BLOOD BIOMARKERS FOR APPENDICITIS AND DIAGNOSTICS METHODS USING BIOMARKERS

Abstract
The invention relates to methods and kits for diagnosing and/or treating appendicitis in a subject, comprising performing one or more assays configured to detect one or more biomarkers on a body fluid sample obtained from the subject to provide one or more assay result(s) and correlating the assay result(s) to the occurrence or nonoccurrence of appendicitis in the subject or likelihood of the future outcome to the subject.
Description
BACKGROUND
1. Technical Field

The field of the currently claimed embodiments of this invention relate to methods and kits for assessing and treating abdominal discomfort/pain (the terms abdominal pain and abdominal discomfort will be used interchangeably throughout) and appendicitis in a subject, and more particularly to assessing and treating abdominal discomfort and appendicitis in a subject using the analysis of biomarkers isolated from the subject.


2. Discussion of Related Art

Abdominal pain is a major cause of hospital visits, accounting for about 10% of 62 million visits per year by adults who present at an emergency department (ED) for non-injury causes [1]. Acute appendicitis is one of the most common causes of abdominal pain and results in nearly 750,000 ED visits with approximately 250,000 appendectomies performed annually. Globally, a small but significant portion of the operations are “negative appendectomies”, resulting in the removal of a non-inflamed appendix due to misdiagnosis [2-4], reported as high as 17-28% outside the US and Western Europe [5,6].


Prior to the widespread availability of computed tomography (CT) scans, the accurate diagnosis of appendicitis could be challenging, and in places where CT is still not available, the Alvarado score of clinical characteristics is a widely used diagnostic tool [5,6]. Currently in the United States, CT scanning is the ‘gold standard’ for the diagnosis of appendicitis, with magnetic resonance imaging (MRI) being a reasonable alternative in pregnant women [7], and ultrasound sonography being an acceptable alternative for preliminary diagnostics to avoid radiation [8]. While CT is the most sensitive and specific diagnostic tool for appendicitis [9,10], and used in almost 98% of patients undergoing appendectomy in the US [11], CT scanning carries a significant radiation exposure, and epidemiologic data suggest that radiation exposure can increase the risk of developing a future malignancy [12]. This issue is of particular concern in children because they are more sensitive to the hazards of radiation, they are among the most common patients to present to the ED with abdominal pain, and have the highest rate of misdiagnosis [10,13]. In an attempt to reduce the damaging effect of CT scans, several clinical trials are examining the diagnostic utility of lower doses of radiation, primarily in children [14-16].


In order to utilize CT scanning more appropriately, and to improve diagnosis in areas where CT scans are unavailable, blood biomarkers were identified that serve as a preliminary safe and rapid test to help identify patients with appendicitis. Genome-wide profiling of RNA transcripts in whole blood RNA of patients presenting at the ED for abdominal pain was conducted, resulting in confirmed appendicitis versus other abdominal abnormalities.


Some embodiments of the present invention include methods and kits for assessing and treating abdominal discomfort and appendicitis in a subject, and more particularly to assessing and treating abdominal discomfort and appendicitis in a subject using the analysis of biomarkers isolated from the subject.


SUMMARY

Embodiments of the invention include methods of diagnosing appendicitis in a subject, or assigning a likelihood of a future outcome to a subject diagnosed with appendicitis, comprising performing one or more assays configured to detect one or more biomarkers selected from the group consisting of Chemokine C-X-C receptor 1, Interleukin 8 receptor ß, Fc frag of IgG receptor IIIb (CD16b), MHC class II DR beta 5, Leukocyte IgG-like receptor A3, Defensin alpha 1, Defensin alpha 1B, Defensin alpha 3, 18S ribosomal RNA, CDC14A, 28S ribosomal RNA, 60S acidic ribosomal protein P1, 40S ribosomal protein S26, Ribosomal protein L23, Ribosomal protein L37a, Ribosomal protein S28, Alkaline phosphatase, Carbonic anhydrase IV, Neuroblastoma breakpoint family 10, Ninjurin 1, Prokineticin 2, Superoxide dismutase 2, LOC100129902, LOC100131205, LOC100131905, LOC100132291, LOC100132394, LOC100132742, LOC100134364, LOC391370, LOC646785, LOC644191 and C5orf32 on a body fluid sample obtained from the subject to provide one or more assay result(s); and correlating the assay result(s) to the occurrence or nonoccurrence of appendicitis in the subject or likelihood of the future outcome to the subject.


Embodiments of the invention include methods for evaluating biomarker levels in a body fluid sample, comprising obtaining a body fluid sample from a subject selected for evaluation based on a determination that the subject is experiencing symptoms indicative of possible acute appendicitis; and performing one or more analyte binding assays configured to detect one or more biomarkers selected from the group consisting of Chemokine C-X-C receptor 1, Interleukin 8 receptor ß, Fc frag of IgG receptor IIIb (CD16b), MHC class II DR beta 5, Leukocyte IgG-like receptor A3, Defensin alpha 1, Defensin alpha 1B, Defensin alpha 3, 18S ribosomal RNA, CDC14A, 28S ribosomal RNA, 60S acidic ribosomal protein P1, 40S ribosomal protein S26, Ribosomal protein L23, Ribosomal protein L37a, Ribosomal protein S28, Alkaline phosphatase, Carbonic anhydrase IV, Neuroblastoma breakpoint family 10, Ninjurin 1, Prokineticin 2, Superoxide dismutase 2, LOC100129902, LOC100131205, LOC100131905, LOC100132291, LOC100132394, LOC100132742, LOC100134364, LOC391370, LOC646785, LOC644191 and C5orf32 by introducing the body fluid sample obtained from the subject into an assay instrument which (i) contacts the body fluid sample with one or more binding reagents corresponding to the biomarker(s) being assayed, wherein each biomarker which is assayed binds to its respective specific binding reagent in an amount related to its concentration in the body fluid sample, (ii) generates one or more assay results indicative of binding of each biomarker which is assayed to its respective specific binding reagent; and (iii) displays the one or more assay results as a quantitative result in a human-readable form.


Embodiments of the invention include systems for evaluating biomarker levels, comprising a plurality of reagents which specifically bind for detection a plurality of biomarkers selected from the group consisting of Chemokine C-X-C receptor 1, Interleukin 8 receptor ß, Fc frag of IgG receptor IIIb (CD16b), MHC class II DR beta 5, Leukocyte IgG-like receptor A3, Defensin alpha 1, Defensin alpha 1B, Defensin alpha 3, 18S ribosomal RNA, CDC14A, 28S ribosomal RNA, 60S acidic ribosomal protein P1, 40S ribosomal protein S26, Ribosomal protein L23, Ribosomal protein L37a, Ribosomal protein S28, Alkaline phosphatase, Carbonic anhydrase IV, Neuroblastoma breakpoint family 10, Ninjurin 1, Prokineticin 2, Superoxide dismutase 2, LOC100129902, LOC100131205, LOC100131905, LOC100132291, LOC100132394, LOC100132742, LOC100134364, LOC391370, LOC646785, LOC644191 and C5orf32; an assay instrument configured to (i) receive a body fluid sample, (ii) contact the plurality of reagents with the body fluid sample and (iii) generate and quantitatively display in human readable form one or more assay results indicative of binding of each biomarker which is assayed to a respective specific binding reagent in the plurality of reagents.


Embodiments of the invention include uses of one or more reagents which specifically bind for detection one or more biomarkers selected from the group consisting of Chemokine C-X-C receptor 1, Interleukin 8 receptor ß, Fc frag of IgG receptor IIIb (CD16b), MHC class II DR beta 5, Leukocyte IgG-like receptor A3, Defensin alpha 1, Defensin alpha 1B, Defensin alpha 3, 18S ribosomal RNA, CDC14A, 28S ribosomal RNA, 60S acidic ribosomal protein P1, 40S ribosomal protein S26, Ribosomal protein L23, Ribosomal protein L37a, Ribosomal protein S28, Alkaline phosphatase, Carbonic anhydrase IV, Neuroblastoma breakpoint family 10, Ninjurin 1, Prokineticin 2, Superoxide dismutase 2, LOC100129902, LOC100131205, LOC100131905, LOC100132291, LOC100132394, LOC100132742, LOC100134364, LOC391370, LOC646785, LOC644191 and C5orf32 for the diagnosis of appendicitis.


Embodiments of the invention include uses of one or more biomarkers selected from the group consisting of Chemokine C-X-C receptor 1, Interleukin 8 receptor ß, Fc frag of IgG receptor IIIb (CD16b), MHC class II DR beta 5, Leukocyte IgG-like receptor A3, Defensin alpha 1, Defensin alpha 1B, Defensin alpha 3, 18S ribosomal RNA, CDC14A, 28S ribosomal RNA, 60S acidic ribosomal protein P1, 40S ribosomal protein S26, Ribosomal protein L23, Ribosomal protein L37a, Ribosomal protein S28, Alkaline phosphatase, Carbonic anhydrase IV, Neuroblastoma breakpoint family 10, Ninjurin 1, Prokineticin 2, Superoxide dismutase 2, LOC100129902, LOC100131205, LOC100131905, LOC100132291, LOC100132394, LOC100132742, LOC100134364, LOC391370, LOC646785, LOC644191 and C5orf32 for the diagnosis of appendicitis.





BRIEF DESCRIPTION OF THE DRAWINGS

Further objectives and advantages will become apparent from a consideration of the description, drawings, and examples.



FIG. 1 is a scatterplot of the expression patterns in 2 groups of patients.



FIG. 2 shows hierarchical clustering of 37 differentially expressed genes in appendicitis patients.



FIG. 3 shows a graph displaying the Partial Least Squares Discriminant (PLSD) Model for classification of appendicitis from RNA biomarkers.



FIG. 4 is a graph showing results of defensins in appendicitis, hernia, and lower respiratory infection patients.



FIG. 5 shows the behavior of selected transcripts in a validation cohort.



FIG. 6 shows a schematic of a model of appendicitis biomarker pathophysiology.



FIG. 7 shows a graph showing microarray and quantitative reverse-transcription polymerase chain reaction results for 3 genes differentially expressed in subjects with appendicitis.



FIG. 8 shows a Receiving Operating Characteristic (ROC) curve with data from 3 gene transcripts.





DETAILED DESCRIPTION

In some embodiments, the invention relates to a method of diagnosing appendicitis in a subject, or assigning a likelihood of a future outcome to a subject diagnosed with appendicitis, comprising performing one or more assays configured to detect one or more biomarkers selected from the group consisting of Chemokine C-X-C receptor 1, Interleukin 8 receptor ß, Fc frag of IgG receptor IIIb (CD16b), MHC class II DR beta 5, Leukocyte IgG-like receptor A3, Defensin alpha 1, Defensin alpha 1B, Defensin alpha 3, 18S ribosomal RNA, CDC14A, 28S ribosomal RNA, 60S acidic ribosomal protein P1, 40S ribosomal protein S26, Ribosomal protein L23, Ribosomal protein L37a, Ribosomal protein S28, Alkaline phosphatase, Carbonic anhydrase IV, Neuroblastoma breakpoint family 10, Ninjurin 1, Prokineticin 2, Superoxide dismutase 2, LOC100129902, LOC100131205, LOC100131905, LOC100132291, LOC100132394, LOC100132742, LOC100134364, LOC391370, LOC646785, LOC644191 and C5orf32 on a body fluid sample obtained from the subject to provide one or more assay result(s); and correlating the assay result(s) to the occurrence or nonoccurrence of appendicitis in the subject or likelihood of the future outcome to the subject.


In some embodiments, the invention relates to the method above, wherein the performing step comprises introducing the body fluid sample obtained from the subject into an assay instrument which (i) contacts the body fluid sample with one or more binding reagents corresponding to the biomarker(s) being assayed, wherein each biomarker which is assayed binds to its respective specific binding reagent in an amount related to its concentration in the body fluid sample, (ii) generates one or more assay results indicative of binding of each biomarker which is assayed to its respective specific binding reagent; and (iii) displays the one or more assay results as a quantitative result in a human-readable form.


In some embodiments, the invention relates to the method above, wherein the specific binding reagent is an antibody.


In some embodiments, the invention relates to the method above, wherein the one or more assays are sandwich assays.


In some embodiments, the invention relates to the method above, wherein the correlating step comprises comparing the assay result(s) or a value derived therefrom to a threshold selected in a population study to separate the population into a first subpopulation at higher predisposition for the occurrence of appendicitis or the future outcome, and a second subpopulation at lower predisposition for the occurrence of appendicitis or the future outcome relative to the first subpopulation.


In some embodiments, the invention relates to the method above, and further comprises treating the subject based on the predetermined subpopulation of individuals to which the patient is assigned, wherein if the patient is in the first subpopulation, the treatment comprises treating the subject for appendicitis or the future outcome.


In some embodiments, the invention relates to the method above, wherein the future outcome is mortality.


In some embodiments, the invention relates to the method above, wherein the subject is being evaluated for abdominal pain.


In some embodiments, the invention relates to the method above, wherein the correlating step comprises determining the concentration of each biomarker which is assayed, and individually comparing each biomarker concentration to a corresponding threshold level for that biomarker.


In some embodiments, the invention relates to the method above, wherein the assay instrument comprises a processing system configured to perform the correlating step and output the assay result(s) or a value derived therefrom in human readable form.


In some embodiments, the invention relates to the method above, wherein a plurality of the biomarkers are measured, wherein the assay instrument performs the correlating step, which comprises determining the concentration of each of the plurality of biomarkers, calculating a single value based on the concentration of each of the plurality of biomarkers, comparing the single value to a corresponding threshold level and displaying an indication of whether the single value does or does not exceed its corresponding threshold in a human-readable form.


In some embodiments, the invention relates to the method above, wherein method provides a sensitivity or specificity of at least 0.7 for the identification of appendicitis when compared to normal subjects.


In some embodiments, the invention relates to the method above, wherein method provides a sensitivity or specificity of at least 0.7 for the identification of appendicitis when compared to subjects exhibiting symptoms that mimic appendicitis symptoms.


In some embodiments, the invention relates to the method above, wherein the sample is selected from the group consisting of blood, serum, and plasma.


In some embodiments, the invention relates to the method above, wherein the sample is urine.


In some embodiments, the invention relates to a method for evaluating biomarker levels in a body fluid sample, comprising obtaining a body fluid sample from a subject selected for evaluation based on a determination that the subject is experiencing symptoms indicative of possible acute appendicitis; and performing one or more analyte binding assays configured to detect one or more biomarkers selected from the group consisting of Chemokine C-X-C receptor 1, Interleukin 8 receptor ß, Fc frag of IgG receptor IIIb (CD16b), MHC class II DR beta 5, Leukocyte IgG-like receptor A3, Defensin alpha 1, Defensin alpha 1B, Defensin alpha 3, 18S ribosomal RNA, CDC14A, 28S ribosomal RNA, 60S acidic ribosomal protein P1, 40S ribosomal protein S26, Ribosomal protein L23, Ribosomal protein L37a, Ribosomal protein S28, Alkaline phosphatase, Carbonic anhydrase IV, Neuroblastoma breakpoint family 10, Ninjurin 1, Prokineticin 2, Superoxide dismutase 2, LOC100129902, LOC100131205, LOC100131905, LOC100132291, LOC100132394, LOC100132742, LOC100134364, LOC391370, LOC646785, LOC644191 and C5orf32 by introducing the body fluid sample obtained from the subject into an assay instrument which (i) contacts the body fluid sample with one or more binding reagents corresponding to the biomarker(s) being assayed, wherein each biomarker which is assayed binds to its respective specific binding reagent in an amount related to its concentration in the body fluid sample, (ii) generates one or more assay results indicative of binding of each biomarker which is assayed to its respective specific binding reagent; and (iii) displays the one or more assay results as a quantitative result in a human-readable form.


