral oncogene homolog (avian)
NM_002467


NFKB1
nuclear factor of kappa light polypeptide gene enhancer in B-cells 1
NM_003998



(p105)


PLA2G7
phospholipase A2, group VII (platelet-activating factor acetylhydrolase,
NM_005084



plasma)


PLAUR
plasminogen activator, urokinase receptor
NM_002659


PTGS2
prostaglandin-endoperoxide synthase 2 (prostaglandin G/H synthase and
NM_000963



cyclooxygenase)


PTPRC
protein tyrosine phosphatase, receptor type, C
NM_002838


SERPINA1
serine (or cysteine) proteinase inhibitor, clade A (alpha-1 antiproteinase,
NM_000295



antitrypsin), member 1


SERPINE1
serpin peptidase inhibitor, clade E (nexin, plasminogen activator
NM_000602



inhibitor type 1), member 1


SSI-3
suppressor of cytokine signaling 3
NM_003955


TGFB1
transforming growth factor, beta 1 (Camurati-Engelmann disease)
NM_000660


TIMP1
tissue inhibitor of metalloproteinase 1
NM_003254


TLR2
toll-like receptor 2
NM_003264


TLR4
toll-like receptor 4
NM_003266


TNF
tumor necrosis factor (TNF superfamily, member 2)
NM_000594


TNFRSF13B
tumor necrosis factor receptor superfamily, member 13B
NM_012452


TNFRSF1A
tumor necrosis factor receptor superfamily, member 1A
NM_001065


TNFSF5
CD40 ligand (TNF superfamily, member 5, hyper-IgM syndrome)
NM_000074


TNFSF6
Fas ligand (TNF superfamily, member 6)
NM_000639


TOSO
Fas apoptotic inhibitory molecule 3
NM_005449


TXNRD1
thioredoxin reductase
NM_003330


VEGF
vascular endothelial growth factor
NM_003376
















TABLE 3







Human Cancer General Precision Profile ™









Gene

Gene Accession


Symbol
Gene Name
Number





ABL1
v-abl Abelson murine leukemia viral oncogene homolog 1
NM_007313


ABL2
v-abl Abelson murine leukemia viral oncogene homolog 2 (arg, Abelson-
NM_007314



related gene)


AKT1
v-akt murine thymoma viral oncogene homolog 1
NM_005163


ANGPT1
angiopoietin 1
NM_001146


ANGPT2
angiopoietin 2
NM_001147


APAF1
Apoptotic Protease Activating Factor 1
NM_013229


ATM
ataxia telangiectasia mutated (includes complementation groups A, C and
NM_138293



D)


BAD
BCL2-antagonist of cell death
NM_004322


BAX
BCL2-associated X protein
NM_138761


BCL2
BCL2-antagonist of cell death
NM_004322


BRAF
v-raf murine sarcoma viral oncogene homolog B1
NM_004333


BRCA1
breast cancer 1, early onset
NM_007294


CASP8
caspase 8, apoptosis-related cysteine peptidase
NM_001228


CCNE1
Cyclin E1
NM_001238


CDC25A
cell division cycle 25A
NM_001789


CDK2
cyclin-dependent kinase 2
NM_001798


CDK4
cyclin-dependent kinase 4
NM_000075


CDK5
Cyclin-dependent kinase 5
NM_004935


CDKN1A
cyclin-dependent kinase inhibitor 1A (p21, Cip1)
NM_000389


CDKN2A
cyclin-dependent kinase inhibitor 2A (melanoma, p16, inhibits CDK4)
NM_000077


CFLAR
CASP8 and FADD-like apoptosis regulator
NM_003879


COL18A1
collagen, type XVIII, alpha 1
NM_030582


E2F1
E2F transcription factor 1
NM_005225


EGFR
epidermal growth factor receptor (erythroblastic leukemia viral (v-erb-b)
NM_005228



oncogene homolog, avian)


EGR1
Early growth response-1
NM_001964


ERBB2
V-erb-b2 erythroblastic leukemia viral oncogene homolog 2,
NM_004448



neuro/glioblastoma derived oncogene homolog (avian)


FAS
Fas (TNF receptor superfamily, member 6)
NM_000043


FGFR2
fibroblast growth factor receptor 2 (bacteria-expressed kinase,
NM_000141



keratinocyte growth factor receptor, craniofacial dysostosis 1)


FOS
v-fos FBJ murine osteosarcoma viral oncogene homolog
NM_005252


GZMA
Granzyme A (granzyme 1, cytotoxic T-lymphocyte-associated serine
NM_006144



esterase 3)


HRAS
v-Ha-ras Harvey rat sarcoma viral oncogene homolog
NM_005343


ICAM1
Intercellular adhesion molecule 1
NM_000201


IFI6
interferon, alpha-inducible protein 6
NM_002038


IFITM1
interferon induced transmembrane protein 1 (9-27)
NM_003641


IFNG
interferon gamma
NM_000619


IGF1
insulin-like growth factor 1 (somatomedin C)
NM_000618


IGFBP3
insulin-like growth factor binding protein 3
NM_001013398


IL18
Interleukin 18
NM_001562


IL1B
Interleukin 1, beta
NM_000576


IL8
interleukin 8
NM_000584


ITGA1
integrin, alpha 1
NM_181501


ITGA3
integrin, alpha 3 (antigen CD49C, alpha 3 subunit of VLA-3 receptor)
NM_005501


ITGAE
integrin, alpha E (antigen CD103, human mucosal lymphocyte antigen 1;
NM_002208



alpha polypeptide)


ITGB1
integrin, beta 1 (fibronectin receptor, beta polypeptide, antigen CD29
NM_002211



includes MDF2, MSK12)


JUN
v-jun sarcoma virus 17 oncogene homolog (avian)
NM_002228


KDR
kinase insert domain receptor (a type III receptor tyrosine kinase)
NM_002253


MCAM
melanoma cell adhesion molecule
NM_006500


MMP2
matrix metallopeptidase 2 (gelatinase A, 72 kDa gelatinase, 72 kDa type IV
NM_004530



collagenase)


MMP9
matrix metallopeptidase 9 (gelatinase B, 92 kDa gelatinase, 92 kDa type IV
NM_004994



collagenase)


MSH2
mutS homolog 2, colon cancer, nonpolyposis type 1 (E. coli)
NM_000251


MYC
v-myc myelocytomatosis viral oncogene homolog (avian)
NM_002467


MYCL1
v-myc myelocytomatosis viral oncogene homolog 1, lung carcinoma
NM_001033081



derived (avian)


NFKB1
nuclear factor of kappa light polypeptide gene enhancer in B-cells 1
NM_003998



(p105)


NME1
non-metastatic cells 1, protein (NM23A) expressed in
NM_198175


NME4
non-metastatic cells 4, protein expressed in
NM_005009


NOTCH2
Notch homolog 2
NM_024408


NOTCH4
Notch homolog 4 (Drosophila)
NM_004557


NRAS
neuroblastoma RAS viral (v-ras) oncogene homolog
NM_002524


PCNA
proliferating cell nuclear antigen
NM_002592


PDGFRA
platelet-derived growth factor receptor, alpha polypeptide
NM_006206


PLAU
plasminogen activator, urokinase
NM_002658


PLAUR
plasminogen activator, urokinase receptor
NM_002659


PTCH1
patched homolog 1 (Drosophila)
NM_000264


PTEN
phosphatase and tensin homolog (mutated in multiple advanced cancers 1)
NM_000314


RAF1
v-raf-1 murine leukemia viral oncogene homolog 1
NM_002880


RB1
retinoblastoma 1 (including osteosarcoma)
NM_000321


RHOA
ras homolog gene family, member A
NM_001664


RHOC
ras homolog gene family, member C
NM_175744


S100A4
S100 calcium binding protein A4
NM_002961


SEMA4D
sema domain, immunoglobulin domain (Ig), transmembrane domain (TM)
NM_006378



and short cytoplasmic domain, (semaphorin) 4D


SERPINB5
serpin peptidase inhibitor, clade B (ovalbumin), member 5
NM_002639


SERPINE1
serpin peptidase inhibitor, clade E (nexin, plasminogen activator inhibitor
NM_000602



type 1), member 1


SKI
v-ski sarcoma viral oncogene homolog (avian)
NM_003036


SKIL
SKI-like oncogene
NM_005414


SMAD4
SMAD family member 4
NM_005359


SOCS1
suppressor of cytokine signaling 1
NM_003745


SRC
v-src sarcoma (Schmidt-Ruppin A-2) viral oncogene homolog (avian)
NM_198291


TERT
telomerase-reverse transcriptase
NM_003219


TGFB1
transforming growth factor, beta 1 (Camurati-Engelmann disease)
NM_000660


THBS1
thrombospondin 1
NM_003246


TIMP1
tissue inhibitor of metalloproteinase 1
NM_003254


TIMP3
Tissue inhibitor of metalloproteinase 3 (Sorsby fundus dystrophy,
NM_000362



pseudoinflammatory)


TNF
tumor necrosis factor (TNF superfamily, member 2)
NM_000594


TNFRSF10A
tumor necrosis factor receptor superfamily, member 10a
NM_003844


TNFRSF10B
tumor necrosis factor receptor superfamily, member 10b
NM_003842


TNFRSF1A
tumor necrosis factor receptor superfamily, member 1A
NM_001065


TP53
tumor protein p53 (Li-Fraumeni syndrome)
NM_000546


VEGF
vascular endothelial growth factor
NM_003376


VHL
von Hippel-Lindau tumor suppressor
NM_000551


WNT1
wingless-type MMTV integration site family, member 1
NM_005430


WT1
Wilms tumor 1
NM_000378
















TABLE 4







Precision Profile ™ for EGR1









Gene

Gene Accession


Symbol
Gene Name
Number





ALOX5
arachidonate 5-lipoxygenase
NM_000698


APOA1
apolipoprotein A-I
NM_000039


CCND2
cyclin D2
NM_001759


CDKN2D
cyclin-dependent kinase inhibitor 2D (p19, inhibits CDK4)
NM_001800


CEBPB
CCAAT/enhancer binding protein (C/EBP), beta
NM_005194


CREBBP
CREB binding protein (Rubinstein-Taybi syndrome)
NM_004380


EGFR
epidermal growth factor receptor (erythroblastic leukemia viral (v-erb-b)
NM_005228



oncogene homolog, avian)


EGR1
early growth response 1
NM_001964


EGR2
early growth response 2 (Krox-20 homolog, Drosophila)
NM_000399


EGR3
early growth response 3
NM_004430


EGR4
early growth response 4
NM_001965


EP300
E1A binding protein p300
NM_001429


F3
coagulation factor III (thromboplastin, tissue factor)
NM_001993


FGF2
fibroblast growth factor 2 (basic)
NM_002006


FN1
fibronectin 1
NM_00212482


FOS
v-fos FBJ murine osteosarcoma viral oncogene homolog
NM_005252


ICAM1
Intercellular adhesion molecule 1
NM_000201


JUN
jun oncogene
NM_002228


MAP2K1
mitogen-activated protein kinase kinase 1
NM_002755


MAPK1
mitogen-activated protein kinase 1
NM_002745


NAB1
NGFI-A binding protein 1 (EGR1 binding protein 1)
NM_005966


NAB2
NGFI-A binding protein 2 (EGR1 binding protein 2)
NM_005967


NFATC2
nuclear factor of activated T-cells, cytoplasmic, calcineurin-dependent 2
NM_173091


NFκB1
nuclear factor of kappa light polypeptide gene enhancer in B-cells 1
NM_003998



(p105)


NR4A2
nuclear receptor subfamily 4, group A, member 2
NM_006186


PDGFA
platelet-derived growth factor alpha polypeptide
NM_002607


PLAU
plasminogen activator, urokinase
NM_002658


PTEN
phosphatase and tensin homolog (mutated in multiple advanced cancers
NM_000314



1)


RAF1
v-raf-1 murine leukemia viral oncogene homolog 1
NM_002880


S100A6
S100 calcium binding protein A6
NM_014624


SERPINE1
serpin peptidase inhibitor, clade E (nexin, plasminogen activator inhibitor
NM_000302



type 1), member 1


SMAD3
SMAD, mothers against DPP homolog 3 (Drosophila)
NM_005902


SRC
v-src sarcoma (Schmidt-Ruppin A-2) viral oncogene homolog (avian)
NM_198291


TGFB1
transforming growth factor, beta 1
NM_000660


THBS1
thrombospondin 1
NM_003246


TOPBP1
topoisomerase (DNA) II binding protein 1
NM_007027


TNFRSF6
Fas (TNF receptor superfamily, member 6)
NM_000043


TP53
tumor protein p53 (Li-Fraumeni syndrome)
NM_000546


WT1
Wilms tumor 1
NM_000378
















TABLE 5







Cross-Cancer Precision Profile ™











Gene Accession


Gene Symbol
Gene Name
Number





ACPP
acid phosphatase, prostate
NM_001099


ADAM17
a disintegrin and metalloproteinase domain 17 (tumor necrosis factor,
NM_003183



alpha, converting enzyme)


ANLN
anillin, actin binding protein (scraps homolog, Drosophila)
NM_018685


APC
adenomatosis polyposis coli
NM_000038


AXIN2
axin 2 (conductin, axil)
NM_004655


BAX
BCL2-associated X protein
NM_138761


BCAM
basal cell adhesion molecule (Lutheran blood group)
NM_005581


C1QA
complement component 1, q subcomponent, alpha polypeptide
NM_015991


C1QB
complement component 1, q subcomponent, B chain
NM_000491


CA4
carbonic anhydrase IV
NM_000717


CASP3
caspase 3, apoptosis-related cysteine peptidase
NM_004346


CASP9
caspase 9, apoptosis-related cysteine peptidase
NM_001229


CAV1
caveolin 1, caveolae protein, 22 kDa
NM_001753


CCL3
chemokine (C-C motif) ligand 3
NM_002983


CCL5
chemokine (C-C motif) ligand 5
NM_002985


CCR7
chemokine (C-C motif) receptor 7
NM_001838


CD40LG
CD40 ligand (TNF superfamily, member 5, hyper-IgM syndrome)
NM_000074


CD59
CD59 antigen p18-20
NM_000611


CD97
CD97 molecule
NM_078481


CDH1
cadherin 1, type 1, E-cadherin (epithelial)
NM_004360


CEACAM1
carcinoembryonic antigen-related cell adhesion molecule 1 (biliary
NM_001712



glycoprotein)


CNKSR2
connector enhancer of kinase suppressor of Ras 2
NM_014927


CTNNA1
catenin (cadherin-associated protein), alpha 1, 102 kDa
NM_001903


CTSD
cathepsin D (lysosomal aspartyl peptidase)
NM_001909


CXCL1
chemokine (C—X—C motif) ligand 1 (melanoma growth stimulating
NM_001511



activity, alpha)


DAD1
defender against cell death 1
NM_001344


DIABLO
diablo homolog (Drosophila)
NM_019887


DLC1
deleted in liver cancer 1
NM_182643


E2F1
E2F transcription factor 1
NM_005225


EGR1
early growth response-1
NM_001964


ELA2
elastase 2, neutrophil
NM_001972


ESR1
estrogen receptor 1
NM_000125


ESR2
estrogen receptor 2 (ER beta)
NM_001437


ETS2
v-ets erythroblastosis virus E26 oncogene homolog 2 (avian)
NM_005239


FOS
v-fos FBJ murine osteosarcoma viral oncogene homolog
NM_005252


G6PD
glucose-6-phosphate dehydrogenase
NM_000402


GADD45A
growth arrest and DNA-damage-inducible, alpha
NM_001924


GNB1
guanine nucleotide binding protein (G protein), beta polypeptide 1
NM_002074


GSK3B
glycogen synthase kinase 3 beta
NM_002093


HMGA1
high mobility group AT-hook 1
NM_145899


HMOX1
heme oxygenase (decycling) 1
NM_002133


HOXA10
homeobox A10
NM_018951


HSPA1A
heat shock protein 70
NM_005345


IFI16
interferon inducible protein 16, gamma
NM_005531


IGF2BP2
insulin-like growth factor 2 mRNA binding protein 2
NM_006548


IGFBP3
insulin-like growth factor binding protein 3
NM_001013398


IKBKE
inhibitor of kappa light polypeptide gene enhancer in B-cells, kinase
NM_014002



epsilon


IL8
interleukin 8
NM_000584


ING2
inhibitor of growth family, member 2
NM_001564


IQGAP1
IQ motif containing GTPase activating protein 1
NM_003870


IRF1
interferon regulatory factor 1
NM_002198


ITGAL
integrin, alpha L (antigen CD11A (p180), lymphocyte function-
NM_002209



associated antigen 1; alpha polypeptide)


LARGE
like-glycosyltransferase
NM_004737


LGALS8
lectin, galactoside-binding, soluble, 8 (galectin 8)
NM_006499


LTA
lymphotoxin alpha (TNF superfamily, member 1)
NM_000595


MAPK14
mitogen-activated protein kinase 14
NM_001315


MCAM
melanoma cell adhesion molecule
NM_006500


MEIS1
Meis1, myeloid ecotropic viral integration site 1 homolog (mouse)
NM_002398


MLH1
mutL homolog 1, colon cancer, nonpolyposis type 2 (E. coli)
NM_000249


MME
membrane metallo-endopeptidase (neutral endopeptidase, enkephalinase,
NM_000902



CALLA, CD10)


MMP9
matrix metallopeptidase 9 (gelatinase B, 92 kDa gelatinase, 92 kDa type
NM_004994



IV collagenase)


MNDA
myeloid cell nuclear differentiation antigen
NM_002432


MSH2
mutS homolog 2, colon cancer, nonpolyposis type 1 (E. coli)
NM_000251


MSH6
mutS homolog 6 (E. coli)
NM_000179


MTA1
metastasis associated 1
NM_004689


MTF1
metal-regulatory transcription factor 1
NM_005955


MYC
v-myc myelocytomatosis viral oncogene homolog (avian)
NM_002467


MYD88
myeloid differentiation primary response gene (88)
NM_002468


NBEA
neurobeachin
NM_015678


NCOA1
nuclear receptor coactivator 1
NM_003743


NEDD4L
neural precursor cell expressed, developmentally down-regulated 4-like
NM_015277


NRAS
neuroblastoma RAS viral (v-ras) oncogene homolog
NM_002524


NUDT4
nudix (nucleoside diphosphate linked moiety X)-type motif 4
NM_019094


PLAU
plasminogen activator, urokinase
NM_002658


PLEK2
pleckstrin 2
NM_016445


PLXDC2
plexin domain containing 2
NM_032812


PPARG
peroxisome proliferative activated receptor, gamma
NM_138712


PTEN
phosphatase and tensin homolog (mutated in multiple advanced cancers
NM_000314



1)


PTGS2
prostaglandin-endoperoxide synthase 2 (prostaglandin G/H synthase and
NM_000963



cyclooxygenase)


PTPRC
protein tyrosine phosphatase, receptor type, C
NM_002838


PTPRK
protein tyrosine phosphatase, receptor type, K
NM_002844


RBM5
RNA binding motif protein 5
NM_005778


RP5-
invasion inhibitory protein 45
NM_001025374


1077B9.4


S100A11
S100 calcium binding protein A11
NM_005620


S100A4
S100 calcium binding protein A4
NM_002961


SCGB2A1
secretoglobin, family 2A, member 1
NM_002407


SERPINA1
serine (or cysteine) proteinase inhibitor, clade A (alpha-1 antiproteinase,
NM_000295



antitrypsin), member 1


SERPINE1
serpin peptidase inhibitor, clade E (nexin, plasminogen activator
NM_000602



inhibitor type 1), member 1


SERPING1
serpin peptidase inhibitor, clade G (C1 inhibitor), member 1,
NM_000062



(angioedema, hereditary)


SIAH2
seven in absentia homolog 2 (Drosophila)
NM_005067


SLC43A1
solute carrier family 43, member
NM_003627


SP1
Sp1 transcription factor
NM_138473


SPARC
secreted protein, acidic, cysteine-rich (osteonectin)
NM_003118


SRF
serum response factor (c-fos serum response element-binding
NM_003131



transcription factor)


ST14
suppression of tumorigenicity 14 (colon carcinoma)
NM_021978


TEGT
testis enhanced gene transcript (BAX inhibitor 1)
NM_003217


TGFB1
transforming growth factor, beta 1 (Camurati-Engelmann disease)
NM_000660


TIMP1
tissue inhibitor of metalloproteinase 1
NM_003254


TLR2
toll-like receptor 2
NM_003264


TNF
tumor necrosis factor (TNF superfamily, member 2)
NM_000594


TNFRSF1A
tumor necrosis factor receptor superfamily, member 1A
NM_001065


TXNRD1
thioredoxin reductase
NM_003330


UBE2C
ubiquitin-conjugating enzyme E2C
NM_007019


USP7
ubiquitin specific peptidase 7 (herpes virus-associated)
NM_003470


VEGFA
vascular endothelial growth factor
NM_003376


VIM
vimentin
NM_003380


XK
X-linked Kx blood group (McLeod syndrome)
NM_021083


XRCC1
X-ray repair complementing defective repair in Chinese hamster cells 1
NM_006297


ZNF185
zinc finger protein 185 (LIM domain)
NM_007150


ZNF350
zinc finger protein 350
NM_021632
















TABLE 6







Melanoma Mircoarray Precision Profile ™











Gene Accession


Gene Symbol
Gene Name
Number





ACOX1
acyl-Coenzyme A oxidase 1, palmitoyl
NM_004035


BCNP1
B-cell novel protein 1
NM_173544


BLVRB
biliverdin reductase B (flavin reductase (NADPH))
NM_000713


BPGM
2,3-bisphosphoglycerate mutase
NM_001724


C1QB
complement component 1, q subcomponent, B chain
NM_000491


C20orf108
chromosome 20 open reading frame 108
NM_080821


CARD12
caspase recruitment domain family, member 12
NM_021209


CCND2
cyclin D2
NM_001759


CDC23
CDC23 (cell division cycle 23, yeast, homolog)
NM_004661


CELSR1
cadherin, EGF LAG seven-pass G-type receptor 1 (flamingo homolog,
NM_014246




Drosophila)



CHPT1
choline phosphotransferase 1
NM_020244


CNKSR2
connector enhancer of kinase suppressor of Ras 2
NM_014927


CXCL16
chemokine (C—X—C motif) ligand 16
NM_022059


CXXC6
CXXC finger 6
NM_030625


EDIL3
EGF-like repeats and discoidin I-like domains 3
NM_005711


F5
coagulation factor V (proaccelerin, labile factor)
NM_000130


GLRX5
glutaredoxin 5 homolog (S. cerevisiae)
NM_016417


GYPA
glycophorin A (MNS blood group)
NM_002099


GYPB
glycophorin B (MNS blood group)
NM_002100


HECTD2
HECT domain containing 2
NM_182765


IGF2BP2
insulin-like growth factor 2 mRNA binding protein 2
NM_006548


IL13RA1
interleukin 13 receptor, alpha
NM_001560


IL1R2
interleukin 1 receptor, type II
NM_004633


INPP4B
inositol polyphosphate-4-phosphatase, type II, 105 kDa
NM_003866


IQGAP1
IQ motif containing GTPase activating protein 1
NM_003870


IRAK3
interleukin-1 receptor-associated kinase 3
NM_007199


KCNK2
potassium channel, subfamily K, member 2
NM_001017424


KIAA0802
KIAA0802
NM_015210


LARGE
like-glycosyltransferase
NM_004737


LGALS3
lectin, galactoside-binding, soluble, 3 (galectin 3)
NM_002306


MGAT5B
mannosyl (alpha-1,6-)-glycoprotein beta-1,6-N-acetyl-
NM_144677



glucosaminyltransferase, isozyme B


MITF
microphthalmia-associated transcription factor
NM_198159


MLANA
melan-A
NM_005511


MTA1
metastasis associated 1
NM_004689


N4BP1
Nedd4 binding protein 1
NM_153029


NBEA
neurobeachin
NM_015678


NEDD4L
neural precursor cell expressed, developmentally down-regulated 4-like
NM_015277


