Reagents and methods for use in cancer diagnosis, classification and therapy

Information

  • Patent Grant
  • 7504225
  • Patent Number
    7,504,225
  • Date Filed
    Thursday, May 11, 2006
    18 years ago
  • Date Issued
    Tuesday, March 17, 2009
    15 years ago
Abstract
Methods and reagents for classifying tumors and for identifying new tumor classes and subclasses. Methods for correlating tumor class or subclass with therapeutic regimen or outcome, for identifying appropriate (new or known) therapies for particular classes or subclasses, and for predicting outcomes based on class or subclass. New therapeutic agents and methods for the treatment of cancer.
Description
BACKGROUND OF THE INVENTION

A major challenge of cancer treatment is the selection of therapeutic regimens that maximize efficacy and minimize toxicity for a given patient. A related challenge lies in the attempt to provide accurate diagnostic, prognostic and predictive information. At present, tumors are generally classified under the tumor-node-metastasis (TNM) system. This system, which uses the size of the tumor, the presence or absence of tumor in regional lymph nodes, and the presence or absence of distant metastases, to assign a stage to the tumor is described in the AJCC Cancer Staging Manual, Lippincott, 5th ed., pp. 171-180 (1997). The assigned stage is used as a basis for selection of appropriate therapy and for prognostic purposes. In addition to the TNM parameters, morphologic appearance is used to further classify tumors into tumor types and thereby aid in selection of appropriate therapy. However, this approach has serious limitations. Tumors with similar histopathologic appearance can exhibit significant variability in terms of clinical course and response to therapy. For example, some tumors are rapidly progressive while others are not. Some tumors respond readily to hormonal therapy or chemotherapy while others are resistant.


Assays for cell surface markers, e.g., using immunohistochemistry, have provided means for dividing certain tumor types into subclasses. For example, one factor considered in prognosis and treatment decisions for breast cancer is the presence or absence of the estrogen receptor (ER) in tumor samples. ER-positive breast cancers typically respond much more readily to hormonal therapies such as tamoxifen, which acts as an anti-estrogen in breast tissue, than ER-negative tumors. Though useful, these analyses only in part predict the clinical behavior of breast tumors. There is phenotypic diversity present in cancers that current diagnostic tools fail to detect. As a consequence, there is still much controversy over how to stratify patients amongst potential treatments in order to optimize outcome (e.g., for breast cancer see “NIH Consensus Development Conference Statement: Adjuvant Therapy for Breast Cancer, Nov. 1-3, 2000”, J. Nat. Cancer Inst. Monographs, 30:5-15, 2001 and Di Leo et al., Int. J. Clin. Oncol. 7:245-253, 2002).


Each year, over 25,000 patients are diagnosed with epithelial ovarian or primary peritoneal carcinoma, the majority being advanced stage. Surgical debulking followed by platinum based chemotherapy remains the mainstay of treatment, with about 40% of patients achieving optimal debulking with initial surgery. This is important as response rates to primary chemotherapy approach 70% with optimal debulking compared to only 30% with suboptimal debulking and respective improvements in survival. Despite this, prediction of response to chemotherapy remains problematic. Some patients recur or progress early on in their disease despite otherwise reassuring prognostic factors, while others with presumed poor prognosis have remarkable durable responses. Thus, reliable predictive markers for response to therapy are lacking.


There clearly exists a need for improved methods and reagents for classifying tumors. Once these methods and reagents are available, clinical studies can be performed that will allow the identification of classes or subclasses of patients having different prognosis and/or responses to therapy. Such prognostic tools will allow more rationally based choices governing the aggressiveness of therapeutic interventions; such predictive tools will also be useful for directing patients into appropriate treatment protocols.


SUMMARY OF THE INVENTION

The invention encompasses the realization that particular panels of tumor sample binding agents (“interaction partners”) can be used to provide new insights into the biology of cancer. Among other things, the present invention provides methods and reagents for classifying tumors and for identifying new tumor classes and subclasses. The invention further provides methods for correlating tumor class or subclass with therapeutic regimen or outcome, for identifying appropriate (new or known) therapies for particular classes or subclasses, and for predicting outcomes based on class or subclass. The invention further provides new therapeutic agents and methods for the treatment of cancer.


For example, the present invention provides methods for identifying suitable panels of interaction partners (e.g., without limitation antibodies) whose binding is correlated with any of a variety of desirable aspects such as tumor class or subclass, tumor source (e.g., primary tumor versus metastases), likely prognosis, responsiveness to therapy, etc. Specifically, collections of interaction partners are selected and their activity in binding to a variety of different tumors, normal tissues and/or cell lines is assessed. Data are collected for multiple interaction partners to multiple samples and correlations with interesting or desirable features are assessed. As described herein, the detection of individual interaction partners or panels thereof that bind differentially with different tumors provides new methods of use in cancer prognosis and treatment selection. In addition, these interaction partners provide new therapies for treating cancer.


As described in further detail below, the invention employs methods for grouping interaction partners within a panel into subsets by determining their binding patterns across a collection of samples obtained from different tumor tissues, normal tissues and/or cell lines. The invention also groups the tumor samples into classes or subclasses based on similarities in their binding to a panel of interaction partners. This two-dimensional grouping approach permits the association of particular classes of tumors with particular subsets of interaction partners that, for example, show relatively high binding to tumors within that class. Correlation with clinical information indicates that the tumor classes have clinical significance in terms of prognosis or response to chemotherapy.


BRIEF DESCRIPTION OF APPENDICES A-G

This patent application refers to material comprising tables and data presented as appendices.


Appendix A is a table that lists the antibodies included in the breast, lung, colon or ovarian panels that are discussed in the Examples. The table is split into two parts. The first part includes the antibody ID, parent gene name, NCBI Entrez GeneID and UniGeneID (note that the priority application U.S. Ser. No. 60/680,924 makes reference to LocusLinkIDs that have since been superceded by Entrez GeneIDs that use the exact same reference numbers). The second part includes the antibody ID, parent gene name, known aliases for the parent gene, peptides that were used in preparing antibodies (or the commercial source of the antibody) and antibody titer. Using the parent gene name, NCBI Entrez GeneID, UniGeneID, and/or known aliases for the parent gene, a skilled person can readily obtain the nucleotide (and corresponding amino acid) sequences for each and every one of the parent genes that are listed in Appendix A from a public database (e.g., GenBank, Swiss-Prot or any future derivative of these). The nucleotide and corresponding amino acid sequences for each and every one of the parent genes that are listed in Appendix A are hereby incorporated by reference from these public databases. Antibodies with AGI IDs that begin with s5 or s6 were obtained from commercial sources as indicated. The third and fourth columns of Appendix A indicate whether the antibodies of the breast cancer classification panel were identified by staining with the Russian breast cohort (Example 2) and/or the HH breast cohort (Example 3). The fifth and sixth columns indicate whether the antibodies of the lung cancer classification panel were identified by staining with the Russian lung cohort (Example 4) and/or the HH lung cohort (Example 5). The seventh column indicates the antibodies of the colon cancer classification panel. These were all identified by staining with the Russian colon cohort (Example 6). The eight, ninth and tenth columns indicate whether the antibodies of the ovarian cancer classification panel were identified by staining with the Stanford ovarian cohort (Example 16), the UAB ovarian cohort (Example 17), and/or the Russian ovarian cohort (Example 18).


Appendix B includes breast IHC images, colon IHC images and lung IHC images. An actual copy of Appendix B is not included with this application but can be found in related case U.S. Ser. No. 10/915,059 filed Aug. 10, 2004 (published as US 2005-0112622 on May 26, 2005), the entire contents of which are hereby incorporated by reference.


Appendix C is a table that lists exemplary antibodies whose binding patterns have been shown to correlate with tumor prognosis in breast cancer patients. The results are grouped into four categories that have been clinically recognized to be of significance: all patients, ER+ patients, ER− patients, and ER+/lymph node metastases negative (ER+/node−) patients. Scoring methods 1-3 use the following schemes: method 1 (0=negative; 1=weak; 2=strong); method 2 (0=negative; 1=weak or strong); and method 3 (0=negative or weak; 1=strong). This table was prepared using samples from the HH breast cohort as described in Example 10.


Appendix D is a table that lists exemplary antibodies whose binding patterns have been shown to correlate with tumor prognosis in lung cancer patients. The results are grouped into three categories that have been clinically recognized to be of significance: all patients, adenocarcinoma patients, and squamous cell carcinoma patients. Scoring methods 1-3 use the following schemes: method 1 (0=negative; 1=weak; 2=strong); method 2 (0=negative; 1=weak or strong); and method 3 (0=negative or weak; 1=strong).


Appendix E is a table that lists exemplary antibodies whose binding patterns have been shown to correlate with tumor prognosis in breast cancer patients. The results are grouped into four categories that have been clinically recognized to be of significance: all patients, ER+ patients, ER− patients, and ER+/lymph node metastases negative (ER+/node−) patients. Scoring methods 1-3 use the following schemes: method 1 (0=negative; 1=weak; 2=strong); method 2 (0=negative; 1=weak or strong); and method 3 (0=negative or weak; 1=strong). This table was prepared using samples from the HH breast cohort as described in Example 12. Appendix E differs from Appendix C because of further analysis.


Appendix F is a table that lists exemplary antibodies whose binding patterns have been shown to correlate with tumor prognosis in lung cancer patients. The results are grouped into two categories that have been clinically recognized to be of significance: all patients and adenocarcinoma patients. Scoring methods 1-3 use the following schemes: method 1 (0=negative; 1=weak; 2=strong); method 2 (0=negative; 1=weak or strong); and method 3 (0=negative or weak; 1=strong). This table was prepared using samples from the HH and UAB lung cohorts as described in Example 13. The p-values and hazard ratios that were obtained with each cohort are shown. The antibodies listed have a prognostic p-value of less than 0.2 in both cohorts.


Appendix G is a table that lists exemplary antibodies whose binding patterns have been shown to correlate with tumor prognosis in ovarian cancer patients. Scoring methods 1-3 use the following schemes: method 1 (0=negative; 1=weak; 2=strong); method 2 (0=negative; 1=weak or strong); and method 3 (0=negative or weak; 1=strong). The p-values and hazard ratios are shown and were obtained as described in Example 19.





BRIEF DESCRIPTION OF THE DRAWING


FIG. 1 depicts semi-quantitative immunohistochemistry (IHC) scoring of a 298 breast cancer patient cohort with an inventive breast cancer classification panel. The panel was prepared as described in Example 2—antibodies were used as interaction partners. The patients (rows) were classified using k-means clustering while the antibodies (columns) were organized using hierarchical clustering. Dark gray represents strong positive staining, black represents weak positive staining, while light gray represents the absence of staining and medium gray represents a lack of data. As illustrated in the Figure, nine groups of patients were identified by their consensus pattern of staining with the panel of antibodies.



FIG. 2 depicts semi-quantitative immunohistochemistry (IHC) scoring of a 387 lung cancer patient cohort with an inventive lung cancer classification panel. The panel was prepared as described in Example 4—antibodies were used as interaction partners. The patients (rows) were classified using k-means clustering while the antibodies (columns) were organized using hierarchical clustering. Dark gray represents strong positive staining, black represents weak positive staining, while light gray represents the absence of staining and medium gray represents a lack of data. As illustrated in the Figure, eight groups of patients were identified by their consensus pattern of staining with the panel of antibodies.



FIG. 3 depicts semi-quantitative immunohistochemistry (IHC) scoring of a 359 colon cancer patient cohort with an inventive colon cancer classification panel. The panel was prepared as described in Example 6—antibodies were used as interaction partners. The patients (rows) were classified using k-means clustering while the antibodies (columns) were organized using hierarchical clustering. Dark gray represents strong positive staining, black represents weak positive staining, while light gray represents the absence of staining and medium gray represents a lack of data. As illustrated in the Figure, seven groups of patients were identified by their consensus pattern of staining with the panel of antibodies.



FIG. 4 shows Kaplan-Meier curves that were generated for ER+ patients after prognostic classification based on (A) staining with a prognostic panel of antibodies from Appendix C and (B) the Nottingham Prognostic Index (NPI). In each case the patients were placed into one of three prognostic groups, namely “poor” (bottom curve), “moderate” (middle curve) and “good” (top curve).



FIG. 5 shows Kaplan-Meier curves that were generated for ER+/node− patients after prognostic classification based on (A) staining with a prognostic panel of antibodies from Appendix C and (B) the Nottingham Prognostic Index (NPI). In each case the patients were placed into one of three prognostic groups, namely “poor” (bottom curve), “moderate” (middle curve) and “good” (top curve). Note that under the NPI scheme ER+/node− patients are never categorized as having a “poor” prognosis. For this reason, FIG. 5B only includes curves for patients with a “moderate” or “good” prognosis.



FIG. 6 shows Kaplan-Meier curves that were generated for ER+/node− patients after prognostic classification based on staining with the exemplary prognostic panel of antibodies from Table 5. In each case the patients were placed into one of three prognostic groups, namely “bad” (bottom curve), “moderate” (middle curve) and “good” (top curve).



FIG. 7 shows Kaplan-Meier curves that were generated for ER− patients after prognostic classification based on staining with the exemplary prognostic panel of antibodies from Table 6. In each case the patients were placed into one of three prognostic groups, namely “bad” (bottom curve), “moderate” (middle curve) and “good” (top curve).



FIG. 8 shows Kaplan-Meier curves that were generated for ER− patients after prognostic classification based on staining with the exemplary prognostic panel of antibodies from Table 7. In each case the patients were placed into one of three prognostic groups, namely “bad” (bottom curve), “moderate” (middle curve) and “good” (top curve).



FIG. 9 shows a dendrogram for the tree panel of Table 8 that may be used for the prognostic classification of ER+/node− patients. If a patient is positive for staining at a given node his or her prognosis decision tree follows the branch marked with a “+”. Conversely if a patient is negative for staining at a given node his or her prognosis decision tree follows the branch marked “−”. This is done until a terminus is reached.



FIG. 10 shows Kaplan-Meier curves that were generated for ER+/node− patients after prognostic classification based on staining with the exemplary prognostic panel of antibodies from Table 8. In each case the patients were placed into one of three prognostic groups, namely “bad” (bottom curve), “moderate” (middle curve) and “good” (top curve).



FIG. 11 shows a dendrogram for the tree panels of Table 9 that may be used for the prognostic classification of ER+ and ER− patients. If a patient is positive for staining at a given node his or her prognosis decision tree follows the branch marked with a “+”. Conversely if a patient is negative for staining at a given node his or her prognosis decision tree follows the branch marked “−”. This is done until a terminus is reached.



FIG. 12 shows Kaplan-Meier curves that were generated for combined lung cancer patients (HH cohort) after prognostic classification with the exemplary prognostic panels of antibodies from Tables 10 and 11. In each case the patients were placed into one of three prognostic groups, namely “bad” (bottom curve), “moderate” (middle curve) and “good” (top curve).



FIG. 13 shows the curves that were obtained when patients in the “moderate” and “bad” groups of FIG. 12 were combined into a single “bad” prognostic group.



FIG. 14 shows Kaplan-Meier curves that were generated for combined lung cancer patients (UAB lung cohort) after prognostic classification with the exemplary prognostic panels of antibodies from Tables 10 and 11. In each case the patients were placed into one of three prognostic groups, namely “bad” (bottom curve), “moderate” (middle curve) and “good” (top curve).



FIG. 15 shows the curves that were obtained when the patients in the “moderate” and “bad” groups of FIG. 14 were combined into a single “bad” prognostic group.



FIG. 16 shows Kaplan-Meier curves that were generated for adenocarcinoma patients (UAB cohort) after prognostic classification with the exemplary prognostic panels of antibodies from Table 11. In each case the patients were placed into one of three prognostic groups, namely “bad” (bottom curve), “moderate” (middle curve) and “good” (top curve).



FIG. 17 shows Kaplan-Meier curves that were generated for squamous cell carcinoma patients (UAB lung cohort) after prognostic classification with the exemplary prognostic panels of antibodies from Table 10. In each case the patients were placed into one of three prognostic groups, namely “bad” (bottom curve), “moderate” (middle curve) and “good” (top curve).



FIG. 18 shows the relative proportions of different lung cancer morphologies that were identified in seven sub-classes of patients in the HH lung cohort.



FIG. 19 shows Kaplan-Meier curves that were generated for ovarian cancer patients after prognostic classification based on staining with the exemplary prognostic panel of antibodies from Table 18. In each case the patients were placed into one of two prognostic groups, namely “poor” (bottom curve) and “good” (top curve).



FIG. 20 shows Kaplan-Meier curves that were generated for ovarian cancer patients after prognostic classification based on staining with the exemplary prognostic panel of antibodies from Table 19. In each case the patients were placed into one of two prognostic groups, namely “poor” (bottom curve) and “good” (top curve).



FIG. 21 shows Kaplan-Meier curves that were generated for ovarian cancer patients after prognostic classification based on staining with the exemplary prognostic panel of antibodies from Table 20. In each case the patients were placed into one of two prognostic groups, namely “poor” (bottom curve) and “good” (top curve).



FIG. 22 shows Kaplan-Meier curves that were generated for ovarian cancer patients after prognostic classification based on staining with the exemplary prognostic panel of antibodies from Table 21. In each case the patients were placed into one of two prognostic groups, namely “poor” (bottom curve) and “good” (top curve).



FIG. 23 shows Kaplan-Meier curves that were generated for ovarian cancer patients after prognostic classification with the exemplary prognostic panels of antibodies from Tables 22-23. In each case the patients were placed into one of three prognostic groups, namely “bad” (bottom curve), “moderate” (middle curve) and “good” (top curve).



FIG. 24 shows a dendrogram for the tree panel of Table 24 that may be used for the prognostic classification of ovarian cancer patients. If a patient is positive for staining at a given node his or her prognosis decision tree follows the branch marked with a “+”. Conversely if a patient is negative for staining at a given node his or her prognosis decision tree follows the branch marked “−”. This is done until a terminus is reached.



FIG. 25 shows Kaplan-Meier curves that were generated for ovarian cancer patients after prognostic classification based on staining with the exemplary prognostic panel of antibodies from Table 24 and FIG. 24. In each case the patients were placed into one of two prognostic groups, namely “poor” (bottom curve) and “good” (top curve).





DEFINITIONS

Associated—When an interaction partner and a tumor marker are physically “associated” with one another as described herein, they are linked by direct non-covalent interactions. Desirable non-covalent interactions include those of the type which occur between an immunoglobulin molecule and an antigen for which the immunoglobulin is specific, for example, ionic interactions, hydrogen bonds, van der Waals interactions, hydrophobic interactions, etc. The strength, or affinity of the physical association can be expressed in terms of the dissociation constant (Kd) of the interaction, wherein a smaller Kd represents a greater affinity. The association properties of selected interaction partners and tumor markers can be quantified using methods well known in the art (e.g., see Davies et al., Annual Rev. Biochem. 59:439, 1990).


Classification panel—A “classification panel” of interaction partners is a set of interaction partners whose collective pattern of binding or lack of binding to a tumor sample, when taken together, is sufficient to classify the tumor sample as a member of a particular class or subclass of tumor, or as not a member of a particular class or subclass of tumor.


Correlation—“Correlation” refers to the degree to which one variable can be predicted from another variable, e.g., the degree to which a patient's therapeutic response can be predicted from the pattern of binding between a set of interaction partners and a tumor sample taken from that patient. A variety of statistical methods may be used to measure correlation between two variables, e.g., without limitation the student t-test, the Fisher exact test, the Pearson correlation coefficient, the Spearman correlation coefficient, the Chi squared test, etc. Results are traditionally given as a measured correlation coefficient with a p-value that provides a measure of the likelihood that the correlation arose by chance. A correlation with a p-value that is less than 0.05 is generally considered to be statistically significant. Preferred correlations have p-values that are less than 0.01, especially less than 0.001.


Interaction partner—An “interaction partner” is an entity that physically associates with a tumor marker. For example and without limitation, an interaction partner may be an antibody or a fragment thereof that physically associates with a tumor marker. In general, an interaction partner is said to “associate specifically” with a tumor marker if it associates at a detectable level with the tumor marker and does not associate detectably with unrelated molecular entities (e.g., other tumor markers) under similar conditions. Specific association between a tumor marker and an interaction partner will typically be dependent upon the presence of a particular structural feature of the target tumor marker such as an antigenic determinant or epitope recognized by the interaction partner. Generally, if an interaction partner is specific for epitope A, the presence of a molecular entity (e.g., a protein) containing epitope A or the presence of free unlabeled A in a reaction containing both free labeled A and the interaction partner thereto, will reduce the amount of labeled A that binds to the interaction partner. In general, it is to be understood that specificity need not be absolute. For example, it is well known in the art that antibodies frequently cross-react with other epitopes in addition to the target epitope. Such cross-reactivity may be acceptable depending upon the application for which the interaction partner is to be used. Thus the degree of specificity of an interaction partner will depend on the context in which it is being used. In general, an interaction partner exhibits specificity for a particular tumor marker if it favors binding with that partner above binding with other potential partners, e.g., other tumor markers. One of ordinary skill in the art will be able to select interaction partners having a sufficient degree of specificity to perform appropriately in any given application (e.g., for detection of a target tumor marker, for therapeutic purposes, etc.). It is also to be understood that specificity may be evaluated in the context of additional factors such as the affinity of the interaction partner for the target tumor marker versus the affinity of the interaction partner for other potential partners, e.g., other tumor markers. If an interaction partner exhibits a high affinity for a target tumor marker and low affinity for non-target molecules, the interaction partner will likely be an acceptable reagent for diagnostic purposes even if it lacks specificity. It will be appreciated that once the specificity of an interaction partner is established in one or more contexts, it may be employed in other, preferably similar, contexts without necessarily re-evaluating its specificity.


Predictive panel—A “predictive panel” of interaction partners is a set of interaction partners whose collective pattern of binding or lack of binding to a tumor sample, when taken together, has sufficient correlation to classify the tumor sample as being from a patient who is likely (or not) to respond to a given therapeutic regimen.


Prognostic panel—A “prognostic panel” of interaction partners is a set of interaction partners whose collective pattern of binding or lack of binding to a tumor sample, when taken together, has sufficient correlation to classify the tumor sample as being from a patient who is likely to have a given outcome. Generally, “outcome” may include, but is not limited to, the average life expectancy of the patient, the likelihood that the patient will survive for a given amount of time (e.g., 6 months, 1 year, 5 years, etc.), the likelihood of recurrence, the likelihood that the patient will be disease-free for a specified prolonged period of time, or the likelihood that the patient will be cured of the disease.


Response—The “response” of a tumor or a cancer to therapy may represent any detectable change, for example at the molecular, cellular, organellar, or organismal level. For instance, tumor size, patient life expectancy, recurrence, or the length of time the patient survives, etc., are all responses. Responses can be measured in any of a variety of ways, including for example non-invasive measuring of tumor size (e.g., CT scan, image-enhanced visualization, etc.), invasive measuring of tumor size (e.g., residual tumor resection, etc.), surrogate marker measurement (e.g., serum PSA, etc.), clinical course variance (e.g., measurement of patient quality of life, time to relapse, survival time, etc.).


Small molecule—A “small molecule” is a non-polymeric molecule. A small molecule can be synthesized in a laboratory (e.g., by combinatorial synthesis) or found in nature (e.g., a natural product). A small molecule is typically characterized in that it contains several carbon-carbon bonds and has a molecular weight of less than about 1500 Da, although this characterization is not intended to be limiting for the purposes of the present invention.


Tumor markers—“Tumor markers” are molecular entities that are detectable in tumor samples. Generally, tumor markers will be proteins that are present within the tumor sample, e.g., within the cytoplasm or membranes of tumor cells and/or secreted from such cells. According to the present invention, sets of tumor markers that correlate with tumor class or subclass are identified. Thus, subsequent tumor samples may be classified or subclassified based on the presence of these sets of tumor markers.


Tumor sample—As used herein the term “tumor sample” is taken broadly to include cell or tissue samples removed from a tumor, cells (or their progeny) derived from a tumor that may be located elsewhere in the body (e.g., cells in the bloodstream or at a site of metastasis), or any material derived by processing such a sample. Derived tumor samples may include, for example, nucleic acids or proteins extracted from the sample.


DETAILED DESCRIPTION OF CERTAIN PREFERRED EMBODIMENTS OF THE INVENTION

As noted above, the present invention provides techniques and reagents for the classification and subclassification, of tumors. Such classification (or subclassification) has many beneficial applications. For example, a particular tumor class or subclass may correlate with prognosis and/or susceptibility to a particular therapeutic regimen. As such, the classification or subclassification may be used as the basis for a prognostic or predictive kit and may also be used as the basis for identifying previously unappreciated therapies. Therapies that are effective against only a particular class or subclass of tumor may have been lost in studies whose data were not stratified by subclass; the present invention allows such data to be re-stratified, and allows additional studies to be performed, so that class- or subclass-specific therapies may be identified and/or implemented. Alternatively or additionally, the present invention allows identification and/or implementation of therapies that are targeted to genes identified as class- or subclass-specific.


Classification and Subclassification of Tumors


In general, according to the present invention, tumors are classified or subclassified on the basis of tumor markers whose presence is correlated with a particular class or subclass. In preferred embodiments, the tumor markers are detected via their physical association with an interaction partner. Included in the present invention are kits comprising sets of interaction partners that together can be used to identify or classify a particular tumor sample; such sets are generally referred to as “classification panels”.


The present invention provides systems of identifying classification panels. In general, tumor samples are contacted with individual interaction partners, and binding between the interaction partners and their cognate tumor markers is detected. For example, panels of interaction partners that identify a particular class or subclass of tumor within tumor samples of a selected tissue of origin may be defined by contacting individual interaction partners with a variety of different tumor samples (e.g., from different patients) all of the same tissue of origin. Individual interaction partners may be selected for inclusion in the ultimate classification panel based on their binding to only a subset of the tumor samples (e.g., see Examples 1-4). Those of ordinary skill in the art, however, will appreciate that all that is required for a collection of interaction partners to operate effectively as a classification panel is that the combined binding characteristics of member interaction partners together are sufficient to classify a particular tumor sample.


The inventive process of identifying useful panels of interaction partners as described herein may itself result in the identification of new tumor classes or subclasses. That is, through the process of analyzing interaction partner binding patterns, investigators will often discover new tumor classes or subclasses to which sets of interaction partners bind. Thus, the processes (a) of defining classification panels of interaction partners for given tumor classes or subclasses; and (b) identifying new tumor classes or subclasses may well be experimentally interrelated. In general, the greater the number of tumor samples tested, the greater the likelihood that new classes or subclasses will be defined.


Often, when identifying sets of interaction partners that can act as a classification (or subclassification) panel, it will be desirable to obtain the largest set of tumor samples possible, and also to collect the largest amount of information possible about the individual samples. For example, the origin of the tumor, the gender of the patient, the age of the patient, the staging of the tumor (e.g., according to the TNM system), any microscopic or submicroscopic characteristics of the tumor that may have been determined, may be recorded. Those of ordinary skill in the art will appreciate that the more information that is known about a tumor sample, the more aspects of that sample are available for correlation with interaction partner binding.


The systems of the present invention have particular utility in classifying or subclassifying tumor samples that are not otherwise distinguishable from one another. Thus, in some embodiments, it will be desirable to analyze the largest collection of tumor samples that are most similar to one another.


When obtaining tumor samples for testing according to the present invention, it is generally preferred that the samples represent or reflect characteristics of a population of patients or samples. It may also be useful to handle and process the samples under conditions and according to techniques common to clinical laboratories. Although the present invention is not intended to be limited to the strategies used for processing tumor samples, we note that, in the field of pathology, it is often common to fix samples in buffered formalin, and then to dehydrate them by immersion in increasing concentrations of ethanol followed by xylene. Samples are then embedded into paraffin, which is then molded into a “paraffin block” that is a standard intermediate in histologic processing of tissue samples. The present inventors have found that many useful interaction partners display comparable binding regardless of the method of preparation of tumor samples; those of ordinary skill in the art can readily adjust observations to account for differences in preparation procedure.


In preferred embodiments of the invention, large numbers of tissue samples are analyzed simultaneously. In some embodiments, a tissue array is prepared. Tissue arrays may be constructed according to a variety of techniques. According to one procedure, a commercially-available mechanical device (e.g., the manual tissue arrayer MTA1 from Beecher Instruments of Sun Prairie, Wis.) is used to remove an 0.6-micron-diameter, full thickness “core” from a paraffin block (the donor block) prepared from each patient, and to insert the core into a separate paraffin block (the recipient block) in a designated location on a grid. In preferred embodiments, cores from as many as about 400 patients can be inserted into a single recipient block; preferably, core-to-core spacing is approximately 1 mm. The resulting tissue array may be processed into thin sections for staining with interaction partners according to standard methods applicable to paraffin embedded material. Depending upon the thickness of the donor blocks, as well as the dimensions of the clinical material, a single tissue array can yield about 50-150 slides containing >75% relevant tumor material for assessment with interaction partners. Construction of two or more parallel tissue arrays of cores from the same cohort of patient samples can provide relevant tumor material from the same set of patients in duplicate or more. Of course, in some cases, additional samples will be present in one array and not another.


The present inventors have found that it is often desirable to evaluate some aspects of the binding characteristics of potential interaction partners before or while assessing the desirability of including them in an interaction panel. For example, the inventors have found that it is often desirable to perform a titration study in which different concentrations of the interaction partner are contacted with a diverse set of tissue samples derived from a variety of different tissues (e.g., normal and/or tumor) in order to identify a concentration or titer at which differential binding is observed. This titer is referred to herein as a “discriminating titer”. Such differential staining may be observed between different tissue samples and/or between different cell types within a given tissue sample.


In general, any tissue sample may be used for this purpose (e.g., samples obtained from the epididymis, esophagus, gall bladder, kidneys, liver, lungs, lymph nodes, muscles, ovaries, pancreas, parathyroid glands, placenta, prostate, saliva, skin, spleen, stomach, testis, thymus, thyroid, tonsils, uterus, etc.). For such titration studies, greater diversity among samples is often preferred. Without intending to limit the present invention, the inventors observe that useful titers for particular interaction partners can typically be defined in a study of approximately 40-70 different tissue samples from about 20-40 different tissues.


Binding studies (for titration, for assessment of inclusion in a panel, or during use of a panel) may be performed in any format that allows specific interaction to be detected. Where large numbers of samples are to be handled, it may be desirable to utilize arrayed and/or automated formats. Particularly preferred formats include tissue arrays as discussed above. The staining of large numbers of samples derived from a variety of tumors in a tissue array format allows excellent comparative assessment of differential staining between or among samples under identical conditions. According to the present invention, staining patterns that identify at least about 10% of samples as binding with a particular interaction partner, or at least about 20, 30, 40, 50% or more of samples, are likely to represent “real” differential staining patterns (i.e., real variations in binding with interaction partner and not experimental variations, for example, due to sample processing or day to day variation in staining techniques).


Any available technique may be used to detect binding between an interaction partner and a tumor sample. One powerful and commonly used technique is to have a detectable label associated (directly or indirectly) with the interaction partner. For example, commonly-used labels that often are associated with antibodies used in binding studies include fluorochromes, enzymes, gold, iodine, etc. Tissue staining by bound interaction partners is then assessed, preferably by a trained pathologist or cytotechnologist. For example, a scoring system may be utilized to designate whether the interaction partner does or does not bind to (e.g., stain) the sample, whether it stains the sample strongly or weakly and/or whether useful information could not be obtained (e.g., because the sample was lost, there was no tumor in the sample or the result was otherwise ambiguous). Those of ordinary skill in the art will recognize that the precise characteristics of the scoring system are not critical to the invention. For example, staining may be assessed qualitatively or quantitatively; more or less subtle gradations of staining may be defined; etc.


Whatever the format, and whatever the detection strategy, identification of a discriminating titer can simplify binding studies to assess the desirability of including a given interaction partner in a panel. In such studies, the interaction partner is contacted with a plurality of different tumor samples that preferably have at least one common trait (e.g., tissue of origin), and often have multiple common traits (e.g., tissue of origin, stage, microscopic characteristics, etc.). In some cases, it will be desirable to select a group of samples with at least one common trait and at least one different trait, so that a panel of interaction partners is defined that distinguishes the different trait. In other cases, it will be desirable to select a group of samples with no detectable different traits, so that a panel of interaction partners is defined that distinguishes among previously indistinguishable samples. Those of ordinary skill in the art will understand, however, that the present invention often will allow both of these goals to be accomplished even in studies of sample collections with varying degrees of similarity and difference.


According to the present invention, interaction partners that bind to tumor samples may be characterized by their ability to discriminate among tumor samples. Any of a variety of techniques may be used to identify discriminating interaction partners. To give but one example, the present inventors have found it useful to define a “consensus panel” of tissue samples for tumors of a particular tissue of origin (see Examples 2-6). Those of ordinary skill in the art will again appreciate that the precise parameters used to designate a particular sample as interpretable and reproducible are not critical to the invention. Interaction partners may then be classified based on their ability to discriminate among tissue samples in the consensus panel (see Examples 2-6).


Assessing Prognosis or Therapeutic Regimen


The present invention further provides systems for identifying panels of interaction partners whose binding correlates with factors beyond tumor class or subclass, such as likelihood of a particular favorable or unfavorable outcome, susceptibility (or lack thereof) to a particular therapeutic regimen, etc.


As mentioned in the background, current approaches to assigning prognostic probabilities and/or selecting appropriate therapeutic regimens for particular tumors generally utilize the tumor-node-metastasis (TNM) system. This system uses the size of the tumor, the presence or absence of tumor in regional lymph nodes and the presence or absence of distant metastases, to assign a stage to the tumor. The assigned stage is used as a basis for selection of appropriate therapy and for prognostic purposes.


The present invention provides new methods and systems for evaluating tumor prognosis and/or recommended therapeutic approaches. In particular, the present invention provides systems for identifying panels of interaction partners whose binding correlates with tumor prognosis or therapeutic outcome.


For example, interaction partners whose binding correlates with prognosis can be identified by evaluating their binding to a collection of tumor samples for which prognosis is known or knowable. That is, the strategies of the invention may be employed either to identify collections of interaction partners whose binding correlates with a known outcome, or may be employed to identify a differential staining pattern that is then correlated with outcome (which outcome may either be known in advance or determined over time).


In general, it is preferred that inventive binding analyses be performed on human tumor samples. However, it is not necessary that the human tumors grow in a human host. Particularly for studies in which long-term outcome data are of interest (especially prognostic or predictive studies), it can be particularly useful to analyze samples grown in vitro (e.g., cell lines) or, more preferably, in a non-human host (e.g., a rodent, a dog, a sheep, a pig, or other animal). For instance, Example 9 provides a description of an assay in which inventive techniques employing human tumor cells growing in a non-human host are employed to define and/or utilize a panel of interaction partners whose binding to tumor samples correlates with prognosis and/or responsiveness to therapy.


It will often be desirable, when identifying interaction partners whose binding correlates with prognosis, to collect information about treatment regimens that may have been applied to the tumor whose sample is being assessed, in order to control for effects attributable to tumor therapy. Prognostic panel binding may correlate with outcome independent of treatment (Hayes et al., J. Mamm. Gland Bio. Neo. 6:375, 2001). Many prognostic markers, however, have both prognostic and predictive character (e.g., Her2/Neu status). Many of the individual interaction partners that comprise a prognostic panel may likewise have predictive capability and/or be members of a predictive panel.


Those of ordinary skill in the art will appreciate that prognostic panels (or individual interaction partners) have greater clinical utility if their binding/lack thereof correlates with positive/negative outcomes that are well separated statistically.


The inventive strategies may also be applied to the identification of predictive panels of interaction partners (i.e., panels whose binding correlates with susceptibility to a particular therapy). As noted above, some prognostic panels may also have predictive capabilities.


Interaction partners to be included in predictive panels are identified in binding studies performed on tumor samples that do or do not respond to a particular therapy. As with the prognostic panels, predictive panels may be assembled based on tests of tumor samples whose responsiveness is already known, or on samples whose responsiveness is not known in advance. As with the prognostic studies discussed above, the source of the tumor samples is not essential and can include, for example, tumor cell lines whose responsiveness to particular chemical agents has been determined, tumor samples from animal models in which tumors have been artificially introduced and therapeutic responsiveness has been determined and/or samples from naturally-occurring (human or other animal) tumors for which outcome data (e.g., time of survival, responsiveness to therapy, etc.) are available. Panels of interaction partners whose binding to tumor samples correlates with any prognostic or therapeutic trend can be defined and utilized as described herein.


Once correlations between interaction partner binding and tumor behavior have been established, the defined prognostic or predictive panels can be used to evaluate and classify tumor samples from patients and can be relied upon, for example to guide selection of an effective therapeutic regimen. As with the tumor classification studies described above, the process of identifying interaction partner panels whose binding correlates with outcome may itself identify particular outcomes not previously appreciated as distinct.


Those of ordinary skill in the art will appreciate that it is likely that, in at least some instances, tumor class or subclass identity will itself correlate with prognosis or responsiveness. In such circumstances, it is possible that the same set of interaction partners can act as both a classification panel and a prognosis or predictive panel.


Tumor Elements Bound by Interaction Partners


The inventive strategies for identifying and utilizing interaction partner panels in classifying or analyzing tumor samples do not rely on any assumptions about the identity or characteristics of the tumor components bound by the interaction partners. So long as interaction partner binding within the relevant panel correlates with some feature of interest, the inventive teachings apply. In many if not most, cases, however, it is expected that binding will be with a protein expressed by tumor cells.


In some preferred embodiments of the invention, interaction partners bind to tumor markers that (a) are differentially expressed in tumor cells; (b) are members of protein families whose activities contribute to relevant biological events (e.g., gene families that have been implicated in cancer such as oncogenes, tumor suppressor genes, and genes that regulate apoptosis; gene families that have been implicated in drug resistance; etc.); (c) are present on or in the plasma membrane of the tumor cells; and/or (d) are the products of degradation of tumor components, which degradation products might be detectable in patient serum.


In fact, according to the present invention, interaction partners for analysis and use in inventive panels may sometimes be identified by first identifying a tumor-associated protein of interest, and then finding a potential interaction partner that binds with the protein. Binding by this potential interaction partner to tumor samples may then be assessed and utilized as described herein.


For example, as described in the Examples, the present inventors have successfully assembled classification panels comprised of antibodies that bind to tumor protein antigens. Candidate antigens were identified both through literature reviews of proteins that play a biological role in tumor initiation or progression, or that are known to be differentially expressed in tumors, and through gene expression studies that identified additional differentially expressed proteins.


Work by the present inventors, as well as by others, has already demonstrated that studies of gene expression patterns in large tumor cohorts can identify novel tumor classes (see, for example, Perou et al., Nature 406:747, 2000; Sorlie et al., Proc Natl Acad. Sci. USA 98:10869, 2001; van't Veer et al., Nature 415:530, 2002; West et al., Proc Natl. Acad. Sci. USA 98:11462, 2001; Hedenfalk et al., N. Engl. J. Med. 344:539, 2001; Gruvberger et al., Cancer Res. 61:5979, 2001; MacDonald et al., Nature Genet. 29:143, 2001; Pomeroy et al., Nature 415:436, 2002; Jazaeri et al., J. Natl Cancer Inst 94:990, 2002; Welsh et al., Proc. Natl. Acad. Sci. USA 98:1176, 2001; Wang et al., Gene 229:101, 1999; Beer et al., Nature Med. 8:816, 2002; Garber et al., Proc Natl Acad Sci USA 98:13784, 2001; Bhattacharjee et al., Proc Natl Acad Sci USA 98:13790, 2001; Zou et al., Oncogene 21:4855, 2002; Lin et al., Oncogene 21:4120, 2002; Alon et al., Proc Natl Acad Sci USA 96:6745, 1999; Takahashi et al., Proc Natl Acad Sci USA 98:9754, 2001; Singh et al., Cancer Cell 1:203, 2002; LaTulippe et al., Cancer Res. 62:4499, 2002; Welsh et al., Cancer Res. 61:5974, 2001; Dhanasekaran et al., Nature 412:822, 2001; Hippo et al., Cancer Res. 62:233, 2002; Yeoh et al., Cancer Cell 1:133, 2002; Hofmann et al., Lancet 359:481, 2002; Ferrando et al., Cancer Cell 1:75, 2002; Shipp et al., Nature Med 8:68, 2002; Rosenwald et al., N. Engl. J. Med. 346:1937, 2002; and Alizadeh et al., Nature 403:503, 2000, each of which is incorporated herein by reference).


