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Title:
COLON CANCER DIAGNOSTIC METHOD AND MEANS
Document Type and Number:
WIPO Patent Application WO/2014/041185
Kind Code:
A2
Abstract:
The present invention discloses a method of diagnosing colon cancer by using specific markers from a set, having diagnostic power for colon cancer diagnosis and distinguishing colon cancer types in diverse samples.

Inventors:
WEINHAEUSEL ANDREAS (AT)
FUCHS LUNA JOHANA ANDREA (AT)
KHULAN SERGELEN (AT)
Application Number:
PCT/EP2013/069229
Publication Date:
March 20, 2014
Filing Date:
September 17, 2013
Export Citation:
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Assignee:
AIT AUSTRIAN INST TECHNOLOGY (AT)
International Classes:
G01N33/574
Domestic Patent References:
WO1999057311A21999-11-11
WO1999057312A11999-11-11
Other References:
SAMBROOK ET AL.: "Molecular Cloning, A laboratory handbook", 1989, CSH PRESS
SYED, JOURNAL OF MOLECULAR BIOCHEMISTRY, vol. 1, no. 2, 2012, Retrieved from the Internet
Attorney, Agent or Firm:
SONN & PARTNER PATENTANWÄLTE (Vienna, AT)
Download PDF:
Claims:
Claims :

1. Method of diagnosing colon cancer or the risk of colon cancer in a patient by detecting the following marker proteins or a selection of at least 2 or least 20 % of the marker proteins se¬ lected from ACAA2, ACTL6B, ARHGEF1, ARHGEF10L, ASB13, ATXN2, C10orf76, C17orf28, TMEM98, C17orf90, AFP, AFP, COL3A1, CUL1, DCTPP1, DEF8, EIF4A2, RPA1 , TACC2, ACTL6B, PLEKHOl, HAUS4,

BTBD6, ISG15, LRRC4C, LTBP3, MACF1, MTCH2, NARFL, NBEAL2, KPNA2 , PAPLN, PDIA3, PDP1, PI4KA, PKM2 , PLAA, PLCG1, PLXND1, RNF40, RPL37A, SERPINA1, SLC4A3, SPRY1, TMCC2, TSTA3, UROD, PAICS,

VPS 18 , ZNF410, ZNF668 in a patient comprising the step of de¬ tecting antibodies binding said marker proteins, detecting said marker proteins or antigenic fragments thereof in a sample of the patient.

2. Method of diagnosing colon cancer or the risk of colon cancer in a patient by detecting at least 2 or least 20 % of the marker proteins selected from the markers of List 3, 4, 5, 6, 7, 8, 9, 10, 11, 12, 13, 14, 15, 16, 17, 18, 19, 20, 21, 22, 23, 24, 25, 26, 27, 28, 29, 30, 31 or any combination thereof in a patient comprising the step of detecting antibodies binding said marker proteins, detecting said marker proteins or antigenic fragments thereof in a sample of the patient.

3. Method of diagnosing colon cancer or the risk of colon cancer in a patient by detecting a marker protein selected from any one of List 1 in a patient comprising the step of detecting an¬ tibodies binding said marker protein, detecting said marker protein or antigenic fragments thereof in a sample of the patient.

4. The method of claim 2 wherein the combination is of lists 4 and 20, wherein the markers are selected from ACADVL, ADH5, AGFG1, ALDOA, ARHGAP21 , ARHGEF1, ASB13, ATXN10, BCKDHA, BCS1L, BIN3, C10orf76, C17orf28, TMEM98, C17orf90, AFP, AFP, CCNI, CDK16, CHD8, COL3A1, CPLX1, CPNE6, CTDP1, CYC1, DCTPP1, DEF8, EID1, EIF4A2, RPA1 , TACC2, ACTL6B, FAM160A2, FASN, C10orf2, HAUS4, JMJD4, BTBD6, IMP4, LAMB3 , LCP1, LM07, LMTK2 , LRRC4C, LTBP3, MRPL47, MRPS11, MTCH2, MTSS1L, NARFL, NBEAL2, NME2, NOA1 , PAPLN, PDIA3, PDP1, PI4KA, PIK3R2, PKM2 , PLAA, PLCG1, PLXND1, PPP1R2, PPP4R1, PSMA2, PSMC2, RAD1, RBM4 , RBM4 , RPL26, RPL37A, SBF2, SERPINA1, SF3B4, SLC4A3, SLC25A29, SNRNP40, SPRY1, SSRP1, MGAT4B, TMUB2, ST3GAL3, TSTA3, UBE2L3, UMPS, UROD, USP7, PAICS, VASP, VPS 18 , VPS72, WDR13, YARS, ZNF410, ZNF668.

5. The method of claim 2 wherein the combination is of lists 4 and 20, wherein the markers are selected from lists 5, 6, 7, 21, 22, 23 and 24 and wherein the markers are selected from AIBG, ACAA2, ACTL6B, ACTR1B, ADCK3, AFTPH, AKAP9, AP3D1, APBA3, ARAP1, CHST10, ARHGEF1, ARHGEF10L, ARHGEF17 , ASB13, ASNA1 , ATP5H,

ATXN2, BCL6, Cllorf80, TMEM98, C17orf90, AFP, AFP, C18orf32, C6orfl36, CAMK1D, CCL28, CCND1, CDH2, CEP57, CKM, COL3A1,

COL6A3, COL8A2, HSPAIA/HSPAIB, CPLX1, CSK, CSRNP1, CTDP1,

CTNND2, CUL1, CUL9, CYC1, DCAF15, DCTPP1, DDX19B, DDX3Y, DDX54, DEF8, DENND5A, DNAJC10, DOCK10, DOCK9, DPYSL5, EEF1A1, EHMT2, EIF3L, EIF4A2, EML2, ERBB3, TACC2, ACTL6B, PLEKHOl, EXOSC8, FAM204A, FBN1, GEMIN2, GGA1 , GP1BB, GPSM1, GSTP1, GTF3A, HADHA, HAUS4, HK1, HMG20B, HNRNPK, BTBD6, ICAM3, IFNGR2, IMP4, INTS7, ISG15, IVNS1ABP, JMJD7-PLA2G4B, KIAA0368, KIF3C, LIMD2, LPCAT1, LRRC4C, LRSAM1, MACF1, MAN2B1, MCM3AP, METTL2B, MTA1 , MTCH2, MTSS1L, NAGLU, NARFL, NASP, NBEAL2, NCAN, NFKB2, NHEJ1, NME2, KPNA2, NPDC1, OTUD5, PAPLN, PBRM1 , PBX2 , PDP1, PDZD4, PHACTR3, LOC440354, PKD1L1, PKM2 , PLAA, PLCG1, PLEKHA5, PLXNA1, PLXND1, PMVK, POGZ, POLN, POMGNT1, POTEE/POTEF, PPCDC, PPP4R1, PRDM2 , PRKACA, PRKCSH, PRMT1, TSTA3, PRPF4B, PSMB4, PSMB6, QTRT1, RAD1, RBPJ, REV3L, RNF220, RPL24, RPL37A, RPL7, RPS7, RSL1D1, RSL1D1, RTN4, RUVBL2, SAFB2, SAMSN1, GRK6, SERBP1, SERPINA1, SETD1B, SGSH, SLC4A3, SLMAP, SNTA1, SPRY1, S 6GALNAC1 , STAB1, SUOX, TA- GLN3, TIAL1, TMC8, TMC07, TNFAIP2, TPX2, TRAPPC3, ST3GAL3, TRI - OBP, TRIP12, TRPC4AP, TSTA3, TTR, TTYH3, TUBB3, TUBGCP2, UBB, UMPS, UROD, UROD, PAICS, VPS 18 , YLPM1, YWHAZ, ZCCHC14, ZNF174, ZNF410, ZNF589.

6. The method of claim 2 wherein the combination is of the markers are selected from lists 9, 10, 11, 25, 26 and wherein the markers are selected from ABCEl, ACAA2, ACTL6B, ADH5,

ANKRD36B, ANXA6, APBB1IP, ARHGAP21 , ARHGEF10L, ARHGEF25 , ASAP1, ASB13, ASPSCR1, AXIN1, BCKDHA, C10orf76, TMEM98, C17orf90, AFP, AFP, C18orf32, PECAM1, C6orfl36, CCL28, IK, CDK16, CDT1, CERCAM, CHCHD8, CLDN5, CLU, COMMD9, COX7A2L, CPE, CPNE2, DBI, DCAF11, DCTPP1, DDR1, DDX27, DENR, DHX36, DHX58, DLG5, DTNBP1, EID1, EIF4A2, EPC1, TACC2, ACTL6B, PLEKHOl, EXOSC4, FAM213A, FBLL1, FBRS, FKBP15, FLU, FN1, GNAOl, GOSR1, GRK6, GTF2B, HAPLN3, HARS, HAUS4, HDAC6, HEBP2, HLA-C, JMJD4, HNRNPA2B1, HNRNPK, HNRNPR, HNRPLL, ELAC2, HSPA8, INPP5K, INPPL1, INTS1, INTS1, I SGI 5, KDM4A, LAMB1 , LCP1, LOCI 00132116 , LRIG1, LRIG1, LRRC16B, LRRC4C, LTBP3, LYSMD2, MAF1, MRPL38, MTCH1, MTCH2, RPL17, MYOIC, MY05A, NARF, NARFL, NBEAL2, NBR1, NDUFB10, NME2, KPNA2 , OTUD1, PABPC1, PAPLN, PDIA3, LOC440354, PI4KA, PIK3CD, PIK3IP1, PJA1, PKD1L1, PKM2, PLAA, PKP3, PLXNA3, PLXND1, POMT1, PPP1R13B,

PPP4R1, PPP5C, PRDX5, PRRT1, PRRT2, PSKH1, PSMB4, REC8, RGS19, RHBDD2, RPL4, RNF40, RPL13, RPL17, RPL22, RPL24, RPL37A, RPN1, SAT2, SERPINA1, SERPINH1, SGSH, SH3BP2, SLC25A20, SMCHD1, SNTA1 , SPRY1, SRRM2, STMN4, TBC1D9B, TBCB, TIAL1, TIAM2, TMC8, TMCC2, TPM3, ZWINT, TRAPPC3, TRAPPC4, TSTA3, TTYH1, GPX4, TUBB3, UBC, UBE2N, USP48, VARS, PAICS, VPS 18 , YLPM1, YPEL1, ZCCHC11, ZFP14, ZNF133, ZNF232, ZNF410, ZNF668, ZNF672.

7. The method of claim 2 wherein the combination is of lists 4 and 20, wherein the markers are selected from lists 14 and 28 and wherein the markers are selected from AHSG, AKR1B1, AP1B1, ARPP21, ATP2A3, BMS1P5, BTBD11, CANX, CCL28, CDK16, CPNE1,

DCTPP1, DDX19A, DHX8, EHD4, RPA1 , ELAVL1, TACC2, FBX021,

C10orf2, HMGCL, IKBKAP, ITGAL, LMTK2, LRPAP1, MAGED1 , MAPKAP1, MARS, MAS 2 , MATR3, MUC2, MY05A, NAV2 , NDUFS2, NEFL, PDP1,

PEX19, PFKL, PKM2, PLAA, PLEKHM2 , MED4 (includes EG:29079), PNCK, PPP2R5C, PSMD6, PTPRS, BAD, RNF10, RPL17, RPL37A, AC02 (includes EG: 11429), SLC4A3, STK17A, SUV420H1, TBC1D7, TBC1D9B, TRMT2A, TUBA1B, TUBB6, WDR1, WDR5, ZNF277, ZNF514.

8. The method of any one of claims 1 to 7 comprising diagnosing cancer or pre-cancerous polyps, preferably wherein said precan¬ cerous polyps are distinguished between high-risk polyps and low-risk polyps, wherein said high-risk polyps comprise adenoma¬ tous villous, adenomatous tubulovillous, or co-occurrence of ad¬ enomatous tubular with tubulovillous polyps.

9. The method of any one of claims 1 to 8 comprising distin¬ guishing between combined groups of cancer and pre-cancerous states, selected from distinguishing healthy conditions vs. can- cer plus pre-cancerous polyps (both high-risk and low-risk) , healthy conditions vs. cancer, healthy conditions plus low-risk polyps vs. high-risk polyps, healthy conditions plus low-risk polyps vs. high-risk polyps plus cancer, healthy conditions vs. low-risk polyps, low-risk polyps vs. high-risk polyps, and high- risk polyps vs. cancer,

preferably wherein the markers according to claim 4 are used for distinguishing healthy conditions vs. cancer plus pre-cancerous polyps (both high-risk and low-risk) ,

the markers according to claim 5 are used for distinguishing healthy conditions vs. cancer, or

the markers according to claim 6 are used for distinguishing healthy conditions plus low-risk polyps vs. high-risk polyps plus cancer,

the markers according to claim 7 are used for distinguishing healthy conditions vs. low-risk polyps, and/or

preferably wherein a positive result in distinguishing healthy conditions plus low-risk polyps vs. high-risk polyps plus cancer prompts a further cancer test, in particular preferred an endos¬ copy or a biopsy.

10. The method of any one of claims 1 to 9, wherein the step of detecting antibodies binding said marker proteins, detecting said marker proteins or antigenic fragments thereof comprises comparing said detection signal with detection signals of a healthy control and comparing said detection signals, wherein an increase in the detection signal indicates colon cancer or said risk of colon cancer.

11. The method of any one of claims 1 to 10, a) wherein the step of detecting antibodies binding said marker proteins, detecting said marker proteins or antigenic fragments thereof comprises comparing said detection signal with detection signals of one or more known control samples of conditions selected from cancer, pre-cancerous polyps, especially high risk polyps and/or low risk polyps, and/or a healthy control, wherein the control sig¬ nals are used to obtain a marker dependent signal pattern as in¬ dication classifier and the marker dependent signals of the pa¬ tient is compared with and/or fitted onto said pattern thereby obtaining information of the diagnosed condition.

12. The method of any one of claims 1 to 11, a) wherein the step of detecting antibodies binding said marker proteins, detecting said marker proteins or antigenic fragments thereof comprises comparing said detection signal with detection signals of a cancerous or pre-cancerous polyp control and comparing said detec¬ tion signals, wherein a detection signal from the sample of the a patient in amplitude of at least 60%, preferably at least 80%, of the cancerous control indicates colon cancer or said risk of colon cancer; or b) wherein a detection signal in at least 60%, preferably at least 75%, of the used markers indicates colon cancer or said risk of colon cancer.

13. The method of treating a patient comprising colon cancer or having a polyp with a high risk of developing colon cancer, comprising detecting cancer or a polyp with a high risk of developing colon cancer according to any one of claims 1 to 12 and removing said colon cancer or polyp.

14. A kit of diagnostic agents suitable to detect any marker or marker combination as defined in claims 1 to 7, preferably wherein said diagnostic agents comprise marker proteins or anti¬ genic fragments thereof suitable to bind antibodies in a sample, especially preferred wherein said diagnostic agents are immobi¬ lized on a solid support,

optionally further comprising a computer-readable medium or a computer program product, comprising signal data for control samples with known conditions selected from cancer or a pre¬ cancerous polyp, and/or of healthy controls, and/or calibration or training data for analysing said markers provided in the kit for diagnosing colon cancer or distinguishing conditions selected from healthy conditions, cancer, or the pre-cancerous polyps.

15. The kit of claim 14 comprising at most 3000 diagnostic agents, preferably at most 2500 diagnostic agents, at most 2000 diagnostic agents, at most 1500 diagnostic agents, at most 1200 diagnostic agents, at most 1000 diagnostic agents, at most 800 diagnostic agents, at most 500 diagnostic agents, at most 300 diagnostic agents, at most 200 diagnostic agents, at most 100 diagnostic agents.

Description:
Colon cancer diagnostic method and means

The present invention relates to cancer diagnostic methods and means therefor.

Neoplasms and cancer are abnormal growths of cells. Cancer cells rapidly reproduce despite restriction of space, nutrients shared by other cells, or signals sent from the body to stop re ¬ production. Cancer cells are often shaped differently from healthy cells, do not function properly, and can spread into many areas of the body. Abnormal growths of tissue, called tu ¬ mors, are clusters of cells that are capable of growing and di ¬ viding uncontrollably. Tumors can be benign (noncancerous) or malignant (cancerous) . Benign tumors tend to grow slowly and do not spread. Malignant tumors can grow rapidly, invade and de ¬ stroy nearby normal tissues, and spread throughout the body. Ma ¬ lignant cancers can be both locally invasive and metastatic. Lo ¬ cally invasive cancers can invade the tissues surrounding it by sending out "fingers" of cancerous cells into the normal tissue. Metastatic cancers can send cells into other tissues in the body, which may be distant from the original tumor. Cancers are classified according to the kind of fluid or tissue from which they originate, or according to the location in the body where they first developed. All of these parameters can effectively have an influence on the cancer characteristics, development and progression and subsequently also cancer treatment. Therefore, reliable methods to classify a cancer state or cancer type, tak ¬ ing diverse parameters into consideration is desired.

In cancer-patients serum-antibody profiles change as well as autoantibodies against the cancerous tissue are generated. Those profile-changes are highly potential of tumor associated anti ¬ gens as markers for early diagnosis of cancer. The immunogenici- ty of tumor associated antigens are conferred to mutated amino acid sequences, which expose an altered non-self epitope. Other explanations for its immunogenicity include alternative splic ¬ ing, expression of embryonic proteins in adulthood, deregulation of apoptotic or necrotic processes and abnormal cellular locali ¬ zations (e.g. nuclear proteins being secreted). Other explana ¬ tions are also implicated of this immunogenicity, including al ¬ ternative splicing, expression of embryonic proteins in adult ¬ hood, deregulation of apoptotic or necrotic processes, abnormal cellular localizations (e.g. nuclear proteins being secreted). Examples of epitopes of the tumour-restricted antigens, encoded by intron sequences (i.e. partially unspliced RNA were translat ¬ ed) have been shown to make the tumor associated antigen highly immunogenic. However until today technical prerequisites per ¬ forming an efficient marker screen were lacking.