In some embodiments, the invention relates to the method above, wherein the assay result(s) are displayed as a concentration of each biomarker which is assayed.


In some embodiments, the invention relates to the method above, wherein the assay instrument further individually compares each biomarker concentration to a corresponding threshold level for that biomarker, and displays an indication of whether each biomarker does or does not exceed its corresponding threshold in a human-readable form.


In some embodiments, the invention relates to the method above, wherein a plurality of the biomarkers are measured, and wherein the assay results(s) comprise a single value calculated using a function that converts the concentration of each of the plurality of biomarkers into a single value.


In some embodiments, the invention relates to the method above, wherein the assay instrument further compares the single value to a corresponding threshold level and displays an indication of whether the single value does or does not exceed its corresponding threshold in a human-readable form.


In some embodiments, the invention relates to the method above, wherein the subject is selected for evaluation of a mortality risk within a period selected from the group consisting of 21 days, 14 days, 7 days, 5 days, 96 hours, 72 hours, 48 hours, 36 hours, 24 hours, and 12 hours.


In some embodiments, the invention relates to the method above, wherein the plurality of assays are immunoassays performed by (i) introducing the body fluid sample into an assay device comprising a plurality of antibodies, at least one of which binds to each biomarker which is assayed, and (ii) generating an assay result indicative of binding of each biomarker to its respective antibody.


In some embodiments, the invention relates to a system for evaluating biomarker levels, comprising a plurality of reagents which specifically bind for detection a plurality of biomarkers selected from the group consisting of Chemokine C-X-C receptor 1, Interleukin 8 receptor ß, Fc frag of IgG receptor IIIb (CD16b), MHC class II DR beta 5, Leukocyte IgG-like receptor A3, Defensin alpha 1, Defensin alpha 1B, Defensin alpha 3, 18S ribosomal RNA, CDC14A, 28S ribosomal RNA, 60S acidic ribosomal protein P1, 40S ribosomal protein S26, Ribosomal protein 123, Ribosomal protein L37a, Ribosomal protein S28, Alkaline phosphatase, Carbonic anhydrase IV, Neuroblastoma breakpoint family 10, Ninjurin 1, Prokineticin 2, Superoxide dismutase 2, LOC100129902, LOC100131205, LOC100131905, LOC100132291, LOC100132394, LOC100132742, LOC100134364, LOC391370, LOC646785, LOC644191 and C5orf32; an assay instrument configured to (i) receive a body fluid sample, (ii) contact the plurality of reagents with the body fluid sample and (iii) generate and quantitatively display in human readable form one or more assay results indicative of binding of each biomarker which is assayed to a respective specific binding reagent in the plurality of reagents.


In some embodiments, the invention relates to the system above, wherein the reagents comprise a plurality of antibodies, at least one of which binds to each of the biomarkers which are assayed.


In some embodiments, the invention relates to the system above, wherein assay instrument comprises an assay device and an assay device reader, wherein the plurality of antibodies are immobilized at a plurality of predetermined locations within the assay device, wherein the assay device is configured to receive the body fluid sample such that the body fluid sample contacts the plurality of predetermined locations, and wherein the assay device reader interrogates the plurality of predetermined locations to generate the assay results.


In some embodiments, the invention relates to a use of one or more reagents which specifically bind for detection one or more biomarkers selected from the group consisting of Chemokine C-X-C receptor 1, Interleukin 8 receptor ß, Fc frag of IgG receptor IIIb (CD16b), MHC class II DR beta 5, Leukocyte IgG-like receptor A3, Defensin alpha 1, Defensin alpha 1B, Defensin alpha 3, 18S ribosomal RNA, CDC14A, 28S ribosomal RNA, 60S acidic ribosomal protein P1, 40S ribosomal protein S26, Ribosomal protein L23, Ribosomal protein L37a, Ribosomal protein S28, Alkaline phosphatase, Carbonic anhydrase IV, Neuroblastoma breakpoint family 10, Ninjurin 1, Prokineticin 2, Superoxide dismutase 2, LOC100129902, LOC100131205, LOC100131905, LOC100132291, LOC100132394, LOC100132742, LOC100134364, LOC391370, LOC646785, LOC644191 and C5orf32 for the diagnosis of appendicitis.


In some embodiments, the invention relates to a use of one or more biomarkers selected from the group consisting of Chemokine C-X-C receptor 1, Interleukin 8 receptor ß, Fc frag of IgG receptor IIIb (CD16b), MHC class II DR beta 5, Leukocyte IgG-like receptor A3, Defensin alpha 1, Defensin alpha 1B, Defensin alpha 3, 18S ribosomal RNA, CDC14A, 28S ribosomal RNA, 60S acidic ribosomal protein P1, 40S ribosomal protein S26, Ribosomal protein L23, Ribosomal protein L37a, Ribosomal protein S28, Alkaline phosphatase, Carbonic anhydrase IV, Neuroblastoma breakpoint family 10, Ninjurin 1, Prokineticin 2, Superoxide dismutase 2, LOC100129902, LOC100131205, LOC100131905, LOC100132291, LOC100132394, LOC100132742, LOC100134364, LOC391370, LOC646785, LOC644191 and C5orf32 for the diagnosis of appendicitis.


Definitions

To facilitate an understanding of the present invention, a number of terms and phrases are defined below.


As used herein, the singular forms “a”, “an”, and “the” include plural forms unless the context clearly dictates otherwise. Thus, for example, reference to “a binding agent” includes reference to more than one binding agent.


The terms “diagnostic” and “diagnosis” refer to identifying the presence or nature of a pathologic condition and includes identifying patients who are at risk of developing a specific disease or disorder. Diagnostic methods differ in their sensitivity and specificity. The “sensitivity” of a diagnostic assay is the percentage of diseased individuals who test positive (percent of “true positives”). Diseased individuals not detected by the assay are “false negatives.” Subjects who are not diseased and who test negative in the assay, are termed “true negatives.” The “specificity” of a diagnostic assay is 1 minus the false positive rate, where the “false positive” rate is defined as the proportion of those without the disease who test positive. While a particular diagnostic method may not provide a definitive diagnosis of a condition, it suffices if the method provides a positive indication that aids in diagnosis.


The terms “detection”, “detecting” and the like, may be used in the context of detecting biomarkers, or of detecting a disease or disorder (e.g., when positive assay results are obtained). In the latter context, “detecting” and “diagnosing” are considered synonymous.


The terms “subject”, “patient” or “individual” generally refer to a human, although the methods of the invention are not limited to humans, and should be useful in other mammals (e.g., cats, dogs, etc.).


“Sample” is used herein in its broadest sense. A sample may comprise a bodily fluid including blood, serum, plasma, tears, aqueous and vitreous humor, spinal fluid, urine, and saliva; a soluble fraction of a cell or tissue preparation, or media in which cells were grown. Means of obtaining suitable biological samples are known to those of skill in the art.


An “antibody” is an immunoglobulin molecule that recognizes and specifically binds to a target, such as a protein, polypeptide, peptide, carbohydrate, polynucleotide, lipid, etc., through at least one antigen recognition site within the variable region of the immunoglobulin molecule. As used herein, the term is used in the broadest sense and encompasses intact polyclonal antibodies, intact monoclonal antibodies, antibody fragments (such as Fab, Fab′, F(ab′)2, and Fv fragments), single chain Fv (scFv) mutants, multispecific antibodies such as bispecific antibodies generated from at least two intact antibodies, hybrid antibodies, fusion proteins comprising an antibody portion, and any other modified immunoglobulin molecule comprising an antigen recognition site so long as the antibodies exhibit the desired biological activity. An antibody may be of any the five major classes of immunoglobulins: IgA, IgD, IgE, IgG, and IgM, or subclasses (isotypes) thereof (e.g. IgG1, IgG2, IgG3, IgG4, IgA1 and IgA2), based on the identity of their heavy-chain constant domains referred to as alpha, delta, epsilon, gamma, and mu, respectively. The different classes of immunoglobulins have different and well known subunit structures and three-dimensional configurations. Antibodies may be naked or conjugated to other molecules such as toxins, radioisotopes, etc.


The term “antibody fragments” refers to a portion of an intact antibody. Examples of antibody fragments include, but are not limited to, linear antibodies; single-chain antibody molecules; Fc or Fc′ peptides, Fab and Fab fragments, and multispecific antibodies formed from antibody fragments.


“Hybrid antibodies” are immunoglobulin molecules in which pairs of heavy and light chains from antibodies with different antigenic determinant regions are assembled together so that two different epitopes or two different antigens may be recognized and bound by the resulting tetramer.


“Isolated” in regard to cells, refers to a cell that is removed from its natural environment and that is isolated or separated, and is at least about 30%, 50%, 75%, and 90% free from other cells with which it is naturally present, but which lack the marker based on which the cells were isolated.


For use in the diagnostic and therapeutic applications described herein, kits are also within the scope of the invention. Such kits can comprise a carrier, package or container that is compartmentalized to receive one or more containers such as vials, tubes, and the like, each of the container(s) comprising one of the separate elements to be used in the method. For example, the container(s) can comprise a probe that is or can be detectably labeled. The probe can be an antibody or polynucleotide specific for a biomarker of interest. Alternatively, the kit can comprise a mass spectrometry (MS) probe. The kit can also include containers containing nucleotide(s) for amplification or silencing of a target nucleic acid sequence, and/or a container comprising a reporter means, such as a biotin-binding protein, e.g., avidin or streptavidin, bound to a detectable label, e.g., an enzymatic, florescent, or radioisotope label. The kit can include all or part of the amino acid sequence of the biomarker, or a nucleic acid molecule that encodes such amino acid sequences.


The kit of the invention will typically comprise the container described above and one or more other containers comprising materials desirable from a commercial and user standpoint, including buffers, diluents, filters, needles, syringes, and package inserts with instructions for use. In addition, a label can be provided on the container to indicate that the composition is used for a specific therapeutic or non-therapeutic application, and can also indicate directions for either in vivo or in vitro use, such as those described above. Directions and or other information can also be included on an insert which is included with the kit.


Polynucleotides may be prepared using any of a variety of techniques known in the art. The polynucleotide sequences selected as probes (and bind to the biomarkers of interest) should be sufficiently long and sufficiently unambiguous that false positives are minimized. The polynucleotide is preferably labeled such that it can be detected upon hybridization to DNA and/or RNA in the assay being screened. Methods of labeling are well known in the art, and include the use of radiolabels, such as 32P-labeled ATP, biotinylation, fluorescent groups or enzyme labeling. Hybridization conditions, including moderate stringency and high stringency, are well known in the art.


Polynucleotide variants may generally be prepared by any method known in the art, including chemical synthesis by, for example, solid phase phosphoramidite chemical synthesis. Modifications in a polynucleotide sequence may also be introduced using standard mutagenesis techniques, such as oligonucleotide-directed site-specific mutagenesis. Alternatively, RNA molecules may be generated by in vitro or in vivo. Certain portions may be used to prepare an encoded polypeptide.


Any polynucleotide may be further modified to increase stability in vivo and/or in vitro for improved activity and/or storage. Possible modifications include, but are not limited to, the addition of flanking sequences at the 5′ and/or 3′ ends; the use of phosphorothioate or 2′ 0-methyl rather than phosphodiesterase linkages in the backbone; and/or the inclusion of nontraditional bases such as inosine, queosine and wybutosine, as well as acetyl- methyl-, thio- and other modified forms of adenine, cytidine, guanine, thymine and uridine.


Polynucleotides and/or antibodies specific to biomarkers of interest can be conjugated to detectable markers to a second molecule. Suitable detectable markers include, but are not limited to, a radioisotope, a fluorescent compound, a bioluminescent compound, chemiluminescent compound, a metal chelator or an enzyme. A second molecule for conjugation can be selected in accordance with the intended use. For example, for therapeutic use, the second molecule can be a toxin or therapeutic agent. Further, bi-specific antibodies specific for two or more biomarkers may be generated using methods generally known in the art. Homodimeric antibodies may also be generated by cross-linking techniques known in the art.


EXAMPLES

The following examples help explain some concepts of the current invention. However, the general concepts of the current invention are not limited to the particular examples.


Example 1: Acute Appendicitis: Transcript Profiling of Blood Identifies Promising Biomarkers and Potential Underlying Processes

Materials and Methods


Subjects.


Ethics statement: The protocol of this observational study was approved by the Institutional Review Board of The George Washington University, and all subjects gave informed consent. From a cohort of 270 patients presenting to the ED for various reasons, a subset of 40 subjects with a principal complaint of abdominal pain, and who met inclusion/exclusion criteria, were identified, and divided into a discovery set of 20 patients, and a validation set of 20 patients for transcript profiling of whole blood RNA by microarray.


Discovery Set: For the discovery set, we employed 20 subjects who presented to the ED who were undergoing CT scanning. In order to meet criteria, the patient undergoing the CT scan must have had appendicitis suspected in the differential diagnosis. Appendicitis Patients: Patients with appendicitis were diagnosed by CT scanning (n=11), and had research blood samples drawn by venipuncture after anesthetic induction, but prior to skin incision for appendectomy. All cases of appendicitis were confirmed by intra-operative findings and pathology of the removed appendix. Control Patients: Patients included in the control arm (n=9) were patients who were found not to have appendicitis, by both CT scanning and clinical follow-up. This included patients with reported abdominal pain, later found to be caused by diverticulitis, or other gastrointestinal pathologies, but not clinically associated with appendicitis. Blood was drawn at study enrollment for these patients.


Validation Set: Control Patients. Because appendicitis can involve infection, we enrolled 5 patients with lower respiratory tract infections (LRI) in the ED as an ‘infection’ control. Also, as a control for surgical factors, we enrolled 5 patients undergoing elective ventral hernia or inguinal hernia repair (HER), and these were compared with 10 new patients with surgically confirmed appendicitis (APP). In all surgical patients, including appendicitis and hernia repairs, research blood samples were drawn by venipuncture after anesthetic induction, and prior to skin incision. Two patients, (1 HER, 1 APP) were excluded due to technical complications in RNA purification or microarray analysis.


Blood Samples.


Blood was drawn in 3.2% sodium citrate tubes for frozen plasma samples, in Tempus Blood RNA tubes (ABI) for genome-wide RNA profiling, and in BD Vacutainer K2 tubes for complete blood counts with differentials.


RNA Purification for Transcript Profiling.


Tempus Blood RNA preservation tubes were stored at −80° C. and then thawed at 37° C. prior to processing according to manufacturer's methods. Total RNA was purified from whole blood using Tempus Blood RNA kit (ABI), followed by an aggressive DNAse treatment. Briefly, the preserved whole blood was pelleted at 3000×g for 30 minutes in a 4° C. refrigerated centrifuge, redissolved in lysis buffer and nucleic acids were bound to a column. After washing, nucleic acids were eluted with RNAse/DNAse free water and quantified by with NanoDrop ND-1000 spectrophotometer. DNA was eliminated by aggressive DNAse treatment (TurboDNAse, Ambion) at 2 U/10 μg nucleic acids, followed by affinity removal of the DNAse. The remaining RNA was quantified and RNA integrity was evaluated by 260/280 ratio on ND-1000 and by capillary electrophoresis on a Bioanalyzer 2100 (Agilent). RIN scores>7 were considered acceptable for further sample processing and did not differ between groups.


