Contribution of large region joint associations to complex traits genetics.

A polygenic model of inheritance, whereby hundreds or thousands of weakly associated variants contribute to a trait's heritability, has been proposed to underlie the genetic architecture of complex traits. However, relatively few genetic variants have been positively identified so far and they...

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Main Authors: Guillaume Paré, Senay Asma, Wei Q Deng
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2015-04-01
Series:PLoS Genetics
Online Access:http://europepmc.org/articles/PMC4391841?pdf=render
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spelling doaj-8eab05e4445443d988814006af2d86352020-11-25T00:04:43ZengPublic Library of Science (PLoS)PLoS Genetics1553-73901553-74042015-04-01114e100510310.1371/journal.pgen.1005103Contribution of large region joint associations to complex traits genetics.Guillaume ParéSenay AsmaWei Q DengA polygenic model of inheritance, whereby hundreds or thousands of weakly associated variants contribute to a trait's heritability, has been proposed to underlie the genetic architecture of complex traits. However, relatively few genetic variants have been positively identified so far and they collectively explain only a small fraction of the predicted heritability. We hypothesized that joint association of multiple weakly associated variants over large chromosomal regions contributes to complex traits variance. Confirmation of such regional associations can help identify new loci and lead to a better understanding of known ones. To test this hypothesis, we first characterized the ability of commonly used genetic association models to identify large region joint associations. Through theoretical derivation and simulation, we showed that multivariate linear models where multiple SNPs are included as independent predictors have the most favorable association profile. Based on these results, we tested for large region association with height in 3,740 European participants from the Health and Retirement Study (HRS) study. Adjusting for SNPs with known association with height, we demonstrated clustering of weak associations (p = 2x10-4) in regions extending up to 433.0 Kb from known height loci. The contribution of regional associations to phenotypic variance was estimated at 0.172 (95% CI 0.063-0.279; p < 0.001), which compared favorably to 0.129 explained by known height variants. Conversely, we showed that suggestively associated regions are enriched for known height loci. To extend our findings to other traits, we also tested BMI, HDLc and CRP for large region associations, with consistent results for CRP. Our results demonstrate the presence of large region joint associations and suggest these can be used to pinpoint weakly associated SNPs.http://europepmc.org/articles/PMC4391841?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Guillaume Paré
Senay Asma
Wei Q Deng
spellingShingle Guillaume Paré
Senay Asma
Wei Q Deng
Contribution of large region joint associations to complex traits genetics.
PLoS Genetics
author_facet Guillaume Paré
Senay Asma
Wei Q Deng
author_sort Guillaume Paré
title Contribution of large region joint associations to complex traits genetics.
title_short Contribution of large region joint associations to complex traits genetics.
title_full Contribution of large region joint associations to complex traits genetics.
title_fullStr Contribution of large region joint associations to complex traits genetics.
title_full_unstemmed Contribution of large region joint associations to complex traits genetics.
title_sort contribution of large region joint associations to complex traits genetics.
publisher Public Library of Science (PLoS)
series PLoS Genetics
issn 1553-7390
1553-7404
publishDate 2015-04-01
description A polygenic model of inheritance, whereby hundreds or thousands of weakly associated variants contribute to a trait's heritability, has been proposed to underlie the genetic architecture of complex traits. However, relatively few genetic variants have been positively identified so far and they collectively explain only a small fraction of the predicted heritability. We hypothesized that joint association of multiple weakly associated variants over large chromosomal regions contributes to complex traits variance. Confirmation of such regional associations can help identify new loci and lead to a better understanding of known ones. To test this hypothesis, we first characterized the ability of commonly used genetic association models to identify large region joint associations. Through theoretical derivation and simulation, we showed that multivariate linear models where multiple SNPs are included as independent predictors have the most favorable association profile. Based on these results, we tested for large region association with height in 3,740 European participants from the Health and Retirement Study (HRS) study. Adjusting for SNPs with known association with height, we demonstrated clustering of weak associations (p = 2x10-4) in regions extending up to 433.0 Kb from known height loci. The contribution of regional associations to phenotypic variance was estimated at 0.172 (95% CI 0.063-0.279; p < 0.001), which compared favorably to 0.129 explained by known height variants. Conversely, we showed that suggestively associated regions are enriched for known height loci. To extend our findings to other traits, we also tested BMI, HDLc and CRP for large region associations, with consistent results for CRP. Our results demonstrate the presence of large region joint associations and suggest these can be used to pinpoint weakly associated SNPs.
url http://europepmc.org/articles/PMC4391841?pdf=render
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