The gene sets described in these publications are promising candidates for genes that are likely to encode tumor markers whose interaction partners are useful in tumor classification and subclassification according to the present invention. Of particular interest are gene sets differentially expressed in solid tumors.


Furthermore, in general, given that differentially expressed genes are likely to be responsible for the different phenotypic characteristics of tumors, the present invention recognizes that such genes will often encode tumor markers for which a useful interaction partner, that discriminates among tumor classes or subclasses, can likely be prepared. A differentially expressed gene is a gene whose transcript abundance varies between different samples, e.g., between different tumor samples, between normal versus tumor samples, etc. In general, the amount by which the expression varies and the number of samples in which the expression varies by that amount will depend upon the number of samples and the particular characteristics of the samples. One skilled in the art will be able to determine, based on knowledge of the samples, what constitutes a significant degree of differential expression. Such genes can be identified by any of a variety of techniques including, for instance, in situ hybridization, Northern blot, nucleic acid amplification techniques (e.g., PCR, quantitative PCR, the ligase chain reaction, etc.), and, most commonly, microarray analysis.


Furthermore, those of ordinary skill in the art will readily appreciate, reading the present disclosure, that the inventive processes described herein of identifying and/or using sets of interaction partners whose binding (or lack thereof) correlates with an interesting tumor feature (e.g., tumor type or subtype, patient outcome, responsiveness of tumor or patient to therapy, etc.) inherently identifies both interaction partners of interest and the tumor markers to which they bind. Thus, one important aspect of the present invention is the identification of tumor markers whose ability (or lack thereof) to associate with an interaction partner correlates with a tumor characteristic of interest. Such tumor markers are useful as targets for identification of new therapeutic reagents, as well as of additional interaction partners useful in the practice of the present invention. Thus, it is to be understood that discussions of interaction partners presented herein are typically not limited to a particular interaction partner compound or entity, but may be generalized to include any compound or entity that binds to the relevant tumor marker(s) with requisite specificity and affinity.


Preparation of Interaction Partners


In general, interaction partners are entities that physically associate with selected tumor markers. Thus, any entity that binds detectably to a tumor marker may be utilized as an interaction partner in accordance with the present invention, so long as it binds with an appropriate combination of affinity and specificity.


Particularly preferred interaction partners are antibodies, or fragments (e.g., F(ab) fragments, F(ab′)2 fragments, Fv fragments, or sFv fragments, etc.; see, for example, Inbar et al., Proc. Nat. Acad. Sci. USA 69:2659, 1972; Hochman et al., Biochem. 15:2706, 1976; and Ehrlich et al., Biochem. 19:4091, 1980; Huston et al., Proc. Nat. Acad. Sci. USA 85:5879, 1998; U.S. Pat. Nos. 5,091,513 and 5,132,405 to Huston et al.; and U.S. Pat. No. 4,946,778 to Ladner et al., each of which is incorporated herein by reference). In certain embodiments, interaction partners may be selected from libraries of mutant antibodies (or fragments thereof). For example, collections of antibodies that each include different point mutations may be screened for their association with a tumor marker of interest. Yet further, chimeric antibodies may be used as interaction partners, e.g., “humanized” or “veneered” antibodies as described in greater detail below.


It is to be understood that the present invention is not limited to using antibodies or antibody fragments as interaction partners of inventive tumor markers. In particular, the present invention also encompasses the use of synthetic interaction partners that mimic the functions of antibodies. Several approaches to designing and/or identifying antibody mimics have been proposed and demonstrated (e.g., see the reviews by Hsieh-Wilson et al., Acc. Chem. Res. 29:164, 2000 and Peczuh and Hamilton, Chem. Rev. 100:2479, 2000). For example, small molecules that bind protein surfaces in a fashion similar to that of natural proteins have been identified by screening synthetic libraries of small molecules or natural product isolates (e.g., see Gallop et al., J. Med. Chem. 37:1233, 1994; Gordon et al., J. Med. Chem. 37:1385, 1994; DeWitt et al., Proc. Natl. Acad. Sci. U.S.A. 90:6909, 1993; Bunin et al., Proc. Natl. Acad. Sci. USA. 91:4708, 1994; Virgilio and Ellman, J. Am. Chem. Soc. 116:11580, 1994; Wang et al., J. Med. Chem. 38:2995, 1995; and Kick and Ellman, J. Med. Chem. 38:1427, 1995). Similarly, combinatorial approaches have been successfully applied to screen libraries of peptides and polypeptides for their ability to bind a range of proteins (e.g., see Cull et al., Proc. Natl. Acad. Sci. USA. 89:1865, 1992; Mattheakis et al., Proc. Natl. Acad. Sci. U.S.A. 91:9022, 1994; Scott and Smith, Science 249:386, 1990; Devlin et al., Science 249:404, 1990; Corey et al., Gene 128:129, 1993; Bray et al., Tetrahedron Lett. 31:5811, 1990; Fodor et al., Science 251:767, 1991; Houghten et al., Nature 354:84, 1991; Lam et al., Nature 354:82, 1991; Blake and Litzi-Davis, Bioconjugate Chem. 3:510, 1992; Needels et al., Proc. Natl. Acad. Sci. USA. 90:10700, 1993; and Ohlmeyer et al., Proc. Natl. Acad. Sci. U.S.A. 90:10922, 1993). Similar approaches have also been used to study carbohydrate-protein interactions (e.g., see Oldenburg et al., Proc. Natl. Acad. Sci. U.S.A. 89:5393, 1992) and polynucleotide-protein interactions (e.g., see Ellington and Szostak, Nature 346:818, 1990 and Tuerk and Gold, Science 249:505, 1990). These approaches have also been extended to study interactions between proteins and unnatural biopolymers such as oligocarbamates, oligoureas, oligosulfones, etc. (e.g., see Zuckermann et al., J. Am. Chem. Soc. 114:10646, 1992; Simon et al., Proc. Natl. Acad. Sci. USA. 89:9367, 1992; Zuckermann et al., J. Med. Chem. 37:2678, 1994; Burgess et al., Angew. Chem., Int. Ed. Engl. 34:907, 1995; and Cho et al., Science 261:1303, 1993). Yet further, alternative protein scaffolds that are loosely based around the basic fold of antibody molecules have been suggested and may be used in the preparation of inventive interaction partners (e.g., see Ku and Schultz Proc. Natl. Acad. Sci. USA. 92:6552, 1995). Antibody mimics comprising a scaffold of a small molecule such as 3-aminomethylbenzoic acid and a substituent consisting of a single peptide loop have also been constructed. The peptide loop performs the binding function in these mimics (e.g., see Smythe et al., J. Am. Chem. Soc. 116:2725, 1994). A synthetic antibody mimic comprising multiple peptide loops built around a calixarene unit has also been described (e.g., see U.S. Pat. No. 5,770,380 to Hamilton et al.).


Detecting Association of Interaction Partners and Tumor Markers


Any available strategy or system may be utilized to detect association between an interaction partner and its cognate tumor marker. In certain embodiments, association can be detected by adding a detectable label to the interaction partner. In other embodiments, association can be detected by using a labeled secondary interaction partner that associates specifically with the primary interaction partner, e.g., as is well known in the art of antigen/antibody detection. The detectable label may be directly detectable or indirectly detectable, e.g., through combined action with one or more additional members of a signal producing system. Examples of directly detectable labels include radioactive, paramagnetic, fluorescent, light scattering, absorptive and colorimetric labels. Examples of indirectly detectable include chemiluminescent labels, e.g., enzymes that are capable of converting a substrate to a chromogenic product such as alkaline phosphatase, horseradish peroxidase and the like.


Once a labeled interaction partner has bound a tumor marker, the complex may be visualized or detected in a variety of ways, with the particular manner of detection being chosen based on the particular detectable label, where representative detection means include, e.g., scintillation counting, autoradiography, measurement of paramagnetism, fluorescence measurement, light absorption measurement, measurement of light scattering and the like.


In general, association between an interaction partner and its cognate tumor marker may be assayed by contacting the interaction partner with a tumor sample that includes the marker. Depending upon the nature of the sample, appropriate methods include, but are not limited to, immunohistochemistry (IHC), radioimmunoassay, ELISA, immunoblotting and fluorescence activates cell sorting (FACS). In the case where the polypeptide is to be detected in a tissue sample, e.g., a biopsy sample, IHC is a particularly appropriate detection method. Techniques for obtaining tissue and cell samples and performing IHC and FACS are well known in the art.


The inventive strategies for classifying and/or subclassifying tumor samples may be applied to samples of any type and of any tissue of origin. In certain preferred embodiments of the invention, the strategies are applied to solid tumors. Historically, researchers have encountered difficulty in defining solid tumor subtypes, given the challenges associated with defining their molecular characteristics. As demonstrated in the Examples, the present invention is particularly beneficial in this area. Particularly preferred solid tumors include, for example, breast, lung, colon, and ovarian tumors. The invention also encompasses the recognition that tumor markers that are secreted from the cells in which they are produced may be present in serum, enabling their detection through a blood test rather than requiring a biopsy specimen. An interaction partner that binds to such tumor markers represents a particularly preferred embodiment of the invention.


In general, the results of such an assay can be presented in any of a variety of formats. The results can be presented in a qualitative fashion. For example, the test report may indicate only whether or not a particular tumor marker was detected, perhaps also with an indication of the limits of detection. Additionally the test report may indicate the subcellular location of binding, e.g., nuclear versus cytoplasmic and/or the relative levels of binding in these different subcellular locations. The results may be presented in a semi-quantitative fashion. For example, various ranges may be defined and the ranges may be assigned a score (e.g., 0 to 5) that provides a certain degree of quantitative information. Such a score may reflect various factors, e.g., the number of cells in which the tumor marker is detected, the intensity of the signal (which may indicate the level of expression of the tumor marker), etc. The results may be presented in a quantitative fashion, e.g., as a percentage of cells in which the tumor marker is detected, as a concentration, etc. As will be appreciated by one of ordinary skill in the art, the type of output provided by a test will vary depending upon the technical limitations of the test and the biological significance associated with detection of the tumor marker. For example, in the case of certain tumor markers a purely qualitative output (e.g., whether or not the tumor marker is detected at a certain detection level) provides significant information. In other cases a more quantitative output (e.g., a ratio of the level of expression of the tumor marker in two samples) is necessary.


Identification of Novel Therapies


Predictive panels of interaction agents are useful according to the present invention not only to classify tumor samples obtained from cancer sufferers with respect to their likely responsiveness to known therapies, but also to identify potential new therapies or therapeutic agents that could be useful in the treatment of cancer.


For example, as noted above, the process of identifying or using inventive panels according to the present invention simultaneously identifies and/or characterizes tumor markers in or on the tumor cells that correlate with one or more selected tumor characteristics (e.g., tumor type or subtype, patient prognosis, and/or responsiveness of tumor or patient to therapy). Such tumor markers are attractive candidates for identification of new therapeutic agents (e.g., via screens to detect compounds or entities that bind to the tumor markers, preferably with at least a specified affinity and/or specificity, and/or via screens to detect compounds or entities that modulate (i.e., increase or decrease) expression, localization, modification, or activity of the tumor markers. In many instances, interaction partners themselves may prove to be useful therapeutics.


Thus the present invention provides interaction partners that are themselves useful therapeutic agents. For example, binding by an interaction partner, or a collection of interaction partners, to a cancer cell, might inhibit growth of that cell. Alternatively or additionally, interaction partners defined or prepared according to the present invention could be used to deliver a therapeutic agent to a cancer cell. In particular, interaction partners may be coupled to one or more therapeutic agents. Suitable agents in this regard include radionuclides and drugs. Preferred radionuclides include 90Y, 123I, 125I, 131I, 186Re, 188Re, 211At and 212Bi. Preferred drugs include chlorambucil, ifosphamide, meclorethamine, cyclophosphamide, carboplatin, cisplatin, procarbazine, decarbazine, carmustine, cytarabine, hydroxyurea, mercaptopurine, methotrexate, thioguanine, 5-fluorouracil, actinomycin D, bleomycin, daunorubicin, doxorubicin, etoposide, vinblastine, vincristine, L-asparginase, adrenocorticosteroids, canciclovir triphosphate, adenine arabinonucleoside triphosphate, 5-aziridinyl-4-hydroxylamino-2-nitrobenzamide, acrolein, phosphoramide mustard, 6-methylpurine, etoposide, methotrexate, benzoic acid mustard, cyanide and nitrogen mustard.


According to such embodiments, the therapeutic agent may be coupled with an interaction partner by direct or indirect covalent or non-covalent interactions. A direct interaction between a therapeutic agent and an interaction partner is possible when each possesses a substituent capable of reacting with the other. For example, a nucleophilic group, such as an amino or sulfhydryl group, on one may be capable of reacting with a carbonyl-containing group, such as an anhydride or an acid halide, or with an alkyl group containing a good leaving group (e.g., a halide) on the other. Indirect interactions might involve a linker group that is itself associated with both the therapeutic agent and the interaction partner. A linker group can function as a spacer to distance an interaction partner from an agent in order to avoid interference with association capabilities. A linker group can also serve to increase the chemical reactivity of a substituent on an agent or an interaction partner and thus increase the coupling efficiency. An increase in chemical reactivity may also facilitate the use of agents, or functional groups on agents, which otherwise would not be possible.


It will be evident to those skilled in the art that a variety of bifunctional or polyfunctional reagents, both homo- and hetero-functional (such as those described in the catalog of the Pierce Chemical Co., Rockford, Ill.), may be employed as the linker group. Coupling may be effected, for example, through amino groups, carboxyl groups, sulfydryl groups or oxidized carbohydrate residues. There are numerous references describing such methodology, e.g., U.S. Pat. No. 4,671,958, to Rodwell et al. It will further be appreciated that a therapeutic agent and an interaction partner may be coupled via non-covalent interactions, e.g., ligand/receptor type interactions. Any ligand/receptor pair with a sufficient stability and specificity to operate in the context of the invention may be employed to couple a therapeutic agent and an interaction partner. To give but an example, a therapeutic agent may be covalently linked with biotin and an interaction partner with avidin. The strong non-covalent binding of biotin to avidin would then allow for coupling of the therapeutic agent and the interaction partner. Typical ligand/receptor pairs include protein/co-factor and enzyme/substrate pairs. Besides the commonly used biotin/avidin pair, these include without limitation, biotin/streptavidin, digoxigenin/anti-digoxigenin, FK506/FK506-binding protein (FKBP), rapamycin/FKBP, cyclophilin/cyclosporin and glutathione/glutathione transferase pairs. Other suitable ligand/receptor pairs would be recognized by those skilled in the art, e.g., monoclonal antibodies paired with a epitope tag such as, without limitation, glutathione-5-transferase (GST), c-myc, FLAG® and maltose binding protein (MBP) and further those described in Kessler pp. 105-152 of Advances in Mutagenesis” Ed. by Kessler, Springer-Verlag, 1990; “Affinity Chromatography: Methods and Protocols (Methods in Molecular Biology)” Ed. by Pascal Baillon, Humana Press, 2000; and “Immobilized Affinity Ligand Techniques” by Hermanson et al., Academic Press, 1992.


Where a therapeutic agent is more potent when free from the interaction partner, it may be desirable to use a linker group which is cleavable during or upon internalization into a cell. A number of different cleavable linker groups have been described. The mechanisms for the intracellular release of an agent from these linker groups include cleavage by reduction of a disulfide bond (e.g., U.S. Pat. No. 4,489,710 to Spitler), by irradiation of a photolabile bond (e.g., U.S. Pat. No. 4,625,014 to Senter et al.), by hydrolysis of derivatized amino acid side chains (e.g., U.S. Pat. No. 4,638,045 to Kohn et al.), by serum complement-mediated hydrolysis (e.g., U.S. Pat. No. 4,671,958 to Rodwell et al.) and by acid-catalyzed hydrolysis (e.g., U.S. Pat. No. 4,569,789 to Blattler et al.).


In certain embodiments, it may be desirable to couple more than one therapeutic agent to an interaction partner. In one embodiment, multiple molecules of an agent are coupled to one interaction partner molecule. In another embodiment, more than one type of therapeutic agent may be coupled to one interaction partner molecule. Regardless of the particular embodiment, preparations with more than one agent may be prepared in a variety of ways. For example, more than one agent may be coupled directly to an interaction partner molecule, or linkers that provide multiple sites for attachment can be used.


Alternatively, a carrier can be used. A carrier may bear the agents in a variety of ways, including covalent bonding either directly or via a linker group. Suitable carriers include proteins such as albumins (e.g., U.S. Pat. No. 4,507,234 to Kato et al.), peptides, and polysaccharides such as aminodextran (e.g., U.S. Pat. No. 4,699,784 to Shih et al.). A carrier may also bear an agent by non-covalent bonding or by encapsulation, such as within a liposome vesicle (e.g., U.S. Pat. No. 4,429,008 to Martin et al. and U.S. Pat. No. 4,873,088 to Mayhew et al.). Carriers specific for radionuclide agents include radiohalogenated small molecules and chelating compounds. For example, U.S. Pat. No. 4,735,792 to Srivastava discloses representative radiohalogenated small molecules and their synthesis. A radionuclide chelate may be formed from chelating compounds that include those containing nitrogen and sulfur atoms as the donor atoms for binding the metal, or metal oxide, radionuclide. For example, U.S. Pat. No. 4,673,562 to Davison et al. discloses representative chelating compounds and their synthesis.


When interaction partners are themselves therapeutics, it will be understood that, in many cases, any interaction partner that binds with the same tumor marker may be so used.


In one preferred embodiment of the invention, the therapeutic agents (whether interaction partners or otherwise) are antibodies. As is well known in the art, when using an antibody or fragment thereof for therapeutic purposes it may prove advantageous to use a “humanized” or “veneered” version of an antibody of interest to reduce any potential immunogenic reaction. In general, “humanized” or “veneered” antibody molecules and fragments thereof minimize unwanted immunological responses toward antihuman antibody molecules which can limit the duration and effectiveness of therapeutic applications of those moieties in human recipients.


A number of “humanized” antibody molecules comprising an antigen binding portion derived from a non-human immunoglobulin have been described in the art, including chimeric antibodies having rodent variable regions and their associated complementarity-determining regions (CDRs) fused to human constant domains (e.g., see Winter et al., Nature 349:293, 1991; Lobuglio et al., Proc. Nat. Acad. Sci. USA 86:4220, 1989; Shaw et al., J. Immunol. 138:4534, 1987; and Brown et al., Cancer Res. 47:3577, 1987), rodent CDRs grafted into a human supporting framework region (FR) prior to fusion with an appropriate human antibody constant domain (e.g., see Riechmann et al., Nature 332:323, 1988; Verhoeyen et al., Science 239:1534, 1988; and Jones et al. Nature 321:522, 1986) and rodent CDRs supported by recombinantly veneered rodent FRs (e.g., see European Patent Publication No. 519,596, published Dec. 23, 1992). It is to be understood that the invention also encompasses “fully human” antibodies produced using the XenoMouse™ technology (AbGenix Corp., Fremont, Calif.) according to the techniques described in U.S. Pat. No. 6,075,181.


Yet further, so-called “veneered” antibodies may be used that include “veneered FRs”. The process of veneering involves selectively replacing FR residues from, e.g., a murine heavy or light chain variable region, with human FR residues in order to provide a xenogeneic molecule comprising an antigen binding portion which retains substantially all of the native FR polypeptide folding structure. Veneering techniques are based on the understanding that the antigen binding characteristics of an antigen binding portion are determined primarily by the structure and relative disposition of the heavy and light chain CDR sets within the antigen-association surface (e.g., see Davies et al., Ann. Rev. Biochem. 59:439, 1990). Thus, antigen association specificity can be preserved in a humanized antibody only wherein the CDR structures, their interaction with each other and their interaction with the rest of the variable region domains are carefully maintained. By using veneering techniques, exterior (e.g., solvent-accessible) FR residues which are readily encountered by the immune system are selectively replaced with human residues to provide a hybrid molecule that comprises either a weakly immunogenic, or substantially non-immunogenic veneered surface.


Preferably, interaction partners suitable for use as therapeutics (or therapeutic agent carriers) exhibit high specificity for the target tumor marker and low background binding to other tumor markers. In certain embodiments, monoclonal antibodies are preferred for therapeutic purposes.


Tumor markers that are expressed on the cell surface represent preferred targets for the development of therapeutic agents, particularly therapeutic antibodies. For example, cell surface proteins can be tentatively identified using sequence analysis based on the presence of a predicted transmembrane domain. Their presence on the cell surface can ultimately be confirmed using IHC.


Kits


Useful sets or panels of interaction partners according to the present invention may be prepared and packaged together in kits for use in classifying, diagnosing, or otherwise characterizing tumor samples, or for inhibiting tumor cell growth or otherwise treating cancer.


Any available technique may be utilized in the preparation of individual interaction partners for inclusion in kits. For example, protein or polypeptide interaction partners may be produced by cells (e.g., recombinantly or otherwise), may be chemically synthesized, or may be otherwise generated in vitro (e.g., via in vitro transcription and/or translation). Non-protein or polypeptide interaction partners (e.g., small molecules, etc.) may be synthesized, may be isolated from within or around cells that produce them, or may be otherwise generated.


When antibodies are used as interaction partners, these may be prepared by any of a variety of techniques known to those of ordinary skill in the art (e.g., see Harlow and Lane, Antibodies: A Laboratory Manual, Cold Spring Harbor Laboratory, 1988). For example, antibodies can be produced by cell culture techniques, including the generation of monoclonal antibodies, or via transfection of antibody genes into suitable bacterial or mammalian cell hosts, in order to allow for the production of recombinant antibodies. In one technique, an “immunogen” comprising an antigenic portion of a tumor marker of interest (or the tumor marker itself) is initially injected into any of a wide variety of mammals (e.g., mice, rats, rabbits, sheep or goats). In this step, a tumor marker (or an antigenic portion thereof) may serve as the immunogen without modification. Alternatively, particularly for relatively short tumor markers, a superior immune response may be elicited if the tumor marker is joined to a carrier protein, such as bovine serum albumin or keyhole limpet hemocyanin (KLH). The immunogen is injected into the animal host, preferably according to a predetermined schedule incorporating one or more booster immunizations and the animals are bled periodically. Polyclonal antibodies specific for the tumor marker may then be purified from such antisera by, for example, affinity chromatography using the tumor marker (or an antigenic portion thereof) coupled to a suitable solid support. An exemplary method is described in Example 7.


If desired for diagnostic or therapeutic kits, monoclonal antibodies specific for a tumor marker of interest may be prepared, for example, using the technique of Kohler and Milstein, Eur. J. Immunol. 6:511, 1976 and improvements thereto. Briefly, these methods involve the preparation of immortal cell lines capable of producing antibodies having the desired specificity (i.e., reactivity with the tumor marker of interest). Such cell lines may be produced, for example, from spleen cells obtained from an animal immunized as described above. The spleen cells are then immortalized by, for example, fusion with a myeloma cell fusion partner, preferably one that is syngeneic with the immunized animal. A variety of fusion techniques may be employed. For example, the spleen cells and myeloma cells may be combined with a nonionic detergent for a few minutes and then plated at low density on a selective medium that supports the growth of hybrid cells, but not myeloma cells. A preferred selection technique uses HAT (hypoxanthine, aminopterin, thymidine) selection. After a sufficient time, usually about 1 to 2 weeks, colonies of hybrids are observed. Single colonies are selected and their culture supernatants tested for binding activity against the tumor marker. Hybridomas having high reactivity and specificity are preferred.


Monoclonal antibodies may be isolated from the supernatants of growing hybridoma colonies. In addition, various techniques may be employed to enhance the yield, such as injection of the hybridoma cell line into the peritoneal cavity of a suitable vertebrate host, such as a mouse. Monoclonal antibodies may then be harvested from the ascites fluid or the blood. Contaminants may be removed from the antibodies by conventional techniques, such as chromatography, gel filtration, precipitation and extraction. The tumor marker of interest may be used in the purification process in, for example, an affinity chromatography step.


In addition to inventive interaction partners, preferred kits for use in accordance with the present invention may include, a reference sample, instructions for processing samples, performing the test, instructions for interpreting the results, buffers and/or other reagents necessary for performing the test. In certain embodiments the kit can comprise a panel of antibodies.


Pharmaceutical Compositions


As mentioned above, the present invention provides new therapies and methods for identifying these. In certain embodiments, an interaction partner may be a useful therapeutic agent. Alternatively or additionally, interaction partners defined or prepared according to the present invention bind to tumor markers that serve as targets for therapeutic agents. Also, inventive interaction partners may be used to deliver a therapeutic agent to a cancer cell. For example, interaction partners provided in accordance with the present invention may be coupled to one or more therapeutic agents.


In addition, as mentioned above, to the extent that a particular predictive panel correlates with responsiveness to a particular therapy because it detects changes that reflect inhibition (or inhibitability) of cancer cell growth, that panel could be used to evaluate therapeutic candidates (e.g., small molecule drugs) for their ability to induce the same or similar changes in different cells. In particular, binding by the panel could be assessed on cancer cells before and after exposure to candidate therapeutics; those candidates that induce expression of the tumor markers to which the panel binds are then identified.


The invention includes pharmaceutical compositions comprising these inventive therapeutic agents. In general, a pharmaceutical composition will include a therapeutic agent in addition to one or more inactive agents such as a sterile, biocompatible carrier including, but not limited to, sterile water, saline, buffered saline, or dextrose solution. The pharmaceutical compositions may be administered either alone or in combination with other therapeutic agents including other chemotherapeutic agents, hormones, vaccines and/or radiation therapy. By “in combination with”, it is not intended to imply that the agents must be administered at the same time or formulated for delivery together, although these methods of delivery are within the scope of the invention. In general, each agent will be administered at a dose and on a time schedule determined for that agent. Additionally, the invention encompasses the delivery of the inventive pharmaceutical compositions in combination with agents that may improve their bioavailability, reduce or modify their metabolism, inhibit their excretion, or modify their distribution within the body. The invention encompasses treating cancer by administering the pharmaceutical compositions of the invention. Although the pharmaceutical compositions of the present invention can be used for treatment of any subject (e.g., any animal) in need thereof, they are most preferably used in the treatment of humans.


The pharmaceutical compositions of this invention can be administered to humans and other animals by a variety of routes including oral, intravenous, intramuscular, intra-arterial, subcutaneous, intraventricular, transdermal, rectal, intravaginal, intraperitoneal, topical (as by powders, ointments, or drops), bucal, or as an oral or nasal spray or aerosol. In general the most appropriate route of administration will depend upon a variety of factors including the nature of the agent (e.g., its stability in the environment of the gastrointestinal tract), the condition of the patient (e.g., whether the patient is able to tolerate oral administration), etc. At present the intravenous route is most commonly used to deliver therapeutic antibodies. However, the invention encompasses the delivery of the inventive pharmaceutical composition by any appropriate route taking into consideration likely advances in the sciences of drug delivery.


General considerations in the formulation and manufacture of pharmaceutical agents may be found, for example, in Remington's Pharmaceutical Sciences, 19th ed., Mack Publishing Co., Easton, Pa., 1995.


According to the methods of treatment of the present invention, cancer is treated or prevented in a patient such as a human or other mammal by administering to the patient a therapeutically effective amount of a therapeutic agent of the invention, in such amounts and for such time as is necessary to achieve the desired result. By a “therapeutically effective amount” of a therapeutic agent of the invention is meant a sufficient amount of the therapeutic agent to treat (e.g., to ameliorate the symptoms of, delay progression of, prevent recurrence of, cure, etc.) cancer at a reasonable benefit/risk ratio, which involves a balancing of the efficacy and toxicity of the therapeutic agent. In general, therapeutic efficacy and toxicity may be determined by standard pharmacological procedures in cell cultures or with experimental animals, e.g., by calculating the ED50 (the dose that is therapeutically effective in 50% of the treated subjects) and the LD50 (the dose that is lethal to 50% of treated subjects). The ED50/LD50 represents the therapeutic index of the agent. Although in general therapeutic agents having a large therapeutic index are preferred, as is well known in the art, a smaller therapeutic index may be acceptable in the case of a serious disease, particularly in the absence of alternative therapeutic options. Ultimate selection of an appropriate range of doses for administration to humans is determined in the course of clinical trials.


It will be understood that the total daily usage of the therapeutic agents and compositions of the present invention for any given patient will be decided by the attending physician within the scope of sound medical judgment. The specific therapeutically effective dose level for any particular patient will depend upon a variety of factors including the disorder being treated and the severity of the disorder; the activity of the specific therapeutic agent employed; the specific composition employed; the age, body weight, general health, sex and diet of the patient; the time of administration, route of administration and rate of excretion of the specific therapeutic agent employed; the duration of the treatment; drugs used in combination or coincidental with the specific therapeutic agent employed; and like factors well known in the medical arts.


The total daily dose of the therapeutic agents of this invention administered to a human or other mammal in single or in divided doses can be in amounts, for example, from 0.01 to 50 mg/kg body weight or more usually from 0.1 to 25 mg/kg body weight. Single dose compositions may contain such amounts or submultiples thereof to make up the daily dose. In general, treatment regimens according to the present invention comprise administration to a patient in need of such treatment from about 0.1 μg to about 2000 mg of the therapeutic agent(s) of the invention per day in single or multiple doses.


EXEMPLIFICATION
Example 1
Selection of Candidate Genes and Identification of Potential Interaction Partners for Tumor Classification Panels

The present inventors identified a collection of candidate genes that (a) were differentially expressed across a set of tumor samples in a manner that suggested they distinguish biologically distinct classes of tumors; (b) were members of a gene functional class that has been linked to cellular pathways implicated in tumor prognosis or drug resistance; (c) were known or thought to display an expression, localization, modification, or activity pattern that correlates with a relevant tumor feature; etc.


For example, differentially expressed genes were identified using microarrays as described in co-pending U.S. patent application Ser. No. 09/916,722, filed Jul. 26, 2001 entitled “REAGENTS AND METHODS FOR USE IN MANAGING BREAST CANCER”, the entire contents of which are incorporated herein by reference. Other genes were typically selected on the basis of published data suggesting their possible implication in drug resistance, cancer prognosis, etc. A total of 730 candidate genes were identified as encoding proteins against which antibodies should be raised.


Rabbit polyclonal affinity-purified antibodies were then raised against 661 of these proteins as described in Example 7. Each antibody was initially tested over a range of dilutions on tissue arrays that included a set of normal tissues, tumor tissues and cell lines, so that, for each antibody, a discriminating titer was established at which differential staining across the diverse set was observed. The preparation and staining of tissue arrays is described in greater detail in Example 8. Of the 661 antibodies subjected to this analysis, 460 showed differential staining and were considered of sufficient interest for further analysis.


Example 2
Breast Cancer Classification Panel (Russian Breast Cohort)

The present inventors prepared an exemplary panel of antibodies for use in classifying breast tumors. 272 of the 460 differentially staining antibodies of Example 1 exhibited a reproducibly robust staining pattern on tissues relevant for this application. These antibodies were therefore applied (at appropriate titers) to a tissue array comprised of approximately 400 independent breast tumor samples from a cohort of breast cancer patients (the Russian breast cohort). Stained tissue samples were scored by a trained cytotechnologist or pathologist on a semi-quantitative scale in which 0=no stain on tumor cells; 1=no information; 2=weak staining of tumor cells; and 3=strong staining of tumor cells. Antibodies were included in a breast cancer classification panel if they stained greater than 10% and less than 90% of a defined “consensus panel” of the breast tumor tissue samples on at least two independent tissue arrays.


A given tissue sample was included in this “consensus panel” if at least 80% of the antibodies tested gave interpretable scores (i.e., a non-zero score) with that sample. Of the 400 breast tumor samples in the tissue array about 320 were included in the consensus panel. Also, in scoring antibody binding to the consensus panel, all scores represented a consensus score of replicate tissue arrays comprised of independent samples from the same sources. The consensus score was determined by computing the median (rounded down to an integer, where applicable) of all scores associated with a given antibody applied under identical conditions to the particular patient sample. In cases where the variance of the scores was greater than 2, the score was changed to 1 (i.e., no information). The data for each antibody was stored in an Oracle-based database that contained the semi-quantitative scores of tumor tissue staining and also contained links to both patient clinical information and stored images of the stained patient samples.


Through this analysis 90 of the 272 tested antibodies were selected for inclusion in an exemplary breast cancer classification panel (see Appendix A, e.g., S0021, S0022, S0039, etc.). It is to be understood that any sub-combination of these 90 antibodies may be used in constructing an inventive breast cancer classification panel. It will also be appreciated that additional antibodies may be added to or removed from an inventive breast cancer classification panel as more tumor markers are identified and/or more samples are tested (e.g., see Example 3).



FIG. 1 shows the pattern of reactivity observed with certain members of this panel of antibodies across samples from the Russian breast cohort. Dark gray represents strong positive staining, black represents weak positive staining, while light gray represents the absence of staining and medium gray represents a lack of data. Images of stained samples can be found in Appendix B (see right hand column of Appendix A for cross-references to corresponding antibodies).


The patients (rows) were classified using k-means clustering (as described, for example, in MacQueen in Proceedings of the Fifth Berkeley Symposium on Mathematical Statistics and Probability (Le Cam et al., Eds.; University of California Press, Berkeley, Calif.) 1:281, 1967; Heyer et al., Genome Res. 9:1106, 1999, each of which is incorporated herein by reference) while the antibodies (columns) were organized using hierarchical clustering (as described in, for example, Sokal et al., Principles of Numerical Tazonomy (Freeman & Co., San Francisco, Calif.), 1963; Eisen et al., Proc. Natl. Acad. Sci. USA 95:14863, 1998, each of which is incorporated herein by reference). As shown in FIG. 1, nine sub-classes of breast cancer patients were identified by their consensus pattern of staining with this breast cancer classification panel.


Example 3
Breast Cancer Classification Panel (HH Breast Cohort)

In order to refine and expand the breast cancer classification panel of Example 2, the present inventors tested 109 of the 460 differentially staining antibodies of Example 1 on samples from a new cohort of 550 breast cancer patients (the Huntsville Hospital breast cohort or “HH breast” cohort, the characteristics of which are described in Example 10).


Antibodies were included in an updated breast cancer classification panel if they stained more than 10% and less than 90% of the particular consensus panel of tissue samples tested. Through this analysis 87 of the 109 tested antibodies were selected (see Appendix A, e.g., S0011, S0018, S0020, etc.).


Example 4
Lung Cancer Classification Panel (Russian Lung Cohort)

The present inventors also prepared an exemplary panel of antibodies for use in classifying lung tumors. 417 of the 460 differentially staining antibodies of Example 1 exhibited a reproducibly robust staining pattern on tissues relevant for this application. These antibodies were therefore applied (at the titers determined in Example 1) to a tissue array comprised of approximately 400 independent lung tumor tissues from a cohort of lung cancer patients (the Russian lung cohort). Stained tissue samples were scored by a trained cytotechnologist or pathologist as before and again antibodies were included in the classification panel if they stained greater than 10% and less than 90% of a defined “consensus panel” of tissue samples on at least two independent tissue arrays.


Through this analysis an exemplary lung cancer classification panel was generated that was made up of 106 of the 417 tested antibodies (see Appendix A, e.g., s0021, s0022, s0024, etc.). It is to be understood that any sub-combination of these 106 antibodies may be used in constructing an inventive lung cancer classification panel. It will also be appreciated that additional antibodies may be added to or removed from an inventive lung cancer classification panel as more tumor markers are identified and/or more samples are tested (e.g., see Example 5).



FIG. 2 shows the pattern of reactivity observed with certain members of this panel of antibodies across samples from the Russian lung cohort. Dark gray represents strong positive staining, black represents weak positive staining, while light gray represents the absence of staining and medium gray represents a lack of data. Images of stained samples can be found in Appendix B (see right hand column of Appendix A for cross-references to corresponding antibodies).


The patients (rows) were again classified using k-means clustering while the antibodies (columns) were organized using hierarchical clustering. As shown in FIG. 2, eight sub-classes of lung cancer patients were identified by their consensus pattern of staining with this lung cancer classification panel.


Example 5
Lung Cancer Classification Panel (HH Lung Cohort)

In order to refine and expand the lung cancer classification panel of Example 4, the present inventors tested 54 of the 460 differentially staining antibodies of Example 1 on samples from a new cohort of 379 lung cancer patients (the Huntsville Hospital lung cohort or “HH lung” cohort, the characteristics of which are described in Example 11).


Antibodies were included in an updated colon cancer classification panel if they stained more than 10% and less than 90% of the particular consensus panel of tissue samples tested. Through this analysis 39 of the 54 tested antibodies were selected (see Appendix A, e.g., S0021, S0022, S0046, etc.).


Example 6
Colon Cancer Classification Panel (Russian Colon Cohort)

The present inventors also prepared an exemplary panel of antibodies for use in classifying colon tumors. 382 of the 460 differentially staining antibodies of Example 1 exhibited a reproducibly robust staining pattern on tissues relevant for this application. These antibodies were therefore applied (at the titers determined in Example 1) to a tissue array comprised of approximately 400 independent colon tumor tissues from a cohort of colon cancer patients (the Russian colon cohort). Stained tissue samples were scored by a trained cytotechnologist or pathologist as before and again antibodies were included in the classification panel if they stained greater than 10% and less than 90% of a defined “consensus panel” of tissue samples on at least two independent tissue arrays.


Through this analysis a colon antibody classification panel was generated that was made up of 86 of the 382 tested antibodies (see Appendix A, e.g., S0022, S0036, S0039, etc.). It will be appreciated that any sub-combination of these 86 antibodies may be used in constructing an inventive colon cancer classification panel. It will also be appreciated that additional antibodies may be added to or removed from an inventive colon cancer classification panel as more tumor markers are identified and/or more samples are tested.



FIG. 3 shows the pattern of reactivity observed with certain members of this panel of antibodies across samples from the Russian colon cohort. Dark gray represents strong positive staining, black represents weak positive staining, while light gray represents the absence of staining and medium gray represents a lack of data. Images of the stained samples can be found in Appendix B (see right hand column of Appendix A for cross-references to corresponding antibodies).


The patients (rows) were again classified using k-means clustering while the antibodies (columns) were organized using hierarchical clustering. As shown in FIG. 3, seven sub-classes of patients were identified by their consensus pattern of staining with this exemplary colon cancer classification panel.


Example 7
Raising Antibodies

This example describes a method that was employed to generate the majority of the antibodies that were used in Examples 1-6. Similar methods may be used to generate an antibody that binds to any polypeptide of interest (e.g., to polypeptides that are or are derived from other tumor markers). In some cases, antibodies may be obtained from commercial sources (e.g., Chemicon, Dako, Oncogene Research Products, NeoMarkers, etc.) or other publicly available sources (e.g., Imperial Cancer Research Technology, etc.).


Materials and Solutions






    • Anisole (Cat. No. A4405, Sigma, St. Louis, Mo.)

    • 2,2′-azino-di-(3-ethyl-benzthiazoline-sulfonic acid) (ABTS) (Cat. No. A6499, Molecular Probes, Eugene, Oreg.)

    • Activated maleimide Keyhole Limpet Hemocyanin (Cat. No. 77106, Pierce, Rockford, Ill.)

    • Keyhole Limpet Hemocyanin (Cat. No. 77600, Pierce, Rockford, Ill.)

    • Phosphoric Acid (H3PO4) (Cat. No. P6560, Sigma)

    • Glacial Acetic Acid (Cat No. BP1185-500, Fisher)

    • EDC (EDAC) (Cat No. 341006, Calbiochem)

    • 25% Glutaraldehyde (Cat No. G-5882, Sigma)

    • Glycine (Cat No. G-8898, Sigma)

    • Biotin (Cat. No. B2643, Sigma)

    • Boric acid (Cat. No. B0252, Sigma)

    • Sepharose 4B (Cat. No. 17-0120-01, LKB/Pharmacia, Uppsala, Sweden)

    • Bovine Serum Albumin (LP) (Cat. No. 100 350, Boehringer Mannheim, Indianapolis, Ind.)

