Family-based bivariate association tests for quantitative traits.

The availability of a large number of dense SNPs, high-throughput genotyping and computation methods promotes the application of family-based association tests. While most of the current family-based analyses focus only on individual traits, joint analyses of correlated traits can extract more infor...

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Main Authors: Lei Zhang, Aaron J Bonham, Jian Li, Yu-Fang Pei, Jie Chen, Christopher J Papasian, Hong-Wen Deng
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2009-12-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC2779861?pdf=render
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spelling doaj-7a31cfef6f03466280016b8c64785fea2020-11-25T02:52:25ZengPublic Library of Science (PLoS)PLoS ONE1932-62032009-12-01412e813310.1371/journal.pone.0008133Family-based bivariate association tests for quantitative traits.Lei ZhangAaron J BonhamJian LiYu-Fang PeiJie ChenChristopher J PapasianHong-Wen DengThe availability of a large number of dense SNPs, high-throughput genotyping and computation methods promotes the application of family-based association tests. While most of the current family-based analyses focus only on individual traits, joint analyses of correlated traits can extract more information and potentially improve the statistical power. However, current TDT-based methods are low-powered. Here, we develop a method for tests of association for bivariate quantitative traits in families. In particular, we correct for population stratification by the use of an integration of principal component analysis and TDT. A score test statistic in the variance-components model is proposed. Extensive simulation studies indicate that the proposed method not only outperforms approaches limited to individual traits when pleiotropic effect is present, but also surpasses the power of two popular bivariate association tests termed FBAT-GEE and FBAT-PC, respectively, while correcting for population stratification. When applied to the GAW16 datasets, the proposed method successfully identifies at the genome-wide level the two SNPs that present pleiotropic effects to HDL and TG traits.http://europepmc.org/articles/PMC2779861?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Lei Zhang
Aaron J Bonham
Jian Li
Yu-Fang Pei
Jie Chen
Christopher J Papasian
Hong-Wen Deng
spellingShingle Lei Zhang
Aaron J Bonham
Jian Li
Yu-Fang Pei
Jie Chen
Christopher J Papasian
Hong-Wen Deng
Family-based bivariate association tests for quantitative traits.
PLoS ONE
author_facet Lei Zhang
Aaron J Bonham
Jian Li
Yu-Fang Pei
Jie Chen
Christopher J Papasian
Hong-Wen Deng
author_sort Lei Zhang
title Family-based bivariate association tests for quantitative traits.
title_short Family-based bivariate association tests for quantitative traits.
title_full Family-based bivariate association tests for quantitative traits.
title_fullStr Family-based bivariate association tests for quantitative traits.
title_full_unstemmed Family-based bivariate association tests for quantitative traits.
title_sort family-based bivariate association tests for quantitative traits.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2009-12-01
description The availability of a large number of dense SNPs, high-throughput genotyping and computation methods promotes the application of family-based association tests. While most of the current family-based analyses focus only on individual traits, joint analyses of correlated traits can extract more information and potentially improve the statistical power. However, current TDT-based methods are low-powered. Here, we develop a method for tests of association for bivariate quantitative traits in families. In particular, we correct for population stratification by the use of an integration of principal component analysis and TDT. A score test statistic in the variance-components model is proposed. Extensive simulation studies indicate that the proposed method not only outperforms approaches limited to individual traits when pleiotropic effect is present, but also surpasses the power of two popular bivariate association tests termed FBAT-GEE and FBAT-PC, respectively, while correcting for population stratification. When applied to the GAW16 datasets, the proposed method successfully identifies at the genome-wide level the two SNPs that present pleiotropic effects to HDL and TG traits.
url http://europepmc.org/articles/PMC2779861?pdf=render
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AT jiechen familybasedbivariateassociationtestsforquantitativetraits
AT christopherjpapasian familybasedbivariateassociationtestsforquantitativetraits
AT hongwendeng familybasedbivariateassociationtestsforquantitativetraits
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