NEDD9
neural precursor cell expressed, developmentally down-regulated 9
NM_006403


NOTCH2
Notch homolog 2
NM_024408


NPTN
neuroplastin
NM_012428


NUCKS1
nuclear casein kinase and cyclin-dependent kinase substrate 1
NM_022731


NUDT4
nudix (nucleoside diphosphate linked moiety X)-type motif 4
NM_019094


PAWR
PRKC, apoptosis, WT1, regulator
NM_002583


PBX1
pre-B-cell leukemia transcription factor 1
NM_002585


PGD
phosphogluconate dehydrogenase
NM_002631


PLAUR
plasminogen activator, urokinase receptor
NM_002659


PLEK2
pleckstrin 2
NM_016445


PLEKHQ1
pleckstrin homology domain containing, family Q member 1
NM_025201


PLXDC2
plexin domain containing 2
NM_032812


PTPRK
protein tyrosine phosphatase, receptor type, K
NM_002844


RAB2B
RAB2B, member RAS oncogene family
NM_032846


RAP2C
RAP2C, member of RAS oncogene family
NM_021183


RASGRP3
RAS guanyl releasing protein 3 (calcium and DAG-regulated)
NM_170672


RBMS1
RNA binding motif, single stranded interacting protein 1
NM_016836


SCAND2
SCAN domain containing 2
NM_022050


SCN3A
sodium channel, voltage-gated, type III, alpha
NM_006922


SIAH2
seven in absentia homolog 2 (Drosophila)
NM_005067


SILV
silver homolog (mouse)
NM_006928


SLA
Src-like-adaptor
NM_006748


SLC4A1
solute carrier family 4, anion exchanger, member 1 (erythrocyte
NM_000342



membrane protein band 3, Diego blood group)


SMCHD1
structural maintenance of chromosomes flexible hinge domain
NM_015295



containing 1


ST6GALNAC5
ST6 (alpha-N-acetyl-neuraminyl-2,3-beta-galactosyl-1,3)-N-
NM_030965



acetylgalactosaminide alpha-2,6-sialyltransferase 5


TIMELESS
timeless homolog (Drosophila)
NM_003920


TLK2
tousled-like kinase-2
NM_006852


TMOD1
tropomodulin 1
NM_003275


TNS1
tensin 1
NM_022648


TSPAN5
tetraspanin 5
NM_005723


TYR
tyrosinase (oculocutaneous albinism IA)
NM_000372


XK
X-linked Kx blood group (McLeod syndrome)
NM_021083


ZBTB10
zinc finger and BTB domain containing 10
NM_023929


ZC3H7B
zinc finger CCCH-type containing 7B
NM_017590.4


ZDHHC2
zinc finger, DHHC-type containing 2
NM_016353
















TABLE 7





Precision Profile ™ for Immunotherapy


Gene Symbol

















ABL1



ABL2



ADAM17



ALOX5



CD19



CD4



CD40LG



CD86



CCR5



CTLA4



EGFR



ERBB2



HSPA1A



IFNG



IL12



IL15



IL23A



KIT



MUC1



MYC



PDGFRA



PTGS2



PTPRC



RAF1



TGFB1



TLR2



TNF



TNFRSF10B



TNFRSF13B



VEGF
























TABLE 1A













Normal
Melanoma







N =
50
53


3-gene models and
Entropy
#normal
#normal
#mm
#mm
Correct
Correct


2-gene models
R-sq
Correct
FALSE
Correct
FALSE
Classification
Classification



















IRAK3
MDM2
PTEN
0.36
42
8
43
8
84.0%
84.3%


IRAK3
MNDA
PTEN
0.36
38
12
40
11
76.0%
78.4%


C1QB
S100A4
VEGF
0.36
39
11
41
11
78.0%
78.9%


IRAK3
PTEN
S100A4
0.35
41
9
41
10
82.0%
80.4%


C1QB
IRAK3
PTEN
0.35
38
12
39
12
76.0%
76.5%


CTNNB1
PTEN
PTPRK
0.35
38
12
39
12
76.0%
76.5%


MDM2
MNDA
PTEN
0.34
40
10
41
10
80.0%
80.4%


IRAK3
PLAUR
PTEN
0.34
40
10
40
11
80.0%
78.4%


IRAK3
MCAM
PTEN
0.34
40
10
40
11
80.0%
78.4%


C1QB
MNDA
PTEN
0.34
39
11
39
12
78.0%
76.5%


CCR7
CTNNB1
S100A4
0.34
41
9
43
10
82.0%
81.1%


IRAK3
PTEN
PTPRK
0.33
40
10
40
11
80.0%
78.4%


CTNNB1
IRAK3
PTEN
0.33
40
10
41
10
80.0%
80.4%


IRAK3
NBN
PTEN
0.32
39
11
41
10
78.0%
80.4%


CTNNB1
MNDA
PTEN
0.32
40
10
39
12
80.0%
76.5%


MDM2
MMP9
PTEN
0.32
38
12
39
12
76.0%
76.5%


MNDA
PTEN
PTPRK
0.32
39
11
41
10
78.0%
80.4%


MDM2
PLAUR
PTEN
0.32
40
10
40
11
80.0%
78.4%


CYBA
IRAK3
PTEN
0.31
38
12
39
12
76.0%
76.5%


MNDA
PTEN
VEGF
0.31
38
12
38
12
76.0%
76.0%


MNDA
NKIRAS2
PTEN
0.30
40
10
39
12
80.0%
76.5%


C1QB
IRAK3
S100A4
0.30
42
8
43
10
84.0%
81.1%


IRAK3
PTPRK
S100A4
0.30
38
12
41
12
76.0%
77.4%


CCR7
CXCR4
PTEN
0.30
39
11
39
12
78.0%
76.5%


C1QB
PTEN
VEGF
0.29
40
10
40
10
80.0%
80.0%


C1QB
CTNNB1
PTEN
0.29
38
12
39
12
76.0%
76.5%


PLAUR
PTEN
VEGF
0.29
38
12
38
12
76.0%
76.0%


DDEF1
PTEN
PTPRK
0.29
40
10
41
10
80.0%
80.4%


CTNNB1
ITGA4
PTEN
0.28
37
12
39
12
75.5%
76.5%


CXCR4
PTEN
PTPRK
0.28
38
12
40
11
76.0%
78.4%


IRAK3
PTEN

0.28
38
12
40
13
76.0%
75.5%


C1QB
MDM2
PTEN
0.28
38
12
40
11
76.0%
78.4%


C1QB
NKIRAS2
PTEN
0.28
39
11
39
12
78.0%
76.5%


MDM2
NKIRAS2
PTEN
0.27
39
11
40
11
78.0%
78.4%


CTNNB1
PLAUR
PTEN
0.27
38
12
39
12
76.0%
76.5%


C1QB
MDM2
S100A4
0.26
38
12
40
13
76.0%
75.5%


IRAK3
MCAM
S100A4
0.26
39
11
41
12
78.0%
77.4%


C1QB
MNDA
S100A4
0.26
38
12
41
12
76.0%
77.4%


PTEN
PTPRK
STAT3
0.26
38
12
39
12
76.0%
76.5%


CYBA
MNDA
PTEN
0.26
39
11
39
12
78.0%
76.5%


C1QB
CTNNB1
S100A4
0.26
38
12
40
13
76.0%
75.5%


PLAUR
PTEN
PTPRK
0.26
38
12
39
12
76.0%
76.5%


MCAM
S100A4
VEGF
0.25
38
12
39
13
76.0%
75.0%


MDM2
S100A4
VEGF
0.25
38
12
39
13
76.0%
75.0%


CTNNB1
MDM2
PTEN
0.25
38
12
39
12
76.0%
76.5%


CDK6
CTNNB1
PTEN
0.25
39
11
39
12
78.0%
76.5%


CTNNB1
PTEN
VEGF
0.25
40
10
38
12
80.0%
76.0%


C1QB
PLAUR
S100A4
0.25
38
12
40
13
76.0%
75.5%


IRAK3
MAPK1
S100A4
0.25
39
11
41
12
78.0%
77.4%


NKIRAS2
PTEN
VEGF
0.24
39
11
39
11
78.0%
78.0%


E2F1
IRAK3
S100A4
0.24
39
11
40
13
78.0%
75.5%


CTNNB1
PTEN
TNFRSF5
0.24
38
12
39
12
76.0%
76.5%


MDM2
PTEN
STAT3
0.24
39
11
39
12
78.0%
76.5%


MCAM
PLAUR
PTEN
0.24
39
11
40
11
78.0%
78.4%


MDM2
PTEN
S100A4
0.23
39
11
39
12
78.0%
76.5%


ITGA4
MDM2
PTEN
0.23
37
12
39
12
75.5%
76.5%


MMP9
PLAUR
PTEN
0.23
40
10
40
11
80.0%
78.4%


C1QB
CYBA
S100A4
0.23
38
12
40
13
76.0%
75.5%


IQGAP1
MDM2
PTEN
0.23
38
12
39
12
76.0%
76.5%


ITGA4
PTEN
VEGF
0.23
37
12
38
12
75.5%
76.0%


MDM2
NBN
PTEN
0.22
39
11
39
12
78.0%
76.5%


NKIRAS2
PTEN
S100A4
0.22
39
11
39
12
78.0%
76.5%


C1QB
CD34
S100A4
0.22
39
11
41
12
78.0%
77.4%


PLEKHQ1
PTEN
PTPRK
0.21
38
12
39
12
76.0%
76.5%


CCR7
CTNNB1
RAB22A
0.21
40
10
40
12
80.0%
76.9%


CCR7
CTNNB1
MAP2K1IP1
0.21
39
11
40
13
78.0%
75.5%


C1QB
MCAM
PTPRK
0.20
38
12
40
13
76.0%
75.5%


BMI1
CTNNB1
S100A4
0.19
39
11
40
13
78.0%
75.5%


MCAM
TNFSF13B
VEGF
0.17
38
12
40
12
76.0%
76.9%


MAPK1
MCAM
VEGF
0.17
38
12
40
12
76.0%
76.9%














total used


3-gene models and

(excludes missing)












