Validation of four gene-expression risk scores in a large colon cancer cohort and contribution to an improved prognostic method Antonio F. Di Narzo 1,

Slides:



Advertisements
Similar presentations
Regulation of Consumer Tests in California AAAS Meeting June 1-2, 2009 Beatrice OKeefe Acting Chief, Laboratory Field Services California Department of.
Advertisements

CD10, scored as positive versus negative all path 1 path 2 path 3 path 4 path 5 path 6 path 7 path 8 path 9 CD10 can be reproducibly scored, but is very.
Sino-Danish Breast Cancer Research Centre Beijing Genomic Institute, Shenzhen University of Copenhagen University of Århus University of Southern Denmark.
Small Cell Lung Cancer Clinical T-Stage, N0-N3 M0 SCLC From: Shepherd FA, Crowley J, Van Houtte P et al. The IASLC lung cancer staging project: proposals.
Tissue biomarkers (BIOM) in colon cancer (COC): The translational study on the randomized phase III trial comparing infused irinotecan / 5-fluorouracil.
D. Haller, 1 J. Cassidy, 2 J. Tabernero, 3 J. Maroun, 4 F. de Braud, 5 T. Price, 6 E. Van Cutsem, 7 M. Hill, 8 F. Gilberg, 9 H-J. Schmoll 10 1 University.
Clinical Prognostic Factors in Gastric Cancer in Chinese Patients: Experience from the Cancer Hospital/Institute, Chinese Academy of Medical Sciences Yuankai.
SHELBY ADDISON NEAL, MD MENTORS: WILLIAM T. CREASMAN, MD WHITNEY S. GRAYBILL, MD, MS Lymph-Vascular Space Invasion (LVSI) in Uterine Corpus Cancer What.
Expression profiles for prognosis and prediction Laura J. Van ‘t Veer The Netherlands Cancer Institute, Amsterdam.
Model and Variable Selections for Personalized Medicine Lu Tian (Northwestern University) Hajime Uno (Kitasato University) Tianxi Cai, Els Goetghebeur,
Discordance in Hormone Receptor and HER2 Status in Breast Cancer during Tumor Progression Lindstrom LS et al. Proc SABCS 2010;Abstract S3-5.
Clinical Relevance of HER2 Overexpression/Amplification in Patients with Small Tumor Size and Node-Negative Breast Cancer Curigliano G et al. J Clin Oncol.
MammaPrint, the story of the 70-gene profile
References 1.Salazar R, Roepman P, Capella G et al. Gene expression signature to improve prognosis prediction of stage II and III colorectal cancer. J.
Musculoskeletal Oncology Service, National Cancer Center Hospital Musculoskeletal Oncology Service, Keio University Hospital An Analysis of Clinicopathological.
Mak KS, 1 Miller RC, 2 Krishnan S, 3 Laperriere N, 4 Micke O, 5 Rutten I, 6 Kadish SP, 7 Ozsahin M, 8 and Mirimanoff RO 8 1 Harvard Medical School, Boston,
THE SIGNIFICANCE OF HISTOLOGICAL SUBSTAGING IN CURATIVE RESECTED T3 COLORECTAL CANCER Karl Mrak & Jörg Tschmelitsch Department of Surgery, Barmherzige.
Taiwan 2000 PETACC 3 ASCO 2009 Molecular markers in colon cancer have a stage specific prognostic value. Results of the translational study on the PETACC.
The 70 gene Mammaprint ™ signature: a comparison with traditional clinico-pathological parameters. Patrizia Querzoli 1, Massimo Pedriali 1, Gardenia Munerato.
A 14-gene prognosis signature predicts metastasis risk in node-negative, estrogen receptor-positive, Tamoxifen-treated breast cancer in different ethnogeographic.
Surrogate Endpoints and Correlative Outcomes Hem/Onc Journal Club January 9, 2009.
Kerrington Smith, M.D. CTOS Nov 14, 2008
ERCC 1 isoform expression and DNA repair in NSCLC
Lymphadenectomy in Epithelial Ovarian Cancer
Otis W. Brawley M.D. Director, Georgia Cancer Center Associate Director, Winship Cancer Institute Professor of Hematology, Oncology, and Epidemiology Emory.
Multimodality therapy for locally advanced thymomas: a cohort study of prognostic factors from a European multicentric database Dr. GIOVANNI LEUZZI Department.
Sgroi DC et al. Proc SABCS 2012;Abstract S1-9.
A Quantitative Multi-Gene RT-PCR Assay for Prediction of Recurrence in Stage II Colon Cancer (CC): Selection of the Genes in 4 Large Studies and Results.
Pfetin, as a Prognostic Biomarker of Gastrointestinal Stromal Tumors Revealed by Proteomics Yoshiyuki Suehara 1 3 4, Kunihiko Seki 2, Kiyonaga Fujii 1,
Dubsky P et al. Proc SABCS 2012;Abstract S4-3.
Selection of Patient Samples and Genes for Disease Prognosis Limsoon Wong Institute for Infocomm Research Joint work with Jinyan Li & Huiqing Liu.
Guanylyl Cyclase C (GCC) Lymph Nodes (LN) Classification as a Prognostic Marker in Patients with Stage II Colon Cancer: A Pooled Analysis Daniel J. Sargent,
*University Hospital Gasthuisberg, Leuven, Belgium
INCREASED EXPRESSION OF PROTEIN KINASE CK2  SUBUNIT IN HUMAN GASTRIC CARCINOMA Kai-Yuan Lin 1 and Yih-Huei Uen 1,2,3 1 Department of Medical Research,