    • Cyanogen bromide (Cat. No. C6388, Sigma)

    • Dialysis tubing Spectra/Por Membrane MWCO: 6-8,000 (Cat. No. 132 665, Spectrum Industries, Laguna Hills, Calif.)

    • Dimethyl formamide (DMF) (Cat. No. 22705-6, Aldrich, Milwaukee, Wis.)

    • DIC (Cat. No. BP 592-500, Fisher)

    • Ethanedithiol (Cat. No. 39,802-0, Aldrich)

    • Ether (Cat. No. TX 1275-3, EM Sciences)

    • Ethylenediaminetetraacetatic acid (EDTA) (Cat. No. BP 120-1, Fisher, Springfield, N.J.)

    • 1-ethyl-3-(3′dimethylaminopropyl)-carbodiimide, HCL (EDC) (Cat. no. 341-006, Calbiochem, San Diego, Calif.)

    • Freund's Adjuvant, complete (Cat. No. M-0638-50B, Lee Laboratories, Grayson, Ga.)

    • Freund's Adjuvant, incomplete (Cat. No. M-0639-50B, Lee Laboratories)

    • Fritted chromatography columns (Column part No. 12131011; Frit Part No. 12131029, Varian Sample Preparation Products, Harbor City, Calif.)

    • Gelatin from Bovine Skin (Cat. No. G9382, Sigma)

    • Goat anti-rabbit IgG, biotinylated (Cat. No. A 0418, Sigma)

    • HOBt (Cat. No. 01-62-0008, Calbiochem)

    • Horseradish peroxidase (HRP) (Cat. No. 814 393, Boehringer Mannheim)

    • HRP-Streptavidin (Cat. No. S 5512, Sigma)

    • Hydrochloric Acid (Cat. No. 71445-500, Fisher)

    • Hydrogen Peroxide 30% w/w (Cat. No. H1009, Sigma)

    • Methanol (Cat. No. A412-20, Fisher)

    • Microtiter plates, 96 well (Cat. No. 2595, Corning-Costar, Pleasanton, Calif.)

    • N-α-Fmoc protected amino acids from Calbiochem. See '97-'98 Catalog pp. 1-45.

    • N-α-Fmoc protected amino acids attached to Wang Resin from Calbiochem. See '97-'98 Catalog pp. 161-164.

    • NMP (Cat. No. CAS 872-50-4, Burdick and Jackson, Muskegon, Mich.)

    • Peptide (Synthesized by Research Genetics. Details given below)

    • Piperidine (Cat. No. 80640, Fluka, available through Sigma)

    • Sodium Bicarbonate (Cat. No. BP328-1, Fisher)

    • Sodium Borate (Cat. No. B9876, Sigma)

    • Sodium Carbonate (Cat. No. BP357-1, Fisher)

    • Sodium Chloride (Cat. No. BP 358-10, Fisher)

    • Sodium Hydroxide (Cat. No. SS 255-1, Fisher)

    • Streptavidin (Cat. No. 1 520, Boehringer Mannheim)

    • Thioanisole (Cat. No. T-2765, Sigma)

    • Trifluoroacetic acid (Cat. No. TX 1275-3, EM Sciences)

    • Tween-20 (Cat. No. BP 337-500, Fisher).

    • Wetbox (Rectangular Servin' Saver™ Part No. 3862, Rubbermaid, Wooster, Ohio)

    • BBS—Borate Buffered Saline with EDTA dissolved in distilled water (pH 8.2 to 8.4 with HCl or NaOH), 25 mM Sodium borate (Borax), 100 mM Boric Acid, 75 mM NaCl and 5 mM EDTA.

    • 0.1 N HCl in saline as follows: concentrated HCl (8.3 ml/0.917 liter distilled water) and 0.154 M NaCl

    • Glycine (pH 2.0 and pH 3.0) dissolved in distilled water and adjusted to the desired pH, 0.1 M glycine and 0.154 M NaCl.

    • 5× Borate 1× Sodium Chloride dissolved in distilled water, 0.11 M NaCl, 60 mM Sodium Borate and 250 mM Boric Acid.

    • Substrate Buffer in distilled water adjusted to pH 4.0 with sodium hydroxide, 50 to 100 mM Citric Acid.

    • AA solution: HOBt is dissolved in NMP (8.8 grams HOBt to 1 liter NMP). Fmoc-N-a-amino at a concentration at 0.53 M.

    • DIC solution: 1 part DIC to 3 parts NMP.

    • Deprotecting solution: 1 part Piperidine to 3 parts DMF.

    • Reagent R: 2 parts anisole, 3 parts ethanedithiol, 5 parts thioanisole and 90 parts trifluoroacetic acid.


      Equipment

    • MRX Plate Reader (Dynatech, Chantilly, Va.)

    • Hamilton Eclipse (Hamilton Instruments, Reno, Nev.)

    • Beckman TJ-6 Centrifuge (Model No. TJ-6, Beckman Instruments, Fullerton, Calif.)

    • Chart Recorder (Recorder 1 Part No. 18-1001-40, Pharmacia LKB Biotechnology)

    • UV Monitor (Uvicord SII Part No. 18-1004-50, Pharmacia LKB Biotechnology)

    • Amicon Stirred Cell Concentrator (Model 8400, Amicon, Beverly, Mass.)

    • 30 kD MW cut-off filter (Cat. No. YM-30 Membranes Cat. No. 13742, Amicon)

    • Multi-channel Automated Pipettor (Cat. No. 4880, Corning Costar, Cambridge, Mass.)

    • pH Meter Corning 240 (Corning Science Products, Corning Glassworks, Corning, N.Y.)

    • ACT396 peptide synthesizer (Advanced ChemTech, Louisville, Ky.)

    • Vacuum dryer (Box from Labconco, Kansas City, Mo. and Pump from Alcatel, Laurel, Md.).

    • Lyophilizer (Unitop 600sl in tandem with Freezemobile 12, both from Virtis, Gardiner, N.Y.)


      Peptide Selection





Peptides against which antibodies would be raised were selected from within the polypeptide sequence of interest using a program that uses the Hopp/Woods method (described in Hopp and Woods, Mol. Immunol. 20:483, 1983 and Hopp and Woods, Proc. Nat. Acad. Sci. U.S.A. 78:3824, 1981). The program uses a scanning window that identifies peptide sequences of 15-20 amino acids containing several putative antigenic epitopes as predicted by low solvent accessibility. This is in contrast to most implementations of the Hopp/Woods method, which identify single short (˜6 amino acids) presumptive antigenic epitopes. Occasionally the predicted solvent accessibility was further assessed by PHD prediction of loop structures (described in Rost and Sander, Proteins 20:216, 1994). Preferred peptide sequences display minimal similarity with additional known human proteins. Similarity was determined by performing BLASTP alignments, using a wordsize of 2 (described in Altschul et al., J. Mol. Biol. 215:403, 1990). All alignments given an EXPECT value less than 1000 were examined and alignments with similarities of greater than 60% or more than four residues in an exact contiguous non-gapped alignment forced those peptides to be rejected. When it was desired to target regions of proteins exposed outside the cell membrane, extracellular regions of the protein of interest were determined from the literature or as defined by predicted transmembrane domains using a hidden Markov model (described in Krogh et al., J. Mol. Biol. 305:567, 2001). When the peptide sequence was in an extracellular domain, peptides were rejected if they contained N-linked glycosylation sites. As shown in Appendix A, one to three peptide sequences were selected for each polypeptide using this procedure.


Peptide Synthesis


The sequence of the desired peptide was provided to the peptide synthesizer. The C-terminal residue was determined and the appropriate Wang Resin was attached to the reaction vessel. The peptides were synthesized C-terminus to N-terminus by adding one amino acid at a time using a synthesis cycle. Which amino acid is added was controlled by the peptide synthesizer, which looks to the sequence of the peptide that was entered into its database. The synthesis steps were performed as follows:

    • Step 1—Resin Swelling: Added 2 ml DMF, incubated 30 minutes, drained DMF.
    • Step 2—Synthesis cycle (repeated over the length of the peptide)
      • 2a—Deprotection: 1 ml deprotecting solution was added to the reaction vessel and incubated for 20 minutes.
      • 2b—Wash Cycle
      • 2c—Coupling: 750 ml of amino acid solution (changed as the sequence listed in the peptide synthesizer dictated) and 250 ml of DIC solution were added to the reaction vessel. The reaction vessel was incubated for thirty minutes and washed once. The coupling step was repeated once.
      • 2d—Wash Cycle
    • Step 3—Final Deprotection: Steps 2a and 2b were performed one last time.


Resins were deswelled in methanol (rinsed twice in 5 ml methanol, incubated 5 minutes in 5 ml methanol, rinsed in 5 ml methanol) and then vacuum dried.


Peptide was removed from the resin by incubating 2 hours in reagent R and then precipitated into ether. Peptide was washed in ether and then vacuum dried. Peptide was resolubilized in diH20, frozen and lyophilized overnight.


Conjugation of Peptide with Keyhole Limpet Hemocyanin


Peptide (6 mg) was conjugated with Keyhole Limpet Hemocyanin (KLH). When the selected peptide included at least one cysteine, three aliquots (2 mg) were dissolved in PBS (2 ml) and coupled to KLH via glutaraldehyde, EDC or maleimide activated KLH (2 mg) in 2 ml of PBS for a total volume of 4 ml. When the peptide lacked cysteine, two aliquots (3 mg) were coupled via glutaraldehyde and EDC methods.


Maleimide coupling is accomplished by mixing 2 mg of peptide with 2 mg of maleimide-activated KLH dissolved in PBS (4 ml) and incubating 4 hr.


EDC coupling is accomplished by mixing 2 mg of peptide, 2 mg unmodified KLH, and 20 mg of EDC in 4 ml PBS (lowered to pH 5 by the addition of phosphoric acid), and incubating for 4 hours. The reaction is stopped by the slow addition of 1.33 ml acetic acid (pH 4.2). When using EDC to couple 3 mg of peptide, the amounts listed above are increased by a factor of 1.5.


Glutaraldehyde coupling occurs when 2 mg of peptide are mixed with 2 mg of KLH in 0.9 ml of PBS. 0.9 ml of 0.2% glutaraldehyde in PBS is added and mixed for one hour. 0.46 ml of 1 M glycine in PBS is added and mixed for one hour. When using glutaraldehyde to couple 3 mg of peptide, the above amounts are increased by a factor of 1.5.


The conjugated aliquots were subsequently repooled, mixed for two hours, dialyzed in 1 liter PBS and lyophilized.


Immunization of Rabbits


Two New Zealand White Rabbits were injected with 250 μg (total) KLH conjugated peptide in an equal volume of complete Freund's adjuvant and saline in a total volume of 1 ml. 100 μg KLH conjugated peptide in an equal volume of incomplete Freund's Adjuvant and saline were then injected into three to four subcutaneous dorsal sites for a total volume of 1 ml two, six, eight and twelve weeks after the first immunization. The immunization schedule was as follows:


















Day 0
Pre-immune bleed, primary immunization



Day 15
1st boost



Day 27
1st bleed



Day 44
2nd boost



Day 57
2nd bleed and 3rd boost



Day 69
3rd bleed



Day 84
4th boost



Day 98
4th bleed











Collection of Rabbit Serum


The rabbits were bled (30 to 50 ml) from the auricular artery. The blood was allowed to clot at room temperature for 15 minutes and the serum was separated from the clot using an IEC DPR-6000 centrifuge at 5000 g. Cell-free serum was decanted gently into a clean test tube and stored at −20° C. for affinity purification.


Determination of Antibody Titer


All solutions with the exception of wash solution were added by the Hamilton Eclipse, a liquid handling dispenser. The antibody titer was determined in the rabbits using an ELISA assay with peptide on the solid phase. Flexible high binding ELISA plates were passively coated with peptide diluted in BBS (100 μl, 1 μg/well) and the plate was incubated at 4° C. in a wetbox overnight (air-tight container with moistened cotton balls). The plates were emptied and then washed three times with BBS containing 0.1% Tween-20 (BBS-TW) by repeated filling and emptying using a semi-automated plate washer. The plates were blocked by completely filling each well with BBS-TW containing 1% BSA and 0.1% gelatin (BBS-TW-BG) and incubating for 2 hours at room temperature. The plates were emptied and sera of both pre- and post-immune serum were added to wells. The first well contained sera at 1:50 in BBS. The sera were then serially titrated eleven more times across the plate at a ratio of 1:1 for a final (twelfth) dilution of 1:204,800. The plates were incubated overnight at 4° C. The plates were emptied and washed three times as described.


Biotinylated goat anti-rabbit IgG (100 μl) was added to each microtiter plate test well and incubated for four hours at room temperature. The plates were emptied and washed three times. Horseradish peroxidase-conjugated Streptavidin (100 μl diluted 1:10,000 in BBS-TW-BG) was added to each well and incubated for two hours at room temperature. The plates were emptied and washed three times. The ABTS was prepared fresh from stock by combining 10 ml of citrate buffer (0.1 M at pH 4.0), 0.2 ml of the stock solution (15 mg/ml in water) and 10 μl of 30% hydrogen peroxide. The ABTS solution (100 μl) was added to each well and incubated at room temperature. The plates were read at 414 nm, 20 minutes following the addition of substrate.


Preparation of Peptide Affinity Purification Column:


The affinity column was prepared by conjugating 5 mg of peptide to 10 ml of cyanogen bromide-activated Sepharose 4B and 5 mg of peptide to hydrazine-Sepharose 4B. Briefly, 100 μl of DMF was added to peptide (5 mg) and the mixture was vortexed until the contents were completely wetted. Water was then added (900 μl) and the contents were vortexed until the peptide dissolved. Half of the dissolved peptide (500 μl) was added to separate tubes containing 10 ml of cyanogen-bromide activated Sepharose 4B in 0.1 ml of borate buffered saline at pH 8.4 (BBS) and 10 ml of hydrazine-Sepharose 4B in 0.1 M carbonate buffer adjusted to pH 4.5 using excess EDC in citrate buffer pH 6.0. The conjugation reactions were allowed to proceed overnight at room temperature. The conjugated Sepharose was pooled and loaded onto fritted columns, washed with 10 ml of BBS, blocked with 10 ml of 1 M glycine and washed with 10 ml 0.1 M glycine adjusted to pH 2.5 with HCl and re-neutralized in BBS. The column was washed with enough volume for the optical density at 280 nm to reach baseline.


Affinity Purification of Antibodies


The peptide affinity column was attached to a UV monitor and chart recorder. The titered rabbit antiserum was thawed and pooled. The serum was diluted with one volume of BBS and allowed to flow through the columns at 10 ml per minute. The non-peptide immunoglobulins and other proteins were washed from the column with excess BBS until the optical density at 280 nm reached baseline. The columns were disconnected and the affinity purified column was eluted using a stepwise pH gradient from pH 7.0 to 1.0. The elution was monitored at 280 nm and fractions containing antibody (pH 3.0 to 1.0) were collected directly into excess 0.5 M BBS. Excess buffer (0.5 M BBS) in the collection tubes served to neutralize the antibodies collected in the acidic fractions of the pH gradient.


The entire procedure was repeated with “depleted” serum to ensure maximal recovery of antibodies. The eluted material was concentrated using a stirred cell apparatus and a membrane with a molecular weight cutoff of 30 kD. The concentration of the final preparation was determined using an optical density reading at 280 nm. The concentration was determined using the following formula: mg/ml OD280/1.4.


It will be appreciated that in certain embodiments, additional steps may be used to purify antibodies of the invention. In particular, it may prove advantageous to repurify antibodies, e.g., against one of the peptides that was used in generating the antibodies. It is to be understood that the present invention encompasses antibodies that have been prepared with such additional purification or repurification steps. It will also be appreciated that the purification process may affect the binding between samples and the inventive antibodies.


Example 8
Preparing and Staining Tissue Arrays

This example describes a method that was employed to prepare the tissue arrays that were used in Examples 1-6. This example also describes how the antibody staining was performed.


Tissue arrays were prepared by inserting full-thickness cores from a large number of paraffin blocks (donor blocks) that contain fragments of tissue derived from many different patients and/or different tissues or fragments of tissues from a single patient, into a virgin paraffin block (recipient block) in a grid pattern at designated locations in a grid. A standard slide of the paraffin embedded tissue (donor block) was then made which contained a thin section of the specimen amenable to H & E staining. A trained pathologist, or the equivalent versed in evaluating tumor and normal tissue, designated the region of interest for sampling on the tissue array (e.g., a tumor area as opposed to stroma). A commercially available tissue arrayer from Beecher Instruments was then used to remove a core from the donor block which was then inserted into the recipient block at a designated location. The process was repeated until all donor blocks had been inserted into the recipient block. The recipient block was then thin-sectioned to yield 50-300 slides containing cores from all cases inserted into the block.


The selected antibodies were then used to perform immunohistochemical staining using the DAKO Envision+, Peroxidase IHC kit (DAKO Corp., Carpenteria, Calif.) with DAB substrate according to the manufacturer's instructions.


Example 9
Correlating Interaction Partner Binding with Outcome/Responsiveness of Xenograft Tumors

According to the present invention, panels of useful interaction partners may be defined through analysis of human tumor cells grown in a non-human host. In particular, such analyses may define interaction partner panels whose binding correlates with prognosis and/or with responsiveness to therapy.


Cells derived from human tumors may be transplanted into a host animal (e.g., a mouse), preferably into an immunocompromised host animal. In preferred embodiments of the invention, cells (e.g., cell lines, tumor samples obtained from human patients, etc.) from a variety of different human tumors (e.g., at least 10, 20, 30, 40, 50, 60 or more different tumors) are transplanted into host animals. The animals are then treated with different (e.g., increasing) concentrations of a chemical compound known or thought to be selectively toxic to tumors with a predetermined common characteristic (e.g., class or subclass). Relative growth or regression of the tumors may then be assessed using standard techniques.


In certain embodiments of the invention, a dataset of sensitivity of the transplanted cells to a given compound or set of compounds may optionally be created. For example, a dataset might consist of the concentration of compound administered to the host animal that inhibited tumor growth 50% at 96 hr (i.e., the LD50) for each of the cell samples or cell lines tested. Such a dataset, for example across at least 10, 20, 30, 40, 50, 60 or more cell lines, could then be correlated with the relative staining of the binding partners across the same cell lines. Those binding partners whose interaction (or lack thereof) with cells was highly correlated with either sensitivity to or resistance to a given compound would be useful members of a predictive panel.


Example 10
Correlating Interaction Partner Binding with Clinical Prognostic Data in Breast Cancer

According to the present invention, panels of useful interaction partners may be defined through analysis of correlations between binding patterns and clinical prognostic data. In particular, such analyses may define interaction partner panels whose binding correlates with prognosis.


The following describes the identification of exemplary panels of antibodies whose binding has been shown to correlate with the prognosis of breast cancer patients. The data was obtained using samples from the Huntsville Hospital breast cohort (the “HH breast” cohort) that was referred to in Example 3.


The HH breast cohort was generated from 1082 breast cancer patients that were treated by the Comprehensive Cancer Institute (Huntsville, Ala.) between 1990 and 2000. This larger group was filtered to a study group of 550 patients by eliminating patients according to the following criteria: 249 that had no chart which could be found; 103 that had no clinical follow up; and 180 that did not have sufficient clinical material in the paraffin block to sample. For the remaining 550 patients, clinical data through Dec. 31, 2002 was available. Every patient in the cohort therefore had between 2 and 13 years of follow-up. The average time of follow-up among patients who did not recur was 5.6 years. Of the 550 patients, 140 had a recurrence of cancer within the study period; 353 patients were estrogen receptor positive (ER+); 154 were estrogen receptor negative (ER−); and 43 were undetermined. Some patients within these groups received adjuvant hormone therapy as shown in Table 1:














TABLE 1







Total
Hormone
No hormone
Unknown




















ER+
353
278
68
7


ER−
154
70
83
1


Undetermined
43
28
15
0









In addition, 263 patients received chemotherapy. Up to 16 different regimens were used, however, most were variants of cyclophosphamide, doxorubicin (with and without 5-fluorouracil and/or cyclophosphamide), methotrexate and 5-fluorouracil. Finally, 333 of the patients received radiation. Clinical information regarding age, stage, node status, tumor size, and grade was obtained.


The clinical information for the patients in the cohort is summarized in Table 2.













TABLE 2







All (550)
ER+ (353)
ER− (154)





















Stage = 1
236
162
49



Stage = 2
269
167
87



Stage = 3
44
23
18



Undetermined
1
0
0



Mean Age @ Dx
58
59
55



Tumor status = 0
1
0
1



Tumor status = 1
295
203
63



Tumor status = 2
195
122
62



Tumor status = 3
26
14
11



Tumor status = 4
14
6
8



Undetermined
21
8
9



Node status = 0
326
215
76



Node status = 1
205
127
71



Node status = 2
10
6
3



Undetermined
10
5
4



Metastasis = 0
527
338
147



Metastasis = 1
5
4
1



Undetermined
19
11
6










Where each category is defined in Table 3. These rules are not fixed and staging is typically done by an oncologist based on TNM status and other factors. These definitions for staging will not necessarily match with the stage that each patient was actually given. Node status is the primary tool for staging purposes.










TABLE 3







Tumor status = 0
No evidence of tumor


Tumor status = 1
<2 cm


Tumor status = 2
2-5 cm


Tumor status = 3
>5 cm


Tumor status = 4
Any size but extends to chest wall


Node status = 0
No regional LN metastasis


Node status = 1
Ancillary LN metastasis but nodes still moveable


Node status = 2
Ancillary LN metastasis with nodes fixed to each other OR internal



mammary node metastasis


Metastasis = 0
No distant metastasis


Metastasis = 1
Distant metastasis












Stage = 1
T1, N0, M0






Stage = 2
T0, N1, M0
T1, N1, M0
T2, N0, M0
T2, N1, M0
T3, N0, M0


Stage = 3
T(0-3), N2, M0
T3, N1, M0
T4, NX, M0


Stage = 4
TX, NX, M1









Samples from patients in the cohort were stained with antibodies from the breast cancer classification panel identified in Appendix A (as previously described in Examples 2 and 3). The stained samples were then scored in a semi-quantitative fashion, with 0=negative, 1=weak staining, and 2=strong staining. When appropriate, alternative scoring systems were used (i.e., 0=negative, 1=weak or strong; or 0=negative or weak and 1=strong staining). For each antibody, the scoring system used was selected to produce the most significant prognostication of the patients, as determined by a log-rank test (e.g., see Mantel and Haenszel, Journal of the National Cancer Institute 22:719-748, 1959). The results are presented in Appendix C and are grouped into four categories that have been clinically recognized to be of significance: all patients, ER+ patients, ER− patients, and ER+/node− patients. As shown, the antibodies were found to have differing significances for each of these categories of breast cancer patients.


It is to be understood that exclusion of a particular antibody from any prognostic panel based on these experiments is not determinative. Indeed, it is anticipated that additional data with other samples may lead to the identification of other antibodies (from Appendix A and beyond) that may have prognostic value for these and other classes of patients.


The expected relationship between the staining of patient samples with each antibody and the recurrence of tumors was measured using the Kaplan-Meier estimate of expected recurrence (e.g., see Kaplan and Meier, J. Am. Stat. Assn. 53:457-81, 1958). The log-rank test was used to determine the significance of different expected recurrences for each antibody (e.g., see Mantel and Haenszel, Journal of the National Cancer Institute, 22:719-748, 1959). This produces the p-value that is listed for each antibody in Appendix C. Preferred antibodies are those that produce a p-value of less than 0.10.


The degree to which these antibodies predicted recurrence was determined using a Cox univariate proportional hazard model (e.g., see Cox and Oakes, “Analysis of Survival Data”, Chapman & Hall, 1984). The “hazard ratio” listed in Appendix C for each antibody reflects the predicted increase in risk of recurrence for each increase in the staining score. Scores greater than 1.0 indicate that staining predicts an increased risk of recurrence compared to an average individual, scores less than 1.0 indicate that staining predicts a decreased risk.


It will be appreciated that these antibodies can be used alone or in combinations to predict recurrence (e.g., in combinations of 2, 3, 4, 5, 6, 7, 8, 9, 10 or more antibodies). It will also be appreciated that while a given antibody may not predict recurrence when used alone the same antibody may predict recurrence when used in combination with others. It will also be understood that while a given antibody or combination of antibodies may not predict recurrence in a given set of patients (e.g., ER+ patients), the same antibody or combination of antibodies may predict recurrence in a different set of patients (e.g., ER− patients). Similarly, it is to be understood that while a given antibody or combination of antibodies may not predict recurrence in a given set of patients (e.g., ER+ patients), the same antibody or combination of antibodies may predict recurrence in a subset of these patients (e.g., ER+/node negative patients).


These prognostic panels could be constructed using any method. Without limitation these include simple empirically derived rules, Cox multivariate proportional hazard models (e.g., see Cox and Oakes, “Analysis of Survival Data”, Chapman & Hall, 1984), regression trees (e.g., see Segal and Bloch, Stat. Med. 8:539-50, 1989), and/or neural networks (e.g., see Ravdin et al., Breast Cancer Res. Treat. 21:47-53, 1992). In certain embodiments a prognostic panel might include between 2-10 antibodies, for example 3-9 or 5-7 antibodies. It will be appreciated that these ranges are exemplary and non-limiting.


The prognostic value of exemplary panels of antibodies were also assessed by generating Kaplan-Meier recurrence curves for ER+ and ER+/node− patients and then comparing these with curves produced for these same patients with the standard Nottingham Prognostic Index (NPI).


In order to generate Kaplan-Meier curves based on antibody panels, Cox univariate proportional hazard regression models were first run with all antibodies from Appendix C utilizing all three scoring procedures. The antibodies and scoring systems best able to predict recurrence were then used in a regression tree model and pruned to maintain predictive power while reducing complexity. Patients whom the panel predicted as being strongly likely to recur were placed in the “poor” prognosis group. Patients whom the panel predicted as being strongly unlikely to recur were given the prediction of “good”. Patients whom the panel predicted as neither being strongly likely to recur or not recur were placed in the “moderate” prognosis group. Kaplan-Meier curves were then calculated based on recurrence data for patients within each group. FIG. 4A show the curves that were obtained for ER+ patients in each of these prognostic groups. FIG. 5A show the curves that were obtained for ER+/node− patients in each of these prognostic groups.


The antibodies from Appendix C that were used to predict recurrence for ER+ patients (FIG. 4A) were: s0296P1 (1:225 dilution, scoring method 3), s6006 (1:1 dilution, scoring method 2), s0545 (1:900 dilution, scoring method 2), s0063 (1:300 dilution, scoring method 2), s6002 (1:1 dilution, scoring method 3), s0081 (1:20 dilution, scoring method 2), s0255 (1:1000 dilution, scoring method 3), and s0039 (1:100 dilution, scoring method 2).


The antibodies from Appendix C that were used to predict recurrence for ER+/node− patients (FIG. 5A) were: s0143P3 (1:630 dilution, scoring method 1), s0137 (1:2500 dilution, scoring method 2), s0260 (1:5400 dilution, scoring method 2), s0702 (1:178200 dilution, scoring method 2), s0545 (1:900 dilution, scoring method 2), s6002 (1:1 dilution, scoring method 1), s6007 (1:1 dilution, scoring method 1).


Kaplan-Meier recurrence curves were then generated for the same patients based on their standard NPI scores. NPI scores were calculated for patients according to the standard formula NPI=(0.2× tumor diameter in cm)+lymph node stage+tumor grade. As is well known in the art, lymph node stage is either 1 (if there are no nodes affected), 2 (if 1-3 glands are affected) or 3 (if more than 3 glands are affected). The tumor grade was scored according to the Bloom-Richardson Grade system (Bloom and Richardson, Br. J. Cancer 11:359-377, 1957). According to this system, tumors were examined histologically and given a score for the frequency of cell mitosis (rate of cell division), tubule formation (percentage of cancer composed of tubular structures), and nuclear pleomorphism (change in cell size and uniformity). Each of these features was assigned a score ranging from 1 to 3 as shown in Table 4. The scores for each feature were then added together for a final sum that ranged between 3 to 9. A tumor with a final sum of 3, 4, or 5 was considered a Grade 1 tumor (less aggressive appearance); a sum of 6 or 7 a Grade 2 tumor (intermediate appearance); and a sum of 8 or 9 a Grade 3 tumor (more aggressive appearance).











TABLE 4







Score



















Tubule formation




(% of carcinoma composed of



tubular structures)



>75%
1



10-75%
2



<10%
3



Nuclear pleomorphism



(Change in Cells)



Small, uniform cells
1



Moderate increase in size and
2



variation



Marked variation
3



Mitosis Count



(Cell Division)



Up to 7
1



8 to 14
2



15 or more
3










Patients with tumors having an overall NPI score of less than 3.4 were placed in the “good” prognosis group. Those with an NPI score of between 3.4 and 5.4 were placed in the “moderate” prognosis group and patients with an NPI score of more than 5.4 were placed in the “poor” prognosis group. Kaplan-Meier curves were then calculated based on recurrence data for patients within each group. FIG. 4B show the curves that were obtained for ER+ patients in each of these NPI prognostic groups. FIG. 5B show the curves that were obtained for ER+/node− patients in each of these NPI prognostic groups. By definition ER+/node− patients have an NPI score that is less than 5.4. This explains why there is no “poor” prognosis curve in FIG. 5B. Example 12 describes other exemplary prognostic panels for breast cancer patients.


Example 11
Correlating Interaction Partner Binding with Clinical Prognostic Data in Lung Cancer

This Example describes the identification of exemplary panels of antibodies whose binding has been shown to correlate with the prognosis of lung cancer patients. The data was obtained using samples from the Huntsville Hospital lung cohort (the “HH lung” cohort) that was referred to in Example 5.


The HH lung cohort was generated from 544 lung cancer patients that were treated by the Comprehensive Cancer Institute (Huntsville, Ala.) between 1987 and 2002. This larger group was filtered to a study group of 379 patients by eliminating patients that had insufficient clinical follow up or that did not have sufficient clinical material in the paraffin block to sample. For the remaining patients, clinical data through Sep. 30, 2003 was available. This set of patients consisted of 232 males and 147 females. The average time of follow-up among patients who did not recur was 3.5 years. Of the 379 patients, 103 had a recurrence of cancer within the study period. All patients in this study were diagnosed at a pathological stage of 1 or 2, with 305 patients at stage 1, 1A, or 1B, and 74 patients at stage 2, 2A, or 2B.


Samples from patients in the cohort were stained with antibodies from the lung cancer classification panel identified in Appendix A (as previously described in Examples 4 and 5). The stained samples were then scored in a semi-quantitative fashion; scoring methods 1-3 use the following schemes: method 1 (0=negative; 1=weak; 2=strong); method 2 (0=negative; 1=weak or strong); and method 3 (0=negative or weak; 1=strong). For each antibody, the scoring system used was selected to produce the most significant prognostication of the patients, as determined by a log-rank test (e.g., see Mantel and Haenszel, Journal of the National Cancer Institute 22:719-748, 1959). The results are presented in Appendix D and are grouped into three categories that have been clinically recognized to be of significance: all patients, adenocarcinoma patients, and squamous cell carcinoma patients. As shown, the antibodies were found to have differing significances for each of these categories of lung cancer patients.


It is to be understood that exclusion of a particular antibody from any prognostic panel based on these experiments is not determinative. Indeed, it is anticipated that additional data with other samples may lead to the identification of other antibodies (from Appendix A and beyond) that may have prognostic value for these and other classes of patients.


As for the breast study of Example 10, the expected relationship between the staining of patient samples with each antibody and the recurrence of tumors was measured using the Kaplan-Meier estimate of expected recurrence and a log-rank test was used to determine the significance of different expected recurrences. This produces the p-value that is listed for each antibody in Appendix D. Preferred antibodies are those that produce a p-value of less than 0.10.


The degree to which these antibodies predicted recurrence was determined using a Cox univariate proportional hazard model. The “hazard ratio” listed in Appendix D for each antibody reflects the predicted increase in risk of recurrence for each increase in the staining score. Scores greater than 1.0 indicate that staining predicts an increased risk of recurrence compared to an average individual, scores less than 1.0 indicate that staining predicts a decreased risk.


As a number of patients had information regarding whether or not the cancer recurred but lacked information on time to recurrence, a chi-square test was also performed. This standard statistical test shows the degree of divergence between observed and expected frequencies and does not employ time to recurrence, as does the log-rank test. Preferred antibodies are those that produce a p-value of less than 0.10.


It will be appreciated that these prognostic antibodies can be used alone or in combinations to predict recurrence (e.g., in combinations of 2, 3, 4, 5, 6, 7, 8, 9, 10 or more antibodies). It will also be appreciated that while a given antibody may not predict recurrence when used alone, the same antibody may predict recurrence when used in combination with others. It will also be understood that while a given antibody or combination of antibodies may not predict recurrence in a given set of patients (e.g., adenocarcinoma patients), the same antibody or combination of antibodies may predict recurrence in a different set of patients (e.g., squamous cell carcinoma patients).


As for the breast study of Example 10, these prognostic panels could be constructed using any method. Without limitation these include simple empirically derived rules, Cox multivariate proportional hazard models, regression trees, and/or neural networks. In certain embodiments a prognostic panel might include between 2-10 antibodies, for example 3-9 or 5-7 antibodies. It will be appreciated that these ranges are exemplary and non-limiting. The construction of exemplary prognostic panels for lung cancer patients is described in Example 13.


Example 12
Prognostic Breast Cancer Panels

This Example builds on the results of Example 10 and describes the identification of additional exemplary panels of antibodies whose binding has been shown to correlate with the prognosis of breast cancer patients.


First, the individual prognostic ability of the antibodies of Appendix C was refined using samples from the HH breast cohort that was described in Example 2. In particular, certain antibodies were excluded based on subjective assessment of specificity and scoreability. The methodology paralleled that used in Example 10 and the updated antibody data is presented in Appendix E.


Second, prognostic panels in two currently identified clinically important subclasses of breast cancer patients were generated, namely ER+/node− patients and ER− patients. To minimize the chance of identifying spurious associations, only those antibodies from Appendix E that showed sufficient significance (p-value of less than 0.10) in either the ER+ or ER+/node− patient classes were used in creating prognostic panels for the ER+/node− patients, and only the similarly significant markers from the ER− patient set for creating a prognostic panel for the ER− patients. Using Cox proportional hazard analysis and regression tree analysis (as described in Example 10) candidate panels (and dendrograms for regression tree analysis) were derived for prediction of early recurrence. For both ER+/node− patients and ER− patients, panels and dendrograms were chosen that identified patients with significantly increased risks of recurrence.


Prognostic Panels Generated by Cox Analysis


Cox proportional hazard analysis treats the component antibodies of a panel as additive risk factors. The panels for the specified patient classes were created by initially using all applicable antibodies, and then iteratively removing antibodies from the panel. If the removal of an antibody increased or did not affect the significance and prognostic ability of the panel as a whole, it was excluded, otherwise it was retained. In this manner preferred panels with minimal numbers of antibodies were created. The preferred panels for ER+/node− and ER− patients are presented in Tables 5 and 6, respectively. Antibodies within the preferred panels are ranked based on their relative contributions to the overall prediction function.














TABLE 5









Panel
Analysis
P value1
Hazard ratio2







Breast ER+/node-
Cox
8.17E−05
5.68
















AGI ID
Rank
P value3
Terms4







S0702/s0296P1
1
0.00015
−0.213, 1.330



s6006
2
0.00660
−0.325, 0.799



s0404
3
0.06200
−0.099, 0.958



s0545
4
0.10000
−0.112, 0.604



s0235
5
0.25000
−0.114, 0.390








1P value of overall panel





2Hazard ratio of overall panel





3P value of the contribution of a given antibody to the overall panel





4Contribution of given antibody to overall panel prediction function depending on IHC score (e.g., scores of 0 or 1 for s6006 which uses scoring method 2 [see Appendix E] result in its term in the model equaling −0.325 or 0.799, respectively).



















TABLE 6









Panel
Analysis
P value1
Hazard ratio2







Breast ER−
Cox
3.10E−03
2.25
















AGI ID
Rank
P value3
Terms4







s0691
1
0.04700
−0.163, 0.436, 0.640



s0545
2
0.08900
−0.339, 0.259



s0330x1
3
0.57000
0.510, −5.560








1,2,3,4See Table 5







The prognostic value of these exemplary panels were assessed by generating Kaplan-Meier recurrence curves for ER+/node− and ER− patients. Patients whom the panels predicted as being strongly likely to recur were placed in the “bad” prognosis group. Patients whom the panels predicted as being strongly unlikely to recur were given the prediction of “good”. Patients whom the panels predicted as neither being strongly likely to recur or not recur were placed in the “moderate” prognosis group. Kaplan-Meier curves were then calculated based on recurrence data for patients within each group. FIG. 6 shows the curves that were obtained for ER+/node− patients in each of these prognostic groups. FIG. 7 shows the curves that were obtained for ER− patients in each of these prognostic groups.


When lymph node status was included as an additional variable for the ER− patient set the preferred panel was as shown in Table 7.














TABLE 7









Panel
Type
P value1
Hazard ratio2







Breast ER−
Cox plus node
3.70E−05
3.93
















AGI ID
Rank
P value3
Terms4







s6007
1
0.05000
−0.460, 0.280



s0545
2
0.06400
−0.400, 0.290



s0068
3
0.18000
−0.350, 0.160



s0330x1
4
0.62000
−5.820, 0.450








1,2,3,4See Table 5







The prognostic value of this exemplary panel was also assessed by generating Kaplan-Meier recurrence curves for ER− patients. Patients whom the panel predicted as being strongly likely to recur were placed in the “bad” prognosis group. Patients whom the model predicted as being strongly unlikely to recur were given the prediction of “good”. Patients whom the model predicted as neither being strongly likely to recur or not recur were placed in the “moderate” prognosis group. Kaplan-Meier curves were then calculated based on recurrence data for patients within each group. FIG. 8 shows the curves that were obtained for ER− patients in each of these prognostic groups.


While the preferred Cox panels of the invention for ER+/node− and ER− patients include each of the listed antibodies, it is to be understood that other related panels are encompassed by the present invention. In particular, it will be appreciated that the present invention is in no way limited to the specific antibodies listed. For example, other antibodies directed to the same biomarker(s) may be used (e.g., taking the Cox ER+/node− panel, it can be readily seen from Appendix A that antibodies s0702 or s0296P1 can be replaced with other antibodies directed to biomarker Hs.184601; antibody s6006 can be replaced with other antibodies directed to biomarker Hs.1846, etc.). As noted, addition of certain antibodies from Appendix E had no effect on the significance and prognostic ability of the panel as a whole. Thus, antibodies may be added to any given panel without necessarily diminishing the utility of a panel for patient prognosis. The inclusion of antibodies beyond those listed in Appendix E is also within the scope of the invention. In certain embodiments less than all of the listed antibodies may be used in a prognostic panel.


Generally, a Cox panel for ER+/node− patients will include at least two antibodies selected from the group consisting of antibodies directed to biomarkers Hs.184601, Hs.1846, Hs.75789, Hs.63609 and Hs.220529 (e.g., s0702 and/or s0296P1, s6006, s0404, s0545 and s0235, see Table 5 and Appendix A). Preferably, the panel will include an antibody directed to biomarker Hs.184601 and at least one antibody directed to a biomarker selected from the group consisting of Hs.1846, Hs.75789, Hs.63609 and Hs.220529. All permutations of these antibodies are encompassed. In one embodiment an antibody to biomarker Hs.184601 (e.g., s0702 and/or s0296P1) is used with an antibody to biomarker Hs.1846 (e.g., s6006). In another embodiment an antibody to biomarker Hs.184601 is used with antibodies to biomarkers Hs.1846 and Hs.75789 (e.g., s6006 and s0404). In other embodiments an antibody to biomarker Hs.184601 is used with antibodies to biomarkers Hs.1846, Hs.75789, Hs.63609 and optionally Hs.220529 (e.g., s6006, s0404, s0545 and optionally s0235). In preferred embodiments an antibody to Hs.184601 is used with antibodies to biomarkers Hs.1846, Hs.75789, Hs.63609 and Hs.220529.


