Estimating heritability of complex traits from genome-wide association studies using IBS-based Haseman-Elston regression

Exploring heritability of complex traits is a central focus of statistical genetics. Among various previously proposed methods to estimate heritability, variance component methods are advantageous when estimating heritability using markers. Due to the high-dimensional nature of data obtained from ge...

Full description

Bibliographic Details
Main Author: Guo-Bo eChen
Format: Article
Language:English
Published: Frontiers Media S.A. 2014-04-01
Series:Frontiers in Genetics
Subjects:
Online Access:http://journal.frontiersin.org/Journal/10.3389/fgene.2014.00107/full
id doaj-eae0bff430734d64949b33acca50bf04
record_format Article
spelling doaj-eae0bff430734d64949b33acca50bf042020-11-24T22:52:05ZengFrontiers Media S.A.Frontiers in Genetics1664-80212014-04-01510.3389/fgene.2014.0010772296Estimating heritability of complex traits from genome-wide association studies using IBS-based Haseman-Elston regressionGuo-Bo eChen0University of QueenslandExploring heritability of complex traits is a central focus of statistical genetics. Among various previously proposed methods to estimate heritability, variance component methods are advantageous when estimating heritability using markers. Due to the high-dimensional nature of data obtained from genome-wide association studies (GWAS) in which genetic architecture is often unknown, the most appropriate heritability estimator model is often unclear. The Haseman-Elston (HE) regression is a variance component method that was initially only proposed for linkage studies. However, this study presents a theoretical basis for a modified HE that models linkage disequilibrium for a quantitative trait, and consequently can be used for GWAS. After replacing identical by descent (IBD) scores with identity by state (IBS) scores, we applied the IBS-based HE regression to single-marker association studies (scenario I) and estimated the variance component using multiple markers (scenario II). In scenario II, we discuss the circumstances in which the HE regression and the mixed linear model are equivalent; the disparity between these two methods is observed when a covariance component exists for the additive variance. When we extended the IBS-based HE regression to case-control studies in a subsequent simulation study, we found that it and provided a nearly unbiased estimate of heritability, more precise than that estimated via the mixed linear model. Thus, for the case-control scenario, the HE regression is preferable. GEnetic Analysis Repository (GEAR; http://sourceforge.net/p/gbchen/wiki/GEAR/) software implemented the HE regression method and is freely available.http://journal.frontiersin.org/Journal/10.3389/fgene.2014.00107/fullGWAScomplex traitsheritabilityHaseman-Elston regressionidentity by statevariance component
collection DOAJ
language English
format Article
sources DOAJ
author Guo-Bo eChen
spellingShingle Guo-Bo eChen
Estimating heritability of complex traits from genome-wide association studies using IBS-based Haseman-Elston regression
Frontiers in Genetics
GWAS
complex traits
heritability
Haseman-Elston regression
identity by state
variance component
author_facet Guo-Bo eChen
author_sort Guo-Bo eChen
title Estimating heritability of complex traits from genome-wide association studies using IBS-based Haseman-Elston regression
title_short Estimating heritability of complex traits from genome-wide association studies using IBS-based Haseman-Elston regression
title_full Estimating heritability of complex traits from genome-wide association studies using IBS-based Haseman-Elston regression
title_fullStr Estimating heritability of complex traits from genome-wide association studies using IBS-based Haseman-Elston regression
title_full_unstemmed Estimating heritability of complex traits from genome-wide association studies using IBS-based Haseman-Elston regression
title_sort estimating heritability of complex traits from genome-wide association studies using ibs-based haseman-elston regression
publisher Frontiers Media S.A.
series Frontiers in Genetics
issn 1664-8021
publishDate 2014-04-01
description Exploring heritability of complex traits is a central focus of statistical genetics. Among various previously proposed methods to estimate heritability, variance component methods are advantageous when estimating heritability using markers. Due to the high-dimensional nature of data obtained from genome-wide association studies (GWAS) in which genetic architecture is often unknown, the most appropriate heritability estimator model is often unclear. The Haseman-Elston (HE) regression is a variance component method that was initially only proposed for linkage studies. However, this study presents a theoretical basis for a modified HE that models linkage disequilibrium for a quantitative trait, and consequently can be used for GWAS. After replacing identical by descent (IBD) scores with identity by state (IBS) scores, we applied the IBS-based HE regression to single-marker association studies (scenario I) and estimated the variance component using multiple markers (scenario II). In scenario II, we discuss the circumstances in which the HE regression and the mixed linear model are equivalent; the disparity between these two methods is observed when a covariance component exists for the additive variance. When we extended the IBS-based HE regression to case-control studies in a subsequent simulation study, we found that it and provided a nearly unbiased estimate of heritability, more precise than that estimated via the mixed linear model. Thus, for the case-control scenario, the HE regression is preferable. GEnetic Analysis Repository (GEAR; http://sourceforge.net/p/gbchen/wiki/GEAR/) software implemented the HE regression method and is freely available.
topic GWAS
complex traits
heritability
Haseman-Elston regression
identity by state
variance component
url http://journal.frontiersin.org/Journal/10.3389/fgene.2014.00107/full
work_keys_str_mv AT guoboechen estimatingheritabilityofcomplextraitsfromgenomewideassociationstudiesusingibsbasedhasemanelstonregression
_version_ 1725667204204068864