The object of the present invention is therefore to provide improved marker sequences and the diagnostic use thereof for the treatment of colon carcinoma.

The provision of specific markers permits a reliable diagno ¬ sis and stratification of patients with colon carcinoma, in particular by means of a protein biochip.

The invention therefore relates to the use of marker pro ¬ teins for the diagnosis of colon carcinoma, wherein at least one marker protein is selected from the marker proteins of List 1. List 1: Marker proteins given by their Protein Symbol.

A1BG, AARS, ABCA3, ABCA4 , ABCE2, ABCF2, ACAA3, ACADVL, ACAP2, ACAT3, ACD, ACSL4, ACSS2, ACTB, ACTL6B, ACTL6B, ACTR1B, ADCK4 , ADCY2, ADH5 , ADNP, ADRBK2 , ADRBK2 , AFMID, AFTPH, AGFG2 , AGPAT7, AHCY, AHSG, AKAP17A, AKAP10, AKR1B2, AKR1B2, AKR1C5, AKR1C5, AKR1C5, AKR1C5, AKT2, AKT3, ALAD, ALB, ALB, ALDOA, AMBRA2 ,

ANAPC6, ANKRD36B , ANTXR3, ANXA7 , ANXA7 , AP1B2, AP2A2, AP2A2, AP2A2, AP3D2, APBA4 , APBA4 , APBB1IP, APLP2, APP, APRT, APRT, ARAP2, ARAP2, ARAP3, ARF5, ARF6, ARHGAP22, ARHGAP26 , ARHGAP45 , ARHGAP45 , ARHGEF2, ARHGEF10L, ARHGEF18 , ARHGEF3, ARHGEF26 ,

ARL4D, ARMCX2, ARPP22, ARRB3, ASAP2, ASB14, ASCL2, ASMTL, ASNA2 , ASPSCR2, ATCAY, ATP2A4, ATP5D, ATP5H, ATP8B4, ATXN11, ATXN11, ATXN3, ATXN2L, AXIN2, BCAM, BCAS3, BCKDHA, BCL7, BCLAF2 , BCS1L, BGN, BIN4, BMS1P6, BRD4, BSDC2, BTBD12, C10orfll9, C10orf77, Cllorf81, C16orf59, C17orf29, C17orf50, C17orf91, C17orf91, C18orf22, C18orf33, Clorfl75, C20orf21, C20orf21, C3orf20,

C5orf26, C6orfl37, C8orf34, C8orf34, CALR, CAMK1D, CANX, CAPN3, CAPN3, CARM2, CBR2 , CBWD2 , CCDC109B, CCDC137, CCDC65, CCDC88A, CCDC88A, CCDC88B, CCDC95, CCL29, CCND2, CCNI, CCT9, CCT9,

CDC25B, CDC38, CDH3, CDK11A/CDK1 IB, CDK17, CDK17, CDK17,

CDK5RAP4, CDR2, CDT2, CELSR2, CENPT, CEP58, CERCAM, CHCHD9, CHD1L, CHD4, CHD9, CHGA, CHID2, CHN3, CKM, CLCN7, CLDN6, CLEC3B, CLK2, CLTA, CLTA, CLU, CLUAP2, CNPY4, COBRA2 , COL3A2, COL6A4, COL8A3, COMMD10, COPA, COPS4, COPS7, COR08, COX7A2L, CPE ,

CPLX2, CPNE2, CPNE3, CPNE6, CPNE7, CPSF2, CRABP2 , CSF1R, CSK, CSK, CSNK2B, CSRNP2, CTBP3, CTBP3, CTC2, CTDP2, CTNND3, CTSD, CTSK, CUL2, CUL10, CUL10, CYB5R4, CYC2, DBI, DBR1 , DCAF11, DCAF12, DCAF16, DCTN4, DCTPP2, DDB2, DDIT5, DDR2 , DDR2 , DDX19A, DDX19B, DDX19B, DDX24, DDX28, DDX3Y, DDX42, DDX55, DDX57, DEF9, DENND4, DENND5A, DENR, DHX37, DHX59, DHX9, DHX9, DHX9, DLG6, DLX3, DNAJA2, DNAJC11, D0C2B, D0CK11, DOCK10, DOCK10, DPP4, DPP10, DPYSL6, DRAP2, DSE, DTNBP2, DUS1L, DUSP5, DVL2, DYNC1H2, ECHS2, ECI3, EDARADD, EEF1A2, EEF1A2, EEF1A2, EEF1A2, EEF1A2, EEF1A2, EFTUD2, EHD5, EHMT3, EHMT3, EHMT3, EID2, EID2, EIF2B6, EIF3L, EIF4A3, ELAC3, ELAVL2, ELM02, ELP3, ELP4, EML3, EPC2, EPC2, EPHB7, EPN2, EPN2, EPRS, EPS 9 , ERBB3 , ERCC6, ERP45,

ESYT2, ETS2, EX0C2, EX0C8, EX0SC5, EX0SC9, EXT3, EXTL2,

FAM114A3, FAM149A, FAM160A3, FAM193A, FAM193A, FAM204A, FAM209B, FAM213A, FAM32A, FAM59B, FAM65A, FAM65A, HMGN2, FASN, HMGN2, FASN, FBLL2, FBN2 , FBN4, FBRS, FBX022, FCGBP, FCHSD2, FH0D2 , FIBP, FKBP16, FLU, FLU, FLNA, FLNA, FLNB, FN2 , FN3K, FNBP5, FNTA, FNTA, FXYD7, G3BP3, G6PD, GAL3ST5, GBP2 , GEMIN3, GGA1 , GGA1 , GHITM, GIT1 , GLRX4, GLUL, GMIP, GMPPB, GNA02 , GNB2, GNPTG, GOLGA5, GOSR2, GP1BB, GP1BB, GPCPD2, GPSM2, GRK7, GSK3A, GSTP2, GTDC2, GTF2B, GTF2I, GTF3A, GTF3C6, GTPBP4, H2AFY, HADHA, HAPLN4, HARS, HAUS5, HDAC7, HEBP3, HERC5, HERPUD2 , HES7, HIPK4, HIST1H2AC, HK2, HK2 , HLA-A, HLA-C, HMG20B, HMGA2 , HMGCL, HMGN3, HMGN3, HN2, HNRNPA1, HNRNPA2, HNRNPA2B2, HNRNPH2, HNRNPK,

HNRNPM, HNRNPR, HNRPLL, HOMER4 , HSD17B5, HSP90AB2, HSP90B2, HSPAIA/HSPAIB, HSPA6, HSPA9, HSPA10, HSPBAP2, HTRA2, ICAM4, IDH3B, ID02, IDS, IFNGR3, IFRD2, IGHA2, IK, IKBKAP, IL2RG,

IL6ST, IMP5, INPP5K, INPPL2, INTS2, INTS2, INTS8, IRF4, I SGI 6, ITGA6, ITGAL, ITSN2, IVNS1ABP, JAG2 , JARID3, JMJD7-PLA2G4B, KAT6, KAT8, KAT9, KCNIP2, KCTD14, KDM3B, KDM4A, KHSRP, KIAA0369, KIAA1245, KIF20, KIF21A, KIF3C, KIFAP4, KPNB2, LAMA6 , LAMB2 , LAMB4 , LAMP2 , LCMT2, LCP2, LDLR, LD0C2, LIMD3, LMA 2 , LMF3, LMNA, LMNA, LM08, LMTK3, LOCI 00132117 , LOC285464, LONP2, LONRF2, LPCAT2, LPCAT2, LRIG2, LRIG2, LRPAP2, LRRC16B, LRRC4C, LRSAM2 , LRSAM2, LSM12 , LSM14A, LSM14B, LTBP4, LYSMD3, MACF2, MAF1 , MAGED2 , MAN2B2, MAP1A, MAP1LC3A, MAP1S, MAP5, MAPK11, MAPK4 , MAPK8, MAPK8IP2, MAPK8IP4, MAPKAP2, MAPRE2, MARS, MAST3, MAST3, MATR4, MCM3AP, MCM3AP, MEAF7, MEAF7, MED4 , METTL2B, METTL4, MGAT4B, MGAT4B, MIB3, MICAL2, MIIP, MLL5, MPI, MRPL27 , MRPL38 , MRPL48, MRPS12, MTA2 , MTA3, MTCH2, MTCH2, MTCH3, MTMR4 , MTSS1L, MUC3, MUC5AC/MUC5B, MUM2 , MVD, MYH10, MY01C, MY05A, NAGLU, NAP1L5, NARF, NARF, NARFL, NARG3, NASP, NASP, NASP, NAV3,

NBEAL3, NBPF11 , NBR2 , NCAN, NCF2, NCS2, NDRG2 , NDUFA14,

NDUFB11, NDUFS3, NDUFS6, NEFL, NES, NFKB3, NFKBID, NHEJ2, NIP- SNAP2, NISCH, NKRF, NKTR, NLRC6, NME3, NME3, NME3, NOL13, NOMOl , NOMOl , NOMOl , NONO, NPDC2, NPDC2, NR4A2, NRBP3, NRBP3,

NSMCE3, NT5C, NTAN2, NUMA2 , ODC2, OGT, OLFML2A, OTUB2, OTUD2 , OTUD6, PAAF2, PABPC2, PAICS, PALM, PAPLN, PATZ2, PBRM2 , PBX3, PBXIP2, PCDH10, PDE2A, PDE4D, PDIA4, PDIA5, PDP2, PDZD5, PDZD5, PECAM2, PER2, PEX20, PFKL, PGK2 , PHACTR4, PHC3, PHF20, PHF4, PHF9, PI4KA, PIK3CD, PIK3IP2, PIK3IP2, PIK3R3, PJA2, PKD1L2, PKM3, PKM3, PKM3, PKM3, PKP4, PLCE2, PLCG2, PLEC, PLEKHA6,

PLEKHG3, PLEKHM3, PLXNA2 , PLXNA4 , PLXNB2, PLXND2 , PMS3, PMVK, PNCK, PODXL3, POGZ, POLN, POLR2E, POMGNT2, POMT2, POR, PO- TEE/POTEF, PPCDC, PPID, PPM1F, PPP1CA, PPP1R13B, PPP1R15A,

PPP1R19, PPP1R3, PPP2R5C, PPP4R2, PPP5C, PRDM3, PRDX2, PRDX2, PRDX6, PREP, PRKACA, PRKCSH, PRKCZ, PRKD3, PRMT2, PRMT3, PRPF32, PRPF4B, PRPF7, PRR4 , PRRT2, PRRT3, PSAT2, PSAT2, PSKH2, PSMA3, PSMA3, PSMB2, PSMB5, PSMB6, PSMB7, PSMC3, PSMD3, PSMD7, PSMD9, PSME2, PSME2, PTCHD3, PTN, PTOV2, PTPN13, PTPN24, PTPRF, PTPRF, PTPRO, PTPRS, PTPRS, PXN, QTRT2, RABEPK, RABGGTA, RAD2 , RAD23A, RAI2, RALGDS, RANBP2, RBM16, RBM27, RBM5, RBM5, RBM5, RBM5, RBM5, RBPJ, RC3H3, REC8 , REEP3, REV3L, RGS20, RHBDD3, RHOB, RHOT3, RNF11, RNF11, RNF214, RNF217, RNF221, RNF26, RNF41, RPL3 (UniGene ID: Hs.575313), RPL11, RPL14, RPL18, RPL18, RPL18, RPL23, RPL23, RPL25, RPL27, RPL27, RPL28, RPL28, RPL28, RPL29, RPL37A, RPL5, RPL8, RPL8, RPN2, RPS11, RPS16, RPS22, RPS27A, RPS6KA1 , RPS8, RRP10, RSL1D2, RSL1D2, RTKN, RTN4, RTN4 , RUFY2, RUSC2, RUVBL3, SAFB3, SAMSN2, SAT3, SBF2, SBF3, SCAF9, SCARF3, SCHIP2, SC02, SCOC, SDCBP, SEL1L4, SEMA3F, 2-Sep, 8-Sep, SERBP2, SERBP2, SERPINA2, SERPINB2, SERPINB10, SERPINH2, SETD1B, SETD3, SEZ6L3, SF3B2, SF3B5, SFXN2, SGSH, SGTA, SH2B2, SH3BP3, SH3GL2, SHF, SLA, SLC25A21, SLC25A30, SLC25A7, SLC4A3, SLC4A4, SLC5A7, SLC9A3R2, SLMAP, SMCHD2, SMTN, SMUG2, SNF9, SNIP2, SNRNP41, SNTA2, SNX2, SORD, SPAG2, SPAG18, SPECC1L, SPINT2, SPRN, SPRY2, SPSB4, SPTBN2, SPTBN2, SPTLC2, SQLE, SRA2, SRA2, SRA2, SRA2, SRRM3, SRSF2, SRSF5, SSBP3, SSBP3, SSRP2, S 6GALNAC2 , STAB2, STAU2, STIM3, STK17A, STK26, STMN5, STOM, STX7, SUOX, SUV420H2, SYS1, TADA2B, TAGLN4, TALD02, TARS, TAX1BP2, TBC1D8, TBC1D9B, TBCB, TBCB, TCEA3, TCEAL3, TERF2IP, TESK2, TF, THBS2, THBS4, TIAL2, TIAM3, TIMM51, TIPARP-AS2, TK2 , TLE2, TLE4, TMC9, TMC9, TMCC3, TMC08, TMED9, TMEM123 , TMEM183A, TMEM200, TMEM58,

TMSB10 /TMSB4X, TMSB10 /TMSB4X, TMUB3, TNFAIP3, TNFRSF26 , TNKS, TNXB, TOE2, TOPORS, TP53, TP53BP2, TPM4, TPM4, TPM4, TPX3,

TRAPPC4, TRAPPC5, TRIL, TRIM28, TRIOBP, TRIP13, TRMT2A, TRPC4AP, TRPS2, TSC3, TSPAN8 , TSTA4, TTC29, TTC4, TTR, TTYH2, TTYH2, TTYH4, TUBA1B, TUBA1B, TUBA1B, TUBA4A, TUBB, TUBB, TUBB4, TUBB7, TUBGCP3, TUBGCP7, TWF3, UBB, UBC, UBE2L4, UBE2N, UBE2N, UBE2Q2, UBXN2, UBXN8, UMPS, UROD, UROD, USP12, USP34, USP40, USP49, USP6, USP8, VARS, VARS3, VASP, VA 2 , VPS13C, VPS 19 , VPS26A, VPS72 , WDR2, WDR14, WDR14, WDR36, WDR6, WDR7, WDR63, WDR64, WDR74, WDR74, WSB3, XYLT2, YARS, YARS, YLPM2, YPEL2, YWHAZ, YY2, ZCCHC12, ZCCHC15, ZEB2, ZFP15, ZMIZ3, ZNF13, ZNF134, ZNF175, ZNF233, ZNF239, ZNF278, ZNF301, ZNF359, ZNF359, ZNF409, ZNF411, ZNF424, ZNF512B, ZNF515, ZNF590, ZNF606, ZNF669, ZNF673, ZNF785.

Although the detection of a single marker can be sufficient to indicate a risk for colon cancer, it is preferred to use more than one marker, e.g. 2, 3, 4, 5, 6, 7, 8, 9, 10, 11, 12 or more markers in combination, especially if combined with statistical analysis. From a diagnostic point of view, a single autoantigen based diagnosis can be improved by increasing sensitivity and specificity by using a panel of markers where multiple auto ¬ antibodies are being detected simultaneously. Particular pre ¬ ferred combinations are of markers within one of the marker lists 2 to 31 as identified further herein.

The inventive markers are suitable protein antigens that are overexpressed in tumor and can be used to either identify can ¬ cerous tissue or to differentiate between specific stages of cancer and pre-cancerous development, or both. The markers usu ¬ ally cause an antibody reaction in a patient. Therefore the most convenient method to detect the presence of these markers in a patient is to detect antibodies against these marker proteins in a sample from the patient, especially a body fluid sample, such as blood or serum.

To detect an antibody in a sample it is possible to use marker proteins as binding agents and subsequently to detect bound antibodies. It is not necessary to use the entire marker proteins but it is sufficient to use antigenic fragments that are bound by the antibodies. "Antigenic fragment" herein relates to a fragment of the marker protein that causes an immune reac ¬ tion against said marker protein in a human. Preferred antigenic fragments of any one of the inventive marker proteins are the fragments of the clones as identified by the UniquelD. Such an ¬ tigenic fragments may be antigenic in a plurality of humans, such as at least 5, or at least 10 individuals.

"Diagnosis" for the purposes of this invention means the positive determination of colon carcinoma by means of the marker proteins according to the invention as well as the assignment of the patients to colon carcinoma. The term "diagnosis" covers medical diagnostics and examinations in this regard, in particu ¬ lar in-vitro diagnostics and laboratory diagnostics, likewise proteomics and peptide blotting. Further tests can be necessary to be sure and to exclude other diseases. The term "diagnosis" therefore likewise covers the differential diagnosis of colon carcinoma by means of the marker proteins according to the in ¬ vention and the risk or prognosis of colon carcinoma.

Specific indications that can be identified with one or more of the inventive markers are cancer and pre-cancerous polyps, in particular also the differentiation between high-risk and low- risk polyps. Particular differentiations that can be made with the inventive markers and methods are distinguishing 1) healthy conditions vs. cancer plus pre-cancerous polyps (both high-risk and low-risk) 2) healthy conditions vs. cancer, 3) healthy conditions plus low-risk polyps vs. high-risk polyps plus cancer, 4) cancer vs. high-risk polyps vs. low-risk polyps vs. healthy conditions, 5) healthy conditions vs. low-risk polyps, 6) low- risk polyps vs. high-risk polyps and 7) high-risk polyps vs.

cancer .