Similarly, a Cox panel for ER− patients will include at least two antibodies selected from the group consisting of antibodies directed to biomarkers Hs.6682, Hs.63609 and Hs.306098 (e.g., s0691, s0545 and s0330x1, see Table 6 and Appendix A). Preferably, the panel will include an antibody directed to biomarker Hs.6682 and antibodies to one or both of biomarkers Hs.63609 and Hs.306098. In preferred embodiments an antibody to biomarker Hs.6682 is used with antibodies to biomarkers Hs.63609 and Hs.306098.


When lymph node status is used as an additional variable, an inventive prognostic Cox panel for ER− patients will include at least two antibodies selected from the group consisting of antibodies directed to biomarkers Hs.80976, Hs.63609, Hs.416854 and Hs.306098 (e.g., s6007, s0545, s0068 and s0330x1, see Table 7 and Appendix A). Preferably, the panel will include an antibody directed to biomarker Hs.80976 and antibodies to one or more of biomarkers Hs.63609, Hs.416854 and Hs.306098. All permutations of these antibodies are encompassed. In one embodiment an antibody to biomarker Hs.80976 is used with an antibody to biomarker Hs.63609. In another embodiment an antibody to biomarker Hs.80976 is used with antibodies to biomarkers Hs.63609 and Hs.416854 and optionally with a biomarker to Hs.306098. In preferred embodiments an antibody to biomarker Hs.80976 is used with antibodies to biomarkers Hs.63609, Hs.416854 and Hs.306098.


The present invention also encompasses methods of assessing the prognosis of a patient having a breast tumor using these exemplary panels. After obtaining a tumor sample from a patient with unknown prognosis the sample is contacted with two or more antibodies from the panels of Tables 5, 6 and/or 7. The patient's likely prognosis is then assessed based upon the pattern of positive and negative binding of the two or more antibodies to the tumor sample.


Prognostic Panels Generated by Regression Tree Analysis


Regression trees classify the patients into a number of subclasses each defined by their pattern of binding to a unique set of antibodies from within a panel. An exemplary tree (or “dendrogram”) for ER+/node− patients is shown in FIG. 9 which is discussed below. Regression trees were initially created with all applicable antibodies, and then “pruned” to a minimal complexity (least number of terminal nodes without losing too much prognostic ability) using a cross validation procedure. This cross validation procedure involved building panels and dendrograms using a series of patient groups that were picked from the total patient set using a series of increasingly pruned trees. The results over the tested groups were summed and the minimally complex least error-prone panel and dendrogram were chosen. The resulting dendrogram was further simplified by placing nodes with a range of response values into the classes “good” or “poor” (or alternatively “good”, “moderate” or “poor”). Table 8 lists the antibodies of an exemplary ER+/node− tree panel that was constructed as described above. The dendrograms for this panel is illustrated in FIG. 9.














TABLE 8









Panel
Analysis
P value1
Hazard ratio2







Breast ER+/node-
Tree
2.82E−05
6.06














AGI ID
Rank







s0702/s0296P1
1



s0081
2



s6006
2



s6007
3



s0545
4



s6002
4








1P value of overall panel





2Hazard ratio of overall panel







As illustrated in FIG. 9, if a patient is positive for staining at a given node his or her prognosis decision tree follows the branch marked with a “+”. Conversely if a patient is negative for staining at a given node his or her prognosis decision tree follows the branch marked “−”. This is done until a terminus is reached.


For example, if patient A is positive for staining with s0702 and negative for staining with s0081 then, based on the dendrogram, his or her prognosis is “bad”. In contrast, if patient B is negative for staining with s0702, negative for staining with s6006, positive for staining with s6007 and negative for staining with s0545 then his or her prognosis is “good”. It will be appreciated from the foregoing and FIG. 9 that the number of stains required in order to yield a prognosis will vary from patient to patient. However, from a practical standpoint (and without limitation), it may prove advantageous to complete all the stains for a given panel in one sitting rather than adopting an iterative approach with each individual antibody.


The prognostic value of the exemplary panel of Table 8 was also assessed by generating Kaplan-Meier recurrence curves for ER+/node− patients. Patients whom the panel predicted as being strongly likely to recur were placed in the “bad” prognosis group. Patients whom the panel predicted as being strongly unlikely to recur were given the prediction of “good”. Patients whom the panel predicted as neither being strongly likely to recur or not recur were placed in the “moderate” prognosis group. Kaplan-Meier curves were then calculated based on recurrence data for patients within each group. FIG. 10 shows the curves that were obtained for ER+/node− patients in each of these prognostic groups.


Generally, a tree panel for ER+/node− patients will include an antibody to biomarker Hs.184601 (e.g., s0702 or s0296P1) with antibodies to one or both of biomarkers Hs.155956 and Hs.1846 (e.g., s0081 and s6006, see Table 8 and Appendix A). In certain embodiments an antibody to biomarker Hs.80976 (e.g., s6007) may be added, optionally with antibodies to one or both of biomarkers Hs.63609 and Hs.2905 (e.g., s0545 and s6002). In preferred embodiments, the tree panel includes an antibody to biomarker Hs.184601 and antibodies to biomarkers Hs.155956, Hs.1846, Hs.80976, Hs.63609 and Hs.2905.


Table 9 lists the antibodies of exemplary ER+ and ER− tree panels that were constructed as described above for the ER+/node− tree panel of Table 8. The dendrograms for theses panels are illustrated in FIG. 11.














TABLE 9









Panel
Analysis
Panel
Analysis







Breast ER+
Tree
Breast ER−
Tree
















AGI ID
Rank
AGI ID
Rank







s0702/s0296P1
1
s6007
1



s0137
2
s0303
2



s6007
2
s0398
2



s5076
3
s0063
3



s0143
3
s0545
4



s6007
4
s0702/s0296P1
4



s0545
4
s0068
5










The present invention also encompasses methods of assessing the prognosis of a patient having a breast tumor using an inventive tree panel. For example, after obtaining a tumor sample from a patient with unknown prognosis the sample is contacted with two or more antibodies from the panel of Table 8 (or one of the panels in Table 9). The patient's likely prognosis is then assessed based upon the positive or negative binding of the two or more antibodies to the tumor sample using the dendrogram of FIG. 9 (or FIG. 11). Taking the ER+/node− panel of Table 8 as an example, the method generally includes a step of contacting the tumor sample with an antibody to biomarker Hs.184601 (e.g., s0702 or s0296P1) and antibodies to one or both of biomarkers Hs.155956 and Hs.1846 (e.g., s0081 and/or s6006). In other embodiments the tumor sample is further contacted with an antibody to biomarker Hs.80976 (e.g., s6007) and optionally with antibodies to biomarkers Hs.63609 and/or Hs.2905 (e.g., s0545 and/or s6002). As mentioned above, the tumor sample may be contacted with these antibodies in a single sitting or sequentially based on the binding results of a previous stain. Obviously the tumor sample may be divided and different antibodies contacted with different fractions. Alternatively different original tumor samples may be contacted with different antibodies.


Whether created by Cox or regression tree analysis, the exemplary prognostic panels were determined to be independent of age, stage, and grade. To ensure that the panels were not identifying classes of patients unlikely to be found to be significant in an independent cohort, cross validation was used to estimate the error inherent in each panel. Ten-fold cross-validation was performed by sequentially “leaving-out” 10% of patients and building panels on the remaining patients ten times such that all patients were ultimately classified. This included re-determining the set of antibodies sufficiently significant to be employed in the panel building process (p-value <0.10). Cross validated p-values reflect the confidence calculated for the sum of the ten independent panels and confirmed the statistical significance of these panels. For the ER+/node− patient set, both the Cox (Table 5) and regression tree (Table 8) panels showed significance after cross-validation (p-value/hazard ratio of 1.12E-02/2.36 and 3.40E-03/2.91, respectively). For the ER− patient set, the Cox panels (Tables 6-7) were also shown to be able to retain significance (p-value/hazard ratios of 6.40E-02/1.37 and 1.80E-03/1.79 for the panels of Table 6 and 7, respectively).


It is to be understood that each of the exemplary Cox and tree panels described herein may be used alone, in combination with one another (e.g., the Cox panel of Table 5 and the tree panel of Table 8 for ER+/node− patients) or in conjunction with other panels and/or independent prognostic factors.


Example 13
Prognostic Lung Cancer Panels

This Example builds on the results of Example 11 and describes the identification of exemplary panels of antibodies whose binding has been shown to correlate with the prognosis of lung cancer patients.


Prognostic panels in two currently identified clinically important subclasses of lung cancer patients were generated, namely adenocarcinoma and squamous cell carcinoma patients. Consistent with the known clinical significance of diagnoses of these two subclasses of lung cancer patients it was found that the most robust models were derived when patients were first classified in this manner, and then the separate patient groups modeled independently. It will be appreciated that this approach is non-limiting and that models could be generated using all lung cancer patients or using other subclasses of patients. To minimize the chance of identifying spurious associations, only those antibodies from Appendix D that showed sufficient significance (p-value of less than 0.10) in the adenocarcinoma patient class were used in creating prognostic panels for the adenocarcinoma patients, and only the similarly significant markers from the squamous cell carcinoma patient class for creating a prognostic panel for the squamous cell carcinoma patients. Using Cox proportional hazard analysis (as described in Example 10) candidate panels were derived for prediction of early recurrence. For both adenocarcinoma and squamous cell carcinoma patients, panels were chosen that identified patients with significantly increased risks of recurrence.


As previously noted, Cox proportional hazard analysis treats the component antibodies of a panel as additive risk factors. The panels for the specified patient classes were created by initially using all applicable antibodies, and then iteratively removing antibodies from the panel. If the removal of an antibody increased or did not affect the significance and prognostic ability of the panel as a whole, it was excluded, otherwise it was retained. In this manner preferred panels with minimal numbers of antibodies were created. The preferred panels for squamous cell carcinoma and adenocarcinoma patients are presented in Tables 10 and 11, respectively. Antibodies within the preferred panels are ranked based on their relative contributions to the overall prediction function.














TABLE 10









Panel
Analysis
P value1
Hazard ratio2







Lung squamous
Cox
3.20E−05
6.88
















AGI ID
Rank
P value3
Terms4







s0022
1
0.00620
0.880, −1.240



s0702/s0296P1
2
0.12000
0.980, −0.150



s0330
3
0.13000
0.870, −0.034



s0586
4
0.16000
0.680, −0.250








1P value of overall panel





2Hazard ratio of overall panel





3P value of the contribution of a given antibody to the overall panel





4Contribution of given antibody to overall panel prediction function depending on IHC score (e.g., scores of 0 or 1 for s0022 which uses scoring method 2 [see Appendix D] result in its term in the model equaling 0.880 or −1.240, respectively).



















TABLE 11









Panel
Analysis
P value1
Hazard ratio2







Lung
Cox
1.30E−05
3.23



adenocarcinoma
















AGI ID
Rank
P value3
Terms4







s6013
1
0.02000
−0.430, 0.520



s0545
2
0.03500
−0.070, 1.150



s0404
3
0.04000
−0.270, 0.550



s0702/s0296P1
4
0.08800
−0.230, 0.450








1,2,3,4See Table 10







The prognostic value of these exemplary panels were assessed by generating Kaplan-Meier recurrence curves for the combined lung cancer patients of the HH lung cohort. Patients were initially classified as adenocarcinoma or squamous cell carcinoma patients. For each patient the pattern of antibody staining with the applicable panel (i.e., Table 10 or 11) was then assessed. Patients whom the panels predicted as being strongly likely to recur were placed in the “bad” prognosis group. Patients whom the panels predicted as being strongly unlikely to recur were given the prediction of “good”. Patients whom the panels predicted as neither being strongly likely to recur or not recur were placed in the “moderate” prognosis group. Kaplan-Meier curves were then calculated based on five year recurrence data for patients within each group. FIG. 12 shows the curves that were obtained when the combined lung cancer patients were placed in “good”, “moderate” or “bad” prognosis groups. FIG. 13 shows the curves that were obtained when patients in the “moderate” and “bad” groups were combined into a single “bad” prognostic group.


To ensure that the panels were not identifying classes of patients unlikely to be found to be significant in an independent cohort, cross validation was used to estimate the error inherent in each panel. Ten-fold cross-validation was performed by sequentially “leaving-out” 10% of patients and building panels on the remaining patients ten times such that all patients were ultimately classified. This included re-determining the set of antibodies sufficiently significant to be employed in the panel building process (p-value <0.10). Cross validated p-values reflect the confidence calculated for the sum of the ten independent panels and confirmed the statistical significance of these panels. The panels showed significance after cross-validation with the combined lung patients (p-value/hazard ratio of 2.20E-02/1.48 when a “good”, “moderate” and “bad” scheme was used and 1.80E-02/2.07 when a “good” and “bad” scheme was used).


While preferred Cox panels of the invention for lung cancer patients include each of the listed antibodies, it is to be understood that other related panels are encompassed by the present invention. In particular, it will be appreciated that the present invention is in no way limited to the specific antibodies listed. For example, other antibodies directed to the same biomarker(s) may be used (e.g., taking the squamous cell carcinoma panel, it can be readily seen from Appendix A that antibody s0022 can be replaced with other antibodies directed to biomarker Hs.176588; s0702 or s0296P1 can be replaced with other antibodies directed to biomarker Hs.184601, etc.). Other antibodies from Appendix D may be added to any given panel without necessarily diminishing the utility of a panel for patient prognosis. The inclusion of antibodies beyond those listed in Appendix D is also within the scope of the invention. In certain embodiments less than all of the listed antibodies may be used in a prognostic panel.


Generally, a Cox panel for squamous cell carcinoma patients will include at least two antibodies selected from the group consisting of antibodies directed to biomarkers Hs.176588, Hs.184601, Hs.306098 and Hs.194720 (e.g., s0022, s0702 or s0296P1, s0330 and s0586, see Table 10 and Appendix A). Preferably, the panel will include an antibody directed to biomarker Hs.176588 and at least one antibody directed to a biomarker selected from the group consisting of Hs.184601, Hs.306098 and Hs.194720. All permutations of these antibodies are encompassed. In one embodiment an antibody to biomarker Hs.176588 (e.g., s0022) is used with an antibody to biomarker Hs.184601 (e.g., s0702 and/or s0296P1). In another embodiment an antibody to biomarker Hs.176588 is used with antibodies to biomarkers Hs.184601 and Hs.306098 (e.g., s0702 or s0296P1 and s0330). In preferred embodiments an antibody to biomarker Hs.176588 is used with antibodies to biomarkers Hs.184601, Hs.306098 and Hs.194720.


Similarly, a Cox panel for adenocarcinoma patients will include at least two antibodies selected from the group consisting of antibodies directed to biomarkers Hs.323910, Hs.63609, Hs.75789 and Hs.184601 (e.g., s6013, s0545, s0404 and s0702 or s0296P1, see Table 11 and Appendix A). Preferably, the panel will include an antibody directed to biomarker Hs.323910 and at least one antibody directed to a biomarker selected from the group consisting of Hs.63609, Hs.75789 and Hs.184601. All permutations of these antibodies are encompassed. In one embodiment an antibody to biomarker Hs.323910 (e.g., s6013) is used with an antibody to biomarker Hs.63609 (e.g., s0545). In another embodiment an antibody to biomarker Hs.323910 is used with antibodies to biomarkers Hs.63609 and Hs.75789 (e.g., s0545 and s0404). In preferred embodiments an antibody to biomarker Hs.323910 is used with antibodies to biomarkers Hs.63609, Hs.75789 and Hs.184601.


It is to be understood that these exemplary Cox panels may be used alone, in combination with one another or in conjunction with other panels and/or independent prognostic factors.


The present invention also encompasses methods of assessing the prognosis of a patient having a lung tumor using these exemplary panels. After obtaining a tumor sample from a patient with unknown prognosis the sample is contacted with two or more antibodies from the panels of Table 10 and/or 11. The patient's likely prognosis is then assessed based upon the positive or negative binding of the two or more antibodies to the tumor sample.


Example 14
Use of Prognostic Lung Cancer Panels with an Independent Cohort

This Example builds on the results of Example 13 by describing how the exemplary prognostic lung cancer panels were used to predict recurrence in an independent cohort of lung cancer patients.


A cohort of 119 lung cancer patients from the University of Alabama-Birmingham (UAB) was used for this purpose. Relatively limited clinical data was available for these patients, in most cases only survival time was available. The average time of follow-up among patients who did not die of disease was 28 months. Of the 119 patients, 54 were noted to have had a recurrence of cancer within the study period, and 74 died of disease. This cohort differed significantly from the HH lung cohort (see Example 11) in that it was not limited to early stage tumors, and therefore the cohort had a greater incidence of death due to disease. Since recurrence data for this cohort was limited, the prognostic panels of Example 13 (designed to predict recurrence) were used to predict survival in this independent cohort. Specifically, the prognostic value of the panels were assessed by generating Kaplan-Meier survival curves for the combined lung cancer patients of the UAB lung cohort. As in Example 13, patients were initially classified as adenocarcinoma or squamous cell carcinoma patients. For each patient the pattern of antibody staining with the applicable panel (i.e., Table 10 or 11) was then assessed. Patients were placed in “bad”, “moderate” and “good” prognosis groups based on their binding patterns with these antibodies. Kaplan-Meier curves were then calculated based on survival data for patients within each group. FIG. 14 shows the curves that were obtained when the combined lung cancer patients were placed in “good”, “moderate” or “bad” prognosis groups (p-value/hazard ratio of 5.20E-02/1.98). FIG. 15 shows the curves that were obtained when the patients in the “moderate” and “bad” groups were combined into a single “bad” prognostic group (p-value/hazard ratio of 2.50E-02/3.03). FIG. 16 shows the curves that were obtained when the subclass of adenocarcinoma patients were placed in “good”, “moderate” or “bad” prognosis groups (no patients fell within the “bad” group hence there are only two curves, p-value/hazard ratio of 4.00E-02/2.19). FIG. 17 shows the curves that were obtained when the subclass of squamous cell carcinoma patients were placed in “good”, “moderate” or “bad” prognosis groups (p-value/hazard ratio of 2.50E-02/3.03).


The prognostic significance of individual antibodies identified in the HH lung cohort (i.e., those listed in Appendix D) were also reassessed using the five year survival data from the UAB lung cohort. The methodology was as described in Example 11. The prognostic significance of these same antibodies was also recalculated using five year recurrence data from the HH lung cohort (instead of the complete follow-up period as in Example 11 where patients who did not die of disease were followed for a period of up to ten years). Based on these calculations, several antibodies from Appendix D were found to have a relatively significant individual prognostic value (p-value less than 0.2) in both the HH and UAB lung cohorts. These antibodies are presented in Appendix F.


Example 15
Use of a Lung Cancer Classification Panel with an Independent Cohort

The pattern of reactivity with the lung cancer classification panel of Example 5 (see Appendix A) was determined using samples from the HH lung cohort (data not shown). As in Example 4, patients were classified using k-means clustering. Seven sub-classes of lung cancer patients were chosen by their consensus pattern of staining.


The morphology of the lung cancers within each sub-class were determined and are shown graphically in FIG. 18. Interestingly, the sub-classes were found to comprise patients with lung cancers having similar morphological characteristics (i.e., sub-classes 1, 2, 3 and 7 were composed of a majority of patients with adenocarcinomas; sub-classes 4 and 5 were composed of a majority of patients with squamous cell carcinomas and sub-class 6 was composed of a majority of patients with large cell carcinomas). These results suggest that the antibodies in the classification panel are recognizing biological and clinical diversity in lung cancers.


Out of interest, the prognostic value of these seven sub-classes was also assessed. (Note that these sub-classes were constructed based on sample staining patterns across the entire classification panel of Appendix A. This differs from the approach that was described in Example 14 where specific antibodies with predetermined prognostic value were combined into prognostic panels that were then used to classify patients). The average probability of recurrence for the overall HH cohort was first calculated and found to level out at about 38% after six years. Average probabilities within each of the seven HH sub-classes were then calculated and compared with the overall average. Sub-classes with an average probability of recurrence after six years that was greater than 48% (i.e., more than 10% worse than the overall population) were classified as having a “bad” prognosis. Sub-classes with an average probability of recurrence after six years that was less than 28% (i.e., more than 10% better than the overall population) were classified as having a “good” prognosis. Sub-classes with an average probability of recurrence after six years of 28 to 48% were classified as having a “moderate” prognosis. Based on this analysis, HH sub-classes 1, 6 and 7 were classified as “bad”; HH sub-classes 2 and 4 as “moderate”; and HH sub-classes 3 and 5 as “good”. When the recurrence data for patients in the “bad”, “moderate” and “good” classes were combined and plotted as Kaplan-Meier curves the different outcomes for the three prognostic groups were statistically significant (p-value <0.02, data not shown).


In order to assess whether the sub-classes of FIG. 18 would correlate across lung cancers in general, the k-means clustering criteria that were used in classifying the HH lung cohort were “forced” onto samples from an independent lung cohort (namely the UAB lung cohort that was described in Example 14). Note that while the HH lung cohort was composed of Stage I/II patients, the UAB lung cohort was composed of Stage III/IV patients. Thus, overall the prognosis of UAB patients was worse than the prognosis of HH patients. First, the mean values from the HH k-means analysis were calculated for each of the seven HH sub-classes of FIG. 18. Antibody staining results for each UAB sample were then compared with all seven means and samples were assigned to one of the seven “HH sub-classes” based on the closest match. The seven UAB clusters were then classified as having a “bad”, “moderate” and “good” prognosis based simply on the prognoses that had been previously determined for the corresponding seven HH sub-classes (see above). When the recurrence data for patients in the “bad”, “moderate” and “good” classes were combined and plotted as Kaplan-Meier curves the different outcomes for the three prognostic groups were again statistically significant (p-value <0.02, data not shown). Examination of the curves and subsequent analysis showed that “good” and “moderate” gave similar outcomes relative to each other while “bad” was clearly divergent from these two.


Example 16
Ovarian Cancer Classification Panel (Stanford Ovarian Cohort)

The present inventors prepared an exemplary panel of antibodies for use in classifying ovarian tumors. 17 of the 460 differentially staining antibodies of Example 1 exhibited a reproducibly robust staining pattern on tissues relevant for this application. These antibodies were therefore applied (at appropriate titers) to a tissue array comprised of approximately 382 independent ovarian tumor samples from a cohort of ovarian cancer patients (the Stanford ovarian cohort). Stained tissue samples were scored by a trained cytotechnologist or pathologist on a semi-quantitative scale in which 0=no stain on tumor cells; 1=no information; 2=weak staining of tumor cells; and 3=strong staining of tumor cells. Antibodies were included in a ovarian cancer classification panel if they stained greater than 10% and less than 90% of a defined “consensus panel” of the ovarian tumor tissue samples on at least two independent tissue arrays.


A given tissue sample was included in this “consensus panel” if at least 80% of the antibodies tested gave interpretable scores (i.e., a non-zero score) with that sample. Of the 382 ovarian tumor samples in the tissue array about 342 were included in the consensus panel. Also, in scoring antibody binding to the consensus panel, all scores represented a consensus score of replicate tissue arrays comprised of independent samples from the same sources. The consensus score was determined by computing the median (rounded down to an integer, where applicable) of all scores associated with a given antibody applied under identical conditions to the particular patient sample. In cases where the variance of the scores was greater than 2, the score was changed to 1 (i.e., no information). The data for each antibody was stored in an Oracle-based database that contained the semi-quantitative scores of tumor tissue staining and also contained links to both patient clinical information and stored images of the stained patient samples.


Through this analysis 16 of the 17 tested antibodies were selected for inclusion in an exemplary ovarian cancer classification panel (see Appendix A). It is to be understood that any sub-combination of these 16 antibodies may be used in constructing an inventive ovarian cancer classification panel. It will also be appreciated that additional antibodies may be added to or removed from an inventive ovarian cancer classification panel as more tumor markers are identified and/or more samples are tested (e.g., those identified in Examples 17 and 18 or others).


Example 17
Ovarian Cancer Classification Panel (UAB Ovarian Cohort)

The present inventors identified other exemplary antibodies for use in classifying ovarian tumors using a second tissue array comprised of approximately 160 independent ovarian tumor samples from a cohort of ovarian cancer patients (the UAB ovarian cohort). 75 of the 460 differentially staining antibodies of Example 1 exhibited a reproducibly robust staining pattern on tissues relevant for this application. Of the 160 ovarian tumor samples in the tissue array about 146 were included in the consensus panel. Using the method described in Example 16, 55 of the 75 tested antibodies were selected for inclusion in an exemplary ovarian cancer classification panel (see Appendix A). It is to be understood that any sub-combination of these 55 antibodies may be used in constructing an inventive ovarian cancer classification panel. It will also be appreciated that additional antibodies may be added to or removed from an inventive ovarian cancer classification panel as more tumor markers are identified and/or more samples are tested (e.g., those identified in Examples 16 and 18 or others).


Example 18
Ovarian Cancer Classification Panel (Russian Ovarian Cohort)

The present inventors identified yet other exemplary antibodies for use in classifying ovarian tumors using a third tissue array comprised of approximately 260 independent ovarian tumor samples from a cohort of ovarian cancer patients (the UAB ovarian cohort). 247 of the 460 differentially staining antibodies of Example 1 exhibited a reproducibly robust staining pattern on tissues relevant for this application. Of the 260 ovarian tumor samples in the tissue array about 226 were included in the consensus panel. Using the method described in Example 16, 47 of the 247 tested antibodies were selected for inclusion in an exemplary ovarian cancer classification panel (see Appendix A). It is to be understood that any sub-combination of these 47 antibodies may be used in constructing an inventive ovarian cancer classification panel. It will also be appreciated that additional antibodies may be added to or removed from an inventive ovarian cancer classification panel as more tumor markers are identified and/or more samples are tested (e.g., those identified in Examples 16 and 17 or others).


Example 19
Correlating Interaction Partner Binding with Clinical Prognostic Data in Ovarian Cancer

This Example describes the identification of exemplary panels of antibodies whose binding has been shown to correlate with the prognosis of ovarian cancer patients.


Samples from patients were stained with antibodies from the ovarian cancer classification panel identified in Appendix A (as previously described in Examples 16-18). The stained samples were then scored in a semi-quantitative fashion; scoring methods 1-3 use the following schemes: method 1 (0=negative; 1=weak; 2=strong); method 2 (0=negative; 1=weak or strong); and method 3 (0=negative or weak; 1=strong). For each antibody, the scoring system used was selected to produce the most significant prognostication of the patients, as determined by a log-rank test (e.g., see Mantel and Haenszel, Journal of the National Cancer Institute 22:719-748, 1959). The results are presented in Appendix G. As shown, the antibodies were found to have differing significances for each of these categories of ovarian cancer patients.


It is to be understood that exclusion of a particular antibody from any prognostic panel based on these experiments is not determinative. Indeed, it is anticipated that additional data with other samples may lead to the identification of other antibodies (from Appendix A and beyond) that may have prognostic value for these and other classes of patients.


As for the breast study of Example 10 and the lung study of Example 11, the expected relationship between the staining of patient samples with each antibody and the recurrence of tumors was measured using the Kaplan-Meier estimate of expected recurrence and a log-rank test was used to determine the significance of different expected recurrences. This produces the p-value that is listed for each antibody in Appendix G. Preferred antibodies are those that produce a p-value of less than 0.10.


The degree to which these antibodies predicted recurrence was determined using a Cox univariate proportional hazard model. The “hazard ratio” listed in Appendix G for each antibody reflects the predicted increase in risk of recurrence for each increase in the staining score. Scores greater than 1.0 indicate that staining predicts an increased risk of recurrence compared to an average individual, scores less than 1.0 indicate that staining predicts a decreased risk.


It will be appreciated that these prognostic antibodies can be used alone or in combinations to predict recurrence (e.g., in combinations of 2, 3, 4, 5 or 6 antibodies). It will also be appreciated that while a given antibody may not predict recurrence when used alone, the same antibody may predict recurrence when used in combination with others. It will also be understood that while a given antibody or combination of antibodies may not predict recurrence in a subset of patients, the same antibody or combination of antibodies may predict recurrence in a different subset of patients.


As for the prognostic breast panels of Examples 10 and 12 and the prognostic lung panels of Example 13, these prognostic panels could be constructed using any method. Without limitation these include simple empirically derived rules, Cox multivariate proportional hazard models, regression trees, and/or neural networks. In certain embodiments a prognostic panel might include between 2-10 antibodies, for example 3-9 or 5-7 antibodies. It will be appreciated that these ranges are exemplary and non-limiting. Examples 20-23 describe some exemplary panels for ovarian cancer.


Example 20
Correlating Interaction Partner Binding with Prognosis and Response to Therapy in Ovarian Cancer

This Example describes additional experiments identifying exemplary panels of antibodies whose binding has been shown to correlate with prognosis or response to therapy in ovarian cancer patients.


Antibody Selection


Targets for antibody production were selected on the basis of gene expression patterns in breast, ovarian cancer and other tumor types. 432 antibodies were screened by staining tissue arrays containing diverse normal and tumor tissue specimens. 21 of these antibodies were selected that separated tumors into divergent unsupervised groups; stained consistently using established protocols; and recognized proteins found to be differentially expressed in other tumor types (e.g., breast and lung). The 21 antibodies are set forth in Table 12 (see Appendix A for additional information).











TABLE 12





AGI ID
Gene Name
Dilution

















s0015
CPE-Receptor Claudin 4
200


s0036
Human GABA-A receptor pi subunit
500


s0059P2
ataxia-telangiectasia group D-associated protein
30


s0063
iroquois related homeobox 3
900


s0090
HUMAN MRNA FOR KIAA0275 GENE, COMPLETE CDS
200



AA398230


s0096
ATPase, H+ transporting, lysosomal (vacuolar proton pump), beta
800



polypeptide, 56/58 kD, isoform 1R7340


s0124
KIAA1252 (pterin-4a-carbinolamine dehydratase)
990


s0126
Putative RHO-GAP containing protein AK002114
450


s0143P3
fasn
300


s0202
PTK7
780


s0244
DACh dachshund (drosophila) homologue
1350


s0260
KIAA0253
2400


s0296P1
Solute Carrier Family 7, member 5/LAT1 protein
450


s0330
aldo-keto reductase family 1, member C1/C2
30000


s0398
FAT tumor suppressor (Drosophila) homolog (FAT)
45


s0447
papillary renal cell carcinoma (translocation-associated) (prcc)
4000


s0545
RNA methyltransferase (HpaII tiny fragments locus 9C)
1200


s0640
PROC: protein C (inactivator of coagulation factors Va and VIIIa)
1800


s0691
solute carrier family 7, (cationic amino acid transporter, y+ system)
1500



member 11


s0695
integrin, beta 4
2700


s0702
Solute Carrier Family 7, member 5/LAT1 protein
89100










Patient Selection


Patients were selected from the years 1995-2003 with initial surgery being performed at a single institution having a diagnosis of epithelial ovarian or primary peritoneal carcinoma. A summary of patient clinical data is provided in Table 13. Survival data calculated from completion of primary therapy is provided in Table 14. All patient tumor samples were from chemo-naïve patients undergoing initial debulling effort. All patient samples were treated with platinum containing regimens. Patients must have been followed for an adequate enough time to establish platinum sensitivity or resistance (>12 months for patients without recurrence or progression). Clinical data extracted included histology, tumor grade, stage, and debulking status (residual tumor).












TABLE 13







Number
%




















Stage





I
9
6%



II
23
14%



III/IV
127
79%



Unknown
2
1%



Grade



1
8
5%



2
37
23%



3
72
45%



Unknown
44
27%



Histology



Pap Serous
62
39%



Endomet
59
37%



Mucinous
1
1%



Mixed
17
11%



Undiff
7
4%



Clear
3
2%



Other/Unknown
11
7%



Debulking



Optimal
75
5%



Suboptimal
72
45%



Unknown
14
9%



Taxol/Platinum
144
89%





















TABLE 14










Months
95% CI







Med PFS



Optimal
25
15-36



Suboptimal
8.6
5.4-12 



Med OS



Optimal
43
33-53



Suboptimal
35
28-42



PFS by Stage



I
42




II
43
16-70



III/IV
12
 9-16
















Number
%







Chemosensitivity



Progressive Disease
31
19



<6 mo Platinum free
24
15



6-12 mo Plat free
24
15



>12 mo Plat free
79
49



Unknown/not stated
 3
 2



Extreme Platinum Sensitivity



<6 mo/Progressive Disease
55
34



>12 mo Plat free
79
49











Tissue Microarray Construction


0.6 mm cores were obtained from archival paraffin embedded tumor samples and arrayed into new paraffin blocks. These were then sectioned and stained with various antibodies using ENVISION immunohistochemistry established protocols. Each tissue array contained relevant positive and negative tissue controls from divergent tissue types. Each case was assigned a semi-quantitative score that reflected the presence or absence of tumor tissue and the relative strength of the stain (score: 0=tumor present-no stain, 1=no information, 2=tumor present-weak stain, 3=tumor present-strong stain).


Statistics


Univariate statistics were computed using Chi-Square for antibody prediction of debulking status, chemosensitivity (<12 months, >12 months platinum free interval to recurrence), and extreme chemosensitivity (<6 month vs. >12 month platinum free interval). Kaplan-Meier curves were generated for each antibody comparing binding (any staining vs. no staining) using log-rank test for disease free (DFS) and overall (OS) survival. An unsupervised two-step cluster analysis was performed to identify groups with similar IHC binding patterns. Kaplan-Meier curves were generated comparing cluster groups for DFS and OS. Cox regression was performed to assess for independence of cluster membership as a prognostic variable controlling for stage, grade, and debulking status. Logistic regression was performed to assess independence of antibody binding for debulking status and platinum sensitivity.


Results


Of the 21 antibodies analyzed by univariate analysis, three antibodies were determined to be significant for ability to achieve optimal debulking (s0063, s0090 and s0260), three for chemosensitivity (s0090, s0202 and s0260), and five for disease free survival (s0059P2, s0124, s0202, s0260 and s0296P1) (see Table 15, near-significant values are included for comparison only). All seven surpassed tumor grade and histology for their ability to predict dependent outcomes.














TABLE 15






Debulk-
Platinum
Extreme Plat

Direction


AGI ID
ing1
Sensitivity1
Sensitivity1
DFS2
of factor







s0015
NS
NS
NS
NS



s0036
NS
NS
NS
0.090


s0059P2
NS
NS
NS
0.040
Negative


s0063
0.020
NS
NS
NS
Negative


s0090
0.003
0.016
0.014
NS
Negative


s0096
NS
NS
NS
NS


s0124
NS
NS
NS
0.016
Negative


s0126
0.090
NS
NS
NS


s0143P3
NS
NS
NS
0.090


s0202
NS
0.040
NS
0.007
Negative


s0244
NS
NS
NS
NS


s0260
0.030
0.004
0.010
0.007
Negative


s0296P1
NS
NS
NS
0.050
Positive


s0330
NS
NS
NS
NS


s0398
NS
NS
NS
NS


s0447
0.090
NS
NS
NS


s0545
NS
NS
NS
NS


s0640
NS
NS
NS
NS


s0691
NS
NS
NS
NS


s0695
NS
NS
NS
0.090


s0702
NS
NS
NS
NS


Stage
<0.001  
0.001
0.013
0.004


Grade
NS
0.07 
NS
NS


Histology
NS
NS
NS
NS


Debulking

<0.001  
<0.001  
<0.001  


Cluster
0.007
0.008
0.026
0.001


Membership






1P value using Chi-Squared test




2P value using log rank test







It will be appreciated that these prognostic antibodies can be used alone or in combinations (e.g., in combinations of 2, 3, 4, 5, 6 or more antibodies). It will also be appreciated that while a given antibody may not be prognostic when used alone, the same antibody may add prognostic value when used in combination with others. It will also be understood that while a given antibody or combination of antibodies may not be prognostic in a subset of patients, the same antibody or combination of antibodies may be prognostic in a different subset of patients.


As for the prognostic breast panels of Examples 10 and 12 and the prognostic lung panels of Example 13, these prognostic panels could be constructed using any method. Without limitation these include simple empirically derived rules, Cox multivariate proportional hazard models, regression trees, and/or neural networks. In certain embodiments a prognostic panel might include between 2-10 antibodies, for example 3-9 or 5-7 antibodies. It will be appreciated that these ranges are exemplary and non-limiting.


Six antibodies were selected for inclusion into cluster analysis based on significant or near-significant univariate statistics as well as performance in similar analyses in other tumor arrays. Two-step cluster analysis distinguished three patient clusters (see Table 16) of which membership in cluster 1 (n=82, 50.9%) was associated with significantly longer DFS, optimal debulking and platinum sensitivity.













TABLE 16









Cluster 3


AGI ID
# Evaluated
Cluster 1 Pos (%)
Cluster 2 Pos (%)
Pos (%)







s0059
151
4 (3%)
47 (31%)
0 (0%)


s0096
152
44 (29%)
59 (39%)
2 (1%)


s0124
152
31 (20%)
35 (23%)
4 (3%)


s0202
151
1 (1%)
6 (4%)
0 (0%)


s0260
153
0 (0%)
35 (23%)
1 (1%)


s0691
150
27 (18%)
15 (10%)
2 (1%)









Cox regression analysis demonstrated that the association with DFS was independent of stage, grade, histology, and debulking status. Logistic regression was performed to assess independence of antibody binding for debulking status and platinum sensitivity. Table 17 summarizes the statistical results from the Cox and logistic regression analysis.














TABLE 17









Platinum




AGI ID
Debulking1
Sensitivity1
DFS2









s0059
NS
NS
NS



s0063
NS
NS
NS



s0090
0.043
NS
NS



s0124
NS
NS
0.003



s0202
NS
NS
NS



s0260
NS
NS
NS



s0296
NS
NS
NS



s0691
NS
NS
0.028



Stage


NS



Debulking


0.002



Cluster


0.040








1Logistic regression





2Cox analysis








Discussion


Several correlations between antibody binding and prognosis or response to therapy have been identified in this Example. Binding with s0063, s0090 and/or s0260 correlates highly with inability to optimally debulk tumors. This correlation is particularly strong with s0090. Binding with s0090, s0202 and/or s0260 correlates highly with platinum resistance. This correlation is particularly strong with s0260 and to a slightly lesser extent s0090. Binding with s0059P2, s0124, s0202, s0260 and/or s0296P1 correlates highly with shorter disease free survival. This correlation is particularly strong with s0202 and s0260 and to a slightly lesser extent s0124.


Example 21
Prognostic Ovarian Cancer Panels (Cox Model)

This Example builds on the results of Example 19 and describes the identification of exemplary panels of antibodies whose binding has been shown to correlate with the prognosis of ovarian cancer patients. These exemplary panels were generated using Cox proportional hazard analysis (as described in Example 10). Candidate panels were derived for prediction of recurrence using samples from the UAB ovarian cohort (see Example 17). Panels were chosen that identified patients with significantly increased risks of recurrence.


As previously noted, Cox proportional hazard analysis treats the component antibodies of a panel as additive risk factors. The panels for the specified patient classes were created by initially using all applicable antibodies, and then iteratively removing antibodies from the panel. If the removal of an antibody increased or did not affect the significance and prognostic ability of the panel as a whole, it was excluded, otherwise it was retained. In this manner preferred panels with minimal numbers of antibodies were created. Exemplary panels for ovarian cancer patients are presented in Tables 18-21. Antibodies within the preferred panels are ranked based on their relative contributions to the overall prediction function.














TABLE 18









Panel
Analysis
P value1
Hazard ratio2







Ovarian
Cox
1.17E−03
1.35
















AGI ID
Rank
P value3
Terms4







s0691
1
0.010
 0.110, −0.280



s0059P2
2
0.031
−0.130, 0.250



s0124
3
0.170
−0.130, 0.200



s0202
4
0.370
−0.030, 0.350



s0096
5
0.490
−0.150, 0.090








1P value of overall panel





2Hazard ratio of overall panel





3P value of the contribution of a given antibody to the overall panel





4Contribution of given antibody to overall panel prediction function depending on IHC score (e.g., scores of 0 or 1 for s0059P2 which uses scoring method 2 [see Appendix G] result in its term in the model equaling −0.130 or 0.250, respectively).



















