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Abstract 1194: Cross-cancer GWAS meta-analysis of more than 370,000 cases and 530,000 controls identifies multiple novel cancer risk regions

Authors :
James McKay
Christopher I. Amos
Puya Gharahkhani
Matthew Law
Bogdan Pasaniuc
Mark M. Iles
Richard S. Houlston
Deborah J. Thompson
James W. MacDonald
Bcac, Ocac, Practical
Lu Wang
Stephanie L. Schmit
Theo K. Bammler
Constance Turman
Beatrice Melin
Alison P. Klein
Tracy A. O'Mara
Paul D.P. Pharoah
Stuart MacGregor
Rayjean J. Hung
Jeroen R. Huyghe
Peter Kraft
Paul Brennan
Siddhartha Kar
Sara Lindström
Laufey T. Amundadottir
Source :
Cancer Research. 80:1194-1194
Publication Year :
2020
Publisher :
American Association for Cancer Research (AACR), 2020.

Abstract

Genome-wide association studies (GWAS) have identified hundreds of common, low-penetrance alleles associated with cancer risk. However, known rare and common risk alleles only explain between 10% and 30% of the familial relative risk for different cancers and multiple lines of evidence indicate that many more risk alleles remain to be discovered. We have demonstrated genetic correlations between cancers, reflecting a shared genetic origin for solid tumors. These results suggest that jointly analyzing multiple cancer sites will lead to the discovery of novel risk regions. We conducted a cross-cancer GWAS meta-analysis by leveraging GWAS summary statistics from 12 solid cancers (breast, colorectal, endometrial, esophageal, glioma, head and neck, lung, melanoma, ovarian, pancreatic, prostate and renal cancers) with a total of 373,818 cases and 532,382 controls of European ancestry. All studies had been imputed to either 1,000 Genomes or the Haplotype Reference Consortium panel. We conducted four meta-analysis using (1) fixed-effect, (2) random-effect, (3) one-sided subset (ASSET) and (4) two-sided subset (ASSET) models. The subset analysis were conducted assuming either the same direction of effects across cancers (one-sided ASSET) or allowed for opposite direction of effects across cancers (two-sided ASSET). In all analyses, we used tetrachoric correlations to account for sample overlap across cancer sites. In total, we tested 10,223,013 variants for association. We considered regions with a p-value We identified eight novel regions that reached genome-wide significance. Of those eight regions, two were identified from fixed-effects meta-analysis, three from random effects meta-analysis, one from the two-sided subset analysis, and two regions (15.q15.3 and 21q22.3) were identified at p Citation Format: Sara Lindström, Siddhartha Kar, Lu Wang, Constance Turman, James MacDonald, Theo Bammler, BCAC, OCAC, PRACTICAL, Jeroen Huyghe, Stephanie Schmit, Tracy A. O'Mara, Deborah J. Thompson, Puya Gharahkhani, Stuart MacGregor, Paul Brennan, Richard S. Houlston, Beatrice S. Melin, Christopher I. Amos, James McKay, Mark M. Iles, Matthew H. Law, Alison Klein, Laufey Amundadottir, Bogdan Pasaniuc, Paul Pharoah, Rayjean J. Hung, Peter Kraft. Cross-cancer GWAS meta-analysis of more than 370,000 cases and 530,000 controls identifies multiple novel cancer risk regions [abstract]. In: Proceedings of the Annual Meeting of the American Association for Cancer Research 2020; 2020 Apr 27-28 and Jun 22-24. Philadelphia (PA): AACR; Cancer Res 2020;80(16 Suppl):Abstract nr 1194.

Details

ISSN :
15387445 and 00085472
Volume :
80
Database :
OpenAIRE
Journal :
Cancer Research
Accession number :
edsair.doi...........8444cb98cc97abb502a0e02408b4a628