Microarray Expression Profiling and Analysis.


Purified RNA (100 ng) was labeled with the Illumina cRNA synthesis kit and hybridized to Illumina Human HT-12v4 Expression BeadChip arrays (http://www.illumina.com/products/humanht_12_expression_beadchip_kits_v4.html) containing more than 47,000 probes derived from the NCBI RefSeq release 38 (http://www.ncbi.nlm.nih.gov/refseq/). The arrays were washed and then fluorescence was quantitated on an Illumina HiScan (http://www.illumina.com/systems/hiscan.html).


The fluorescence levels per bead were converted to transcript levels using Illumina GeneStudio, which averaged typically 30 beads per transcript to produce a mean expression level for each of the 46K transcripts. Raw BeadChip fluorescence values were imported into GeneSpring GX12.5 with normalization to the 75-percentile of expression, but without baseline transformation. The main effect of identifying differentially expressed genes (DEG) with respect to appendicitis versus controls was achieved by a combined filter for a p value<0.05 on t test without correction for multiple testing, and 2) fold change>2.0. The DEG list was further analyzed for gene ontologies using DAVID [17]. Using the DEG list, a partial least squares discriminant (PLSD) prediction model was built in GeneSpring and internally validated with a Leave One Out Cross Validation (LOOCV) algorithm. The PLSD model was externally tested by applying the algorithm to a separate validation set of microarray samples not involved in building the model.


The PLSD model described here can be replicated by one of ordinary skill in the art by entering the PLSD loading weights for the genes disclosed in Tables 2 and 3 (below) into a suitable statistical package; in the instant invention, GeneSpring GX13 (Agilent) was used (http://www.genomics.agilent.com/en/product.jsp?cid=AG-PT-130&tabId=AG-PR-1061&_requestid=163669). Tables 5A and 5B below summarizes the loading weights for the genes of Table 2 and Table 3.


Results


Clinical Parameters.


As shown in Table 1, the clinical parameters between patients presenting with appendicitis versus other abdominal indications in the discovery set were generally similar. Age, gender, and body mass index (BMI) were comparable, although the appendicitis patients were principally of Caucasian race. Notably, white blood cell (WBC) counts were comparable, but appendicitis patients had 10% higher neutrophil count that was not statistically significant (77.18% vs 70%, NS). Appendicitis patients had significantly lower blood creatinine level (0.78 vs 1.54 mg/dL, p=0.03 uncorrected). The two groups did not yield significantly different RNA quantities from blood, and the amplification of RNA for microarray labeling was similar.









TABLE 1







Clinical Parameters of Discovery Set










Appy (11)
ABD (9)















Gender

% male
55.00
55


Age
Mean
Years
40.73
45.89



SD

15.45
15.54


BMI
Mean

24.51
26.44



SD

4.92
4.48


Race

% White
100.00
55.56




% Black
0.00
44.44


Smoker

%
18.18
11.11


Duration of Symptom
Mean
Hours
29.45
32.75



SD

18.68
30.65


Temperature
Mean
Celsius
36.97
36.8



SD

0.47
0.38


WBC
Mean
K/ul
13.06
13.23



SD

6.44
30.65


Elevated Neutrophils
>75%
%
55.00
37.5


Neutrophils
Mean
% WBC
77.18
70



SD

8.76
10.14


Creatinine
Mean

0.78
1.54



SD

0.13
1.06


pH
<7.35
%
0.00
11.11


Na < 130

%
0.00
0.00


HCT < 30

%
0.00
11.11


Glu > 250

%
0.00
0.00


BUN > 30

%
0.00
0.00


Immunosupressed

%
0
0


Steroids

%
0
0


Antibiotic use

%
0
0


Oral Rehydration
Mean
%
35.60
ND


Therapy
SD

10.74
ND


Cirrhosis

%
0
0


Cancer

%
0
0


Total RNA conc.
Mean
ng/ul
102.36
66.48



SD

72.49
34.06


Folds amp.
Mean
Fold
67.96
64.13



SD

60.48
35.81


Defensin Score
Mean
RNA level
1.26
2.62*



SD

0.92
1.46





*indicates p < 0.05 (uncorrected probability)


% indicates the percent of patients exhibiting that trait, unless otherwise indicated






Identification of RNA Biomarkers for Appendicitis in Whole Blood.


A scatterplot of the expression patterns in the 2 groups (FIG. 1) suggested that there was excellent linearity of quantitation over roughly 7 log 2 orders of magnitude, with globins being the most highly and identically expressed transcripts between groups. By comparing the expression profiles of the two groups, and filtering for both a t-test probability<0.05 and a fold-change of >2.0, 37 transcripts were identified as significantly differentially expressed (Table 2, above). Hierarchical clustering of the 37 DEG was conducted to observe the pattern of covariance of the transcripts in these patients. A heatmap of the expression of these 37 transcripts across all 20 patients in the discovery set is shown in FIG. 2.



FIG. 1 shows a scatterplot of transcript levels in patients with appendicitis. In FIG. 1, whole blood RNA from patients with acute, surgically confirmed appendicitis (n=11) or abdominal pain (n=9) was profiled for the expression level of 45,966 transcripts on Illumina BeadChip Arrays (12v4). The expression level of each transcript was averaged within groups and plotted on a log 2 scale to reveal transcripts which differ between more than 2-fold between groups (outside parallel lines).



FIG. 2 shows hierarchical clustering of 37 differentially expressed genes in appendicitis patients. In FIG. 6, transcripts which differed between groups by >2-fold with a t-test probability of <0.05 (uncorrected) were identified by combined filtering. Following a per-gene normalization, DEGs were subjected to hierarchical clustering to identify patterns of covariance among the transcripts. The upper block of transcripts from HLA-DRB5 to CA4 are relatively higher in APP patients (red) compared to patients with other types of abdominal pain (yellow to blue). Conversely, transcripts from defensins (DEFA) and ribosomal transcripts, were relatively lower in APP than abdominal pain patients.









TABLE 2







Differentially expressed genes (DEG) sorted by functional grouping












Probe
p
Fold

Expression Level















ID
Val
Change

ABDOM
APPDX
DEFINITION
SYMBOL













CHEMOKINES and IMMUNE-RELATED

















3440669
0.008
2.02

1.85
2.86
Chemokine C-
CXCR1








X-C receptor 1


2900327
0.003
2.59

2.80
4.17
Interleukin 8
IL8RB








receptor, β








(CXCR2)


1450139
0.004
3.07

3.17
4.79
Fc frag of IgG
FCGR3B








receptor IIIb








(CD16b)


6370315
0.017
3.16

−0.11
1.55
MHC class II,
HLA-DRB5








DR beta 5


6110037
0.007
2.36

2.38
3.62
Leukocyte IgG-
LILRA3








like receptor A3













DEFENSINS




















4540239
0.019
2.80

3.39
1.91
Defensin, alpha 1
DEFA1


 870477
0.024
2.29

2.60
1.40
Defensin, alpha
DEFA1B








1B (3








probesets)


2970747
0.017
2.69

2.58
1.15
Defensin, alpha
DEFA3








3, neutrophil-








spec.









TRANSLATION and PROTEIN SYNTHESIS
















3180609
0.002
2.69

1.04
2.47
18S ribosomal
18S rRNA








RNA, non-








coding


6280504
0.005
2.05

1.20
2.23
28S ribosomal
28S rRNA








RNA, non-








coding


3190348
0.007
2.01

2.16
1.15
60S acidic
RPLP1








ribosomal








protein P1


6270307
0.006
2.04

2.04
1.01
40S ribosomal
RPS26








protein S26 (3








sets)


 380575
0.000
2.14

1.49
0.39
Ribosomal
RPL23








protein L23


 990273
0.012
2.48

3.39
2.08
Ribosomal
RPL37A








protein L37a


 650349
0.008
2.00

2.20
1.19
Ribosomal
RPS28








protein S28











STRESS and INJURY RELATED


















6100356
0.002
2.84

3.63
5.14
Alkaline
ALPL








phosphatase,








liver/bone


6380672
0.001
2.11

1.42
2.50
Carbonic
CA4








anhydrase IV


1510681
0.012
2.01

3.56
2.55
Neuroblastoma
NBPF10








breakpt family








10


7380706
0.001
2.10

2.61
3.68
Ninjurin 1
NINJ1


1030463
0.004
2.49

3.30
4.62
Prokineticin 2
PROK2


3890326
0.011
2.02

3.43
4.44
Superoxide
SOD2








dismutase 2,








mitochon.












MINIMALLY ANNOTATED




FROM NCBI














6420563
0.023
2.00

3.85
2.85
LOC100129902
RPS29P11


 650735
0.001
2.09

1.86
0.79
LOC100131205
RPL21P28


6650603
0.000
2.66

1.95
0.54
LOC100131905
RPS27P21


7150414
0.003
2.31

2.26
1.06
LOC100132291
RPS27P29


4670634
0.003
2.81

1.69
3.18
LOC100132394
retired


6580017
0.009
2.18

2.81
1.69
LOC100132742
RPL17L


2630347
0.001
2.04

1.17
2.21
LOC100134364
retired


3390674
0.002
2.01

2.11
1.10
LOC391370
RPS12P4


1170551
0.001
2.19

1.55
0.42
LOC646785
RPS10P13


6960373
0.013
2.00

2.23
1.23
LOC644191
RPS26P8


4540241
0.005
2.15

1.10
2.21
C5orf32
CYSTM1
















TABLE 3







A sixteen transcript set predictive of appendicitis




















ABD









OM
APP






FC

expression
expression


PROBE_ID
SYMBOL
ProbeID
p
(abs)
Change
level
level

















ILMN_1701603
ALPL
6100356
0.001874699
2.84
up
3.63
5.14


ILMN_1761566
C5orf32
4540241
0.004890986
2.15
up
1.10
2.21


ILMN_1697499
HLA- DRB5
6370315
0.017076675
3.16
up
−0.11
1.55


ILMN_1680397
IL8RB
2900327
0.002848122
2.59
up
2.8
4.17


ILMN_1661631
LILRA3
6110037
0.007226919
2.36
up
2.38
3.62


ILMN_3243593
LOC100008588
3180609
0.001715004
2.69
up
1.04
2.47


ILMN_1733559
LOC100008589
6280504
0.005007231
2.05
up
1.2
2.23


ILMN_3249578
LOC100132394
4670634
0.003334389
2.81
up
1.69
3.18


ILMN_3246805
LOC100134364
2630347
8.80E-04
2.04
up
1.17
2.21


ILMN_3293367
LOC391370
3390674
0.001937386
2.01
down
2.11
1.1


ILMN_3209193
LOC644191
6960373
0.012769181
2.00
down
2.23
1.23


ILMN_2155719
NBPF10
1510681
0.012251468
2.01
down
3.56
2.55


ILMN_1815086
NINJ1
7380706
7.91E-04
2.10
up
2.61
3.68


ILMN_1775257
PROK2
1030463
0.004478186
2.49
up
3.3
4.62


ILMN_1755115
RPL23
380575
9.09E-05
2.14
down
1.49
0.39


ILMN_2336781
SOD2
3890326
0.010532255
2.02
up
3.43
4.44









Certain aspects of this expression pattern increase the confidence that some of these changes are non-random: 1) multiple probe sets identifying the same transcript (DEFA1), 2) ‘hits’ on highly related transcripts such as DEFA1 and DEFA3, as well as CXCR1 (aka IL8 receptor α) and IL8 receptor β.









TABLE 4







DEG gene symbols and Genbank IDs










Probe ID
Gene Symbol
Definition
Genbank ID(s)





