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Agnostic Pathway/Gene Set Analysis of Genome-Wide Association Data Identifies Associations for Pancreatic Cancer.

Authors :
Walsh N
Zhang H
Hyland PL
Yang Q
Mocci E
Zhang M
Childs EJ
Collins I
Wang Z
Arslan AA
Beane-Freeman L
Bracci PM
Brennan P
Canzian F
Duell EJ
Gallinger S
Giles GG
Goggins M
Goodman GE
Goodman PJ
Hung RJ
Kooperberg C
Kurtz RC
Malats N
LeMarchand L
Neale RE
Olson SH
Scelo G
Shu XO
Van Den Eeden SK
Visvanathan K
White E
Zheng W
Albanes D
Andreotti G
Babic A
Bamlet WR
Berndt SI
Borgida A
Boutron-Ruault MC
Brais L
Brennan P
Bueno-de-Mesquita B
Buring J
Chaffee KG
Chanock S
Cleary S
Cotterchio M
Foretova L
Fuchs C
M Gaziano JM
Giovannucci E
Goggins M
Hackert T
Haiman C
Hartge P
Hasan M
Helzlsouer KJ
Herman J
Holcatova I
Holly EA
Hoover R
Hung RJ
Janout V
Klein EA
Kurtz RC
Laheru D
Lee IM
Lu L
Malats N
Mannisto S
Milne RL
Oberg AL
Orlow I
Patel AV
Peters U
Porta M
Real FX
Rothman N
Sesso HD
Severi G
Silverman D
Strobel O
Sund M
Thornquist MD
Tobias GS
Wactawski-Wende J
Wareham N
Weiderpass E
Wentzensen N
Wheeler W
Yu H
Zeleniuch-Jacquotte A
Kraft P
Li D
Jacobs EJ
Petersen GM
Wolpin BM
Risch HA
Amundadottir LT
Yu K
Klein AP
Stolzenberg-Solomon RZ
Source :
Journal of the National Cancer Institute [J Natl Cancer Inst] 2019 Jun 01; Vol. 111 (6), pp. 557-567.
Publication Year :
2019

Abstract

Background: Genome-wide association studies (GWAS) identify associations of individual single-nucleotide polymorphisms (SNPs) with cancer risk but usually only explain a fraction of the inherited variability. Pathway analysis of genetic variants is a powerful tool to identify networks of susceptibility genes.<br />Methods: We conducted a large agnostic pathway-based meta-analysis of GWAS data using the summary-based adaptive rank truncated product method to identify gene sets and pathways associated with pancreatic ductal adenocarcinoma (PDAC) in 9040 cases and 12 496 controls. We performed expression quantitative trait loci (eQTL) analysis and functional annotation of the top SNPs in genes contributing to the top associated pathways and gene sets. All statistical tests were two-sided.<br />Results: We identified 14 pathways and gene sets associated with PDAC at a false discovery rate of less than 0.05. After Bonferroni correction (P ≤ 1.3 × 10-5), the strongest associations were detected in five pathways and gene sets, including maturity-onset diabetes of the young, regulation of beta-cell development, role of epidermal growth factor (EGF) receptor transactivation by G protein-coupled receptors in cardiac hypertrophy pathways, and the Nikolsky breast cancer chr17q11-q21 amplicon and Pujana ATM Pearson correlation coefficient (PCC) network gene sets. We identified and validated rs876493 and three correlating SNPs (PGAP3) and rs3124737 (CASP7) from the Pujana ATM PCC gene set as eQTLs in two normal derived pancreas tissue datasets.<br />Conclusion: Our agnostic pathway and gene set analysis integrated with functional annotation and eQTL analysis provides insight into genes and pathways that may be biologically relevant for risk of PDAC, including those not previously identified.<br /> (Published by Oxford University Press 2018. This work is written by US Government employees and is in the public domain in the US.)

Details

Language :
English
ISSN :
1460-2105
Volume :
111
Issue :
6
Database :
MEDLINE
Journal :
Journal of the National Cancer Institute
Publication Type :
Academic Journal
Accession number :
30541042
Full Text :
https://doi.org/10.1093/jnci/djy155