2-gene models
p-val 1
p-val 2
p-val 3
# normals
# disease

















IRAK3
MDM2
PTEN
1.1E−06
0.0011
1.8E−11
50
51


IRAK3
MNDA
PTEN
1.7E−05
0.0008
1.3E−11
50
51


C1QB
S100A4
VEGF
1.1E−06
5.1E−09
2.5E−07
50
52


IRAK3
PTEN
S100A4
3.8E−10
1.9E−05
0.0017
50
51


C1QB
IRAK3
PTEN
0.0021
7.8E−07
1.7E−09
50
51


CTNNB1
PTEN
PTPRK
2.5E−07
1.2E−07
1.7E−06
50
51


MDM2
MNDA
PTEN
6.4E−05
2.9E−06
1.3E−11
50
51


IRAK3
PLAUR
PTEN
1.0E−05
0.0034
5.7E−11
50
51


IRAK3
MCAM
PTEN
1.1E−08
0.0042
9.8E−09
50
51


C1QB
MNDA
PTEN
0.0001
1.8E−06
2.3E−09
50
51


CCR7
CTNNB1
S100A4
5.5E−08
2.4E−08
2.6E−07
50
53


IRAK3
PTEN
PTPRK
7.1E−07
1.0E−07
0.0071
50
51


CTNNB1
IRAK3
PTEN
0.0096
6.4E−06
1.4E−10
50
51


IRAK3
NBN
PTEN
4.4E−07
0.0113
3.4E−10
50
51


CTNNB1
MNDA
PTEN
0.0003
1.1E−05
7.5E−11
50
51


MDM2
MMP9
PTEN
1.6E−06
1.5E−05
1.1E−10
50
51


MNDA
PTEN
PTPRK
1.7E−06
1.0E−07
0.0003
50
51


MDM2
PLAUR
PTEN
6.3E−05
1.9E−05
1.5E−10
50
51


CYBA
IRAK3
PTEN
0.0292
6.5E−07
5.7E−10
50
51


MNDA
PTEN
VEGF
2.1E−05
2.1E−09
0.0016
50
50


MNDA
NKIRAS2
PTEN
2.3E−05
0.0013
2.2E−10
50
51


C1QB
IRAK3
S100A4
0.0002
2.4E−05
3.4E−08
50
53


IRAK3
PTPRK
S100A4
6.0E−06
0.0002
1.0E−06
50
53


CCR7
CXCR4
PTEN
4.9E−07
2.8E−07
5.1E−07
50
51


C1QB
PTEN
VEGF
4.8E−05
5.2E−07
4.1E−05
50
50


C1QB
CTNNB1
PTEN
7.4E−05
3.8E−05
5.8E−08
50
51


PLAUR
PTEN
VEGF
6.4E−05
8.5E−09
0.0008
50
50


DDEF1
PTEN
PTPRK
1.6E−05
2.1E−06
0.0002
50
51


CTNNB1
ITGA4
PTEN
5.1E−08
0.0001
7.6E−06
49
51


CXCR4
PTEN
PTPRK
2.5E−05
2.1E−06
1.3E−06
50
51


IRAK3
PTEN

2.50E−08 
4.10E−09 

50
53


C1QB
MDM2
PTEN
0.0003
0.0001
1.5E−07
50
51


C1QB
NKIRAS2
PTEN
0.0001
0.0001
1.6E−07
50
51


MDM2
NKIRAS2
PTEN
0.0003
0.0006
2.5E−09
50
51


CTNNB1
PLAUR
PTEN
0.0022
0.0005
4.4E−09
50
51


C1QB
MDM2
S100A4
3.3E−05
0.0004
2.9E−07
50
53


IRAK3
MCAM
S100A4
1.2E−06
0.0029
1.5E−06
50
53


C1QB
MNDA
S100A4
1.9E−05
0.0004
3.3E−07
50
53


PTEN
PTPRK
STAT3
4.4E−06
2.9E−05
0.0001
50
51


CYBA
MNDA
PTEN
0.0422
4.0E−05
4.9E−09
50
51


C1QB
CTNNB1
S100A4
1.8E−05
0.0006
5.6E−07
50
53


PLAUR
PTEN
PTPRK
0.0002
1.1E−05
0.0056
50
51


MCAM
S100A4
VEGF
0.0026
1.7E−05
3.1E−06
50
52


MDM2
S100A4
VEGF
0.0033
1.2E−07
5.9E−05
50
52


CTNNB1
MDM2
PTEN
0.0024
0.0018
1.0E−08
50
51


CDK6
CTNNB1
PTEN
0.0019
2.0E−07
1.6E−07
50
51


CTNNB1
PTEN
VEGF
0.0015
1.4E−07
0.0060
50
50


C1QB
PLAUR
S100A4
2.2E−05
0.0014
1.7E−06
50
53


IRAK3
MAPK1
S100A4
1.4E−07
0.0112
6.3E−05
50
53


NKIRAS2
PTEN
VEGF
0.0024
2.0E−07
0.0191
50
50


E2F1
IRAK3
S100A4
0.0158
7.5E−06
1.6E−07
50
53


CTNNB1
PTEN
TNFRSF5
8.3E−07
7.0E−07
0.0048
50
51


MDM2
PTEN
STAT3
0.0002
2.1E−08
0.0066
50
51


MCAM
PLAUR
PTEN
0.0269
1.8E−05
4.4E−06
50
51


MDM2
PTEN
S100A4
1.6E−06
0.0004
0.0092
50
51


ITGA4
MDM2
PTEN
0.0069
2.4E−06
1.6E−05
49
51


MMP9
PLAUR
PTEN
0.0427
0.0012
7.2E−08
50
51


C1QB
CYBA
S100A4
6.6E−05
0.0057
3.2E−06
50
53


IQGAP1
MDM2
PTEN
0.0140
0.0001
3.6E−08
50
51


ITGA4
PTEN
VEGF
0.0066
0.0013
8.0E−06
49
50


MDM2
NBN
PTEN
0.0009
0.0247
7.9E−08
50
51


NKIRAS2
PTEN
S100A4
4.7E−06
0.0014
0.0114
50
51


C1QB
CD34
S100A4
3.7E−06
0.0149
1.7E−05
50
53


PLEKHQ1
PTEN
PTPRK
0.0045
0.0001
0.0001
50
51


CCR7
CTNNB1
RAB22A
4.2E−05
1.5E−05
0.0036
50
52


CCR7
CTNNB1
MAP2K1IP1
1.1E−06
1.3E−05
0.0035
50
53


C1QB
MCAM
PTPRK
0.0051
0.0336
0.0014
50
53


BMI1
CTNNB1
S100A4
0.0023
6.5E−06
1.7E−05
50
53


MCAM
TNFSF13B
VEGF
0.0016
0.0103
0.0005
50
52


MAPK1
MCAM
VEGF
0.0139
0.0040
0.0002
50
52

















Melanoma
Normals
Sum




Group Size
51.5%
48.5%
100%



N =
53
50
103



Gene
Mean
Mean
Z-statistic
p-val







PTPRK
22.2
21.4
3.89
1.0E−04



C1QB
20.5
21.1
−3.29
0.0010



CCR7
14.8
14.3
3.28
0.0010



MCAM
25.5
25.2
2.93
0.0034



PTEN
14.1
13.8
2.83
0.0046



VEGF
22.9
23.3
−2.73
0.0063



S100A4
13.3
13.1
2.60
0.0093



ITGA4
14.5
14.2
2.36
0.0183



IL8
22.0
21.6
2.34
0.0191



IRAK3
17.0
17.3
−2.18
0.0295



E2F1
20.9
21.1
−2.02
0.0433



PLAUR
15.2
15.4
−1.74
0.0822



TNFRSF5
19.3
19.1
1.74
0.0823



DDEF1
16.3
16.5
−1.54
0.1238



TNFSF13B
15.5
15.3
1.49
0.1359



MDM2
16.5
16.6
−1.48
0.1396



MMP9
15.0
15.3
−1.45
0.1464



MNDA
12.5
12.7
−1.44
0.1507



CTNNB1
15.2
15.3
−1.42
0.1562



RAB22A
18.3
18.2
1.39
0.1657



BMI1
18.7
18.6
1.30
0.1949



NKIRAS2
17.8
17.9
−1.28
0.1993



BBC3
18.4
18.3
1.13
0.2579



CD34
23.4
23.6
−1.03
0.3028



AKT1
15.5
15.4
1.01
0.3138



CDK6
17.1
17.0
0.98
0.3257



MAPK1
15.1
15.0
0.89
0.3734



STK4
15.7
15.6
0.83
0.4057



TNFRSF6
16.5
16.4
0.71
0.4774



MAP2K1IP11
16.6
16.5
0.67
0.5036



CYBA
11.7
11.8
−0.58
0.5628



CXCR4
13.1
13.2
−0.48
0.6338



KIT
22.7
22.8
−0.42
0.6717



IQGAP1
14.3
14.3
−0.42
0.6753



APAF1
17.9
17.8
0.40
0.6873



NBN
16.1
16.1
−0.34
0.7365



LGALS3
17.4
17.4
−0.27
0.7886



PLK2
23.7
23.6
0.15
0.8821



STAT3
14.4
14.4
−0.15
0.8842



PBX3
20.6
20.5
0.14
0.8909



PLEKHQ1
15.1
15.1
−0.13
0.8936



CXCL1
19.4
19.4
−0.03
0.9748

























Predicted









probability



Group
id1
IRAK3
MDM2
IRAK3MDM2
PTEN
of melanoma







Cancer
MB296
15.06
15.80
15.40
13.51
1.0000



Cancer
MB282
17.10
16.64
16.89
14.91
1.0000



Cancer
MB347
16.05
15.88
15.97
13.74
0.9800



Cancer
MB311
15.79
15.47
15.64
13.39
0.9800



Cancer
MB312
17.02
16.47
16.77
14.48
0.9800



Normal
N144
15.98
16.07
16.02
13.72
0.9800



Cancer
MB338
16.86
16.51
16.70
14.36
0.9700



Cancer
MB293
17.42
17.44
17.43
15.08
0.9700



Normal
N186
16.73
15.89
16.34
13.97
0.9700



Cancer
MB357
16.41
16.30
16.36
13.97
0.9600



Cancer
MB351
16.79
15.73
16.31
13.91
0.9600



Cancer
MB360
17.47
16.81
17.17
14.74
0.9600



Cancer
MB326
17.03
16.33
16.71
14.27
0.9500



Cancer
MB294
17.21
16.51
16.89
14.45
0.9500



Cancer
MB288
16.47
16.52
16.49
14.03
0.9500



Cancer
MB342
17.40
16.87
17.16
14.68
0.9400



Cancer
MB301
16.60
16.38
16.50
13.98
0.9300



Cancer
MB361
17.14
16.76
16.97
14.41
0.9200



Normal
N205
17.65
16.43
17.09
14.49
0.8900



Cancer
MB297
17.15
16.67
16.93
14.30
0.8800



Cancer
MB323
16.60
16.04
16.35
13.71
0.8700



Normal
N271
16.91
16.52
16.73
14.05
0.8400



Cancer
MB284
15.91
16.18
16.03
13.35
0.8400



Cancer
MB348
16.79
17.21
16.98
14.29
0.8300



Cancer
MB364
16.89
16.85
16.87
14.16
0.8200



Cancer
MB324
17.49
16.99
17.26
14.53
0.8000



Cancer
MB325
17.85
17.03
17.47
14.73
0.7900



Cancer
MB300
17.76
16.70
17.27
14.50
0.7700



Cancer
MB318
17.88
16.56
17.27
14.47
0.7400



Cancer
MB299
17.19
17.00
17.10
14.30
0.7300



Cancer
MB309
17.55
16.80
17.20
14.38
0.7200



Cancer
MB331
17.20
16.56
16.91
14.09
0.7100



Cancer
MB358
16.69
16.12
16.43
13.59
0.7000



Normal
N032
17.37
16.86
17.14
14.29
0.6900



Normal
N034
17.48
16.87
17.20
14.35
0.6800



Cancer
MB276
17.37
16.73
17.07
14.21
0.6700



Cancer
MB320
17.61
16.61
17.15
14.28
0.6600



Normal
N190
17.54
16.69
17.15
14.27
0.6500



Cancer
MB313
16.85
16.43
16.65
13.77
0.6400



Cancer
MB352
18.18
16.87
17.58
14.69
0.6400



Cancer
MB321
16.57
16.29
16.44
13.55
0.6300



Cancer
MB333
17.28
15.93
16.66
13.77
0.6300



Cancer
MB368
16.61
15.68
16.19
13.27
0.6000



Cancer
MB337
16.62
16.64
16.63
13.69
0.5700



Normal
N202
17.00
15.94
16.51
13.57
0.5700



Cancer
MB330
16.62
15.76
16.23
13.29
0.5600



Cancer
MB281
16.47
16.00
16.26
13.31
0.5600



Cancer
MB334
17.38
16.23
16.85
13.91
0.5500



Cancer
MB303
16.86
16.50
16.69
13.73
0.5400



Cancer
MB359
16.80
16.94
16.87
13.88
0.5100



Cancer
MB336
17.03
16.78
16.91
13.93
0.5000



Cancer
MB295
17.48
17.57
17.52
14.52
0.4900



Normal
N201
17.80
17.33
17.58
14.58
0.4800



Normal
N206
17.70
16.61
17.20
14.19
0.4700



Cancer
MB307
16.91
15.73
16.37
13.33
0.4300



Cancer
MB287
18.01
16.72
17.42
14.38
0.4200



Cancer
MB369
16.19
17.50
16.79
13.74
0.4100



Normal
N037
17.82
17.25
17.56
14.50
0.4000



Normal
N218
16.67
17.00
16.82
13.76
0.4000



Normal
N074
18.13
17.31
17.76
14.69
0.4000



Normal
N046
17.81
17.45
17.64
14.56
0.3700



Normal
N232
17.40
16.76
17.11
14.02
0.3700



Normal
N187
18.12
17.21
17.70
14.59
0.3500



Normal
N234
16.07
15.68
15.89
12.78
0.3400



Cancer
MB344
17.88
16.28
17.14
14.04
0.3400



Normal
N213
17.57
16.49
17.08
13.95
0.3200



Normal
N039
17.51
16.68
17.13
13.98
0.2900



Normal
N196
18.16
17.05
17.65
14.49
0.2800



Normal
N231
17.14
16.34
16.77
13.61
0.2700



Cancer
MB306
17.76
16.82
17.33
14.14
0.2500



Normal
N211
17.18
16.59
16.91
13.71
0.2400



Cancer
MB339
17.57
16.78
17.21
14.01
0.2400



Normal
N146
16.94
16.23
16.62
13.40
0.2200



Normal
N197
17.51
16.68
17.13
13.90
0.2100



Normal
N185
17.76
16.26
17.07
13.83
0.2100



Normal
N194
16.98
16.06
16.56
13.32
0.2000



Cancer
MB316
18.77
16.95
17.94
14.68
0.1900



Normal
N014
17.98
16.86
17.47
14.19
0.1700



Normal
N198
17.21
16.45
16.87
13.57
0.1600



Normal
N233
17.39
16.60
17.03
13.73
0.1600



Normal
N200
17.91
16.78
17.39
14.08
0.1500



Normal
N229
17.68
16.74
17.25
13.94
0.1500



Normal
N017
17.22
16.08
16.69
13.38
0.1400



Normal
N223
17.91
16.36
17.20
13.88
0.1400



Normal
N188
16.74
16.81
16.77
13.44
0.1300



Normal
N183
17.43
17.05
17.25
13.91
0.1300



Normal
N182
17.50
16.58
17.08
13.73
0.1200



Normal
N059
16.13
16.47
16.29
12.91
0.1100



Normal
N228
16.70
16.64
16.67
13.29
0.1000



Normal
N052
17.04
17.05
17.04
13.61
0.0800



Normal
N221
16.79
16.58
16.69
13.26
0.0800



Normal
N018
18.04
17.18
17.65
14.21
0.0800



Normal
N259
16.97
16.26
16.65
13.17
0.0600



Normal
N139
16.92
16.34
16.66
13.16
0.0600



Normal
N272
17.39
16.94
17.19
13.68
0.0600



Normal
N230
16.98
17.15
17.06
13.54
0.0500



Normal
N199
18.42
16.80
17.68
14.11
0.0400



Normal
N015
18.50
17.76
18.16
14.56
0.0300



Normal
N226
16.22
16.10
16.16
12.52
0.0300



Normal
N021
16.11
15.97
16.05
12.35
0.0200



Normal
N050
17.82
16.31
17.13
13.17
0.0100



























TABLE 2a













Normal
Melanoma











32
26



En-



N =
Correct
Correct


total used


2-gene models and
tropy
#normal
#normal
#mi
#mi
Classifi-
Classifi-


(excludes missing)


















1-gene models
R-sq
Correct
FALSE
Correct
FALSE
cation
cation
p-val 1
p-val 2
# normals
# disease






















LTA
MYC
0.77
30
2
23
2
93.8%
92.0%
6.3E−07
3.8E−14
32
25


IL18BP
MYC
0.70
31
1
23
3
96.9%
88.5%
1.3E−05
2.4E−13
32
26


CCL5
MYC
0.62
29
3
24
2
90.6%
92.3%
0.0004
2.3E−10
32
26


MYC
NFKB1
0.61
30
2
24
2
93.8%
92.3%
8.4E−12
0.0005
32
26


ALOX5
MYC
0.61
29
3
24
2
90.6%
92.3%
0.0005
3.8E−11
32
26


EGR1
MYC
0.60
28
4
23
3
87.5%
88.5%
0.0008
1.3E−10
32
26


MYC
SERPINE1
0.58
28
4
23
3
87.5%
88.5%
4.2E−11
0.0016
32
26


MYC
TOSO
0.58
31
1
24
2
96.9%
92.3%
1.6E−11
0.0022
32
26


CD8A
MYC
0.57
27
5
21
4
84.4%
84.0%
0.0091
3.4E−11
32
25


MYC
TGFB1
0.57
29
3
23
3
90.6%
88.5%
1.7E−11
0.0031
32
26


MYC
SERPINA1
0.57
29
3
24
2
90.6%
92.3%
5.4E−11
0.0032
32
26


MYC
TNF
0.57
28
4
22
4
87.5%
84.6%
1.7E−11
0.0034
32
26


DPP4
MYC
0.56
27
5
22
4
84.4%
84.6%
0.0041
1.4E−10
32
26


IL32
MYC
0.56
29
3
22
4
90.6%
84.6%
0.0045
2.9E−11
32
26


IL1R1
MYC
0.56
29
3
23
3
90.6%
88.5%
0.0052
1.7E−10
32
26


MYC
PLAUR
0.56
29
3
24
2
90.6%
92.3%
6.5E−11
0.0054
32
26


ICAM1
MYC
0.55
28
4
23
3
87.5%
88.5%
0.0068
3.3E−11
32
26


MMP12
MYC
0.55
28
4
21
4
87.5%
84.0%
0.0046
2.1E−10
32
25


CXCR3
MYC
0.55
26
6
21
4
81.3%
84.0%
0.0050
5.7E−11
32
25


GZMB
MYC
0.54
27
5
23
3
84.4%
88.5%
0.0092
1.6E−10
32
26


MAPK14
MYC
0.54
29
3
23
3
90.6%
88.5%
0.0094
5.8E−11
32
26


MMP9
MYC
0.54
28
4
23
3
87.5%
88.5%
0.0098
1.2E−10
32
26


MYC
PTPRC
0.54
28
4
23
3
87.5%
88.5%
1.3E−10
0.0120
32
26


MYC
VEGF
0.53
29
3
24
2
90.6%
92.3%
9.9E−11
0.0149
32
26


IL1RN
MYC
0.53
29
3
24
2
90.6%
92.3%
0.0169
7.6E−11
32
26


ELA2
MYC
0.53
26
6
22
4
81.3%
84.6%
0.0186
1.3E−09
32
26


IL5
MYC
0.52
27
5
22
4
84.4%
84.6%
0.0248
5.5E−10
32
26


CASP3
MYC
0.52
28
4
23
3
87.5%
88.5%
0.0301
1.2E−08
32
26


HSPA1A
MYC
0.51
29
3
22
4
90.6%
84.6%
0.0371
1.6E−10
32
26


MYC
TNFSF6
0.51
28
4
22
4
87.5%
84.6%
3.5E−10
0.0377
32
26


MYC
TXNRD1
0.51
28
4
22
4
87.5%
84.6%
2.9E−10
0.0382
32
26


MYC

0.46
25
7
21
5
78.1%
80.8%
1.4E−09

32
26


CD4
IL18BP
0.36
25
7
20
6
78.1%
76.9%
2.4E−07
1.1E−05
32
26


IL18BP
TNFSF5
0.32
24
8
20
6
75.0%
76.9%
0.0001
1.4E−06
32
26


ALOX5
CD4
0.29
24
8
20
6
75.0%
76.9%
0.0002
2.0E−05
32
26


ALOX5
APAF1
0.28
26
6
20
6
81.3%
76.9%
9.8E−06
3.0E−05
32
26


IL32
TNFSF5
0.28
26
6
20
6
81.3%
76.9%
0.0006
3.1E−06
32
26


C1QA
CASP3
0.27
24
8
20
6
75.0%
76.9%
0.0003
0.0004
32
26


CCL5
MIF
0.27
26
6
20
5
81.3%
80.0%
3.7E−05
0.0009
32
25


ALOX5
NFKB1
0.26
24
8
20
6
75.0%
76.9%
1.6E−05
6.9E−05
32
26


ADAM17
ALOX5
0.25
25
7
20
6
78.1%
76.9%
9.0E−05
6.0E−05
32
26


CASP3
IFNG
0.25
24
8
20
6
75.0%
76.9%
2.1E−05
0.0008
32
26


ADAM17
IL1R1
0.25
25
7
20
6
78.1%
76.9%
6.1E−05
8.0E−05
32
26


CASP3
CCL5
0.24
26
6
20
6
81.3%
76.9%
0.0013
0.0011
32
26


ALOX5
IL18
0.24
25
7
20
6
78.1%
76.9%
0.0009
0.0002
32
26


C1QA
CD4
0.23
24
8
20
6
75.0%
76.9%
0.0029
0.0022
32
26


CD8A
TNFSF5
0.23
24
8
19
6
75.0%
76.0%
0.0119
3.5E−05
32
25


IL18
IL1R1
0.22
24
8
20
6
75.0%
76.9%
0.0002
0.0021
32
26


ALOX5
HSPA1A
0.21
27
5
21
5
84.4%
80.8%
4.1E−05
0.0006
32
26


CCL5
TNF
0.19
25
7
20
6
78.1%
76.9%
9.3E−05
0.0127
32
26


CASP3
HLADRA
0.19
24
8
20
6
75.0%
76.9%
0.0002
0.0146
32
26


PLAUR
TNFRSF1A
0.18
24
8
20
6
75.0%
76.9%
0.0002
0.0003
32
26


SERPINA1
TNFRSF1A
0.18
27
5
21
5
84.4%
80.8%
0.0002
0.0005
32
26


IL32
MIF
0.18
24
8
19
6
75.0%
76.0%
0.0015
0.0004
32
25


HMGB1
IFNG
0.18
24
8
20
6
75.0%
76.9%
0.0005
0.0005
32
26


IL1R1
TNFRSF1A
0.18
24
8
20
6
75.0%
76.9%
0.0002
0.0011
32
26


CD4
MMP12
0.17
24
8
19
6
75.0%
76.0%
0.0011
0.0229
32
25


EGR1
TIMP1
0.14
24
8
19
6
75.0%
76.0%
0.0013
0.0239
32
25


ALOX5
LTA
0.14
25
7
19
6
78.1%
76.0%
0.0044
0.0100
32
25


IRF1
PLAUR
0.09
24
8
20
6
75.0%
76.9%
0.0225
0.0083
32
26
















Melanoma
Normals
Sum



Group Size
44.8%
55.2%
100%



N =
26
32
58



Gene
Mean
Mean
p-val







MYC
18.7
17.5
1.4E−09



TNFSF5
17.9
17.4
0.0012



CD4
15.8
15.3
0.0020



CCL5
12.7
13.2
0.0026



C1QA
20.5
21.2
0.0027



CASP3
20.1
19.7
0.0030



IL18
21.5
21.1
0.0048



EGR1
20.1
20.6
0.0105



ELA2
20.7
21.8
0.0194



IL15
21.3
20.9
0.0204



ALOX5
16.4
16.7
0.0255



IL8
21.9
21.3
0.0262



ADAM17
18.9
18.7
0.0399



MIF
15.4
15.1
0.0416



IL1R1
20.4
20.8
0.0538



DPP4
18.8
18.5
0.0547



IL5
21.9
22.4
0.0735



SERPINE1
21.8
22.3
0.0800



APAF1
17.2
17.0
0.0909



MMP12
23.1
23.6
0.1016



LTA
20.2
20.0
0.1065



SSI3
18.3
18.0
0.1115



GZMB
17.1
17.5
0.1138



SERPINA1
13.1
13.3
0.1279



NFKB1
17.3
17.1
0.1335



HMGB1
16.8
16.6
0.1351



IL18BP
17.1
17.3
0.1500



IFNG
22.9
23.4
0.1519



MMP9
15.0
15.5
0.1693



CD19
18.8
18.4
0.1803



PLAUR
15.3
15.5
0.1842



PLA2G7
19.6
19.3
0.1850



PTPRC
12.1
11.9
0.1915



TNFSF6
20.3
20.6
0.2048



CCR5
17.8
18.0
0.2595



TXNRD1
17.3
17.2
0.2730



IL23A
21.2
20.9
0.2735



IL1B
16.5
16.3
0.2953



TNFRSF1A
15.4
15.2
0.3666



VEGF
23.0
23.2
0.3866



TOSO
15.7
15.6
0.4131



TIMP1
14.9
14.8
0.4195



CD8A
15.8
16.0
0.4355



IL32
13.9
14.0
0.4720



MAPK14
15.4
15.3
0.4722



CD86
18.1
18.0
0.4770



TLR2
16.5
16.4
0.4843



IFI16
16.2
16.3
0.4992



HLADRA
12.0
12.1
0.5162



MNDA
12.8
12.9
0.5352



MHC2TA
16.2
16.1
0.5407



CCR3
16.6
16.5
0.6175



TLR4
15.2
15.2
0.6611



TNFRSF13B
20.4
20.3
0.7187



TGFB1
13.3
13.2
0.7289



HSPA1A
15.1
15.0
0.8024



CTLA4
19.2
19.2
0.8102



CCL3
20.7
20.8
0.8409



IL1RN
16.7
16.7
0.8664



CASP1
16.0
16.1
0.8779



CXCL1
19.5
19.4
0.8933



IL10
23.4
23.4
0.9003



HMOX1
16.8
16.8
0.9176



ICAM1
17.7
17.7
0.9224



CXCR3
17.9
17.9
0.9278



PTGS2
17.5
17.5
0.9774



IRF1
13.2
13.2
0.9887



TNF
18.8
18.8
0.9887

























Predicted









probability



Patient ID
Group
LTA
MYC
logit
odds
of Melanoma Inf







MB284
Melanoma
19.01
18.64
21.55
2.3E+09
1.0000



MB293
Melanoma
19.25
18.24
12.78
3.6E+05
1.0000



MB313
Melanoma
19.82
18.66
11.52
1.0E+05
1.0000



MB368
Melanoma
20.14
18.93
11.34
84403.06
1.0000



MB330
Melanoma
19.33
18.13
10.11
24662.70
1.0000



MB294
Melanoma
20.37
18.95
8.68
5913.23
0.9998



MB287
Melanoma
20.42
18.96
8.41
4506.82
0.9998



MB352
Melanoma
20.19
18.74
8.09
3247.97
0.9997



MB312
Melanoma
21.04
19.40
6.76
862.91
0.9988



MB282
Melanoma
20.49
18.91
6.75
850.12
0.9988



MB295
Melanoma
21.14
19.48
6.65
769.09
0.9987



MB288
Melanoma
19.58
17.98
4.88
131.46
0.9925



MB357
Melanoma
19.76
18.13
4.81
122.76
0.9919



MB325
Melanoma
21.19
19.29
3.32
27.73
0.9652



MB017
Melanoma
19.80
18.06
3.16
23.54
0.9592



MB316
Melanoma
20.97
19.07
2.85
17.29
0.9453



N182
Normal
20.33
18.45
2.11
8.21
0.8914



MB306
Melanoma
20.91
18.95
1.94
6.93
0.8739



MB320
Melanoma
20.99
19.01
1.77
5.88
0.8547



MB360
Melanoma
20.63
18.68
1.64
5.13
0.8369



MB337
Melanoma
21.40
19.34
1.34
3.82
0.7923



MB359
Melanoma
19.73
17.86
1.30
3.67
0.7858



MB364
Melanoma
21.21
19.15
1.00
2.72
0.7315



N199
Normal
20.12
18.18
0.93
2.53
0.7167



MB297
Melanoma
19.74
17.84
0.85
2.35
0.7014



N198
Normal
19.70
17.76
0.19
1.21
0.5485



MB348
Melanoma
19.92
17.95
0.12
1.13
0.5311



N046
Normal
20.20
18.11
−1.12
0.33
0.2466



MB299
Melanoma
19.21
17.21
−1.51
0.22
0.1816



N052
Normal
19.70
17.62
−1.73
0.18
0.1502



N074
Normal
20.51
18.33
−1.93
0.14
0.1262



N272
Normal
20.15
17.93
−3.06
0.05
0.0448



N211
Normal
19.65
17.47
−3.37
0.03
0.0332



N059
Normal
19.48
17.31
−3.49
0.03
0.0297



N183
Normal
19.75
17.52
−3.84
0.02
0.0211



N187
Normal
19.33
17.14
−4.01
0.02
0.0179



N014
Normal
19.77
17.47
−4.86
0.01
0.0077



N017
Normal
20.78
18.36
−4.95
0.01
0.0071



N185
Normal
20.60
18.17
−5.35
0.00
0.0047



N230
Normal
19.59
17.26
−5.53
0.00
0.0039



N139
Normal
19.74
17.40
−5.56
0.00
0.0038



N200
Normal
20.23
17.78
−6.35
0.00
0.0017



N188
Normal
20.45
17.94
−6.75
0.00
0.0012



N221
Normal
20.03
17.54
−7.13
0.00
0.0008



N201
Normal
21.10
18.48
−7.31
0.00
0.0007



N202
Normal
19.52
17.05
−7.70
0.00
0.0005



N197
Normal
19.33
16.86
−8.01
0.00
0.0003



N034
Normal
20.29
17.68
−8.35
0.00
0.0002



N146
Normal
19.57
17.03
−8.67
0.00
0.0002



N190
Normal
19.47
16.91
−9.10
0.00
0.0001



N271
Normal
19.83
17.21
−9.34
0.00
0.0001



N259
Normal
20.00
17.29
−10.30
0.00
0.0000



N196
Normal
20.45
17.66
−10.74
0.00
0.0000



N228
Normal
19.89
16.86
−15.10
0.00
0.0000



N144
Normal
20.41
17.28
−15.68
0.00
0.0000



N233
Normal
19.92
16.82
−16.19
0.00
0.0000



N218
Normal
20.12
16.62
−21.49
0.00
0.0000

























TABLE 3A















total used






Normal
Melanoma

(excludes



En-

N =
49
49

missing)


















2-gene models and
tropy
#normal
#normal
#mm
#mm
Correct
Correct


#
#


1-gene models
R-sq
Correct
FALSE
Correct
FALSE
Classification
Classification
p-val 1
p-val 2
normals
disease






