Gene Expression Signatures for Prognosis in NSCLC, Coupled with Signatures of Oncogenic Pathway Deregulation, Provide a Novel Approach for Selection of.
Supplementary table 1 Supplementary table 1. Clinical-pathological features of the resection-only and chemotherapy/resection stage II/III colorectal cancer.
Clinical variables, pathological factors, and molecular markers for enhanced soft tissue sarcoma prognostication G. Lahat, B. Wang, D. Tuvin, DA. Anaya,
Outcome of chemotherapy in synovial sarcoma (sys) patients (pts): review of 15 clinical trials from EORTCc involving advanced sys compared to other Soft.
Abstracts #338 and 339 Jordan Berlin, MD Ingram Professor of Cancer Research.
Lecture 8. Functional Genomics: Gene Expression Profiling using DNA microarrays. Part II Clark EA, Golub TR, Lander ES, Hynes RO.(2000) Genomic analysis.
on behalf of the ACOSOG Z4032 Investigators
Poster Title ABSTRACT #59 Cell cycle progression genes differentiate indolent from aggressive prostate cancer. Steven Stone 1 Jack Cuzick 2, Julia Reid.
Tumor clock protein PER2 as a determinant of survival in patients (pts) receiving oxaliplatin-5-FU- leucovorin as 1st line chemotherapy for metastatic.
CHFR METHYLATION AS AN EPIGENETIC MARKER FOR RECURRENCE OF COLON CANCER M. D. Anderson Cancer Center, Houston, Texas Motofumi Tanaka, Salil Sethi, Donghui.
Individualizing Adjuvant Therapy on the Basis of Molecular Markers Charles S. Fuchs, MD Dana-Farber Cancer Institute Harvard Medical School Boston, MA.
THE EFFECT OF AGE ON OUTCOME OF SYNOVIAL SARCOMA PATIENTS A DUTCH POPULATION BASED STUDY Myrella Vlenterie, SEJ Kaal, VKY Ho, R Vlenterie, WTA van der.
Clinical and technical validation of a genomic classifier (ColoPrint) for predicting outcome of stage II colon cancer patients Josep Tabernero, Vall d’Hebron.
Cetuximab plus FOLFIRI in the treatment of metastatic colorectal cancer: the influence of KRAS and BRAF biomarkers on outcome: updated data from the CRYSTAL.
Jin MENG Shen FU (DPD 08) Biology 2 - Head/Neck and CNS Tumors
The impact of smoking on cancer recurrence and survival in patients with stage III colon cancer: findings from CALGB Nadine A. Jackson, Charles S.
Scott Kopetz, MD, PhD Department of Gastrointestinal Medical Oncology
Taiwan 2000 PETACC 3 ASCO 2009 PETACC 3 ASCO 2010 Molecular and clinical determinants of survival following relapse after curative treatment of stage II-
A B C Supplementary Figure S1. Time-dependent assessment of grade, GGI and PAM50 in untreated patients Landmark analyses of the Kaplan-Meier estimates.
Evaluating the Clinical Outcomes of Sixty-Three Patients Treated with Gamma Knife as Salvage Therapy for Glioblastoma Multiforme Erik W Larson, Halloran.
Risk Stratification in Stage II Colon Cancer Patients Ramzi Amri, MD, PhD; Liliana G Bordeianou, MD, MPH; and David L Berger, MD Massachusetts General.
Angelo Di Leo “Sandro Pitigliani” Medical Oncology Department Hospital of Prato Istituto Toscano Tumori, Prato, Italy Adjuvant hormone therapy in pre-menopausal.
THE IMPORTANCE OF STAGING AND PROGNOSTIC FACTORS IN CANCER CARE
Immunoscore Prognostic in Colon Cancer
Presented By Michael Lee at 2016 ASCO Annual Meeting
Microsatellite instability (MSI) in stage II and III colon cancer treated with 5FU-LV or 5FU-LV and irinotecan (PETACC 3-EORTC SAKK 60/00 trial).
EMT inducing transcription factor SIP1: a predictive biomarker of colorectal cancer survival and recurrence? A Patel, R Sreekumar, R Bhome, KA Moutasim,
Improved survival outcomes after resection of ductal adenocarcinoma in the body and tail of the pancreas: A single center 10 years’ experience Seong.
Untch M et al. Proc SABCS 2010;Abstract P
UHRF1 is regulated by miR-9 in colorectal cancer
Published online September 20, 2017 by JAMA Surgery
Adjuvant chemotherapy after potentially curative resection of metastases from colorectal cancer. A meta-analysis of two randomized trials E Mitry, A Fields,
Identification and Validation of Lymphovascular Invasion as a Prognostic and Staging Factor in Node-Negative Esophageal Squamous Cell Carcinoma  Qingyuan.
Fig. 1. Classification of the Kaplan-Meier curves and Cox survival estimates for the OS of patients using the pSPC in Cohort_C and in the overall population.
Patient stratification using survival risk prediction and BCLC staging
Highly metastatic PDAC cells have a unique gene signature, which is not preserved in metastases but predicts poor patient outcome. Highly metastatic PDAC.
Presentation transcript:

Validation of four gene-expression risk scores in a large colon cancer cohort and contribution to an improved prognostic method Antonio F. Di Narzo 1, Sabine Tejpar 3, Simona Rossi 1, Pu Yan 5, Vlad Popovici 1, Pratyaksha Wirapati 1, Eva Budinska 1, Tao Xie 6, Heather Estrella 6, Adam Pavlicek 6, Mao Mao 6, Eric Martin 6, Weinrich Scott 6, Graeme Hodgson 6, Eric Van Cutsem 3, Fred Bosman 5, Arnaud Roth 4,7, Mauro Delorenzi 1,2 1) Swiss Institute of Bioinformatics, Lausanne, Switzerland; 2) Département de formation et recherche, Centre Hospitalier Universitaire Vaudois and University of Lausanne, Lausanne, Switzerland; 3) Digestive Oncology Unit and Center for Human Genetics, University Hospital Gasthuisberg, Leuven, Belgium; 4) Oncosurgery, Geneva University Hospital Geneva, Switzerland; 5) Department of Pathology, Lausanne University, Lausanne, Switzerland; 6) Pfizer Inc., Worldwide Research and Development, Oncology Research Unit, Science Center Drive, La Jolla, CA 92121; 7) Swiss Group for Clinical Cancer Research (SAKK).

