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Exome chip meta-analysis elucidates the genetic architecture of rare coding variants in smoking and drinking behavior

Authors :
Jean-Claude Tardif
Andries R. van der Leij
Hilary A. Tindle
Nicholas G. Martin
Rebecca Rohde
Charles Kooperberg
Francesco Cucca
Jian Gong
Jenny Chang-Claude
Tatiana Foroud
Dajiang J. Liu
Sarah Bertelsen
Gonçalo R. Abecasis
Christopher A. Haiman
Massimo Mangino
Daniel O. Stram
Jaakko Kaprio
Guillaume Lettre
Leah Wetherill
Daniel R. Barnes
Yaming Shao
David M. Brazel
Heather M. Stringham
Tinca J. C. Polderman
Wei Zhao
Andrew C. Heath
Matt McGue
Christiaan de Leeuw
Alison Goate
Danielle Posthuma
Xiaowei Zhan
Sean P. David
Laura J. Bierut
Yi Ling Chou
Pamela A. F. Madden
Manav Kapoor
Jessica D. Faul
Anu Loukola
John P. Rice
H. Steven Scholte
Arpana Agrawal
Jeff Haessler
William G. Iacono
Giorgio Pistis
Michael Boehnke
Tim D. Spector
Anke R. Hammerschlag
Charles B. Eaton
Sharon L.R. Kardia
David Schlessinger
David R. Weir
Dongbing Lai
Scott I. Vrieze
Markku Laakso
Chu Chen
Turcot
Nhung Le
Alex P. Reiner
Beenish Qaiser
Chris Hsu
A. Mesut Erzurumluoglu
Kari E. North
Carl A. Melbourne
Jennifer A. Smith
Publication Year :
2017
Publisher :
Cold Spring Harbor Laboratory, 2017.

Abstract

BackgroundSmoking and alcohol use behaviors in humans have been associated with common genetic variants within multiple genomic loci. Investigation of rare variation within these loci holds promise for identifying causal variants impacting biological mechanisms in the etiology of disordered behavior. Microarrays have been designed to genotype rare nonsynonymous and putative loss of function variants. Such variants are expected to have greater deleterious consequences on gene function than other variants, and significantly contribute to disease risk.MethodsIn the present study, we analyzed ∼250,000 rare variants from 17 independent studies. Each variant was tested for association with five addiction-related phenotypes: cigarettes per day, pack years, smoking initiation, age of smoking initiation, and alcoholic drinks per week. We conducted single variant tests of all variants, and gene-based burden tests of nonsynonymous or putative loss of function variants with minor allele frequency less than 1%.ResultsMeta-analytic sample sizes ranged from 70,847 to 164,142 individuals, depending on the phenotype. Known loci tagged by common variants replicated, but there was no robust evidence for individually associated rare variants, either in gene based or single variant tests. Using a modified method-of-moment approach, we found that all low frequency coding variants, in aggregate, contributed 1.7% to 3.6% of the phenotypic variation for the five traits (pConclusionsThe findings indicate that rare coding variants contribute to phenotypic variation, but that much larger samples and/or denser genotyping of rare variants will be required to successfully identify associations with these phenotypes, whether individual variants or gene‐ based associations.

Details

Language :
English
Database :
OpenAIRE
Accession number :
edsair.doi.dedup.....e6747e50674a767c37219f979da37626
Full Text :
https://doi.org/10.1101/187658