CDK2
MYC
0.54
43
6
43
6
87.8%
87.8%
1.7E−08
1.1E−16
49
49


ABL1
MYC
0.51
42
7
43
6
85.7%
87.8%
1.4E−07
1.1E−16
49
49


MYC
NME4
0.50
39
10
39
10
79.6%
79.6%
7.6E−15
3.5E−07
49
49


BRAF
MYC
0.49
40
9
41
8
81.6%
83.7%
5.6E−07
4.4E−16
49
49


MYC
NRAS
0.48
40
9
42
7
81.6%
85.7%
9.1E−15
1.2E−06
49
49


ABL2
MYC
0.47
45
4
42
7
91.8%
85.7%
1.6E−06
1.3E−15
49
49


BRCA1
MYC
0.47
41
8
41
8
83.7%
83.7%
2.3E−06
7.1E−14
49
49


CDKN2A
MYC
0.47
41
8
42
7
83.7%
85.7%
3.0E−06
1.4E−08
49
49


E2F1
MYC
0.46
41
8
41
8
83.7%
83.7%
4.1E−06
3.3E−12
49
49


MYC
NOTCH2
0.45
41
8
41
8
83.7%
83.7%
8.9E−15
6.9E−06
49
49


MYC
SOCS1
0.45
42
7
41
8
85.7%
83.7%
1.3E−13
9.0E−06
49
49


MYC
TGFB1
0.44
43
4
42
7
91.5%
85.7%
3.3E−14
3.0E−05
47
49


EGR1
MYC
0.44
39
10
38
11
79.6%
77.6%
2.1E−05
2.8E−13
49
49


CCNE1
MYC
0.42
42
7
41
8
85.7%
83.7%
6.6E−05
2.2E−13
49
49


CDKN1A
MYC
0.42
40
9
39
10
81.6%
79.6%
7.2E−05
4.1E−09
49
49


MYC
TP53
0.42
39
10
40
9
79.6%
81.6%
6.6E−13
9.3E−05
49
49


ICAM1
MYC
0.42
41
8
40
9
83.7%
81.6%
0.0001
2.9E−13
49
49


BAX
MYC
0.42
40
9
42
7
81.6%
85.7%
0.0001
4.5E−11
49
49


MYC
VHL
0.41
44
5
41
8
89.8%
83.7%
2.3E−13
0.0001
49
49


CDC25A
MYC
0.41
41
8
41
8
83.7%
83.7%
0.0001
8.4E−12
49
49


MYC
TNFRSF10A
0.41
40
9
41
8
81.6%
83.7%
1.6E−13
0.0002
49
49


BCL2
MYC
0.40
42
7
42
7
85.7%
85.7%
0.0003
1.4E−13
49
49


MYC
TNFRSF10B
0.40
41
8
41
8
83.7%
83.7%
4.9E−13
0.0004
49
49


MYC
NFKB1
0.40
39
10
40
9
79.6%
81.6%
3.3E−13
0.0005
49
49


CDKN2A
MSH2
0.40
39
10
39
9
79.6%
81.3%
6.0E−12
1.7E−06
49
48


ITGB1
MYC
0.39
41
8
41
8
83.7%
83.7%
0.0005
6.3E−13
49
49


MYC
RHOC
0.39
42
7
41
8
85.7%
83.7%
9.8E−11
0.0005
49
49


ITGA1
MYC
0.39
43
6
40
9
87.8%
81.6%
0.0010
7.3E−13
49
49


ATM
MYC
0.39
39
10
40
9
79.6%
81.6%
0.0010
1.0E−12
49
49


MYC
TNF
0.38
43
6
40
9
87.8%
81.6%
5.0E−13
0.0011
49
49


MYC
THBS1
0.38
40
9
40
9
81.6%
81.6%
9.9E−11
0.0011
49
49


ERBB2
MYC
0.38
41
8
40
8
83.7%
83.3%
0.0007
2.6E−12
49
48


MYC
RAF1
0.38
42
7
41
8
85.7%
83.7%
4.1E−12
0.0015
49
49


BAD
MYC
0.38
42
7
40
9
85.7%
81.6%
0.0017
5.3E−11
49
49


MYC
SMAD4
0.38
42
7
40
9
85.7%
81.6%
2.2E−12
0.0020
49
49


JUN
MYC
0.37
40
9
40
9
81.6%
81.6%
0.0024
2.2E−12
49
49


MMP9
MYC
0.37
41
8
40
9
83.7%
81.6%
0.0029
3.2E−11
49
49


CDK5
MYC
0.37
41
8
41
8
83.7%
83.7%
0.0038
2.0E−12
49
49


IFNG
MYC
0.37
41
8
41
8
83.7%
83.7%
0.0044
1.9E−10
49
49


MYC
PLAUR
0.36
39
10
39
10
79.6%
79.6%
1.8E−11
0.0046
49
49


MYC
TNFRSF6
0.36
38
11
39
10
77.6%
79.6%
9.3E−12
0.0046
49
49


CFLAR
MYC
0.36
39
10
40
9
79.6%
81.6%
0.0052
1.2E−11
49
49


MYC
SERPINE1
0.36
38
11
38
11
77.6%
77.6%
2.6E−11
0.0056
49
49


AKT1
MYC
0.35
38
10
38
11
79.2%
77.6%
0.0221
5.6E−12
48
49


MYC
SEMA4D
0.35
43
6
40
9
87.8%
81.6%
1.8E−11
0.0113
49
49


CDK4
MYC
0.35
39
10
39
10
79.6%
79.6%
0.0115
6.2E−12
49
49


GZMA
MYC
0.35
38
11
38
11
77.6%
77.6%
0.0168
1.2E−10
49
49


MYC
RB1
0.35
40
9
38
11
81.6%
77.6%
7.0E−12
0.0182
49
49


CASP8
MYC
0.34
40
8
41
8
83.3%
83.7%
0.0142
5.0E−11
48
49


MYC
VEGF
0.34
40
9
39
10
81.6%
79.6%
1.3E−11
0.0242
49
49


MYC
PCNA
0.34
42
7
40
9
85.7%
81.6%
9.8E−12
0.0276
49
49


MYC
SRC
0.34
37
12
38
11
75.5%
77.6%
1.1E−11
0.0311
49
49


IGFBP3
MYC
0.34
39
10
39
10
79.6%
79.6%
0.0319
1.3E−11
49
49


MYC
SKI
0.34
41
8
41
8
83.7%
83.7%
6.4E−11
0.0327
49
49


MYC
PTCH1
0.34
39
10
39
10
79.6%
79.6%
1.7E−11
0.0425
49
49


ITGA3
MYC
0.34
37
12
38
11
75.5%
77.6%
0.0430
2.4E−11
49
49


IFITM1
MYC
0.34
38
11
38
11
77.6%
77.6%
0.0457
1.6E−11
49
49


MYC
MYCL1
0.33
39
10
39
10
79.6%
79.6%
1.6E−11
0.0492
49
49


CDKN2A
TP53
0.33
38
11
38
11
77.6%
77.6%
3.6E−10
0.0003
49
49


CDKN2A
PCNA
0.33
38
11
38
11
77.6%
77.6%
2.7E−11
0.0003
49
49


ATM
CDKN2A
0.32
38
11
37
12
77.6%
75.5%
0.0004
8.0E−11
49
49


CDKN2A
SKIL
0.31
39
10
38
10
79.6%
79.2%
2.7E−10
0.0008
49
48


MYC

0.31
37
12
37
12
75.5%
75.5%
1.2E−10

49
49


CDKN2A
IL8
0.30
38
11
38
11
77.6%
77.6%
2.9E−09
0.0028
49
49


CDKN2A
TNFRSF10A
0.29
37
12
37
12
75.5%
75.5%
3.6E−10
0.0030
49
49


CDKN1A
CDKN2A
0.29
37
12
37
12
75.5%
75.5%
0.0032
3.4E−05
49
49


CDK4
CDKN2A
0.29
38
11
38
11
77.6%
77.6%
0.0040
4.6E−10
49
49


CDKN2A
SMAD4
0.29
37
12
37
12
75.5%
75.5%
9.9E−10
0.0048
49
49


CDKN2A
PTCH1
0.28
37
12
37
12
75.5%
75.5%
9.4E−10
0.0106
49
49


CDK2
TP53
0.24
39
10
38
11
79.6%
77.6%
1.9E−07
1.6E−07
49
49


BAX
SEMA4D
0.23
40
9
38
11
81.6%
77.6%
9.8E−08
2.0E−05
49
49


CDKN1A
SKI
0.23
38
11
37
12
77.6%
75.5%
1.4E−07
0.0037
49
49


BAX
SKIL
0.23
37
12
37
11
75.5%
77.1%
7.2E−08
3.1E−05
49
48


BAX
SMAD4
0.22
38
11
38
11
77.6%
77.6%
9.5E−08
3.3E−05
49
49


BAX
TP53
0.22
37
12
37
12
75.5%
75.5%
6.4E−07
4.0E−05
49
49


BAX
NFKB1
0.17
38
11
37
12
77.6%
75.5%
2.1E−06
0.0014
49
49


BAX
RB1
0.14
37
12
37
12
75.5%
75.5%
1.4E−05
0.0147
49
49
















Melanoma
Normals
Sum



Group Size
50.0%
50.0%
100%



N =
49
49
98



Gene
Mean
Mean
p-val







MYC
18.73
17.72
1.2E−10



CDKN2A
20.49
21.43
2.3E−08



CDKN1A
16.81
17.36
1.9E−06



E2F1
20.70
21.14
0.0002



BAX
15.55
15.86
0.0003



RHOC
16.51
16.94
0.0006



THBS1
18.55
19.16
0.0013



CDC25A
23.37
24.09
0.0023



IFNG
22.59
23.38
0.0027



BAD
17.97
18.19
0.0040



BRCA1
21.57
21.93
0.0052



NME4
17.70
17.96
0.0081



SOCS1
16.93
17.23
0.0118



MMP9
15.02
15.59
0.0118



EGR1
20.41
20.74
0.0122



MSH2
18.18
17.86
0.0154



GZMA
17.13
17.60
0.0166



TP53
16.93
16.69
0.0236



NRAS
16.90
17.11
0.0242



IL8
21.75
21.24
0.0272



CDK2
19.43
19.64
0.0289



SERPINE1
22.10
22.47
0.0295



PLAUR
15.25
15.53
0.0365



RAF1
14.36
14.59
0.0580



CCNE1
22.96
23.29
0.0583



SKI
17.85
17.65
0.0652



CFLAR
14.74
14.98
0.0676



ICAM1
17.52
17.71
0.0759



TNFRSF6
16.35
16.56
0.0794



CASP8
14.79
14.99
0.0828



SEMA4D
14.92
14.74
0.0940



ERBB2
22.70
23.02
0.1081



VHL
17.42
17.55
0.1183



TNFRSF10B
17.14
17.29
0.1684



ITGB1
14.92
15.09
0.1689



SMAD4
17.42
17.30
0.1791



FGFR2
23.54
23.23
0.1875



FOS
16.05
16.25
0.1897



NOTCH2
16.57
16.73
0.2034



ATM
16.58
16.45
0.2227



JUN
21.07
21.23
0.2241



SKIL
17.96
17.81
0.2283



TGFB1
13.26
13.36
0.2585



G1P3
15.55
15.80
0.2930



ITGA3
22.16
21.99
0.3105



ITGA1
21.15
21.30
0.3510



VEGF
22.57
22.71
0.3650



NFKB1
17.40
17.30
0.3810



TNFRSF10A
20.84
20.73
0.4047



ABL2
20.45
20.54
0.4079



CDK4
17.80
17.73
0.4278



ABL1
18.65
18.74
0.4283



TNFRSF1A
15.67
15.57
0.4353



IL1B
16.43
16.33
0.4974



BRAF
17.23
17.30
0.5030



CDK5
18.73
18.79
0.5078



IGFBP3
22.49
22.60
0.5649



PTCH1
20.84
20.73
0.5808



AKT1
15.50
15.46
0.6353



ANGPT1
20.53
20.60
0.6578



NME1
19.09
19.04
0.6908



HRAS
19.93
19.88
0.7081



IFITM1
9.42
9.47
0.7416



PTEN
14.15
14.11
0.7556



RHOA
12.06
12.09
0.7768



ITGAE
23.82
23.76
0.7798



BCL2
17.41
17.37
0.7810



RB1
17.73
17.70
0.7909



S100A4
13.19
13.21
0.8139



PLAU
24.59
24.56
0.8378



TNF
18.81
18.79
0.8650



SRC
18.97
18.99
0.8800



APAF1
17.35
17.33
0.8918



PCNA
18.07
18.06
0.9068



WNT1
21.93
21.92
0.9305



MYCL1
18.71
18.70
0.9436



IL18
21.48
21.49
0.9542



TIMP1
14.91
14.90
0.9643



COL18A1
24.05
24.04
0.9862

























Predicted









probability



Patient ID
Group
CDK2
MYC
logit
odds
of melanoma cancer







MB391-HCG
Melanoma
18.47
19.54
10.00
2.2E+04
1.0000



MB284-HCG
Melanoma
18.89
19.45
7.75
2.3E+03
0.9996



MB383-HCG
Melanoma
18.71
19.01
6.87
9.6E+02
0.9990



MB451-HCG
Melanoma
19.42
19.70
6.37
5.8E+02
0.9983



MB373-HCG
Melanoma
19.87
20.15
6.11
4.5E+02
0.9978



MB377-HCG
Melanoma
17.85
17.77
5.88
3.6E+02
0.9972



MB442-HCG
Melanoma
19.25
19.29
5.52
2.5E+02
0.9960



MB454-HCG
Melanoma
19.08
19.03
5.25
1.9E+02
0.9948



MB449-HCG
Melanoma
19.21
19.08
4.93
1.4E+02
0.9928



MB360-HCG
Melanoma
19.49
19.34
4.63
1.0E+02
0.9904



MB357-HCG
Melanoma
19.31
19.07
4.44
8.4E+01
0.9883



MB443-HCG
Melanoma
19.57
19.34
4.28
7.2E+01
0.9864



MB491-HCG
Melanoma
19.56
19.20
3.79
4.4E+01
0.9779



MB385-HCG
Melanoma
18.99
18.54
3.78
4.4E+01
0.9777



MB424-HCG
Melanoma
19.69
19.29
3.54
3.4E+01
0.9718



MB410-HCG
Melanoma
19.75
19.28
3.22
2.5E+01
0.9616



MB419-HCG
Melanoma
20.46
20.08
3.17
2.4E+01
0.9598



MB489-HCG
Melanoma
18.96
18.32
3.09
2.2E+01
0.9564



MB282-HCG
Melanoma
19.57
19.01
3.02
2.0E+01
0.9534



MB389-HCG
Melanoma
20.15
19.67
2.95
1.9E+01
0.9504



MB312-HCG
Melanoma
19.97
19.42
2.80
1.6E+01
0.9427



MB364-HCG
Melanoma
20.37
19.83
2.59
1.3E+01
0.9299



MB313-HCG
Melanoma
19.42
18.71
2.54
1.3E+01
0.9267



MB465-HCG
Melanoma
18.75
17.94
2.50
1.2E+01
0.9244



MB510-HCG
Melanoma
18.89
18.10
2.50
1.2E+01
0.9243



MB293-HCG
Melanoma
19.46
18.71
2.34
1.0E+01
0.9124



MB426-HCG
Melanoma
19.56
18.80
2.23
9.3E+00
0.9032



MB381-HCG
Melanoma
19.63
18.88
2.20
9.0E+00
0.8998



MB466-HCG
Melanoma
18.92
18.05
2.18
8.9E+00
0.8988



MB420-HCG
Melanoma
19.41
18.59
2.08
8.0E+00
0.8885



MB447-HCG
Melanoma
19.47
18.62
1.94
6.9E+00
0.8740



MB476-HCG
Melanoma
19.05
18.06
1.68
5.3E+00
0.8423



MB472-HCG
Melanoma
18.70
17.65
1.63
5.1E+00
0.8360



MB518-HCG
Melanoma
18.68
17.61
1.54
4.7E+00
0.8241



MB387-HCG
Melanoma
19.33
18.32
1.40
4.1E+00
0.8030



MB306-HCG
Melanoma
20.13
19.21
1.28
3.6E+00
0.7825



MB429-HCG
Melanoma
20.19
19.23
1.07
2.9E+00
0.7439



MB294-HCG
Melanoma
20.01
18.99
0.96
2.6E+00
0.7229



MB330-HCG
Melanoma
19.13
17.96
0.90
2.5E+00
0.7102



206-HCG
Normals
19.67
18.57
0.88
2.4E+00
0.7073



032-HCG
Normals
19.79
18.65
0.64
1.9E+00
0.6550



074-HCG
Normals
20.01
18.91
0.64
1.9E+00
0.6549



MB392-HCG
Melanoma
19.84
18.68
0.52
1.7E+00
0.6273



059-HCG
Normals
18.86
17.55
0.52
1.7E+00
0.6271



MB316-HCG
Melanoma
20.23
19.12
0.50
1.7E+00
0.6231



039-HCG
Normals
19.65
18.45
0.47
1.6E+00
0.6147



MB361-HCG
Melanoma
19.15
17.82
0.27
1.3E+00
0.5674



221-HCG
Normals
18.92
17.54
0.23
1.3E+00
0.5579



MB501-HCG
Melanoma
19.73
18.47
0.22
1.2E+00
0.5546



MB320-HCG
Melanoma
20.07
18.84
0.10
1.1E+00
0.5257



MB456-HCG
Melanoma
20.13
18.80
−0.32
7.2E−01
0.4202



050-HCG
Normals
19.48
18.02
−0.44
6.4E−01
0.3918



234-HCG
Normals
18.78
17.20
−0.47
6.3E−01
0.3856



199-HCG
Normals
19.69
18.25
−0.49
6.1E−01
0.3805



052-HCG
Normals
19.18
17.66
−0.49
6.1E−01
0.3792



046-HCG
Normals
19.96
18.52
−0.67
5.1E−01
0.3383



186-HCG
Normals
20.13
18.69
−0.76
4.7E−01
0.3184



188-HCG
Normals
19.88
18.39
−0.77
4.6E−01
0.3174



185-HCG
Normals
19.88
18.39
−0.81
4.5E−01
0.3084



021-HCG
Normals
19.61
18.04
−0.95
3.9E−01
0.2798



205-HCG
Normals
19.44
17.79
−1.12
3.3E−01
0.2460



194-HCG
Normals
19.03
17.30
−1.22
2.9E−01
0.2277



182-HCG
Normals
19.94
18.33
−1.28
2.8E−01
0.2171



MB288-HCG
Melanoma
19.11
17.35
−1.38
2.5E−01
0.2012



201-HCG
Normals
20.28
18.67
−1.52
2.2E−01
0.1791



014-HCG
Normals
19.09
17.24
−1.72
1.8E−01
0.1522



MB299-HCG
Melanoma
18.98
17.11
−1.75
1.7E−01
0.1486



223-HCG
Normals
19.56
17.74
−1.86
1.6E−01
0.1346



213-HCG
Normals
18.93
17.01
−1.90
1.5E−01
0.1304



017-HCG
Normals
19.87
18.08
−1.96
1.4E−01
0.1236



198-HCG
Normals
19.64
17.79
−2.04
1.3E−01
0.1155



272-HCG
Normals
20.01
18.21
−2.08
1.3E−01
0.1112



139-HCG
Normals
19.65
17.78
−2.11
1.2E−01
0.1081



229-HCG
Normals
19.58
17.69
−2.17
1.1E−01
0.1025



197-HCG
Normals
18.78
16.75
−2.25
1.1E−01
0.0956



015-HCG
Normals
19.95
18.07
−2.34
9.6E−02
0.0875



196-HCG
Normals
19.72
17.80
−2.36
9.4E−02
0.0861



231-HCG
Normals
19.29
17.26
−2.56
7.7E−02
0.0718



146-HCG
Normals
19.48
17.28
−3.28
3.8E−02
0.0364



233-HCG
Normals
19.47
17.27
−3.31
3.7E−02
0.0353



MB017-HCG
Melanoma
20.07
17.89
−3.60
2.7E−02
0.0266



200-HCG
Normals
19.96
17.75
−3.65
2.6E−02
0.0253



230-HCG
Normals
19.63
17.35
−3.71
2.5E−02
0.0240



228-HCG
Normals
19.39
17.03
−3.90
2.0E−02
0.0199



190-HCG
Normals
19.48
17.04
−4.23
1.5E−02
0.0144



211-HCG
Normals
19.83
17.45
−4.23
1.5E−02
0.0143



202-HCG
Normals
19.76
17.31
−4.46
1.2E−02
0.0114



187-HCG
Normals
19.46
16.93
−4.57
1.0E−02
0.0103



MB517-HCG
Melanoma
19.20
16.63
−4.61
9.9E−03
0.0098



218-HCG
Normals
19.07
16.46
−4.64
9.6E−03
0.0095



034-HCG
Normals
20.37
17.96
−4.68
9.3E−03
0.0092



271-HCG
Normals
19.90
17.38
−4.82
8.1E−03
0.0080



226-HCG
Normals
19.49
16.84
−5.07
6.3E−03
0.0062



018-HCG
Normals
20.33
17.77
−5.22
5.4E−03
0.0054



183-HCG
Normals
19.94
17.32
−5.25
5.2E−03
0.0052



037-HCG
Normals
20.35
17.77
−5.31
4.9E−03
0.0049



144-HCG
Normals
19.99
17.29
−5.56
3.9E−03
0.0038



259-HCG
Normals
20.32
17.61
−5.76
3.2E−03
0.0031





















TABLE 4A










Normal
Melanoma



N =
50
53















Entropy
#normal
#normal
#mm
#mm
Correct
Correct


3-gene models
R-sq
Correct
FALSE
Correct
FALSE
Classification
Classification



















S100A6
TGFB1
TP53
0.39
38
8
40
9
82.6%
81.6%


RAF1
S100A6
TP53
0.38
38
10
40
9
79.2%
81.6%


NAB2
RAF1
S100A6
0.33
38
10
39
10
79.2%
79.6%


NFKB1
RAF1
S100A6
0.28
40
8
38
11
83.3%
77.6%


NAB2
PTEN
RAF1
0.25
37
11
38
11
77.1%
77.6%


RAF1
S100A6
TOPBP1
0.25
36
12
37
12
75.0%
75.5%


MAPK1
RAF1
S100A6
0.23
36
12
37
12
75.0%
75.5%


MAP2K1
RAF1
S100A6
0.23
37
11
38
11
77.1%
77.6%


PTEN
RAF1
TP53
0.16
37
11
38
11
77.1%
77.6%


CEBPB
CREBBP
TP53
0.15
36
12
37
12
75.0%
75.5%


NFKB1
PTEN
RAF1
0.11
36
12
37
12
75.0%
75.5%












total used



(excludes missing)


















#




3-gene models
p-val 1
p-val 2
p-val 3
normals
# disease




















S100A6
TGFB1
TP53
4.3E−09
6.1E−11
9.5E−11
46
49



RAF1
S100A6
TP53
9.0E−11
6.9E−10
3.8E−07
48
49



NAB2
RAF1
S100A6
1.3E−05
4.2E−09
1.5E−07
48
49



NFKB1
RAF1
S100A6
0.0004
5.5E−09
2.0E−07
48
49



NAB2
PTEN
RAF1
1.5E−06
4.5E−05
3.4E−07
48
49



RAF1
S100A6
TOPBP1
7.2E−08
7.4E−06
0.00618
48
49



MAPK1
RAF1
S100A6
0.0185
3.9E−07
2.0E−06
48
49



MAP2K1
RAF1
S100A6
0.0226
2.4E−07
2.6E−05
48
49



PTEN
RAF1
TP53
0.0048
7.6E−05
0.00104
48
49



CEBPB
CREBBP
TP53
0.0268
0.0002
3.2E−05
48
49



NFKB1
PTEN
RAF1
0.0339
0.0471
0.00018
48
49

















Melanoma
Normals
Sum



Group Size
51.1%
48.9%
100%



N =
48
46
94



Gene
Mean
Mean
p-val







THBS1
18.55
19.14
0.0017



NAB2
20.38
20.02
0.0058



CDKN2D
15.10
15.30
0.0184



TP53
16.94
16.67
0.0191



PDGFA
20.53
20.89
0.0194



SERPINE1
22.09
22.47
0.0204



EGR1
20.67
20.90
0.0374



S100A6
14.06
13.84
0.0453



RAF1
14.35
14.59
0.0736



ALOX5
16.23
16.53
0.0765



ICAM1
17.53
17.71
0.0865



TOPBP1
18.47
18.37
0.0890



SMAD3
18.72
18.50
0.0944



FOS
16.05
16.26
0.2130



CREBBP
15.70
15.84
0.2235



MAP2K1
16.38
16.26
0.2258



JUN
21.07
21.24
0.2628



TGFB1
13.27
13.35
0.2830



TNFRSF6
16.34
16.54
0.3317



EP300
17.12
17.23
0.3418



EGR3
23.51
23.78
0.3437



NFKB1
17.40
17.29
0.3611



NFATC2
16.87
16.73
0.3754



NR4A2
21.91
22.04
0.5714



NAB1
17.13
17.18
0.6096



PTEN
14.13
14.10
0.7375



PLAU
24.58
24.56
0.7535



EGR2
24.20
24.26
0.7692



CEBPB
15.06
15.08
0.8659



MAPK1
15.05
15.05
0.9215



SRC
18.98
18.97
0.9477



CCND2
17.19
17.13
0.9920






















TABLE 5A












total






used






(excludes



Normal
Melanoma

missing)



















En-



N =
48
49


#
#


2-gene models and
tropy
#normal
#normal
#bc
#bc
Correct
Correct


nor-
dis-


1-gene models
R-sq
Correct
FALSE
Correct
FALSE
Classification
Classification
p-val 1
p-val 2
mals
ease






