TABLE 19









Panel
Analysis
P value1
Hazard ratio2







Ovarian
Cox
4.6E−06
1.53
















AGI ID
Rank
P value3
Terms4







s0691
1
0.009
 0.16, −0.59



s0643
2
0.010
 0.19, −0.41



s0059P2
3
0.015
−0.15, 0.35



s0096
4
0.600
−0.06, 0.04








1,2,3,4See Table 18



















TABLE 20









Panel
Analysis
P value1
Hazard ratio2







Ovarian
Cox
4.5E−06
1.89
















AGI ID
Rank
P value3
Terms4







s0691
1
0.001
 0.16, −0.57



s0059P2
2
0.012
−0.16, 0.39



s0643
3
0.024
 0.16, −0.36



s6005
4
0.095
−0.65, 0.09



s0096
5
0.760
−0.02, 0.02








1,2,3,4See Table 18



















TABLE 21









Panel
Analysis
P value1
Hazard ratio2







Ovarian
Cox
5.5E−06
1.87
















AGI ID
Rank
P value3
Terms4







s0059P2
1
0.012
−0.16, 0.38



s0691
2
0.014
0.15, −0.52



s0643
3
0.024
0.16, −0.36



s6005
4
0.083
−0.66, 0.09








1,2,3,4See Table 18







The prognostic value of these exemplary panels were assessed by generating Kaplan-Meier recurrence curves for the combined patients of the UAB ovarian cohort. For each patient the pattern of antibody staining with the applicable panel (i.e., Tables 18-21) was then assessed. Patients whom the panels predicted as being strongly unlikely to recur were given the prediction of “good”. Patients whom the panels predicted as being strongly likely to recur or as neither being strongly likely to recur or not recur were grouped in a “poor” prognosis group. Kaplan-Meier curves were then calculated based on recurrence (and optionally survival) data for patients within each group. FIG. 19 shows the recurrence (and survival) curves that were obtained when the ovarian cancer patients were placed in “good” (upper curve) or “poor” (lower curve) prognosis groups using the panel of Table 18. FIGS. 20-22 show the recurrence curves that were obtained when the ovarian cancer patients were placed in “good” (upper curve) or “poor” (lower curve) prognosis groups using the panels of Tables 19-21, respectively.


While preferred Cox panels of the invention for ovarian cancer patients include each of the listed antibodies, it is to be understood that other related panels are encompassed by the present invention. In particular, it will be appreciated that the present invention is in no way limited to the specific antibodies listed. For example, other antibodies directed to the same biomarker(s) may be used (e.g., it can be readily seen from Appendix A that antibody s0059P2 can be replaced with other antibodies directed to biomarker Hs.504115; etc.). Other antibodies from Appendix G may be added to any given panel without necessarily diminishing the utility of a panel for patient prognosis. The inclusion of antibodies beyond those listed in Appendix G is also within the scope of the invention. In certain embodiments less than all of the listed antibodies may be used in a prognostic panel.


In one set of embodiments, a Cox panel for ovarian patients will include at least two antibodies selected from the group consisting of antibodies directed to the biomarkers with NCBI Entrez GeneIDs 23650, 525, 8879, 5754, 7090, 23657 and 3852 (e.g., s0059P2, s0096, s0124, s0202, s0643, s0691 and s6005, see Tables 18-21 and Appendix A). Preferably, the panel will include an antibody directed to the biomarker with NCBI Entrez GeneID 23650 (e.g., s0059P2) and/or an antibody directed to the biomarker with NCBI Entrez GeneID 23657 (e.g., s0691) and optionally at least one antibody directed to a biomarker selected from the group consisting of biomarkers with NCBI Entrez GeneIDs 525, 8879, 5754, 7090 and 3852 (e.g., s0096, s0124, s0202, s0643 and s6005). All permutations of these antibodies are encompassed. In some of these embodiment, a Cox panel for ovarian patients will include antibodies to the biomarker with NCBI Entrez GeneID 23650 (e.g., s0059P2) and the biomarker with NCBI Entrez GeneID 23657 (e.g., s0691).


As set forth in Table 18, in one set of preferred ovarian panels, antibodies to the biomarkers with NCBI Entrez GeneIDs 23650 (e.g., s0059P2) and 23657 (e.g., s0691) are used in conjunction with antibodies to one or more of the biomarkers with NCBI Entrez GeneIDs 525, 8879 and 5754 (e.g., s0096, s0124 and s0202). For example an ovarian panel may include antibodies to the biomarkers with NCBI Entrez GeneIDs 23650, 23657 and 8879 (e.g., s0059P2, s0691 and s0124). This ovarian panel may further include an antibody to the biomarker with NCBI Entrez GeneID 525 and/or 5754 (e.g., s0096 and/or s0202).


As set forth in Tables 19-21, in another set of preferred ovarian panels, antibodies to the biomarkers with NCBI Entrez GeneIDs 23650 (e.g., s0059P2) and 23657 (e.g., s0691) are used in conjunction with an antibody to the biomarker with NCBI Entrez GeneID 7090 (e.g., s0643). Optionally, an antibody to the biomarker with NCBI Entrez GeneID 525 (e.g., s0096) is also included. Alternatively (or additionally), an antibody to the biomarker with NCBI Entrez GeneID 3852 (e.g., s6005) is also included in an inventive ovarian panel.


It is to be understood that these exemplary Cox panels may be used alone, in combination with one another or in conjunction with other panels and/or independent prognostic factors. Each of the exemplary prognostic panels were determined to be independent stage.


The present invention also encompasses methods of assessing the prognosis of a patient having an ovarian tumor using these exemplary panels. After obtaining a tumor sample from a patient with unknown prognosis the sample is contacted with one of the aforementioned ovarian panels. The patient's likely prognosis is then assessed based upon the positive or negative binding of the antibodies in the panel to the tumor sample.


Example 22
Prognostic Ovarian Cancer Panels (Split Cox Model)

This Example builds on the results of Example 19 and 21 and describes the identification of exemplary panels of antibodies whose binding has been shown to correlate with the prognosis of ovarian cancer patients. These exemplary panels were generated using a “split” Cox model. Specifically, the patients in the UAB cohort were first divided based on whether they stained with an antibody to the biomarker with NCBI Entrez GeneID 55189 (e.g., s0126).


s0126 was chosen to split the ovarian data as it had been noted that it stained approximately half the patient samples and appeared to be a significant factor in driving the hierarchical clustering of the patient samples. Furthermore, it had a very significant interaction (p=0.008) with s0296, an antibody that has proven to be a strong prognosticator in breast, lung, and ovarian cancer. This interaction suggests that s0296 contributes differently to a prognostic model when s0126 is positive compared to when s0126 is negative. This is potentially similar to what we previously observed in lung cancer, wherein s0296 has very different associations with prognosis depending on whether the tumor was from an adenocatcinoma or a squamous cell lung cancer.


Two prognostic panels were then generated by independently using Cox proportional hazard analysis on the two patient sets (as described in Example 10). The panel generated from patients that were s0126 positive is shown in Table 22. The panel generated from patients that were s0126 negative is shown in Table 23.














TABLE 22









Panel
Analysis
P value1
Hazard ratio2







Ovarian (s0126 +ve)
Cox
2.1E−03
1.78
















AGI ID
Rank
P value3
Terms4







s0124
1
0.023
−0.340, 0.420



s0238
2
0.035
−0.320, 0.410



s0672
3
0.085
−0.070, 0.440








1,2,3,4See Table 18



















TABLE 23









Panel
Analysis
P value1
Hazard ratio2







Ovarian (s0126 −ve)
Cox
8.7E−05
4.36
















AGI ID
Rank
P value3
Terms4







s0059P2
1
0.005
−0.450, 0.940



s0140
2
0.011
0.440, −1.050



s0296P1
3
0.230
0.190, −1.080








1,2,3,4See Table 18







The prognostic value of the exemplary panels of Tables 22 and 23 was also assessed by generating Kaplan-Meier recurrence curves for ovarian patients. Patients whom the panels predicted as being strongly unlikely to recur were given the prediction of “good”. Patients whom the panels predicted as being strongly likely to recur were placed in the “bad” prognosis group. Patients whom the panels predicted as neither being strongly likely to recur or not recur were also placed in a third “moderate” prognosis group. Kaplan-Meier curves were then calculated based on recurrence data for patients within each group. FIG. 23 shows the recurrence and survival curves that were obtained for ovarian patients in the “good” (lower curve), “moderate” (middle curve) and “bad” (upper curve) prognostic groups.


While a preferred “split” Cox panels of the invention for ovarian cancer patients will include each of the antibodies of Tables 22-23, it is to be understood that other related panels are encompassed by the present invention. In particular, it will be appreciated that the present invention is in no way limited to the specific antibodies listed. For example, other antibodies directed to the same biomarker(s) may be used. Other antibodies from Appendix G may be added to any given panel without necessarily diminishing the utility of a panel for patient prognosis. The inclusion of antibodies beyond those listed in Appendix G is also within the scope of the invention. In certain embodiments less than all of the listed antibodies may be used in a prognostic panel.


In general, a “split” Cox panel for ovarian patients will include an antibody directed to the biomarker with NCBI Entrez GeneID 55789 (e.g., s0126).


The panel may then also include one or more of the antibodies selected from the group consisting of antibodies directed to the biomarkers with NCBI Entrez GeneIDs 8879, 9213, 605 (e.g., s0124, s0238 and s0672, see Table 22 and Appendix A). For example, the panel may include an antibody directed to the biomarker with NCBI Entrez GeneID 8879 (e.g., s0124). Optionally the panel may also include an antibody directed to the biomarkers with NCBI Entrez GeneIDs 9213 and/or 605 (e.g., s0238 and/or s0672).


Alternatively (or additionally), a “split” Cox panel may also include one or more of the antibodies selected from the group consisting of antibodies directed to the biomarkers with NCBI Entrez GeneIDs 23650, 667, 8140 (e.g., s0059P2, s0140 and s0296P1, see Table 23 and Appendix A). For example, the panel may include an antibody directed to the biomarker with NCBI Entrez GeneID 23650 (e.g., s0059P2). Optionally the panel may also include an antibody directed to the biomarkers with NCBI Entrez GeneIDs 667 and/or 8140 (e.g., s0140 and/or s0296P1).


It is to be understood that these exemplary “split” Cox panels may be used alone, in combination with one another or in conjunction with other panels and/or independent prognostic factors.


The present invention also encompasses methods of assessing the prognosis of a patient having an ovarian tumor using these exemplary panels. After obtaining a tumor sample from a patient with unknown prognosis the sample is contacted with one of the aforementioned panels. The patient's likely prognosis is then assessed based upon the positive or negative binding of the antibodies in the panel to the tumor sample.


Example 23
Prognostic Ovarian Cancer Panels (Regression Tree Model)

This Example builds on the results of Example 19 and describes the identification of exemplary panels of antibodies whose binding has been shown to correlate with the prognosis of ovarian cancer patients. These exemplary panels were generated using regression tree analysis (as described in Example 12).


As previously noted, regression trees classify the patients into a number of subclasses each defined by their pattern of binding to a unique set of antibodies from within a panel. An exemplary tree (or “dendrogram”) for ovarian patients is shown in FIG. 24 which is discussed below. Regression trees were initially created with all applicable antibodies, and then “pruned” to a minimal complexity (least number of terminal nodes without losing too much prognostic ability) using a cross validation procedure. This cross validation procedure involved building panels and dendrograms using a series of patient groups that were picked from the total patient set using a series of increasingly pruned trees. The results over the tested groups were summed and the minimally complex least error-prone panel and dendrogram were chosen. The resulting dendrogram was further simplified by placing nodes with a range of response values into the classes “good” (G) or “poor” (P). Table 24 lists the antibodies of an exemplary ovarian tree panel that was constructed as described above. The dendrogram for this panel is illustrated in FIG. 24. This exemplary prognostic panel was determined to be independent of stage; however, stage was found to add prognostic information.














TABLE 24









Panel
Analysis
P value1
Hazard ratio2







Ovarian
Tree
8.9E−05
2.38














AGI ID
Rank







s0059P2
1



s0643
2



s0691
3








1P value of overall panel





2Hazard ratio of overall panel







As illustrated in FIG. 24, if a patient is positive for staining at a given node his or her prognosis decision tree follows the branch marked with a “+”. Conversely if a patient is negative for staining at a given node his or her prognosis decision tree follows the branch marked “−”. This is done until a terminus is reached.


For example, if patient A is negative for staining with s0059P2 and positive for staining with s0643 then, based on the dendrogram, his or her prognosis is “G” or “good”. In contrast, if patient B is negative for staining with s0059P2, negative for staining with s0643 and negative for staining with s0691 then his or her prognosis is “P” or “poor”. Similarly, if patient C is positive for staining with s0059P2 then his or her prognosis is “P” or “poor”. It will be appreciated from the foregoing and FIG. 24 that the number of stains required in order to yield a prognosis will vary from patient to patient. However, from a practical standpoint (and without limitation), it may prove advantageous to complete all the stains for a given panel in one sitting rather than adopting an iterative approach with each individual antibody.


The prognostic value of the exemplary panel of Table 24 was also assessed by generating Kaplan-Meier recurrence curves for ovarian patients. Patients whom the panels predicted as being strongly unlikely to recur were given the prediction of “good”. Patients whom the panels predicted as being strongly likely to recur or as neither being strongly likely to recur or not recur were grouped in a “poor” prognosis group. Kaplan-Meier curves were then calculated based on recurrence data for patients within each group. FIG. 25 shows the recurrence and survival curves that were obtained for ovarian patients in the “good” (upper curve) and “poor” (lower curve) prognostic groups.


From Table 24 it will be seen that a tree panel for ovarian patients might include an antibody to the biomarker with NCBI Entrez GeneID 23650 (e.g., s0059P2). Preferably the panel will also include an antibody to the biomarker with NCBI Entrez GeneID 7090 (e.g., s0643) and optionally an antibody to the biomarker with NCBI Entrez GeneID 23657 (e.g., s0691). In preferred embodiments, the tree panel includes an antibody to the biomarkers with NCBI Entrez GeneIDs 23650, 7090 and 23657 (e.g., s0059P2, s0643 and s0691).


It is to be understood that these exemplary tree panels may be used alone, in combination with one another or in conjunction with other panels and/or independent prognostic factors.


The present invention also encompasses methods of assessing the prognosis of a patient having an ovarian tumor using an inventive tree panel. For example, after obtaining a tumor sample from a patient with unknown prognosis the sample is contacted with one or more antibodies from the panel of Table 24. The patient's likely prognosis is then assessed based upon the positive or negative binding of the one or more antibodies to the tumor sample using the dendrogram of FIG. 24. The method generally includes a step of contacting a tumor sample with an antibody with NCBI Entrez GeneID 23650 (e.g., s0059P2). Optionally, a tumor sample is further contacted with an antibody to the biomarker with NCBI Entrez GeneID 7090 (e.g., s0643) and optionally with an antibody to the biomarker with NCBI Entrez GeneID 23657 (e.g., s0691). As mentioned above, tumor samples may be contacted with these antibodies in a single sitting or sequentially based on the binding results of a previous stain. Obviously the tumor sample may be divided and different antibodies contacted in any order with different fractions. Alternatively different original tumor samples may be contacted with different antibodies in a specific sequence.


OTHER EMBODIMENTS

Other embodiments of the invention will be apparent to those skilled in the art from a consideration of the specification or practice of the invention disclosed herein. It is intended that the specification and examples be considered as exemplary only, with the true scope of the invention being indicated by the following claims.










APPENDIX A2







Antibodies & Genes
Antibody Generation (SEQ ID NO.)













AGI ID
GENE NAME
ALIASES
Peptide 1
Peptide 2
Peptide 3
TITER





S0011
vav 3 oncogene
VAV3; VAV3 ONCOGENE; ONCOGENE VAV3;
TEESINDEDIYKG
EKRTNGLRRTPK
DYISKSKEDVKLK
1:90-1:300




vav 3 oncogene
LPDLIDE (13)
QVD (12)
(11)


S0017
WAP four-disulfide core
WFDC2; WAP5; dJ461P17.6; major epididymis-
EKTGVCPELQAD
PNDKEGSCPQV
RDQCQVDTQCP
1:25-1:500



domain 2
specific protein E4; epididymal secretory protein
QNCTQE
NIN
GQMK




E4; WAP four-disulfide core domain 2; WAP
(338)
(339)
(340)




domain containing protein HE4-V4; epididymis-




specific, whey-acidic protein type, four-disulfide




core; WAP four-disulfide


S0018
secretoglobin, family 2A,
UGB2; MGB1; SCGB2A2; mammaglobin 1;
SKTINPQVSKTE
DDNATTNAIDEL
NQTDETLSNVEV
1:300-1:1000



member 2
secretoglobin, family 2A, member 2
YKELLQE (14)
KEC (15)
FMQ (16)


S0020
PPAR binding protein
RB18A; TRIP2; PPARGBP; PBP; CRSP1;
SSDDGIRPLPEY
DGKSKDKPPKR
NKTKKKKSSRLP
1:100




PPARBP; CRSP200; DRIP230; PPAR-BINDING
STEKHKK
KKADTE
PEK




PROTEIN; PPARG binding protein; PPAR
(17)
(19)
(18)




binding protein; CRSP, 200-KD SUBUNIT;




PEROXISOME PROLIFERATOR-ACTIVATED




RECEPTOR-BINDING PROTEIN; THYROID




HORMONE RECEPTOR INTERACTOR 2;




RECOGN


S0021
hypothetical protein
FLJ23834; hypothetical protein FLJ23834
KNKEPLTKKGET
KLTCTDLDSSPR
EVDYENPSNLAA
1:200-1:2500



FLJ23834

KTAERD (20)
SFRYS (21)
GNKYT (22)


S0022
cytochrome P450 4Z1
CYP4Z1; cytochrome P450 4Z1; cytochrome
KTLQVFNPLRFS
QHFAIIECKVAVA
RKFLAPDHSRPP
1:50-1:500




P450, family 4, subfamily Z, polypeptide 1
RENSEKIH (23)
LT (24)
QPVRQ (25)


S0024
RAS-like, estrogen-
RERG; RAS-like, estrogen-regulated, growth-
MAKSAEVKLAIF
VLPLKNILDEIKK
YELCREVRRRR
1:900-1:2700



regulated, growth-inhibitor
inhibitor
GRAGVGK (28)
PKN (26)
MVQGKT (27)


S0032
fatty acid binding protein 3, muscle and
MDGI; O-FABP; FABP3; FABP11; H-FABP;
TKPTTIIEKNGDIL
KNTEISFKLGVEF
HLQKWDGQETT
1:225



heart (mammary-derived growth
FATTY ACID-BINDING PROTEIN, SKELETAL
TLKTH (31)
DE (29)
LVRE (30)



inhibitor)
MUSCLE; Fatty acid-binding protein 3, muscle;




fatty acid binding protein 11; FATTY ACID-




BINDING PROTEIN, MUSCLE AND HEART;




fatty acid binding protein 3, muscle and heart




(mammary-de


S0036
gamma-aminobutyric acid
GABRP; GAMMA-AMINOBUTYRIC ACID
DGNDVEFTWLR
LQQMAAKDRGT
KRKISFASIEISS
1:250-1:500



(GABA) A receptor, pi
RECEPTOR, PI; GABA-A RECEPTOR, PI
GNDSVRGLEH
TKEVEEVS
DNVDYSD




POLYPEPTIDE; gamma-aminobutyric acid
(34)
(32)
(33)




(GABA) A receptor, pi


S0037
annexin A8
ANX8; ANXA8; annexin VIII; annexin A8
QRQQIAKSFKAQ
REIMKAYEEDYG
EEYEKIANKSIED
1:30-1:40





FGKDLTE (35)
SSLEEDIQ (36)
SIKSE (37)


S0039
CDNA FLJ25076 fis, clone
similar to 3110006E14Rik protein; CDNA
EGGSLVPAARQ
RKAGKSKKSFSR
KTHEKYGWVTP
1:50-1:30000



CBL06117
FLJ25076 fis, clone CBL06117
QHCTQVRSRR
KEAE
PVSDG





(38)
(39)
(40)


S0040
ATP-binding cassette, sub-
P-gp; PGY1; CLCS; ABCB1; ABC20; CD243;
MDLEGDRNGGA
NLEDLMSNITNR
RGSQAQDRKLS
1:200-1:400



family B (MDR/TAP),
GP170; MDR1; doxorubicin resistance; colchicin
KKKN (41)
SDINDTG (42)
TKEA (43)



member 1
sensitivity; P-GLYCOPROTEIN 1; multidrug




resistance 1; P glycoprotein 1; ATP-binding




cassette sub-family B member 1; ATP-BINDING




CASSETTE, SUBFAMILY B, MEMBER 1; ATP-




bin


S0041
ATP-binding cassette, sub-
MDR3; PGY3; PFIC-3; ABCB4; ABC21;
MDLEAAKNGTA
NFSFPVNFSLSL
KNSQMCQKSLD
1:60-1:300



family B (MDR/TAP),
MDR2/3; P-GLYCOPROTEIN 3; MULTIDRUG
WRPTSAE (44)
LNPGK (45)
VETDG (46)



member 4
RESISTANCE 3; P-glycoprotein-3/multiple drug




resistance-3; P glycoprotein 3/multiple drug




resistance 3; ATP-binding cassette, sub-family




B (MDR/TAP), member 4; ATP-binding




cassette, sub


S0042
ATP-binding cassette, sub-
ABCC1; MRP1; GS-X; ABC29; multidrug
MALRGFCSADG
KNWKKECAKTR
DSIERRPVKDGG
1:40-1:500



family C (CFTR/MRP),
resistance protein; MULTIDRUG RESISTANCE-
SD (47)
KQPVK (48)
GTNS (49)



member 1
ASSOCIATED PROTEIN 1; multiple drug




resistance-associated protein; multiple drug




resistance protein 1; ATP-BINDING




CASSETTE, SUBFAMILY C, MEMBER 1; ATP-




binding cassette, sub-fami


S0043
ATP-binding cassette, sub-
MRP2; cMRP; CMOAT; ABCC2; ABC30; DJS;
MLEKFCNSTFW
SILCGTFQFQTLI
ENNESSNNPSSI
1:50-1:333



family C (CFTR/MRP),
MULTIDRUG RESISTANCE-ASSOCIATED
NSSFLDSPE
RT
AS



member 2
PROTEIN 2; canalicular multispecific organic
(50)
(51)
(52)




anion transporter; MULTISPECIFIC ORGANIC




ANION TRANSPORTER, CANALICULAR; ATP-




BINDING CASSETTE, SUBFAMILY C,




MEMBER 2; ATP-binding cassette,


S0044
ATP-binding cassette, sub-
MOAT-B; MRP4; MOATB, ABCC4; EST170205;
QEVKPNPLQDA
DEISQRNRQLPS
VQDFTAFWDKA
1:20-1:100



family C (CFTR/MRP),
MULTIDRUG RESISTANCE-ASSOCIATED
NICSR (53)
DGKK (54)
SETPTLQ (55)



member 4
PROTEIN 4; MULTISPECIFIC ORGANIC




ANION TRANSPORTER B; ATP-binding




cassette, sub-family C, member 4; ATP-




BINDING CASSETTE, SUBFAMILY C,




MEMBER 4; ATP-binding cassette, sub-family C




(CFT


S0045
ATP-binding cassette, sub-
MOAT-D; ABC31; MLP2; ABCC3; EST90757;
MDALCGSGELG
RKQEKQTARHK
DPQSVERKTISPG
1:2000



family C (CFTR/MRP),
cMOAT2; MULTIDRUG RESISTANCE-
SKFWDSN (56)
ASAA (57)
(58)



member 3
ASSOCIATED PROTEIN 3; canicular




multispecific organic anion transporter;




CANALICULAR MULTISPECIFIC ORGANIC




ANION TRANSPORTER 2; ATP-BINDING




CASSETTE, SUBFAMILY C, MEMBER 3; ATP-




binding cas


S0046
ATP-binding cassette, sub-
MOAT-C; ABCC5; MRP5; EST277145; ABC33;
MKDIDIGKEYIIPS
RDREDSKFRRT
SKHESSDVNCR
1:100-1:450



family C (CFTR/MRP),
SMRP; pABC11; MOATC; MULTIDRUG
PGYRS (59)
RPLECQD (60)
RLER (61)



member 5
RESISTANCE-ASSOCIATED PROTEIN 5;




canalicular multispecific organic anion




transporter C; ATP-binding cassette, sub-family




C, member 5; ATP-BINDING CASSETTE,




SUBFAMILY C, MEMBER 5; ATP-bi


S0047
ATP-binding cassette, sub-
MRP6; ARA; EST349056; ABCC6; MOATE;
MAAPAEPCAGQ
DPGVVDSSSSG
HTLVAENAMNAEK
1:50



family C (CFTR/MRP),
PXE; MLP1; ABC34; ANTHRACYCLINE
GVWNQTEPE
SAAGKD



member 6
RESISTANCE-ASSOCIATED PROTEIN;
(62)
(63)
(64)




MULTIDRUG RESISTANCE-ASSOCIATED




PROTEIN 6; ATP-binding cassette, sub-family




C, member 6; ATP-BINDING CASSETTE,




SUBFAMILY C, MEMBER 6; ATP-binding




cassette,


S0048
ATP-binding cassette, sub-
BSEP; AB0B11; PFIC-2; SPGP; PGY4; PFIC2;
MSDSVILRSIKKF
TNSSLNQNMTN
QEVLSKIQHGHT
1:600



family B (MDR/TAP),
ABC16; SISTER OF P-GLYCOPROTEIN; bile
GEEND (67)
GTR (67)
IIS (65)



member 11
salt export pump; progressive familial




intrahepatic cholestasis 2; ABC member 16,




MDR/TAP subfamily; ATP-BINDING




CASSETTE, SUBFAMILY B, MEMBER 11; ATP-




binding cassette, sub-fam


S0049
ATP-binding cassette, sub-
MTABC2; EST20237; MABC2; M-ABC2;
GADDPSSVTAEE
NAVASPEFPPRF
KPNGIYRKLMNK
1:10-1:25



family B (MDR/TAP),
ABCB10; MITOCHONDRIAL ABC PROTEIN 2;
IQR (68)
NT (69)
QSFISA (70)



member 10
ATP-BINDING CASSETTE, SUBFAMILY B,




MEMBER 10; ATP-binding cassette, sub-family




B, member 10; ATP-binding cassette, sub-




family B (MDR/TAP), member 10


S0050
transporter 1, ATP-binding
RING4; ABC17; D6S114E; ABCB2; TAP1;
MASSRCPAPRG
QGGSGNPVRR
EFVGDGIYNNTM
1:80



cassette, sub-family B
APT1; PEPTIDE TRANSPORTER PSF1;
CR (71)
(72)
GHVHS (73)



(MDR/TAP)
TRANSPORTER, ABC, MHC, 1; ABC




transporter, MHC 1; antigen peptide transporter




1; peptide supply factor 1; ABC




TRANSPORTER, MHC, 1; ATP-BINDING




CASSETTE, SUBFAMILY B, MEMBER 2;




TRANSPORTER


S0052
ATP-binding cassette, sub-
SUR1; MRP8; PHHI; ABC36; ABCC8; HRINS;
MPLAFCGSENH
DHLGKENDVFQ
EIREEQCAPHEP
1:25-1:150



family C (CFTR/MRP),
sulfonylurea receptor (hyperinsulinemia);
SAAYR (74)
PKTQFLG (75)
TPQG (76)



member 8
SULFONYLUREA RECEPTOR, BETA-CELL




HIGH-AFFINITY; ATP-binding cassette, sub-




family C, member 8; ATP-BINDING




CASSETTE, SUBFAMILY C, MEMBER 8; ATP-




binding cassette, sub-family C


S0053
ATP-binding cassette, sub-
ABCC9; ABC37; sulfonylurea receptor 2A; ATP-
MSLSFCGNNISS
QRVNETQNGTN
DEIGDDSWRTG
1:25-1:50



family C (CFTR/MRP),
BINDING CASSETTE, SUBFAMILY C,
(77)
NTTGISE (78)
ESSLPFES (79)



member 9
MEMBER 9; ATP-binding cassette, sub-family C




(CFTR/MRP), member 9; ATP-binding cassette,




sub-family C, member 9 isoform SUR2B; ATP-




binding cassette, sub-family C, member 9




isoform


S0055
integral membrane protein
E25B; ABRI; E3-16; FBD; BRI2; BRICD2B;
MVKVTFNSALAQ
QTIEENIKIFEEE
HDKETYKLQRRE
1:450-1:500



2B
ITM2B; BRI GENE; BRICHOS domain
KEAKKDEPK
EVE
TIKGIQKRE




containing 2B; integral membrane protein 2B
(80)
(81)
(82)


S0057
ankyrin 3, node of Ranvier
ankyrin-G; ANK3; ankyrin-3, node of Ranvier;
MAHAASQLKKN
HKKETESDQDD
EGFKVKTKKEIR
1:750



(ankyrin G)
ankyrin 3 isoform 1; ankyrin 3 isoform 2; ankyrin
RDLEINAEE
EIEKTDRRQ
HVEKKSHS




3, node of Ranvier (ankyrin G)
(85)
(83)
(84)


S0058
hypothetical protein
FLJ21918; hypothetical protein FLJ21918
ERALAAAQRCH
TAGMKDLLSVFQ
DPPRTVLQAPKE
1:20



FLJ21918

KKVMKER (86)
AYQ (87)
WVCL (88)


S0059
tripartite motif-containing 29
ATDC; TRIM29; tripartite motif-containing 29;
MEAADASRSNG
ELHLKPHLEGAA
EGEGLGQSLGN
1:50-1:3000




ataxia-telangiectasia group D-associated
SSPEARDAR
FRDHQ
FKDDLLN




protein; tripartite motif protein TRIM29 isoform
(89)
(90)
(91)




alpha; tripartite motif protein TRIM29 isoform




beta


S0059P2
tripartite motif-containing 29
ATDC; TRIM29; tripartite motif-containing 29;
ELHLKPHLEGAA
N/A
N/A
1:30-1:90




ataxia-telangiectasia group D-associated
FRDHQ (92)




protein; tripartite motif protein TRIM29 isoform




alpha; tripartite motif protein TRIM29 isoform




beta


S0063
iroquois homeobox protein 3
IRX3; iroquois homeobox protein 3
GSEERGAGRGS
KIWSLAETATSP
KKLLKTAFQPVP
1:200-1:1200





SGGREE (93)
DNPRRS (94)
RRPQNHLD (95)


S0068
RAS-like, estrogen-
RERG; RAS-like, estrogen-regulated, growth-
RRSSTTHVKQAI
N/A
N/A
1:500-1:40000



regulated, growth-inhibitor
inhibitor
NKMLTKISS





(96)


S0070
G protein-coupled receptor
GPCR150; GPR160; putative G protein-coupled
MRRKNTCQNFM
NETILYFPFSSHS
KVQIPAYIEMNIP
1:10-1:100



160
receptor; G protein-coupled receptor 160
EYFCISLAF (97)
SYTVRSKK (98)
LVILCQ (99)


S0072
S100 calcium binding
CP-10; L1Ag; CALPROTECTIN; 60B8AG;
MLTELEKALNSII
RDDLKKLLETEC
KMGVAAHKKSH
1:6500-1:10000



protein A8 (calgranulin A)
S100A8; MIF; CAGA; NIF; MRP8; MA387;
DVYHK
PQYIRKKGAD
EESHKE




CFAG; CGLA S100A8/S100A9 COMPLEX;
(100)
(101)
(102)




cystic fibrosis antigen; S100 calcium-binding




protein A8; S100 calcium binding protein A8




(calgranulin A)


S0073
forkhead box A1
HNF3A; MGC33105; TCF3A; FOXA1; forkhead
PESRKDPSGAS
HGLAPHESQLHL
EQQHKLDFKAYE
1:100-1:2700




box A1; HEPATOCYTE NUCLEAR FACTOR 3-
NPSADS (103)
KGD (104)
QALQYS(105)




ALPHA; hepatocyte nuclear factor 3, alpha


S0073P2
forkhead box A1
HNF3A; MGC33105; TCF3A; FOXA1; forkhead
HGLAPHESQLHL
N/A
N/A
1:50-1:450




box A1; HEPATOCYTE NUCLEAR FACTOR 3-
KGD (106)




ALPHA; hepatocyte nuclear factor 3, alpha


S0074
trefoil factor 3 (intestinal)
TFF3; trefoil factor 3 (intestinal); trefoil factor 3,
EEYVGLSANQC
RVDCGYPHVTP
VPWCFKPLQEA
1:2500-1:30000




HITF, human intestinal trefoil factor
AVPAKDRVD
KECN
ECTF





(107)
(108)
(109)


S0074P3
trefoil factor 3 (intestinal)
TFF3; trefoil factor 3 (intestinal); trefoil factor 3,
VPWCFKPLQEA
N/A
N/A
1:400-1:810




HITF, human intestinal trefoil factor
ECTF (110)


S0076x1
keratin 17
PC2; PCHC1; KRT17; K17; CYTOKERATIN 17;
KKEPVTTRQVRT
QDGKVISSREQV
SSSIKGSSGLGG
1:200




keratin 17
IVEE (111)
HQTTR (112)
GSS (113)


S0078
kynureninase (L-kynurenine
3.7.1.3; XANTHURENICACIDURIA; KYNU;
DEEDKLRHFREC
KPREGEETLRIE
EERGCQLTITFS
1:180-1:200



hydrolase)
HYDROXYKYNURENINURIA;
FYIPKIQD
DILEVIEKE
VPNKDVFQE




KYNURENINASE DEFICIENCY;
(341)
(342)
(343)




XANTHURENIC ACIDURIA; kynureninase (L-




kynurenine hydrolase)


S0079
solute carrier family 39 (zinc
SLC39A6; LIV-1 protein, estrogen regulated;
DHNHAASGKNK
EEPAMEMKRGP
QRYSREELKDA
1:200-1:800



transporter), member 6
solute carrier family 39 (zinc transporter),
RKALCPDHD
LFSHLSSQNI
GVATL




member 6; solute carrier family 39 (metal ion
(114)
(115)
(116)




transporter), member 6


S0081
N-acetyltransferase 1
AAC1; 2.3.1.5; NAT1; arylamine N-
MDIEAYLERIGYK
QMWQPLELISG
FNISLQRKLVPK
1:10-1:240



(arylamine N-
acetyltransferase-1; ACETYL-CoA: ARYLAMINE
KSRNKLDLE
KDQPQVPCVFR
HGDRFFTI



acetyltransferase)
N-ACETYLTRANSFERASE; ARYLAMINE N-
(117)
(118)
(119)




ACETYLTRANSFERASE 1; N-acetyltransferase




1 (arylamine N-acetyltransferase); arylamide




acetylase 1 (N-acetyltransferase 1)


S0086
X-box binding protein 1
XBP2; TREB5; XBP1; X-box-binding protein-1;
RQRLTHLSPEEK
EKTHGLVVENQE
QPPFLCQWGRH
1:180-1:400




X BOX-BINDING PROTEIN 1; X BOX-BINDING
ALRRKLKNR
LRQRLGMD
QPSWKPLMN




PROTEIN 2; X-box binding protein 1
(122)
(121)
(120)


S0088
claudin 10
CPETRL3; OSP-L; CLDN10; claudin 10; claudin
NKITTEFFDPLFV
FSISDNNKTPRY
EDFKTTNPSKQF
1:333-1:1000




10 isoform a; claudin 10 isoform b
EQK (344)
TYNGAT (345)
DKNAYV (346)


S0090
sparc/osteonectin, cwcv and
KIAA0275; testican-2; SPOCK2; TESTICAN 2;
EGDAKGLKEGE
EWCFCFWREKP
EEEGEAGEADD
1:100-1:800



kazal-like domains
SPARC/OSTEONECTIN, CWCV, AND KAZAL-
TPGNFMEDE
PCLAELER
GGYIW



proteoglycan (testican) 2
LIKE DOMAINS PROTEOGLYCAN 2;
(347)
(348)
(349)




sparc/osteonectin, cwcv and kazal-like domains




proteoglycan (testican) 2


S0091
lipocalin 2 (oncogene 24p3)
UTEROCALIN; NGAL; LCN2; NEUTROPHIL
DKDPQKMYATIYE
KKCDYWIRTFVP
ENFIRFSKYLGLP
1:100




GELATINASE-ASSOCIATED LIPOCALIN;
(350)
GCQ (351)
EN (352)




ONCOGENIC LIPOCALIN 24P3; lipocalin 2




(oncogene 24p3)


S0092
paired box gene 8
PAX8; paired box gene 8; paired box gene 8
DDSDQDSCRLSI
RQHYPEAYASPS
NTPLGRNLSTHQ
1:30-1:100




isoform PAX8C; paired box gene 8 isoform
DSQ (353)
HTK (354)
TYPVVAD (355)




PAX8D; paired box gene 8 isoform PAX8E;




paired box gene 8 isoform PAX8A; paired box




gene 8 isoform PAX8B; PAIRED DOMAIN




GENE 8 PAX8/PPARG FUSION GENE


S0093
mesothelin
CAK1; SMR; MSLN; mesothelin;
RLVSCPGPLDQ
KMSPEDIRKWN
SPEELSSVPPSSI
1:500




MEGAKARYOCYTE-POTENTIATING
DQQE
VTSLETLK
WAVRPQD




FACTOR; SOLUBLE MPF/MESOTHELIN-
(356)
(357)
(358)




RELATED PROTEIN; mesothelin isoform 2




precursor; mesothelin isoform 1 precursor;




megakaryocyte potentiating factor precursor;




ANTIGEN RECOGNIZED BY MONOCLONAL




ANTIBODY


S0094
kallikrein 6 (neurosin, zyme)
Bssp; PRSS18; KLK6; Klk7; SP59; PRSS9;
EEQNKLVHGGP
ELIQPLPLERDC
GKTADGDFPDTI
1:150-1:300




MGC9355; protease M; kallikrein 6
CDKTSH (359)
SANT (360)
QC (361)




preproprotein; protease, serine, 18; protease,




serine, 9; kallikrein 6 (neurosin, zyme)


S0095
Rap guanine nucleotide
bcm910; MGC21410; 9330170P05Rik; EPAC;
REQWPERRRCH
KVNSAGDAIGLQ
QQLKVIDNQREL
1:250-1:1000



exchange factor (GEF) 3
RAPGEF3; cAMP-GEFI; RAP guanine-
RLENGCGNA
PDAR
SRLSRELE




nucleotide-exchange factor 3; EXCHANGE
(362)
(363)
(364)




PROTEIN ACTIVATED BY cAMP; RAP guanine-




nucleotide-exchange factor (GEF) 3; cAMP-




REGULATED GUANINE NUCLEOTIDE




EXCHANGE FACTOR I; RAP GUANINE




NUCLE


S0096
ATPase, H+ transporting,
Vma2; VPP3; ATP6V1B1, RTA1B, 3.6.3.14;
REHMQAVTRNYI
KKSKAVLDYHDDN
DEFYSREGRLQ
1:100-1:800



lysosomal 56/58 kDa, V1
VATB; ATP6B1; V-ATPase B1 subunit; H+-
THPR (123)
(124)
DLAPDTAL (125)



subunit B, isoform 1 (Renal
ATPase beta 1 subunit; H(+)-transporting two-



tubular acidosis with
sector ATPase, 58 kD subunit; vacuolar proton



deafness)
pump, subunit 3; endomembrane proton pump




58 kDa subunit; ATPase, H+ transporting, lysos


S0097
frizzled homolog 8
FZ-8; hFZ8; FZD8; frizzled 8; frizzled homolog 8
KQQDGPTKTHK
ELRVLSKANAIVP
RRGGEGGEENP
1:100-1:500



