AUTHOR=Majarian Timothy D. , Bentley Amy R. , Laville Vincent , Brown Michael R. , Chasman Daniel I. , de Vries Paul S. , Feitosa Mary F. , Franceschini Nora , Gauderman W. James , Marchek Casey , Levy Daniel , Morrison Alanna C. , Province Michael , Rao Dabeeru C. , Schwander Karen , Sung Yun Ju , Rotimi Charles N. , Aschard Hugues , Gu C. Charles , Manning Alisa K. , on behalf of the CHARGE Gene-Lifestyle Interactions Working Group TITLE=Multi-omics insights into the biological mechanisms underlying statistical gene-by-lifestyle interactions with smoking and alcohol consumption JOURNAL=Frontiers in Genetics VOLUME=13 YEAR=2022 URL=https://www.frontiersin.org/journals/genetics/articles/10.3389/fgene.2022.954713 DOI=10.3389/fgene.2022.954713 ISSN=1664-8021 ABSTRACT=
Though both genetic and lifestyle factors are known to influence cardiometabolic outcomes, less attention has been given to whether lifestyle exposures can alter the association between a genetic variant and these outcomes. The Cohorts for Heart and Aging Research in Genomic Epidemiology (CHARGE) Consortium’s Gene-Lifestyle Interactions Working Group has recently published investigations of genome-wide gene-environment interactions in large multi-ancestry meta-analyses with a focus on cigarette smoking and alcohol consumption as lifestyle factors and blood pressure and serum lipids as outcomes. Further description of the biological mechanisms underlying these statistical interactions would represent a significant advance in our understanding of gene-environment interactions, yet accessing and harmonizing individual-level genetic and ‘omics data is challenging. Here, we demonstrate the coordinated use of summary-level data for gene-lifestyle interaction associations on up to 600,000 individuals, differential methylation data, and gene expression data for the characterization and prioritization of loci for future follow-up analyses. Using this approach, we identify 48 genes for which there are multiple sources of functional support for the identified gene-lifestyle interaction. We also identified five genes for which differential expression was observed by the same lifestyle factor for which a gene-lifestyle interaction was found. For instance, in gene-lifestyle interaction analysis, the T allele of rs6490056 (