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Methodological Considerations in Estimation of Phenotype Heritability Using Genome-Wide SNP Data, Illustrated by an Analysis of the Heritability of Height in a Large Sample of African Ancestry Adults.

Authors :
Fang Chen
Jing He
Jianqi Zhang
Gary K Chen
Venetta Thomas
Christine B Ambrosone
Elisa V Bandera
Sonja I Berndt
Leslie Bernstein
William J Blot
Qiuyin Cai
John Carpten
Graham Casey
Stephen J Chanock
Iona Cheng
Lisa Chu
Sandra L Deming
W Ryan Driver
Phyllis Goodman
Richard B Hayes
Anselm J M Hennis
Ann W Hsing
Jennifer J Hu
Sue A Ingles
Esther M John
Rick A Kittles
Suzanne Kolb
M Cristina Leske
Robert C Millikan
Kristine R Monroe
Adam Murphy
Barbara Nemesure
Christine Neslund-Dudas
Sarah Nyante
Elaine A Ostrander
Michael F Press
Jorge L Rodriguez-Gil
Ben A Rybicki
Fredrick Schumacher
Janet L Stanford
Lisa B Signorello
Sara S Strom
Victoria Stevens
David Van Den Berg
Zhaoming Wang
John S Witte
Suh-Yuh Wu
Yuko Yamamura
Wei Zheng
Regina G Ziegler
Alexander H Stram
Laurence N Kolonel
Loïc Le Marchand
Brian E Henderson
Christopher A Haiman
Daniel O Stram
Source :
PLoS ONE, Vol 10, Iss 6, p e0131106 (2015)
Publication Year :
2015
Publisher :
Public Library of Science (PLoS), 2015.

Abstract

Height has an extremely polygenic pattern of inheritance. Genome-wide association studies (GWAS) have revealed hundreds of common variants that are associated with human height at genome-wide levels of significance. However, only a small fraction of phenotypic variation can be explained by the aggregate of these common variants. In a large study of African-American men and women (n = 14,419), we genotyped and analyzed 966,578 autosomal SNPs across the entire genome using a linear mixed model variance components approach implemented in the program GCTA (Yang et al Nat Genet 2010), and estimated an additive heritability of 44.7% (se: 3.7%) for this phenotype in a sample of evidently unrelated individuals. While this estimated value is similar to that given by Yang et al in their analyses, we remain concerned about two related issues: (1) whether in the complete absence of hidden relatedness, variance components methods have adequate power to estimate heritability when a very large number of SNPs are used in the analysis; and (2) whether estimation of heritability may be biased, in real studies, by low levels of residual hidden relatedness. We addressed the first question in a semi-analytic fashion by directly simulating the distribution of the score statistic for a test of zero heritability with and without low levels of relatedness. The second question was addressed by a very careful comparison of the behavior of estimated heritability for both observed (self-reported) height and simulated phenotypes compared to imputation R2 as a function of the number of SNPs used in the analysis. These simulations help to address the important question about whether today's GWAS SNPs will remain useful for imputing causal variants that are discovered using very large sample sizes in future studies of height, or whether the causal variants themselves will need to be genotyped de novo in order to build a prediction model that ultimately captures a large fraction of the variability of height, and by implication other complex phenotypes. Our overall conclusions are that when study sizes are quite large (5,000 or so) the additive heritability estimate for height is not apparently biased upwards using the linear mixed model; however there is evidence in our simulation that a very large number of causal variants (many thousands) each with very small effect on phenotypic variance will need to be discovered to fill the gap between the heritability explained by known versus unknown causal variants. We conclude that today's GWAS data will remain useful in the future for causal variant prediction, but that finding the causal variants that need to be predicted may be extremely laborious.

Subjects

Subjects :
Medicine
Science

Details

Language :
English
ISSN :
19326203
Volume :
10
Issue :
6
Database :
Directory of Open Access Journals
Journal :
PLoS ONE
Publication Type :
Academic Journal
Accession number :
edsdoj.128e46a0c8c94ba998a6a6c96bfe5c2f
Document Type :
article
Full Text :
https://doi.org/10.1371/journal.pone.0131106