(Drosophila)
(Drosophila); FRIZZLED, DROSOPHILA,
LEKLMIR
GLSGGE
SAAKGHLMG




HOMOLOG OF, 8
(365)
(366)
(367)


S0099
histone 1, H2ba
HIST1H2BA; histone 1, H2ba
MPEVSSKGATIS
GFKKAWKTQK
KEGKKRKRTRKE
1:333-1:500





KK (368)
(369)
(370)


S0110
hypothetical protein
MGC2714; hypothetical protein MGC2714
RYAFDFARDKD
SVFYQYLEQSKY
EDGAWPVLLDE
1:500-1:2500



MGC2714

QRSLDID
RVMNKDQ
FVEWQKVRQTS





(126)
(127)
(128)


S0117
reproduction 8
D8S2298E; REP8; reproduction 8;
SFKSPQVYLKEE
RKKQQEAQGEK
EDIGITVDTVLILE
1:200-1:375




Reproduction/chromosome 8
EEKNEKR (129)
ASRYIE (130)
EKEQTN (131)


S0119
slit homolog 1 (Drosophila)
SLIT3; MEGF4; SLIL1; Slit-1; SLIT1; slit
KAFRGATDLKNL
DFRCEEGQEEG
DGTSFAEEVEKP
1:900




homolog 1 (Drosophila); SLIT, DROSOPHILA,
RLDKNQ (134)
GCLPRPQ (132)
TKCGCALCA (133)




HOMOLOG OF, 1; MULTIPLE EPIDERMAL




GROWTH FACTOR-LIKE DOMAINS 4


S0122
leucyl-tRNA synthetase 2,
6.1.1.4; MGC26121; KIAA0028; LEURS;
QRIKEQASKISEA
HAKTKEKLEVTW
KSPQPQLLSNKE
1:150



mitochondrial
LARS2; leucine translase; leucine-tRNA ligase;
DKSKPKF
EKMSKSKHN
KAEARK




LEUCYL-tRNA SYNTHETASE,
(371)
(372)
(373)




MITOCHONDRIAL; leucyl-tRNA synthetase 2,




mitochondrial; leucyl-tRNA synthetase 2,




mitochondrial precursor


S0123
homeo box D4
HOX4B; HOXD4; HHO.C13; HOX-5.1;
MLFEQGQQALE
KDQKAKGILHSP
HSSQGRLPEAP
1:100-1:500




HOMEOBOX D4; HOMEOBOX 4B;
LPECT (374)
ASQSPERS (375)
KLTHL (376)




HOMEOBOX X; homeo box D4; homeobox




protein Hox-D4; Hox-4.2, mouse, homolog of




homeo box X


S0124
sphingosine-1-phosphate
KIAA1252; SPL; SGPL1; sphingosine-1-
KRGARRGGWK
KIVRVPLTKMME
QFLKDIRESVTQI
1:990-1:1500



lyase 1
phosphate lyase 1
RKMPSTDL (377)
VDVR (378)
MKNPKA (379)


S0126
HBxAg transactivated
XTP1; HBxAg transactivated protein 1
SKQGVVILDDKS
VQTFSRCILCSK
LKKPFQPFQRTR
1:450-1:1600



protein 1

KELPHW (380)
DEVDLDEL (381)
SFRM (382)


S0132
SRY (sex determining
SRA1; CMD1; CMPD1; SOX9; SRY-BOX 9;
MNLLDPFMKMT
NTFPKGEPDLKK
KNGQAEAEEAT
1:100-1:500



region Y)-box 9
transcription factor SOX9; SRY-RELATED HMG
DEQEKGLS
ESEEDK
EQTHISPN



(campomelic dysplasia,
BOX GENE 9; SEX REVERSAL, AUTOSOMAL,
(135)
(136)
(137)



autosomal sex-reversal)
1; SRY (sex-determining region Y)-box 9




protein; SRY (sex-determining region Y)-box 9




(campomelic dysplasia, autosomal sex-




reversal); SRY (


S0137
cadherin, EGF LAG seven-
Flamingo1; CELSR2; EGFL2; KIAA0279;
QASSLRLEPGRA
ELKGFAERLQRN
RSGKSQPSYIPF
1:1800-1:5000



pass G-type receptor 2
MEGF3; CDHF10; EGF-like-domain, multiple 2;
NDGDWH
ESGLDSGR
LLREE



(flamingo homolog,
epidermal growth factor-like 2; multiple
(138)
(139)
(140)



Drosophila)
epidermal growth factor-like domains 3;




cadherin EGF LAG seven-pass G-type receptor




2; cadherin, EGF LAG seven-pass G-type




receptor 2


S0139
gamma-glutamyl hydrolase
3.4.19.9; GGH; gamma-glutamyl hydrolase
RRSDYAKVAKIF
KNFTMNEKLKKF
EFFVNEARKNNH
1:2500-1:30000



(conjugase,
precursor; gamma-glutamyl hydrolase
YNLSIQSFDD
FNVLTTN
HFKSESEE



folylpolygammaglutamyl
(conjugase, folylpolygammaglutamyl hydrolase)
(141)
(142)
(143)



hydrolase)


S0140
bullous pemphigoid antigen
BP240; FLJ13425; FLJ32235; FLJ21489;
KNTQAAEALVKL
QENQPENSKTLA
KQMEKDLAFQK
1:250-1:20000



1, 230/240 kDa
FLJ30627; CATX-15; KIAA0728; BPAG1;
YETKLCE
TQLNQ
QVAEKQLK




dystonin; hemidesmosomal plaque protein;
(144)
(145)
(146)




bullous pemphigoid antigen 1, 230/240 kDa;




bullous pemphigoid antigen 1 (230/240 kD);




bullous pemphigoid antigen 1 isoform 1eA




precursor; bullo


S0143
fatty acid synthase
2.3.1.85; OA-519; FASN; MGC14367;
EFVEQLRKEGVF
DRHPQALEAAQ
REVRQLTLRKLQ
1:5000-1:30000




MGC15706; fatty acid synthase
AKEVR (147)
AELQQHD (148)
ELSSKADE (149)


S0143P3
fatty acid synthase
2.3.1.85; OA-519; FASN; MGC14367;
REVRQLTLRKLQ
N/A
N/A
1:200-1:630




MGC15706; fatty acid synthase
ELSSKADE





(149)


S0144
matrix metalloproteinase 14
MMP-X1; 3.4.24.—; MMP14; MTMMP1; MT1-
AYIREGHEKQAD
DEASLEPGYPKH
RGSFMGSDEVF
1:500-1:20000



(membrane-inserted)
MMP; membrane-type-1 matrix
IMIFFAE (150)
IKELGR (151)
TYFYK (152)




metalloproteinase; matrix metalloproteinase 14




preproprotein; MATRIX




METALLOPROTEINASE 14, MEMBRANE-




TYPE; matrix metalloproteinase 14 (membrane-




inserted); membrane-type matrix metalloprotein


S0147
cystatin A (stefin A)
STF1; CSTA; STFA; cystatin AS; cystatin A
MIPGGLSEAKPA
NETYGKLEAVQY
DLVLTGYQVDKN
1:100-1:5000




(stefin A)
TPEIQEIV (383)
KTQ (384)
KDDELTGF (385)


S0149
transient receptor potential
TRPV6; ECAC2; CAT1; CATL; CALCIUM
RQEHCMSEHFK
QGHKWGESPSQ
RACGKRVSEGD
1:400-1:20000



cation channel, subfamily V,
TRANSPORTER 1; CALCIUM TRANSPORTER-
NRPACLGAR
GTQAGAGK
RNGSGGGKWG



member 6
LIKE PROTEIN; EPITHELIAL CALCIUM
(153)
(154)
(155)




CHANNEL 2; transient receptor potential cation




channel, subfamily V, member 6


S0156
fatty acid binding protein 7,
B-FABP; FABP7; FABPB; MRG, mammary-
MVEAFCATWKL
QVGNVTKPTVIIS
KVVIRTLSTFKNTE
1:100-1:20000



brain
derived growth inhibitor-related; FATTY ACID-
TNSQN (156)
QE (157)
(158)




BINDING PROTEIN 7; FATTY ACID-BINDING




PROTEIN, BRAIN; fatty acid binding protein 7,




brain


S0158
cadherin 3, type 1, P-
CDHP; HJMD; PCAD; CDH3; placental
RAVFREAEVTLE
QEPALFSTDNDD
QKYEAHVPENA
1:150-1:2000



cadherin (placental)
cadherin; CADHERIN, PLACENTAL; cadherin
AGGAEQE
FTVRN
VGHE




3, P-cadherin (placental); calcium-dependent
(159)
(160)
(161)




adhesion protein, placental; cadherin 3, type 1




preproprotein; cadherin 3, type 1, P-cadherin




(placental)


S0165
chemokine (C-X-C motif)
MGSA-a; NAP-3; CXCL1; SCYB1; GROa;
KKIIEKMLNSDKSN
N/A
N/A
1:100-1:500



ligand 1 (melanoma growth
GRO1, FORMERLY; GRO PROTEIN, ALPHA;
(162)



stimulating activity, alpha)
GRO1 ONCOGENE, FORMERLY; MELANOMA




GROWTH STIMULATORY ACTIVITY, ALPHA;




GRO1 oncogene (melanoma growth-stimulating




activity); CHEMOKINE, CXC MOTIF, LIGAND 1;




GRO1 oncogene (melanoma grow


S0171
baculoviral IAP repeat-
BIRC5; baculoviral IAP repeat-containing 5
GKPGNQNSKNE
QAEAPLVPLSRQ
NCFLTERKAQPDE
1:22500-1:30000



containing 5 (survivin)
(survivin)
PPKKRERER
NK





(163)
(164)
(165)


S0193
procollagen-lysine, 2-
PLOD2; LYSYL HYDROXYLASE 2; LYSINE
EFDTVDLSAVDV
NKEVYHEKDIKV
KQVDLENVWLD
1:20000



oxoglutarate 5-dioxygenase
HYDROXYLASE 2; PROCOLLAGEN-LYSINE, 2
HPN (167)
FFDKAK (168)
FIRE (166)



(lysine hydroxylase) 2
OXOGLUTARATE 5-DIOXYGENASE 2;




procollagen-lysine, 2-oxoglutarate 5-




dioxygenase (lysine hydroxylase) 2; procollagen-




lysine, 2-oxoglutarate 5-dioxygenase (lysine




hydroxylase) 2 isoform


S0202
PTK7 protein tyrosine
PTK7; CCK4; protein-tyrosine kinase PTK7;
LKKPQDSQLEEG
KAKRLQKQPEG
KDRPSFSEIASA
1:500-1:800



kinase 7
colon carcinoma kinase-4; PTK7 protein
KPGYLD
EEPEME
LGDSTVDSKP




tyrosine kinase 7; PTK7 protein tyrosine kinase
(386)
(387)
(388)




7 isoform e precursor; PTK7 protein tyrosine




kinase 7 isoform a precursor; PTK7 protein




tyrosine kinase 7 isoform d precursor;


S0211
cytochrome P450, family 2,
CYPIIA7; P450-IIA4; 1.14.14.1; CPA7; CYP2A7;
KRGIEERIQEES
DRVIGKNRQPKF
NPQHFLDDKGQ
1:500-1:2500



subfamily A, polypeptide 7
CPAD; CYTOCHROME P450, SUBFAMILY IIA,
GFLIE (169)
EDRTK (170)
FKKSD (171)




POLYPEPTIDE 7; cytochrome P450, subfamily




IIA (phenobarbital-inducible), polypeptide 7;




cytochrome P450, family 2, subfamily A,




polypeptide 7; cytochrome P450, family 2, su


S0218
solute carrier family 29
SLC29A4; solute carrier family 29 (nucleoside
RHCILGEWLPILI
KQRELAGNTMT
RNAHGSCLHAS
1:20-1:50



(nucleoside transporters),
transporters), member 4
MAVFN
VSYMS
TANGSILAGL



member 4

(172)
(173)
(174)


S0221
solute carrier family 28
HCNT2; SLC28A2; HsT17153; SPNT1;
ELMEKEVEPEGS
KARSFCKTHARL
KNKRLSGMEEW
1:500-1:1200



(sodium-coupled nucleoside
CONCENTRATIVE NUCLEOSIDE
KRTD (175)
FKK (176)
IEGEK (177)



transporter), member 2
TRANSPORTER 2; SODIUM-DEPENDENT




PURINE NUCLEOSIDE TRANSPORTER 1;




solute carrier family 28 (sodium-coupled




nucleoside transporter), member 2


S0223
angiopoietin-like 4
HFARP; FIAF; ANGPTL4; PGAR; angiopoietin-
EGSTDLPLAPES
KVAQQQRHLEK
DHKHLDHEVAKP
1:30-1:10000




like 4; FASTING-INDUCED ADIPOSE
RVDPE (178)
QHLR (179)
ARRKRLPE (180)




FACTOR; PPARG ANGIOPOIETIN-RELATED




PROTEIN; HEPATIC




FIBRINOGEN/ANGIOPOIETIN-RELATED




PROTEIN


S0235
carcinoembryonic antigen-
CEACAM5; CD66e; carcinoembryonic antigen-
KLTIESTPFNVAE
KSDLVNEEATGQ
KPVEDKDAVAFT
1:500-1:4500



related cell adhesion
related cell adhesion molecule 5
GKEC
FRVYPELPK
CEPEAQ



molecule 5

(181)
(182)
(183)


S0237
podocalyxin-like
podocalyxin-like; Gp200; PCLP; PODXL;
DEKLISLICRAVK
KDKWDELKEAG
DSWIVPLDNLTK
1:1000-1:2000




PODOCALYXIN-LIKE PROTEIN; podocalyxin-
ATFNPAQDK
VSDMKLGD
DDLDEEEDTHL




like precursor
(184)
(185)
(186)


S0238
xenotropic and polytropic
X3; XPR1; X RECEPTOR; SYG1, YEAST,
EAVVTNELEDGD
RRYRDTKRAFP
KARDTKVLIEDT
1:100-1:500



retrovirus receptor
HOMOLOG OF; xenotropic and polytropic
RQKAMKRLR
HLVNAGK
DDEANT




retrovirus receptor
(389)
(390)
(391)


S0241
glycyl-tRNA synthetase
GlyRS; GARS; CMT2D; 6.1.1.14; SMAD1;
RKRVLEAKELAL
RHGVSHKVDDS
EARYPLFEGQET
1:500-1:7500




GLYCYL-tRNA SYNTHETASE; glycine tRNA
QPKDDIVD
SGSIGRRYAR
GKKETIEE




ligase; Charcot-Marie-Tooth neuropathy,
(187)
(188)
(189)




neuronal type, D


S0244
dachshund homolog 1
DACH1; FLJ10138; dachshund homolog
DLAGHDMGHES
EKQVQLEKTELK
EADRSGGRTDA
1:100-1:3000



(Drosophila)
(Drosophila); DACHSHUND, DROSOPHILA,
KRMHIEKDE
MDFLRERE
ERTIQDGR




HOMOLOG OF; dachshund homolog 1
(407)
(408)
(409)




(Drosophila); dachshund homolog 1 isoform a;




dachshund homolog 1 isoform b; dachshund




homolog 1 isoform c


S0251
transcription factor CP2-like 2
TFCP2L2; LBP-32; MGR; GRHL1; mammalian
EALYPQRRSYTS
DYYKVPRERRSS
DKYDVPHDKIGK
1:5400




grainyhead; LBP protein 32; transcription factor
EDEAWK
TAKPEVE
IFKKCKK




CP2-like 2; leader-binding protein 32 isoform 2;
(190)
(191)
(192)




leader-binding protein 32 isoform 1


S0253
lysosomal associated
LAPTM4B; lysosomal associated protein
DPDQYNFSSSEL
EYIRQLPPNFPY
DTTVLLPPYDDA
1:500-1:2000



protein transmembrane 4
transmembrane 4 beta
GGDFEFMDD
RDD
TVNGAAKE



beta

(193)
(194)
(195)


S0255
cyclin E2
CYCE2; CCNE2; cyclin E2; G1/S-specific cyclin
RREEVTKKHQY
KESRYVHDKHFE
DFFDRFMLTQK
1:1000-1:2000




E2; cyclin E2 isoform 2; cyclin E2 isoform 3;
EIR (196)
VLHSDLE (197)
DINK (198)




cyclin E2 isoform 1


S0260
nicastrin
KIAA0253; nicastrin; NCSTN; APH2;
ESKHFTRDLMEK
ETDRLPRCVRST
ESRWKDIRARIF
1:2400-1:5400




ANTERIOR PHARYNX DEFECTIVE 2, C. ELEGANS,
LKGRTSR (199)
ARLAR (200)
LIASKELE (201)




HOMOLOG OF


S0265
FXYD domain containing ion
MAT-8; MAT8; PLML; FXYD3; phospholemman-
KVTLGLLVFLAG
SEWRSSGEQAGR
KCKCKFGQKSG
1:400-1:1200



transport regulator 3
like protein; MAMMARY TUMOR, 8-KD; FXYD
FPVLDANDLED
(202)
HHPGE




domain-containing ion transport regulator 3;
(204)

(203)




FXYD domain containing ion transport regulator




3; FXYD domain containing ion transport




regulator 3 isoform 2 precursor; FXYD domai


S0267
immunoglobulin superfamily,
EWI-3; V8; IGSF3; immunoglobin superfamily,
KVAKESDSVFVL
EREKTVTGEFID
KRAEDTAGQTAL
1:200-1:250



member 3
member 3; immunoglobulin superfamily,
KIYHLRQED
KESKRPK
TVMRPD




member 3
(205)
(206)
(207)


S0270
signal transducing adaptor
STAM2B; STAM2; DKFZp564C047; Hbp;
KVARKVRALYDF
ETEVAAVDKLNV
EIKKSEPEPVYID
1:1000-1:9000



molecule (SH3 domain and
STAM2A; SIGNAL-TRANSDUCING ADAPTOR
EAVEDNE
IDDDVE
EDKMDR



ITAM motif) 2
MOLECULE 2; signal transducing adaptor
(208)
(209)
(210)




molecule 2; STAM-like protein containing SH3




and ITAM domains 2; signal transducing




adaptor molecule (SH3 domain and ITAM motif) 2


S0273
dickkopf homolog 1
DKK1; DKK-1; SK; dickkopf-1 like; dickkopf
DEECGTDEYCA
RGEIEETITESFG
N/A
1:400-1:500



(Xenopus laevis)
(Xenopus laevis) homolog 1; dickkopf homolog
SPTRGGD
NDHSTLD




1 (Xenopus aevis); DICKKOPF, XENOPUS,
(211)
(212)




HOMOLOG OF, 1


S0280
solute carrier family 26,
SLC26A6; solute carrier family 26, member 6
MDLRRRDYHME
DTDIYRDVAEYS
EFYSDALKQRC
1:1800-1:2400



member 6

RPLLNQEHLEE
EAKE
GVDVDFLISQKKK





(213)
(214)
(215)


S0286
WNT inhibitory factor 1
WIF1; WIF-1; WNT inhibitory factor 1; Wnt
DAHQARVLIGFE
ERRICECPDGFH
KRYEASLIHALR
1:90




inhibitory factor-1 precursor
EDILIVSE (216)
GPHCEK (217)
PAGAQLR (218)


S0288
preferentially expressed
MAPE; PRAME; OPA-INTERACTING PROTEIN
KRKVDGLSTEAE
KEGACDELFSYL
DIKMILKMVQLD
1:1200



antigen in melanoma
4; Opa-interacting protein OIP4; preferentially
QPFIPVE
IEKVKRKK
SIEDLE




expressed antigen in melanoma; melanoma
(220)
(221)
(219)




antigen preferentially expressed in tumors


S0295
prostaglandin E synthase
PGES; TP53I12; MGST1L1; PP1294; PP102;
RLRKKAFANPED
RSDPDVERCLR
RVAHTVAYLGKL
1:100-1:2400




PTGES; MGC10317; PIG12; MGST1-L1; MGST
ALR (222)
AHRND (223)
RAPIR(224)




IV; MGST1-like 1; p53-INDUCED GENE 12;




prostaglandin E synthase; p53-induced




apoptosis protein 12; prostaglandin E synthase




isoform 2; prostaglandin E synthase isoform 1;




micros


S0296
solute carrier family 7
SLC7A5; MPE16; D16S469E; CD98; LAT1; 4F2
KRRALAAPAAEE
EAREKMLAAKSA
MIWLRHRKPELE
1:300-1:5000



(cationic amino acid
light chain; Membrane protein E16; L-TYPE
KEEAR
DGSAPAGE
RPIK



transporter, y+ system),
AMINO ACID TRANSPORTER 1; Solute carrier
(225)
(226)
(227)



member 5
family 7, member 5; solute carrier family 7




(cationic amino acid transporter, y+ system),




member 5


S0296P1
solute carrier family 7
SLC7A5; MPE16; D165469E; CD98; LAT1; 4F2
KRRALAAPAAEE
N/A
N/A
1:225-1:3150



(cationic amino acid
light chain; Membrane protein E16; L-TYPE
KEEAR (225)



transporter, y+ system),
AMINO ACID TRANSPORTER 1; Solute carrier



member 5
family 7, member 5; solute carrier family 7




(cationic amino acid transporter, y+ system),




member 5


S0297
v-maf musculoaponeurotic
FLJ32205; NFE2U; MAFK; NFE2, 18-KD
KPNKALKVKKEA
KRVTQKEELERQ
RLELDALRSKYE
1:333-1:800



fibrosarcoma oncogene
SUBUNIT; nuclear factor erythroid-2, ubiquitous
GE
RVELQQEVEK
(230)



homolog K (avian)
(p18); NUCLEAR FACTOR ERYTHROID 2,
(228)
(229)




UBIQUITOUS SUBUNIT; v-maf




musculoaponeurotic fibrosarcoma oncogene




homolog K (avian); v-maf avian




musculoaponeurotic fibrosarcoma oncogen


S0301
signal peptide, CUB domain,
SCUBE2; signal peptide, CUB domain, EGF-like 2
KMHTDGRSCLE
KKGFKLLTDEKS
KRTEKRLRKAIR
1:3500-1:5400



EGF-like 2

REDTVLEVTE
CQDVDE
TLRKAVHRE





(231)
(232)
(233)


S0303
gamma-aminobutyric acid
GABRE; GABA-A RECEPTOR, EPSILON
RVEGPQTESKN
EETKSTETETGS
KWENFKLEINEK
1:300-1:500



(GABA) A receptor, epsilon
POLYPEPTIDE; GAMMA-AMINOBUTYRIC
EASSRD
RVGKLPE
NSWKLFQFD




ACID RECEPTOR, EPSILON; gamma-
(234)
(235)
(236)




aminobutyric acid (GABA) A receptor, epsilon;




gamma-aminobutyric acid (GABA) A receptor,




epsilon isoform 2; gamma-aminobutyric acid




(GABA) A receptor, epsilon is


S0305
S100 calcium binding
CAL1L; GP11; p10; 42C; S100A10; ANX2LG;
DKGYLTKEDLRV
KDPLAVDKIMKD
N/A
1:8332-1:24996



protein A10 (annexin II
CLP11; Ca[1]; CALPACTIN I, p11 SUBUNIT;
LMEKE
LDQCRDGK



ligand, calpactin I, light
ANNEXIN II, LIGHT CHAIN; CALPACTIN I,
(237)
(238)



polypeptide (p11))
LIGHT CHAIN; S100 calcium-binding protein




A10 (annexin II ligand, calpactin I, light




polypeptide (p11)); S100 calcium binding protein




A10


S0311
v-myb myeloblastosis viral
MYBL2; MGC15600; MYB-RELATED GENE
MSRRTRCEDLD
EEDLKEVLRSEA
RRSPIKKVRKSL
1:750-1:5000



oncogene homolog (avian)-
BMYB; MYB-related protein B; v-myb
ELHYQDTDSD
GIELIIEDDIR
ALDIVDED



like 2
myeloblastosis viral oncogene homolog (avian)-
(240)
(239)
(241)




like 2; V-MYB AVIAN MYELOBLASTOSIS




VIRAL ONCOGENE HOMOLOG-LIKE 2


S0312
nucleoside phosphorylase
NP; 2.4.2.1; nucleoside phosphorylase; PURINE
EDYKNTAEWLLS
DEREGDRFPAM
KVIMDYESLEKA
1:1000-1:3600




NUCLEOSIDE:ORTHOPHOSPHATE
HTKHR
SDAYDRTMRQR
NHEE




RIBOSYLTRANSFERASE; purine nucleoside
(242)
(243)
(244)




phosphorylase; PNP NUCLEOSIDE




PHOSPHORYLASE DEFICIENCY; ATAXIA




WITH DEFICIENT CELLULAR IMMUNITY


S0314
chaperonin containing
KIAA0098; CCT5; chaperonin containing TCP1,
DQDRKSRLMGL
KGVIVDKDFSHP
RMILKIDDIRKPG
1:6000-1:30000



TCP1, subunit 5 (epsilon)
subunit 5 (epsilon)
EALKSHIMAAK
QMPKKVED
ESEE





(245)
(246)
(247)


S0315
non-metastatic cells 1,
GAAD; NME1; NDPKA; 2.7.4.6; NM23-H1;
RLQPEFKPKQLE
KFMQASEDLLKE
DSVESAEKEIGL
1:9000-1:18000



protein (NM23A) expressed
AWD NM23H1B; GZMA-ACTIVATED DNase;
GTMANCER
HYVDLKDR
WFHPEELVD



in
NUCLEOSIDE DIPHOSPHATE KINASE-A;
(248)
(249)
(250)




AWD, DROSOPHILA, HOMOLOG OF;




METASTASIS INHIBITION FACTOR NM23;




nucleoside-diphosphate kinase 1 isoform b;




NONMETASTATIC PROTEIN 23, HOMOLOG




1; nucleo


S0316
squalene epoxidase
SQLE; 1.14.99.7; squalene epoxidase; squalene
KSPPESENKEQL
RDGRKVTVIERD
DHLKEPFLEATD
1:1000-1:10000




monooxygenase
EARRRR (251)
LKEPDR (252)
NSHLR (253)


S0319
pregnancy-induced growth
OKL38; pregnancy-induced growth inhibitor;
DLEVKDWMQKK
EYHKVHQMMRE
RHQLLCFKEDC
1:900



inhibitor
PREGNANCY-INDUCED GROWTH INHIBITOR
RRGLRNSR
QSILSPSPYEGYR
QAVFQDLEGVEK




OKL38
(254)
(255)
(256)


S0326
mal, T-cell differentiation
MAL2; mal, T-cell differentiation protein 2
GPDILRTYSGAF
CSLGLALRRWRP
N/A
1:120-1:1200



protein 2

VCLE (257)
(258)


S0330
aldo-keto reductase family
1.1.1.213; 2-ALPHA-HSD; 1.3.1.20; 20-ALPHA-
RYLTLDIFAGPP
N/A
N/A
1:2500-1:75000



1, member C1/2 (dihydrodiol
HSD; MGC8954; H-37; HAKRC; MBAB; C9;
NYPFSDEY



dehydrogenase 1; 20-alpha
DDH1; AKR1C1; trans-1,2-dihydrobenzene-1,2-
(259)



(3-alpha)-hydroxysteroid
diol dehydrogenase; chlordecone reductase



dehydrogenase)
homolog; aldo-keto reductase C; 20 alpha-




hydroxysteroid dehydrogenase; hepatic




dihydrodiol


S0330-x1
aldo-keto reductase family
1.1.1.213; 2-ALPHA-HSD; 1.3.1.20; 20-ALPHA-
RYLTLDIFAGPP
N/A
N/A
1:600



1, member C1/2 (dihydrodiol
HSD, MGC8954; H-37; HAKRC; MBAB; C9;
NYPFSDEY



dehydrogenase 1; 20-alpha
DDH1; AKR1C1; trans-1,2-dihydrobenzene-1,2-
(259)



(3-alpha)-hydroxysteroid
diol dehydrogenase; chlordecone reductase



dehydrogenase)
homolog; aldo-keto reductase C; 20 alpha-




hydroxysteroid dehydrogenase; hepatic




dihydrodiol


S0331
aldo-keto reductase family
HA1753; 1.1.1.188; DD3; hluPGFS; HSD17B5;
HYFNSDSFASHP
N/A
N/A
1:300-1:999



1, member C3 (3-alpha
1.3.1.20; 1.1.1.213; AKR1C3; KIAA0119;
NYPYSDEY



hydroxysteroid
HAKRB; HAKRe; trans-1,2-dihydrobenzene-1,2-
(260)



dehydrogenase, type II)
diol dehydrogenase; chlordecone reductase




homolog; dihydrodiol dehydrogenase 3;




prostaglandin F synthase; ALDO-KETO




REDUCTASE B; 3-


S0331-x1
aldo-keto reductase family
HA1753; 1.1.1.188, DD3; hluPGFS; HSD17B5;
HYFNSDSFASHP
N/A
N/A
1:150-1:300



1, member C3 (3-alpha
1.3.1.20, 1.1.1.213; AKR1C3; KIAA0119;
NYPYSDEY



hydroxysteroid
HAKRB, HAKRe, trans-1,2-dihydrobenzene-1,2-
(260)



dehydrogenase, type II)
diol dehydrogenase; chlordecone reductase




homolog; dihydrodiol dehydrogenase 3;




prostaglandin F synthase; ALDO-KETO




REDUCTASE B; 3-


S0332
aldo-keto reductase family
1.1.1.213; 2-ALPHA-HSD; 1.3.1.20; 20-ALPHA-
RYVVMDFLMDH
N/A
N/A
1:300-1:400



1, member C4 (dihydrodiol
HSD; MGC8954; H-37; HAKRC; MBAB; C9;
PDYPFSDEY



dehydrogenase 1; 20-alpha
DDH1; AKR1C1; trans-1,2-dihydrobenzene-1,2-
(261)



(3-alpha)-hydroxysteroid
diol dehydrogenase; chlordecone reductase



dehydrogenase)
homolog; aldo-keto reductase C; 20 alpha-




hydroxysteroid dehydrogenase; hepatic




dihydrodiol


S0332-x1
aldo-keto reductase family
1.1.1.213; 2-ALPHA-HSD; 1.3.1.20; 20-ALPHA-
RYVVMDFLMDH
N/A
N/A
1:75-1:150



1, member C4 (dihydrodiol
HSD; MGC8954; H-37; HAKRC; MBAB; C9;
PDYPFSDEY



dehydrogenase 1; 20-alpha
DDH1; AKR1C1; trans-1,2-dihydrobenzene-1,2-
(261)



(3-alpha)-hydroxysteroid
diol dehydrogenase; chlordecone reductase



dehydrogenase)
homolog; aldo-keto reductase C; 20 alpha-




hydroxysteroid dehydrogenase; hepatic




dihydrodiol


S0336
chromosome 20 open
C20orf139; chromosome 20 open reading frame
DPAKVQSLVDTI
RETIPAKLVQSTL
N/A
1:1600-1:2400



reading frame 139
139
REDPD (262)
SDLR (263)


S0342
solute carrier family 2
SLC2A12; solute carrier family 2 (facilitated
SDTTEELTVIKSS
N/A
N/A
1:400-1:1250



(facilitated glucose
glucose transporter), member 12
LKDE (264)



transporter), member 12


S0343
solute carrier family 2
SLC2A12; solute carrier family 2 (facilitated
HSRSSLMPLRN
N/A
N/A
1:50-1:125



(facilitated glucose
glucose transporter), member 12
DVDKR (265)



transporter), member 12


S0357
HTPAP protein
HTPAP; HTPAP protein
YRNPYVEAEYFP
N/A
N/A
1:100-1:300





TKPMFVIA (392)


S0364
KIAA0746 protein
KIAA0746; KIAA0746 protein
KKFPRFRNRELE
N/A
N/A
1:200-1:300





ATRRQRMD





(393)


S0367
peroxisomal acyl-CoA
PTE2B; peroxisomal acyl-CoA thioesterase 2B
SGNTAINYKHSSIP
N/A
N/A
1:200-1:600



thioesterase 2B

(394)


S0374
chloride intracellular channel 5
CLICS; chloride intracellular channel 5
DANTCGEDKGS
N/A
N/A
1:5000-1:9000





RRKFLDGDE





(266)


S0380
keratinocyte associated
KRTCAP3; keratinocyte associated protein 3
QLEEMTELESPK
N/A
N/A
1:2000-1:9000



protein 3

CKRQENEQ





(267)


S0384
FERM, RhoGEF (ARHGEF)
p63RhoGEF; CDEP; FARP1; chondrocyte-
QADGAASAPTE
N/A
N/A
1:100



and pleckstrin domain
derived ezrin-like protein; FERM, RhoGEF, and
EEEEVVKDR



protein 1 (chondrocyte-
pleckstrin domain protein 1; FERM, ARHGEF,
(268)



derived)
AND PLECKSTRIN DOMAIN-CONTAINING




PROTEIN 1; FERM, RhoGEF (ARHGEF) and




pleckstrin domain protein 1 (chondrocyte-




derived)


S0388
trichorhinophalangeal
GC79; TRPS1; TRPS1 GENE;
SGDSLETKEDQK
N/A
N/A
1:600



syndrome I
trichorhinophalangeal syndrome I; zinc finger
MSPKATEE




transcription factor TRPS1
(269)


S0396
cytochrome P450, family 3,
1.14.14.1; HLP; CYP3A3; CYP3A4; P450C3; NF
RKSVKRMKESR
N/A
N/A
1:15



subfamily A, polypeptide 4
25; CP33; CP34; P450-III, STEROID-
LEDTQKHRV




INDUCIBLE; nifedipine oxidase; glucocorticoid-
(395)




inducible P450; CYTOCHROME P450PCN1;




P450, FAMILY III; P450-III, steroid inducible;




cytochrome P450, subfamily IIIA, polypeptide 4;


S0398
FAT tumor suppressor
CDHF7; FAT; cadherin ME5; FAT tumor
KIRLPEREKPDR
N/A
N/A
1:45-1:200



homolog 1 (Drosophila)
suppressor precursor; cadherin-related tumor
ERNARREP




suppressor homolog precursor; cadherin family
(270)




member 7 precursor; homolog of Drosophila Fat




protein precursor; FAT tumor suppressor




homolog 1 (Drosophila); FAT TUMOR




SUPPRESS


S0401
granulin
ACROGRANIN; PROEPITHELIN;
RGTKCLRREAP
N/A
N/A
1:600-1:3000




PROGRANULIN; PEPI; PCDGF; granulin; GRN;
RWDAPLRDP




EPITHELIN PRECURSOR
(271)


S0404
N-myc downstream
HMSNL; TARG1; CMT4D; RTP; PROXY1;
GTRSRSHTSEG
N/A
N/A
1:100-1:900



regulated gene 1
NDRG1; GC4; NMSL; TDD5; RIT42; NDR1;
TRSRSHTSE




differentiation-related gene 1 protein; nickel-
(272)




specific induction protein Cap43; protein




regulated by oxygen-1; NMYC DOWNSTREAM-




REGULATED GENE 1; reducing agents and




tunicamycin-respon


S0411
fatty acid binding protein 5
PAFABP; EFABP; E-FABP; FABP5; PA-FABP;
EETTADGRKTQT
N/A
N/A
1:1800



(psoriasis-associated)
FATTY ACID-BINDING PROTEIN,
VCNFTD (273)




EPIDERMAL; FATTY ACID-BINDING PROTEIN




5; FATTY ACID-BINDING PROTEIN,




PSORIASIS-ASSOCIATED; fatty acid binding




protein 5 (psoriasis-associated)


S0413
cyclin-dependent kinase
WBS; p57(KIP2); BWCR; CDKN1C; BWS;
AKRKRSAPEKSS
N/A
N/A
1:2700



inhibitor 1C (p57, Kip2)
Beckwith-Wiedemann syndrome; cyclin-
GDVP (274)




dependent kinase inhibitor 1C (p57, Kip2)


S0414
alpha-methylacyl-CoA
AMACR; 5.1.99.4; ALPHA-METHYLACYL-CoA
RVDRPGSRYDV
N/A
N/A
1:100



racemase
RACEMASE; AMACR DEFICIENCY; AMACR
SRLGRGKRS




ALPHA-METHYLACYL-CoA RACEMASE
(275)




DEFICIENCY; alpha-methylacyl-CoA racemase




isoform 1; alpha-methylacyl-CoA racemase




isoform 2


S0415
gamma-aminobutyric acid
MGC9051; GABRB3; GABA-A RECEPTOR,
ETVDKLLKGYDI
N/A
N/A
1:600-1:1800



(GABA) A receptor, beta 3
BETA-3 POLYPEPTIDE; GAMMA-
RLRPD (276)




AMINOBUTYRIC ACID RECEPTOR, BETA-3;




gamma-aminobutyric acid (GABA) A receptor,




beta 3; gamma-aminobutyric acid (GABA) A




receptor, beta 3 isoform 2 precursor; gamma-




aminobutyric acid (GABA) A rece


S0417
HSV-1 stimulation-related
HSRG1; KIAA0872; HSV-1 stimulation-related
APGGAEDLEDT
N/A
N/A
1:9000



gene 1
1; HSV-1 stimulation-related gene 1
QFPSEEARE





(277)


S0425
tumor necrosis factor
TNFRSF21; DR6; BM-018; TNFR-related death
RKSSRTLKKGPR
N/A
N/A
1:9000



receptor superfamily,
receptor 6; tumor necrosis factor receptor
QDPSAIVE



member 21
superfamily, member 21; tumor necrosis factor
(278)




receptor superfamily, member 21 precursor


S0429
jumonji domain containing
JMJD1C; TRIP8; jumonji domain containing 1C;
GSESGDSDESE
N/A
N/A
1:1200



1C
THYROID HORMONE RECEPTOR
SKSEQRTKR




INTERACTOR 8
(279)


S0432
chromosome 9 open
C9orf140; chromosome 9 open reading frame
EADSGDARRLP
N/A
N/A
1:90-1:300



reading frame 140
140
RARGERRRH





(280)


S0440
cell division cycle 25B
3.1.3.48; CDC25B; cell division cycle 25B; cell
RLERPQDRDTP
N/A
N/A
1:350-1:3600




division cycle 25B isoform 4; cell division cycle
VQNKRRRS




25B isoform 5; cell division cycle 25B isoform 1;
(281)




cell division cycle 25B isoform 2; cell division




cycle 25B isoform 3


S0445
laminin, beta 1
LAMB1; LAMININ, BETA-1; CUTIS LAXA-
DRVEDVMMERE
N/A
N/A
1:600-1:1800




MARFANOID SYNDROME; laminin, beta 1;
SQFKEKQE




laminin, beta 1 precursor; LAMB1 NEONATAL
(282)




CUTIS LAXA WITH MARFANOID PHENOTYPE


S0447
papillary renal cell
TPRC; MGC17178; MGC4723; PRCC; proline-
DEAFKRLQGKR
N/A
N/A
1:4000-1:6000



carcinoma (translocation-
rich protein PRCC; RCCP1 PRCC/TFE3
NRGREE



associated)
FUSION GENE; papillary renal cell carcinoma
(283)




(translocation-associated); RENAL CELL




CARCINOMA, PAPILLARY, 1 GENE; papillary




renal cell carcinoma translocation-associated




gene product


S0455
tumor necrosis factor
APO2L; TL2; Apo-2L; TNFSF10; Apo-2 ligand;
RFQEEIKENTKN
N/A
N/A
1:900



(ligand) superfamily,
APO2 LIGAND; TNF-RELATED APOPTOSIS-
DKQ (284)



member 10
INDUCING LIGAND; TNF-related apoptosis




inducing ligand TRAIL; tumor necrosis factor




(ligand) superfamily, member 10; TUMOR




NECROSIS FACTOR LIGAND SUPERFAMILY,




MEMBER 10


S0459
titin
connectin; TMD; titin; CMD1G; CMPD4; TTN;
KRDKEGVRWTK
N/A
N/A
1:2700-1:8100




FLJ32040; CMH9, included; titin isoform N2-A;
CNKKTLTD




titin isoform N2-B; titin isoform novex-1; titin
(285)




isoform novex-2; titin isoform novex-3




cardiomyopathy, dilated 1G (autosomal




dominant); TTN CARDIOMYOPATHY,




FAMILIAL


S0469
DNA fragmentation factor,
DFF45, DFF1; DFFA; ICAD; DFF-45;
KEGSLLSKQEES
N/A
N/A
1:600