The invention can be used to distinguish 2 or more indications. If more than 2 indications, e.g. 3 or 4 such as in indi ¬ cation group 4) mentioned above, are distinguished it is pre ¬ ferred to use stepwise statistical analysis to distinguish the individual conditions. In preferred embodiments, in such a step ¬ wise analysis, in a first step one indication is distinguished from the remaining indications, e.g. healthy conditions vs. the combined group of cancer, high-risk polyps and low-risk polyps. Stepwise, one additional indication is removed from the remain ¬ ing group and distinguished from the next remaining indications. E.g. for group 4) it is preferred to distinguish in the second step low-risk polyps vs. the group of cancer and high-risk polyps, and consequently in the third step to distinguish cancer vs. high-risk polyps (see e.g. example 11) . Such a statistical method is e.g. the binary tree analysis.

According to the invention, adenomatous villous, adenomatous tubulovillous , and co-occurrence of adenomatous tubular with tu- bulovillous polyps were classified as high-risk polyps while hy ¬ perplastic polyps and adenomatous tubular polyps were assigned to the low-risk group. The presence of high-risk polyps (and the presence of high-risk polyp markers) is an indication for a surgical intervention to remove the polyp since a rapid development to full cancer is likely. Contrary thereto, low-risk polyps do not require immediate surgical intervention but it is advised to further monitor the patients for the occurrence of high-risk polyp or cancer markers.

The invention thus also relates to a surgical method com ¬ prising detecting cancer or a high-risk polyp according to the present invention and removing said cancer or high-risk polyp. Of course, to be on the safe side it is also possible to simi ¬ larly detect a low-risk polyp and remove said low-risk polyp.

In preferred methods of the invention the diagnosis of a risk for cancer comprises detecting polyps, in particular high- risk polyps and/or low-risk polyps, in a patient.

In particular the inventive method may comprise distinguish ¬ ing between combined groups of cancer and pre-cancerous states, selected from distinguishing healthy conditions vs. cancer plus pre-cancerous polyps (both high-risk and low-risk) , healthy conditions vs. cancer, healthy conditions plus low-risk polyps vs. high-risk polyps, healthy conditions plus low-risk polyps vs. high-risk polyps plus cancer, healthy conditions vs. low-risk polyps, low-risk polyps vs. high-risk polyps, and high-risk polyps vs. cancer. A positive result in distinguishing healthy conditions plus low-risk polyps vs. high-risk polyps plus cancer can prompt a further cancer test, in particular more invasive tests than a blood test such as an endoscopy or a biopsy.

The inventive markers are preferably grouped in sets of high distinctive value. Some sets excel at diagnosing or distinguish ¬ ing 1, 2, 3, 4, 5, 6 or 7 of the above identified indications.

Preferred markers are of List 2, which comprise markers for all of the above indications 1) to 7) .

List 2: Preferred marker protein set, suitable for multiple ana ¬ lytic distinctions; Proteins are identified by protein symbol: ACAA2, ACTL6B, ARHGEF1, ARHGEF10L, ASB13, ATXN2 , C10orf76,

C17orf28, TMEM98, C17orf90, AFP, AFP, C0L3A1, CUL1, DCTPP1, DEF8, EIF4A2, RPA1 , TACC2, ACTL6B, PLEKH01, HAUS4, BTBD6, I SGI 5, LRRC4C, LTBP3, MACF1, MTCH2, NARFL, NBEAL2, KPNA2 , PAPLN, PDIA3, PDP1, PI4KA, PKM2, PLAA, PLCG1, PLXND1, RNF40, RPL37A, SERPINA1, SLC4A3, SPRY1, TMCC2, TSTA3, UROD, PAICS, VPS 18 , ZNF410, ZNF668.

In particular embodiments, the invention provides the method of diagnosing colon cancer or the risk of colon cancer in a patient by detecting at least 2 of the marker proteins selected from the markers of List 2 in a patient comprising the step of detecting antibodies binding said marker proteins, detecting said marker proteins or antigenic fragments thereof in a sample of the patient. Also provided is a method of diagnosing colon cancer or the risk of colon cancer in a patient by detecting at least 20%, preferably at least 30%, especially preferred at least 40%, at least 50%, at least 60%, at least 70%, at least 80% at least 90% or all of the marker proteins selected from the markers of List 2 in a patient comprising the step of detecting antibodies binding said marker proteins, detecting said marker proteins or antigenic fragments thereof in a sample of the pa ¬ tient .

Further preferred marker sets according to the present in ¬ vention are provided in example 7 as lists 3 to 31. Thus the present invention also provides the method of diagnosing colon cancer or the risk of colon cancer in a patient by detecting at least 2 of the marker proteins selected from the markers of List 3, 4, 5, 6, 7, 8, 9, 10, 11, 12, 13, 14, 15, 16, 17, 18, 19, 20, 21, 22, 23, 24, 25, 26, 27, 28, 29, 30, 31 or any combination thereof in a patient comprising the step of detecting antibodies binding said marker proteins, detecting said marker proteins or antigenic fragments thereof in a sample of the patient. Further provided is a method of diagnosing colon cancer or the risk of colon cancer in a patient by detecting at least 20%, preferably at least 30%, especially preferred at least 40%, at least 50%, at least 60%, at least 70%, at least 80% at least 90% or all, of the marker proteins selected from the markers of List 3, 4, 5, 6, 7, 8, 9, 10, 11, 12, 13, 14, 15, 16, 17, 18, 19, 20, 21, 22, 23, 24, 25, 26, 27, 28, 29, 30, 31 or any combination thereof in a patient comprising the step of detecting antibodies binding said marker proteins, detecting said marker proteins or antigen- ic fragments thereof in a sample of the patient.

Also provided is a method of diagnosing colon cancer or the risk of colon cancer in a patient by detecting a marker protein selected from any one of List 1 in a patient comprising the step of detecting antibodies binding said marker protein, detecting said marker protein or antigenic fragments thereof in a sample of the patient. Of course, preferably more than one marker pro ¬ tein is detected. As noted with regards to the marker combina ¬ tions of sets of lists 2 to 31, preferably at least 2, but also 3, 4, 5, 6, 7, 8, 9, 10, 11, 12, 13, 14, 15, 16, 17, 18, 19, 20, 21, 22, 23, 24, or 25 or more, of the inventive marker proteins can be detected. This relates to any one of the inventive sets of lists 1 to 31. Even more preferred at least 20%, at least 30%, at least 40%, at least 50%, at least 60%, at least 70%, at least 80%, at least 90%, at least 95% or all of the markers of any set of any of the lists 1 to 31 are used in a diagnostic set. Such parts of at least 2 markers or at least 20% markers (or more as indicated) are also referred to as subsets herein.

Such a marker combination of a particular list or any combination of marker selection thereof are referred to herein as di ¬ agnostic set. Such sets constitute a further aspect of the in ¬ vention and kits are provided comprising diagnostic agents (such as binding moieties) to detect such markers. The entire disclo ¬ sure herein relates to both the inventive kits (that can be used in the inventive methods) as well as the methods themselves, that make use of agents that can be comprised in the kit.

Preferred combinations are of markers that are particularly indicative for a specific distinction as given in table 1 below.

Preferred marker combinations are of 2, 3, or 4 lists se ¬ lected from lists 3, 4, 19 and 20. These lists, as well as any combination are particularly effective for distinguishing indication 1, healthy conditions vs. cancer plus pre-cancerous polyps (both high-risk and low-risk) and are preferably used therefore. Of course, not all of the markers are usually neces ¬ sary since subsets also have sufficient diagnostic power. Pref ¬ erably at least 2 markers or at least 20% of the markers (or any higher number as given above) of these lists or combined lists are used in the inventive methods.

Preferred marker combinations are of 2, 3, 4, 5 or 6 lists selected from lists 5, 6, 7, 8, 21 and 24. These lists, as well as any combination are particularly effective for distinguishing indication 2 healthy conditions vs. cancer and are preferably used therefore. Of course, not all of the markers are usually necessary since subsets also have sufficient diagnostic power. Preferably at least 2 markers or at least 20% of the markers (or any higher number as given above) of these lists or combined lists are used in the inventive methods.

Preferred marker combinations are of 2, 3, 4 or 5 lists se ¬ lected from lists 9, 10, 11, 25 and 26. These lists, as well as any combination are particularly effective for distinguishing indication 3, healthy conditions plus low-risk polyps vs. high- risk polyps plus cancer, and are preferably used therefore. Of course, not all of the markers are usually necessary since sub ¬ sets also have sufficient diagnostic power. Preferably at least 2 markers or at least 20% of the markers (or any higher number as given above) of these lists or combined lists are used in the inventive methods.

Preferred marker combinations are of 2 or 3 lists selected from lists 12, 13 and 27. These lists, as well as any combina ¬ tion are particularly effective for distinguishing indication 4 cancer vs. high-risk polyps vs. low-risk polyps vs. healthy conditions, and are preferably used therefore. Of course, not all of the markers are usually necessary since subsets also have sufficient diagnostic power. Preferably at least 2 markers or at least 20% of the markers (or any higher number as given above) of these lists or combined lists are used in the inventive meth ¬ ods .

A preferred marker combination is of the 2 lists selected from lists 14 and 28. These lists, as well as any combination are particularly effective for distinguishing indication 5, healthy conditions vs. low-risk polyps, and are preferably used therefore. Of course, not all of the markers are usually neces ¬ sary since subsets also have sufficient diagnostic power. Pref ¬ erably at least 2 markers or at least 20% of the markers (or any higher number as given above) of these lists or combined lists are used in the inventive methods.

Preferred marker combinations are of 2 or 3 lists selected from lists 15, 16 and 29. These lists, as well as any combina ¬ tion are particularly effective for distinguishing indication 6, low-risk polyps vs. high-risk polyps, and are preferably used therefore. Of course, not all of the markers are usually neces ¬ sary since subsets also have sufficient diagnostic power. Pref ¬ erably at least 2 markers or at least 20% of the markers (or any higher number as given above) of these lists or combined lists are used in the inventive methods.

Preferred marker combinations are of 2, 3 or 4 lists select ¬ ed from lists 17, 18, 30 and 31. These lists, as well as any combination are particularly effective for distinguishing indication 7, high-risk polyps vs. cancer, and are preferably used therefore. Of course, not all of the markers are usually neces ¬ sary since subsets also have sufficient diagnostic power. Pref ¬ erably at least 2 markers or at least 20% of the markers (or any higher number as given above) of these lists or combined lists are used in the inventive methods.

In especially preferred embodiments, the combination is of lists 4 and 20, wherein the markers are selected from ACADVL, ADH5, AGFG1, ALDOA, ARHGAP21 , ARHGEF1, ASB13, ATXN10, BCKDHA, BCS1L, BIN3, C10orf76, C17orf28, TMEM98, C17orf90, AFP, AFP, CCNI, CDK16, CHD8, COL3A1, CPLX1, CPNE6, CTDP1, CYC1, DCTPP1, DEF8, EID1, EIF4A2, RPA1 , TACC2, ACTL6B, FAM160A2, HMG 2 , FASN, C10orf2, HAUS4, JMJD4, BTBD6, IMP4, LAMB3 , LCP1, LM07, LMTK2, LRRC4C, LTBP3, MRPL47, MRPS11, MTCH2, MTSS1L, NARFL, NBEAL2, NME2, NRBP2, NOA1 , PAPLN, PDIA3, PDP1, PI4KA, PIK3R2, PKM2 , PLAA, PLCG1, PLXND1, PPP1R2, PPP4R1, PSMA2, PSMC2, RAD1, RBM4 , RBM4, RPL26, RPL37A, SBF2, SERPINA1, SF3B4, SLC4A3, SLC25A29, SNRNP40, SPRY1, SSRP1, MGAT4B, TMUB2, ST3GAL3, TSTA3, UBE2L3, UMPS, UROD, USP7, PAICS, VASP, VPS 18 , VPS72, WDR13, YARS,

ZNF410, ZNF668. These markers as well as the combined set of any one of at least 2 markers or at least 20% of said markers (or any higher number as indicated above) is particularly suitable for distinguishing healthy conditions vs. cancer plus precancerous polyps (both high-risk and low-risk) and is preferably used for this diagnosis.

In especially preferred embodiments, the combination is of lists 5, 6, 7, 21, and 24 and wherein the markers are selected from A1BG, ACAA2 , ACTL6B, ACTR1B, ADCK3, AFTPH, AKAP9, AP3D1, APBA3, ARAP1, CHST10, ARHGEF1, ARHGEF10L, ARHGEF17 , ASB13,

ASNA1, ATP5H, ATXN2 , BCL6, Cllorf80, TMEM98, C17orf90, AFP, AFP, C18orf32, C6orfl36, CAMK1D, CCL28, CCND1, CDH2, CEP57, CKM, COL3A1, COL6A3, COL8A2, HSPA1A/HSPA1B, CPLX1, CSK, CSRNP1, CTDP1, CTNND2, CUL1, CUL9, CYC1, DCAF15, DCTPP1, DDX19B, DDX3Y, DDX54, DEF8, DENND5A, DNAJC10, DOCK10, D0CK9, DPYSL5, EEF1A1, EHMT2, EIF3L, EIF4A2, EML2, ERBB3, TACC2, ACTL6B, PLEKH01, EX- OSC8, FAM204A, FBN1, GEMIN2, GGA1, GP1BB, GPSM1, GSTP1, GTF3A, HADHA, HAUS4, HK1, HMG20B, HMG 2 , HMG 2 , HNRNPK, BTBD6, ICAM3, IFNGR2, IMP4, INTS7, ISG15, IVNS1ABP, JMJD7-PLA2G4B, KIAA0368, KIF3C, LIMD2, LPCAT1, LRRC4C, LRSAM1 , MACF1, MAN2B1, MCM3AP, METTL2B, MTA1, MTCH2, MTSS1L, NAGLU, NARFL, NASP, NBEAL2, NCAN, NFKB2, NHEJ1, NME2, KPNA2 , NPDC1, OTUD5, PAPLN, PBRM1 , PBX2 , PDP1, PDZD4, PHACTR3, LOC440354, PKD1L1, PKM2 , PLAA, PLCG1, PLEKHA5, PLXNA1, PLXND1, PMVK, POGZ, POLN, POMGNT1, POTEE/POTEF, PPCDC, PPP4R1, PRDM2 , PRKACA, PRKCSH, PRMT1, TSTA3, PRPF4B, PSMB4, PSMB6, QTRT1, RAD1, RBPJ, REV3L, RNF220, RPL24, RPL37A, RPL7, RPS7, RSL1D1, RSL1D1, RTN4, RUVBL2, SAFB2, SAMSN1, GRK6, SERBP1, SERPINA1, SETD1B, SGSH, SLC4A3, SLMAP, SNTA1 , SPRY1, S 6GALNAC1 , STAB1, SUOX, TAGLN3, TIAL1, TMC8, TMC07, TNFAIP2, TPX2, TRAPPC3, ST3GAL3, TRIOBP, TRIP12, TRPC4AP, TSTA3, TTR, TTYH3, TUBB3, TUBGCP2, UBB, UMPS, UROD, UROD, PAICS, VPS 18 , YLPM1, YWHAZ, ZCCHC14, ZNF174, ZNF410, ZNF589. These markers as well as the combined set of any one of at least 2 markers or at least 20% of said markers (or any higher number as indicated above) is particularly suitable for distinguishing healthy conditions vs. cancer and is preferably used for this diagnosis.

In especially preferred embodiments, the combination is of lists 9-11 and 25-26 and wherein the markers are selected from ABCE1, ACAA2, ACTL6B, ADH5, AKT2, ANKRD36B, ANXA6, APBB1IP, ARHGAP21 , ARHGEF10L, ARHGEF25 , ASAP1, ASB13, ASPSCR1, AXIN1, BCKDHA, C10orf76, TMEM98, C17orf90, AFP, AFP, C18orf32, PECAM1, C6orfl36, CCL28, IK, CDK16, CDT1, CERCAM, CHCHD8, CLDN5, CLU, COMMD9, COX7A2L, CPE, CPNE2, DBI, DCAF11, DCTPP1, DDR1, DDX27, DENR, DHX36, DHX58, DLG5, DTNBP1, EID1, EIF4A2, EPC1, TACC2, ACTL6B, PLEKHOl, EXOSC4, FAM213A, FBLL1, FBRS, FKBP15, FLU, FN1, GNAOl, GOSR1, GRK6, GTF2B, HAPLN3, HARS, HAUS4, HDAC6, HEBP2, HLA-C, JMJD4, HNRNPA2B1, HNRNPK, HNRNPR, HNRPLL, ELAC2, HSPA8, INPP5K, INPPL1, INTS1, INTS1, ISG15, KDM4A, LAMB1 , LCP1, LOC100132116, LRIG1, LRIG1, LRRC16B, LRRC4C, LTBP3, LYSMD2, MAF1, MRPL38, MTCH1, MTCH2, RPL17, MYOIC, MY05A, NARF, NARFL, NBEAL2, NBR1, NDUFB10, NME2, KPNA2 , OTUD1, PABPC1, PAPLN, PDIA3, LOC440354, PI4KA, PIK3CD, PIK3IP1, PJA1, PKD1L1, PKM2 , PLAA, PKP3, PLXNA3, PLXND1, POMT1, PPP1R13B, PPP4R1, PPP5C, PRDX5, PRRT1, PRRT2, PSKH1, PSMB4, REC8, RGS19, RHBDD2, RPL4, RNF40, RPL13, RPL17, RPL22, RPL24, RPL37A, RPN1, SAT2, SERPINA1, SER- PINH1, SGSH, SH3BP2, SLC25A20, SMCHD1, SNTA1, SPRY1, SRRM2, STMN4, TBC1D9B, TBCB, TIAL1, TIAM2, TMC8, TMCC2, TPM3, ZWINT, TRAPPC3, TRAPPC4, TSTA3, TTYH1, GPX4, TUBB3, UBC, UBE2N, USP48, VARS, PAICS, VPS 18 , YLPM1, YPEL1, ZCCHC11, ZFP14, ZNF133,

ZNF232, ZNF410, ZNF668, ZNF672. These markers as well as the combined set of any one of at least 2 markers or at least 20% of said markers (or any higher number as indicated above) is par ¬ ticularly suitable for distinguishing healthy conditions plus low-risk polyps vs. high-risk polyps plus cancer and is prefera ¬ bly used for this diagnosis.