6100356
ALPL

Homo sapiens alkaline

AL592309 AB011406




phosphatase,
BC066116 AB012643




liver/bone/kidney (ALPL),
BC136325 NM_000478




transcript variant 1, mRNA.
NM_001127501





AL359815 X53750





BC021289 AB209814





D87880 D87882





D87881 AK298085





M24429 BC126165





M24428 BC110909





D87877 D87887





D87876 CH471134





D87888 D87879





D87889 D87878





D87883 AK312667





D87884 DA625627





D87875 D87885





D87874 D87886





DA631560 M24435





M24434 M24433





M24432 BC090861





M24431 M24430





AK293184 M24439





M24438 M24437





M24436 AK295608





X14174 AK097413


4540241
C5orf32

Homo sapiens chromosome

BC023982 AJ245877




5 open reading frame 32
CH471062 BM919999




(C5orf32), mRNA.
AC011379 CR607630





AK225992 BC013643





AK312045 CA310907





CR615127 CR603819





AC011380 NM_032412


6380672
CA4

Homo sapiens carbonic

AK298710 AC025048




anhydrase IV (CA4),
NM_000717 M83670




mRNA.
AK289715 BC069649





DA113846 L10953





L10954 L10955





L10951 AI990988





BC074768 CH471109





BC057792 CR541766


3440669
CXCR1

Homo sapiens chemokine

CR542029 AY916763




(C-X-C motif) receptor 1
AY916764 AY916762




(CXCR1), mRNA.
CR541994 BC072397





DQ894895 L19591





L19592 AB032732





AY651785 M68932





U11871 AY916766





U11870 CR617846





AY916765 BC028221





X65858 AK312668





AB032730 AB032731





AY916769 CH471063





NM_000634 AY916772





AY916773 AC097483





AK298647 AB032729





AB032728 AK309632





CA425329 DQ891718


4540239
DEFA1

Homo sapiens defensin,

AX405718 L12690




alpha 1 (DEFA1), mRNA.
NM_004084 AF238378





AF200455 BC069423





X52053 AF233439





M26602 BC093791





DQ896798 DQ890546





DQ890545 NM_001042500





BC112188 M21130


870477
DEFA1B

Homo sapiens defensin,

AX405718 L12690




alpha 1B (DEFA1B),
NM_004084 AF238378




mRNA.
AF200455 BC069423





X52053 AF233439





M26602 BC093791





DQ896798 DQ890546





DQ890545 NM_001042500





BC112188 M21130


4860128
DEFA1B

Homo sapiens defensin,

AX405718 L12690




alpha 1B (DEFA1B),
NM_004084 AF238378




mRNA.
AF200455 BC069423





X52053 AF233439





M26602 BC093791





DQ896798 DQ890546





DQ890545 NM_001042500





BC112188 M21130


7150170
DEFA1B

Homo sapiens defensin,

AX405718 L12690




alpha 1B (DEFA1B),
NM_004084 AF238378




mRNA.
AF200455 BC069423





X52053 AF233439





M26602 BC093791





DQ896798 DQ890546





DQ890545 NM_001042500





BC112188 M21130


2970747
DEFA3

Homo sapiens defensin,

L12691 EU176174




alpha 3, neutrophil-specific
M23281 X13621




(DEFA3), mRNA.
NM_005217 AF238378





BC027917 AF200455





M21131 BC119706


1450139
FCGR3B

Homo sapiens Fc fragment

AK316565 M24854




of IgG, low affinity IIIb,
AL451067 BC128562




receptor (CD16b)
NM_000570 X07934




(FCGR3B), mRNA.
AB032414 Z46223





AK313219 X16863





DA672763 AJ581669





J04162 AB025256


6370315
HLA-DRB5

Homo sapiens major

AF112878 Y17695




histocompatibility complex,
AF112877 X65585




class II, DR beta 5 (HLA-
AF243537 AY050211




DRB5), mRNA.
AF029286 U68391





AF029285 AY465115





AF029282 AY050208





AF029283 AY050207





M98436 M16955





AF327742 M16954





AF029281 M16956





AY663412 DQ835614





AY770514 M63216





AF011786 AY267905





AF029267 AJ251984





M77671 AY396024





AY267906 AF029273





AF029274 AF029275





DQ837166 AJ783982





AY050214 AF029270





AB112913 AF029271





AB112912 AF029272





AY770520 AJ242985





AY663404 U79027





U79025 U79026





AF288212 X99841





U59685 AL713966





M91001 D13412





AY641577 X64544





AJ566209 AF335232





U34602 X64548





Y13727 X64549





AF029291 AJ252281





AY141137 EF078986





AY052549 AY884215





AJ506752 AM231063





AJ534885 AJ512947





M74032 M16086





X87210 M63197





M20429 AJ427352





AY247411 AY502108





M15839 Y17819





AF335230 L26306





X99895 U25638





AF047350 M57600





AY172512 DQ987876





AY179368 AY179367





AY179366 AJ491301





AJ867236 U95818





U41634 M14661





AJ506201 AF034858





EF419344 D14352





AF406781 D88310





U72264 AJ878425





AJ249726 DQ514604





DQ525634 AJ854064





U66721 AY899913





AJ245714 AJ245715





AJ245717 AM000036





X95656 U66826





AJ243897 AY277387





AJ243898 AJ580838





M27689 AJ311892





AF247534 AF247533





U37583 AY259126





AY277393 AY277390





AY277391 AK314834





AY259128 U72064





Z83201 X97291





DQ179043 AY054375





DQ179042 U41489





AY504812 M81174





AY504813 AF329281





AJ297705 AF306862





AJ238410 AJ539471





M81171 Y09342





AY307897 D89917





U08275 U08274





M30182 M30181





AY663397 U95115





AB010270 AM159646





AF164346 DQ535034





AB010269 AY257483





AY429728 AJ515905





AY429723 M81180





AY877348 X73027





M57648 AF093411





DQ135944 AJ507780





AF089719 AJ297582





D49468 AY174184





AY174181 AB049832





AY050186 AF339884





AB062112 DQ140279





AJ404618 M20503





AJ854250 AF169239





NM_002125 U96926





M17377 AF052574





DQ179034 AF267639





M17379 AF142465





M17384 AJ507382





M59798 M17387





AF142466 AF029301





M17383 M17382





M32578 AY296120





AY296121 AY170862





AJ271159 EF495154





U26558 Y07590





AF142451 AJ871009





S79786 AJ441130





AB106129 AF122887





AF201762 X96396





U17381 AJ289124





AJ306404 AY545466





DQ643390





DQ060439 D29836





AJ507425 AF186408





AF442519 AB087875





AB176444 AF186407





Z99006 U25442





AY048687 M15992





CH878642 AF142447





AY305859 AF142442





AY664400 AF142445





AY664401 AF450093





AF234175 X86803





AF490771 U31770





AF004817 AJ401148





BC009234 AF234181





AJ488066 AJ243327





FN430425 AF144080





AM084908 AY379480





M35159 L21755





AY331806 AF081676





AY457037 AK292140





AY765349 L41992


2900327
IL8RB

Homo sapiens interleukin 8

U11869 DA670033




receptor, beta (IL8RB),
U11866 AK290906




mRNA.
DQ895671 NM_001168298





DA674925 L19593





AB032733 AC124768





AB032734 U11873





U11872 DQ893661





AK312664 M73969





U11874 U11875





AY714242 AJ710879





U11876 U11877





CH471063 U11878





M94582 BC037961





M99412 NM_001557


6110037
LILRA3

Homo sapiens leukocyte

AF482762 AF482763




immunoglobulin-like
U91926 U91927




receptor, subfamily A
AF482766 AF482767




(without TM domain),
BC028208 AF482764




member 3 (LILRA3),
AF482765 NM_006865




mRNA.
AF025527 DQ894258





AF014923 AF014924





AF353733 AC010518





DQ891075 CH471135





AF482769 AF482768


3180609
LOC100008588

Homo sapiens 18S

NT_167214.1




ribosomal RNA




(LOC100008588),




non-coding RNA.


6280504
LOC100008589

Homo sapiens 28S

AK225361 NM_033331




ribosomal RNA
EF611343 NM_003671




(LOC100008589),
AF023158 AF064104




non-coding RNA.
AL133477 NM_001077181





AF064105 AL353578





AY675321 AK126388





CR601692 BC156666





BC050013 DA943563





CH471174 U13369





NR_003287 AL592188


6280504
LOC100008589

Homo sapiens 28S

NT_167214.1




ribosomal RNA




(LOC100008589),




non-coding RNA.


6420563
LOC100129902
PREDICTED: Homo sapiens
NC_000004.10




similar to mCG7602




(LOC100129902), mRNA.


650735
LOC100131205
PREDICTED: Homo sapiens
NR_026911




hypothetical protein




LOC100131205, transcript




variant 3 (LOC100131205),




mRNA.


6650603
LOC100131905
PREDICTED: Homo sapiens
NC_000012.10




misc_RNA (LOC100131905),




miscRNA.


7150414
LOC100132291
PREDICTED: Homo sapiens
NC_000019.8




similar to hCG2027326




(LOC100132291), mRNA.


4670634
LOC100132394
PREDICTED: Homo sapiens
n/a




hypothetical protein




LOC100132394




(LOC100132394), mRNA.


6580017
LOC100132742
PREDICTED: Homo sapiens
NC_000001.9




hypothetical protein




LOC100132742, transcript




variant 1 (LOC100132742),




mRNA.


2630347
LOC100134364
PREDICTED: Homo sapiens
n/a




hypothetical protein




LOC100134364




(LOC100134364), mRNA.


3390674
LOC391370
PREDICTED: Homo sapiens
NC_000002.10




similar to hCG1818387




(LOC391370), mRNA.


3190348
LOC440927
PREDICTED: Homo sapiens
n/a




similar to 60S acidic




ribosomal protein P1,




transcript variant 4




(LOC440927), mRNA.


6960373
LOC644191
PREDICTED: Homo sapiens
NC_000017.9




similar to hCG15685,




transcript variant 1




(LOC644191), mRNA.


6270307
LOC644934
PREDICTED: Homo sapiens
AL353735 AC225613




similar to 40S
AC090543 AC034102




ribosomal protein S26,
CH471054 DQ896038




transcript variant 1
CH471057 AL136526




(LOC644934), mRNA.
BC105798 AC098847





AB007161 AC006463





U41448 AC008065





AB007160 X69654





AP004217 DQ895081





X79236 AL138767





AV681946 AC126544





CH236947 DQ891895





BC013215 BC070220





BC105276 DQ896089





AC012391 DQ892791





AC027373 NM_001029





AC004057 X77770





AC025518 BC015832





CR611958 BC002604


1170551
LOC646785
PREDICTED: Homo sapiens
NC_000006.10




misc_RNA




(LOC646785), miscRNA.


6960195
LOC650646
PREDICTED: Homo sapiens
AL445193 CH471059




similar to 40S




ribosomal protein S26




(LOC650646), mRNA.


1510681
NBPF10

Homo sapiens

NM_001101663 BC094705




neuroblastoma breakpoint
AK055895 AL049742




family, member 10
AF379606 AK095030




(NBPF10), mRNA.
AF379607 BC034418




XM_930727 XM_930739
CR599564 XM_002346226




XM_930751 XM_930759
CR608846 BC169317




XM_930766 XM_930776
BC169318 BC169316




XM_930785 XM_930797
BC094841 DB300232




XM_930808 XM_930830
AF380582 NM_001037675




XM_930841 XM_930850
BC086308 AL117237




XM_930862 XM_930872
AF380580 NM_183372




XM_930880 XM_930889
BC063799 BX546486




XM_930897 XM_930903
BC027348 AL592284




XM_930910 XM_930917
NM_001039703 AC026900




XM_930926 XM_930936
AK302413 AF379624




XM_930943 XM_930951
NM_015383 AF379626




XM_930954 XM_930961
AF379627 AF379628




XM_930967 XM_930975
AK294944 XM_001726946




XM_930985 XM_930993
AK092351 AF379620




XM_931003 XM_931009
AF379621 AF379622




XM_931015 XM_931021
AF379623 AK054850




XM_931027 XM_931033
AL359176 XM_001717398




XM_931038 XM_931044
AF379615 AF379616




XM_931049 XM_931055
AF379613 AF131738




XM_931060 XM_931066
AF379614 AL355149




XM_931069 XM_931072
AF379619 AL138796




XM_931076 XM_931080
BX511041 AK290302




XM_931084 XM_931090
AF379617 AL050141




XM_931096 XM_931102
AF379618 BC021111




XM_931110 XM_931119
AF379611 AF379612




XM_931125 XM_931131
AY894574 BC010124




XM_931137 XM_931138
AY894573 BC148331




XM_931145 XM_931149
AY894572 AL040349




XM_931157 XM_931161
AY894571 AY894570




XM_931164 XM_931169
BC071995 AY894579




XM_931174 XM_931178
AY894578 AY894577




XM_931183 XM_931188
AL592307 AY894576




XM_931191 XM_931196
AY894575 AL137798




XM_931202 XM_931208
AK290142 AI865471




XM_931213 XM_931221
AF419617 XM_001715810




XM_931229 XM_931234
AF419616 AF419619




XM_931240 XM_931245
AF419618 AK095459




XM_931251 XM_931255
AF379632 AY894583




XM_931259 XM_931264
AF379631 AL356004




XM_931269 XM_931277
AY894582 AF379634




XM_931282 XM_931291
AY894585 BC110431




XM_931299 XM_931308
AF379630 AY894581




XM_931317 XM_931322
AK125792 AY894580




XM_931328 XM_931335
AL139152 BC167783





AK294414 AF379635





NM_017940 AF420437





BQ890458 AK000726





BC136292 CR600619





AL954711 BC071723





AF161426 BI552657





AB051480 CR610345





AK097180 BC023087





BX648497 AL022240





AL832622 AB033071





AY894561 BC013805





AY894563 AY894562





BC066930 AY894565





AY894567 AY894566





BX538005 AY894569





AY894568 BX842679





NM_173638 DQ786323





AK299360 NM_001170755





BC093404 AK123260


7380706
NINJ1

Homo sapiens ninjurin 1

AL451065 BC048212




(NINJ1), mRNA.
AK094530 BT007164





U91512 BC019336





AF029251 CH471089





U72661 BC004440





CR608271 CR595190





NM_004148 BC000298


1030463
PROK2

Homo sapiens prokineticin

AC096970 AY349131




2 (PROK2), mRNA.
CS023558 BC098110





CH471055 NM_021935





BC069395 AF333025





NM_001126128 BC098162





BC096695 AF182069


380575
RPL23

Homo sapiens ribosomal

X52839 AC110749




protein L23 (RPL23),
BC034378 BC106061




mRNA.
CR604268 X55954





CR610098 BC104651





CH471152 NM_000978





AB061827 AL136089





BC003518 DQ893218





CA437923 BC062716





DQ896547 BC010114





AK024749


990273
RPL37A

Homo sapiens ribosomal

CR618026 CR542152




protein L37a (RPL37A),
BC016748 L22154




mRNA.
CH471063 BC047872





CR613913 BC039030





BC014262 BC067789





NM_000998 L06499





CD249666 AC073321





BC063476 X66699





BC082239 AK291857





BC000555 AK289472





D28355


5890730
RPS26L
PREDICTED: Homo sapiens
AL136526




40S ribosomal




protein S26-like




(RPS26L), misc RNA.


6560376
RPS26P11

Homo sapiens ribosomal

NR_002309 AL929401




protein S26 pseudogene 11
AW972305




(RPS26P11), non-coding




RNA.


650349
RPS28

Homo sapiens ribosomal

AB007164 CH471076




protein S28 (RPS28),
AU126783 BC021239




mRNA.
AC107983 L05091





AC005011 CR606185





DQ891357 U58682





CR603137 AK293636





BC070217 BC070218





CH471139 AC010323





AK301638 BC018810





DQ894538 CR457055





CH236952 NM_001031





AB061846 BC000354





AK311925


3890326
SOD2

Homo sapiens superoxide

X65965 BC035422




dismutase 2, mitochondrial
CH471051 BU164685




(SOD2), nuclear gene
DQ003134 DQ890587




encoding mitochondrial
Y00472 X59445




protein, transcript variant 2,
AK097395 AM392836




mRNA.
AY280721 AK304766





AY280720 AY267901





BT006967 BU741675





AY280719 AY280718





Y00985 NM_001024465





NM_001024466 BC016934





CR626136 AK296809





S77127 L34157





X14322 BC001980





NM_000636 D83493





M36693 AL691784





X07834 AK313082





X15132 AL050388





AL135914 DQ893752





BC012423 BG699596





BM994509
















TABLE 5A







PLSD loading weights for genes from Table 2:












PLSD Loading





weight for
PLSD Loading




Abdominal
weight for


PROBE_ID
SYMBOL
discomfort
Appendicitis













ILMN_1701603
ALPL
0.29783
−0.29783


ILMN_1761566
C5orf32
−0.25526
0.25526


ILMN_1695157
CA4
−0.01612
0.01612


ILMN_1662524
CXCR1
−0.06819
0.06819


ILMN_2193213
DEFA1
−0.06522
0.06522


ILMN_1679357
DEFA1B
0.04740
−0.04740


ILMN_1725661
DEFA1B
−0.01104
0.01104


ILMN_2102721
DEFA1B
0.03026
−0.03026


ILMN_2165289
DEFA3
−0.04788
0.04788


ILMN_1728639
FCGR3B
0.04584
−0.04584


ILMN_1697499
HLA-DRB5
−0.33313
0.33313


ILMN_1680397
IL8RB
−0.16264
0.16264


ILMN_1661631
LILRA3
−1.50443
1.50443


ILMN_3243593
LOC100008588
0.33584
−0.33584


ILMN_1733559
LOC100008589
−0.27838
0.27838


ILMN_3256742
LOC100129902
0.17543
−0.17543


ILMN_3214532
LOC100131205
0.57084
−0.57084


ILMN_3275489
LOC100131905
0.42307
−0.42307


ILMN_3275345
LOC100132291
0.01674
−0.01674


ILMN_3249578
LOC100132394
−0.38482
0.38482


ILMN_3202734
LOC100132742
0.14064
−0.14064


ILMN_3246805
LOC100134364
−0.24811
0.24811


ILMN_3293367
LOC391370
0.21413
−0.21413


ILMN_1689712
LOC440927
0.10489
−0.10489


ILMN_3209193
LOC644191
−0.25270
0.25270


ILMN_1678522
LOC644934
−0.09154
0.09154


ILMN_3210538
LOC646785
0.01680
−0.01680


ILMN_1726647
LOC650646
−0.10099
0.10099


ILMN_2155719
NBPF10
0.51417
−0.51417


ILMN_1815086
NINJ1
−0.62920
0.62920


ILMN_1775257
PROK2
0.31264
−0.31265


ILMN_1755115
RPL23
0.42432
−0.42433


ILMN_2051519
RPL37A
0.04629
−0.04629


ILMN_1750636
RPS26L
0.17768
−0.17768


ILMN_2180866
RPS26P11
−0.00077
0.00077


ILMN_1651228
RPS28
0.03448
−0.03448


ILMN_2336781
SOD2
−0.28727
0.28727
















TABLE 5B







PLSD loading weights for genes from Table 3:












PLSD Loading





weight for
PLSD Loading




Abdominal
weight for


PROBE_ID
SYMBOL
discomfort
Appendicitis













ILMN_1701603
ALPL
0.30
−0.30


ILMN_1761566
C5orf32
−0.26
0.26


ILMN_1697499
HLA-DRB5
−0.33
0.33


ILMN_1680397
IL8RB
−0.16
0.16


ILMN_1661631
LILRA3
−1.50
1.50


ILMN_3243593
LOC100008588
0.34
−0.34


ILMN_1733559
LOC100008589
−0.28
0.28


ILMN_3249578
LOC100132394
−0.38
0.38


ILMN_3246805
LOC100134364
−0.25
0.25


ILMN_3293367
LOC391370
0.21
−0.21


ILMN_3209193
LOC644191
−0.25
0.25


ILMN_2155719
NBPF10
0.51
−0.51


ILMN_1815086
NINJ1
−0.63
0.63


ILMN_1775257
PROK2
0.31
−0.31


ILMN_1755115
RPL23
0.42
−0.42


ILMN_2336781
SOD2
−0.29
0.29









Functional Analysis of DEG Transcripts.