Background Prognosis prediction for resected primary colon cancer is currently based on the tumor, nodes, metastasis (TNM) staging system Different laboratories studied gene expression profiles and proposed distinct risk scoring systems Each single scoring system has been internally validated. But how do they compare? Are them equivalent? Four, well documented scoring systems were selected and tested on the PETACC-3 series

Aim Assess the performance of the 4 scoring systems for: – Overall Survival (OS) – Relapse Free Survival (RFS) – Survival After Relapse (SAR) Check agreement among them Is there space for improvement in biomarker development?

Patients: the PETACC-3 trial N = 688 samples with gene expression microarray data Van Cutsem et al., 2009

The selected scoring systems variable Scoring System abbreviation GHSVDSMDAALM provider Genomic HealthVeridex MD Anderson Cancer Center ALMAC diagnostics type of assayQ-RT-PCRmicroarray type of tissuefresh frozen formalin-fixed, paraffin-embedded referenceO’Connell et al. 2010Jiang et al. 2008Oh et al. 2011Kennedy et al. 2011

There is little overlap in the genes lists

Results: Overall Survival All HRs are relative to 1 Interquartile Range Variation of the risk score. Multivariate Cox model includes: Age, Gender, T-stage, N-stage, Grade, Location, Treatment Arm, Lymphovascular Invasion, Microsatellite Instability univariatemultivariate markerHR (95% CI)p-valueHR (95% CI)p-value GHS1.36 ( ) ( ) VDS1.24 ( ) ( ) MDA1.31 ( ) ( ) ALM1.38 ( )< ( ) Combined Score 1.87 ( )< ( )<0.001 The Combined Score is obtained as a geometric average of the rankings of the four scoring systems

Results: Relapse-Free Survival All HRs are relative to 1 Interquartile Range Variation of the risk score. Multivariate Cox model includes: Age, Gender, T-stage, N-stage, Grade, Location, Treatment Arm, Lymphovascular Invasion, Microsatellite Instability univariatemultivariate markerHR (95% CI)p-valueHR (95% CI)p-value GHS1.33 ( )< ( ) VDS1.29 ( ) ( ) MDA1.10 ( ) ( ) ALM1.31 ( )< ( ) Combined Score 1.68 ( )< ( )<0.001 The Combined Score is obtained as a geometric average of the rankings of the four scoring systems

Results: Survival After Relapse All HRs are relative to 1 Interquartile Range Variation of the risk score. Multivariate Cox model includes: Age, Gender, T-stage, N-stage, Grade, Location, Treatment Arm, Lymphovascular Invasion, Microsatellite Instability univariatemultivariate markerHR (95% CI)p-valueHR (95% CI)p-value GHS1.16 ( ) ( )0.199 VDS0.90 ( ) ( )0.170 MDA1.81 ( )< ( )<0.001 ALM1.19 ( ) ( )0.395 Combined Score 1.49 ( ) ( ) The Combined Score is obtained as a geometric average of the rankings of the four scoring systems

There is weak agreement in the predictions of the four risk scoring systems GHSVDSMDAALM GHS Spearman correlation: Spearman correlation: Spearman correlation: VDS agreement: 37.5% Spearman correlation: Spearman correlation: MDA agreement: 70.3% agreement: 33.1% Spearman correlation: ALM agreement: 57.8% agreement: 49.1% agreement: 54.1% The percentage of patients with the same predicted outcome according to 2 distinct scoring systems is rather small The VDS scoring systems is anti-correlated with GHS and MDA, and almost uncorrelated with ALM.

Conclusions These four scoring systems are based on different gene populations with little overlap These four scoring system have, in our hands, a confirmed prognostic value for OS but concur poorly on a per patient basis There is a high variability in prognostic values depending on the endpoint (OS, RFS, SAR) A combined score based on these four scoring systems seems to lead to an improved prognosis prediction compared to each system separately