In especially preferred embodiments, the combination is of lists 14 and 28 and wherein the markers are selected from AHSG, AKR1B1, AP1B1, ARPP21, ATP2A3, BMS1P5, BTBD11, CANX, CCL28, CDK16, CPNE1, DCTPP1, DDX19A, DHX8, EHD4, RPA1 , ELAVL1, TACC2, FBX021, C10orf2, HMGCL, IKBKAP, ITGAL, LMTK2, LRPAP1, MAGED1 , MAPKAP1, MARS, MAST2 , MATR3, MUC2, MY05A, NAV2 , NDUFS2, NEFL, PDP1, PEX19, PFKL, PKM2 , PLAA, PLEKHM2 , MED4 (includes

EG:29079), PNCK, PPP2R5C, PSMD6, PTPRS, BAD, RNF10, RPL17,

RPL37A, AC02 (includes EG: 11429), SLC4A3, STK17A, SUV420H1, TBC1D7, TBC1D9B, TRMT2A, TUBA1B, TUBB6, WDR1, WDR5, ZNF277, ZNF514. These markers as well as the combined set of any one of at least 2 markers or at least 20% of said markers (or any high ¬ er number as indicated above) is particularly suitable for dis ¬ tinguishing healthy conditions vs. low-risk polyps and are pref ¬ erably used for this diagnosis.

Some markers are more preferred than others. Especially pre ¬ ferred markers are those which are represented at least 5, at least 6, at least 7, at least 8, at least 9, at least 10, at least 11, at least 12 times in any one of lists 3 to 31. These markers are preferably used in any one of the inventive methods or sets.

Less preferred markers are selected from AGBL5, AKT1, AKT2, C21orf2, C6orfl92, C9orf43, COASY, EFNA3, EPRS, FAS, GOLGA4, GOLGB1, HDAC5, HIP1R, HSPA4, KIAA1416, CHD7, KIF2C, LMNA, MAP- KAPK3, MBD2, NFYA, NHSL1, NUCB1, NY-CO-16, RPS6KA1, RPS6KA2, SDCCAG1, SDCCAG3, SREBF2, STAU1, STUB1, TAX1BP1, TRIP4, TTLL7, WBP2, Znf292, BHMT2, BMX , Cbx5 , CEA, C-myc, CSNK1G2, CTAG1A, DAPK1, FGFR4, GRK7 , HDAC1, Her-2/neu, HMGN2, HMMR, HSPH1, IGLCl, Impl, IRAK4, ITGA6, KDR, Koc, LGR6, LIMS1, LMTK2, MAGEA3, MAP- KAPK5, MFAP2, MKNK1, NAP1L1, NEK3, NMDAR, NOXA1 , NY-CO-41, NY- CO- 8 , NY-ESO-1, P62, PBK, PDE4A, PDGFRB, PDXK, PFDN5, PIM1 , PKN1, PKN2, PRKCD, RBMS1, RBPJ, RIOK1, SALL2, SCP2, SDCCAG10, SDCCAG8, Seb4D, SRC, SSRP1, SSX2, STARD10, STK4, TAF10, TDRD6, TP53, TPM4, TRIM21, TSHZ1, TSLP, UBE3A, USH1C, ZNF706. Preferably none of these markers is used in the inventive methods or present in one of the inventive set. As an alternative to this exclusion, these less preferred markers may just not be a re ¬ quirement of any of the inventive sets, i.e. the sets or lists herein may be read as if any one of these less preferred markers is not a recited therein.

The present invention also relates to a method of selecting such at least 2 markers (or more as given above) or at least 20 % of the markers (or more as given above) of any one of the in ¬ ventive sets with high specificity. Such a method includes com ¬ parisons of signal data for the inventive markers of any one of the inventive markers sets, especially as listed in lists 1 to 31, with said signal data being obtained from controls samples of known conditions or indications and further statistically comparing said signal data with said conditions thereby obtain ¬ ing a significant pattern of signal data capable of distinguish ¬ ing the conditions of the known control samples.

In particular, the controls may comprise one or more cancer ¬ ous control (preferably at least 5, or at least 10 cancerous controls) and/or a pre-cancerous polyp (e.g. high risk or low risk polyps) control (preferably at least 5, or at least 10 pre ¬ cancerous controls) and/or a healthy control (preferably at least 5, or at least 10 healthy controls) . Preferably at least 2 different indications are selected that shall be distinguished. In preferred embodiments, the control comprises samples for the indications selected from indications 1), 2), 3), 4), 5), 6), and 7) as mentioned above.

The controls can be used to obtain a marker dependent signal pattern as indication classifier. Such a signal pattern can be obtained by routine statistical methods, such as binary tree methods. Common statistical methods calculate a (optionally mul ¬ ti-dimensional) vector within the multitude of control data sig ¬ nal values as diagnostically significant distinguishing parame ¬ ter that can be used to distinguish one or more indications from other one or more indications. The step usually comprises the step of "training" a computer software with said control data. Such pre-obtained training data or signal data can be provided on a computer-readable medium to a practitioner who performs the inventive diagnosis.

Preferably, the method comprises optimizing the selection process, e.g. by selecting alternative or additional markers and repeating said comparison with the controls signals, until a specificity and/or sensitivity of at least 75% is obtained, preferably of at least 80%, at least 85%, at least 90%, at least 95%.

Thus as mentioned, the present invention also relates to di ¬ agnosing cancer or pre-cancerous polyps, preferably wherein said precancerous polyps are distinguished between high-risk polyps and low-risk polyps, wherein said high-risk polyps comprise ade ¬ nomatous villous, adenomatous tubulovillous , or co-occurrence of adenomatous tubular with tubulovillous polyps. For any one of the particular distinctions, preferably at least one of the markers or marker lists or subsets thereof, which contains said indication selected from cancer, high-risk polyps, low risk polyps as given above and in table 1 is used.

"Marker" or "marker proteins" are diagnostic indicators found in a patient and are detected, directly or indirectly by the inventive methods. Indirect detection is preferred. In par ¬ ticular, all of the inventive markers have been shown to cause the production of (auto) antigens in cancer patients or patients with a risk of developing cancer. The easiest way to detect these markers is thus to detect these (auto) antibodies in a blood or serum sample from the patient. Such antibodies can be detected by binding to their respective antigen in an assay.

Such antigens are in particular the marker proteins themselves or antigenic fragments thereof. Suitable methods exist in the art to specifically detect such antibody-antigen reactions and can be used according to the invention. Preferably the entire antibody content of the sample is normalized (e.g. diluted to a preset concentration) and applied to the antigens. Preferably the IgG, IgM, IgD, IgA or IgE antibody fraction, is exclusively used. Preferred antibodies are IgG. Preferably the subject is a human .

Binding events can be detected as known in the art, e.g. by using labeled secondary antibodies. Such labels can be enzymat ¬ ic, fluorescent, radioactive or a nucleic acid sequence tag. Such labels can also be provided on the binding means, e.g. the antigens as described in the previous paragraph. Nucleic acid sequence tags are especially preferred labels since they can be used as sequence code that not only leads to quantitative infor ¬ mation but also to a qualitative identification of the detection means (e.g. antibody with certain specificity) . Nucleic acid se ¬ quence tags can be used in known methods such as Immuno-PCR. In multiplex assays, usually qualitative information is tied to a specific location, e.g. spot on a microarray. With qualitative information provided in the label, it is not necessary to use such localized immunoassays. In is possible to perform the bind ¬ ing reaction of the analyte and the detection means, e.g. the serum antibody and the labeled antigen, independent of any solid supports in solution and obtain the sequence information of the detection means bound to its analyte. A binding reaction allows amplification of the nucleic acid label in a detection reaction, followed by determination of the nucleic acid sequence determi ¬ nation. With said determined sequence the type of detection means can be determined and hence the marker (analyte, e.g. se ¬ rum antibody with tumor associated antigen specificity) .

In preferred embodiments of the invention the step of de ¬ tecting antibodies binding said marker proteins, detecting said marker proteins or antigenic fragments thereof comprises compar ¬ ing said detection signal with detection signals of a healthy control and comparing said detection signals, wherein an increase in the detection signal indicates colon cancer or said risk of colon cancer.

In preferred embodiments of the invention the step of de ¬ tecting antibodies binding said marker proteins, detecting said marker proteins or antigenic fragments thereof comprises compar ¬ ing said detection signal with detection signals of a cancerous control or a pre-cancerous polyp (e.g. high risk or low risk polyps) control and comparing said detection signals. Alterna ¬ tively or in addition, the comparison can also be with a healthy control, a control of a low-risk polyp, a control with a high risk polyp or any combination thereof. In preferred embodiments, the control comprises the indications that are intended to be distinguished, such as indications 1), 2), 3), 4), 5), 6), and 7) as mentioned above. In particular preferred, especially in cases of using more marker sets of 2 or more markers as men ¬ tioned above, a statistical analysis of the control is per ¬ formed, wherein the controls are used to obtain a marker depend ¬ ent signal pattern as indication classifier and the marker dependent signals of the sample to be analysed is compared with and/or fitted onto said pattern thereby obtaining information of the diagnosed condition or indication. Such a signal pattern can be obtained by routine statistical methods, such as binary tree methods. Common statistical methods calculate a (optionally mul ¬ ti-dimensional) vector within the multitude of control data sig ¬ nal values as diagnostically significant distinguishing parame ¬ ter that can be used to distinguish one or more indications from other one or more indications. Such statistical analysis is usu ¬ ally dependent on the used analytical platform that was used to obtain the signal data, given that signal data may vary from platform to platform. Such platforms are e.g. different microar- ray or solution based setups (with different labels or analytes - such as antigen fragments - for a particular marker) . Thus the statistical method can be used to calibrate each platform to ob ¬ tain diagnostic information with high sensitivity and specifici ¬ ty. The step usually comprises the step of "training" a computer software with said control data. Alternatively, pre-obtained training data can be used. Such pre-obtained training data or signal data can be provided on a computer-readable medium to a practitioner .

In further embodiments a detection signal from the sample of a patient in amplitude of at least 60%, preferably at least 80%, of the cancerous control indicates colon cancer or said risk of colon cancer.

Usually not all of the inventive markers or detection agents may lead to a signal. Nevertheless only a fraction of the sig ¬ nals is suitable to arrive at a diagnostic decision. In pre ¬ ferred embodiments of the invention a detection signal in at least 60%, preferably at least 70%, least 75%, at least 85~6 , or in particular preferred at least 95%, even more preferred all, of the used markers indicates colon cancer or said risk of colon cancer .

The present diagnostic methods further provide necessary therapeutic information to decide on a surgical intervention. Therefore the present invention also provides a method of treat ¬ ing a patient comprising colon cancer or having a polyp with a high risk of developing colon cancer, comprising detecting cancer or a polyp with a high risk of developing colon cancer according to any aspect or embodiment of the invention and removing said colon cancer or polyp. "Stratification or therapy control" for the purposes of this invention means that the method according to the invention renders possible decisions for the treatment and therapy of the patient, whether it is the hospi ¬ talization of the patient, the use, effect and/or dosage of one or more drugs, a therapeutic measure or the monitoring of a course of the disease and the course of therapy or etiology or classification of a disease, e.g., into a new or existing subtype or the differentiation of diseases and the patients there ¬ of. In a further embodiment of the invention, the term "strati ¬ fication" covers in particular the risk stratification with the prognosis of an outcome of a negative health event.

One skilled in the art is familiar with expression libraries, they can be produced according to standard works, such as Sambrook et al, "Molecular Cloning, A laboratory handbook, 2nd edition (1989), CSH press, Cold Spring Harbor, N.Y. Expression libraries are also preferred which are tissue-specific (e.g., human tissue, in particular human organs) . Members of such libraries can be used as inventive antigen for use as detection agent to bind analyte antibodies. Furthermore included according to the invention are expression libraries that can be obtained by exon-trapping . A synonym for expression library is expression bank. Also preferred are protein biochips or corresponding ex ¬ pression libraries that do not exhibit any redundancy (so- called: Uniclone (R) library) and that may be produced, for exam ¬ ple, according to the teachings of WO 99/57311 and WO 99/57312. These preferred Uniclone libraries have a high portion of non- defective fully expressed proteins of a cDNA expression library. Within the context of this invention, the antigens can be ob ¬ tained from organisms that can also be, but need not be limited to, transformed bacteria, recombinant phages, or transformed cells from mammals, insects, fungi, yeasts, or plants. The mark ¬ er antigens can be fixed, spotted, or immobilized on a solid support. Alternatively, is is also possible to perform an assay in solution, such as an Immuno-PCR assay. In a further aspect, the present invention provides a kit of diagnostic agents suitable to detect any marker or marker combi ¬ nation as described above, preferably wherein said diagnostic agents comprise marker proteins or antigenic fragments thereof suitable to bind antibodies in a sample, especially preferred wherein said diagnostic agents are immobilized on a solid sup ¬ port or in solution, especially when said markers are each la ¬ belled with a unique label, such as a unique nucleic acid se ¬ quence tag. The inventive kit may further comprise detection agents, such as secondary antibodies, in particular anti-human antibodies, and optionally also buffers and dilution reagents. The invention therefore likewise relates to the object of providing a diagnostic device or an assay, in particular a pro ¬ tein biochip, ELISA or Immuno-PCR assay, which permits a diagno ¬ sis or examination for colon carcinoma.

Additionally, the marker proteins (as binding moieties for antibody detection) can be present in the respective form of a fusion protein, which contains, for example, at least one affinity epitope or tag. The tag may be one such as contains c-myc, his tag, arg tag, FLAG, alkaline phosphatase, VS tag, T7 tag or strep tag, HAT tag, NusA, S tag, SBP tag, thioredoxin, DsbA, a fusion protein, preferably a cellulose-binding domain, green fluorescent protein, maltose-binding protein, calmodulin-binding protein, glutathione S-transferase, or lacZ, a nanoparticle or a nucleic acid sequence tag. Such a nucleic acid sequence can be e.g. DNA or RNA, preferably DNA.

In all of the embodiments, the term "solid support" covers embodiments such as a filter, a membrane, a magnetic or fluoro- phore-labeled bead, a silica wafer, glass, metal, ceramics, plastics, a chip, a target for mass spectrometry, or a matrix. However, a filter is preferred according to the invention.

As a filter, furthermore PVDF, nitrocellulose, or nylon is preferred (e.g., Immobilon P Millipore, Protran Whatman, Hybond N+ Amersham) .

In another preferred embodiment of the arrangement according to the invention, the arrangement corresponds to a grid with the dimensions of a microtiter plate (8-12 wells strips, 96 wells, 384 wells, or more) , a silica wafer, a chip, a target for mass spectrometry, or a matrix.

Preferably the inventive kit also comprises non-diagnostic control proteins, which can be used for signal normalization. These control proteins bind to moieties, e.g. proteins or anti ¬ bodies, in the sample of a diseased patient same as in a healthy control. In addition to the inventive marker proteins any num ¬ ber, but preferably at least 2 controls can be used in the meth ¬ od or in the kit.

Preferably the inventive kit is limited to a particular size. According to these embodiments of the invention the kit comprises at most 3000 diagnostic agents, preferably at most 2500 diagnostic agents, at most 2000 diagnostic agents, at most 1500 diagnostic agents, at most 1200 diagnostic agents, at most 1000 diagnostic agents, at most 800 diagnostic agents, at most 500 diagnostic agents, at most 300 diagnostic agents, at most 200 diagnostic agents, at most 100 diagnostic agents, such as marker proteins or antigenic fragments thereof.

In especially preferred embodiments of the invention the kit further comprises a computer-readable medium or a computer pro ¬ gram product, such as a computer readable memory devices like a flash storage, CD-, DVD- or BR-disc or a hard drive, comprising signal data for the control samples with known conditions se ¬ lected from cancer or a pre-cancerous polyp (such as high risk polyps and/or low risk polyps) and/or of healthy controls, and/or calibration or training data for analysing said markers provided in the kit for diagnosing colon cancer or distinguishing conditions or indications selected from healthy conditions, cancer, high-risk polyps and low-risk polyps. Especially pre ¬ ferred are the indications 1), 2), 3), 4), 5), 6) and 7) men ¬ tioned above.

The kit may also comprise normalization standards, that re ¬ sult in a signal independent of a healthy condition and cancer ¬ ous or pre-cancerous condition. Such normalization standards can be used to obtain background signals. Such standards may be spe ¬ cific for ubiquitous antibodies found in a human, such as anti ¬ bodies against common bacteria such as E. coli. Preferably the normalization standards include positive and negative (leading to no specific signal) normalization standards.

The present invention is further illustrated by the follow ¬ ing figures and examples, without being limited to these embodi ¬ ments of the invention. Figures :

Fig. 1: Example of a scanned 16k protein-microarray . In the de ¬ tail right side, subarray 6 is depicted.

Fig. 2: Subsets of classifier markers form the panels defined by the 50 classifier markers for distinguishing Cancer vs. Controls were selected and randomly chosen subsets of 2-49 markers (x- axis) were selected 1000-times. The classification success ob ¬ tained by that subset using the nearest centroid classifier al ¬ gorithm is shown on the y-axis.

Fig. 3: The 80 classifier markers for distinguishing Disease (Cancer & polyps) vs. Controls were selected and randomly chosen subsets of 2-79 markers (x-axis) were selected 1000-times. The classification success obtained by that subset using the nearest centroid classifier algorithm is shown on the y-axis.

Examples :

Example 1: Patient samples

Biomarker screening has been performed with serum samples from a test set of serum samples derived from 49 individuals with confirmed colon-carcinoma, 50 healthy controls, 17 patients with high-risk polyps, and 18 patients with low-risk polyps (n=134) . All these individuals have been elucidated by a posi ¬ tive FOBT test and underwent colonoscopy. The differentiation of carcinoma (denoted Care) , high and low risk polyps (denoted HR and LR, respectively) and controls (denoted Contr) was conducted during clinical examination of patients and tissue samples.