Of the well annotated transcripts, several had prior published relationships to infection, immunity, or inflammation, or stress/injury: notably, alkaline phosphatase liver/bone/kidney isoform (ALPL), carbonic anhydrase IV (CA4), chemokine (C-X-C motif) receptor 1 (CXCR1), defensin α1 (DEFA1), defensin α3 (DEFA3), IgG Fc receptor IIb (FCGR3B/CD16B), interleukin 8 receptor ß (IL8RB), ninjurin 1, (NINJ1), prokinectin 2 (PROK2), and superoxide dismutase 2 (SOD2). In addition to their logical connection to appendicitis, which often has an infectious etiology, certain aspects of this expression pattern increase the confidence that some of these changes are non-random: 1) multiple probe sets identifying the same transcript (DEFA1), 2) ‘hits’ on highly related transcripts, such as DEFA1 and DEFA3, as well as CXCR1 (aka IL8 receptor β) and IL8 receptor ß.


Defensins. To understand the defensin pathway, the 5 α-defensin transcripts in the DEG list, which are all variant transcripts from the DEFA locus at 8p21.3, were averaged to create a ‘defensin score’, and then compared between groups (Table 1). Using a threshold determined by the mean of all 20 patients (1.87), 6 of 9 (67%) patients with other abdominal disorders showed elevated defensins, while only 1 of 11 (9%) of appendicitis patients had elevated defensin mRNA (see defensin cluster in FIG. 2). Surprisingly, the defensin score was essentially uncorrelated with white blood cell count (WBC) (r=0.07) and neutrophil % (r=0.15).


Other immune/inflammatory pathways. Interestingly, 3 of the 37 DEG (LILRA3, CXCR1/IL8RA, FCGR3A), which were higher in appendicitis patients compared to abdominal pain patients, are near or exact matches to transcripts discovered previously as down-regulated by exposure of isolated human neutrophils to E. Coli [18]. However, across the 20 patients, they were not inversely correlated with defensin expression (LILRA=0.02, CXCR1=−0.02, FCGR3A=−0.33), suggesting they are regulated independently of infectious markers. Other transcripts were readily associated with tissue injury or inflammation, but not previously associated with pathogen infection. For instance, NINJ1 was identified as a transcript strongly upregulated after peripheral nerve injury [19]. PROK2 is elevated in colitis tissue [20], which, like appendicitis, is an inflammatory condition in the GI tract. Likewise, ALPL has a well-known role in modulating diverse inflammatory conditions not limited to infectious disease [21].


Ribosomal transcripts. While it is widely assumed that ribosomal RNAs (rRNA), such as 18S and 28S non-coding RNAs are ‘invariant’, or ‘housekeeping’ transcripts, there is considerable evidence that they are carefully regulated in cases such as granulocyte activation [22], and differ significantly in prostate cancer [23], and in hepatitis C infected livers [24]. In fact, early studies with PHA-activated human lymphocytes demonstrated as much as 8-fold increases in rRNA levels within 20 hours [25,26]. Furthermore, if the observed changes were due to some type of loading or processing anomaly, then we would expect all of the ribosomal RNAs to be affected in the same direction, when in fact, 18S and 28S noncoding transcripts were increased in appendicitis, but most of the transcripts coding for ribosomal proteins were decreased, suggesting that this is a regulated process.


Minimally annotated transcripts. Of the 37 DEG, 11 transcripts were minimally annotated, i.e. ‘predicted transcript’, but further manual annotation using NCBI Gene revealed high likelihood assignments. Remarkably, 8 of the 11 transcripts were identified as ribosomal protein pseudogenes, which is quite unlikely to have occurred by chance. Two transcripts have been discontinued, and the eleventh was identified as CYSTM1 (C5ORF32), which is a cysteine-rich transmembrane module-containing protein that 2-hybrid screens identified as an inhibitor of the glucagon-like peptide 1 receptor (GLP-1R) [27].


Prediction of Appendicitis from DEG.


The PLSD model built on the 37 DEG list, was 100% accurate and specific within the discovery set, which is not surprising given the ability of PLSD models to accurately ‘fit’ data to outcomes. As shown in FIG. 3, the first 3 latent factors in the PLSD model demonstrate tight clustering of the appendicitis patients (▴) distinct from patients presenting with other abdominal pain (▪). Clearly, 7 of 9 abdominal patients can be discriminated by only the first latent factor (t0, X-axis). Two abdominal patients, one with a GI bleed and one with diverticulitis, are poorly discriminated by the t0 latent factor shown in the X-axis, but are readily discriminated by one of the two other factors (Y or Z axis). To determine whether all 37 transcripts were necessary for prediction, 16 transcripts with a loading of >0.2 in the PLSD model were used to rebuild a new PLSD prediction model (Table 3, above). This smaller model, which omitted the defensins, remained quite strong, predicting 100% of abdominal cases, 90.9% of appendicitis cases, for an overall accuracy of 95%.


Based on these data, a highly predictive model can be generated by observing expression level patterns utilizing as few as 3 RNA transcripts. Of course the more levels that are measured, the more sensitive and predictive the patterns become. Accordingly, the present invention can use the pattern generated from 3 or more RNA transcripts, 4 or more RNA transcripts, 5 or more RNA transcripts, 6 or more RNA transcripts, 7 or more RNA transcripts, 8 or more RNA transcripts, 9 or more RNA transcripts, 10 or more RNA transcripts, 12 or more RNA transcripts, 14 or more RNA transcripts, or 16 or more RNA transcripts. The only minimum is that the number and selection of transcripts define a pattern that distinguishes appendicitis from other causes of abdominal pain. In embodiments, the method is at least 75% accurate, for example at least 80% accurate, at least 90% accurate, or at least 95% accurate.



FIG. 3 shows a graph displaying the Partial Least Squares Discriminant (PLSD) Model for classification of appendicitis from RNA biomarkers. In FIG. 3, DEGs were analyzed by PLSD to compose a classification model for appendicitis based on RNA biomarkers in blood. The 3D plot shows the 20 patients in the discovery set as partitioned by the first 3 of 4 latent factors in the PLSD model. The ▪ represent abdominal pain patients (n=9), and ▴ shows the cluster of appendicitis patients (n=11), as a function of the t0 latent factor (X-axis), the t1 factor (Y-axis), and the t2 factor (Z-axis). The majority of patients (7/9) are accurately classified by the t0 component alone.


Validation of PLSD Prediction Model in Unrelated Samples.


To determine the robustness of the prediction model, a separate group of patients derived from the same overall cohort were similarly processed for whole blood RNA, and hybridized independently to Illumina HT 12v4 Beadchip arrays. With only minimal normalization to correct for minor loading and hybridization differences, the PLSD prediction model was applied to the normalized values for the 37 transcripts in the model. The PLSD prediction model correctly identified 8 of 9 true appendicitis patients (88.9%) and predicted 3 of 4 patients (75%) with hernias as being ‘abdominal pain’. Nearly 90% sensitivity in an unrelated cohort quantified on a different microarray run is encouraging toward the potential robustness of the model. Notably, the PLSD model includes no clinical variables, such as fever or white cell count.


Behavior of the RNA Biomarkers in Non-Appendicitis Infections.


In 5 patients clinically diagnosed with LRI, which were not included in PLSD training, the model predicts 4 of 5 as appendicitis (80%), suggesting that the model may be sensitive to generalized infectious or inflammatory signals in blood. Using the 16 DEG model, only 60% were diagnosed as appendicitis. As shown in FIG. 5, some transcripts, such as FCGR3 and NINJ1, were relatively selectively elevated in APP, but not LRI. Other transcripts, especially defensins, were much more sensitive to LRI than APP, showing 4-5 fold elevations in LRI versus HER, and 20-fold elevations in LRI vs APP. Most transcripts, as demonstrated by IL8Rß, LILRA3, and ALPL, showed roughly similar changes in LRI and APP. Of the 37 transcripts, 10 are relatively selective for APP, 8 are selective for LRI, and 19 behave similarly in both APP and LRI.



FIG. 5 shows graphs displaying the behavior of DEG biomarkers in a validation cohort. In FIG. 5, the 37 DEG biomarker set was applied to transcript expression levels in unrelated patients presenting at the ER for either appendicitis (APP, green bars), lower respiratory infection (LRI, red bars), or hernias (HER, blue bars). Representative transcripts, such as Fe gamma receptor 3 (FCGR3) and ninjurin 1 (NINJ1) are shown, in which the transcript behaves with relatively selective induction in APP, relative to HER or LRI. Conversely, transcripts in the defensin family (DEFA1, DEFA3), are significantly elevated in HER patients, relative to APP, but am strikingly induced in LRI patients. Most transcripts, such as alkaline phosphatase (ALPL) and the IL8 receptors (IL8RB, CXCR1), were induced in both APP and LRI patients.


Discussion


Currently, there are no FDA-approved serum or urine biomarkers for abdominal pain or appendicitis. As noted earlier, abdominal pain is one of the most common complaints in the ED, and thus blood biomarkers represent an important unmet need in clinical medicine. In this discovery and validation study, we have identified a small set of RNA transcripts associated with appendicitis. Overall, a prediction model built on these markers was able to differentiate appendicitis from other forms of intra-abdominal pathology, such as diverticulitis and hernias. Appendicitis is thought to be an inflammatory disease, similar to diverticulitis or colitis; however, there was differing activation of certain mRNA biomarkers between these conditions. Furthermore, the 37 DEG markers do not correlate with white blood cell count, per se, but a careful examination of the transcripts suggests that the RNA biomarkers may be measuring the activation state of immune cells, especially neutrophils.


The pattern of transcriptome changes in blood may help to refine our understanding of the etiology and progression of acute appendicitis, as shown schematically in FIG. 6. The classic explanation for appendicitis is that a fecalith or lymphoid hyperplasia block the outflow of the appendix, resulting in obstruction and ischemia [28]. Outflow obstruction may produce local changes that favor undesirable changes in the appendix microbiome. Several recent studies, including next-generation sequencing (NGS) of the 16S regions of the microbiome, have suggested that relatively selective changes in fusobacteria species are associated with appendicitis [29-32]. Fusobacteria, a type of gram-negative bacteria, can induce toxicity in adjacent host cells, and colitis-like symptoms in mice, potentially by producing butyric acid (butyrate) [33]. RT-PCR analysis confirms that inflamed appendix tissue has elevated α-defensin and IL-8 mRNA levels [34]. Likewise, Fusobacterium nucleatum biofilms stimulate IL-8 production in human oral epithelium cell lines [35] and Fusobacterium necrophorum induces IL-8 production in cultured mesothelial cells [36].



FIG. 6 shows a schematic of a model of appendicitis biomarker pathophysiology. It is believed that compacted fecal bodies, termed fecaliths, may occlude the outflow tract of the appendix, causing inflammatory conditions that are conducive to infection in the appendix. Microbiome analysis of inflamed appendices typically indicates a predominance of biofilm-forming bacteria, such as fusobacteria. The biofilm protects the bacteria from antibiotics, and from direct immune attack, but soluble factors produced by the bacteria, such as LPS (endotoxins) and butyrate, or IL-8, can diffuse into adjacent lymphatic and circulatory beds to activate neutrophils. The primed neutrophils respond with elevated transcript levels of alkaline phosphatase (ALPL), interleukin-8 receptor beta (IL8RB) and related biomarkers of local infection. Background images of appendix and neutrophil courtesy of Blausen.com staff, Wikiversity Journal of Medicine.


Thus, the absence of elevated α-defensin transcripts in the presence of elevated levels of mRNA for both IL-8 receptors suggests that circulating immune cells are primed by IL-8 produced in the inflamed appendix. However, it seems likely that the immune cells are not directly contacting the bacterial infection, which would elevate defensins, as demonstrated clearly in the LRI patients.


In addition to the IL-8 receptors, several other transcripts appear to be plausible biomarkers of localized inflammation. Notably, ALPL, along with IL8RB/CXCR2, was identified as an expression biomarker of asthma inflammatory subtypes [37]. In addition to these interesting innate immune markers, the results revealed unexpected changes in the ribosomal system. Humans utilize 4 ribosomal RNAs, which are non-coding (5S, 5.8S, 18S, 28S), and ˜80 ribosomal proteins to build multimeric translation complexes. Additionally, there are ˜2000 ribosomal protein pseudogenes, which are thought to derive from inactivated duplications, but may be processed to varying degrees, and could have regulatory functions [38]. Transcripts for 18S and 28S, both originating from multiple 45S genes, were increased in the appendicitis blood RNA, which could be due to both increased transcription from active rDNA genes [39], as well engagement of previously inactive rDNA transcription units [26]. Conversely, most of the coding transcripts, such as RPLP1 and RPS26, were decreased in the blood of appendicitis patients. Because the specific pattern of ribosomal proteins defines the type of RNAs that are engaged and translated [40], it is possible that the translational machinery is being re-geared to adapt to a new demand. Unexpectedly, most of the poorly annotated transcripts mapped to ribosomal protein pseudogenes, suggesting that either the probesets are incorrectly detecting a change in coding ribosomal protein transcripts, or the pseudogenes are somehow regulated in conjunction with the reconfigured translational machinery. Conceptually, the pattern of chemokine, defensin, stress-related, and ribosomal processing changes is consistent with the immune system being ‘primed’ as the immune cells pass through an inflammatory field created by a localized biofilm infection.


Other investigators have sought to develop protein biomarkers for appendicitis in the blood, such as bilirubin [41], C-reactive protein (CRP) [42], and pro-calcitonin (PCT) [43]. However, recent comparisons of these biomarkers had difficulty improving on a purely clinical prediction model, such as the Alvarado score (ROC=0.74, vs CRP=0.61, PCT=0.69) [44]. Recently, a combination of WBC, CRP, and MRP8/14 (S100A8/S100A9) was shown to be 96% sensitive, but 43% specific for acute appendicitis [42]. Likewise, a multivariate model built on plasma protein levels of serum amyloid (SAA), myeloperoxidase (MPO), and MMP9 was less diagnostic than a largely clinical model (ROC=0.71 vs 0.91 clinical model) [45].