45 kDa, alpha polypeptide
INHIBITOR OF CASPASE-ACTIVATED DNase;
KAAFGEE




DNA FRAGMENTATION FACTOR, 45-KD,
(286)




ALPHA SUBUNIT; DNA fragmentation factor,




45 kDa, alpha polypeptide; DNA fragmentation




factor, 45 kD, alpha subunit; DNA fragmentation




factor, 45 kD, alp


S0494
caspase 2, apoptosis-
ICH-1L/1S; CASP2; ICH1; CASP-2; ICH-1
ESDAGKEKLPK
N/A
N/A
1:2000



related cysteine protease
protease; caspase 2 isoform 3; caspase 2
MRLPTRSD



(neural precursor cell
isoform 4; NEDD2 apoptosis regulatory gene;
(287)



expressed, developmentally
caspase 2 isoform 2 precursor; caspase 2



down-regulated 2)
isoform 1 preproprotein; NEURAL




PRECURSOR CELL EXPRESSED,




DEVELOPMENTALLY DOWNREGULATED 2;


S0501
G1 to S phase transition 1
GSPT1; eRF3a; ETF3A; GST1, YEAST,
ERDKGKTVEVG
N/A
N/A
1:15000




HOMOLOG OF; PEPTIDE CHAIN RELEASE
RAYFETEK




FACTOR 3A; G1-TO S-PHASE TRANSITION
(288)




1; G1 to S phase transition 1


S0502
GCN5 general control of
hGCN5; GCN5L2; GCN5 (general control of
EKFRVEKDKLVP
N/A
N/A
1:9000



amino-acid synthesis 5-like
amino-acid synthesis, yeast, homolog)-like 2;
EKR (289)



2 (yeast)
GCN5 general control of amino-acid synthesis 5-




like 2 (yeast); General control of amino acid




synthesis, yeast, homolog-like 2


S0503
geminin, DNA replication
GMNN; geminin, DNA replication inhibitor
EVAEKRRKALYE
N/A
N/A
1:333



inhibitor

ALKENEK





(396)


S0507
ADP-ribosylation factor-like
ARL6IP2; ADP-ribosylation factor-like 6
ENYEDDDLVNS
N/A
N/A
1:8000-1:9000



6 interacting protein 2
interacting protein 2
DEVMKKP (290)


S0511
DNA replication complex
Pfs2; DNA replication complex GINS protein
PKADEIRTLVKD
N/A
N/A
1:2000



GINS protein PSF2
PSF2
MWDTR (291)


S0524
ankyrin repeat domain 10
ANKRD10; ankyrin repeat domain 10
RKRCLEDSEDF
N/A
N/A
1:4500





GVKKARTE





(292)


S0527
potassium channel
KCTD2; potassium channel tetramerisation
EPKSFLCRLCCQ
N/A
N/A
1:900-1:1500



tetramerisation domain
domain containing 2
EDPELDS



containing 2

(293)


S0528
rabconnectin-3
RC3; KIAA0856; rabconnectin-3
EEYDRESKSSD
N/A
N/A
1:350-1:1200





DVDYRGS





(294)


S0538
acidic (leucine-rich) nuclear
ANP32E; acidic (leucine-rich) nuclear
CVNGEIEGLNDT
N/A
N/A
1:1200



phosphoprotein 32 family,
phosphoprotein 32 family, member E
FKELEF (397)



member E


S0544
chromosome 9 open
C9orf100; chromosome 9 open reading frame
EQRARWERKRA
N/A
N/A
1:40-1:240



reading frame 100
100
CTARE (295)


S0545
Hpall tiny fragments locus
D22S1733E; HTF9C; Hpall tiny fragments locus
ERKQLECEQVL
N/A
N/A
1:900-1:5400



9C
9C; Hpall tiny fragments locus 9C isoform2;
QKLAKE (296)




Hpall tiny fragments locus 9C isoform 1


S0546
cell division cycle associated 2
CDCA2; cell division cycle associated 2
RNSETKVRRST
N/A
N/A
1:1200





RLQKDLEN





(297)


S0553
mitotic phosphoprotein 44
MP44; NUP35; LOC129401; NUCLEOPORIN,
SDYQVISDRQTP
N/A
N/A
1:3000-1:5400




35-KD; mitotic phosphoprotein 44
KKDE (298)


S0557
SMC4 structural
SMC4L1; CAPC; hCAP-C; chromosome-
DIEGKLPQTEQE
N/A
N/A
1:200



maintenance of
associated polypeptide C; SMC4 (structural
LKE (299)



chromosomes 4-like 1
maintenance of chromosomes 4, yeast)-like 1;



(yeast)
SMC4 structural maintenance of chromosomes




4-like 1 (yeast); structural maintenance of




chromosomes (SMC) family member,




chromosome-ass


S0564
phosphatidylserine synthase 1
KIAA0024; PSSA; PTDSS1; phosphatidylserine
DDVNYKMHFRMI
N/A
N/A
1:1000-1:8000




synthase 1
NEQQVED





(300)


S0565
polo-like kinase 1
2.7.1.—; PLK1; STPK13; polo-like kinase
ENPLPERPREKE
N/A
N/A
1:10-1:100



(Drosophila)
(Drosophila); polo (Drosophia)-like kinase;
EPVVR




SERINE/THREONINE PROTEIN KINASE 13;
(301)




polo-like kinase 1 (Drosophila)


S0567
Pirin
Pirin; PIR
REQSEGVGARV
N/A
N/A
1:240





RRSIGRPE





(302)


S0578
ATP-binding cassette, sub-
ABCA3; ABC3; LBM180; ABC-C; EST111653;
PRAVAGKEEED
N/A
N/A
1:1500



family A (ABC1), member 3
ABC transporter 3; ATP-binding cassette 3; ATP
SDPEKALR





BINDING CASSETTE TRANSPORTER 3; ATP-
(303)




BINDING CASSETTE, SUBFAMILY A,




MEMBER 3; ATP-binding cassette, sub-family A




member 3; ATP-binding cassette, sub-family A




(ABC1), memb


S0579
ATP-binding cassette, sub-
ABCX; ABCA7; ABCA-SSN; autoantigen SS-N;
EKADTDMEGSV
N/A
N/A
1:300-1:400



family A (ABC1), member 7
macrophage ABC transporter; SJOGREN
DTRQEK




SYNDROME ANTIGEN SS-N; ATP-BINDING
(304)




CASSETTE, SUBFAMILY A, MEMBER 7; ATP-




binding cassette, sub-family A (ABC1), member




7; ATP-binding cassette, sub-family A, member




7 isoform a; A


S0581
ATP-binding cassette, sub-
ABCB7; Atm1p; ASAT; ABC7; EST140535;
RVQNHDNPKWE
N/A
N/A
1:4000-1:10000



family B (MDR/TAP),
ABC TRANSPORTER 7; ATP-binding cassette
AKKENISK



member 7
7; ATP-BINDING CASSETTE TRANSPORTER
(305)




7; Anemia, sideroblastic, with spinocerebellar




ataxia; ATP-BINDING CASSETTE, SUBFAMILY




B, MEMBER 7; ATP-binding cassette, sub-




family B, member


S0585
ATP-binding cassette, sub-
MRP9; ABCC12; MULTIDRUG RESISTANCE-
RSPPAKGATGP
N/A
N/A
1:500



family C (CFTR/MRP),
ASSOCIATED PROTEIN 9; ATP-BINDING
EEQSDSLK



member 12
CASSETTE, SUBFAMILY C, MEMBER 12; ATP-
(306)




binding cassette, sub-family C (CFTR/MRP),




member 12


S0586
ATP-binding cassette, sub-
ABC15; MXR1; ABCP; EST157481; MRX;
REEDFKATEIIEP
N/A
N/A
1:333-1:400



family G (WHITE), member 2
ABCG2; BCRP1; BMDP; MITOXANTRONE-
SKQDKP




RESISTANCE PROTEIN; mitoxantrone
(307)




resistance protein; placenta specific MDR




protein; ATP-BINDING CASSETTE




TRANSPORTER, PLACENTA-SPECIFIC;




breast cancer resistance protein; ATP-BINDING




CASS


S0593
solute carrier organic anion
OATP1B3; SLC21A8; OATP8; SLCO1B3;
DKTCMKWSTNS
N/A
N/A
1:500-1:2400



transporter family, member
ORGANIC ANION TRANSPORTER 8; solute
CGAQ (308)




1B3
carrier organic anion transporter family, member




1B3; SOLUTE CARRIER FAMILY 21, MEMBER




8 (ORGANIC ANION TRANSPORTER); solute




carrier family 21 (organic anion transporter),




member 8


S0597
solute carrier family 22
ROAT1; MGC45260; HOAT1; PAHT; SLC22A6;
DANLSKNGGLEV
N/A
N/A
1:3000



(organic anion transporter),
PAH TRANSPORTER; para-aminohippurate
WL (309)




member 6
transporter; renal organic anion transporter 1;




solute carrier family 22 member 6 isoform b;




solute carrier family 22 member 6 isoform c;




solute carrier family 22 member 6 isoform


S0604
solute carrier family 35
UGT2; UGTL; UGAT; SLC35A2; UGT1; UDP-
EPFLPKLLTK
N/A
N/A
1:2400



(UDP-galactose
galactose translocator; UDP-GALACTOSE
(310)



transporter), member A2
TRANSPORTER, ISOFORM 2; UGALT UDP-




GALACTOSE TRANSPORTER, ISOFORM 1;




solute carrier family 35 (UDP-galactose




transporter), member A2; solute carrier family




35 (UDP-galactose transpo


S0607
cell division cycle 25B
3.1.3.48; CDC25B; cell division cycle 25B; cell
RKSEAGSGAAS
N/A
N/A
1:1800




division cycle 25B isoform 4; cell division cycle
SSGEDKEN




25B isoform 5; cell division cycle 25B isoform 1;
(311)




cell division cycle 25B isoform 2; cell division




cycle 25B isoform 3


S0609
stearoyl-CoA desaturase
SCD; acyl-CoA desaturase; stearoyl-CoA
DDIYDPTYKDKE
N/A
N/A
1:2000-1:5000



(delta-9-desaturase)
desaturase (delta-9-desaturase); fatty acid
GPSPKVE




desaturase
(312)


S0611
mitogen-activated protein
SAPK3; p38gamma; SAPK-3; p38-GAMMA;
QSDEAKNNMKG
N/A
N/A
1:100



kinase 12
PRKM12; MAPK12; ERK3; ERK6;
LPELEKKD




EXTRACELLULAR SIGNAL-REGULATED
(313)




KINASE 6; mitogen-activated protein kinase 3;




stress-activated protein kinase 3; mitogen-




activated protein kinase 12


S0612
nuclear factor of kappa light
LYT-10; LYT10; NFKB2; ONCOGENE LYT 10;
SRPQGLTEAEQ
N/A
N/A
1:4500



polypeptide gene enhancer
TRANSCRIPTION FACTOR NFKB2; NFKB,
RELEQEAK



in B-cells 2 (p49/p100)
p52/p100 SUBUNIT; LYMPHOCYTE
(314)




TRANSLOCATION CHROMOSOME 10;




NUCLEAR FACTOR KAPPA-B, SUBUNIT 2;




Nuclear factor of kappa light chain gene




enhancer in B-cells 2; nuclear factor of kappa I


S0613
tumor necrosis factor
Bp50; TNFRSF5; MGC9013; CDW40; CD40
RVQQKGTSETD
N/A
N/A
1:250-1:270



receptor superfamily,
antigen; CD40L receptor; B CELL-
TIC (315)



member 5
ASSOCIATED MOLECULE CD40; CD40 type II




isoform; B cell surface antigen CD40; nerve




growth factor receptor-related B-lymphocyte




activation molecule; tumor necrosis factor




receptor superfam


S0614
Epstein-Barr virus induced
EBI3; IL27, EBI3 SUBUNIT; EPSTEIN-BARR
VRLSPLAERQLQ
N/A
N/A
1:1200-1:3000



gene 3
VIRUS-INDUCED GENE 3; INTERLEUKIN 27,
VQWE (316)




EBI3 SUBUNIT; Epstein-Barr virus induced




gene 3; Epstein-Barr virus induced gene 3




precursor


S0616
zinc finger protein 339
ZNF339; zinc finger protein 339
RRSLGVSVRSW
N/A
N/A
1:2500





DELPDEKR





(317)


S0617
DAB2 interacting protein
DAB2IP; DAB2 interacting protein
DEGLGPDPPHR
N/A
N/A
1:600





DRLRSK (318)


S0618
protein tyrosine
MGC26800; LIP1; PPFIA1; LIP.1; LAR-
SGKRSSDGSLS
N/A
N/A
1:150



phosphatase, receptor type,
interacting protein 1; PTPRF interacting protein
HEEDLAK



f polypeptide (PTPRF),
alpha 1 isoform a; PTPRF interacting protein
(319)



interacting protein (liprin),
alpha 1 isoform b; protein tyrosine phosphatase,



alpha 1
receptor type, f polypeptide (PTPRF), interacting




protein (liprin), alpha 1


S0631
RGM domain family,
RGMA; REPULSIVE GUIDANCE MOLECULE;
SQERSDSPEICH
N/A
N/A
1:600



member A
RGM domain family, member A
YEKSFHK





(320)


S0633
hypothetical protein
LOC144347; hypothetical protein LOC144347
KVNPEPTHEIRC
N/A
N/A
1:100-1:200



LOC144347

NSEVK (321)


S0639
tetratricopeptide repeat
TTC7; tetratricopeptide repeat domain 7
RELREVLRTVET
N/A
N/A
1:2000-1:3000



domain 7

KATQN (398)


S0640
protein C (inactivator of
PROC; 3.4.21.69; PROC DEFICIENCY
RDTEDQEDQVD
N/A
N/A
1:1000-1:1800



coagulation factors Va and
PROTEIN C; THROMBOPHILIA,
PRLIDGK



VIIIa)
HEREDITARY, DUE TO PC DEFICIENCY;
(399)




PROTEIN C DEFICIENCY, CONGENITAL




THROMBOTIC DISEASE DUE TO; protein C




(inactivator of coagulation factors Va and VIIIa)


S0643
transducin-like enhancer of
HsT18976; KIAA1547; ESG3; TLE3; transducin-
KNHHELDHRER
N/A
N/A
1:200-1:1440



split 3 (E(sp1) homolog,
like enhancer protein 3; enhancer of split
ESSAN



Drosophila)
groucho 3; transducin-like enhancer of split 3
(400)




(E(sp1) homolog, Drosophila)


S0645
frizzled homolog 7
FzE3; FZD7; frizzled 7; frizzled homolog 7
SDGRGRPAFPF
N/A
N/A
1:900



(Drosophila)
(Drosophila); Frizzled, drosophila, homolog of, 7
SCPRQ (322)


S0646
solute carrier family 3
MDU1; 4T2HC; SLC3A2; NACAE; 4F2HC; 4F2
GSKEDFDSLLQS
N/A
N/A
1:3600-1:5400



(activators of dibasic and
HEAVY CHAIN; CD98 HEAVY CHAIN; CD98
AKK (323)



neutral amino acid
MONOCLONAL ANTIBODY 44D7; ANTIGEN



transport), member 2
DEFINED BY MONOCLONAL ANTIBODY 4F2,




HEAVY CHAIN; antigen identified by




monoclonal antibodies 4F2, TRA1.10, TROP4,




and T43; SOLUTE CARRIER FAMILY 3


S0648
KIAA0738 gene product
KIAA0738; KIAA0738 gene product
EYRNQTNLPTEN
N/A
N/A
1:200





VDK (401)


S0651
phospholipase A2 receptor
PLA2IR; PLA2-R; PLA2R1; PLA2G1R;
QKEEKTWHEAL
N/A
N/A
1:3600



1, 180 kDa
PHOSPHOLIPASE A2 RECEPTOR, 180-KD;
RSCQADN (324)




phospholipase A2 receptor 1, 180 kDa (324)


S0654
KIAA0182 protein
KIAA0182; KIAA0182 protein
EKAEEGPRKRE
N/A
N/A
1:400





PAPLDK





(325)


S0659
thymidine kinase 2,
TK2; THYMIDINE KINASE, MITOCHONDRIAL;
EQNRDRILTPEN
N/A
N/A
1:300



mitochondrial
thymidine kinase 2, mitochondrial
RK (326)


S0663
chromosome 14 open
C14orf135; chromosome 14 open reading frame
RDWYIGLVSDEK
N/A
N/A
1:900



reading frame 135
135
WK (327)


S0665
KIAA1007 protein
KIAA1007; KIAA1007 protein; adrenal gland
DSYLKTRSPVTF
N/A
N/A
1:1500-1:3000




protein AD-005; KIAA1007 protein isoform a;
LSDLR (328)




KIAA1007 protein isoform b


S0670
DKFZP566O1646 protein
DC8; DKFZP566O1646 protein
KCRGETVAKEIS
N/A
N/A
1:900





EAMKS (329)


S0672
B-cell CLL/lymphoma 7A
BCL7A; B-cell CLL/lymphoma-7; B-cell
QRGSQIGREPIG
N/A
N/A
1:800




CLL/lymphoma 7A
LSGD (402)


S0673
likely ortholog of mouse nin
ART-4; NOB1P; adenocarcinoma antigen
KPPQETEKGHS
N/A
N/A
1:50



one binding protein
recognized by T lymphocytes 4; likely ortholog of
ACEPEN




mouse nin one binding protein
(330)


S0676
guanine nucleotide binding
RMP; NNX3; GNA12; GUANINE NUCLEOTIDE-
ERRAGSGARDA
N/A
N/A
1:1200-1:2400



protein (G protein) alpha 12
BINDING PROTEIN, ALPHA-12; guanine
ERE (331)




nucleotide binding protein (G protein) alpha 12


S0677
GrpE-like 1, mitochondrial
HMGE; GRPEL1; HUMAN MITOCHONDRIAL
SEQKADPPATEK
N/A
N/A
1:500-1:1000



(E. coli)
GrpE PROTEIN; GrpE-like 1, mitochondrial (E. coli);
TLLE (332)




GrpE, E. COLI, HOMOLOG OF, 1


S0684
hypothetical protein
FLJ34922; hypothetical protein FLJ34922
EAEWSQGVQGT
N/A
N/A
1:8100



FLJ34922

LRIKKYLT





(333)


S0687
hypothetical protein
FLJ20457; hypothetical protein FLJ20457
EESKSITEGLLT
N/A
N/A
1:600-1:1260



FLJ20457

QKQYE (334)


S0691
solute carrier family 7,
CCBR1; SLC7A11; xCT; cystine/glutamate
QNFKDAFSGRD
N/A
N/A
1:1000-1:1575



(cationic amino acid
transporter; SYSTEM Xc(−) TRANSPORTER-
SSITR



transporter, y+ system)
RELATED PROTEIN; SOLUTE CARRIER
(335)



member 11
FAMILY 7, MEMBER 11; solute carrier family 7,




(cationic amino acid transporter, y+ system)




member 11


S0692
glutamate-cysteine ligase,
GLCLC; GCLC; 6.3.2.2; GCS; GAMMA-
EKIHLDDANESD
N/A
N/A
1:100-1:400



catalytic subunit
GLUTAMYLCYSTEINE SYNTHETASE,
HFEN (403)




CATALYTIC SUBUNIT; glutamate-cysteine




ligase, catalytic subunit


S0695
integrin, beta 4
ITGB4; INTEGRIN, BETA-4; integrin, beta 4
TEDVDEFRNKLQ
N/A
N/A
1:2700-1:4050





GER (336)


S0702
solute carrier family 7
SLC7A5; MPE16; D16S469E; CD98; LAT1; 4F2
KGDVSNLDPNFS
N/A
N/A
1:21160-1:178200



(cationic amino acid
light chain; Membrane protein E16; L-TYPE
FEGTKLDV



transporter, y+ system),
AMINO ACID TRANSPORTER 1; Solute carrier
(337)



member 5
family 7, member 5; solute carrier family 7




(cationic amino acid transporter, y+ system),




member 5


S0705
breast cancer metastasis
DKFZp564A063; BRMS1; breast cancer
KARAAVSPQKR
N/A
N/A
1:1000-1:2000



suppressor 1
metastasis-suppressor 1; breast cancer
KSDGP (404)




metastasis suppressor 1


S0706
KiSS-1 metastasis-
MGC39258; KISS1; KiSS-1 metastasis-
RQIPAPQGAVLV
N/A
N/A
1:180



suppressor
suppressor; KISS1 METASTIN; malignant
QREKD (405)




melanoma metastasis-suppressor; KISS1




METASTASIS SUPPRESSOR


S0708
cofactor required for Sp1
DKFZp434H0117; CRSP133; SUR2; DRIP130;
SVKEQVEKIICNL
N/A
N/A
1:2430



transcriptional activation,
CRSP3; mediator; transcriptional co-activator
KPALK



subunit 3, 130 kDa
CRSP130; CRSP, 130-KD SUBUNIT; CRSP
(406)




130-kD subunit; 133 kDa transcriptional co-




activator; 130 kDa transcriptional co-activator;




vitamin D3 receptor interacting protein; c











S5002
keratin 14 (epidermolysis
CK; KRT14; K14; EBS4; EBS3; cytokeratin 14;
Antibody obtained from Chemicon
1:50



bullosa simplex, Dowling-
CK 14; KERATIN, TYPE I CYTOSKELETAL 14;



Meara, Koebner)
keratin 14 (epidermolysis bullosa simplex,




Dowling-Meara, Koebner)


S5003
keratin 17
PCHC1; PC; PC2; 39.1; KRT17; K17;
Antibody obtained from Dako
1:10-1:25




CYTOKERATIN 17; VERSION 1; CK 17;




KERATIN, TYPE I CYTOSKELETAL 17


S5004
keratin 18
K18; CYK18; KRT18; CYTOKERATIN 18; CK
Antibody obtained from Dako
1:200-1:400




18; KERATIN, TYPE I CYTOSKELETAL 18


S5005
keratin 18
K18; CYK18; KRT18; CYTOKERATIN 18; CK
Antibody obtained from Becton Dickinson
1:50-1:100




18; KERATIN, TYPE I CYTOSKELETAL 18


S5012
tumor-associated calcium
TROP1; LY74; Ep-CAM; GA733-2; EGP40; MK-
Antibody obtained from Oncogene Research Products
1:40



signal transducer 1
1; CO17-1A; EPCAM; M4S1; KSA; TACSTD1;
(Calbiochem)




EGP; MK-1 antigen; EPITHELIAL CELLULAR




ADHESION MOLECULE;




GASTROINTESTINAL TUMOR-ASSOCIATED




ANTIGEN 2, 35-KD GLYCOPROTEIN; tumor-




associated calcium signal transducer 1 precurso


S5014
estrogen receptor 2 (ER
ER-BETA; ESR-BETA; ESR2; Erb; ESRB;
Antibody obtained from Oncogene Research Products
1:2500



beta)
NR3A2; ESTROGEN RECEPTOR, BETA;
(Calbiochem)




estrogen receptor 2 (ER beta)


S5038
mucin 1, transmembrane
PEMT; MUC1; episialin; EMA; PUM; H23AG;
Antibody obtained from Imperial Cancer Research
1:1




CD227; PEM; CARCINOMA-ASSOCIATED
Technology (ICRT)




MUCIN; H23 antigen; TUMOR-ASSOCIATED




MUCIN; DF3 antigen; peanut-reactive urinary




mucin; mucin 1, transmembrane; polymorphic




epithelial mucin; MUCIN 1, URINARY; MUCIN,




TUMOR-ASSOCIATE


S5044
transferrin receptor (p90,
P90; TR; TFRC; TFR; CD71; T9; TRFR;
Antibody obtained from NeoMarkers
1:20



CD71)
ANTIGEN CD71; TRANSFERRIN RECEPTOR




PROTEIN; transferrin receptor (p90, CD71)


S5045
v-erb-b2 erythroblastic
HER-2; ERBB2; NGL; P185ERBB2; HER2; C-
Antibody obtained from NeoMarkers
1:600



leukemia viral oncogene
ERBB-2; NEU; MLN 19; EC 2.7.1.112; TKR1



homolog 2,
HERSTATIN; NEU PROTO-ONCOGENE;



neuro/glioblastoma derived
ONCOGENE ERBB2; RECEPTOR PROTEIN-



oncogene homolog (avian)
TYROSINE KINASE ERBB-2 PRECURSOR;




ONCOGENE NGL, NEUROBLASTOMA- OR




GLIOBLASTOMA-DERIVED; TYROSINE




KINASE-TYPE CELL


S5047
major vault protein
MVP; LRP; VAULT1; LUNG RESISTANCE-
Antibody obtained from NeoMarkers
1:300




RELATED PROTEIN; MAJOR VAULT




PROTEIN, RAT, HOMOLOG OF


S5064
tumor protein p73-like
LMS; TP73L; KET; SHFM4; p73H; EEC3; TP63;
Antibody obtained from Dako
1:50




p51; TUMOR PROTEIN p63; TUMOR




PROTEIN p73-LIKE; p53-RELATED PROTEIN




p63; tumor protein 63 kDa with strong homology




to p53


S5065
estrogen receptor 1
ER; NR3A1; ESR1; Era; ESR; ER-ALPHA;
Antibody obtained from Dako
1:20




ESRA; ESTRADIOL RECEPTOR; ESTROGEN




RECEPTOR, ALPHA; estrogen receptor 1




(alpha)


S5066
v-erb-b2 erythroblastic
HER-2; ERBB2; NGL; P185ERBB2; HER2; C-
Antibody obtained from Dako
1:300



leukemia viral oncogene
ERBB-2; NEU; MLN 19; EC 2.7.1.112; TKR1



homolog 2,
HERSTATIN; NEU PROTO-ONCOGENE;



neuro/glioblastoma derived
ONCOGENE ERBB2; RECEPTOR PROTEIN-



oncogene homolog (avian)
TYROSINE KINASE ERBB-2 PRECURSOR;




ONCOGENE NGL, NEUROBLASTOMA- OR




GLIOBLASTOMA-DERIVED; TYROSINE




KINASE-TYPE CELL


S5067
cathepsin D (lysosomal
CTSD; MGC2311; CPSD; EC 3.4.23.5;
Antibody obtained from Dako
1:20-1:50



aspartyl protease)
cathepsin D preproprotein; Cathepsin D




precursor; cathepsin D (lysosomal aspartyl




protease);


S5069
CA 125

Antibody obtained from Dako
1:20


S5070
CA 15-3

Antibody obtained from Dako
1:50


S5071
CA 19-9

Antibody obtained from Dako
1:50


S5072
v-myc myelocytomatosis
c-Myc; MYC; ONCOGENE MYC; Myc proto-
Antibody obtained from Dako
1:50



viral oncogene homolog
oncogene protein; PROTOONCOGENE



(avian)
HOMOLOGOUS TO MYELOCYTOMATOSIS




VIRUS; v-myc myelocytomatosis viral oncogene




homolog (avian); v-myc avian myelocytomatosis




viral oncogene homolog; Avian




myelocytomatosis viral (v-myc) onco


S5073
cadherin 1, type 1, E-
CDH1; Cadherin-1; Arc-1; ECAD; CDHE;
Antibody obtained from Dako
1:100-1:150



cadherin (epithelial)
Uvomorulin; LCAM; Epithelial-cadherin




precursor; cell-CAM 120/80; CADHERIN,




EPITHELIAL; calcium-dependent adhesion




protein, epithelial; cadherin 1, E-cadherin




(epithelial); cadherin 1, type 1 preproprotein;




cadherin 1,


S5074
glutathione S-transferase pi
GSTP1; DFN7; GSTP1-1; GST3; GSTPP; GST
Antibody obtained from Dako
1:50




class-pi; glutathione transferase; EC 2.5.1.18;




glutathione S-transferase pi; GST, CLASS PI;




deafness, X-linked 7; GLUTATHIONE S-




TRANSFERASE 3; GLUTATHIONE S-




TRANSFERASE, PI; FAEES3 GLUTATHIONE




S-TRANSFERASE PI PSEUD


S5075
tumor protein p53 (Li-
p53; TP53; TRP53; PHOSPHOPROTEIN P53;
Antibody obtained from Dako
1:50



Fraumeni syndrome)
TRANSFORMATION-RELATED PROTEIN 53;




TUMOR SUPPRESSOR P53; CELLULAR




TUMOR ANTIGEN P53; tumor protein p53 (Li-




Fraumeni syndrome)


S5076
progesterone receptor
NR3C3; PR; PGR; PROGESTERONE
Antibody obtained from Dako
1:50




RESISTANCE; PSEUDOCORPUS LUTEUM




INSUFFICIENCY PROGESTERONE




RECEPTOR


S5077
trefoil factor 1 (breast

Antibody obtained from Dako
1:50-1:100



cancer, estrogen-inducible



sequence expressed in)


S5079
enolase 2, (gamma,
NSE; ENO2; 2-phospho-D-glycerate hydrolyase;
Antibody obtained from Dako
1:400



neuronal)
ENOLASE, GAMMA; neurone-specific




enolase; ENOLASE, NEURON-SPECIFIC; 2-




phospho-D-glycerate hydrolyase; EC 4.2.1.11;




Neural enolase; enolase-2, gamma, neuronal;




neuron specific gamma enolase; enolase 2,




(gamma,


S5080
B-cell CLL/lymphoma 2
BCL2; FOLLICULAR LYMPHOMA;
Antibody obtained from Dako
1:50




APOPTOSIS REGULATOR BCL-2; B-cell




CLL/lymphoma 2; B-cell lymphoma protein 2




alpha; B-cell lymphoma protein 2 beta;




ONCOGENE B-CELL LEUKEMIA 2 LEUKEMIA,




CHRONIC LYMPHATIC, TYPE 2


S5081
retinoblastoma 1 (including
p105-Rb; PP110; Retinoblastoma-1; RB; RB1;
Antibody obtained from Dako
1:20



osteosarcoma)
RETINOBLASTOMA-ASSOCIATED PROTEIN;




RB OSTEOSARCOMA, RETINOBLASTOMA-




RELATED; retinoblastoma 1 (including




osteosarcoma)


S5082
synaptophysin
SYP; Synaptophysin; Major synaptic vesicle
Antibody obtained from Dako
1:50




protein P38


S5083
BCL2-associated X protein
BAX; BCL2-associated X protein; APOPTOSIS
Antibody obtained from Dako
1:500




REGULATOR BAX, MEMBRANE ISOFORM




ALPHA


S5086
estrogen receptor 2 (ER
ER-BETA; ESR-BETA; ESR2; Erb; ESRB;
Antibody obtained from Abcam
1:200



beta)
NR3A2; ESTROGEN RECEPTOR, BETA;




estrogen receptor 2 (ER beta)


S5087
mucin 1, transmembrane
PEMT; MUC1; episialin; EMA; PUM; H23AG;
Antibody obtained from Zymed
1:200-1:1600




CD227; PEM; CARCINOMA-ASSOCIATED




MUCIN; H23 antigen; TUMOR-ASSOCIATED




MUCIN; DF3 antigen; peanut-reactive urinary




mucin; mucin 1, transmembrane; polymorphic




epithelial mucin; MUCIN 1, URINARY; MUCIN,




TUMOR-ASSOCIATE


S6001
estrogen receptor 1
ER; NR3A1; ESR1; Era; ESR, ER-ALPHA;
Antibody obtained from US Labs
1:1




ESRA; ESTRADIOL RECEPTOR; ESTROGEN




RECEPTOR, ALPHA; estrogen receptor 1




(alpha)


S6002
progesterone receptor
NR3C3; PR; PGR; PROGESTERONE
Antibody obtained from US Labs
1:1




RESISTANCE; PSEUDOCORPUS LUTEUM




INSUFFICIENCY PROGESTERONE




RECEPTOR


S6003
v-erb-b2 erythroblastic
HER-2; ERBB2; NGL; P185ERBB2; HER2; C-
Antibody obtained from US Labs
1:1



leukemia viral oncogene
ERBB-2; NEU; MLN 19; EC 2.7.1.112; TKR1



homolog 2,
HERSTATIN; NEU PROTO-ONCOGENE;



neuro/glioblastoma derived
ONCOGENE ERBB2; RECEPTOR PROTEIN-



oncogene homolog (avian)
TYROSINE KINASE ERBB-2 PRECURSOR;




ONCOGENE NGL, NEUROBLASTOMA- OR




GLIOBLASTOMA-DERIVED; TYROSINE




KINASE-TYPE CELL


S6004
B-cell CLL/lymphoma 2
BCL2; FOLLICULAR LYMPHOMA;
Antibody obtained from US Labs
1:1




APOPTOSIS REGULATOR BCL-2; B-cell




CLL/lymphoma 2; B-cell lymphoma protein 2




alpha; B-cell lymphoma protein 2 beta;




ONCOGENE B-CELL LEUKEMIA 2 LEUKEMIA,




CHRONIC LYMPHATIC, TYPE 2


S6005
keratin 5 (epidermolysis
KRT5; EBS2; Keratin-5; K5; CYTOKERATIN 5;
Antibody obtained from US Labs
1:1



bullosa simplex, Dowling-
CK 5; 58 KDA CYTOKERATIN; KERATIN,



Meara/Kobner/Weber-
TYPE II CYTOSKELETAL 5; keratin 5



Cockayne types)
(epidermolysis bullosa simplex, Dowling-




Meara/Kobner/Weber-Cockayne types)


S6006
tumor protein p53 (Li-
p53; TP53; TRP53; PHOSPHOPROTEIN P53;
Antibody obtained from US Labs
1:1



Fraumeni syndrome)
TRANSFORMATION-RELATED PROTEIN 53;




TUMOR SUPPRESSOR P53; CELLULAR




TUMOR ANTIGEN P53; tumor protein p53 (Li-




Fraumeni syndrome)


S6007
KI67

Antibody obtained from US Labs
1:1


S6008
epidermal growth factor
S7; EGFR; 2.7.1.112; ERBB; ONCOGENE
Antibody obtained from US Labs
1:1



receptor (erythroblastic
ERBB; ERBB1 SPECIES ANTIGEN 7; V-ERB-B



leukemia viral (v-erb-b)
AVIAN ERYTHROBLASTIC LEUKEMIA VIRAL



oncogene homolog, avian)
ONCOGENE HOMOLOG; epidermal growth




factor receptor (avian erythroblastic leukemia




viral (v-erb-b) oncogene homolog)


S6011
enolase 2, (gamma,
NSE; ENO2; 2-phospho-D-glycerate hydrolyase;
Antibody obtained from US Labs
1:1



neuronal)
ENOLASE, GAMMA; neurone-specific




enolase; ENOLASE, NEURON-SPECIFIC; 2-




phospho-D-glycerate hydrolyase; EC 4.2.1.11;




Neural enolase; enolase-2, gamma, neuronal;




neuron specific gamma enolase; enolase 2,




(gamma,


S6012
thyroid transcription factor 1
benign chorea; chorea, hereditary benign; NK-2
Antibody obtained from US Labs
1:1




(Drosophila) homolog A (thyroid nuclear factor);




Thyroid transcription factor 1 (NK-2, Drosophila,




homolog of, A); BCH; BHC; TEBP; TTF1;




NKX2A; TTF-1; NKX2.1


S6013
v-erb-b2 erythroblastic
HER-2; ERBB2; NGL; P185ERBB2; HER2; C-
Antibody obtained from US Labs
1:1



leukemia viral oncogene
ERBB-2; NEU; MLN 19; EC 2.7.1.112; TKR1



homolog 2,
HERSTATIN; NEU PROTO-ONCOGENE;



neuro/glioblastoma derived
ONCOGENE ERBB2; RECEPTOR PROTEIN-



oncogene homolog (avian)
TYROSINE KINASE ERBB-2 PRECURSOR;




ONCOGENE NGL, NEUROBLASTOMA- OR




GLIOBLASTOMA-DERIVED; TYROSINE




KINASE-TYPE CELL






















APPENDIX A1







Panels
BREAST?
LUNG?
COLON?
OVARIAN?
NCBI



















AGI ID
GENE NAME
Russ.
HH
Russ.
HH
Russ.
Stanf.
UAB
Russ.
LocusLink ID
UniGene ID





















S0011
vav 3 oncogene

X






10451
Hs.267659


S0017
WAP four-disulfide core domain 2





X
X
X
10406
Hs.2719


S0018
secretoglobin, family 2A, member 2

X






4250
Hs.46452


S0020
PPAR binding protein

X






5469
Hs.462956


S0021
hypothetical protein FLJ23834
X
X
X
X


X
X
222256
Hs.202120


S0022
cytochrome P450 4Z1
X
X
X
X
X

X
X
199974
Hs.176588


S0024
RAS-like, estrogen-regulated, growth-


X





85004
Hs.199487



inhibitor


S0032
fatty acid binding protein 3, muscle and

X






2170
Hs.112669



heart (mammary-derived growth inhibitor)


S0036
gamma-aminobutyric acid (GABA) A




X

X

2568
Hs.26225



receptor, pi


S0037
annexin A8

X






244
Hs.524293


S0039
CDNA FLJ25076 fis, clone CBL06117
X
X
X

X


X
134111
Hs.126856


S0040
ATP-binding cassette, sub-family B
X
X
X

X



5243
Hs.489033



(MDR/TAP), member 1


S0041
ATP-binding cassette, sub-family B
X






X
5244
Hs.287827



(MDR/TAP), member 4


S0042
ATP-binding cassette, sub-family C
X
X
X

X


X
4363
Hs.391464



(CFTR/MRP), member 1


S0043
ATP-binding cassette, sub-family C
X
X
X

X


X
1244
Hs.368243



(CFTR/MRP), member 2


S0044
ATP-binding cassette, sub-family C
X
X
X

X



10257
Hs.508423



(CFTR/MRP), member 4


S0045
ATP-binding cassette, sub-family C
X







8714
Hs.463421



(CFTR/MRP), member 3


S0046
ATP-binding cassette, sub-family C
X

X
X
X



10057
Hs.368563



(CFTR/MRP), member 5


S0047
ATP-binding cassette, sub-family C
X

X

X



368
Hs.274260



(CFTR/MRP), member 6


S0048
ATP-binding cassette, sub-family B
X







8647
Hs.158316



(MDR/TAP), member 11


S0049
ATP-binding cassette, sub-family B
X
X






23456
Hs.17614



(MDR/TAP), member 10


S0050
transporter 1, ATP-binding cassette, sub-
X
X






6890
Hs.352018



family B (MDR/TAP)


S0052
ATP-binding cassette, sub-family C
X

X

X



6833
Hs.54470



(CFTR/MRP), member 8


S0053
ATP-binding cassette, sub-family C
X
X






10060
Hs.446050



(CFTR/MRP), member 9


S0055
integral membrane protein 2B

X






9445
Hs.446450


S0057
ankyrin 3, node of Ranvier (ankyrin G)

X






288
Hs.499725


S0058
hypothetical protein FLJ21918


X





80004
Hs.436585


S0059
tripartite motif-containing 29
X
X
X

X



23650
Hs.504115


S0059P2
tripartite motif-containing 29



X


X

23650
Hs.504115


S0063
iroquois homeobox protein 3

X
X
X
X

X

79191
Hs.499205


S0068
RAS-like, estrogen-regulated, growth-

X

X




85004
Hs.199487



inhibitor


S0070
G protein-coupled receptor 160
X






X
26996
Hs.231320


S0072
S100 calcium binding protein A8

X

X




6279
Hs.416073



(calgranulin A)


S0073
forkhead box A1

X






3169
Hs.163484


S0073P2
forkhead box A1

X

X




3169
Hs.163484


S0074
trefoil factor 3 (intestinal)
X
X
X

X



7033
Hs.82961


S0074P3
trefoil factor 3 (intestinal)



X




7033
Hs.82961


S0076x1
keratin 17

X






3872
Hs.2785


S0078
kynureninase (L-kynurenine hydrolase)






X

8942
Hs.470126


S0079
solute carrier family 39 (zinc transporter),

X

X




25800
Hs.79136



member 6


S0081
N-acetyltransferase 1 (arylamine N-
X
X





X
9
Hs.155956



acetyltransferase)