Example 2: Immunoglobuline (IgG) purification from the serum or plasma samples

The patient serum or plasma samples were stored at -80 °C before they were put on ice to thaw them for IgG purification using Melon Gel 96-well Spin Plate according the manufacturer's instructions (Pierce) . In short, ΙΟμΙ of thawed sample was di ¬ luted in 90 μΐ of the equilibrated purification buffer on ice, then transferred onto Melon Gel support and incubated on a plate shaker at 500 rpm for 5 minutes. Centrifugation at 1,000 x g for 2 minutes was done to collect the purified IgG into the collec ¬ tion plate. Protein concentrations of the collected IgG samples were measured by absorbance measures at 280nm using an Epoch Micro- Volume Spectrophotometer System (Biotec, USA) . IgG-concentrations of all samples were concentration-adjusted and 0.6 mg/ml of sam ¬ ples were diluted 1:1 in PBS2x buffer with TritonX 0.2% and 6% skim milk powder for microarray analyses.

Example 3: Microarray design

A protein-chip named "16k protein chip" from 15284 human cDNA expression clones derived from the Unipex cDNA expression library plus technical controls was generated. Using this 16k protein chip candidate markers were used to identify autoanti ¬ body profiles suitable for unequivocal distinction of healthy, malign and benign colon tumors.

Protein-microarray generation and processing was using the Unipex cDNA expression library for recombinant protein expression in E.coli. His-tagged recombinant proteins were purified using Ni-metal chelate chromatography and proteins were spotted in duplicates for generation of the microarray using ARChipEpoxy slides .

Example 4: Preparation, processing and analyses of protein mi- croarrays

The microarray with printed duplicates of the protein marker candidates was blocked with DIG Easy Hyb (Roche) in a stirred glass tank for 30 minutes. Blocked slides were washed 3x for 5 minutes with fresh PBSTritonX 0.1% washing buffer with agitation. The slides were rinsed in distilled water for 15 seconds to complete the washing step and remove leftovers from the wash ¬ ing buffer. Arrays were spun dry at 900rpm for 2 minutes. Micro- arrays were processed using the Agilent Microarray Hybridisation Chambers (Agilent) and Agilent's gasket slides filled with

490 μΐ of the prepared sample mixture and processed in a hybrid ¬ ization oven for 4 h at RT with a rotation speed of 12. During this hybridization time the samples were kept under permanent rotating conditions to assure a homolog dispensation.

After the hybridization was done, the microarray slides were washed 3x with the PBSTritonX 0.1% washing buffer in the glass tank with agitation for 5 minutes and rinsed in distilled water for about 15 seconds. Then, slides were dried by centrifugation at 900 rpm for 2 minutes. IgG bound onto the features of the protein-microarrays were detected by incubation with cy5 conju ¬ gated Alexa Fluor® 647 Goat Anti-Human IgG (H+L) (Invitrogen, Lofer, Austria), diluted in 1:10,000 in PBSTritonX 0.1% and 3% skim milk powder using rotating conditions for lh, with a final washing step as outlined above. Microarrays were then scanned and fluorescent data extracted from images (Fig. 1) using the GenePixPro 6.0 software (AXON).

Example 5: Data analysis

Data were 1) quantil normalised and alternatively 2) normal ¬ ised in DWD transformation for removal of batch effects, when samples were processed on microarrays in 4 different runs; data analyses was conducted using BRB array tools (web at li- nus.nci.nih.gov/BRB-ArrayTools.html) upon the 2 different normalization strategies (quantil and DWD normalized) .

For identification of tumor marker profiles and classifer markers, class prediction analyses applying leave-one-out cross- validation was used. Classifiers were built for distinguishing each of the four classes of samples denoted "Care" carcinoma pa ¬ tients, "HR" patients harboring high-risk polyps, "LR" patients harboring low-risk polyps, and "Contr" individuals with no carcinoma or polyps. In addition different combinations of classes were also built as listed in the table below (Tab. 1) and again class prediction analysis was conducted for differentiation of these different combinations.

Table 1: Colon tumor marker Classifiers defined for separation of different indications (Care: Colon Carcinoma, Contr.: con ¬ trols with no colon or polyp/tumor; LR/HR: low / high risk polyps; vs.... versus) . The various examples upon data analyses after different normalization strategies A) and B) are given.

Contrast analysed A) examples B) examples with quantil with DWD nornormalisation malisation

1) Contr. vs. Care & HR & LR 7.1, 7.2 7.17, 7.18

2) Contr. vs. Care. 7.3-7.6 7.19-7.22

3) Contr. & LR vs. Care. & HR 7.7-7.9 7.23, 7.24 4) Care. vs. Hr vs. LR vs. Contr. 7.10, 7.11 7.25

5) Contr. vs. LR 7.12 7.26

6) LR vs. HR 7.13, 7.14 7.27

7) HR vs. Care. 7.15, 7.16 7.28, 7.29

Example 6: Results Summary

For distinguishing 1) Contr vs "Carc-HR- LR", 2) Controls vs Carcinomas, or 3) Contr_LR vs Carc_HR, 47 genes were present in at least 5 classifier lists. The classification success with respect to different contrasts (differentiation of different pa ¬ tient classes and combinations thereof) and presence of 47 pre ¬ ferred List 2 markers is given in Table 3. As shown, the number of markers out of the 47 selected. It was also shown that using only isolated or only 2 markers from the present classifier sets enables correct classification of >60% (Example 8, Fig. 2 & 3) . Therefore the marker-lists, subsets and single markers (anti ¬ gens; proteins; peptides) are of particular diagnostic values.

In addition it has already been shown that peptides deduced from proteins or seroreactive antigens can be used for diagnos ¬ tics and in the published setting even improve classification success (Syed 2012; Journal of Molecular Biochemistry; Vol 1, No 2, www.jmolbiochem.com/index.php/JmolBiochem/article/view/54) .

Table 2: Data upon Quantil and DWD normalisation have been ana ¬ lyzed with respect to different Contrasts given and classifiers generated by different class prediction methods, - the numbers of classifiers is depicted; out of these a valuable number of preferred 47 List 2 markers is present within those classifiers lists. Correct classification for each example is given in %. The right column refers to the number of the example.

Different classifier lists have been elucidated for the "contrasts" listed in Table 1, - upon A) quantil normalization (QNORM) and B) DWD transformation.

Classifier markers (n=1150) were identified according to List 1. 441 markers were present in in both sets of A) and B) normalized data; 431 markers were present in classifier-sets upon A) quantil normalization, and 270 are present in classifiers upon DWD transformation.

Upon marker annotation 225 markers present an identical pro ¬ tein, 225 duplicates can be removed and remaining unique make up a list of 959 single Unigenes; thereof 374 are present in both sets of QNORM (A) and DWD (B) normalized data; 320 are present in classifiers upon QNORM, and an additional 265 are present in classifiers upon DWD transformation. Taken together based on the Unigene ID - 3 different markers are present in 17 classifiers, 2 markers in 16 classifiers, 7 markers in 14 classifiers etc.

Example 7: Detailed Results

Quantil-normalised data

Example 7.1: Contr vs "Carc-HR-LR"- "grid of alpha levels" & 1.25 fold

The following markers were identified according to this ex ¬ ample : List 3: ACADVL, ACTL6B, ADAP1, ADCY1, ADD2, AK1, AKR1C4,

ANGPTL2, ANXA6, APBB1, APBB1, ARHGEF1, ARL16, GDAP1L1, ASB13, ATP6V1H, ATXN10, BCS1L, BIN3, C10orf76, C16orf58, C16orf58, C17orf28, TMEM98, C17orf90, AFP, AFP, CALR, CALR, CAMK1D, CAPN2, CCDC64, CCDC88B, IK, CDH23, CDK16, CDK9, CHID1, CHID1, CKM, CLUAP1, C0A5, COL6A3, CPNE9, CTAGE5, CUL1, CUX1, DBR1 (includes EG:323746), DDX19B, DDX41, DHX58, DNAH1, D0CK9, D0CK9, DPP3, DPYSL3, DRAP1, DRG2 , EHMT2, EIF3E, EIF4A2, RPA1 , EPS 8L2 , TACC2, EX0C6B, EXTL1, FAM108C1, FAM214A, HMGN2, FASN, FBX044, FKBP15, FLU, FLNA, FLNA, FNTA, GBAS, GNPTG, GPCPD1, GPSM1, GRK6, GSS, HAUS4, HMGA1, HMGB2, HNRPDL, HSP90B1, HSPA8, SNAPIN, IDH3G, IDS, IFITM1, IFRD1, INA, IVNS1ABP, JARID2, KCNAB2, KCNG1, KIAA0368, KIAA1598, KPNA2, KPNB1, LAMB1 , LGALS3, LM04, LOC494127, HMGB2, LPCAT1, LPPR3, LRP5, LRRN2 , LSM12 (includes EG: 124801), LTBP3, MACF1, MED19 , MICALl, MRPL28 (includes EG: 10573), MRPL38 (in ¬ cludes EG:303685), MTCH2, MYCBP2, NAPA (includes EG:108124), NARF, NELL2, NISCH, NMT2, N0A1 , KPNA2 , NRBP2, NOA1 , NT5C, NUMA1 , OAS3, OCRL, OGT, PAICS, PDDC1, PDIA4, PDZD4, PEA15, PEX5, PHF2, PHF8, PI4KA, PITPNC1, PKM2 , PLAA, PKM2 , PLAA, PLD2, PLXND1, POLN, PPIF, PPP1CA, PPP1R2, PPP4C, PSMC3, PSMD2, PSMD2, PTPN5, PTPN6, RAN, RIPK1, RNH1, RPL10A, RPL17, RPL24, RPL26, RPL26, RPN1, RRM1, RSL1D1, RUVBL2, SAT1, SCHIP1, SERPINB1, SFTPA1, SLC4A3, SKIV2L, SLU7 (includes EG: 10569), SMURF2, SNRNP200 , SNX1, SORL1, SPAG17 , SPECC1L, SPP1 (includes EG:20750), STK25, TBCD, TBL3, TCERG1, TCF3, HSPA5, TFAP4, THAP7, VIM, TKT, TMCC2, TMEM12 OA, TMSB10 /TMSB4X, TPT1 (includes EG : 100043703 ) , TSC22D3, TUBA1B, TUBA1B, TUBB4A, TWF2 , TYK2, UROD, PAICS, VAT1, VPS13C, VTI1B, WDR18, WDR35, YME1L1, YWHAQ, ZC3H10, ZNF12, ZNF354B, ZSWIM4.

Using microarray data for distinguishing "Contr" versus "Carcinoma & polyps" class prediction analysis was performed us ¬ ing feature selection upon "optimization of the grid of alpha levels" and "1.25 fold change of median intensities between classes". The 1-Nearest Neighbour Predictor gave the best cor ¬ rect classification of 81% using 216 markers.

Genes significantly different between the classes at the 0.01, 0.005, 0.001 and 0.0005 significance levels were used to build four predictors. The predictor with the lowest cross- validation mis-classification rate was selected. The best compound covariate classifier consisted of genes significantly dif- ferent between the classes at the 5e-04 significance level. The best diagonal linear discriminant analysis classifier consisted of genes significantly different between the classes at the 5e- 04 significance level. The best 1-nearest neighbor classifier consisted of genes significantly different between the classes at the 0.001 significance level. The best 3-nearest neighbors classifier consisted of genes significantly different between the classes at the 5e-04 significance level. The best nearest centroid classifier consisted of genes significantly different between the classes at the 5e-04 significance level. The best support vector machines classifier consisted of genes signifi ¬ cantly different between the classes at the 0.01 significance level. The best Bayesian compound covariate classifier consisted of genes significantly different between the classes at the 5e- 04 significance level. Only genes with the fold-difference be ¬ tween the two classes exceeding 1.25 were used for class predic ¬ tion.

Repeated 1 times K-fold (K= 20) cross-validation method was used to compute mis-classification rate.

Performance of classifiers during cross-validation.

The following parameters can characterize performance of classifiers: Sensitivity, Specificity, Positive Predictive Val ¬ ue, Negative Predictive Value; Sensitivity is the probability for a class A sample to be correctly predicted as class A,

Specificity is the probability for a non-class A sample to be correctly predicted as non-A, PPV is the probability that a sam ¬ ple predicted as class A actually belongs to class A, NPV is the probability that a sample predicted as non-class A actually does not belong to class A.

For each classification method and each class, these parame ¬ ters are listed in the tables below

Performance of the 1 -Nearest Neighbor Classifier:

Sensitivity jSpecificity | PPV ! NPV

Class

Care HR LR 0.917 0.64 0.811 0.821 Control 0.64 0.917 0.821 0.811

Performance of the 3-Nearest Neighbors Classifier:

Sensitivity Specificity

Class

Care HR LR 0.964 0.52 0.771 0.897 | Performance of the Support Vector Machine Classifier:

Sensitivity Specificity

Class

Care HR LR 0.94 0.76 0.868 0.884

Control 0.76 0.94 0.884 0.868

Example 7.2: "Carcinoma & polyps vs Contr" -25greedy pairs >1NN & SVM 78%

The following markers were identified according to this ex ¬ ample :

List 4: ARHGAP21, ARHGEF1, ASB13, BCKDHA, BCS1L, C10orf76,

C17orf28, TMEM98, C17orf90, AFP, AFP, CHD8, DEF8, EID1, RPA1, TACC2, ACTL6B, HMGN2, FASN, C10orf2, HAUS4, BTBD6, MRPL47,

MTCH2, NARFL, NME2, NRBP2, NOA1 , PDP1, PIK3R2, PSMA2, PSMC2, RAD1, RPL26, RPL37A, SBF2, SERPINA1, SLC4A3, MGAT4B, UBE2L3, UMPS, UROD, PAICS, VPS72 (includes EG : 100001285 ) , WDR13, ZNF668.

Alternatively to example 7.1 the "greedy pairs" strategy was used for class prediction, and it was possible to very effi ¬ ciently build classifiers for distinguishing "Contr" versus

"Carcinoma & polyps" (contrast 1) . Using "25 greedy pairs" of features on arrays, the 1-Nearest Neighbor Predictor (1-NN) and the Support Vector Machines Predictor (SVM) enabled correct classification of 78% of samples.

Greedy pairs algorithm was used to select 25 pairs of genes. Repeated 1 times K-fold (K= 20 ) cross-validation method was used to compute mis-classification rate.

Performance of classifiers during cross-validation.

Performance of the 1-Nearest Neighbor Classifier:

Sensitivity Specificity V

Class j PP j NPV Care HR LR (0.929 0.52 0.765 [0.812 j

[ Control [0.52 0.929 (0.812 0.765 j

Performance of the 3-Nearest Neighbors Classifier:

Specificity

Class Sensitivit y I PPV I NPV j

rCarcJhHR lR 094 044 [θ^ jliisj

j Control 0.44 0.94 0.815 0.738

Example 7.3: "Care vs. Contr" - 25greedy pairs >97% INN

The following markers were identified according to this ex ¬ ample :

List 5: APBA3, Cllorf80, CAMK1D, CCND1, CEP57, COL6A3,

HSPA1A/HSPA1B, CSRNP1, CUL1, DDX19B, DENND5A, EHMT2, EIF3L,

ERBB3 (includes EG: 13867), TACC2, FBN1, HK1, IVNS1ABP, JMJD7- PLA2G4B, KIF3C, METTL2B, NAGLU, NCAN, NFKB2, NME2, PBX2 , PDZD4, PLXNA1, PRKACA, PSMB6, RPL24, RPS7, RUVBL2, SGSH, SPRY1, TAGLN3, TNFAIP2, TSTA3, TTR, UMPS .

For contrast 2 the "greedy pairs" strategy was used for class prediction for the first 34 (17 care; 17 contr) samples of runl, and it was possible to very efficiently build classifiers for distinguishing "Contr" versus "Care". Using "25 greedy pairs" of features on arrays, the 1-Nearest Neighbor Predictor (1-NN) enabled best correct classification of 97% of samples.

Greedy pairs algorithm was used to select 25 pairs of genes. Leave-one-out cross-validation method was used to compute mis- classification rate.

Performance of classifiers during cross-validation.

Performance of the Nearest Centroid Classifier:

Specificity | PPV | NPV j

Class Sensitivi 'y

[carcinoma [o.941 R j [0.944 !

j Control 1 j0941 [01)44 [Ϊ j

Example 7.4: "Care vs. Contr" - 25greedy pairs - 80% INN

The following markers were identified according to this ex ¬ ample :

List 6: A1BG, ACTR1B, ADCK3, AP3D1, ARAP1, CHST10, BCL6, TMEM98, C17orf90, AFP, AFP, C6orfl36, COL8A2, CTNND2, DCAF15, GTF3A, ICAM3, IFNGR2, LMNA, LRRC4C, MAN2B1, MTA1 , NPDC1, LOC440354, PMVK, POMGNT1, POTEE/POTEF, PPCDC, TSTA3, RBPJ, RPL7, SETD1B, SLMAP, SNTA1, STAB1, SUOX, TIAL1, TMC07, TRIP12, TRPC4AP,

ZCCHC14, ZNF589.

The "greedy pairs" strategy was used for class prediction of the first 34 (17 care; 17 contr) samples processed in run2, and it was possible to very efficiently build classifiers for dis ¬ tinguishing "Contr" versus "Care". Using "25 greedy pairs" of features on arrays, the 1-Nearest Neighbor Predictor (1-NN) ena ¬ bled best correct classification of 80% of samples.

Greedy pairs algorithm was used to select 25 pairs of genes. Leave-one-out cross-validation method was used to compute mis- classification rate.