While RNA-based diagnostic tests are currently on the market for breast cancer progression (MammaPrint, OncoType Dx), transplant rejection (AlloMap), and coronary artery disease (CorusCAD), this is the first report to assess blood RNA as a potential biomarker of appendicitis. Among the strengths of the present approach is that the test and validation sets included controls for surgical, inflammatory, and infectious factors. Further, the RNA profiling was broad and largely unbiased, and detected the same key pathways in the test and validation study.


Genome-wide RNA transcript profiling is thus demonstrated as being capable of identifying biomarkers of appendicitis. The detected biomarkers are consistent with prior published evidence that fusobacteria biofilms in the appendix may be an important putative mechanism in appendicitis.


By assaying the RNA levels by microarray analysis, alternative methods of assaying RNA levels can be applied in the steps of this invention. Examples of alternative methods including are real-time RT-PCR, real-time PCR, quantitative RT-PCR, qPCR, RT-PCR array, RNA sequencing (RNA-Seq), northern blot, and serial analysis of gene expression (SAGE), measuring protein expression.


Patterns of RNA levels define biomarkers that identify appendicitis. Differential expression of RNA levels of a gene often coincide with differential expression levels of the resultant proteins translated from the RNA. For this reason, measuring the protein expression level patterns that correlate to the identified differentially expressed genes is an alternative method of diagnosing appendicitis. Protein expression levels can be measured from serum samples by a number of means including western blot, enzyme-linked immunosorbent assay (ELISA), mass spectrometry, and other means that utilize antibody detection of proteins. Similar methods of testing as described for the RNA biomarkers can be used by replacing RNA measurement with protein measurement and determining suitable patterns. According to his embodiment, measuring the protein expression level patterns will diagnose appendicitis. In some embodiments, antibodies against specific proteins can be generated and used to measure protein expression levels.


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Example 2: Confirmation of Microarray Results

Quantitative Real Time Polymerase Chain Reaction (Q-RTPCR) was sued to confirm the microarray results from Examples 1 and 2. FIG. 7 shows Q-RTPCR results for 3 genes: ALPL, DEFA1/3 and IL8RB. As seen in FIG. 7, results obtained from Q-RTPCR parallel the results obtained from the microarray assays.


Methods


1) RNA Purification:


1.1) For validation studies, the RNA purified for microarray analysis was used. In new samples, or other embodiments, the sample of blood must be collected in an appropriate RNA stabilizer. In the present studies, Tempus tubes were used. Other stabilizers could be used, but it is possible that the specific transcripts levels of expression or their magnitude, could be different depending upon the RNA Blood tubes used and their RNA stabilizers. From the Tempus tubes, the manufacturer's instruction and reagents for column purification of RNA was used. However, technically, both DNA and RNA are purified.


2) DNAse Treatment:


2.1) To remove the DNA, which will confuse the quantitation of RNA, the sample is treated with Turbo DNA-Free™ Kit (ThermoFisher Sci, Cat. No AM1907). We used up to 5 ug total RNA/DNA treated with 2 units/μL of TurboDNAse for 30 min at 37° C. The inactivation of DNAse was performed using the “Inactivation Reagent” (IR) provided in the kit at 0.2× volume of the total reaction, typically 20 μL of IR for 100 μL of DNase treatment. The IR contains an affinity capture reagent recognizing the TurboDNAse, thereby removing it from solution, and eluting relatively pure RNA. A variety of DNAse removal strategies are well known to anyone skilled in the art. In particular, it is common to heat-inactivate the DNAse. While probably acceptable, it has not been specifically tested, and we cannot exclude the possibility that this would be a source of variation (SOV).


2.2) The DNase treated RNA is further purified in Qiagen RNAeasy MiniElute kit (Qiagen, Cat. No. 74204) on columns The RNA quantity is assessed by absorbance at 260 nm (NanoDrop) and the quality is assessed by the ratio of absorbance at 260 nm (RNA) to 280 nm (protein). A ratio (260/280) greater than 1.8 is desirable if measured in water, and greater than 2.0 if measured in water buffered with Tris/EDTA (TE).


3) Complementary DNA (cDNA) Synthesis:


3.1) The purified RNA was converted to cDNA using reverse transcriptase (RT) contained in the iScript cDNA Synthesis kit from Bio-Rad Laboratories (Cat. No. 170-8891). There are published reasons to believe that the type of RT enzyme could affect the efficiency of cDNA synthesis, and therefore, the measured levels of specific transcripts by qRT-PCR. In particular, the presence or absence of the RNAse H activity in the RT enzyme might be a relevant SOV. The iScript cDNA kit reverse transcriptase contains RNase H enzymes for degradation of RNA template in the amplification process.


4) PCR Probe Selection:


4.1) Sense and antisense probes for PCR were selected using the cDNA sequences extracted from Genbank accession numbers disclosed in Table 1. The cDNA sequences were analyzed by Geneious software to identify primers with matching melting temperatures (Tm) of 60° C. under standard RT-PCR conditions. The primers identified and used are shown in Table 1.


4.2) In this example, 6 transcripts were targeted for qRT-PCR quantitation. Four of these transcripts (ALPL, DEFA1, DEFA3, IL8RB) were selected from the 16 g and 37 g lists of DEGs that are diagnostic of appendicitis. Two other transcripts, ACTB and SpiB, were used as transcripts which should not vary according to appendicitis status, and thus are considered ‘invariant’ for this example.


4.3) For each transcript-specific reaction, additional samples are prepared in which the pooled control cDNA (Con) is used at higher, and lower quantities, typically in 10-fold steps, to create a standard dose-response curve for each primer pair. This curve confirms that the qPCR is able to detect higher and lower transcript levels, and is used to convert the Ct to a relative abundance measure as described below.


5) qRT-PCR Conditions:


5.1) A standard amount of cDNA (0.20-0.25 ng) from the patient samples, or a pooled control sample (Con), was combined with a fixed amount of the transcript-specific primer pairs (1.25 μM) and a master mix SSOAdvanced™ Universal SYBR® Green Supermix (Bio-Rad, Cat. No.: 172-5274) containing a mix of antibody-mediated hot-start Sso7d fusion polymerase, dNTPs, MgCl2, enhancers, stabilizers, a blend of passive reference dyes (including ROX and fluorescein) and SYBR Green fluorescent dye, which reports the level of PCR amplimer that is present after each amplification cycle. There are numerous acceptable ways to quantitate PCR amplimer levels, including, but not limited to, SYBR Green, EVA green, and fluorescently-labeled internal probes commonly referred to TaqMan probes. Another envisioned embodiment of the invention would be to quantitate the transcript levels using droplet digital PCR (ddPCR, BioRad) or hybrid-based transcript counting methods, such as Nanostring.


In this example, we employed the BioRad SSOAdvanced kit reagents. Each transcript-specific primer pair and sample, cDNA was analyzed in a separate well of a 384-well plate in duplicate for each primer pair. Thus, for a given patient sample, 12 qPCR reactions were performed (6 primer pairs, each in duplicate). The mixture containing probes, cDNA sample, and PCR reagents, including fluorescent dye, in a final volume of 14 μl, were loaded using the automatic liquid handler (Eppendorf epMotion® 5770) subjected to thermocycling as described below.


5.2) The mixture of these reagents was incubated in a BioRad CFX384™ Real-Time System with C1000™ thermocycler using a temperature program of: 2 min at 98° C., followed by 45 amplification cycles of 5 sec at 98° C., and 10 sec @ 60° C., finalized with 10 see @ 75° C. and 4 sec @ 95° C. dissociation stage. After each cycle, the level of fluorescence of the SYBR Green dye bound to dsDNA amplimers was quantified by stimulation with appropriate filters for excitation and emission. The reaction was cycled 40 times and then held at 4° C. after the last cycle.


6) Data Analysis:


6.1) The real-time quantitative PCR instruments measure fluorescence generated by the amplimer/dye complex after each cycle of amplification. Because the amounts of primers and free nucleic acids are limiting, these reaction reach a saturated maximum of fluorescence typically prior to 40 cycles of amplification. The number of cycles observed to reach half-maximal fluorescent intensity is said to be a Cycle Threshold (Ct) of Cycle Quantity (Cq) which is inversely correlated to the amount of transcript cDNA in the reaction. Thus, the higher the level of target cDNA present, the fewer cycles will be needed to reach a given Ct. In practice, there are numerous acceptable methods to stipulate the Ct based on the fluorescence curve, and as long as the Ct is applied uniformly to the samples in each transcript-specific reaction, including the Con samples, then the results should be informative for the present purposes.


6.2) The Ct values for each reaction are converted to a relative abundance (RA) of the transcript by interpolation to the standard curve for each primer pair. That RA level per duplicate PCR tube is then averaged for the 2 duplicates, and then adjusted by the abundance of the ‘invariant’ transcript levels. A very large number of invariant transcripts would be acceptable, and some that are commonly used by those skilled in the art include: glyceraldehyde 3-phosphate dehydrogenase (GAPDH), ß-actin (ACTB), hypozanthine phosphoribosyltransferase 1 (HPRT), and 18S ribosomal RNA. In the present invention, it was empirically determined that ACTB provided efficient normalization, but the invention is not constrained by the method of normalization.


6.3) The RA levels of the 4 diagnostic transcripts were combined in the following way to predict the outcome of appendicitis:


6.3.1) To account for arbitrary nature of RA value, it was normalized to a percentile of the mean value in the entire run of 36 samples, yielding a % RA value, where 1.00 would be equal to the mean value of that transcript target.


6.3.2) Using the % RA value, the diagnostic goal is to determine whether the ALPL and IL8RB levels are increased disproportionately to the DEFA1 levels. In principle, DEFA3 levels could be used, or a combination of DEFA1 and DEFA3 levels, but for simplicity DEFA1 levels were found to be adequate. Thus, the ratio of % RA of ALPL (% ALPL) to % RA of DEFA1 (% DEFA1), and the ratio of % RA of IL8RB (% IL8RB) to % DEFA1 were computed to yield % ALPL/% DEFA1 and % IL8RB/% DEFA1. Those two values were averaged to compute the App Score. In this series of 36 patient samples, the App Score had a range of 0.04-44.7.


Thus, to summarize,





App Score=[(% ALPL/% DEFA1)+(% IL8RB/% DEFA1)]/2





Another construction is App Score=[(% ALPL+% IL8RB)/2]/% DEFA1


6.3.3) On both logical grounds, and empirical observation, if the App Score is >1 then the normalized ALPL and IL8RB levels are higher than DEFA1 levels and this is taken as diagnostic of an increased likelihood of appendicitis. In actual practice, there would be numerous mathematical and technical means to arrive at a similar assessment of the relative levels of these predictive transcripts identified in the 16 g or 37 g lists.


6.3.4) To test the diagnostic ability of the App Score, it was converted to a scale of 1-10 which is a common metric range used in the Receiver-Operator Characteristic (ROC) statistic. The conversion from App Score to App Level (1-10) was achieved with the following conversion table:









TABLE 6







Conversion Table for converting App Score to App Level










Coding Key




App Score
App Level














<0.2
1



<0.4
2



<0.6
3



<0.8
4



<1.0
5



<2
6



<4
7



<8
8



<16
9



>16
10










As discussed above, a predictive test was built taking the data from FIG. 7. A very simple way to predict Appendicitis (Appy) using only 3 gene transcripts (IL8RB, DEFA1, ALPL) and one control transcript (Actin) was developed. FIG. 8 shows a graph of the ROC curve with sensitivity and specificity. In practice, the test gives a score from 1 to 10, where 5-6 is about a 50% risk of Appy, and a score above 7 indicates likely Appy.


The true presence or absence of appendicitis was known from clinical analysis and was scored as a binary variable where 0=absent, 1=appendicitis. Five of the 36 patients were excluded from analysis because they had a clinical diagnoses of lower respiratory infection, which is unrelated to the present invention. An App Score>1, which is an App Level of 6 or greater, was used as a threshold for predicted appendicitis. The predicted outcome (App Level) and the true outcome were used to compute a ‘confusion table’ and an ROC curve by the method of John Eng: (JROCFIT: Johns Hopkins University, Baltimore, Md. Version 1.0.2, March 2004. URL: http://www.rad.ihmi.edu/jeng/javarad/roc/JROCFITi.html).


The results are shown in FIG. 8, and indicate that overall the accuracy was 80.6%, with 94.4% sensitivity in detecting clinically diagnosed appendicitis.


Example 3: Prediction of Appendicitis from Blood and Urine Samples

Blood and urine samples were collected from emergency department patients with abdominal pain.


Analyte concentrations in plasma and urine samples were measured by immunoassay with commercially available reagents using standard sandwich enzyme immunoassay techniques. A first antibody which binds the analyte is immobilized in wells of a 96 well polystyrene microplate. Analyte standards and test samples are pipetted into the appropriate wells and any analyte present is bound by the immobilized antibody. After washing away any unbound substances, a biotinylated second antibody which binds the analyte is added to the wells, thereby forming sandwich complexes with the analyte (if present) and the first antibody. Following a wash to remove any unbound biotinylated antibody reagent, streptavidin-conjugated horseradish peroxidase is added to the wells. Following another wash, a substrate solution comprising tetramethylbenzidine and hydrogen peroxide is added to the wells. Color develops in proportion to the amount of analyte present in the sample. The color development is stopped and the intensity of the color is measured at 450 nm and 540 nm or 570 nm. An analyte concentration is assigned to the test sample by comparison to a standard curve determined from the analyte standards. Units for all analytes reported herein are ng/mL.


Patients with abdominal pain were determined to have appendicitis (Appy) or not have appendicitis (ABD) by physician diagnosis based in part on a computerized tomography (CT) scan. Protein concentrations in the “Appy” and “ABD” cohorts are compared using the Wilcoxon-Mann-Whitney test. The ability of a protein biomarker to distinguish between the “Appy” and “ABD” patients is determined using receiver operating characteristic (ROC) analysis.









TABLE 7.1







Protein Concentrations in Plasma. P-values for Wilcoxon-Mann-Whitney test are reported.














ALPL
CA4
DEFA1
DEFA3
FCGR3B
LILRA3




















ABD
Appy
ABD
Appy
ABD
Appy
ABD
Appy
ABD
Appy
ABD
Appy























5th
99.5
87.9
8.5
5.9
7.7
8.3
5.6
6.5
0.00
0.00
0.00
0.00


percentile


25th
114.7
116.9
14.5
11.0
9.1
9.5
7.5
6.8
0.00
0.00
0.00
0.00


percentile


Median
171.2
146.1
27.5
21.0
12.2
11.4
9.1
7.1
0.00
0.00
0.53
0.00


75th
240.5
176.8
59.4
27.1
16.2
13.6
13.2
8.4
0.44
0.34
1.76
0.93


percentile


95th
548.4
471.6
109.5
108.1
22.9
100.4
59.1
11.1
3.49
2.43
3.78
2.75


percentile













P
0.270
0.180
0.606
0.018
0.803
0.205
















TABLE 7.2







Protein Concentrations in Urine. P-values for Wilcoxon-Mann-Whitney test are reported.