RP51077B9.4
TEGT
0.76
44
3
46
3
93.6%
93.9%
0
4.5E−09
47
49


MYC
RP51077B9.4
0.75
44
3
46
3
93.6%
93.9%
9.2E−09
5.3E−14
47
49


NCOA1
RP51077B9.4
0.74
43
4
45
4
91.5%
91.8%
1.5E−08
0
47
49


GNB1
RP51077B9.4
0.73
44
3
46
3
93.6%
93.9%
3.5E−08
0
47
49


IQGAP1
RP51077B9.4
0.72
43
4
45
4
91.5%
91.8%
6.4E−08
0
47
49


CTNNA1
RP51077B9.4
0.72
44
3
45
4
93.6%
91.8%
9.8E−08
0
47
49


PTPRC
RP51077B9.4
0.71
44
3
46
3
93.6%
93.9%
1.8E−07
0
47
49


PTEN
RP51077B9.4
0.70
45
2
47
2
95.7%
95.9%
2.8E−07
0
47
49


LGALS8
RP51077B9.4
0.70
43
4
45
4
91.5%
91.8%
3.0E−07
0
47
49


HMGA1
RP51077B9.4
0.69
42
5
43
6
89.4%
87.8%
5.7E−07
0
47
49


ADAM17
RP51077B9.4
0.69
44
3
45
4
93.6%
91.8%
6.1E−07
0
47
49


MSH6
RP51077B9.4
0.69
43
4
44
5
91.5%
89.8%
6.3E−07
0
47
49


G6PD
RP51077B9.4
0.69
43
4
45
4
91.5%
91.8%
7.7E−07
0
47
49


MAPK14
RP51077B9.4
0.68
44
3
46
3
93.6%
93.9%
1.4E−06
0
47
49


CASP9
RP51077B9.4
0.68
44
3
45
4
93.6%
91.8%
1.6E−06
0
47
49


PLEK2
RP51077B9.4
0.67
43
4
44
5
91.5%
89.8%
2.1E−06
3.7E−08
47
49


ACPP
RP51077B9.4
0.67
42
5
44
5
89.4%
89.8%
3.2E−06
0
47
49


NBEA
RP51077B9.4
0.66
44
3
45
4
93.6%
91.8%
3.5E−06
2.2E−16
47
49


RP51077B9.4
S100A4
0.66
44
3
46
3
93.6%
93.9%
0
3.7E−06
47
49


RP51077B9.4
S100A11
0.66
43
4
45
4
91.5%
91.8%
0
3.9E−06
47
49


MTF1
RP51077B9.4
0.66
42
5
45
4
89.4%
91.8%
4.2E−06
0
47
49


HSPA1A
RP51077B9.4
0.66
43
4
45
4
91.5%
91.8%
4.3E−06
0
47
49


PTGS2
RP51077B9.4
0.66
43
4
44
5
91.5%
89.8%
5.1E−06
0
47
49


CCR7
RP51077B9.4
0.66
42
5
44
5
89.4%
89.8%
5.2E−06
1.1E−16
47
49


RP51077B9.4
TIMP1
0.66
44
3
45
4
93.6%
91.8%
0
6.3E−06
47
49


C1QB
PLEK2
0.66
42
5
43
6
89.4%
87.8%
1.1E−07
4.9E−14
47
49


MYD88
RP51077B9.4
0.65
43
4
45
4
91.5%
91.8%
9.0E−06
0
47
49


RBM5
RP51077B9.4
0.65
44
3
46
3
93.6%
93.9%
1.2E−05
0
47
49


RP51077B9.4
TNFRSF1A
0.64
43
4
45
4
91.5%
91.8%
0
1.4E−05
47
49


ING2
RP51077B9.4
0.64
44
3
45
4
93.6%
91.8%
1.4E−05
0
47
49


RP51077B9.4
XRCC1
0.64
43
4
44
5
91.5%
89.8%
0
1.5E−05
47
49


RP51077B9.4
SP1
0.64
44
3
46
3
93.6%
93.9%
0
1.6E−05
47
49


CNKSR2
RP51077B9.4
0.64
44
3
46
3
93.6%
93.9%
1.6E−05
2.2E−16
47
49


RP51077B9.4
TGFB1
0.63
40
5
44
5
88.9%
89.8%
0
2.0E−05
45
49


GSK3B
RP51077B9.4
0.63
44
3
46
3
93.6%
93.9%
3.6E−05
0
47
49


MLH1
RP51077B9.4
0.63
42
5
45
4
89.4%
91.8%
3.8E−05
0
47
49


C1QA
PLEK2
0.63
42
5
44
5
89.4%
89.8%
7.9E−07
3.3E−15
47
49


RP51077B9.4
TXNRD1
0.62
41
6
43
6
87.2%
87.8%
0
7.1E−05
47
49


RP51077B9.4
TNF
0.62
42
5
45
4
89.4%
91.8%
0
7.8E−05
47
49


LTA
RP51077B9.4
0.62
42
5
44
5
89.4%
89.8%
8.8E−05
0
47
49


NRAS
RP51077B9.4
0.62
42
5
44
5
89.4%
89.8%
9.7E−05
0
47
49


IKBKE
RP51077B9.4
0.62
41
6
42
7
87.2%
85.7%
0.0001
0
47
49


MTA1
RP51077B9.4
0.62
42
5
43
6
89.4%
87.8%
0.0001
0
47
49


MSH2
RP51077B9.4
0.62
44
3
43
5
93.6%
89.6%
8.6E−05
0
47
48


ETS2
RP51077B9.4
0.61
43
4
45
4
91.5%
91.8%
0.0001
0
47
49


MME
RP51077B9.4
0.61
42
5
43
6
89.4%
87.8%
0.0002
0
47
49


ITGAL
MYC
0.61
43
4
45
4
91.5%
91.8%
1.0E−09
0
47
49


APC
RP51077B9.4
0.61
42
5
44
5
89.4%
89.8%
0.0002
0
47
49


RP51077B9.4
TNFSF5
0.61
42
5
43
6
89.4%
87.8%
4.4E−16
0.0002
47
49


RP51077B9.4
USP7
0.60
42
5
44
5
89.4%
89.8%
0
0.0002
47
49


RP51077B9.4
SRF
0.60
41
6
43
6
87.2%
87.8%
0
0.0003
47
49


RP51077B9.4
SERPINA1
0.60
42
5
44
5
89.4%
89.8%
0
0.0003
47
49


RP51077B9.4
VIM
0.60
43
4
44
5
91.5%
89.8%
0
0.0003
47
49


PLEK2
PLXDC2
0.60
42
5
43
6
89.4%
87.8%
2.1E−12
5.3E−06
47
49


IFI16
RP51077B9.4
0.60
43
4
45
4
91.5%
91.8%
0.0003
0
47
49


IQGAP1
PLXDC2
0.60
43
5
43
6
89.6%
87.8%
2.7E−12
0
48
49


CEACAM1
RP51077B9.4
0.60
42
5
44
5
89.4%
89.8%
0.0004
0
47
49


RP51077B9.4
ST14
0.60
42
5
44
5
89.4%
89.8%
0
0.0004
47
49


MYC
PLXDC2
0.60
44
4
44
5
91.7%
89.8%
3.4E−12
1.1E−09
48
49


DAD1
RP51077B9.4
0.59
44
3
45
4
93.6%
91.8%
0.0006
0
47
49


PTPRK
RP51077B9.4
0.59
44
3
46
3
93.6%
93.9%
0.0008
9.5E−15
47
49


LARGE
RP51077B9.4
0.59
42
5
45
4
89.4%
91.8%
0.0008
1.9E−14
47
49


IRF1
RP51077B9.4
0.58
42
5
44
5
89.4%
89.8%
0.0010
0
47
49


AXIN2
RP51077B9.4
0.58
42
5
43
6
89.4%
87.8%
0.0010
2.2E−16
47
49


FOS
RP51077B9.4
0.58
42
5
45
4
89.4%
91.8%
0.0012
0
47
49


MNDA
RP51077B9.4
0.58
42
5
44
5
89.4%
89.8%
0.0013
0
47
49


CXCL1
RP51077B9.4
0.58
43
4
45
4
91.5%
91.8%
0.0013
0
47
49


DIABLO
RP51077B9.4
0.58
43
4
44
5
91.5%
89.8%
0.0014
0
47
49


CD59
RP51077B9.4
0.58
44
3
44
5
93.6%
89.8%
0.0014
0
47
49


MTA1
MYC
0.58
43
4
43
6
91.5%
87.8%
6.1E−09
0
47
49


CASP3
RP51077B9.4
0.58
43
4
45
4
91.5%
91.8%
0.0014
0
47
49


RP51077B9.4
XK
0.58
41
6
43
6
87.2%
87.8%
8.5E−15
0.0018
47
49


CTSD
RP51077B9.4
0.57
41
6
43
6
87.2%
87.8%
0.0020
2.2E−16
47
49


ITGAL
RP51077B9.4
0.57
42
5
43
6
89.4%
87.8%
0.0021
2.2E−16
47
49


PLAU
RP51077B9.4
0.57
43
4
44
5
91.5%
89.8%
0.0024
0
47
49


CD97
PLEK2
0.57
43
4
45
4
91.5%
91.8%
3.9E−05
2.7E−15
47
49


MMP9
RP51077B9.4
0.57
42
5
43
6
89.4%
87.8%
0.0029
0
47
49


BAX
PLEK2
0.57
41
6
43
6
87.2%
87.8%
5.2E−05
1.6E−15
47
49


RP51077B9.4
ZNF185
0.56
41
6
43
6
87.2%
87.8%
0
0.0040
47
49


RP51077B9.4
ZNF350
0.56
42
5
44
5
89.4%
89.8%
0
0.0042
47
49


RP51077B9.4
TLR2
0.56
42
5
44
5
89.4%
89.8%
0
0.0054
47
49


HMOX1
RP51077B9.4
0.56
42
5
44
5
89.4%
89.8%
0.0060
0
47
49


MYC
USP7
0.56
40
7
42
7
85.1%
85.7%
0
2.5E−08
47
49


RP51077B9.4
SIAH2
0.55
41
6
43
6
87.2%
87.8%
5.5E−13
0.0107
47
49


MYC
UBE2C
0.55
44
3
45
4
93.6%
91.8%
2.9E−15
4.2E−08
47
49


RP51077B9.4
SERPING1
0.55
43
4
44
4
91.5%
91.7%
0
0.0279
47
48


CA4
RP51077B9.4
0.54
41
6
43
6
87.2%
87.8%
0.0176
0
47
49


CDH1
PLEK2
0.54
43
4
44
5
91.5%
89.8%
0.0003
4.4E−16
47
49


PLXDC2
TEGT
0.54
43
5
44
5
89.6%
89.8%
0
1.2E−10
48
49


ESR1
RP51077B9.4
0.54
41
6
43
6
87.2%
87.8%
0.0298
0
47
49


BCAM
RP51077B9.4
0.54
42
5
44
5
89.4%
89.8%
0.0351
2.2E−16
47
49


IGF2BP2
PLEK2
0.54
40
7
41
8
85.1%
83.7%
0.0005
3.2E−15
47
49


BAX
RP51077B9.4
0.54
43
4
44
5
91.5%
89.8%
0.0370
1.4E−14
47
49


MYC
PLEK2
0.53
42
5
43
6
89.4%
87.8%
0.0006
1.4E−07
47
49


CD97
RP51077B9.4
0.53
41
6
43
6
87.2%
87.8%
0.0443
3.5E−14
47
49


NEDD4L
RP51077B9.4
0.53
42
5
44
5
89.4%
89.8%
0.0482
1.3E−11
47
49


IL8
RP51077B9.4
0.53
42
5
44
5
89.4%
89.8%
0.0488
4.4E−16
47
49


LARGE
PLEK2
0.53
39
8
42
7
83.0%
85.7%
0.0007
8.4E−13
47
49


PLEK2
UBE2C
0.53
42
5
43
6
89.4%
87.8%
1.7E−14
0.0010
47
49


MYC
POV1
0.52
40
8
41
8
83.3%
83.7%
2.2E−16
1.9E−07
48
49


MYC
RBM5
0.52
41
6
42
7
87.2%
85.7%
6.7E−16
4.1E−07
47
49


CTSD
PLEK2
0.52
40
7
42
7
85.1%
85.7%
0.0018
8.2E−15
47
49


PLEK2
RBM5
0.52
40
7
42
7
85.1%
85.7%
8.9E−16
0.0022
47
49


CTSD
MYC
0.51
41
7
42
7
85.4%
85.7%
2.8E−07
1.0E−14
48
49


PLEK2
TLR2
0.51
41
6
43
6
87.2%
87.8%
1.1E−15
0.0029
47
49


LGALS8
MYC
0.51
42
5
42
7
89.4%
85.7%
6.8E−07
3.3E−16
47
49


DIABLO
PLEK2
0.51
40
7
43
6
85.1%
87.8%
0.0034
1.2E−15
47
49


PLEK2
PTPRK
0.50
41
6
42
7
87.2%
85.7%
2.8E−12
0.0047
47
49


ITGAL
PLEK2
0.50
40
7
42
7
85.1%
85.7%
0.0049
3.0E−14
47
49


RP51077B9.4

0.50
41
6
44
5
87.2%
89.8%
2.2E−16

47
49


DIABLO
MYC
0.50
39
9
41
8
81.3%
83.7%
7.0E−07
1.4E−15
48
49


C1QB
MYC
0.50
41
7
42
7
85.4%
85.7%
8.6E−07
8.1E−10
48
49


HOXA10
PLEK2
0.50
41
6
43
6
87.2%
87.8%
0.0080
8.4E−14
47
49


PLXDC2
PTEN
0.50
42
6
42
7
87.5%
85.7%
3.3E−16
3.0E−09
48
49


PLEK2
SRF
0.49
40
7
42
7
85.1%
85.7%
1.0E−15
0.0094
47
49


ELA2
PLEK2
0.49
40
7
42
7
85.1%
85.7%
0.0111
9.5E−11
47
49


IFI16
PLEK2
0.49
40
7
42
7
85.1%
85.7%
0.0113
4.7E−15
47
49


GNB1
PLXDC2
0.49
43
5
43
6
89.6%
87.8%
4.5E−09
4.4E−16
48
49


BCAM
PLEK2
0.49
40
7
42
7
85.1%
85.7%
0.0131
3.3E−15
47
49


PLEK2
ZNF350
0.49
38
9
40
9
80.9%
81.6%
7.8E−16
0.0139
47
49


NRAS
PLEK2
0.49
38
9
41
8
80.9%
83.7%
0.0141
6.9E−15
47
49


MYC
NRAS
0.49
40
8
42
7
83.3%
85.7%
6.0E−15
1.8E−06
48
49


NCOA1
PLXDC2
0.49
40
8
41
8
83.3%
83.7%
6.4E−09
6.7E−16
48
49


PLXDC2
TNFRSF1A
0.49
43
5
44
5
89.6%
89.8%
8.9E−16
6.6E−09
48
49


PLEK2
VIM
0.48
40
7
42
7
85.1%
85.7%
1.7E−15
0.0211
47
49


PLEK2
SERPINA1
0.48
40
7
42
7
85.1%
85.7%
7.8E−15
0.0214
47
49


APC
PLEK2
0.48
38
9
40
9
80.9%
81.6%
0.0223
1.1E−15
47
49


GADD45A
PLEK2
0.48
40
7
41
8
85.1%
83.7%
0.0231
9.7E−13
47
49


GSK3B
PLEK2
0.48
39
8
41
8
83.0%
83.7%
0.0246
2.0E−15
47
49


IRF1
PLEK2
0.48
40
7
42
7
85.1%
85.7%
0.0274
2.7E−15
47
49


CD97
MYC
0.48
42
5
43
6
89.4%
87.8%
5.4E−06
1.2E−12
47
49


PLXDC2
TIMP1
0.48
39
9
40
9
81.3%
81.6%
1.9E−15
9.6E−09
48
49


MYD88
PLXDC2
0.48
41
7
42
7
85.4%
85.7%
9.8E−09
1.0E−15
48
49


LGALS8
PLEK2
0.48
39
8
40
9
83.0%
81.6%
0.0389
3.2E−15
47
49


E2F1
PLEK2
0.48
40
7
42
7
85.1%
85.7%
0.0402
4.8E−11
47
49


CA4
PLEK2
0.48
41
6
42
7
87.2%
85.7%
0.0413
6.3E−15
47
49


ADAM17
PLEK2
0.48
39
8
41
8
83.0%
83.7%
0.0418
1.9E−15
47
49


MYC
SRF
0.47
40
7
42
7
85.1%
85.7%
4.4E−15
9.1E−06
47
49


MYC
NEDD4L
0.47
38
9
40
9
80.9%
81.6%
7.3E−10
9.8E−06
47
49


DLC1
PLEK2
0.47
40
6
42
7
87.0%
85.7%
0.0430
2.7E−12
46
49


MYC
XRCC1
0.47
41
7
41
8
85.4%
83.7%
2.0E−15
6.0E−06
48
49


ELA2
MYC
0.47
39
8
41
8
83.0%
83.7%
1.4E−05
5.4E−10
47
49


MYC
SP1
0.47
41
6
43
6
87.2%
87.8%
5.8E−15
1.6E−05
47
49


HSPA1A
PLXDC2
0.47
43
5
41
8
89.6%
83.7%
2.6E−08
2.9E−15
48
49


CTNNA1
PLXDC2
0.46
41
7
42
7
85.4%
85.7%
3.2E−08
3.3E−15
48
49


E2F1
MYC
0.46
38
9
41
8
80.9%
83.7%
2.2E−05
1.3E−10
47
49


PLXDC2
S100A11
0.46
37
10
39
10
78.7%
79.6%
5.1E−15
2.8E−08
47
49


PLXDC2
PTGS2
0.46
39
9
39
10
81.3%
79.6%
4.9E−15
3.9E−08
48
49


MTF1
MYC
0.46
40
7
42
7
85.1%
85.7%
2.8E−05
3.3E−14
47
49


MYC
TGFB1
0.46
43
3
42
7
93.5%
85.7%
1.8E−14
3.4E−05
46
49


ANLN
MYC
0.45
41
7
41
8
85.4%
83.7%
2.0E−05
1.2E−11
48
49


ETS2
PLXDC2
0.45
41
7
41
8
85.4%
83.7%
6.9E−08
8.2E−15
48
49


CCL5
MYC
0.45
39
8
41
8
83.0%
83.7%
4.4E−05
1.4E−12
47
49


ACPP
PLXDC2
0.45
40
8
40
9
83.3%
81.6%
8.1E−08
9.5E−15
48
49


EGR1
MYC
0.45
38
10
39
10
79.2%
79.6%
3.0E−05
1.7E−13
48
49


PLXDC2
SP1
0.45
38
9
40
9
80.9%
81.6%
1.9E−14
6.8E−08
47
49


G6PD
PLXDC2
0.45
40
8
42
7
83.3%
85.7%
9.9E−08
1.0E−14
48
49


PLEK2

0.44
40
7
40
9
85.1%
81.6%
1.5E−14

47
49


MAPK14
PLXDC2
0.44
38
9
40
9
80.9%
81.6%
1.2E−07
2.5E−14
47
49


MYC
SIAH2
0.43
37
10
40
9
78.7%
81.6%
1.6E−09
0.0001
47
49


NBEA
PLXDC2
0.43
39
9
39
10
81.3%
79.6%
2.4E−07
1.7E−09
48
49


CCL3
MYC
0.43
39
8
40
9
83.0%
81.6%
0.0002
8.5E−13
47
49


MYC
NUDT4
0.43
40
7
41
8
85.1%
83.7%
2.0E−11
0.0002
47
49


C1QA
MYC
0.43
40
7
42
7
85.1%
85.7%
0.0002
2.1E−09
47
49


DLC1
MYC
0.43
38
9
40
9
80.9%
81.6%
0.0003
3.6E−11
47
49


MME
PLXDC2
0.43
40
7
41
8
85.1%
83.7%
2.6E−07
5.0E−14
47
49


GSK3B
MYC
0.43
38
10
41
8
79.2%
83.7%
0.0001
6.6E−14
48
49


IKBKE
MYC
0.42
43
4
42
7
91.5%
85.7%
0.0003
1.3E−13
47
49


CASP9
MYC
0.42
38
9
40
9
80.9%
81.6%
0.0004
8.0E−14
47
49


BAX
MYC
0.42
40
8
42
7
83.3%
85.7%
0.0002
3.2E−11
48
49


HMGA1
PLXDC2
0.42
40
8
41
8
83.3%
83.7%
6.6E−07
6.1E−13
48
49


ADAM17
PLXDC2
0.42
37
10
38
11
78.7%
77.6%
5.3E−07
9.3E−14
47
49


LTA
MYC
0.42
41
6
42
7
87.2%
85.7%
0.0005
1.9E−12
47
49


CNKSR2
PLXDC2
0.42
38
10
39
10
79.2%
79.6%
7.6E−07
6.8E−10
48
49


IFI16
MYC
0.42
40
7
42
7
85.1%
85.7%
0.0005
8.5E−13
47
49


CEACAM1
MYC
0.41
40
8
41
8
83.3%
83.7%
0.0004
4.5E−13
48
49


C1QB
NEDD4L
0.41
38
9
40
9
80.9%
81.6%
4.7E−08
8.3E−07
47
49


MYC
SERPINA1
0.41
39
8
41
8
83.0%
83.7%
1.1E−12
0.0008
47
49


CCR7
PLXDC2
0.41
38
10
38
11
79.2%
77.6%
1.4E−06
1.8E−09
48
49


CASP9
PLXDC2
0.41
36
11
39
10
76.6%
79.6%
1.2E−06
2.0E−13
47
49


GNB1
MYC
0.41
39
9
40
9
81.3%
81.6%
0.0006
1.5E−13
48
49


MYC
TNF
0.40
43
5
40
9
89.6%
81.6%
2.4E−13
0.0010
48
49


GADD45A
MYC
0.40
40
8
41
8
83.3%
83.7%
0.0010
2.2E−10
48
49


MEIS1
MYC
0.40
41
7
39
10
85.4%
79.6%