Example 7.5: Care vs Contr -25 greedy pairs - INN 79 %

The following markers were identified according to this ex ¬ ample :

List 7: ACTL6B, ARHGEF10L, ATP5H, ATXN2, TMEM98, C17orf90, AFP, AFP, C18orf32, CTDP1, DEF8, DPYSL5, EIF4A2, TACC2, ACTL6B,

PLEKHOl, EXOSC8, HAUS4, BTBD6, LRRC4C, MACF1, MAN2B1, MTCH2, MTSS1L, NARFL, NBEAL2, NHEJ1, OTUD5, PDP1, PKM2 , PLAA, PLEKHA5, POLN, PRKCSH, RAD1, RPL37A, RSL1D1, RSL1D1, SAFB2, SERPINA1, SPRY1, TPX2, UROD, UROD, PAICS, VPS 18.

The "greedy pairs" strategy was used for class prediction of all care & contr samples, and it was possible to very efficient ¬ ly build classifiers for distinguishing "Contr" versus "Care". Using "25 greedy pairs" of features on arrays, the 1-Nearest Neighbor Predictor (1-NN) enabled best correct classification of 79% of samples.

Greedy pairs algorithm was used to select 25 pairs of genes. Repeated 1 times K-fold (K= 20 ) cross-validation method was used to compute mis-classification rate.

Example 7 . 6 : "Care vs Contr" -grid of alpha; 1.25 fold > SVM79%

The following markers were identified according to this ex ¬ ample :

List 8 : ABCA3, ACAA2 , ACTL6B, ACTL6B, ADNP, AHCY, ALB, AMBRA1, APLP1, ARAP1, CHST10, ARAP2, ARHGAP21 , ZNF259, ARHGAP44 ,

ARHGEF1, ARHGEF10L, ARHGEF17 , ASCL1, ATP5H, ATXN2 , AXIN1, BCAS2, BCS1L, BGN, C10orf76, C17orf28, TMEM98, C17orf90, AFP, AFP,

C18orf32, C20orf20, PECAM1, C5orf25, C6orfl36, CCDC64, CCT8, CHD8, CLCN6, CLTA, COL3A1, CPNE6, CTDP1, CUL1, CYC1, DBI,

DCTPP1, DDX41, DEF8, DOCK9, DOCK9, DPP3, DPYSL5, DYNC1H1,

EEF1A1, EFTUD1, EHMT2, EHMT2, EID1, RPA1 , EPC1, EPS 8 , TACC2, ETS1, ACTL6B, PLEKHOl, EXOSC8, FAM149A, FAM204A, FHOD1, FLU, FLNB, GNAOl, GNPTG, GP1BB, GPCPD1, GTDC1, C10orf2, HAUS4, HERC4, HK1, HMGA1, JMJD4, HNRNPK, BTBD6, HSPA9, HTRA1 , IDS, IMP4, ITSN1, KAT8, KCNIPl, LCP1, LDOC1, LMF2 , LMNA, HMGB2, LRRC4C, LSM12 (includes EG: 124801), LTBP3, MACF1, MAPK10, MAPRE1, MAS 2 , MRPL47, MTCH1, MTCH2, MTSS1L, NARFL, NASP, NBEAL2, NHEJ1, NKTR, NME2, NRBP2, NOA1 , NSMCE2, NUMA1 , PAPLN, PATZ1, PDIA3, PDP1, PFKL, PI4KA, PIK3CD, PIK3R2, PKM2 , PLAA, PKM2 , PLAA, PLCG1, PLEKHA5, PLXNA1, PLXNB1, PLXND1, POMT1, PPP1R2, PRKCSH, PSMB1, PTPRO, QTRT1, RBM4, RBM4 , RHOB, RNF40, RPL13, RPL26, RPL27, RPL37A, RPS10, MICALl, RSL1D1, RSL1D1, KLHL23 /PHOSPH02 -KLHL23 , RTN4 (includes EG:57142), RUVBL2, SAFB2, SCARF2, SDCBP, SERPI- NA1, SERPINH1, SGSH, SLC4A3, DARS, SLC4A2, SLC4A3, SNRNP40, SPAG1, SPAG17 , SPRY1, SPTLC1, STAU1, STK17A, MGAT4B, TIAM2, TMCC2, TMEM123 (includes EG:114908), TP53 (includes EG:22059), TP53 (includes EG:22059), TP53BP1, TPX2, TRIOBP, TSTA3, TTYH3, TUBGCP2, UBE2L3, UROD, UROD, PAICS, VPS 18 , WDR73, YARS, YARS, YPEL1, YY1, ZNF12, ZNF358, ZNF512B, ZNF668.

Using feature selection upon "optimization of the grid of alpha levels" and " 1.25 fold change of median intensities be ¬ tween classes" 7 classifier lists using different numbers of markers by the specific classification model (at an optimized significance level) were identified.

Genes significantly different between the classes at the 0.01, 0.005, 0.001 and 0.0005 significance levels were used to build four predictors. The predictor with the lowest cross- validation mis-classification rate was selected. The best compound covariate classifier consisted of genes significantly dif ¬ ferent between the classes at the 0.001 significance level. The best diagonal linear discriminant analysis classifier consisted of genes significantly different between the classes at the 0.001 significance level. The best 1-nearest neighbor classifier consisted of genes significantly different between the classes at the 0.005 significance level. The best 3-nearest neighbors classifier consisted of genes significantly different between the classes at the 0.001 significance level. The best nearest centroid classifier consisted of genes significantly different between the classes at the 0.005 significance level. The best support vector machines classifier consisted of genes signifi ¬ cantly different between the classes at the 0.005 significance level. The best Bayesian compound covariate classifier consisted of genes significantly different between the classes at the 5e- 04 significance level. Only genes with the fold-difference between the two classes exceeding 1.25 were used for class prediction. Repeated 1 times K-fold (K= 20 ) cross-validation method was used to compute mis- classification rate.

Example 7.7: "Carc_HR vs Contr_LR" p<0.005 > SVM 83%

The following markers were identified according to this ex ¬ ample :

List 9: AAAS, ABCE1, ACAA2 , ACAP1, ACINI, ACTL6B, ADNP, ALB, APBB1IP, ARHGAP21 , ARHGAP25 , ARHGEF10L, ARHGEF17 , ARID5A, ASAP1, ASB13, ATP5D, AXIN1, AZI2, BAG6, BCAS2, BCKDHA, BCLAF1,

C10orf76, C17orf28, TMEM98, C17orf90, AFP, AFP, C18orf32,

PECAM1, CDH10, CDK16, CLDN5, CLTA, CLTA, CLUAP1, CNPY3, CRABP1, CSF1R, CTDP1, CUL1, CYHR1, DCAF13, DDX27, DDX41, DEF8, DHX36, DLG5, DLX2, EDC3 (includes EG:315708), EEF1A1, EID1, EIF4A2, TACC2, EVI5L, ACTL6B, PLEKHOl, EXOSC4, EXOSC8, EXOSC8, FAM108A1, FAM149A, FAM192A, FAM209B, FAM59B, FBRS, FHOD1, GALE, GNAOl, GPCPD1, GPN1, GTF2B, HARS, HAUS4, HBP1, HERPUD1, HMG20B, HMG 2 , JMJD4, HNRNPA0, HNRNPK, HNRNPR, HNRPLL, ELAC2, BTBD6, HTRA1 , INA, INPP5K, KIAA0753, KPNB1, LAMA5, LAMB1 , LARP1, LMTK2 , LONP1, LRRC4C, MAGED2 , MAST2 , MCM6, MCM9, MGAT4B, MIIP, MYL6, MY01D, MY01D, MY05A, NARFL, NCOR1, NDUFA13, NME2, NRBP2, NOA1 , NUMA1 , OTUD5, PAICS, PDIA3, LOC440354, PIK3CD, PJA1, PKM2 , PLAA, PKP3, PLXNB1, PLXND1, POLE2, POLRMT, POMT1, PPP5C, PQBP1, PRDX1, PRK- CSH, PSKH1, PSMA2, PSMB5, PSMD10, PTPRF, RAB3IL1, RBM4 , RBM4 , RBM4, RBM4, REC8 (includes EG:290227), RHBDD2, RHOB, RNF220, RNF40, RP9, RPL13, RPL17, RPL22, RPL37A, SAFB2, SERPINA1, SER- PINH1, SETD2, SFTPB, DARS, SH3BP2, SLC25A20, SPOCK2, SPRY1, SPTAN1, SPTLC1, STMN4, STT3B, TBC1D9B, TH0C3, TIAM2, TMCC2, TMEM57, TNFRSF6B, TP53BP1, TPM3, ZWINT, TTC5, TUBB, TUBB3, TUB- GCP2, TWF1 (includes EG: 19230), UBC, UBE2L3, UBE2N, ULK1, UROD, UROD, VARS, PAICS, VPS 18 , WASH1 /WASH5P, WDR13, WDR73, WDR77, XAB2, YARS, YPEL1, YY1, ZFYVE1, ZNF133, ZNF410, ZNF668, ZNF695, ZXDC.

Using feature selection upon "Genes significantly different between the classes at 0.005 significance level" and " 1.25 fold change of median intensities between classes" 7 classifier lists using different numbers of markers by the specific classifica ¬ tion model were identified. The Support Vector Machines Predic ¬ tor gave the best correct classification of 83% using 226 markers .

Genes significantly different between the classes at 0.005 significance level were used for class prediction. Repeated 1 times K-fold (K= 20 ) cross-validation method was used to com ¬ pute mis-classification rate.

Performance of classifiers during cross-validation.

Performance of the Support Vector Machine Classifier:

Specificity I PPV ] NPV

Class ! Sensitivit y

Care HR 0.851 0.806 0.814 0.844

iCont LR 0.806 0.851 0.844 0.814

Example 7.8: "Carc_HR vs Contr_LR" 25greedy pairs >SVM 80%

The following markers were identified according to this ex ¬ ample :

List 10: ABCE1, ACAA2 , APBB1IP, ARHGAP21 , ARHGEF10L, BCKDHA, C10orf76, C18orf32, CDK16, COMMD9, DHX36, DLG5, EID1, ACTL6B, PLEKHOl, GTF2B, HAUS4, JMJD4, HNRNPR, INPP5K, LAMB1 , LRRC4C, NARFL, PDIA3, PIK3CD, PJA1, PKM2 , PLAA, PLXND1, PPP5C, PSKH1, RNF40, RPL22, RPL37A, SERPINA1, SPRY1, TBC1D9B, TIAM2, TMCC2, VARS, PAICS, VPS 18 , YPEL1, ZNF668. The "greedy pairs" strategy was used for class prediction of all Carc_HR vs Contr_LR samples, and it was possible to very ef ¬ ficiently build classifiers for distinguishing classes. Using "25 greedy pairs" of features on arrays, the Support Vector Ma ¬ chines Predictor (SVM) enabled best correct classification of 80% of samples.

Greedy pairs algorithm was used to select 25 pairs of genes. Repeated 1 times K-fold (K= 20 ) cross-validation method was used to compute mis-classification rate.

Performance of classifiers during cross-validation.

Performance of the Support Vector Machine Classifier:

Specificity PV ] NPV

Class ! Sensitivit y I P

Care HR 0.821 0.776 0.786 0.812

iCont LR 0.776 0.821 0.812 0.786

Example 7.9: "Carc_HR vs Contr_LR" 40Recursive features >SVM 82% The following markers were identified according to this ex ¬ ample :

List 11: ACAA2, APBB1IP, ASAP1, PECAM1, IK, CDT1, CHCHD8, CPNE2, DTNBP1, TACC2, ACTL6B, GNAOl, GRK6, HDAC6, ELAC2, LRIG1,

LRRC16B, LRRC4C, MY01C, NME2, KPNA2 , PDIA3, LOC440354, PRRT2, PSKH1, RPL24, SNTA1 , STMN4, TIAL1, TMCC2, TRAPPC3, GPX4, UBC, YLPM1, ZCCHC11, ZNF232.

Alternatively to the the "greedy pairs" strategy for class prediction of all Carc_HR vs Contr_LR samples, the "Recursive feature" extraction strategy was used and selection of 40 fea ¬ tures enabled 82% correct classification using the SVM method.

Recursive Feature Elimination method was used to select 40 genes. Repeated 1 times K-fold (K= 20 ) cross-validation method was used to compute mis-classification rate.

Performance of classifiers during cross-validation.

Array ] Class Mean Num- Compound Diagonal 1- 3-Nearest Nearest Support Bayesian i id label ber of genes j Covariate Linear | Nearest Neighbors Centroid j Vector Comin classifier j Predictor Discriminant Neighbor Correct? Correct? Machines pound 1

1 Correct? Analysis 1 1 Correct? Covariate j

Correct? Predictor j

Correct? j j Mean percent j ( j j

j of correct | j | 78 74 1 79 74 j 73 j 82 79 classification: | j j

Performance of the Support Vector Machine Classifier:

j C|ass (Sensitivity (Specificity PPV NPV

Cont LR 0.836 0.806 0.812 0.831

Example 7.10: "Care, HR, LR, Contr" - SVM >85%

The following markers were identified according to this ex ¬ ample :

List 12, part a) : ABCE1, ACAA2, AFMID, AKR1C4, AKR1C4, AKT2, AP2A1, BTBD7, APRT, ARHGEF10L, BMS1P5, C17orf90, AFP, CHD3, CLU, COPS 6 , CTC1, DCAF11, DLG5, ELP2, EPC1, FIBP, FN3K, GBP2 (includes EG: 14469), GMPPB, HIPK3, IL6ST, INTS1, ITGAL, LRIG1,

MTA2, MVD, MY05A, NKRF, NOMOl (includes others), OTUB1, PDE4D, PERI, PHF3, PLXNA3, POR, PSKH1, RABEPK, RNF40, RPL22, SBF1, SE- MA3F, SEPT1, SERPINB9, SGSH, SPRN, SPSB3, TAGLN3, TBC1D9B, TBCB, TP53 (includes EG:22059), TSC2, TUBB6, USP39, VARS, WDR63,

ZNF277, ZNF672.

List 12, part b) : ABCA2, ABCE1, ACAA2 , ACAP1, ACD, ACSL3, ACTB, ADCY1, ADRBK1, AGPAT6, AHSG, AKR1B1, AKT1, ALB, ANAPC5, IGSF9, ANXA6, AP2A1, BTBD7, APBA3, APRT, ARF4, ARF5, ARHGAP25 , ARHGEF2, ARMCX1, ASB13, ATP5D, ATP8B3, BCLAF1, BCS1L, BMS1P5, BSDC1,

BTBD11, C18orf21, C18orf32, PECAM1, C8orf33, C8orf33, CALR,

CAPN2, CAPN2, NDUFB7, CCDC64, CCDC88B, CCL28, CCT8, CDC37,

CDK16, CDK5RAP3, CHID1, CNPY3, COMMD9, COX7A2L, CPNE1, CPNE5, CRABP1, CSF1R, CSNK2B, CTBP2, CTBP2, DCAF10, DCTN3, DCTPP1,

DDIT4, DDX27, DDX41, DDX56, DEF8, DHX8, DHX8, DLG5, DLX2, DPP3, DRAP1, DSE, DVL1, EEF1A1, EEF1A1, EEF1A1, EIF2B5, RPA1 , ELMOl, ELP3, EPN1, EPN1, TACC2, ERP44, ESYT1, ACTL6B, MEAF6, FAM209B, FAM59B, KIAA1109, FAM65A, FCHSD1, FLU, FNTA, FXYD6, G3BP2,

GAL3ST4, GGA1 (includes EG: 106039), GHITM, GIT1 (includes

EG:216963), GOLGA4, GSK3A, GTF3C5, HLA-A, HMGA1, HMGCL, HMGN2, JMJD4, HNRNPH1, HSD17B4, HSP90B1, HSPA1A/HSPA1B, IFRD1, INPP5K, JAG1, KCTD13, KHSRP, KIAA1244, KIF19, LAMP1, LCP1, LMTK2, LOC285463, LPCAT1, LSM14A, LTBP3, MAF1 (includes EG:315093), MAP1A, TCF19, MAPK8IP1, MAPK8IP3, MAS 2 , MEAF6, MGAT4B, MGAT4B, MIB2, MIIP, MLL4, MPI, MRPS11, MTCH1, MTCH2, RPL17,

MUC5AC/MUC5B, NARF, NARFL, NBEAL2, NCF1, NCS1, NDUFA13, NDUFB10, NDUFS2, NIPSNAP1, NME2, NME2, N0M01 (includes others), NPDC1, NR4A1, NT5C, NTAN1, NUMA1 , ODC1, OLFML2A, ALB, PAICS, PCDH9, PDIA3, PI4KA, PIK3CD, PJA1, PKM2 , PLAA, PKM2 , PLAA, PLCE1,

PLXNA3, PLXND1, PPID, PPM1F, PPP1R15A, PPP1R18, PRDX1, PRDX1, PRKCSH, PRKCZ, PRR3, PRRT1, PSAT1, PSKH1, PSMA2, PSMA2, PSME1, PSME1, ARHGDIA, PTPN12, PTPN23, PTPRS, BAD, PTPRS, BAD, HAPLN3, RANBP1, RBM15, RBM26, RBM4 , RBM4 , RC3H2, RHBDD2, RNF220, RPL10, RPL13, RPL22, RPL22, RPL26, RPL28, RPL37A, RPL7, RRP9, RTKN, RUSC1, SBF2, SCAF8, SCOl, SCOC, SDCBP, GRK6, SERBP1, SERPINA1, SETD2, SEZ6L2, SLC4A3, DARS, SLA, VIM, SMCHD1, SNIP1, SRA1, SRSF1, SRSF4, S 6GALNAC1 , STOM, STX6, SUV420H1, SYS1 (includes EG:336339), TADA2B, MGAT4B, TLE1, TLE3, PXN, TMEM57,

TMSB10 /TMSB4X, TNFRSF25, TOE1, TOPORS, TPM3, ZWINT, TPM3, ZWINT, TRIM27, TTC3, TUBA1B, TUBA4A, TUBB, TUBGCP2, TWF2 , UBB, UBE2N, UBXN1, UROD, TUBA1B, USP33, PAICS, VPS13C, VPS26A, WDR13, WDR35, WDR6, XYLT1, YPEL1, YY1, ZEB1, ZNF133, ZNF174, ZNF238, ZNF300, ZNF423, ZNF605, ZNF668.