S0086
X-box binding protein 1

X






7494
Hs.437638


S0088
claudin 10







X
9071
Hs.534377


S0090
sparc/osteonectin, cwcv and kazal-like

X

X

X
X
X
9806
Hs.523009



domains proteoglycan (testican) 2


S0091
lipocalin 2 (oncogene 24p3)





X
X

3934
Hs.204238


S0092
paired box gene 8





X
X
X
7849
Hs.469728


S0093
mesothelin





X
X

10232
Hs.408488


S0094
kallikrein 6 (neurosin, zyme)





X
X

5653
Hs.79361


S0095
Rap guanine nucleotide exchange factor





X
X

10411
Hs.8578



(GEF) 3


S0096
ATPase, H+ transporting, lysosomal

X

X


X
X
525
Hs.64173



56/58 kDa, V1 subunit B, isoform 1 (Renal



tubular acidosis with deafness)


S0097
frizzled homolog 8 (Drosophila)





X
X

8325
Hs.302634


S0099
histone 1, H2ba





X
X

255626
Hs.371887


S0110
hypothetical protein MGC2714
X

X

X



84259
Hs.503716


S0117
reproduction 8




X

X

7993
Hs.153678


S0119
slit homolog 1 (Drosophila)




X



6585
Hs.500712


S0122
leucyl-tRNA synthetase 2, mitochondrial







X
23395
Hs.526975


S0123
homeo box D4





X
X
X
3233
Hs.386365


S0124
sphingosine-1-phosphate lyase 1





X
X

8879
Hs.499984


S0126
HBxAg transactivated protein 1




X

X

55789
Hs.482233


S0132
SRY (sex determining region Y)-box 9
X

X

X


X
6662
Hs.2316



(campomelic dysplasia, autosomal sex-



reversal)


S0137
cadherin, EGF LAG seven-pass G-type
X
X
X
X
X



1952
Hs.57652



receptor 2 (flamingo homolog, Drosophila)


S0139
gamma-glutamyl hydrolase (conjugase,
X
X



X
X

8836
Hs.78619



folylpolygammaglutamyl hydrolase)


S0140
bullous pemphigoid antigen 1, 230/240 kDa
X
X
X
X
X

X
X
667
Hs.485616


S0143
fatty acid synthase
X
X
X





2194
Hs.83190


S0143P3
fatty acid synthase

X

X


X

2194
Hs.83190


S0144
matrix metalloproteinase 14 (membrane-
X

X


X
X
X
4323
Hs.2399



inserted)


S0147
cystatin A (stefin A)

X

X




1475
Hs.518198


S0149
transient receptor potential cation channel,
X







55503
Hs.302740



subfamily V, member 6


S0156
fatty acid binding protein 7, brain
X

X

X


X
2173
Hs.26770


S0158
cadherin 3, type 1, P-cadherin (placental)
X
X
X
X
X


X
1001
Hs.191842


S0165
chemokine (C—X—C motif) ligand 1
X
X






2919
Hs.789



(melanoma growth stimulating activity,



alpha)


S0171
baculoviral IAP repeat-containing 5
X







null
Hs.514527



(survivin)


S0193
procollagen-lysine, 2-oxoglutarate 5-

X






5352
Hs.477866



dioxygenase (lysine hydroxylase) 2


S0202
PTK7 protein tyrosine kinase 7




X



5754
Hs.90572


S0211
cytochrome P450, family 2, subfamily A,
X

X





1549
Hs.439056



polypeptide 7


S0218
solute carrier family 29 (nucleoside
X






X
222962
Hs.4302



transporters), member 4


S0221
solute carrier family 28 (sodium-coupled
X
X






9153
Hs.367833



nucleoside transporter), member 2


S0223
angiopoietin-like 4
X

X

X

X
X
51129
Hs.9613


S0235
carcinoembryonic antigen-related cell

X




X

1048
Hs.220529



adhesion molecule 5


S0237
podocalyxin-like

X






5420
Hs.16426


S0238
xenotropic and polytropic retrovirus






X

9213
Hs.227656



receptor


S0241
glycyl-tRNA synthetase
X

X

X

X
X
2617
Hs.404321


S0244
dachshund homolog 1 (Drosophila)


X



X

1602
Hs.129452


S0251
transcription factor CP2-like 2




X



29841
Hs.546382


S0253
lysosomal associated protein
X
X






55353
Hs.492314



transmembrane 4 beta


S0255
cyclin E2

X
X
X
X



9134
Hs.521693


S0260
nicastrin


X
X


X

23385
Hs.517249


S0265
FXYD domain containing ion transport


X

X



5349
Hs.301350



regulator 3


S0267
immunoglobulin superfamily, member 3


X




X
3321
Hs.171057


S0270
signal transducing adaptor molecule (SH3


X




X
10254
Hs.17200



domain and ITAM motif) 2


S0273
dickkopf homolog 1 (Xenopus laevis)


X





22943
Hs.40499


S0280
solute carrier family 26, member 6
X







65010
Hs.436194


S0286
WNT inhibitory factor 1

X






11197
Hs.284122


S0288
preferentially expressed antigen in


X





23532
Hs.30743



melanoma


S0295
prostaglandin E synthase


X




X
9536
Hs.146688


S0296
solute carrier family 7 (cationic amino acid
X
X
X

X


X
8140
Hs.513797



transporter, y+ system), member 5


S0296P1
solute carrier family 7 (cationic amino acid

X

X


X

8140
Hs.513797



transporter, y+ system), member 5


S0297
v-maf musculoaponeurotic fibrosarcoma


X




X
7975
Hs.520614



oncogene homolog K (avian)


S0301
signal peptide, CUB domain, EGF-like 2
X







57758
Hs.523468


S0303
gamma-aminobutyric acid (GABA) A

X
X
X
X



2564
Hs.22785



receptor, epsilon


S0305
S100 calcium binding protein A10 (annexin

X
X

X



6281
Hs.143873



II ligand, calpactin I, light polypeptide (p11))


S0311
v-myb myeloblastosis viral oncogene
X

X

X


X
4605
Hs.179718



homolog (avian)-like 2


S0312
nucleoside phosphorylase
X





X
X
4860
Hs.75514


S0314
chaperonin containing TCP1, subunit 5


X

X



22948
Hs.1600



(epsilon)


S0315
non-metastatic cells 1, protein (NM23A)
X
X
X

X



4830
Hs.118638



expressed in


S0316
squalene epoxidase
X
X
X




X
6713
Hs.71465


S0319
pregnancy-induced growth inhibitor


X





29948
Hs.528383


S0326
mal, T-cell differentiation protein 2
X

X

X


X
114569
Hs.201083


S0330
aldo-keto reductase family 1, member C1/2


X
X
X
X
X

1645
Hs.460260



(dihydrodiol dehydrogenase 1; 20-alpha (3-



alpha)-hydroxysteroid dehydrogenase)


S0330-x1
aldo-keto reductase family 1, member C1/2


X
X




1645
Hs.460260



(dihydrodiol dehydrogenase 1; 20-alpha (3-



alpha)-hydroxysteroid dehydrogenase)


S0331
aldo-keto reductase family 1, member C3


X
X

X
X

8644
Hs.78183



(3-alpha hydroxysteroid dehydrogenase,



type II)


S0331-x1
aldo-keto reductase family 1, member C3


X
X




8644
Hs.78183



(3-alpha hydroxysteroid dehydrogenase,



type II)


S0332
aldo-keto reductase family 1, member C4


X
X




1645
Hs.460260



(dihydrodiol dehydrogenase 1; 20-alpha (3-



alpha)-hydroxysteroid dehydrogenase)


S0332-x1
aldo-keto reductase family 1, member C4


X
X




1645
Hs.460260



(dihydrodiol dehydrogenase 1; 20-alpha (3-



alpha)-hydroxysteroid dehydrogenase)


S0336
chromosome 20 open reading frame 139


X
X




140809
Hs.516830


S0342
solute carrier family 2 (facilitated glucose
X
X
X

X


X
154091
Hs.486508



transporter), member 12


S0343
solute carrier family 2 (facilitated glucose
X
X
X





154091
Hs.486508



transporter), member 12


S0357
HTPAP protein







X
84513
Hs.437179


S0364
KIAA0746 protein







X
23231
Hs.479384


S0367
peroxisomal acyl-CoA thioesterase 2B







X
122970
Hs.49433


S0374
chloride intracellular channel 5
X

X

X


X
53405
Hs.485489


S0380
keratinocyte associated protein 3


X



X
X
200634
Hs.59509


S0384
FERM, RhoGEF (ARHGEF) and pleckstrin




X



10160
Hs.403917



domain protein 1 (chondrocyte-derived)


S0388
trichorhinophalangeal syndrome I
X







7227
Hs.253594


S0396
cytochrome P450, family 3, subfamily A,







X
1576
Hs.442527



polypeptide 4


S0398
FAT tumor suppressor homolog 1

X
X
X




2195
Hs.481371



(Drosophila)


S0401
granulin


X

X

X

2896
Hs.514220


S0404
N-myc downstream regulated gene 1
X
X
X
X
X
X
X
X
10397
Hs.372914


S0411
fatty acid binding protein 5 (psoriasis-


X





2171
Hs.408061



associated)


S0413
cyclin-dependent kinase inhibitor 1C (p57,


X





1028
Hs.106070



Kip2)


S0414
alpha-methylacyl-CoA racemase




X



23600
Hs.508343


S0415
gamma-aminobutyric acid (GABA) A

X
X





2562
Hs.302352



receptor, beta 3


S0417
HSV-1 stimulation-related gene 1
X
X






22879
Hs.436089


S0425
tumor necrosis factor receptor superfamily,




X



27242
Hs.443577



member 21


S0429
jumonji domain containing 1C




X



221037
Hs.413416


S0432
chromosome 9 open reading frame 140
X

X
X
X



null
Hs.19322


S0440
cell division cycle 25B
X
X





X
994
Hs.153752


S0445
laminin, beta 1


X





3912
Hs.489646


S0447
papillary renal cell carcinoma (translocation-
X





X

5546
Hs.516948



associated)


S0455
tumor necrosis factor (ligand) superfamily,




X



8743
Hs.478275



member 10


S0459
titin
X
X






7273
Hs.134602


S0469
DNA fragmentation factor, 45 kDa, alpha


X





1676
Hs.484782



polypeptide


S0494
caspase 2, apoptosis-related cysteine
X







835
Hs.368982



protease (neural precursor cell expressed,



developmentally down-regulated 2)


S0501
G1 to S phase transition 1
X

X

X



2935
Hs.528780


S0502
GCN5 general control of amino-acid
X

X

X



2648
Hs.463045



synthesis 5-like 2 (yeast)


S0503
geminin, DNA replication inhibitor







X
51053
Hs.234896


S0507
ADP-ribosylation factor-like 6 interacting


X





64225
Hs.190440



protein 2


S0511
DNA replication complex GINS protein
X







51659
Hs.433180



PSF2


S0524
ankyrin repeat domain 10
X







55608
Hs.525163


S0527
potassium channel tetramerisation domain




X



null
Hs.514468



containing 2


S0528
rabconnectin-3
X

X




X
23312
Hs.511386


S0538
acidic (leucine-rich) nuclear phosphoprotein




X



81611
Hs.385913



32 family, member E


S0544
chromosome 9 open reading frame 100
X





X

84904
Hs.277026


S0545
Hpall tiny fragments locus 9C
X
X

X


X

27037
Hs.528643


S0546
cell division cycle associated 2
X







157313
Hs.33366


S0553
mitotic phosphoprotein 44


X

X



129401
Hs.180591


S0557
SMC4 structural maintenance of




X



10051
Hs.58992



chromosomes 4-like 1 (yeast)


S0564
phosphatidylserine synthase 1
X
X
X

X



9791
Hs.292579


S0565
polo-like kinase 1 (Drosophila)
X
X





X
5347
Hs.329989


S0567
Pirin
X



X



8544
Hs.495728


S0578
ATP-binding cassette, sub-family A (ABC1),


X





21
Hs.26630



member 3


S0579
ATP-binding cassette, sub-family A (ABC1),


X
X




10347
Hs.134514



member 7


S0581
ATP-binding cassette, sub-family B

X
X

X



22
Hs.370480



(MDR/TAP), member 7


S0585
ATP-binding cassette, sub-family C


X

X



94160
Hs.410111



(CFTR/MRP), member 12


S0586
ATP-binding cassette, sub-family G


X
X



X
9429
Hs.480218



(WHITE), member 2


S0593
solute carrier organic anion transporter
X
X
X

X



28234
Hs.504966



family, member 1B3


S0597
solute carrier family 22 (organic anion
X







9356
Hs.369252



transporter), member 6


S0604
solute carrier family 35 (UDP-galactose
X

X

X



7355
Hs.21899



transporter), member A2


S0607
cell division cycle 25B




X



994
Hs.153752


S0609
stearoyl-CoA desaturase (delta-9-


X




X
6319
Hs.368641



desaturase)


S0611
mitogen-activated protein kinase 12


X

X



6300
Hs.432642


S0612
nuclear factor of kappa light polypeptide


X

X



4791
Hs.73090



gene enhancer in B-cells 2 (p49/p100)


S0613
tumor necrosis factor receptor superfamily,


X

X



958
Hs.472860



member 5


S0614
Epstein-Barr virus induced gene 3


X
X
X

X

10148
Hs.501452


S0616
zinc finger protein 339


X





58495
Hs.546418


S0617
DAB2 interacting protein

X






153090
Hs.522378


S0618
protein tyrosine phosphatase, receptor




X



8500
Hs.530749



type, f polypeptide (PTPRF), interacting



protein (liprin), alpha 1


S0631
RGM domain family, member A




X



56963
Hs.271277


S0633
hypothetical protein LOC144347

X


X

X

144347
Hs.432901


S0639
tetratricopeptide repeat domain 7




X

X

57217
Hs.370603


S0640
protein C (inactivator of coagulation factors




X

X

5624
Hs.224698



Va and VIIIa)


S0643
transducin-like enhancer of split 3 (E(sp1)

X

X


X

7090
Hs.287362



homolog, Drosophila)


S0645
frizzled homolog 7 (Drosophila)


X





8324
Hs.173859


S0646
solute carrier family 3 (activators of dibasic

X
X





6520
Hs.502769



and neutral amino acid transport), member 2


S0648
KIAA0738 gene product




X



9747
Hs.406492


S0651
phospholipase A2 receptor 1, 180 kDa




X



22925
Hs.410477


S0654
KIAA0182 protein

X






23199
Hs.461647


S0659
thymidine kinase 2, mitochondrial

X






7084
Hs.512619


S0663
chromosome 14 open reading frame 135

X
X

X



64430
Hs.509499


S0665
KIAA1007 protein

X
X

X



23019
Hs.460923


S0670
DKFZP566O1646 protein

X






25936
Hs.497692


S0672
B-cell CLL/lymphoma 7A






X

605
Hs.530970


S0673
likely ortholog of mouse nin one binding

X






28987
Hs.271695



protein


S0676
guanine nucleotide binding protein (G

X






2768
Hs.487341



protein) alpha 12


S0677
GrpE-like 1, mitochondrial (E. coli)

X






80273
Hs.443723


S0684
hypothetical protein FLJ34922

X






91607
Hs.462829


S0687
hypothetical protein FLJ20457

X






54942
Hs.29276


S0691
solute carrier family 7, (cationic amino acid



X


X

23657
Hs.6682



transporter, y+ system) member 11


S0692
glutamate-cysteine ligase, catalytic subunit







X
2729
Hs.271264


S0695
integrin, beta 4

X

X


X

3691
Hs.370255


S0702
solute carrier family 7 (cationic amino acid

X

X


X

8140
Hs.513797



transporter, y+ system), member 5


S0705
breast cancer metastasis suppressor 1






X

25855
Hs.100426


S0706
KiSS-1 metastasis-suppressor






X

3814
Hs.95008


S0708
cofactor required for Sp1 transcriptional






X

9439
Hs.29679



activation, subunit 3, 130 kDa


S5002
keratin 14 (epidermolysis bullosa simplex,
X

X

X

X

3861
Hs.355214



Dowling-Meara, Koebner)


S5003
keratin 17
X







3872
Hs.2785


S5004
keratin 18
X







3875
Hs.406013


S5005
keratin 18
X

X

X



3875
Hs.406013


S5012
tumor-associated calcium signal transducer 1
X

X

X



4072
Hs.692


S5014
estrogen receptor 2 (ER beta)
X







2100
Hs.443150


S5038
mucin 1, transmembrane
X

X

X



4582
Hs.89603


S5044
transferrin receptor (p90, CD71)
X

X

X



7037
Hs.529618


S5045
v-erb-b2 erythroblastic leukemia viral
X



X



2064
Hs.446352



oncogene homolog 2, neuro/glioblastoma



derived oncogene homolog (avian)


S5047
major vault protein
X

X

X



9961
Hs.513488


S5064
tumor protein p73-like


X





8626
Hs.137569


S5065
estrogen receptor 1
X







2099
Hs.208124


S5066
v-erb-b2 erythroblastic leukemia viral
X



X



2064
Hs.446352



oncogene homolog 2, neuro/glioblastoma



derived oncogene homolog (avian)


S5067
cathepsin D (lysosomal aspartyl protease)
X

X

X



1509
Hs.546248


S5069
CA 125


X





n/a
null


S5070
CA 15-3
X

X

X



n/a
null


S5071
CA 19-9
X

X

X



n/a
null


S5072
v-myc myelocytomatosis viral oncogene


X

X



4609
Hs.202453



homolog (avian)


S5073
cadherin 1, type 1, E-cadherin (epithelial)
X

X

X

X

999
Hs.461086


S5074
glutathione S-transferase pi


X

X



2950
Hs.523836


S5075
tumor protein p53 (Li-Fraumeni syndrome)


X

X



7157
Hs.408312


S5076
progesterone receptor
X



X



5241
Hs.368072


S5077
trefoil factor 1 (breast cancer, estrogen-
X
X






7031
Hs.162807



inducible sequence expressed in)


S5079
enolase 2, (gamma, neuronal)
X

X

X



2026
Hs.511915


S5080
B-cell CLL/lymphoma 2


X





596
Hs.150749


S5081
retinoblastoma 1 (including osteosarcoma)


X

X



5925
Hs.408528


S5082
synaptophysin


X

X



6855
Hs.75667


S5083
BCL2-associated X protein




X



581
Hs.159428


S5086
estrogen receptor 2 (ER beta)



X




2100
Hs.443150


S5087
mucin 1, transmembrane



X




4582
Hs.89603


S6001
estrogen receptor 1

X






2099
Hs.208124


S6002
progesterone receptor

X






5241
Hs.368072


S6003
v-erb-b2 erythroblastic leukemia viral

X






2064
Hs.446352



oncogene homolog 2, neuro/glioblastoma



derived oncogene homolog (avian)


S6004
B-cell CLL/lymphoma 2



X




596
Hs.150749


S6005
keratin 5 (epidermolysis bullosa simplex,

X

X


X

3852
Hs.433845



Dowling-Meara/Kobner/Weber-Cockayne



types)


S6006
tumor protein p53 (Li-Fraumeni syndrome)

X

X




7157
Hs.408312


S6007
KI67

X

X




n/a
null


S6008
epidermal growth factor receptor



X




1956
Hs.488293



(erythroblastic leukemia viral (v-erb-b)



oncogene homolog, avian)


S6011
enolase 2, (gamma, neuronal)



X




2026
Hs.511915


S6012
thyroid transcription factor 1



X




7080
Hs.94367


S6013
v-erb-b2 erythroblastic leukemia viral



X




2064
Hs.446352



oncogene homolog 2, neuro/glioblastoma



derived oncogene homolog (avian)




















APPENDIX C







BREAST PROGNOSIS
All
ER Pos
ER Pos/Node Neg
ER neg


(HH COHORT)
Log rank
Log rank
Log rank
Log rank


















Dilution
Scoring

Hazard

Hazard
P


Hazard


AGI ID
(1:X)
method
P value
ratio
P value
ratio
value
Hazard ratio
P value
ratio




















s0021
500
3
0.0001
2.8378
0.0014
3.6147
0.0003
4.9455
0.0588
2.0089


s0022
100
2
>0.10
0.9363
>0.10
0.6376
>0.10
0.8219
>0.10
1.4664


s0039
100
1
>0.10
1.1066
0.0625
1.1982
0.0551
1.2810
>0.10
1.0798


s0040
200
3
0.0389
1.7357
>0.10
1.2649
0.0983
2.2353
0.0449
2.0825


s0059
300
3
0.0469
1.9686
0.0468
3.7769
0.0099
5.4146
>0.10
1.3547


s0063
300
2
0.0037
1.7351
0.0418
1.6450
>0.10
1.5656
>0.10
1.5060


s0068
700
2
0.0218
0.6445
>0.10
0.8501
>0.10
0.7793
0.0982
0.5632


s0072
6500
2
0.0627
1.4824
0.0069
2.2083
>0.10
1.0843
>0.10
0.7685


s0073P2
450
2
0.0023
0.5703
>0.10
0.7329
>0.10
0.6297
0.0987
0.4909


s0076x1
200
2
0.0807
1.2392
>0.10
0.6988
>0.10
0.9070
>0.10
1.1187


s00791
400
2
0.0007
1.9503
0.0002
2.5357
>0.10
1.3644
>0.10
1.1705


s0081
60
2
0.0026
0.5093
0.0384
0.5774
>0.10
0.8913
>0.10
0.5235


s0137
2500
2
0.0322
1.4856
0.0745
1.5241
0.0872
1.8527
>0.10
1.2568


s0143P3
630
1
0.0932
1.0806
0.0342
1.1450
>0.10
1.1183
>0.10
1.0291


s0143P3
630
3
0.0294
1.7362
0.0103
2.1681
>0.10
1.7919
>0.10
1.2595


s0235
4500
2
0.0174
1.6960
0.0284
1.8866
>0.10
1.4827
>0.10
1.4227


s0237
1000
3
>0.10
1.3805
>0.10
1.9314
0.0431
3.2504
>0.10
0.9726


s0255n
1000
2
>0.10
0.7361
0.0933
0.6593
>0.10
0.6550
>0.10
0.9813


s0260
5400
2
>0.10
1.0896
0.0695
0.2945
>0.10
0.6016
>0.10
1.2113


s0296P1
225
2
0.0038
1.7491
0.0002
2.5560
0.0466
2.3419
>0.10
0.8519


s0303
300
2
0.0860
1.4072
>0.10
1.1960
>0.10
1.5662
>0.10
1.3788


s0305
8332
2
0.0809
1.2267
>0.10
1.1590
>0.10
0.9719
>0.10
1.2343


s0330x1
600
2
>0.10
0.9730
0.0134
3.3569
0.0632
5.4988
0.0555
0.0021


s0343
125
2
>0.10
0.7487
0.0795
0.6256
>0.10
0.5594
>0.10
1.1414


s0398
200
2
0.0125
0.4725
>0.10
0.6070
>0.10
0.8846
0.0725
0.1956


s0398
200
3
0.0551
0.3428
0.0790
0.3049
>0.10
0.4646
>0.10
0.6364


s0404
150
1
0.0321
1.1427
>0.10
1.1160
>0.10
1.1811
>0.10
1.0783


s0404
150
3
0.0087
1.8696
>0.10
1.7755
0.0727
2.3524
>0.10
1.4714


s0459
2700
2
>0.10
1.3287
>0.10
1.4538
>0.10
1.2304
>0.10
0.9768


s0545
900
2
0.0000
2.2547
0.0048
2.1037
>0.10
1.7913
0.0300
2.0266


s0654
400
3
0.0050
2.8738
>0.10
1.5890
>0.10
1.2356
0.0119
3.1822


s0670
900
2
>0.10
0.7709
0.0715
0.5411
0.0652
0.2800
>0.10
0.9506


s0676
1200
1
0.0088
1.1968
>0.10
1.0888
>0.10
1.2110
0.0130
1.2678


s0677
500
2
0.0041
1.7183
0.0289
1.7290
>0.10
1.1095
>0.10
1.3276


s0691NM
1575
2
0.0280
1.8399
>0.10
1.0211
>0.10
1.6936
0.0761
1.8725


s0702
178200
2
0.0005
1.9066
0.0000
2.8624
0.0120
2.6656
>0.10
0.9739


s6001
na
1
0.0292
0.8715
na
na
na
na
na
na


s6002
na
1
0.0027
0.8341
0.0214
0.8319
>0.10
0.8850
>0.10
0.9325


s6003
na
3
0.0176
1.9477
0.0051
3.1766
>0.10
1.3355
>0.10
1.2017


s6006
na
2
0.0194
1.5374
0.0958
1.5021
0.0135
2.3697
>0.10
1.2597


s6007
na
1
0.0756
1.1144
0.0107
1.2055
>0.10
1.0747
0.0342
0.9164



















APPENDIX D







LUNG PROGNOSIS
All
Adenocarcinoma
Squamous cell













(HH COHORT)
Log rank

Log rank

Log rank




















Dilution
Scoring
P
Hazard
Chi square
P

Chi square
P

Chi square


AGI ID
(1:X)
method
value
ratio
P value
value
Hazard ratio
P value
value
Hazard ratio
P value





















s0021
1500
3
0.1288
1.8320
0.0240
0.2188
1.6167
0.0860
0.0005
0.0657
0.0100


s0022
250
2
0.0116
0.3747
0.1000
>0.10
nd
>0.10
>0.10
nd
>0.10


s0039
400
2
0.3532
1.5469
0.0080
>0.10
nd
>0.10
>0.10
nd
>0.10


s0046
300
2
0.0145
0.5165
0.0270
>0.10
nd
>0.10
0.0529
0.3302
0.0850


s0063
1200
2
>0.10
nd
>0.10
0.0831
1.8631
0.0550
>0.10
nd
>0.10


s0072
6500
2
0.2633
1.3570
0.0680
>0.10
nd
>0.10
>0.10
nd
>0.10


s0073P2
50
2
0.0935
0.4640
0.0430
>0.10
nd
>0.10
>0.10
nd
>0.10


s0074P3
810
3
0.0723
0.0022
0.0530
>0.10
nd
>0.10
>0.10
nd
>0.10


s0137
5000
2
0.0610
1.6429
0.1010
0.2271
1.5312
0.0660
>0.10
nd
>0.10


s0143P3
300
3
>0.10
nd
>0.10
0.0008
4.5211
0.0270
>0.10
nd
>0.10


s0296P1
1350
2
0.0783
1.6148
0.0460
0.0237
2.1849
0.0180
0.1042
0.3968
0.0840


s0303
300
2
>0.10
nd
>0.10
0.0469
2.0494
0.5360
>0.10
nd
>0.10


s0330
15000
3
>0.10
nd
>0.10
>0.10
nd
>0.10
0.0124
0.2278
0.0460


s0330
45000
3
0.0880
0.5248
0.0440
>0.10
nd
>0.10
0.0188
0.1270
0.0130


s0330x1
600
3
>0.10
nd
>0.10
>0.10
nd
>0.10
0.0455
0.1631
0.0080


s0331
300
3
0.2157
0.6603
0.0850
>0.10
nd
>0.10
0.0404
0.2350
0.0050


s0331x1
300
3
>0.10
nd
>0.10
>0.10
nd
>0.10
0.0705
0.2744
0.0360


s0332
400
3
0.1496
0.5639
0.0680
>0.10
nd
>0.10
0.0621
0.1785
0.0160


s0332x1
150
2
>0.10
nd
>0.10
>0.10
nd
>0.10
0.0321
0.1466
0.1290


s0398
200
2
0.1253
0.5775
0.0870
>0.10
nd
>0.10
0.3348
0.6094
0.0640


s0404
900
3
0.1273
1.7817
0.0420
>0.10
nd
>0.10
>0.10
nd
>0.10


s0545
2700
2
0.1246
1.8432
0.0150
0.0191
3.2839
0.0180
>0.10
nd
>0.10


s0586
400
2
0.0204
0.4659
0.4380
0.1322
0.2457
0.0960
>0.10
nd
>0.10


s0691
1575
3
>0.10
nd
>0.10
>0.10
nd
>0.10
0.0608
3.1820
0.0420


s0702
178200
1
>0.10
nd
>0.10
>0.10
nd
>0.10
0.0463
0.6944
0.5360


s6006
1
2
>0.10
nd
>0.10
0.1259
1.7720
0.0550
>0.10
nd
>0.10


s6007
1
2
>0.10
nd
>0.10
0.0316
3.4266
0.0110
>0.10
nd
>0.10


s6008
1
2
>0.10
nd
>0.10
>0.10
nd
>0.10
0.2388
1312.0118  
0.0230


s6013
1
2
>0.10
nd
>0.10
0.0154
2.5755
0.0540
>0.10
nd
>0.10


s0614
3000
2
0.0930
1.5785
0.0860
>0.10
nd
>0.10
>0.10
nd
>0.10




















APPENDIX E







BREAST PROGNOSIS
All
ER Pos
ER Pos/Node Neg
ER neg


(HH COHORT)
Log rank
Log rank
Log rank
Log rank


















Dilution
Scoring

Hazard

Hazard
P


Hazard


AGI ID
(1:X)
method
P value
ratio
P value
ratio
value
Hazard ratio
P value
ratio




















s0022
100
2
>0.10
0.8660
0.0633
0.5679
>0.10
0.8810
>0.10
1.3696


s0053
30
2
0.0496
0.6276
>0.10
0.7265
>0.10
1.0372
>0.10
0.5002


s0059P2
90
2
0.0088
1.9934
>0.10
1.7964
>0.10
1.8087
>0.10
1.4654


s0063
300
2
0.0031
1.7208
0.0955
1.5202
>0.10
1.5656
>0.10
1.7249


s0063
600
2
0.0006
1.9517
0.0154
2.0148
0.0660
2.4507
>0.10
1.4408


s0068
700
2
0.0312
0.6537
>0.10
0.8644
>0.10
0.7793
0.0936
0.5597


s0072
6500
2
>0.10
1.4087
0.0307
2.0193
>0.10
1.3344
>0.10
0.7426


s0073p2
450
2
0.0060
0.6051
>0.10
0.8755
>0.10
1.0495
>0.10
0.4614


s0076x1
200
2
0.0471
1.6431
>0.10
0.5060
>0.10
0.8227
>0.10
1.3384


s0079
400
2
0.0006
1.8382
0.0050
2.0469
>0.10
1.0820
>0.10
1.2420


s0081
60
2
0.0006
0.5518
0.0621
0.6335
>0.10
0.7897
>0.10
0.4758


s0140
500
2
0.0146
1.7628
>0.10
1.7553
>0.10
0.6881
>0.10
1.3817


s0235
4500
2
0.0002
1.9769
0.0017
2.1999
>0.10
1.5655
>0.10
1.5469


s0253
2000
2
0.0579
1.5740
>0.10
1.5128
0.0784
2.1386
>0.10
1.4763


s0253
500
2
>0.10
1.1127
>0.10
0.7030
>0.10
0.8017
0.0377
2.1389


s0255
1000
2
0.0610
0.6995
0.0603
0.6193
>0.10
0.6550
>0.10
0.8992


s0296P1
225
1
0.0028
1.1896
0.0001
1.3344
0.0008
1.3554
>0.10
0.9879


s0296P1
225
2
0.0052
1.7183
0.0014
2.3378
0.0466
2.3419
>0.10
0.8994


s0305
8332
2
0.0945
1.5035
>0.10
1.2945
>0.10
0.9447
>0.10
1.4199


s0330x1
600
2
>0.10
0.7456
0.0945
2.6186
0.0632
5.4988
0.0525
0.0021


s0404
150
2
0.0265
1.6475
>0.10
1.3534
>0.10
1.8109
>0.10
1.4264


s0404
150
3
0.0027
2.0719
0.0706
1.8942
0.0623
2.4347
>0.10
1.6912


s0440
1200
2
0.0581
0.6270
>0.10
0.8110
>0.10
0.6788
>0.10
0.2904


s0545
2700
2
0.0000
2.4278
>0.10
1.7002
>0.10
0.7788
0.0024
2.4284


s0545
900
2
0.0000
2.2447
0.0055
2.1160
>0.10
1.7913
0.0412
1.9465


s0654
400
2
>0.10
0.8150
0.0676
0.4627
>0.10
0.6037
>0.10
1.7718


s0670
900
2
>0.10
0.7040
0.0258
0.4379
0.0652
0.2800
>0.10
0.8549


s0676
1200
1
0.0113
1.1614
>0.10
1.0623
>0.10
1.2110
0.0212
1.2442


s0676
1200
2
0.0392
1.5231
>0.10
1.2602
>0.10
1.9314
0.0875
1.8335


s0677
1000
1
0.0017
1.1649
0.0076
1.2173
>0.10
1.0408
>0.10
1.0892


s0677
1000
2
0.0123
1.5683
0.0148
1.8170
>0.10
1.0567
>0.10
1.2487


s0687
1260
2
0.0830
0.6973
0.0519
0.5427
>0.10
1.1017
>0.10
0.8919


s0691
1575
1
0.0001
1.2824
>0.10
1.0463
>0.10
1.1225
0.0058
1.2902


s0691
1575
2
0.0020
2.1106
>0.10
1.1418
>0.10
1.6936
0.0217
2.1925


s0695
2700
2
0.0459
1.4465
>0.10
1.0295
>0.10
0.9663
>0.10
1.2102


s0702
178200
2
0.0001
2.0291
0.0000
3.1207
0.0010
3.3919
>0.10
1.0431


s6001
na
2
0.0009
0.5721
>0.10
1.0000
>0.10
1.0000
>0.10
1.0000


s6002
na
2
0.0004
0.5236
0.0083
0.5255
>0.10
0.6236
>0.10
0.9192


s6006
na
1
0.0413
1.1246
0.0591
1.1129
0.0334
1.3081
>0.10
1.0566


s6006
na
2
0.0399
1.4388
>0.10
1.3185
0.0095
2.4996
>0.10
1.2815


s6007
na
1
>0.10
1.1140
0.0086
1.1848
>0.10
1.0585
0.0284
0.9403


s6007
na
2
0.0358
1.4803
0.0537
1.6016
>0.10
1.0875
>0.10
0.9724


s6007
na
3
>0.10
1.1979
0.0032
2.4860
>0.10
2.1836
0.0232
0.4636



















APPENDIX F







LUNG PROGNOSIS
HH 5 yr
UAB 5 yr



(HH & UAB COHORTS)
recurrence
survival















Dilution
Scoring

Hazard

Hazard



AGI ID
(1:X)
method
P value
ratio
P value
ratio

















s0073P2
50
2
0.129
0.497
0.192
0.660
All


s0074P3
810
3
0.091
0.002
0.096
0.002


s0586
400
2
0.007
0.385
0.148
0.619


s6007
1
2
0.081
2.420
0.112
2.099


s0074P3
810
3
0.166
0.002
0.076
0.002
Adenocarcinoma


s0143P3
300
3
0.001
4.521
0.023
4.450


s0296P1
1350
2
0.024
2.185
0.021
2.214


s0303
300
2
0.047
2.049
0.007
3.358


s6006
1
2
0.126
1.772
0.164
1.650


s6007
1
2
0.032
3.427
0.033
2.734


















APPENDIX G








Disease Free Survival
Survival


OVARIAN PROGNOSIS
Log rank
Log rank














Dilution
Scoring
P


Hazard


AGI ID
(1:X)
method
value
Hazard ratio
P value
ratio
















S0059P2
30
2
0.017
1.613
>0.10
1.487


S0124
990
2
0.023
1.554
0.015
2.076


S0202
780
2
0.048
2.270
0.001
5.084


S0260
240
2
0.002
1.942
0.015
2.121


S0296P1
450
3
0.047
0.521
>0.10
0.387


S0695
2700
3
0.034
0.445
0.045
0.168








Claims
  • 1. A method of assessing the likelihood that a patient having an ovarian tumor will die from ovarian cancer or have a recurrence, the method comprising steps of: contacting a tumor sample from a patient with an ovarian tumor with a panel of one or more antibodies, wherein the panel comprises an antibody to a biomarker with SEQ ID NO. 1; andassessing the likelihood that the patient will die from ovarian cancer or have a recurrence based upon detection of binding of the panel to the tumor sample, wherein across a population of patients with ovarian tumors, a higher level of binding of the antibody to a biomarker with SEQ ID NO. 1 is indicative of a higher likelihood that the patient will die from ovarian cancer or have a recurrence.
  • 2. The method of claim 1, wherein the step of assessing comprises assessing the likelihood that the patient will die from ovarian cancer.
  • 3. The method of claim 1, wherein the step of assessing comprises assessing the likelihood that the patient will have a recurrence.
  • 4. A method of assessing the likelihood that a patient having an ovarian tumor will die from ovarian cancer or have a recurrence, the method comprising steps of: contacting a tumor sample from a patient with an ovarian tumor with a panel of one or more antibodies, wherein the panel comprises an antibody to a biomarker with SEQ ID NO. 2; andassessing the likelihood that the patient will die from ovarian cancer or have a recurrence based upon detection of binding of the panel to the tumor sample, wherein across a population of patients with ovarian tumors, a higher level of binding of the antibody to a biomarker with SEQ ID NO. 2 is indicative of a higher likelihood that the patient will die from ovarian cancer or have a recurrence.
  • 5. The method of claim 4, wherein the step of assessing comprises assessing the likelihood that the patient will die from ovarian cancer.
  • 6. The method of claim 4, wherein the step of assessing comprises assessing the likelihood that the patient will have a recurrence.
  • 7. A method of assessing the likelihood that a patient having an ovarian tumor will die from ovarian cancer or have a recurrence, the method comprising steps of: contacting a tumor sample from a patient with an ovarian tumor with a panel of one or more antibodies, wherein the panel comprises an antibody to a biomarker with SEQ ID NO. 3; andassessing the likelihood that the patient will die from ovarian cancer or have a recurrence based upon detection of binding of the panel to the tumor sample, wherein across a population of patients with ovarian tumors, a higher level of binding of the antibody to a biomarker with SEQ ID NO. 3 is indicative of a lower likelihood that the patient will die from ovarian cancer or have a recurrence.
  • 8. The method of claim 7, wherein the step of assessing comprises assessing the likelihood that the patient will die from ovarian cancer.
  • 9. The method of claim 7, wherein the step of assessing comprises assessing the likelihood that the patient will have a recurrence.
PRIORITY INFORMATION

The present application claims the benefit of U.S. Ser. No. 60/680,924, filed May 12, 2005, the entire contents of which are hereby incorporated by reference.

GOVERNMENT SUPPORT

This invention was made with government support under Grant Number CA083591, awarded by NIA. The government has certain rights in the invention.

US Referenced Citations (18)
Number Name Date Kind
4579827 Sakamoto et al. Apr 1986 A
4666845 Mattes et al. May 1987 A
5790761 Heseltine et al. Aug 1998 A
5840507 Fruehauf Nov 1998 A
5843684 Levine et al. Dec 1998 A
5882864 An et al. Mar 1999 A
5983211 Heseltine et al. Nov 1999 A
6063586 Grandis May 2000 A
6087090 Mascarenhas Jul 2000 A
6294349 Streckfus et al. Sep 2001 B1
6303324 Fruehauf Oct 2001 B1
6607894 Lopata et al. Aug 2003 B1
6631330 Poynard Oct 2003 B1
6670141 Streckfus et al. Dec 2003 B2
6763307 Berg et al. Jul 2004 B2
6794501 Chen et al. Sep 2004 B2
20030198972 Erlander et al. Oct 2003 A1
20050112622 Ring et al. May 2005 A1
Foreign Referenced Citations (8)
Number Date Country
WO 9116632 Oct 1991 WO
WO 9822139 May 1998 WO
WO 9944063 Sep 1999 WO
WO 0151924 Jul 2001 WO
WO-02064798 Aug 2002 WO
WO-03015613 Feb 2003 WO
WO 03087761 Oct 2003 WO
WO-2005008213 Jan 2005 WO
Related Publications (1)
Number Date Country
20070065888 A1 Mar 2007 US
Provisional Applications (1)
Number Date Country
60680924 May 2005 US