0.0010
7.7E−13
48
49


MYC
XK
0.40
38
10
39
10
79.2%
79.6%
2.1E−09
0.0013
48
49


ETS2
MYC
0.39
39
9
39
10
81.3%
79.6%
0.0013
3.8E−13
48
49


MYC
TXNRD1
0.39
36
11
40
9
76.6%
81.6%
7.2E−13
0.0025
47
49


GSK3B
PLXDC2
0.39
38
10
39
10
79.2%
79.6%
4.5E−06
7.0E−13
48
49


LARGE
PLXDC2
0.39
37
11
38
11
77.1%
77.6%
4.8E−06
7.7E−09
48
49


MYC
PTPRC
0.39
37
10
40
9
78.7%
81.6%
7.4E−13
0.0034
47
49


MYC
ST14
0.39
38
10
39
10
79.2%
79.6%
7.1E−12
0.0019
48
49


MYC
TLR2
0.39
40
7
39
10
85.1%
79.6%
4.0E−12
0.0035
47
49


CXCL1
PLXDC2
0.39
37
10
39
10
78.7%
79.6%
3.7E−06
6.3E−13
47
49


PLXDC2
PTPRC
0.39
36
11
38
11
76.6%
77.6%
7.8E−13
3.8E−06
47
49


CD59
MYC
0.39
38
10
38
11
79.2%
77.6%
0.0021
1.3E−12
48
49


PLXDC2
XRCC1
0.39
39
9
40
9
81.3%
81.6%
5.9E−13
5.7E−06
48
49


LARGE
NEDD4L
0.39
36
11
38
11
76.6%
77.6%
2.5E−07
1.5E−08
47
49


IRF1
MYC
0.39
37
10
40
9
78.7%
81.6%
0.0046
1.7E−12
47
49


MYC
SPARC
0.39
38
9
40
9
80.9%
81.6%
1.6E−10
0.0047
47
49


MYC
NCOA1
0.39
39
9
38
11
81.3%
77.6%
6.3E−13
0.0027
48
49


C1QA
NEDD4L
0.38
37
10
39
10
78.7%
79.6%
3.0E−07
4.9E−08
47
49


HOXA10
MYC
0.38
40
8
41
8
83.3%
83.7%
0.0034
1.4E−10
48
49


PLXDC2
SERPINA1
0.38
41
6
43
6
87.2%
87.8%
7.8E−12
6.1E−06
47
49


DAD1
MYC
0.38
38
10
38
11
79.2%
77.6%
0.0035
7.8E−13
48
49


MMP9
MYC
0.38
39
9
40
9
81.3%
81.6%
0.0036
1.8E−11
48
49


C1QA
SIAH2
0.38
39
8
40
9
83.0%
81.6%
6.3E−08
6.3E−08
47
49


MYC
VIM
0.38
36
11
40
9
76.6%
81.6%
1.9E−12
0.0069
47
49


G6PD
MYC
0.38
38
10
39
10
79.2%
79.6%
0.0046
1.1E−12
48
49


MTF1
PLXDC2
0.38
38
9
39
10
80.9%
79.6%
8.6E−06
7.5E−12
47
49


MYC
TEGT
0.38
37
11
38
11
77.1%
77.6%
1.3E−12
0.0054
48
49


HMGA1
MYC
0.37
40
8
40
9
83.3%
81.6%
0.0062
1.3E−11
48
49


HMOX1
MYC
0.37
37
10
39
10
78.7%
79.6%
0.0112
6.9E−12
47
49


PLXDC2
PTPRK
0.37
38
10
39
10
79.2%
79.6%
1.6E−08
1.6E−05
48
49


C1QB
SIAH2
0.37
36
11
39
10
76.6%
79.6%
1.3E−07
1.5E−05
47
49


CAV1
MYC
0.37
40
8
39
10
83.3%
79.6%
0.0090
7.3E−12
48
49


IGF2BP2
MYC
0.37
38
10
39
10
79.2%
79.6%
0.0098
3.3E−10
48
49


PLXDC2
TNFSF5
0.37
37
10
39
10
78.7%
79.6%
4.8E−09
1.7E−05
47
49


MAPK14
MYC
0.37
38
9
40
9
80.9%
81.6%
0.0197
3.3E−12
47
49


C1QB
CNKSR2
0.37
38
10
38
11
79.2%
77.6%
2.2E−08
7.9E−06
48
49


PLXDC2
TGFB1
0.37
38
8
39
10
82.6%
79.6%
7.1E−12
1.9E−05
46
49


CA4
MYC
0.37
38
9
41
8
80.9%
83.7%
0.0207
1.1E−11
47
49


C1QB
NBEA
0.36
38
10
39
10
79.2%
79.6%
2.9E−07
1.3E−05
48
49


LGALS8
PLXDC2
0.36
36
11
38
11
76.6%
77.6%
3.3E−05
9.6E−12
47
49


MNDA
MYC
0.36
37
10
38
11
78.7%
77.6%
0.0422
2.3E−11
47
49


CTNNA1
MYC
0.36
37
11
39
10
77.1%
79.6%
0.0243
4.7E−12
48
49


ING2
PLXDC2
0.36
37
11
38
11
77.1%
77.6%
5.6E−05
5.2E−12
48
49


ESR1
MYC
0.36
38
10
40
9
79.2%
81.6%
0.0256
9.5E−12
48
49


C1QB
CCR7
0.36
40
8
40
9
83.3%
81.6%
6.9E−08
1.7E−05
48
49


IRF1
PLXDC2
0.35
36
11
38
11
76.6%
77.6%
4.6E−05
1.5E−11
47
49


APC
PLXDC2
0.35
36
12
37
12
75.0%
75.5%
6.9E−05
6.5E−12
48
49


MYC
SERPINE1
0.35
38
10
39
10
79.2%
79.6%
2.5E−11
0.0320
48
49


PLXDC2
XK
0.35
38
10
38
11
79.2%
77.6%
4.4E−08
7.5E−05
48
49


FOS
PLXDC2
0.35
38
10
39
10
79.2%
79.6%
8.2E−05
1.5E−11
48
49


CDH1
MYC
0.35
38
10
39
10
79.2%
79.6%
0.0383
2.7E−10
48
49


IGFBP3
MYC
0.35
38
10
39
10
79.2%
79.6%
0.0403
8.1E−12
48
49


LTA
PLXDC2
0.35
37
10
39
10
78.7%
79.6%
6.3E−05
2.0E−10
47
49


IQGAP1
MYC
0.35
38
10
38
11
79.2%
77.6%
0.0455
9.3E−12
48
49


AXIN2
PLXDC2
0.35
36
12
37
12
75.0%
75.5%
0.0001
2.2E−09
48
49


NEDD4L
PLXDC2
0.34
37
10
39
10
78.7%
79.6%
0.0001
6.0E−06
47
49


DIABLO
NBEA
0.34
36
12
38
11
75.0%
77.6%
1.0E−06
8.4E−11
48
49


CNKSR2
DIABLO
0.34
37
11
39
10
77.1%
79.6%
9.3E−11
1.4E−07
48
49


C1QB
ELA2
0.34
39
8
39
10
83.0%
79.6%
4.1E−06
0.0001
47
49


C1QB
XK
0.34
39
9
39
10
81.3%
79.6%
1.3E−07
6.6E−05
48
49


PLXDC2
ZNF185
0.33
36
11
38
11
76.6%
77.6%
3.0E−11
0.0002
47
49


C1QA
XK
0.33
36
11
37
12
76.6%
75.5%
1.2E−07
1.6E−06
47
49


ELA2
NBEA
0.33
38
9
39
10
80.9%
79.6%
2.3E−06
7.2E−06
47
49


C1QB
TNFSF5
0.33
37
10
39
10
78.7%
79.6%
6.9E−08
0.0003
47
49


PLXDC2
VIM
0.33
36
11
38
11
76.6%
77.6%
7.6E−11
0.0003
47
49


CD97
TEGT
0.32
37
10
38
11
78.7%
77.6%
5.4E−11
5.1E−08
47
49


PLXDC2
S100A4
0.32
37
11
38
11
77.1%
77.6%
4.1E−11
0.0005
48
49


PLXDC2
USP7
0.32
36
11
38
11
76.6%
77.6%
6.3E−11
0.0004
47
49


PLXDC2
SIAH2
0.32
36
11
37
12
76.6%
75.5%
3.4E−06
0.0004
47
49


NBEA
UBE2C
0.32
39
8
39
10
83.0%
79.6%
1.7E−08
3.7E−06
47
49


CCR7
ELA2
0.32
36
11
39
10
76.6%
79.6%
1.3E−05
1.1E−06
47
49


CEACAM1
PLXDC2
0.32
37
11
38
11
77.1%
77.6%
0.0007
2.6E−10
48
49


NBEA
RBM5
0.32
38
9
39
10
80.9%
79.6%
5.3E−10
4.7E−06
47
49


MYC

0.32
37
11
37
12
77.1%
75.5%
6.1E−11

48
49


PLAU
PLXDC2
0.32
36
12
37
12
75.0%
75.5%
0.0008
6.7E−11
48
49


C1QB
NUDT4
0.31
36
11
39
10
76.6%
79.6%
5.7E−08
0.0007
47
49


C1QB
PLXDC2
0.31
36
12
37
12
75.0%
75.5%
0.0013
0.0004
48
49


ANLN
NBEA
0.31
37
11
37
12
77.1%
75.5%
8.1E−06
2.3E−07
48
49


C1QA
CNKSR2
0.31
36
11
38
11
76.6%
77.6%
1.3E−06
7.8E−06
47
49


ITGAL
TNFSF5
0.31
38
9
40
9
80.9%
81.6%
2.5E−07
1.6E−08
47
49


E2F1
NBEA
0.31
38
9
38
11
80.9%
77.6%
9.0E−06
4.4E−06
47
49


PTPRK
UBE2C
0.31
36
11
38
11
76.6%
77.6%
4.3E−08
1.9E−06
47
49


E2F1
PTPRK
0.31
36
11
38
11
76.6%
77.6%
1.9E−06
4.8E−06
47
49


CCR7
DIABLO
0.31
37
11
37
12
77.1%
75.5%
8.5E−10
1.9E−06
48
49


BAX
SIAH2
0.31
37
10
38
11
78.7%
77.6%
1.0E−05
7.8E−08
47
49


NEDD4L
PTPRK
0.31
36
11
37
12
76.6%
75.5%
2.1E−06
7.0E−05
47
49


C1QB
LTA
0.30
38
9
38
11
80.9%
77.6%
4.2E−09
0.0016
47
49


PLXDC2
TNF
0.30
37
11
38
11
77.1%
77.6%
1.8E−10
0.0024
48
49


MSH2
PLXDC2
0.30
37
11
37
11
77.1%
77.1%
0.0019
5.5E−09
48
48


CD97
NCOA1
0.30
37
10
39
10
78.7%
79.6%
2.3E−10
2.4E−07
47
49


CD97
TNFRSF1A
0.30
38
9
40
9
80.9%
81.6%
3.4E−10
2.4E−07
47
49


CNKSR2
E2F1
0.30
37
10
39
10
78.7%
79.6%
7.2E−06
2.4E−06
47
49


C1QB
LARGE
0.30
37
11
38
11
77.1%
77.6%
4.1E−06
0.0009
48
49


ELA2
LARGE
0.30
38
9
38
11
80.9%
77.6%
6.5E−06
5.6E−05
47
49


CNKSR2
ITGAL
0.30
39
8
40
9
83.0%
81.6%
3.4E−08
3.0E−06
47
49


BCAM
C1QB
0.30
37
10
38
11
78.7%
77.6%
0.0024
1.6E−09
47
49


AXIN2
C1QB
0.30
37
11
38
11
77.1%
77.6%
0.0010
6.1E−08
48
49


IL8
PLXDC2
0.30
37
11
37
12
77.1%
75.5%
0.0037
2.6E−09
48
49


CTSD
NBEA
0.30
36
12
38
11
75.0%
77.6%
2.2E−05
3.0E−08
48
49


NBEA
NRAS
0.30
37
11
38
11
77.1%
77.6%
3.0E−09
2.3E−05
48
49


MNDA
PLXDC2
0.30
36
11
38
11
76.6%
77.6%
0.0026
1.3E−09
47
49


CA4
PLXDC2
0.29
39
8
41
8
83.0%
83.7%
0.0033
1.5E−09
47
49


C1QA
PLXDC2
0.29
37
10
39
10
78.7%
79.6%
0.0033
2.7E−05
47
49


NBEA
ZNF350
0.29
38
10
38
11
79.2%
77.6%
4.0E−10
3.0E−05
48
49


CTSD
PLXDC2
0.29
36
12
37
12
75.0%
75.5%
0.0056
4.4E−08
48
49


BAX
CNKSR2
0.29
39
9
37
12
81.3%
75.5%
4.1E−06
2.2E−07
48
49


IFI16
PLXDC2
0.29
36
11
37
12
76.6%
75.5%
0.0041
4.3E−09
47
49


PLXDC2
SERPING1
0.29
38
10
38
10
79.2%
79.2%
5.6E−10
0.0203
48
48


C1QA
CCR7
0.29
36
11
38
11
76.6%
77.6%
1.1E−05
4.4E−05
47
49


CCR7
UBE2C
0.29
36
11
39
10
76.6%
79.6%
2.0E−07
1.2E−05
47
49


ELA2
PTPRK
0.28
36
11
37
12
76.6%
75.5%
9.3E−06
0.0002
47
49


CD59
PLXDC2
0.28
37
11
37
12
77.1%
75.5%
0.0097
1.6E−09
48
49


HMGA1
ITGAL
0.28
37
10
39
10
78.7%
79.6%
9.0E−08
8.0E−09
47
49


C1QB
E2F1
0.28
36
11
38
11
76.6%
77.6%
2.6E−05
0.0070
47
49


E2F1
LARGE
0.28
38
9
40
9
80.9%
81.6%
2.0E−05
2.6E−05
47
49


C1QB
HMGA1
0.28
38
10
39
10
79.2%
79.6%
6.7E−09
0.0029
48
49


BAX
XK
0.28
38
10
37
12
79.2%
75.5%
5.0E−06
3.9E−07
48
49


CD97
NBEA
0.28
36
11
38
11
76.6%
77.6%
5.6E−05
9.0E−07
47
49


CD97
PTGS2
0.28
36
11
37
12
76.6%
75.5%
1.2E−09
9.6E−07
47
49


BAX
NEDD4L
0.28
39
8
39
10
83.0%
79.6%
0.0004
4.5E−07
47
49


CD97
HSPA1A
0.28
36
11
37
12
76.6%
75.5%
1.1E−09
1.1E−06
47
49


C1QB
MSH6
0.28
37
10
39
10
78.7%
79.6%
4.0E−09
0.0089
47
49


C1QB
MAPK14
0.28
37
10
38
11
78.7%
77.6%
1.1E−09
0.0091
47
49


DLC1
NBEA
0.28
37
10
39
10
78.7%
79.6%
0.0001
9.5E−07
47
49


C1QB
TIMP1
0.28
36
12
37
12
75.0%
75.5%
1.7E−09
0.0039
48
49


C1QB
PTPRK
0.28
37
11
38
11
77.1%
77.6%
1.1E−05
0.0041
48
49


CNKSR2
NEDD4L
0.28
36
11
38
11
76.6%
77.6%
0.0005
1.2E−05
47
49


GSK3B
NBEA
0.28
38
10
39
10
79.2%
79.6%
8.2E−05
1.6E−09
48
49


ELA2
PLXDC2
0.28
37
10
38
11
78.7%
77.6%
0.0119
0.0003
47
49


ELA2
SIAH2
0.28
37
10
38
11
78.7%
77.6%
9.3E−05
0.0003
47
49


C1QA
NUDT4
0.27
37
10
38
11
78.7%
77.6%
9.3E−07
0.0001
47
49


ESR1
PLXDC2
0.27
38
10
38
11
79.2%
77.6%
0.0218
2.6E−09
48
49


ANLN
PTPRK
0.27
37
11
39
10
77.1%
79.6%
1.7E−05
3.2E−06
48
49


CNKSR2
CTSD
0.27
37
11
38
11
77.1%
77.6%
1.7E−07
1.6E−05
48
49


C1QB
MSH2
0.27
38
10
38
10
79.2%
79.2%
4.4E−08
0.0057
48
48


CCR7
CD97
0.27
37
10
38
11
78.7%
77.6%
1.9E−06
3.0E−05
47
49


C1QA
IGF2BP2
0.27
38
9
37
12
80.9%
75.5%
2.1E−07
0.0001
47
49


CD97
NEDD4L
0.27
37
10
38
11
78.7%
77.6%
0.0009
2.1E−06
47
49


CD97
LARGE
0.27
36
11
37
12
76.6%
75.5%
5.1E−05
2.2E−06
47
49


IGF2BP2
PLXDC2
0.27
36
12
37
12
75.0%
75.5%
0.0293
2.8E−07
48
49


CCR7
ITGAL
0.27
39
8
38
11
83.0%
77.6%
2.5E−07
3.5E−05
47
49


CNKSR2
UBE2C
0.27
36
11
38
11
76.6%
77.6%
6.4E−07
2.4E−05
47
49


C1QB
DAD1
0.27
36
12
38
11
75.0%
77.6%
1.9E−09
0.0092
48
49


C1QA
TNFSF5
0.27
36
11
38
11
76.6%
77.6%
4.9E−06
0.0002
47
49


C1QB
MLH1
0.27
37
10
37
12
78.7%
75.5%
6.8E−09
0.0243
47
49


C1QB
DLC1
0.27
36
11
37
12
76.6%
75.5%
2.4E−06
0.0083
47
49


ADAM17
C1QB
0.27
38
9
38
11
80.9%
77.6%
0.0266
2.8E−09
47
49


C1QB
PTEN
0.26
36
12
38
11
75.0%
77.6%
2.7E−09
0.0123
48
49


CD97
SIAH2
0.26
36
11
37
12
76.6%
75.5%
0.0003
4.3E−06
47
49


CNKSR2
SRF
0.26
37
10
37
12
78.7%
75.5%
8.7E−09
4.6E−05
47
49


C1QA
LARGE
0.26
38
9
40
9
80.9%
81.6%
0.0001
0.0003
47
49


CCR7
NEDD4L
0.26
36
11
39
10
76.6%
79.6%
0.0019
7.3E−05
47
49


C1QB
TNFRSF1A
0.26
38
10
39
10
79.2%
79.6%
5.3E−09
0.0188
48
49


CCL5
PTPRK
0.26
36
11
38
11
76.6%
77.6%
6.0E−05
7.3E−07
47
49


CCL5
PLXDC2
0.26
36
11
37
12
76.6%
75.5%
0.0470
7.3E−07
47
49


PTPRK
SIAH2
0.26
36
11
37
12
76.6%
75.5%
0.0003
6.1E−05
47
49


MTA1
NBEA
0.26
37
10
39
10
78.7%
79.6%
0.0003
6.4E−09
47
49


CCR7
CTSD
0.26
36
12
37
12
75.0%
75.5%
5.1E−07
6.9E−05
48
49


BAX
PTPRK
0.26
38
10
38
11
79.2%
77.6%
6.0E−05
2.7E−06
48
49


CNKSR2
DLC1
0.26
37
10
37
12
78.7%
75.5%
5.4E−06
0.0001
47
49


ITGAL
PTPRK
0.25
37
10
39
10
78.7%
79.6%
7.5E−05
6.9E−07
47
49


ANLN
CNKSR2
0.25
36
12
37
12
75.0%
75.5%
6.0E−05
1.3E−05
48
49


BAX
TNFSF5
0.25
38
9
38
11
80.9%
77.6%
1.3E−05
3.2E−06
47
49


CCL5
NBEA
0.25
36
11
38
11
76.6%
77.6%
0.0005
1.1E−06
47
49


NBEA
NUDT4
0.25
36
11
37
12
76.6%
75.5%
4.6E−06
0.0005
47
49


AXIN2
ELA2
0.25
36
11
37
12
76.6%
75.5%
0.0018
1.8E−06
47
49


BCAM
C1QA
0.25
36
11
37
12
76.6%
75.5%
0.0006
4.3E−08
47
49


ANLN
CCR7
0.25
40
8
38
11
83.3%
77.6%
0.0001
1.8E−05
48
49


CD97
TNFSF5
0.25
36
11
37
12
76.6%
75.5%
1.8E−05
9.8E−06
47
49


C1QB
GADD45A
0.25
36
12
37
12
75.0%
75.5%
8.3E−06
0.0491
48
49


AXIN2
E2F1
0.24
36
11
38
11
76.6%
77.6%
0.0004
2.9E−06
47
49


CTSD
GNB1
0.24
38
10
38
11
79.2%
77.6%
1.0E−08
1.2E−06
48
49


AXIN2
C1QA
0.24
36
11
37
12
76.6%
75.5%
0.0009
3.2E−06
47
49


ANLN
TNFSF5
0.24
36
11
39
10
76.6%
79.6%
2.7E−05
2.8E−05
47
49


HOXA10
NEDD4L
0.24
36
11
37
12
76.6%
75.5%
0.0071
3.1E−06
47
49


DLC1
LARGE
0.24
36
11
38
11
76.6%
77.6%
0.0002
1.4E−05
47
49


NBEA
POV1
0.24
36
12
37
12
75.0%
75.5%
3.5E−08
0.0013
48
49


IGF2BP2
LARGE
0.24
36
12
37
12
75.0%
75.5%
0.0003
2.3E−06
48
49


DLC1
PTPRK
0.24
40
7
38
11
85.1%
77.6%
0.0002
1.6E−05
47
49


PLXDC2

0.23
36
12
37
12
75.0%
75.5%
1.9E−08

48
49


AXIN2
BAX
0.23
36
12
37
12
75.0%
75.5%
1.4E−05
5.8E−06
48
49


BAX
HMGA1
0.23
36
12
37
12
75.0%
75.5%
2.5E−07