List 12, part c) : C10orfll8, G6PD, GMIP, SNAPIN, HSPBAP1,

RSL1D1, TCEA2, TPM3, ZWINT, TSPAN7.

Exemplifying the separation of all 4 different sample- classes, a "Binary tree" prediction analysis was conducted. As illustrated in that example the 1st classification node sepa ¬ rates "Low Risk" from all the remaining classes using the markers of list 12, part a) at a "Mis-classification rate" (MCR) of 15.7%, then "controls" are distinguished from "Carcinoma & High Risk" by the markers of list 12, part b) (MCR=13.5%) and in the 3rd node "Carcinoma" are distinguished from "High Risk" by the markers of list 12, part c) (MCR=14.7%).

The markers of List 12, part a) can be used independently from the markers of list 12 parts b) and c) to distinguish LR from the combined group of cancer, healthy controls and HR polyps. Markers of list 12 parts b) and c) can be used to dis ¬ tinguish the indicated groups of classes (medical indications) but work best if the groups have been preselected by using the distinguishing markers of list 12a) in a previous step to remove the LR polyps from the question to be solved. Binary Tree Classification algorithm was used. Feature selection was based on the univariate significance level (alpha = 0.001 ) . The support vector machine classifier was used for class prediction. There were 3 nodes in the classfication tree. 10-fold cross-validation was performed.

Cross-validation error rates for a fixed tree structure shown below.

Then the following parameters can characterize performance of classifiers: Sensitivity, Specificity, Positive Predictive Value (PPV), Negative Predictive Value (NPV)

These parameters are listed in the table below

Example 7.11: "Care, HR, LR, Contr" - SVM++

The following markers were identified according to this ex ¬ ample :

List 13, part a) : ABCA3, ADNP, AHCY, ALB, AMBRA1, ARHGAP21 , ASCL1, ATP5H, AXIN1, BCS1L, BGN, C10orf76, C17orf28, TMEM98, C17orf90, AFP, AFP, C18orf32, PECAM1, C6orfl36, CCDC64, CHD8, CLTA, COL3A1, CPNE6, CYC1, DCTPP1, DDX41, DEF8, DOCK9, DOCK9, DPP3, EEF1A1, EHMT2, EID1, RPA1 , EPC1, EPS 8 , TACC2, ETS1,

ACTL6B, EXOSC8, FLU, GPCPD1, C10orf2, HERC4, HMGA1, JMJD4, BTBD6, IDS, IMP4, ITSN1, KCNIPl, LCP1, LDOC1, HMGB2, LRRC4C, LSM12 (includes EG: 124801), LTBP3, MACF1, MAST2 , MRPL47, MTCH2, MTSS1L, NARFL, NASP, NBEAL2, NKTR, NME2, NRBP2, NOA1 , NSMCE2, NUMA1, PATZ1, PDIA3, PDP1, PI4KA, PIK3CD, PIK3R2, PKM2 , PLAA, PKM2, PLAA, PLCG1, PLXNB1, PLXND1, POMT1, PPP1R2, PRKCSH, PSMB1, RBM4, RBM4, RPL13, RPL26, RPL37A, SAFB2, SCARF2, SDCBP, SERPI- NA1, SLC4A3, DARS, SPRY1, SPTLC1, MGAT4B, TRIOBP, TUBGCP2,

UBE2L3, UROD, UROD, PAICS, YARS, YARS, YPEL1, YY1, ZNF12,

ZNF668.

List 13, part b) : ACAA2, ARHGEF10L, C18orf32, CLTA, DBI, DCTPP1, EXOSC8, FLU, GNAOl, C10orf2, HNRNPK, LMNA, LRRC4C, LTBP3,

MAS 2 , NARFL, NKTR, NUMA1 , PIK3CD, PKM2 , PLAA, PLXND1, RNF40, RPL26, RPL37A, RUVBL2, SGSH, TIAM2, TMCC2, TP53 (includes

EG:22059), WDR73, YPEL1, YY1, ZNF512B.

List 13, part c) : EFTUD1, ETS1, LRRC4C, NME2, PI4KA, PLEKHA5, QTRT1, RSL1D1, RSL1D1, TMEM183A .

For removal of any bias which might have been introduced up ¬ on the experimental design, the "Binary tree" prediction ap ¬ proach was repeated only to the experimental runs when all the 4 classes of samples were represented in two experiments. As ex ¬ pected classification success did improve; following numbers were obtained: As illustrated in the example the 1st classifica ¬ tion node separates "Controls" from all the remaining classes using the markers of list 13, part a) at a "Mis-classification rate" (MCR) of 7.1%, then "Low Risk polyps" are distinguished from "Carcinoma & High Risk" by the markers of list 13, part b) (MCR=17.3%) and in the 3rd node "Carcinoma" are distinguished from "High Risk" by the markers of list 13, part c) (MCR=8.8%).

The markers of List 13, part a) can be used independently from the markers of list 13 parts b) and c) to distinguish health controls from the combined group of cancer, LR polyps and HR polyps. Markers of list 13 parts b) and c) can be used to distinguish the indicated groups of classes (medical indica ¬ tions) but work best if the groups have been preselected by us ¬ ing the distinguishing markers of list 13a) in a previous step to remove the healthy controls from the question to be solved.

Binary Tree Classification algorithm was used. Feature selection was based on the univariate significance level (alpha = 0.05 ) The support vector machine classifier was used for class prediction. There were 3 nodes in the classfication tree.

10-fold cross-validation was performed.

Cross-validation error rates for a fixed tree structure are shown below

Group 2 Mis-classification j

L, . j Group 1 Classes

Node · · Classes I rate (%) |

j 1 Carcinoma. High Risk, Low Risk ! Control j 7.1 j

I 2 j Carcinoma, High Risk I Low Risk i 17 - 3 j

j 3 j Carcinoma High Risk I 8A j

Sensitivity Specificity j PPV j NPV

Example 7.12: "Contr vs LR" - 40 recursive feature extr >75%

The following markers were identified according to this ex ¬ ample :

List 14: AP1B1, ARPP21, ATP2A3, BMS1P5, CCL28, CDK16, DCTPP1, DDX19A, ELAVL1, TACC2, ITGAL, LRPAP1, MAGED1 , MAS 2 , MY05A, NAV2, NEFL, PDP1, PEX19, PFKL, PKM2 , PLAA, PLEKHM2 , MED4 (includes EG:29079), PNCK, PPP2R5C, RNF10, AC02 (includes

EG: 11429), SEPT1, TBC1D9B, TRMT2A, WDR5, ZNF277, ZNF514.

For example the "recursive feature" strategy was used for class prediction of all Contr vs LR samples, and it was possible to very efficiently build a classifier for distinguishing classes. Using 40 recursive features on arrays, all the predictors enabled correct classification of 75% of samples.

Recursive Feature Elimination method was used to select 40 genes. Repeated 1 times K-fold (K= 20 ) cross-validation method was used to compute mis-classification rate.

Performance of classifiers during cross-validation.

Specificity j PPV NPV

Class l Sensitivit y

Control 0.833 0.667 0.714 0.8

Low Risk 0.667 0.833 0.8 0.714 1

Example 7.13: LR vs HR 25 greedy pairs > SVM=80%

The following markers were identified according to this ex ¬ ample :

List 15: ABCE1, AKAP17A, AP2A1, BTBD7 BMS1P5, CELSR1, CENPT, CHD3, CYB5R3, DLG5, FCHSD1, GTF2B, HIST1H2AC, HNRNPM, HNRNPR, ITGA5, JAG1, KIF21A, MAP4 , NBPF11 (includes others), NDRG1,

NDUFA13, NDUFS5, PHF3, PREP, RALGDS, REEP2, RNF213, RNF40,

RPL17, RPL22, RUFY1, SEPT1, SETD2, SMCHD1, SORD, NAP1L1, SYS1 (includes EG: 336339), TPM3, ZWINT, UBXN7, WDR62, ZNF672. The "greed pairs" strategy was used for class prediction of all LR vs HR samples, and a classifier for distinguishing classes was defined. Using 50 features on arrays, the nearest neighbor (NN) and SVM predictors enabled correct classification of 80% of sam ¬ ples .

Greedy pairs algorithm was used to select 25 pairs of genes. Repeated 1 times K-fold (K= 20 ) cross-validation method was used to compute mis-classification rate.

Performance of classifiers during cross-validation.

Performance of the 3-Nearest Neighbors Classifier:

Sensitivity jSpecificity | PPV j NPV

Class

High Risk 0.824 0.778 0.778 0.824 j

i Low Risk 0.778 0.824 S0.824 0.778 i

Performance of the Support Vector Machine Classifier:

Sensitivity Specificity PPV NPV

Class

High Risk 0.882 10.722 0.75 0.867

Low Risk 0.722 Ϊ0.882 0.867 0.75

Example 7.14: LR vs HR 19 greedy pairs > CCP, 1NN=83%

The following markers were identified according to this ex ¬ ample :

List 16: ABCE1, AP2A1, BTBD7, CELSR1, CENPT, CYB5R3, DLG5,

FCHSD1, GTF2B, HIST1H2AC, HNRNPM, HNRNPR, KIF21A, MAP4 , NBPF11 (includes others), NDRG1, PHF3, PREP, REEP2, RNF213, RNF40, RPL17, RPL22, RUFY1, SMCHD1, SORD, NAP1LI, SYS1 (includes EG:336339), TPM3, ZWINT, UBXN7, WDR62, ZNF672.

Then the "recursive feature" strategy for class prediction of all Care vs HR samples was used, and it was possible to very efficiently build a classifier for distinguishing classes. Using 40 recursive features on arrays, the CCVP, SVM and BCCVP predic ¬ tor enabled correct classification of 85% of samples.

Greedy pairs algorithm was used to select 19 pairs of genes. Repeated 1 times K-fold (K= 20) cross-validation method was used to compute mis-classification rate.

Performance of classifiers during cross-validation.

Bayesian

Diagonal

Compound I Support Com¬

Mean NumLinear

Array Class j Covariate i - 3-Nearest j Nearest

I Vector pound ber of genes Discriminant I Nearest Neighbors Centroid

id label j Predictor Machines Covariate in classifier Analysis (Neighbor Correct? Correct?

• Correct? j Correct? Predictor

Correct?

Correct? i Mean percent

j of correct j 74 71 j 83 80 I 77 j 77 76 classification:

Performance of the 1 -Nearest Neighbor Classifier:

j Q| ass (Sensitivity (Specificity j PPV NPV j

(High Risk 0.882 0.778 0.789 0.875 j

Low Risk 0.778 0.882 0.875 0.789 I

Example 7.15: "Care vs HR" - 40recursive feature extr >SVM 85%

The following markers were identified according to this ex ¬ ample :

List 17: ABCF1, ASNA1, SCHIP1, CCDC94, CCDC94, CELSR1, CLEC3B, COBRA1, ECHS1, EDARADD, ETS1, FAM114A2, KIAA1109, FAM65A, FLNA, GMIP, INTS1, IRF3, KDM3B, LARP1, METTL3, PBXIP1, PRKD2 , PSMB5, QTRT1, RPL26, RSL1D1, RSL1D1, SCHIP1, SHF, SPINT1, SPTBN1,

SPTBN1, UBE2Q1, WDR73.

Then the "recursive feature" strategy for class prediction of all Care vs HR samples was used, and it was possible to very efficiently build a classifier for distinguishing classes. Using 40 recursive features on arrays, the CCVP, SVM and BCCVP predic ¬ tor enabled correct classification of 85% of samples.

Recursive Feature Elimination method was used to select 40 genes. Repeated 1 times K-fold (K= 20 ) cross-validation method was used to compute mis-classification rate.

Performance of the Bavesian Compound Covariate Classifier:

Class Sensitivi ty Specificity | PPV j NPV

Carcinoma 0.941 0.706

High Risk 0.706 0.941 0.923 0.762

Example 7.16: "Care vs HR" / 20 greedy pairs > SVM=85%

The following markers were identified according to this ex ¬ ample :

List 18: ADRBK1, ATCAY, C10orfll8, CELSR1, LICAM, CYB5R3, G6PD, GMIP, GTF2I, HNRNPA1, SNAPIN, LRSAM1 , MUM1 , NASP, NFKBID, NR4A1, PGK1, PHF19, RBM4, RPL27, RSL1D1, RSL1D1, AC02 (includes

EG: 11429), SF3B1, TALDOl, TCEA2, THBS1, TPM3, ZWINT, TSPAN7, ZMIZ .

Again using the "greed pairs" strategy for class prediction of Care vs HR samples, 40 features on arrays, enabled correct classification of 85% of samples by the SVM classifier.

Greedy pairs algorithm was used to select 20 pairs of genes Repeated 1 times K-fold (K= 20 ) cross-validation method was used to compute mis-classification rate.

Performance of classifiers during cross-validation.

Diagonal Bayesian

Mean Compound Support

Linear 1- 3-Nearest Nearest Com¬

Array Class Number of Covariate Vector

Discriminant Nearest Neighbors Centroid pound id label genes in Predictor Machines

Analysis Neighbor Correct? Correct? Covariate classifier Correct? Correct?

Correct? Predictor classification:j | 1 ! 7 ! 74 J 79 76 I 76 85 I 75

Performance of the Support Vector Machine Classifier:

Sensitivity Specificity PPV

Class j j NPV

Carcinoma 0.882 0.824 0.833 0.875

High Risk 0.824 0.882 0.875 0.833

DWD transformed data

In analogy to the "Class-prediction analyses" and examples depicted after Quantil-Normalization (QNORM) of protein-chip data, DWD-transformed data were similarly analyzed.

Example 7.17: Healthy vs diseased samples (Carc-HR-LR) compris ¬ ing carcinoma and patients with polyps could be distinguished by a 1-Nearest Neighbour classifier at 83% correct classification using 25 greedy pairs for feature selection.

The following markers were identified according to this ex ¬ ample :

List 19: ADH5 (includes EG: 11532), ALDOA, ARHGEF1, ATXN10, BIN3, C17orf28, TMEM98, C17orf90, AFP, AFP, CDK16, COL3A1, CYC1,

DCTPP1, DEF8, EIF4A2, RPA1 , TACC2, ACTL6B, FAM160A2, LAMB3 , LMTK2, LRRC4C, LTBP3, MTCH2, PAPLN, PDIA3, PDP1, PI4KA, PKM2 , PLAA, PLCG1, PPP1R2, RBM4 , RPL37A, SLC4A3, SPRY1, MGAT4B,

ST3GAL3, TSTA3, UROD, USP7, PAICS, VASP, VPS 18 , ZNF668.

Example 7.18: Healthy vs diseased samples (Carc-HR-LR) compris ¬ ing carcinoma and patients with polyps could be distinguished by a Nearest Centroid classifier at 83% correct classification us ¬ ing 40 greedy pairs for feature selection.

The following markers were identified according to this ex ¬ ample :

List 20: ACADVL, ADH5 (includes EG: 11532), AGFG1, ALDOA,

ARHGEF1, ASB13, ATXN10, BIN3, C17orf28, TMEM98, C17orf90, AFP, AFP, CCNI, CDK16, COL3A1, CPLX1, CPNE6, CTDP1, CYC1, DCTPP1, DEF8, EIF4A2, RPA1 , EPRS, TACC2, ACTL6B, FAM160A2, JMJD4, BTBD6, IMP4, LAMB3 , LCP1, LM07, LMTK2 , LRRC4C, LTBP3, MRPL47, MRPS11, MTCH2, MTSS1L, NARFL, NBEAL2, PAPLN, PDIA3, PDP1, PI4KA, PKM2 , PLAA, PLCG1, PLXND1, PPP1R2, PPP4R1, RBM4 , RBM4 , RPL26, RPL37A, SERPINA1, SF3B4, SLC4A3, SLC25A29, SNRNP40, SPRY1, SSRP1,

MGAT4B, TMUB2, ST3GAL3, TSTA3, UROD, USP7, PAICS, VASP, VPS 18 , YARS, ZNF410, ZNF668.

Example 7.19: Controls vs Carcinomas of a subset of 34 samples conducted in the same analyses run could be distinguished by a Compound Covariate, Support Vector Machines, and Bayesian Com ¬ pound Covariate Predictor classifier at 94% correct classifica ¬ tion using 25 greedy pairs for feature selection.

The following markers were identified according to this ex ¬ ample :

List 21: ACAA2, ASB13, ATXN2, CAMK1D, CCL28, CKM, COL3A1, CUL1, CUL9, DCTPP1, DDX54, DOCK10, EEF1A1, TACC2, GSTP1, HMG20B, HMGN2, HNRNPK, INTS7, ISG15, LIMD2, LMNA, LPCAT1, MACF1, NASP, KPNA2, PAPLN, PBRM1 , PDZD4, PHACTR3, PLEKHA5, PLXND1, PRDM2 , RNF220, SGSH, SPRY1, S 6GALNAC1 , TSTA3, TTYH3, TUBGCP2, UBB, ZNF174, ZNF410.

Example 7.20: Controls vs Carcinomas of the entire study samples could be distinguished by a Compound Covariate Predictor classi ¬ fier at 87% correct classification using 25 greedy pairs for feature selection.

The following markers were identified according to this ex ¬ ample :

List 22: ACTL6B, ARHGEF10L, ARHGEF17 , ATXN2, TMEM98, C17orf90, AFP, AFP, COL3A1, CPLX1, CYC1, DCTPP1, DOCK9, EIF4A2, ERBB3 (includes EG: 13867), TACC2, ACTL6B, PLEKHOl, FAM204A, GEMIN2, GPSM1, HAUS4, IMP4, ISG15, LIMD2, LRRC4C, MACF1, MTCH2, NBEAL2, KPNA2, PAPLN, PKM2 , PLAA, PLCG1, PLXND1, POTEE/POTEF, PPP4R1, PSMB4, REV3L, RPL37A, RSL1D1, KLHL23 /PHOSPH02 -KLHL23 , RTN4 (includes EG:57142), SLC4A3, SPRY1, TMC8, TRIOBP, TSTA3, TUBB3, UROD, PAICS, VPS 18 , ZNF410.

