Multitrait analysis of quantitative trait loci using Bayesian composite space approach

<p>Abstract</p> <p>Background</p> <p>Multitrait analysis of quantitative trait loci can capture the maximum information of experiment. The maximum-likelihood approach and the least-square approach have been developed to jointly analyze multiple traits, but it is difficu...

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Main Authors: Ji Peng, Gao Hui Jiang, Pu Li Jun, Jiang Dan, Fang Ming, Wang Hong Yi, Yang Run Qing
Format: Article
Language:English
Published: BMC 2008-07-01
Series:BMC Genetics
Online Access:http://www.biomedcentral.com/1471-2156/9/48
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spelling doaj-c1df3243cddd416b9e7e4aa83e9359282020-11-25T03:11:49ZengBMCBMC Genetics1471-21562008-07-01914810.1186/1471-2156-9-48Multitrait analysis of quantitative trait loci using Bayesian composite space approachJi PengGao Hui JiangPu Li JunJiang DanFang MingWang Hong YiYang Run Qing<p>Abstract</p> <p>Background</p> <p>Multitrait analysis of quantitative trait loci can capture the maximum information of experiment. The maximum-likelihood approach and the least-square approach have been developed to jointly analyze multiple traits, but it is difficult for them to include multiple QTL simultaneously into one model.</p> <p>Results</p> <p>In this article, we have successfully extended Bayesian composite space approach, which is an efficient model selection method that can easily handle multiple QTL, to multitrait mapping of QTL. There are many statistical innovations of the proposed method compared with Bayesian single trait analysis. The first is that the parameters for all traits are updated jointly by vector or matrix; secondly, for QTL in the same interval that control different traits, the correlation between QTL genotypes is taken into account; thirdly, the information about the relationship of residual error between the traits is also made good use of. The superiority of the new method over separate analysis was demonstrated by both simulated and real data. The computing program was written in FORTRAN and it can be available for request.</p> <p>Conclusion</p> <p>The results suggest that the developed new method is more powerful than separate analysis.</p> http://www.biomedcentral.com/1471-2156/9/48
collection DOAJ
language English
format Article
sources DOAJ
author Ji Peng
Gao Hui Jiang
Pu Li Jun
Jiang Dan
Fang Ming
Wang Hong Yi
Yang Run Qing
spellingShingle Ji Peng
Gao Hui Jiang
Pu Li Jun
Jiang Dan
Fang Ming
Wang Hong Yi
Yang Run Qing
Multitrait analysis of quantitative trait loci using Bayesian composite space approach
BMC Genetics
author_facet Ji Peng
Gao Hui Jiang
Pu Li Jun
Jiang Dan
Fang Ming
Wang Hong Yi
Yang Run Qing
author_sort Ji Peng
title Multitrait analysis of quantitative trait loci using Bayesian composite space approach
title_short Multitrait analysis of quantitative trait loci using Bayesian composite space approach
title_full Multitrait analysis of quantitative trait loci using Bayesian composite space approach
title_fullStr Multitrait analysis of quantitative trait loci using Bayesian composite space approach
title_full_unstemmed Multitrait analysis of quantitative trait loci using Bayesian composite space approach
title_sort multitrait analysis of quantitative trait loci using bayesian composite space approach
publisher BMC
series BMC Genetics
issn 1471-2156
publishDate 2008-07-01
description <p>Abstract</p> <p>Background</p> <p>Multitrait analysis of quantitative trait loci can capture the maximum information of experiment. The maximum-likelihood approach and the least-square approach have been developed to jointly analyze multiple traits, but it is difficult for them to include multiple QTL simultaneously into one model.</p> <p>Results</p> <p>In this article, we have successfully extended Bayesian composite space approach, which is an efficient model selection method that can easily handle multiple QTL, to multitrait mapping of QTL. There are many statistical innovations of the proposed method compared with Bayesian single trait analysis. The first is that the parameters for all traits are updated jointly by vector or matrix; secondly, for QTL in the same interval that control different traits, the correlation between QTL genotypes is taken into account; thirdly, the information about the relationship of residual error between the traits is also made good use of. The superiority of the new method over separate analysis was demonstrated by both simulated and real data. The computing program was written in FORTRAN and it can be available for request.</p> <p>Conclusion</p> <p>The results suggest that the developed new method is more powerful than separate analysis.</p>
url http://www.biomedcentral.com/1471-2156/9/48
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