1.5E−05
48
49


E2F1
MSH2
0.22
40
7
38
10
85.1%
79.2%
1.3E−06
0.0013
47
48


LTA
NEDD4L
0.22
36
11
38
11
76.6%
77.6%
0.0284
1.1E−06
47
49


NRAS
PTPRK
0.22
37
11
38
11
77.1%
77.6%
0.0006
5.2E−07
48
49


CNKSR2
USP7
0.22
36
11
38
11
76.6%
77.6%
6.3E−08
0.0007
47
49


C1QA
MSH2
0.22
37
10
36
12
78.7%
75.0%
1.6E−06
0.0054
47
48


CCR7
POV1
0.22
36
12
37
12
75.0%
75.5%
1.5E−07
0.0010
48
49


NBEA
XK
0.22
37
11
37
12
77.1%
75.5%
0.0005
0.0070
48
49


CNKSR2
POV1
0.22
36
12
38
11
75.0%
77.6%
2.0E−07
0.0009
48
49


NBEA
SERPINA1
0.21
38
9
37
12
80.9%
75.5%
7.5E−07
0.0078
47
49


AXIN2
DIABLO
0.21
37
11
37
12
77.1%
75.5%
6.8E−07
2.6E−05
48
49


CNKSR2
ST14
0.21
36
12
37
12
75.0%
75.5%
1.9E−06
0.0014
48
49


CD97
LTA
0.21
37
10
38
11
78.7%
77.6%
2.9E−06
0.0002
47
49


CD97
PTEN
0.21
36
11
38
11
76.6%
77.6%
1.5E−07
0.0002
47
49


CTSD
PTPRK
0.21
36
12
37
12
75.0%
75.5%
0.0018
1.6E−05
48
49


CNKSR2
LGALS8
0.21
36
11
38
11
76.6%
77.6%
2.9E−07
0.0019
47
49


NBEA
TGFB1
0.21
37
9
37
12
80.4%
75.5%
3.6E−07
0.0231
46
49


BAX
LTA
0.20
38
9
38
11
80.9%
77.6%
4.9E−06
0.0001
47
49


C1QA
IL8
0.20
36
11
37
12
76.6%
75.5%
3.0E−06
0.0261
47
49


E2F1
MSH6
0.20
36
11
38
11
76.6%
77.6%
1.2E−06
0.0128
47
49


IKBKE
ITGAL
0.20
37
10
37
12
78.7%
75.5%
4.0E−05
6.2E−07
47
49


CD97
CXCL1
0.20
36
11
38
11
76.6%
77.6%
3.3E−07
0.0004
47
49


CASP9
NBEA
0.20
37
10
37
12
78.7%
75.5%
0.0310
3.4E−07
47
49


CCR7
LGALS8
0.20
37
10
37
12
78.7%
75.5%
6.5E−07
0.0073
47
49


BAX
NUDT4
0.19
38
9
37
12
80.9%
75.5%
0.0002
0.0002
47
49


CTSD
TIMP1
0.19
36
12
37
12
75.0%
75.5%
9.7E−07
6.3E−05
48
49


CCR7
SERPINA1
0.19
36
11
37
12
76.6%
75.5%
5.2E−06
0.0144
47
49


CCR7
GSK3B
0.19
36
12
37
12
75.0%
75.5%
1.0E−06
0.0120
48
49


ANLN
HMGA1
0.18
36
12
37
12
75.0%
75.5%
6.8E−06
0.0019
48
49


ANLN
CD97
0.18
37
10
39
10
78.7%
79.6%
0.0010
0.0020
47
49


ANLN
LTA
0.18
36
11
37
12
76.6%
75.5%
2.0E−05
0.0022
47
49


CAV1
CCR7
0.18
38
10
38
11
79.2%
77.6%
0.0227
4.2E−06
48
49


CNKSR2
IKBKE
0.17
37
10
37
12
78.7%
75.5%
3.4E−06
0.0257
47
49


ANLN
GADD45A
0.16
36
12
37
12
75.0%
75.5%
0.0029
0.0078
48
49
















Melanoma
Normals
Sum



Group Size
50.5%
49.5%
100%



N =
49
48
97



Gene
Mean
Mean
p-val







RP51077B9.4
16.6
17.4
2.2E−16



PLEK2
18.9
20.7
1.5E−14



MYC
18.7
17.7
6.1E−11



PLXDC2
16.7
17.6
1.9E−08



C1QB
21.0
22.1
6.3E−08



NEDD4L
19.1
19.9
6.0E−07



ELA2
20.2
21.9
1.2E−06



NBEA
22.0
21.1
2.8E−06



C1QA
20.3
21.2
3.7E−06



SIAH2
14.5
15.1
3.8E−06



E2F1
20.5
21.1
7.6E−06



LARGE
23.2
22.1
1.2E−05



CCR7
15.3
14.5
1.6E−05



PTPRK
22.2
21.3
2.0E−05



CNKSR2
21.7
21.0
2.3E−05



XK
18.7
19.5
3.3E−05



ANLN
22.4
23.1
0.0001



TNFSF5
18.2
17.6
0.0001



CD97
13.5
14.0
0.0002



GADD45A
19.4
19.8
0.0003



DLC1
23.9
24.6
0.0003



NUDT4
16.4
16.9
0.0004



BAX
15.6
15.9
0.0004



UBE2C
20.7
21.1
0.0009



AXIN2
19.7
19.1
0.0011



SPARC
15.9
16.4
0.0013



HOXA10
22.7
23.4
0.0014



IGF2BP2
17.1
17.7
0.0016



CCL5
13.0
13.5
0.0017



ITGAL
15.2
15.6
0.0023



CTSD
13.5
13.9
0.0023



CDH1
21.1
21.6
0.0073



CCL3
20.5
20.9
0.0116



MSH2
18.2
17.8
0.0125



MMP9
15.0
15.6
0.0137



LTA
19.6
19.3
0.0151



EGR1
20.4
20.7
0.0151



ST14
18.0
18.4
0.0202



NRAS
16.9
17.1
0.0301



IL8
21.8
21.3
0.0330



HMGA1
16.0
15.8
0.0341



IFI16
14.8
15.1
0.0421



SERPINA1
13.2
13.5
0.0453



RBM5
16.1
16.3
0.0509



TLR2
16.1
16.4
0.0545



DIABLO
18.5
18.7
0.0552



MTF1
18.3
18.5
0.0693



BCAM
21.3
21.8
0.0733



CEACAM1
19.1
19.5
0.0808



SERPINE1
22.0
22.2
0.0933



MSH6
19.8
19.6
0.1013



CAV1
24.1
24.5
0.1020



MNDA
12.8
13.0
0.1021



HMOX1
16.3
16.5
0.1041



CA4
18.9
19.2
0.1168



MEIS1
22.5
22.7
0.1410



MLH1
18.1
17.9
0.1623



POV1
18.8
19.0
0.1623



CD59
17.9
18.0
0.1672



FOS
16.0
16.2
0.2130



IRF1
13.1
13.3
0.2175



SRF
16.5
16.6
0.2306



ESR1
22.1
21.9
0.2455



IKBKE
17.0
16.8
0.2529



TIMP1
15.1
15.0
0.2589



LGALS8
17.7
17.8
0.2679



ESR2
23.8
23.5
0.2695



TGFB1
13.3
13.4
0.2830



GSK3B
16.2
16.4
0.3044



VIM
11.7
11.8
0.3169



SP1
16.3
16.4
0.3376



TXNRD1
16.9
17.0
0.3380



TNFRSF1A
15.7
15.6
0.4001



MTA1
19.8
19.9
0.4430



VEGF
22.6
22.7
0.4747



PTGS2
17.7
17.6
0.4915



PTPRC
12.5
12.6
0.5146



ETS2
18.1
18.1
0.5437



ACPP
18.2
18.1
0.5509



ZNF185
17.5
17.6
0.5644



IQGAP1
14.7
14.6
0.5807



ZNF350
19.4
19.5
0.6119



USP7
15.7
15.7
0.6127



IGFBP3
22.5
22.6
0.6129



XRCC1
19.1
19.0
0.6210



APC
18.0
18.0
0.6314



MAPK14
15.8
15.9
0.6413



MME
15.5
15.4
0.6559



HSPA1A
15.3
15.2
0.6570



ING2
19.7
19.7
0.6668



CASP3
20.1
20.1
0.7187



TEGT
12.9
12.9
0.7344



PTEN
14.1
14.1
0.7375



PLAU
24.6
24.5
0.7535



CASP9
18.5
18.6
0.8107



G6PD
16.3
16.3
0.8146



ADAM17
18.5
18.5
0.8232



GNB1
14.0
14.0
0.8248



MYD88
15.0
15.0
0.8280



S100A4
13.2
13.2
0.8295



CXCL1
19.9
19.9
0.8302



TNF
18.8
18.8
0.8369



SERPING1
19.6
19.5
0.8421



CTNNA1
17.7
17.7
0.8481



S100A11
11.8
11.8
0.8921



NCOA1
17.0
17.0
0.9188



DAD1
15.3
15.3
0.9556

























Predicted









probability



Patient ID
Group
RP51077B9.4
TEGT
logit
odds
of melanoma cancer







MB424-XS:200073396
Melanoma
15.66
12.73
17.04
2.5E+07
1.0000



MB391-XS:200073359
Melanoma
15.93
12.57
12.34
2.3E+05
1.0000



MB377-XS:200073356
Melanoma
15.83
12.35
12.19
2.0E+05
1.0000



MB385-XS:200073357
Melanoma
15.85
12.16
10.55
3.8E+04
1.0000



MB451-XS:200073364
Melanoma
15.94
12.30
10.32
3.0E+04
1.0000



MB383-XS:200073395
Melanoma
16.32
12.97
10.29
2.9E+04
1.0000



MB419-XS:200073379
Melanoma
16.99
14.18
10.19
2.7E+04
1.0000



MB360-XS:200073397
Melanoma
16.46
13.20
10.04
2.3E+04
1.0000



MB312-XS:200073214
Melanoma
16.41
13.07
9.76
1.7E+04
0.9999



MB017-XS:200073211
Melanoma
16.43
13.06
9.45
1.3E+04
0.9999



MB429-XS:200073381
Melanoma
16.44
13.04
9.19
9.8E+03
0.9999



MB447-XS:200073363
Melanoma
16.23
12.65
9.13
9.2E+03
0.9999



MB410-XS:200073378
Melanoma
16.87
13.62
7.69
2.2E+03
0.9995



MB443-XS:200073362
Melanoma
16.48
12.86
7.38
1.6E+03
0.9994



MB454-XS:200073382
Melanoma
16.62
13.04
6.85
9.4E+02
0.9989



MB449-XS:200073394
Melanoma
16.52
12.83
6.64
7.6E+02
0.9987



MB373-XS:200073355
Melanoma
16.67
13.09
6.55
7.0E+02
0.9986



MB517-XS:200073387
Melanoma
16.33
12.43
6.27
5.3E+02
0.9981



MB420-XS:200073380
Melanoma
16.79
13.25
6.23
5.1E+02
0.9980



MB387-XS:200073377
Melanoma
16.71
13.09
6.08
4.4E+02
0.9977



MB456-XS:200073383
Melanoma
16.67
12.99
5.84
3.4E+02
0.9971



MB426-XS:200073393
Melanoma
16.50
12.65
5.62
2.7E+02
0.9964



MB284-XS:200073370
Melanoma
16.54
12.68
5.30
2.0E+02
0.9950



MB389-XS:200073358
Melanoma
16.93
13.36
5.21
1.8E+02
0.9946



MB357-XS:200073373
Melanoma
16.63
12.81
5.16
1.7E+02
0.9943



MB465-XS:200073384
Melanoma
16.46
12.48
4.91
1.4E+02
0.9927



MB364-XS:200073389
Melanoma
16.99
13.41
4.73
1.1E+02
0.9913



MB282-XS:200073212
Melanoma
17.10
13.60
4.64
1.0E+02
0.9904



MB442-XS:200073361
Melanoma
16.84
13.10
4.48
8.8E+01
0.9888



MB381-XS:200073376
Melanoma
16.67
12.78
4.37
7.9E+01
0.9875



MB392-XS:200073360
Melanoma
16.92
13.20
4.07
5.9E+01
0.9832



Bonfils234-XS:200
Normals
16.32
12.09
3.95
5.2E+01
0.9812



MB313-XS:200073215
Melanoma
16.86
13.03
3.77
4.4E+01
0.9775



MB320-XS:200073353
Melanoma
17.17
13.58
3.62
3.7E+01
0.9738



MB491-XS:200073367
Melanoma
16.35
12.07
3.47
3.2E+01
0.9698



MB361-XS:200073374
Melanoma
16.80
12.85
3.18
2.4E+01
0.9599



MB466-XS:200073385
Melanoma
16.66
12.58
3.03
2.1E+01
0.9537



MB299-XS:200073213
Melanoma
16.64
12.44
2.35
1.1E+01
0.9133



MB306-XS:200073392
Melanoma
17.15
13.36
2.27
9.7E+00
0.9066



Bonfils074-XS:200
Normals
17.25
13.50
1.95
7.0E+00
0.8752



MB510-XS:200073369
Melanoma
16.87
12.74
1.46
4.3E+00
0.8115



MB330-XS:200073354
Melanoma
16.88
12.73
1.33
3.8E+00
0.7906



MB518-XS:200073388
Melanoma
16.76
12.50
1.29
3.6E+00
0.7846



MB293-XS:200073390
Melanoma
17.17
13.26
1.29
3.6E+00
0.7838



MB294-XS:200073391
Melanoma
17.03
12.94
0.87
2.4E+00
0.7050



MB501-XS:200073368
Melanoma
17.06
12.96
0.64
1.9E+00
0.6553



Bonfils226-XS:200
Normals
16.71
12.31
0.53
1.7E+00
0.6296



MB472-XS:200073386
Melanoma
16.79
12.44
0.36
1.4E+00
0.5893



MB489-XS:200073366
Melanoma
16.68
12.19
0.09
1.1E+00
0.5228



MB476-XS:200073365
Melanoma
16.57
11.95
−0.19
8.3E−01
0.4524



MB288-XS:200073371
Melanoma
16.84
12.39
−0.54
5.8E−01
0.3679



Bonfils205-XS:200
Normals
17.44
13.44
−0.85
4.3E−01
0.3004



MB316-XS:200073372
Melanoma
17.61
13.75
−0.89
4.1E−01
0.2901



Bonfils059-XS:200
Normals
16.54
11.80
−0.90
4.1E−01
0.2885



Bonfils223-XS:200
Normals
17.27
13.12
−0.91
4.0E−01
0.2862



Bonfils230-XS:200
Normals
17.12
12.81
−1.19
3.0E−01
0.2328



Bonfils190-XS:200
Normals
17.27
13.06
−1.39
2.5E−01
0.2001



Bonfils272-XS:200
Normals
17.13
12.77
−1.60
2.0E−01
0.1674



Bonfils046-XS:200
Normals
17.35
13.14
−1.83
1.6E−01
0.1379



Bonfils052-XS:200
Normals
16.87
12.24
−2.08
1.3E−01
0.1114



Bonfils144-XS:200
Normals
17.05
12.56
−2.08
1.2E−01
0.1109



Bonfils194-XS:200
Normals
17.16
12.63
−3.06
4.7E−02
0.0450



Bonfils014-XS:200
Normals
17.47
13.17
−3.16
4.3E−02
0.0408



Bonfils271-XS:200
Normals
17.51
13.24
−3.24
3.9E−02
0.0379



Bonfils231-XS:200
Normals
17.06
12.39
−3.52
3.0E−02
0.0287



Bonfils199-XS:200
Normals
17.51
13.15
−3.76
2.3E−02
0.0229



Bonfils197-XS:200
Normals
17.10
12.41
−3.77
2.3E−02
0.0226



Bonfils188-XS:200
Normals
17.22
12.63
−3.78
2.3E−02
0.0222



Bonfils015-XS:200
Normals
17.83
13.73
−3.83
2.2E−02
0.0213



Bonfils228-XS:200
Normals
17.21
12.58
−3.96
1.9E−02
0.0187



Bonfils183-XS:200
Normals
17.60
13.26
−4.17
1.5E−02
0.0152



Bonfils032-XS:200
Normals
17.63
13.27
−4.43
1.2E−02
0.0118



Bonfils037-XS:200
Normals
17.79
13.56
−4.50
1.1E−02
0.0110



Bonfils146-XS:200
Normals
17.35
12.75
−4.55
1.1E−02
0.0104



Bonfils039-XS:200
Normals
17.64
13.28
−4.61
9.9E−03
0.0098



Bonfils182-XS:200
Normals
17.57
13.14
−4.75
8.7E−03
0.0086



Bonfils229-XS:200
Normals
17.44
12.88
−4.79
8.3E−03
0.0082



Bonfils196-XS:200
Normals
17.56
13.07
−4.98
6.8E−03
0.0068



Bonfils213XS:200
Normals
17.45
12.87
−5.00
6.7E−03
0.0067



Bonfils034-XS:200
Normals
17.75
13.37
−5.38
4.6E−03
0.0046



Bonfils221-XS:200
Normals
17.06
12.03
−5.98
2.5E−03
0.0025



Bonfils218-XS:200
Normals
17.42
12.67
−6.02
2.4E−03
0.0024



Bonfils021-XS:200
Normals
17.18
12.23
−6.07
2.3E−03
0.0023



Bonfils017-XS:200
Normals
17.18
12.21
−6.18
2.1E−03
0.0021



Bonfils139-XS:200
Normals
17.46
12.68
−6.53
1.5E−03
0.0015



Bonfils198-XS:200
Normals
17.42
12.59
−6.61
1.4E−03
0.0013



Bonfils201-XS:200
Normals
17.99
13.59
−6.89
1.0E−03
0.0010



Bonfils259-XS:200
Normals
17.68
13.01
−7.05
8.7E−04
0.0009



Bonfils202-XS:200
Normals
17.51
12.68
−7.07
8.5E−04
0.0008



Bonfils233-XS:200
Normals
17.45
12.59
−7.11
8.1E−04
0.0008



Bonfils200-XS:200
Normals
17.68
12.99
−7.13
8.0E−04
0.0008



Bonfils206-XS:200
Normals
17.62
12.85
−7.34
6.5E−04
0.0007



Bonfils211-XS:200
Normals
17.69
12.88
−8.04
3.2E−04
0.0003



Bonfils050-XS:200
Normals
17.53
12.45
−9.08
1.1E−04
0.0001



Bonfils187-XS:200
Normals
18.06
13.25
−10.28
3.4E−05
0.0000



Bonfils018-XS:200
Normals
17.99
13.02
−10.96
1.7E−05
0.0000

























TABLE 6A












Normal
Melanoma

total used



En-

N =
50
45

(excludes missing)


















2-gene models and
tropy
#normal
#normal
#mma
#mma
Correct
Correct


#



1-gene models
R-sq
Correct
FALSE
Correct
FALSE
Classification
Classification
p-val 1
p-val 2
normals
# disease






