ALPL
CA4
DEFA1
DEFA3
FCGR3B
LILRA3




















ABD
Appy
ABD
Appy
ABD
Appy
ABD
Appy
ABD
Appy
ABD
Appy























5th
0.0
0.0
0.00
0.00
0.0
1.7
0.0
0.0
0.00
0.00
0.00
0.00


percentile


25th
0.3
0.0
0.00
0.00
2.9
4.8
0.4
0.0
0.00
0.00
0.00
0.00


percentile


Median
2.6
1.9
0.00
0.00
10.8
10.6
1.1
0.3
0.02
0.00
0.00
0.00


75th
7.7
4.5
0.30
0.52
33.2
13.4
3.9
1.0
2.69
0.08
0.35
0.00


percentile


95th
63.4
7.9
1.31
0.70
809.1
24.9
25.9
2.4
25.82
0.39
3.34
0.37


percentile













P
0.047
0.295
0.065
0.034
0.230
0.691
















TABLE 8.1







Area under the receiver operating characteristic curve (AUC)


of proteins in plasma. An AUC < 0.5 indicates protein


concentrations are generally lower in patients with appendicitis.


P-values for the null hypothesis of AUC = 0.5 are reported.

















ABD (no




Assay
Uniprot #
AUC
SE
appendicitis)
Appendicitis
p





DEFA3
P59666
0.291
0.095
45
11
0.027


CA4
P22748
0.369
0.099
45
11
0.183


LILRA3
Q8N6C8
0.376
0.099
45
11
0.209


ALPL
P05186
0.396
0.099
45
11
0.295


DEFA1
P59665
0.462
0.099
45
11
0.698


FCGR3B
O75015
0.492
0.098
45
11
0.934
















TABLE 8.2







Area under the receiver operating characteristic curve (AUC)


of proteins in urine. An AUC < 0.5 indicates protein


concentrations are generally lower in patients with appendicitis.


P-values for the null hypothesis of AUC = 0.5 are reported.

















ABD (no




Assay
Uniprot #
AUC
SE
appendicitis)
Appendicitis
P





DEFA3
P59666
0.293
0.095
45
11
0.029


ALPL
P05186
0.307
0.096
45
11
0.044


DEFA1
P59665
0.319
0.097
45
11
0.061


FCGR3B
O75015
0.393
0.099
45
11
0.281


CA4
P22748
0.404
0.099
45
11
0.334


LILRA3
Q8N6C8
0.534
0.099
45
11
0.729
















TABLE 9.1







Confusion table and odds ratio for appendicitis using


plasma DEFA3. A cutoff concentration of 122 ng/mL


is selected corresponding to the 33rd percentile.










Adjudication













DEFA3
ABD
Appy
Total
















<=cutoff
11
8
19



>cutoff
34
3
37



Total
45
11
56










Odds ratio (95% CI)=8.2 (1.9-34.2), where Odds ratio=Odds below cutoff/Odds above cutoff.









TABLE 9.2







Confusion table and odds ratio for appendicitis using


urine ALPL. A cutoff concentration of 2.47 ng/mL is


selected corresponding to the 50th percentile.










Adjudication













ALPL
ABD
Appy
Total
















<=cutoff
19
9
28



>cutoff
26
2
28



Total
45
11
56










Odds ratio (95% CI)=6.2 (1.3-28.3), where Odds ratio=Odds below cutoff/Odds above cutoff.









TABLE 9.3







Confusion table and odds ratio for appendicitis using


urine DEFA1. A cutoff concentration of 10.85 ng/mL


is selected corresponding to the 50th percentile.










Adjudication













DEFA1
ABD
Appy
Total
















<=cutoff
19
9
28



>cutoff
26
2
28



Total
45
11
56










Odds ratio (95% CI)=6.2 (1.3-28.3), where Odds ratio=Odds below cutoff/Odds above cutoff.









TABLE 9.4







Confusion table and odds ratio for appendicitis using


urine DEFA3. A cutoff concentration of 0.33 ng/mL


is selected corresponding to the 25th percentile.










Adjudication













DEFA3
ABD
Appy
Total
















<=cutoff
8
7
15



>cutoff
37
4
41



Total
45
11
56










Odds ratio (95% CI)=8.1 (2.0-33.1), where Odds ratio=Odds below cutoff/Odds above cutoff.


The individual biomarker assay results obtained from each sample were combined to provide a single result as indicated herein, and the single result treated as an individual biomarker using standard statistical methods. In expressing these combinations, the arithmetic operators such as “x” (multiplication) and “/” (division) are used in their ordinary mathematical sense.









TABLE 10.1







AUC of combinations of 2 plasma proteins. An AUC < 0.5 indicates


protein concentrations are generally lower in patients with appendicitis.


P-values for the null hypothesis of AUC = 0.5 are reported.












2-Marker







Combination
AUC
SE
ND
D
p















ALPL × DEFA3
0.285
0.094
45
11
0.0224


DEFA3 × LILRA3
0.285
0.094
45
11
0.0224


CA4 × DBFA3
0.319
0.097
45
11
0.0612


CA4 × LILRA3
0.323
0.097
45
11
0.0678


ALPL × CA4
0.331
0.097
45
11
0.0827
















TABLE 10.2







AUC of combinations of 2 urine proteins. An AUC < 0.5 indicates


protein concentrations are generally lower in patients with appendicitis.


P-values for the null hypothesis of AUC = 0.5 are reported.












2-Marker







Combination
AUC
SE
ND
D
p















ALPL × DEFA1
0.271
0.093
45
11
0.0137


ALPL × FCGR3B
0.281
0.094
45
11
0.0195


DEFA1 × DEFA3
0.281
0.094
45
11
0.0195


ALPL × DEFA3
0.288
0.094
45
11
0.0247


CA4 × DEFA1
0.293
0.095
45
11
0.0290


CA4 × DEFA3
0.294
0.095
45
11
0.0299


LILRA3/DEFA3
0.705
0.095
45
11
0.0309


LILRA3/ALPL
0.701
0.095
45
11
0.0349


DEFA3 × FCGR3B
0.307
0.096
45
11
0.0441


ALPL × CA4
0.308
0.096
45
11
0.0453


CA4 × FCGR3B
0.323
0.097
45
11
0.0678
















TABLE 10.3







AUC of combinations of 1 urine (u) and 1 plasma (p) protein.


An AUC < 0.5 indicates protein concentrations are


generally lower in patients with appendicitis. P-values


for the null hypothesis of AUC = 0.5 are reported.












2-Marker Combination
AUC
SE
ND
D
p















DEFA1(u) × LILRA3(p)
0.246
0.091
45
11
0.0051


DEFA1(u) × CA4(p)
0.271
0.093
45
11
0.0137


ALPL(u) × DEFA3(p)
0.277
0.094
45
11
0.0170


DEFA3(u) × DEFA3(p)
0.279
0.094
45
11
0.0182


DEFA3(u) × LILRA3(p)
0.280
0.094
45
11
0.0189


DEFA1(u) × DEFA3(p)
0.289
0.095
45
11
0.0255


DEFA3(u) × ALPL(p)
0.291
0.095
45
11
0.0272


DEFA3(u) × CA4(p)
0.299
0.095
45
11
0.0349


DEFA1(u) × ALPL(p)
0.299
0.095
45
11
0.0349


FCGR3B(u) × DEFA3(p)
0.309
0.096
45
11
0.0466


ALPL(u) × LILRA3(p)
0.310
0.096
45
11
0.0479


FCGR3B(u) × LILRA3(p)
0.316
0.096
45
11
0.0565


ALPL(u) × ALPL(p)
0.317
0.096
45
11
0.0580


DEFA1(u) × DEFA1(p)
0.333
0.097
45
11
0.0868


DEFA3(u) × DEFA1(p)
0.333
0.097
45
11
0.0868


LILRA3(u)/LILRA3(p)
0.666
0.097
45
11
0.0889


ALPL(u) × CA4(p)
0.335
0.097
45
11
0.0910


DEFA3(u) × FCGR3B(p)
0.335
0.097
45
11
0.0910
















TABLE 10.4







AUC of combinations of 3 plasma proteins. An AUC < 0.5 indicates


protein concentrations are generally lower in patients with appendicitis.


P-values for the null hypothesis of AUC = 0.5 are reported.












3-Marker Combination
AUC
SE
ND
D
p















ALPL × CA4 × DEFA3
0.287
0.094
45
11
0.0239


ALPL × DEFA3 × LILRA3
0.291
0.095
45
11
0.0272


CA4 × DEFA3 × LILRA3
0.303
0.096
45
11
0.0393


ALPL × CA4 × LILRA3
0.319
0.097
45
11
0.0612


DEFA1 × DEFA3 × LILRA3
0.323
0.097
45
11
0.0678


ALPL × CA4 × DEFA1
0.331
0.097
45
11
0.0827


CA4 × DEFA1 × LILRA3
0.331
0.097
45
11
0.0827


DEFA3 × FCGR3B × LILRA3
0.331
0.097
45
11
0.0827


CA4 × DEFA1 × DEFA3
0.335
0.097
45
11
0.0910
















TABLE 10.5







AUC of combinations of 3 urine proteins. An AUC < 0.5 indicates


protein concentrations are generally lower in patients with appendicitis.


P-values for the null hypothesis of AUC = 0.5 are reported.












3-Marker Combination
AUC
SE
ND
D
P















ALPL × CA4 × DEFA1
0.257
0.092
45
11
0.0079


CA4 × DEFA1 × DEFA3
0.257
0.092
45
11
0.0079


LILRA3/(CA4 × DEFA3)
0.736
0.092
45
11
0.0105


LILRA3/(ALPL × DEFA3)
0.735
0.092
45
11
0.0109


LILRA3/(ALPL × FCGR3B)
0.732
0.093
45
11
0.0122


ALPL × DEFA1 × DEFA3
0.273
0.093
45
11
0.0147


ALPL × CA4 × DEFA3
0.274
0.093
45
11
0.0153


ALPL × DEFA1 × FCGR3B
0.275
0.093
45
11
0.0158


ALPL × DEFA3 × FCGR3B
0.279
0.094
45
11
0.0182


LILRA3/(DEFA1 × DEFA3)
0.721
0.094
45
11
0.0182


CA4 × DEFA1 × FCGR3B
0.285
0.094
45
11
0.0224


ALPL × CA4 × FCGR3B
0.287
0.094
45
11
0.0239


CA4 × DEFA3 × FCGR3B
0.292
0.095
45
11
0.0281


LILRA3/(ALPL × CA4)
0.707
0.095
45
11
0.0290


LILRA3/(DEFA3 × FCGR3B)
0.705
0.095
45
11
0.0309


LILRA3/(ALPL × DEFA1)
0.703
0.095
45
11
0.0328


DEFA1 × DEFA3 × FCGR3B
0.299
0.095
45
11
0.0349


LILRA3/(CA4 × FCGR3B)
0.690
0.096
45
11
0.0479


LILRA3/(DEFA1 × FCGR3B)
0.683
0.096
45
11
0.0580


LILRA3/(CA4 × DEFA1)
0.679
0.097
45
11
0.0644
















TABLE 10.6







AUC of combinations of 3 proteins with at least 1 urine (u) and at least 1 plasma (p)


protein. An AUC < 0.5 indicates protein concentrations are generally lower in


patients with appendicitis. P-values for the null hypothesis of AUC = 0.5 are reported.












