| Literature DB >> 27230302 |
Yun Ju Sung1, Thomas W Winkler2, Alisa K Manning3,4, Hugues Aschard5, Vilmundur Gudnason6,7, Tamara B Harris8, Albert V Smith6,7, Eric Boerwinkle9,10, Michael R Brown9, Alanna C Morrison9, Myriam Fornage9,11, Li-An Lin11, Melissa Richard11, Traci M Bartz12,13, Bruce M Psaty12,14, Caroline Hayward15, Ozren Polasek16,17, Jonathan Marten15, Igor Rudan17, Mary F Feitosa18, Aldi T Kraja18, Michael A Province18, Xuan Deng19, Virginia A Fisher19, Yanhua Zhou19, Lawrence F Bielak20, Jennifer Smith20, Jennifer E Huffman15, Sandosh Padmanabhan21,22, Blair H Smith22,23, Jingzhong Ding24, Yongmei Liu25, Kurt Lohman26, Claude Bouchard27, Tuomo Rankinen27, Treva K Rice1, Donna Arnett28, Karen Schwander1, Xiuqing Guo29, Walter Palmas30, Jerome I Rotter29, Tamuno Alfred31, Erwin P Bottinger31, Ruth J F Loos31,32, Najaf Amin33, Oscar H Franco34, Cornelia M van Duijn33, Dina Vojinovic33, Daniel I Chasman5,35, Paul M Ridker5,35, Lynda M Rose35, Sharon Kardia20, Xiaofeng Zhu36, Kenneth Rice12,13, Ingrid B Borecki18, Dabeeru C Rao1, W James Gauderman37, L Adrienne Cupples19,38.
Abstract
Studying gene-environment (G × E) interactions is important, as they extend our knowledge of the genetic architecture of complex traits and may help to identify novel variants not detected via analysis of main effects alone. The main statistical framework for studying G × E interactions uses a single regression model that includes both the genetic main and G × E interaction effects (the "joint" framework). The alternative "stratified" framework combines results from genetic main-effect analyses carried out separately within the exposed and unexposed groups. Although there have been several investigations using theory and simulation, an empirical comparison of the two frameworks is lacking. Here, we compare the two frameworks using results from genome-wide association studies of systolic blood pressure for 3.2 million low frequency and 6.5 million common variants across 20 cohorts of European ancestry, comprising 79,731 individuals. Our cohorts have sample sizes ranging from 456 to 22,983 and include both family-based and population-based samples. In cohort-specific analyses, the two frameworks provided similar inference for population-based cohorts. The agreement was reduced for family-based cohorts. In meta-analyses, agreement between the two frameworks was less than that observed in cohort-specific analyses, despite the increased sample size. In meta-analyses, agreement depended on (1) the minor allele frequency, (2) inclusion of family-based cohorts in meta-analysis, and (3) filtering scheme. The stratified framework appears to approximate the joint framework well only for common variants in population-based cohorts. We conclude that the joint framework is the preferred approach and should be used to control false positives when dealing with low-frequency variants and/or family-based cohorts.Entities:
Keywords: gene-environment interaction; low-frequency variants; meta-analysis
Mesh:
Year: 2016 PMID: 27230302 PMCID: PMC4911246 DOI: 10.1002/gepi.21978
Source DB: PubMed Journal: Genet Epidemiol ISSN: 0741-0395 Impact factor: 2.135