C1QB
PLEK2
0.69
45
5
41
4
90.0%
91.1%
2.5E−07
8.9E−16
50
45


PLEK2
PLXDC2
0.63
44
6
40
5
88.0%
88.9%
1.5E−13
1.1E−05
50
45


PLEK2
TMOD1
0.63
44
6
40
5
88.0%
88.9%
0.0E+00
1.5E−05
50
45


PLEK2
TSPAN5
0.60
45
5
41
4
90.0%
91.1%
1.1E−16
0.0001
50
45


GLRX5
PLEK2
0.60
45
5
40
5
90.0%
88.9%
0.0001
2.2E−16
50
45


C20ORF108
PLEK2
0.59
42
8
40
5
84.0%
88.9%
0.0002
0.0E+00
50
45


GYPA
PLEK2
0.59
44
6
40
5
88.0%
88.9%
0.0003
0.0E+00
50
45


GYPB
PLEK2
0.56
43
7
38
7
86.0%
84.4%
0.0014
1.1E−16
50
45


BLVRB
PLEK2
0.56
45
5
41
4
90.0%
91.1%
0.0017
1.3E−14
50
45


IL1R2
PLEK2
0.55
44
6
40
5
88.0%
88.9%
0.0031
2.2E−15
50
45


PBX1
PLEK2
0.54
44
6
39
6
88.0%
86.7%
0.0062
1.4E−15
50
45


LARGE
PLEK2
0.54
44
6
38
7
88.0%
84.4%
0.0074
1.2E−12
50
45


PLAUR
PLEK2
0.53
43
7
39
6
86.0%
86.7%
0.0117
4.4E−16
50
45


PLEK2
SLC4A1
0.53
44
6
40
5
88.0%
88.9%
2.0E−13
0.0132
50
45


PLEK2
PTPRK
0.53
44
5
39
6
89.8%
86.7%
4.1E−13
0.0222
49
45


PLEK2
SCN3A
0.53
43
7
39
6
86.0%
86.7%
5.1E−13
0.0196
50
45


CARD12
PLEK2
0.52
43
7
39
6
86.0%
86.7%
0.0252
8.9E−16
50
45


PLEK2
SLA
0.52
42
8
39
6
84.0%
86.7%
4.4E−16
0.0369
50
45


PLEK2
RBMS1
0.52
43
7
39
6
86.0%
86.7%
2.2E−16
0.0377
50
45


CNKSR2
PLEK2
0.52
44
6
39
6
88.0%
86.7%
0.0387
2.2E−12
50
45


PLEK2
TLK2
0.52
41
8
39
6
83.7%
86.7%
2.2E−15
0.0311
49
45


CXCL16
PLEK2
0.52
44
6
40
5
88.0%
88.9%
0.0455
6.7E−16
50
45


PLEK2

0.49
42
8
38
7
84.0%
84.4%
1.3E−15

50
45


IL13RA1
PLXDC2
0.48
43
7
37
7
86.0%
84.1%
1.6E−08
3.3E−15
50
44


C1QB
NEDD4L
0.43
41
9
37
8
82.0%
82.2%
6.8E−07
3.0E−08
50
45


ACOX1
PLXDC2
0.42
43
7
37
8
86.0%
82.2%
1.8E−07
8.7E−14
50
45


N4BP1
PLXDC2
0.41
42
8
37
8
84.0%
82.2%
3.5E−07
1.6E−13
50
45


LARGE
PLXDC2
0.41
41
9
35
10
82.0%
77.8%
5.3E−07
8.7E−09
50
45


NPTN
PLXDC2
0.40
42
8
38
7
84.0%
84.4%
8.1E−07
3.6E−13
50
45


CNKSR2
PLXDC2
0.40
40
10
36
9
80.0%
80.0%
9.4E−07
6.1E−09
50
45


C1QB
SLC4A1
0.39
40
10
36
9
80.0%
80.0%
2.4E−09
3.6E−07
50
45


IQGAP1
PLXDC2
0.39
41
9
37
8
82.0%
82.2%
2.2E−06
9.4E−13
50
45


PGD
PLXDC2
0.39
40
10
36
9
80.0%
80.0%
2.5E−06
1.1E−12
50
45


LARGE
NEDD4L
0.38
38
12
34
11
76.0%
75.6%
1.7E−05
4.9E−08
50
45


PLXDC2
SMCHD1
0.38
40
10
35
10
80.0%
77.8%
1.8E−12
4.1E−06
50
45


PLXDC2
RBMS1
0.37
40
10
36
9
80.0%
80.0%
3.5E−12
5.5E−06
50
45


NEDD4L
PLXDC2
0.37
38
12
36
9
76.0%
80.0%
8.3E−06
4.8E−05
50
45


PLXDC2
XK
0.36
40
10
36
9
80.0%
80.0%
4.6E−07
1.2E−05
50
45


NBEA
PLXDC2
0.36
39
11
35
10
78.0%
77.8%
1.7E−05
6.1E−08
50
45


PLXDC2
SLC4A1
0.35
40
10
36
9
80.0%
80.0%
4.5E−08
3.0E−05
50
45


PLXDC2
SCN3A
0.35
39
11
35
10
78.0%
77.8%
8.0E−08
3.0E−05
50
45


C1QB
IGF2BP2
0.35
41
9
36
9
82.0%
80.0%
2.1E−07
7.3E−06
50
45


C1QB
SIAH2
0.34
39
11
36
9
78.0%
80.0%
7.8E−07
1.3E−05
50
45


PLXDC2
ZBTB10
0.34
40
10
36
9
80.0%
80.0%
6.7E−09
5.6E−05
50
45


NEDD4L
PTPRK
0.34
40
9
35
10
81.6%
77.8%
1.3E−07
0.0003
49
45


PLXDC2
PTPRK
0.34
38
11
34
11
77.6%
75.6%
1.4E−07
6.1E−05
49
45


NUCKS1
PLXDC2
0.33
38
12
35
10
76.0%
77.8%
0.0001
1.6E−09
50
45


NEDD4L
SCN3A
0.33
41
9
34
11
82.0%
75.6%
3.1E−07
0.0007
50
45


NOTCH2
PLXDC2
0.33
39
11
35
10
78.0%
77.8%
0.0001
9.6E−11
50
45


PLEKHQ1
PLXDC2
0.33
40
10
36
9
80.0%
80.0%
0.0001
6.9E−11
50
45


BLVRB
PLXDC2
0.33
38
12
34
11
76.0%
75.6%
0.0002
9.6E−08
50
45


C1QB
NUDT4
0.32
39
11
36
9
78.0%
80.0%
5.7E−07
4.1E−05
50
45


CNKSR2
NEDD4L
0.32
39
11
34
11
78.0%
75.6%
0.0012
1.2E−06
50
45


C1QB
PLXDC2
0.31
39
11
35
10
78.0%
77.8%
0.0003
8.2E−05
50
45


PLXDC2
SIAH2
0.31
38
12
34
11
76.0%
75.6%
5.9E−06
0.0004
50
45


C1QB
NUCKS1
0.31
39
11
35
10
78.0%
77.8%
7.1E−09
0.0001
50
45


PLXDC2
SLA
0.30
39
11
35
10
78.0%
77.8%
1.2E−09
0.0012
50
45


C1QB
PBX1
0.29
38
12
34
11
76.0%
75.6%
2.5E−08
0.0003
50
45


C1QB
ZBTB10
0.29
39
11
34
11
78.0%
75.6%
1.6E−07
0.0003
50
45


IGF2BP2
PLXDC2
0.29
38
12
34
11
76.0%
75.6%
0.0021
1.3E−05
50
45


C1QB
LARGE
0.29
38
12
35
10
76.0%
77.8%
3.7E−05
0.0006
50
45


C1QB
NBEA
0.29
38
12
35
10
76.0%
77.8%
8.8E−06
0.0007
50
45


MTA1
PLXDC2
0.28
39
11
35
10
78.0%
77.8%
0.0031
1.3E−09
50
45


IGF2BP2
LARGE
0.28
38
12
34
11
76.0%
75.6%
4.6E−05
2.0E−05
50
45


PLAUR
PLXDC2
0.28
40
10
35
10
80.0%
77.8%
0.0042
1.1E−08
50
45


NEDD4L
TMOD1
0.28
38
12
34
11
76.0%
75.6%
2.1E−07
0.0312
50
45


PLXDC2
TMOD1
0.28
39
11
35
10
78.0%
77.8%
2.3E−07
0.0051
50
45


CARD12
PLXDC2
0.28
38
12
34
11
76.0%
75.6%
0.0052
1.5E−08
50
45


NBEA
NEDD4L
0.28
38
12
35
10
76.0%
77.8%
0.0363
1.6E−05
50
45


NEDD4L
PLAUR
0.28
40
10
34
11
80.0%
75.6%
1.4E−08
0.0368
50
45


C1QB
TNS1
0.27
40
10
35
10
80.0%
77.8%
4.4E−08
0.0015
50
45


CXCL16
PLXDC2
0.27
39
11
35
10
78.0%
77.8%
0.0081
8.6E−09
50
45


C1QB
GYPA
0.27
39
11
34
11
78.0%
75.6%
4.4E−08
0.0019
50
45


C1QB
LGALS3
0.27
38
12
35
10
76.0%
77.8%
1.1E−06
0.0020
50
45


C1QB
PTPRK
0.26
38
11
34
11
77.6%
75.6%
3.2E−05
0.0043
49
45


C1QB
INPP4B
0.25
38
12
34
11
76.0%
75.6%
1.5E−06
0.0058
50
45


LARGE
NUDT4
0.25
39
11
35
10
78.0%
77.8%
0.0001
0.0005
50
45


IL13RA1
IL1R2
0.25
38
12
34
10
76.0%
77.3%
7.8E−06
1.5E−08
50
44


IGF2BP2
PTPRK
0.23
38
11
34
11
77.6%
75.6%
0.0002
0.0008
49
45


IL1R2
LARGE
0.22
39
11
35
10
78.0%
77.8%
0.0053
1.6E−05
50
45


NEDD9
SIAH2
0.20
38
12
35
10
76.0%
77.8%
0.0124
7.0E−06
50
45


IL1R2
PTPRK
0.20
39
10
34
11
79.6%
75.6%
0.0019
5.9E−05
49
45


CNKSR2
IRAK3
0.20
39
11
34
11
78.0%
75.6%
7.5E−06
0.0072
50
45


F5
SIAH2
0.19
38
12
34
11
76.0%
75.6%
0.0383
1.7E−05
50
45


PTPRK
ZC3H7B
0.18
38
11
34
11
77.6%
75.6%
1.5E−06
0.0066
49
45


CNKSR2
RBMS1
0.18
39
11
35
10
78.0%
77.8%
1.5E−06
0.0238
50
45


BLVRB
IRAK3
0.16
39
11
34
11
78.0%
75.6%
9.3E−05
0.0086
50
45


NEDD9
ZBTB10
0.16
39
11
34
11
78.0%
75.6%
0.0022
0.0002
50
45


BLVRB
INPP4B
0.14
38
12
34
11
76.0%
75.6%
0.0041
0.0406
50
45


BLVRB

0.11
39
11
35
10
78.0%
77.9%
0.0002

50
45

















Melanoma
Normals
Sum




Group Size
47.4%
52.6%
100%



N =
45
50
95



Gene
Mean
Mean
Z-statistic
p-val







PLEK2
18.6
20.5
−7.99
1.3E−15



NEDD4L
19.0
19.8
−5.65
1.6E−08



PLXDC2
16.8
17.6
−5.35
8.9E−08



C1QB
20.3
21.4
−5.09
3.6E−07



XK
18.3
19.2
−4.73
2.3E−06



LARGE
22.9
22.0
4.54
5.6E−06



SIAH2
14.2
14.9
−4.53
5.9E−06



IGF2BP2
16.8
17.5
−4.36
1.3E−05



CNKSR2
21.7
21.0
4.34
1.4E−05



NBEA
22.0
21.2
4.21
2.6E−05



NUDT4
16.3
16.8
−4.21
2.6E−05



SCN3A
23.4
22.3
4.14
3.4E−05



BPGM
16.8
17.6
−4.12
3.8E−05



PTPRK
22.2
21.3
4.05
5.1E−05



SLC4A1
14.6
15.4
−4.01
6.0E−05



BLVRB
13.2
13.7
−3.79
0.0002



LGALS3
16.6
17.0
−3.43
0.0006



ZBTB10
23.0
22.5
3.35
0.0008



GLRX5
15.3
15.8
−3.32
0.0009



INPP4B
17.8
17.2
3.21
0.0013



TSPAN5
16.6
17.0
−3.17
0.0015



IL1R2
16.0
16.7
−3.12
0.0018



TMOD1
16.9
17.4
−3.11
0.0019



CHPT1
16.4
16.7
−2.93
0.0034



PBX1
20.7
21.2
−2.77
0.0056



NUCKS1
17.0
16.7
2.70
0.0070



NEDD9
21.2
21.5
−2.56
0.0104



F5
18.5
19.0
−2.50
0.0123



TNS1
20.2
20.8
−2.46
0.0140



IRAK3
16.4
16.9
−2.45
0.0142



GYPA
18.5
19.0
−2.34
0.0191



GYPB
17.7
18.2
−2.33
0.0196



C20ORF108
15.7
16.0
−2.22
0.0263



TLK2
15.3
15.5
−2.11
0.0351



CARD12
17.6
17.9
−2.07
0.0384



PLAUR
15.2
15.5
−2.02
0.0435



CDC23
18.9
18.7
1.74
0.0824



BCNP1
17.2
16.9
1.68
0.0929



CXCL16
15.2
15.5
−1.57
0.1156



HECTD2
24.4
24.1
1.48
0.1396



SLA
14.7
14.9
−1.46
0.1441



ZDHHC2
17.7
17.8
−1.35
0.1784



PAWR
19.9
19.7
1.25
0.2116



NOTCH2
16.6
16.7
−1.20
0.2316



RASGRP3
19.9
20.0
−1.02
0.3080



RBMS1
17.2
17.3
−0.94
0.3497



ZC3H7B
17.5
17.5
−0.86
0.3880



PLEKHQ1
15.2
15.3
−0.80
0.4226



KIAA0802
24.2
23.9
0.80
0.4253



MTA1
19.4
19.3
0.78
0.4328



RAB2B
18.7
18.7
−0.71
0.4755



SCAND2
21.6
21.6
0.45
0.6525



ACOX1
15.3
15.4
−0.44
0.6629



IL13RA1
16.6
16.5
0.40
0.6880



RAP2C
17.9
17.9
0.39
0.6978



N4BP1
16.8
16.7
0.35
0.7230



SMCHD1
15.2
15.3
−0.34
0.7317



CCND2
17.0
17.0
0.30
0.7665



IQGAP1
14.4
14.5
−0.29
0.7726



NPTN
15.5
15.5
0.26
0.7943



PGD
15.8
15.8
0.05
0.9609



TIMELESS
20.3
20.3
−0.04
0.9662



CELSR1
24.2
24.1
−0.03
0.9748



CXXC6
22.1
22.1
0.03
0.9761

























Predicted









probability



Patient ID
Group
C1QB
PLEK2
logit
odds
of melanoma







MB385
Melanoma
18.98
17.36
11.62
111696.60
1.0000



MB389
Melanoma
19.02
17.80
10.21
27161.75
1.0000



MB424
Melanoma
19.64
17.49
9.53
13815.29
0.9999



MB293
Melanoma
19.45
17.89
8.81
6679.42
0.9999



MB398
Melanoma
20.25
17.22
8.73
6188.23
0.9998



MB391
Melanoma
19.54
17.89
8.59
5357.72
0.9998



MB312
Melanoma
18.00
19.25
8.55
5162.83
0.9998



MB282
Melanoma
20.46
17.11
8.51
4947.14
0.9998



MB443
Melanoma
20.49
17.24
8.05
3141.40
0.9997



MB383
Melanoma
19.97
17.71
8.00
2983.85
0.9997



MB447
Melanoma
19.49
18.32
7.45
1715.46
0.9994



MB419
Melanoma
21.31
16.94
6.78
882.21
0.9989



MB313
Melanoma
18.59
19.34
6.76
859.55
0.9988



MB392
Melanoma
20.41
17.86
6.40
599.75
0.9983



MB442
Melanoma
19.97
18.38
5.99
399.62
0.9975



MB357
Melanoma
19.70
18.77
5.55
258.31
0.9961



MB410
Melanoma
21.46
17.26
5.47
237.85
0.9958



MB451
Melanoma
19.51
19.03
5.26
192.87
0.9948



MB378
Melanoma
21.24
17.56
5.12
166.64
0.9940



MB377
Melanoma
20.35
18.43
4.88
131.00
0.9924



MB299
Melanoma
19.90
18.89
4.68
107.27
0.9908



MB294
Melanoma
20.79
18.12
4.64
103.27
0.9904



MB449
Melanoma
20.31
18.70
4.17
64.90
0.9848



MB373
Melanoma
20.97
18.13
4.12
61.70
0.9841



MB285
Melanoma
20.22
18.90
3.80
44.78
0.9782



MB488
Melanoma
20.63
18.73
3.22
24.93
0.9614



MB491
Melanoma
19.22
20.00
3.12
22.69
0.9578



 59
Normal
20.10
19.27
3.01
20.30
0.9530



MB489
Melanoma
20.22
19.23
2.81
16.53
0.9430



MB387
Melanoma
21.84
17.87
2.62
13.69
0.9319



MB330
Melanoma
19.55
20.03
2.16
8.68
0.8967



MB420
Melanoma
21.53
18.34
2.03
7.60
0.8837



MB426
Melanoma
21.27
18.63
1.87
6.52
0.8670



 17
Normal
21.73
18.24
1.83
6.23
0.8616



MB306
Melanoma
20.72
19.19
1.63
5.11
0.8363



MB345
Melanoma
21.22
18.76
1.59
4.90
0.8305



MB456
Melanoma
20.36
19.59
1.37
3.94
0.7977



183
Normal
20.88
19.33
0.79
2.20
0.6879



MB381
Melanoma
20.41
19.75
0.76
2.15
0.6822



MB284
Melanoma
20.84
19.45
0.54
1.71
0.6311



MB510
Melanoma
21.20
19.17
0.44
1.55
0.6074



MB364
Melanoma
20.87
19.46
0.42
1.53
0.6041



MB501
Melanoma
20.36
19.95
0.27
1.31
0.5673



 32
Normal
20.77
19.68
0.03
1.03
0.5081



 52
Normal
21.54
19.03
−0.05
0.95
0.4879



MB320
Melanoma
21.98
18.65
−0.06
0.94
0.4857



MB454
Melanoma
20.90
19.65
−0.21
0.81
0.4474



 74
Normal
21.59
19.06
−0.24
0.79
0.4407



218
Normal
21.27
19.37
−0.35
0.70
0.4131



MB466
Melanoma
18.98
21.37
−0.36
0.70
0.4113



186
Normal
21.15
19.69
−0.99
0.37
0.2703



229
Normal
20.32
20.45
−1.10
0.33
0.2496



234
Normal
20.39
20.42
−1.18
0.31
0.2353



MB476
Melanoma
20.47
20.38
−1.28
0.28
0.2184



194
Normal
18.73
22.01
−1.59
0.20
0.1687



199
Normal
20.66
20.33
−1.62
0.20
0.1653



MB374
Melanoma
22.58
18.70
−1.76
0.17
0.1468



185
Normal
20.25
20.74
−1.78
0.17
0.1448



232
Normal
19.85
21.28
−2.32
0.10
0.0892



 37
Normal
20.44
20.80
−2.47
0.08
0.0782



 46
Normal
22.30
19.23
−2.61
0.07
0.0685



233
Normal
21.43
20.00
−2.66
0.07
0.0656



146
Normal
20.98
20.43
−2.77
0.06
0.0589



221
Normal
21.06
20.37
−2.79
0.06
0.0581



139
Normal
20.78
20.62
−2.82
0.06
0.0562



200
Normal
20.94
20.52
−2.94
0.05
0.0501



226
Normal
20.18
21.23
−3.05
0.05
0.0452



213
Normal
21.18
20.43
−3.29
0.04
0.0359



144
Normal
21.61
20.09
−3.40
0.03
0.0323



259
Normal
21.78
19.95
−3.42
0.03
0.0318



188
Normal
20.98
20.66
−3.42
0.03
0.0317



182
Normal
20.23
21.31
−3.44
0.03
0.0312



223
Normal
20.90
20.81
−3.68
0.03
0.0247



205
Normal
21.36
20.66
−4.42
0.01
0.0119



271
Normal
22.99
19.40
−4.92
0.01
0.0072



206
Normal
21.62
20.66
−5.12
0.01
0.0059



 50
Normal
21.73
20.60
−5.20
0.01
0.0055



 34
Normal
21.40
20.91
−5.28
0.01
0.0051



201
Normal
21.68
20.68
−5.33
0.00
0.0048



 15
Normal
21.06
21.34
−5.67
0.00
0.0034



 21
Normal
21.44
21.14
−6.09
0.00
0.0023



211
Normal
22.05
20.64
−6.19
0.00
0.0021



196
Normal
22.91
20.02
−6.58
0.00
0.0014



202
Normal
22.73
20.28
−6.87
0.00
0.0010



228
Normal
21.57
21.31
−6.94
0.00
0.0010



190
Normal
19.92
22.81
−7.11
0.00
0.0008



198
Normal
21.88
21.20
−7.40
0.00
0.0006



272
Normal
23.14
20.17
−7.62
0.00
0.0005



 39
Normal
22.74
20.54
−7.67
0.00
0.0005



231
Normal
22.69
20.62
−7.79
0.00
0.0004



187
Normal
22.45
20.84
−7.82
0.00
0.0004



 18
Normal
22.45
20.96
−8.17
0.00
0.0003



 14
Normal
22.64
21.06
−8.95
0.00
0.0001



230
Normal
24.40
20.26
−11.18
0.00
0.0000



197
Normal
22.10
23.46
−14.73
0.00
0.0000









Claims
  • 1. A method for evaluating the presence of melanoma in a subject based on a sample from the subject, the sample providing a source of RNAs, comprising: a) determining a quantitative measure of the amount of at least one constituent of any constituent of any one table selected from the group consisting of Tables 1, 2, 3, 4, 5 and 6 as a distinct RNA constituent in the subject sample, wherein such measure is obtained under measurement conditions that are substantially repeatable and the constituent is selected so that measurement of the constituent distinguishes between a normal subject and a melanoma-diagnosed subject in a reference population with at least 75% accuracy; andb) comparing the quantitative measure of the constituent in the subject sample to a reference value.
  • 2. A method for assessing or monitoring the response to therapy in a subject having melanoma based on a sample from the subject, the sample providing a source of RNAs, comprising: a) determining a quantitative measure of the amount of at least one constituent of any constituent of Tables 1, 2, 3, 4, 5, and 6 as a distinct RNA constituent, wherein such measure is obtained under measurement conditions that are substantially repeatable to produce subject data set; andb) comparing the subject data set to a baseline data set.
  • 3. A method for monitoring the progression of melanoma in a subject, based on a sample from the subject, the sample providing a source of RNAs, comprising: a) determining a quantitative measure of the amount of at least one constituent of any constituent of Tables 1, 2, 3, 4, 5, and 6 as a distinct RNA constituent in a sample obtained at a first period of time, wherein such measure is obtained under measurement conditions that are substantially repeatable to produce a first subject data set;b) determining a quantitative measure of the amount of at least one constituent of any constituent of Tables 1, 2, 3, 4, 5, and 6 as a distinct RNA constituent in a sample obtained at a second period of time, wherein such measure is obtained under measurement conditions that are substantially repeatable to produce a second subject data set; andc) comparing the first subject data set and the second subject data set.
  • 4. A method for determining a melanoma profile based on a sample from a subject known to have melanoma, the sample providing a source of RNAs, the method comprising: a) using amplification for measuring the amount of RNA in a panel of constituents including at least 1 constituent from Tables 1, 2, 3, 4, 5, and 6 andb) arriving at a measure of each constituent,wherein the profile data set comprises the measure of each constituent of the panel and wherein amplification is performed under measurement conditions that are substantially repeatable.
  • 5. The method of any one of claims 1-4, wherein said constituent is selected from the group consisting of BLVRB, MYC, RP51077B9.4, PLEK2, PLXDC2.
  • 6. The method of any one of claims 1-4, comprising measuring at least two constituents from a) Table 1, wherein the first constituent is IRAK3 and the second constituent is PTEN;b) Table 2, wherein the first constituent is selected from the group consisting of ADAM17, ALOX5, C1QA, CASP3, CCL5, CD4, CD8A, CXCR3, DPP4, EGR1, ELA2, GZMB, HMGB1, HSPA1A, ICAM1, IL18, IL18BP, IL1R1, IL1RN, IL32, IL5, IRF1, LTA, MAPK14, MMP12, MMP9, MYC, PLAUR, and SERPINA1, and the second constituent is any other constituent selected from Table 2, wherein the constituent is selected so that measurement of the constituent distinguishes between a normal subject and a melanoma-diagnosed subject in a reference population with at least 75% accuracy;c) Table 3 wherein the first constituent is selected from the group consisting of ABL1, ABL2, AKT1, ATM, BAD, BAX, BCL2, BRAF, BRCA1, CASP8, CCNE1, CDC25A, CDK2, CDK4, CDK5, CDKN1A, CDKN2A, CFLAR, E2F1, EGR1, ERBB2, GZMA, ICAM1, IFITM1, IFNG, IGFBP3, ITGA1, ITGA3, ITGB1, JUN, MMP9, and MYC, and the second constituent is any other constituent selected from Table 3, wherein the constituent is selected so that measurement of the constituent distinguishes between a normal subject and a melanoma-diagnosed subject in a reference population with at least 75% accuracy;d) Table 5 wherein the first constituent is selected from the group consisting of ACPP, ADAM17, ANLN, APC, AXIN2, BAX, BCAM, C1QA, C1QB, CA4, CASP3, CASP9, CAV1, CCL3, CCL5, CCR7, CD59, CD97, CDH1, CEACAM1, CNKSR2, CTNNA1, CTSD, CXCL1, DAD1, DIABLO, DLC1, E2F1, EGR1, ELA2, ESR1, ETS2, FOS, G6PD, GADD45A, GNB1, GSK3B, HMGA1, HMOX1, HOXA10, HSPA1A, IFI16, IGF2BP2, IGFBP3, IKBKE, IL8, ING2, IQGAP1, IRF1, ITGAL, LARGE, LGALS8, LTA, MAPK14, MEIS1, MLH1, MME, MMP9, MNDA, MSH2, MSH6, MTA1, MTF1, MYC, MYD88, NBEA, NCOA1, NEDD4L, NRAS, PLAU, PLEK2, PLXDC2, PTEN, PTGS2, PTPRC, PTPRK, RBM5, and RP51077B9.4, and the second constituent is any other constituents selected from Table 5, wherein the constituent is selected so that measurement of the constituent distinguishes between a normal subject and a melanoma-diagnosed subject in a reference population with at least 75% accuracy.f) Table 6 wherein the first constituent is selected from the group consisting of ACOX1, BLVRB, C1QB, C20ORF108, CARD12, CNKSR2, CXCL16, F5, GLRX5, GYPA, GYPB, IGF2BP2, IL13RA1, IL1R2, IQGAP1, LARGE, MTA1, N4BP1, NBEA, NEDD4L, NEDD9, NOTCH2, NPTN, NUCKS1, PBX1, PGD, PLAUR, PLEK2, PLEKHQ1, PLXDC2, and PTPRK, and the second constituent is any other constituents selected from Table 6, wherein the constituent is selected so that measurement of the constituent distinguishes between a normal subject and a melanoma-diagnosed subject in a reference population with at least 75% accuracy.
  • 7. The method of any one of claims 1-4, comprising measuring at least three constituents from a) Table 1, whereini) the first constituent is selected from the group consisting of BMI1, C1QB, CCR7, CDK6, CTNNB1, CXCR4, CYBA, DDEF1, E2F1, IQGAP1, IRAK3, ITGA4, MAPK1, MCAM, MDM2, MMP9, MNDA, NKIRAS2, PLAUR, PLEKHQ1, and PTEN;ii) the second constituent is selected from the group consisting of CD34, CTNNB1, CXCR4, CYBA, IRAK3, ITGA4, MAPK1, MCAM, MDM2, MMP9, MNDA, NBN, NKIRAS2, PLAUR, PTEN, PTPRK, S100A4, and TNFSF13B; andiii) the third constituent is any other constituent selected from Table 1, wherein the each constituent is selected so that measurement of the constituents distinguishes between a normal subject and a melanoma-diagnosed subject in a reference population with at least 75% accuracy; andb) Table 4, whereini) the first constituent is selected from the group consisting of CEBPB, MAP2K1, MAPK1, NAB2, NFKB1, PTEN, RAF1, and S100A6;ii) the second constituent is selected from the group consisting of CREBBP, RAF1, PTEN, S100A6, and TGFB1; andiii) the third constituent is selected from the group consisting of RAF1, S100A6, TOPBP1, TP53, wherein the each constituent is selected so that measurement of the constituents distinguishes between a normal subject and a melanoma-diagnosed subject in a reference population with at least 75% accuracy.
  • 8. The method of any one of claims 1-7, wherein the combination of constituents are selected according to any of the models enumerated in Tables 1A, 2A, 3A, 4A, 5A, or 6A.
  • 9. The method of any one of claims 1, 5 and 6, wherein said reference value is an index value.
  • 10. The method of claim 2, wherein said therapy is immunotherapy.
  • 11. The method of claim 10, wherein said constituent is selected from Table 7.
  • 12. The method of any one of claim 2, 10 or 11, wherein when the baseline data set is derived from a normal subject a similarity in the subject data set and the baseline date set indicates that said therapy is efficacious.
  • 13. The method of any one of claim 2, 10 or 11, wherein when the baseline data set is derived from a subject known to have melanoma a similarity in the subject data set and the baseline date set indicates that said therapy is not efficacious.
  • 14. The method of any one of claims 1-13, wherein expression of said constituent in said subject is increased compared to expression of said constituent in a normal reference sample.
  • 15. The method of any one of claims 1-13, wherein expression of said constituent in said subject is decreased compared to expression of said constituent in a normal reference sample.
  • 16. The method of any one of claims 1-13, wherein the sample is selected from the group consisting of blood, a blood fraction, a body fluid, a cells and a tissue.
  • 17. The method of any one of claims 1-16, wherein the measurement conditions that are substantially repeatable are within a degree of repeatability of better than ten percent.
  • 18. The method of any one of claims 1-17, wherein the measurement conditions that are substantially repeatable are within a degree of repeatability of better than five percent.
  • 19. The method of any one of claims 1-18, wherein the measurement conditions that are substantially repeatable are within a degree of repeatability of better than three percent.
  • 20. The method of any one of claims 1-19, wherein efficiencies of amplification for all constituents are substantially similar.
  • 21. The method of any one of claims 1-20, wherein the efficiency of amplification for all constituents is within ten percent.
  • 22. The method of any one of claims 1-21, wherein the efficiency of amplification for all constituents is within five percent.
  • 23. The method of any one of claims 1-22, wherein the efficiency of amplification for all constituents is within three percent.
  • 24. A kit for detecting melanoma cancer in a subject, comprising at least one reagent for the detection or quantification of any constituent measured according to any one of claims 1-23 and instructions for using the kit.
REFERENCE TO RELATED APPLICATIONS

This application claims the benefit of U.S. Provisional Application No. 60/857324 filed Nov. 6, 2006 and U.S. Provisional Application No. 60/931903 filed May 24, 2007, the contents of which are incorporated by reference in their entirety.

PCT Information
Filing Document Filing Date Country Kind 371c Date
PCT/US2007/023386 11/6/2007 WO 00 5/13/2010
Provisional Applications (2)
Number Date Country
60857324 Nov 2006 US
60931903 May 2007 US