3-Marker Combination
AUC
SE
ND
D
p















DEFA1(u) × DEFA3(p) × LILRA3(p)
0.224
0.088
45
11
0.0017


DEFA1(u) × DEFA3(u) × LILRA3(p)
0.246
0.091
45
11
0.0051


DEFA1(u) × CA4(p) × DEFA3(p)
0.246
0.091
45
11
0.0051


DEFA1(u) × CA4(p) × LILRA3(p)
0.246
0.091
45
11
0.0051


DEFA1(u) × DEFA3(u) × CA4(p)
0.253
0.091
45
11
0.0067


CA4(u) × DEFA1(u) × LILRA3(p)
0.255
0.091
45
11
0.0073


DEFA1(u) × ALPL(p) × CA4(p)
0.255
0.091
45
11
0.0073


DEFA1(u) × ALPL(p) × LILRA3(p)
0.255
0.091
45
11
0.0073


CA4(u) × DEFA3(u) × LILRA3(p)
0.261
0.092
45
11
0.0093


DEFA1(u) × DEFA3(u) × ALPL(p)
0.261
0.092
45
11
0.0093


DEFA3(u) × ALPL(p) × DEFA3(p)
0.261
0.092
45
11
0.0093


ALPL(u) × DEFA1(u) × DEFA3(p)
0.263
0.092
45
11
0.0101


ALPL(u) × DEFA1(u) × LILRA3(p)
0.265
0.092
45
11
0.0109


DEFA1(u) × DEFA3(u) × DEFA3(p)
0.265
0.092
45
11
0.0109


DEFA1(u) × CA4(p) × DEFA1(p)
0.265
0.092
45
11
0.0109


ALPL(u) × FCGR3B(u) × DEFA3(p)
0.267
0.093
45
11
0.0118


DEFA1(u) × FCGR3B(u) × LILRA3(p)
0.267
0.093
45
11
0.0118


DEFA3(u) × DEFA3(p) × LILRA3(p)
0.269
0.093
45
11
0.0127


ALPL(u) × DEFA1(u) × CA4(p)
0.271
0.093
45
11
0.0137


ALPL(u) × DEFA3(u) × DEFA3(p)
0.273
0.093
45
11
0.0147


DEFA1(u) × ALPL(p) × DEFA3(p)
0.273
0.093
45
11
0.0147


ALPL(u) × FCGR3B(u) × LILRA3(p)
0.275
0.093
45
11
0.0158


CA4(u) × DEFA1(u) × CA4(p)
0.275
0.093
45
11
0.0158


ALPL(u) × FCGR3B(u) × CA4(p)
0.277
0.094
45
11
0.0170


DEFA1(u) × DEFA1(p) × LILRA3(p)
0.277
0.094
45
11
0.0170


DEFA3(u) × ALPL(p) × CA4(p)
0.277
0.094
45
11
0.0170


DEFA3(u) × CA4(p) × DEFA3(p)
0.277
0.094
45
11
0.0170


DEFA1(u) × DEFA3(u) × DEFA1(p)
0.279
0.094
45
11
0.0182


DEFA3(u) × ALPL(p) × LILRA3(p)
0.279
0.094
45
11
0.0182


ALPL(u) × DEFA1(u) × ALPL(p)
0.281
0.094
45
11
0.0195


CA4(u) × DEFA1(u) × DEFA3(p)
0.281
0.094
45
11
0.0195


ALPL(u) × FCGR3B(u) × ALPL(p)
0.283
0.094
45
11
0.0209


CA4(u) × DEFA3(u) × DEFA3(p)
0.283
0.094
45
11
0.0209


FCGR3B(u) × DEFA3(p) × LILRA3(p)
0.283
0.094
45
11
0.0209


ALPL(u) × DEFA1(u) × DEFA1(p)
0.285
0.094
45
11
0.0224


ALPL(u) × DEFA3(p) × LILRA3(p)
0.285
0.094
45
11
0.0224


CA4(u) × DEFA3(u) × CA4(p)
0.289
0.095
45
11
0.0255


ALPL(u) × CA4(p) × DEFA3(p)
0.291
0.095
45
11
0.0272


DEFA3(u) × CA4(p) × LILRA3(p)
0.291
0.095
45
11
0.0272


ALPL(u) × ALPL(p) × DEFA3(p)
0.293
0.095
45
11
0.0290


CA4(u) × DEFA1(u) × ALPL(p)
0.293
0.095
45
11
0.0290


CA4(u) × FCGR3B(u) × LILRA3(p)
0.294
0.095
45
11
0.0299


ALPL(u) × CA4(u) × DEFA3(p)
0.295
0.095
45
11
0.0309


ALPL(u) × DEFA3(u) × LILRA3(p)
0.295
0.095
45
11
0.0309


DEFA3(u) × FCGR3B(u) × LILRA3(p)
0.295
0.095
45
11
0.0309


ALPL(u) × FCGR3B(u) × DEFA1(p)
0.299
0.095
45
11
0.0349


ALPL(u) × CA4(u) × CA4(p)
0.301
0.095
45
11
0.0370


ALPL(u) × DEFA3(u) × ALPL(p)
0.301
0.095
45
11
0.0370


CA4(u) × DEFA3(u) × ALPL(p)
0.301
0.095
45
11
0.0370


CA4(u) × FCGR3B(u) × DEFA3(p)
0.301
0.095
45
11
0.0370


DEFA1(u) × DEFA1(p) × DEFA3(p)
0.301
0.095
45
11
0.0370


DEFA3(u) × FCGR3B(u) × DEFA3(p)
0.301
0.095
45
11
0.0370


DEFA3(u) × CA4(p) × DEFA1(p)
0.301
0.095
45
11
0.0370


DEFA3(u) × DEFA1(p) × LILRA3(p)
0.301
0.095
45
11
0.0370


DEFA1(u) × FCGR3B(u) × CA4(p)
0.305
0.096
45
11
0.0416


DEFA3(u) × FCGR3B(u) × ALPL(p)
0.305
0.096
45
11
0.0416


DEFA3(u) × DEFA1(p) × DEFA3(p)
0.305
0.096
45
11
0.0416


DEFA3(u) × FCGR3B(p) × LILRA3(p)
0.306
0.096
45
11
0.0428


ALPL(u) × CA4(u) × LILRA3(p)
0.307
0.096
45
11
0.0441


CA4(u) × DEFA3(p) × LILRA3(p)
0.307
0.096
45
11
0.0441


ALPL(u) × DEFA3(u) × CA4(p)
0.309
0.096
45
11
0.0466


ALPL(u) × ALPL(p) × LILRA3(p)
0.309
0.096
45
11
0.0466


DEFA3(u) × FCGR3B(u) × CA4(p)
0.309
0.096
45
11
0.0466


ALPL(u) × CA4(p) × LILRA3(p)
0.311
0.096
45
11
0.0493


DEFA3(u) × ALPL(p) × DEFA1(p)
0.311
0.096
45
11
0.0493


FCGR3B(u) × ALPL(p) × LILRA3(p)
0.311
0.096
45
11
0.0493


ALPL(u) × CA4(u) × ALPL(p)
0.313
0.096
45
11
0.0521


DEFA3(u) × FCGR3B(u) × DEFA1(p)
0.313
0.096
45
11
0.0521


ALPL(u) × DEFA1(u) × FCGR3B(p)
0.315
0.096
45
11
0.0550


DEFA1(u) × FCGR3B(p) × LILRA3(p)
0.315
0.096
45
11
0.0550


FCGR3B(u) × DEFA1(p) × LILRA3(p)
0.315
0.096
45
11
0.0550


FCGR3B(u) × ALPL(p) × DEFA3(p)
0.315
0.096
45
11
0.0550


CA4(u) × DEFA3(u) × DEFA1(p)
0.317
0.096
45
11
0.0580


DEFA1(u) × ALPL(p) × DEFA1(p)
0.317
0.096
45
11
0.0580


ALPL(u) × ALPL(p) × CA4(p)
0.319
0.097
45
11
0.0612


DEFA1(u) × DEFA3(u) × FCGR3B(p)
0.319
0.097
45
11
0.0612


FCGR3B(u) × CA4(p) × LILRA3(p)
0.319
0.097
45
11
0.0612


LILRA3(u)/(DEFA1(p) × LILRA3(p))
0.681
0.097
45
11
0.0612


ALPL(u) × FCGR3B(p) × LILRA3(p)
0.321
0.097
45
11
0.0644


CA4(u) × CA4(p) × LILRA3(p)
0.323
0.097
45
11
0.0678


DEFA1(u) × FCGR3B(u) × ALPL(p)
0.323
0.097
45
11
0.0678


FCGR3B(u) × CA4(p) × DEFA3(p)
0.323
0.097
45
11
0.0678


DEFA3(u) × CA4(p) × FCGR3B(p)
0.325
0.097
45
11
0.0714


ALPL(u) × FCGR3B(u) × FCGR3B(p)
0.326
0.097
45
11
0.0732


ALPL(u) × DEFA1(p) × LILRA3(p)
0.327
0.097
45
11
0.0750


DEFA1(u) × FCGR3B(u) × DEFA3(p)
0.327
0.097
45
11
0.0750


ALPL(u) × DEFA1(p) × DEFA3(p)
0.329
0.097
45
11
0.0788


CA4(u) × DEFA1(u) × DEFA1(p)
0.329
0.097
45
11
0.0788


CA4(u) × FCGR3B(u) × CA4(p)
0.329
0.097
45
11
0.0788


CA4(u) × DEFA3(u) × FCGR3B(p)
0.332
0.097
45
11
0.0848


ALPL(u) × DEFA3(u) × DEFA1(p)
0.333
0.097
45
11
0.0868


DEFA1(u) × DEFA3(p) × FCGR3B(p)
0.333
0.097
45
11
0.0868


ALPL(u) × CA4(u) × DEFA1(p)
0.335
0.097
45
11
0.0910


DEFA3(u) × DEFA3(p) × FCGR3B(p)
0.335
0.097
45
11
0.0910


ALPL(u) × CA4(p) × DEFA1(p)
0.337
0.098
45
11
0.0954


ALPL(u) × DEFA3(p) × FCGR3B(p)
0.337
0.098
45
11
0.0954


CA4(u) × FCGR3B(u) × ALPL(p)
0.337
0.098
45
11
0.0954


DEFA1(u) × CA4(p) × FCGR3B(p)
0.337
0.098
45
11
0.0954


FCGR3B(u) × ALPL(p) × CA4(p)
0.337
0.098
45
11
0.0954


ALPL(u) × DEFA3(u) × FCGR3B(p)
0.338
0.098
45
11
0.0976


ALPL(u) × ALPL(p) × DEFA1(p)
0.339
0.098
45
11
0.0999


FCGR3B(u) × DEFA1(p) × DEFA3(p)
0.339
0.098
45
11
0.0999
















TABLE 11.1







Confusion table and odds ratio for appendicitis using plasma


protein combination ALPL × DEFA3. A cutoff concentration of 1526


(ng/mL)2 is selected corresponding to the 50th percentile.










Adjudication













ALPL × DEFA3
ABD
Appy
Total
















<=cutoff
18
10
28



>cutoff
27
1
28



Total
45
11
56










Odds ratio (95% CI)=15.0 (2.2-98.3), where Odds ratio=Odds below cutoff/Odds above cutoff.









TABLE 11.2







Confusion table and odds ratio for appendicitis using urine protein


combination ALPL × DEFA1. A cutoff concentration of 50.7


(ng/mL)2 is selected corresponding to the 60th percentile.










Adjudication













ALPL × DEFA1
ABD
Appy
Total
















<=cutoff
24
10
34



>cutoff
21
1
22



Total
45
11
56










Odds ratio (95% CI)=8.8 (1.3-57.2), where Odds ratio=Odds below cutoff/Odds above cutoff.









TABLE 11.3







Confusion table and odds ratio for appendicitis using DEFA1(u)


× DEFA3(p) × LILRA3(p). A cutoff concentration of 3.97


(ng/mL)3 is selected corresponding to the 50th percentile.










Adjudication











DEFA1(u) × DEFA3(p) × LILRA3(p)
ABD
Appy
Total













<=cutoff
19
9
28


>cutoff
26
2
28


Total
45
11
56









Odds ratio (95% CI)=6.2 (1.3-28.3), where Odds ratio=Odds below cutoff/Odds above cutoff.


The embodiments illustrated and discussed in this specification are intended only to teach those skilled in the art how to make and use the invention. In describing embodiments of the invention, specific terminology is employed for the sake of clarity. However, the invention is not intended to be limited to the specific terminology so selected. The above-described embodiments of the invention may be modified or varied, without departing from the invention, as appreciated by those skilled in the art in light of the above teachings. It is therefore to be understood that, within the scope of the claims and their equivalents, the invention may be practiced otherwise than as specifically described.

Claims
  • 1. A method of diagnosing appendicitis in a subject, or assigning a likelihood of a future outcome to a subject diagnosed with appendicitis, comprising: performing one or more assays configured to detect one or more biomarkers selected from the group consisting of Chemokine C-X-C receptor 1, Interleukin 8 receptor β, Fc frag of IgG receptor IIIb (CD16b), MHC class II DR beta 5, Leukocyte IgG-like receptor A3, Defensin alpha 1, Defensin alpha 1B, Defensin alpha 3, 18S ribosomal RNA, CDC14A, 28S ribosomal RNA, 60S acidic ribosomal protein P1, 40S ribosomal protein S26, Ribosomal protein L23, Ribosomal protein L37a, Ribosomal protein S28, Alkaline phosphatase, Carbonic anhydrase IV, Neuroblastoma breakpoint family 10, Ninjurin 1, Prokineticin 2, Superoxide dismutase 2, LOC100129902, LOC100131205, LOC100131905, LOC100132291, LOC100132394, LOC100132742, LOC100134364, LOC391370, LOC646785, LOC644191 and C5orf32 on a body fluid sample obtained from the subject to provide one or more assay result(s); andcorrelating the assay result(s) to the occurrence or nonoccurrence of appendicitis in the subject or likelihood of the future outcome to the subject.
  • 2. A method according to claim 1, wherein the performing step comprises introducing the body fluid sample obtained from the subject into an assay instrument which (i) contacts the body fluid sample with one or more binding reagents corresponding to the biomarker(s) being assayed, wherein each biomarker which is assayed binds to its respective specific binding reagent in an amount related to its concentration in the body fluid sample, (ii) generates one or more assay results indicative of binding of each biomarker which is assayed to its respective specific binding reagent; and (iii) displays the one or more assay results as a quantitative result in a human-readable form.
  • 3. A method according to claim 2, wherein the specific binding reagent is an antibody.
  • 4. A method according to claim 1, wherein the one or more assays are sandwich assays.
  • 5. A method according to claim 1, wherein the correlating step comprises comparing the assay result(s) or a value derived therefrom to a threshold selected in a population study to separate the population into a first subpopulation at higher predisposition for the occurrence of appendicitis or the future outcome, and a second subpopulation at lower predisposition for the occurrence of appendicitis or the future outcome relative to the first subpopulation.
  • 6. A method according to claim 1, further comprising treating the subject based on the predetermined subpopulation of individuals to which the patient is assigned, wherein if the patient is in the first subpopulation, the treatment comprises treating the subject for appendicitis or the future outcome.
  • 7. A method according to claim 1, wherein the future outcome is mortality.
  • 8. A method according to claim 1, wherein the subject is being evaluated for abdominal pain.
  • 9. A method according to claim 1, wherein the correlating step comprises determining the concentration of each biomarker which is assayed, and individually comparing each biomarker concentration to a corresponding threshold level for that biomarker.
  • 10. A method according to claim 1, wherein the assay instrument comprises a processing system configured to perform the correlating step and output the assay result(s) or a value derived therefrom in human readable form.
  • 11. A method according to claim 2, wherein a plurality of the biomarkers are measured, wherein the assay instrument performs the correlating step, which comprises determining the concentration of each of the plurality of biomarkers, calculating a single value based on the concentration of each of the plurality of biomarkers, comparing the single value to a corresponding threshold level and displaying an indication of whether the single value does or does not exceed its corresponding threshold in a human-readable form.
  • 12. A method according to claim 1, wherein method provides a sensitivity or specificity of at least 0.7 for the identification of appendicitis when compared to normal subjects.
  • 13. A method according to claim 1, wherein method provides a sensitivity or specificity of at least 0.7 for the identification of appendicitis when compared to subjects exhibiting symptoms that mimic appendicitis symptoms.
  • 14. A method according to claim 1, wherein the sample is selected from the group consisting of blood, serum, and plasma.
  • 15. A method according to claim 1, wherein the sample is urine.
  • 16. A method for evaluating biomarker levels in a body fluid sample, comprising: obtaining a body fluid sample from a subject selected for evaluation based on a determination that the subject is experiencing symptoms indicative of possible acute appendicitis; andperforming one or more analyte binding assays configured to detect one or more biomarkers selected from the group consisting of Chemokine C-X-C receptor 1, Interleukin 8 receptor β, Fc frag of IgG receptor IIIb (CD16b), MHC class II DR beta 5, Leukocyte IgG-like receptor A3, Defensin alpha 1, Defensin alpha 1B, Defensin alpha 3, 18S ribosomal RNA, CDC14A, 28S ribosomal RNA, 60S acidic ribosomal protein P1, 40S ribosomal protein S26, Ribosomal protein L23, Ribosomal protein L37a, Ribosomal protein S28, Alkaline phosphatase, Carbonic anhydrase IV, Neuroblastoma breakpoint family 10, Ninjurin 1, Prokineticin 2, Superoxide dismutase 2, LOC100129902, LOC100131205, LOC100131905, LOC100132291, LOC100132394, LOC100132742, LOC100134364, LOC391370, LOC646785, LOC644191 and C5orf32 by introducing the body fluid sample obtained from the subject into an assay instrument which(i) contacts the body fluid sample with one or more binding reagents corresponding to the biomarker(s) being assayed, wherein each biomarker which is assayed binds to its respective specific binding reagent in an amount related to its concentration in the body fluid sample,(ii) generates one or more assay results indicative of binding of each biomarker which is assayed to its respective specific binding reagent; and(iii) displays the one or more assay results as a quantitative result in a human-readable form.
  • 17. A method according to claim 16, wherein the assay result(s) are displayed as a concentration of each biomarker which is assayed.
  • 18. A method according to claim 17, wherein the assay instrument further individually compares each biomarker concentration to a corresponding threshold level for that biomarker, and displays an indication of whether each biomarker does or does not exceed its corresponding threshold in a human-readable form.
  • 19. A method according to claim 16, wherein a plurality of the biomarkers are measured, and wherein the assay results(s) comprise a single value calculated using a function that converts the concentration of each of the plurality of biomarkers into a single value.
  • 20. A method according to claim 19, wherein the assay instrument further compares the single value to a corresponding threshold level and displays an indication of whether the single value does or does not exceed its corresponding threshold in a human-readable form.
  • 21-27. (canceled)
CROSS-REFERENCE OF RELATED APPLICATION

This application claims priority to U.S. Provisional Application No. 62/067,414 filed Oct. 22, 2014, the entire contents of which are hereby incorporated by reference.

Provisional Applications (1)
Number Date Country
62067414 Oct 2014 US
Continuations (1)
Number Date Country
Parent 15521213 Apr 2017 US
Child 17832650 US