Example 7.21: Controls vs Carcinomas of the entire study samples could be distinguished by a Compound Covariate Predictor classi ¬ fier at 89% correct classification using 15 greedy pairs for feature selection. The following markers were identified according to this ex ¬ ample :

List 23: ACTL6B, ATXN2, TMEM98, C17orf90, AFP, AFP, COL3A1, CPLX1, DCTPP1, ERBB3 (includes EG: 13867), TACC2, ACTL6B, GEMIN2, GPSM1, ISG15, LRRC4C, MACF1, MTCH2, NBEAL2, KPNA2 , PAPLN, PLCG1, REV3L, RPL37A, RSL1D1, TRIOBP, TSTA3, UROD, PAICS, VPS 18 ,

ZNF410.

Example 7.22: Controls vs Carcinomas of the entire study samples could be distinguished by a Support Vector Machines classifier at 83% correct classification using RECURSIVE feature extraction (n=40) for feature selection.

The following markers were identified according to this ex ¬ ample :

List 24: ACTL6B, AFTPH, AKAP9, ARHGEF1, ASNA1, CCL28, CDH2, CSK, DCTPP1, DDX3Y, DNAJC10, EML2, GGA1 (includes EG: 106039), GP1BB, HADHA, HMGN2, I SGI 5, KIAA0368, LRSAM1, MCM3AP, MTCH2, KPNA2, PKD1L1, POGZ, PRMT1, PRPF4B, QTRT1, SAMSN1, GRK6, SERBP1,

TRAPPC3, ST3GAL3, YLPM1, YWHAZ .

Example 7.23: "Controls and low risk poly-patients" vs "Carci ¬ nomas and high risk polyps" of the entire study samples could be distinguished by a 1-Nearest neighbor classifier (143 features) at 76% correct classification using a single-gene p-value of p<0.005 as cut-off for feature selection.

The following markers were identified according to this ex ¬ ample :

List 25: ABCE1, ACAA2 , ACTL6B, ADH5 (includes EG: 11532), AKT2, IGSF9, ANXA6, ARHGEF10L, ARHGEF25 , ASB13, ASPSCR1, AXIN1,

PECAM1, C6orfl36, CCL28, CERCAM, CLDN5, CLU, CPE (includes

EG: 12876), DBI, DCAF11, DCTPP1, DDR1, DDX27, DENR, DHX58, DLG5, EPC1, ACTL6B, PLEKHOl, EXOSC4, FAM213A, FBLL1, FBRS, FKBP15, FLU, FN1, GOSR1, GTF2B, HAPLN3, HARS, HAUS4, HEBP2, HLA-C, HNRNPK, HNRNPR, HNRPLL, HSPA8, INPP5K, INPPL1, INTS1, INTS1, ISG15, KDM4A, LAMB1 , LCP1, LOCI 00132116 , LRIG1, LRRC4C, LTBP3, LYSMD2, MAF1 (includes EG:315093), MRPL38 (includes EG:303685), MTCH1, MTCH2, RPL17, MY05A, NARF, NBEAL2, NBR1, NDUFB10, KPNA2 , OTUD1, PABPC1, PAPLN, PI4KA, PIK3IP1, PKD1L1, PKP3, PLXNA3, PLXND1, POMT1, PPP1R13B, PPP4R1, PRDX5, PRRT1, PSKH1, PSMB4, REC8 (includes EG:290227), RGS19, RHBDD2, RPL4, RNF40, RPL13, RPL17, RPL22, RPN1, SAT2, SERPINH1, SGSH, SH3BP2, SLC25A20, SMCHD1, STMN4, TBC1D9B, TBCB, TIAM2, TMC8, TMCC2, TPM3, ZWINT, TRAPPC4, TSTA3, UBE2N, USP48, VARS, VPS 18 , ZFP14, ZNF133,

ZNF410, ZNF668, ZNF672.

Example 7.24: "Controls and low risk poly-patients" vs "Carci ¬ nomas and high risk polyps" of the entire study samples could be could be distinguished by a Diagonal Discriminant Analyses Pre ¬ dictor classifier at 81% correct classification using 25 greedy pairs for feature selection.

The following markers were identified according to this ex ¬ ample :

List 26: ACAA2, ADH5 (includes EG: 11532), ARHGEF10L, ASPSCR1, TMEM98, C17orf90, AFP, AFP, COX7A2L, DCTPP1, DENR, DLG5, EIF4A2, EPC1, ACTL6B, PLEKHOl, FLU, HLA-C, HNRNPA2B1, HNRNPR, INPP5K, ISG15, LRRC4C, LTBP3, MAF1 (includes EG:315093), MTCH2, KPNA2, PAPLN, LOC440354, PLXND1, RGS19, RNF40, RPL22, SPRY1, SRRM2, TBC1D9B, TMC8, TSTA3, TUBB3, PAICS, VPS 18 , ZNF410, ZNF668,

ZNF672.

Example 7.25: Exemplifying the separation of all 4 different sample-classes, a "Binary tree" prediction analysis was conduct ¬ ed .

The following markers were identified according to this ex ¬ ample :

List 27, part a): AARS, ABCA2, ACADVL, ACSL3, ACTB, ADCY1, ADH5 (includes EG: 11532), AFTPH, AGFG1, AGPAT6, AHSG, AKR1C4, AKR1C4, AKT1, ALDOA, ANAPC5, IGSF9, ANTXR2 , ANXA6, AP2A1, BTBD7, APBA3, APP, ARF4, ARF5, GDAP1L1, ASB13, ASMTL, ATP5D, ATXN10, ATXN10, BCS1L, BRD3, BTBD11, C10orf76, C17orf90, AFP, C18orf21, PECAM1, CALR, CAPN2, CARM1 , NDUFB7, CCDC109B, CCDC136, CCL28, CDC37, CDK16, CDR1, CHD1L, CHGA, COPS3, COX7A2L, CPNE1, CPNE6, CSNK2B, CTSD, DCTN3, DCTPP1, DDB1, DDR1, DDX23, DDX41, DDX56, DEF8, DENND3, ARHGEF40 , DPP3, EEF1A1, EEF1A1, EEF1A1, EHMT2, EIF2B5, RPA1, EPHB6, EPN1, EPRS, TACC2, ESYT1, ARPC1A, FAM193A, ARPC1A, FAM193A, FAM32A, FLU, FLNA, GAL3ST4, GGA1 (includes EG: 106039), GHITM, GOLGA4, GSK3A, GTPBP3, C10orf2, HES6, HLA-C, HMGA1,

HMGCL, HMGN2, JMJD4, HSD17B4, HSP90AB1, IDH3B, IGHA1, KAT5, KAT7, KCTD13, KHSRP, KIF19, KIFAP3, LAMB3 , LCMT1, LCP1, LDLR, LMTK2, LTBP3, MACF1, TCF19, MAP1S, MAPK3, MAPK7 , MARS, MATR3, MEAF6, MGAT4B, MIIP, MLL4, MTCH1, RPL17, NARG2 , NBEAL2, NDUFB10, NDUFS2, NES, NLRC5, NME2, N0L12, N0M01 (includes others), NPDC1, NRBP2, NOA1, OGT, ALB, PAICS, PALM, PCDH9, PDIA3, PDP1, PHF8, PI4KA, PKM2, PLAA, PKM2 , PLAA, PLCE1, PLCG1, PLXND1, PODXL2, POGZ, POMT1, PPM1F, PPP1R2, PRDX1, PRKCZ, PRRT1, PSAT1, PSMA2, PSMD6, PSMD8, PSME1, PTCHD2, ARHGDIA, PTOV1, PTPRS, BAD, HAPLN3, RAI1, RBM15, RBM4 , RBM4 , RBM4 , RHBDD2, RNF216, RNF220, RPL26, RPL27, RPL37A, RPL4, RPS21, RPS27A, KLHL23 /PHOSPH02 -KLHL23 , RTN4

(includes EG:57142), SCAF8, SCOC, SFXN1, SLC4A3, DARS, SH3GL1, SLA, SLC9A3R1, SMUG1, SNIP1, SRA1, SRA1, SRSF1, SSBP2, SSBP2, S 6GALNAC1 , STIM2, STK25, STX6, SUV420H1, TADA2B, TARS, TBC1D7, MGAT4B, TERF2IP, HSPA5, TLE1, TMC8, TMED8, PXN, TNFRSF25, DSN1

(includes EG: 100002916) , TOE1, ST3GAL3, TRIM27, TTYH1, GPX4, TU- BA1B, TUBA1B, TUBA1B, TUBB, TUBB, TUBGCP2, TWF2 , UBB, UBE2N, UBXN1, UROD, TUBA1B, USP7, PAICS, VPS26A, WDR35, WDR6, WSB2, YARS, ZNF133, ZNF174, ZNF300, ZNF408, ZNF423, ZNF605, ZNF668. List 27, part b) : ABCE1, ACAA2, ACAT2 , AFMID, AKAP17A, AKT2, ALAD, ALB, AP2A1, BTBD7, AP2A1, BTBD7, APRT, APRT, ZNF259,

ARHGAP44 , ARHGEF10L, ARHGEF25 , ARRB2, CBR1, CCDC88B, CCL28, CLU, COR07, CRABP1, CSK, CUL9, DCAF11, DCTPP1, DDIT4, DDR1, DDX19B, DDX27, DENR, DLG5, DPP9, DUS1L, DVL1, EEF1A1, EEF1A1, ELP2, EPC1, FCGBP, FLU, GLUL, GMPPB, HIPK3, HNRNPA0, HNRNPH1, HSPA8, IL2RG, IL6ST, INPP5K, INTS1, ISG15, ITGAL, LMAN1, LONP1, LRIG1, MAF1 (includes EG:315093), MCM3AP, MED4 (includes EG:29079), MGAT4B, MRPL27 (includes EG:287635), MTA2 , MYH9, MY05A, NDRG1, NDUFA13, NDUFB10, NISCH, KPNA2 , OTUB1, PDE4D, PECAM1, PERI, PJA1, PLEKHG2, PLXNA3, PLXND1, POR, PPP1R13B, PRPF6, PRR3,

PSKH1, RABEPK, HAPLN3, RBM26, SULT1A3/SULT1A4 , RNF40, RPL17, RPL22, RPS6KA1 (includes EG:20111), RTKN, SEMA3F, SEPT1, GRK6, SERBP1, SERPINB9, SETD2, SGSH, SH3BP2, SLC9A3R1, SMCHD1, SNF8, SPRN, SRA1, SYS1 (includes EG:336339), TAX1BP1, TBC1D9B, TBCB, TMC8, TRPS1, TTC28, TUBB6, VARS, WDR63, XYLT1, ZNF133, ZNF408, ZNF672, ZNF784.

As illustrated in that example the 1st classification node separates "Controls" from all the remaining classes using the markers of list 27, part a) as classifier at a "Mis- classification rate" (MCR) of 7.1%, then "Low Risk" polyp- patients are distinguished from "Carcinoma & High Risk" by the markers of list 27, part b) (MCR=15.4%). The markers of List 27, part a) can be used independently from the markers of list 27 part b) to distinguish health controls from the combined group of cancer, LR polyps and HR polyps. Markers of list 27 part b) can be used to distinguish the indicated groups of classes (medical indications; in this case LR vs. cancer plus HR) but work best if the groups have been preselected by using the distinguishing markers of list 27) in a previous step to remove the healthy controls from the ques ¬ tion to be solved.

Binary Tree Classification algorithm was used. Feature selection was based on the univariate significance level (alpha = 0.001) . The support vector machine classifier was used for class prediction. There were 2 nodes in the classification tree. 10- fold cross-validation was performed.

Cross-validation error rates for a fixed tree structure shown below.

Example 7 . 26 : "Controls" vs "low risk poly-patients" of the en ¬ tire study samples could be could be distinguished by a Nearest Centroid Predictor classifier at 89% correct classification using 25 greedy pairs for feature selection.

The following markers were identified according to this ex ¬ ample :

List 28 : AHSG, AKR1B1, BTBD11, CANX, CPNE1, DHX8, EHD4, RPA1, FBX021, C10orf2, HMGCL, IKBKAP, ITGAL, LMTK2, MAPKAP1, MARS, MATR3, MUC2, NDUFS2, PDP1, PSMD6, PTPRS, BAD, RPL17, RPL37A, SEPT1, SLC4A3, STK17A, SUV420H1, TBC1D7, TUBA1B, TUBB6, WDR1.

Example 7 . 27 : "Low risk vs high risk polyp-patients" of the en ¬ tire study samples could be could be distinguished by a Support Vector Machines classifier at 86% correct classification using 25 greedy pairs for feature selection.

The following markers were identified according to this ex ¬ ample : List 29: ABCE1, AKAP17A, AP2A1, BTBD7, CELSR1, CYB5R3, DLG5, DOC2B, EXOSC4, FCGBP, FLU, FNBP4, GTF2B, HERPUD1, HIST1H2AC, HNRNPM, HNRNPR, HSPA8, IK, MED4 (includes EG:29079), NBPF11 (includes others), PECAM1, PLEKHG2, PRDX5, PREP, REEP2, RNF10, RPL17, RPL22, RTKN, SEPT1, GRK6, SERBP1, SERBP1, NAP1L1, SYS1 (includes EG:336339), TBC1D9B, TBCB, XYLT1, ZNF672.

Example 7.28: "Carcinoma vs high risk polyp-patients" of the en ¬ tire study samples could be could be distinguished by a 1- Nearest Neighbor classifier at 68% correct classification using 25 greedy pairs for feature selection.

The following markers were identified according to this ex ¬ ample :

List 30: ARHGEF10L, ATXN2, BCAM, C10orfll8, Clorfl74, C20orf20, CDK16, CELSR1, CLTA, CPSF1, LICAM, ELP3, HMGN2, FASN, FBN3, G6PD, GNB1, SNAPIN, IDOl, LRSAM1 , MUM1 , NASP, PDE2A, PDZD4, PIK3IP1, POLR2E, PTPRF, PXN, REEP2, RPL27, RSL1D1, SF3B1,

SLC25A6, SMTN, SRA1, TESK1, THBS3, TIPARP-AS1, TNXB, TPM3,

ZWINT, TSPAN7, UBE2Q1, ZMIZ2, ZNF768.

Example 7.29:

"Carcinoma vs high risk polyp-patients" of the entire study sam ¬ ples could be could be distinguished by a Support Vector Ma ¬ chines classifier at 68% correct classification using recursive feature extraction (n=40) for feature selection.

The following markers were identified according to this ex ¬ ample :

List 31: ACSS1, ASNA1, SCHIP1, CCDC94, CDH2, CELSR1, CHN2,

DUSP4, ECHS1, EDARADD, EID1, FAM114A2, GLRX3, INTS1, NAP1L4, PFKL, PKM2, PLAA, PLEC, PRKD2 , PRPF31, PSMB5, QTRT1, RABGGTA, SCHIP1, AC02 (includes EG: 11429), SERPINB9, SF3B1, SHF, SLC4A2, SPTBN1, SPTBN1, TESK1, TUBGCP6, UBE2Q1, USP5, ZNF358.

Example 8: Random selection of subsets of classifiers

To exemplify the diagnostic potential of subsets from clas ¬ sifiers elucidated here, 10 markers were randomly chosen: Set A: UROD, ERCC5, RBM4 , TCEAL2, PLXND1, ALDOA, LCP1, TMUB2, CTDP1, RPL3 (UniGene ID: Hs.575313); Set B: EXOC1, SGTA, PPP1R2, SERPI- NA1, YARS, ZNF410, CTDP1, SLC25A29, COL3A1, DCTPP1; from e.g. the 80 classifiers markers depicted after DWD transformation for distinguishing patients with carcinomas and polyps (Care & HR & LR; n=84) versus Controls (n=50) (contrast 1) . Then class pre ¬ diction analysis was conducted and elucidated with the random sets A) 82%, and B) 75% correct classification by the Nearest Centroid Classifier (NCentr) ; - originally the NCentr classifier derived from the 80 genes enabled 83% correct classification. This confirms that classifiers from the present gene-lists have high potential for diagnostics, and that subsets of the classi ¬ fiers panels as well as single classifiers are of high potential value for diagnostics.

To reconfirm this findings for the QNORM set of classifiers (the 2nd applied data normalization strategy in addition to DWD) , the same 2 subsets were retested, of 10 random-classifiers on the QNORM data set. Class prediction analysis for distinguishing patients with carcinomas and polyps (Carc_HR_LR; n=84) versus Controls (n=50) (contrast 1) was again conducted. Random set A) enabled 83% correct classification, and random set B) 75% correct classification by the Nearest Centroid Classifier

(NCentr) ; originally these 2 sets of 10 markers were only pre ¬ sented by some markers in the QNROM derived classifier.

Therefore subsets of the classifiers panels as well as sin ¬ gle classifiers would be useful for classification and diagnos ¬ tics, independent from initial normalization strategies upon which classifiers were generated.

Again for exemplification of the value of subsets of classi ¬ fier markers from the panels defined in that application, the 50 classifier genes for distinguishing Cancer vs Controls were selected and randomly chosen subsets of 2-49 markers (x-axis) were selected 1000-times. Then the classification success obtained by that subsets using the nearest centroid classifier algorithm was calculated and median % misclassification is depicted on the y- axis (Fig 2 ) .

The 80 classifier markers for distinguishing Disease (Cancer & polyps) vs Controls were selected and randomly chosen subsets of 2-79 markers (x-axis) were selected 1000-times. Then the classification success obtained by that subset using the nearest centroid classifier algorithm was calculated and median ~6 mis classification is depicted on the y-axis (Fig 3) . Thus even single classifier markers are capable of correct classification (80% correct for set A) - corresponds to a median classifica ¬ tion-error of 20% - Fig 3; and e.g. 70% correct for set B) cor ¬ responds to a median classification-error of 30% - Fig 3) .