Parallel Markov chain Monte Carlo - bridging the gap to high-performance Bayesian computation in animal breeding and genetics

<p>Abstract</p> <p>Background</p> <p>Most Bayesian models for the analysis of complex traits are not analytically tractable and inferences are based on computationally intensive techniques. This is true of Bayesian models for genome-enabled selection, which uses whole-g...

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Main Authors: Wu Xiao-Lin, Sun Chuanyu, Beissinger Timothy M, Rosa Guilherme JM, Weigel Kent A, Gatti Natalia de, Gianola Daniel
Format: Article
Language:deu
Published: BMC 2012-09-01
Series:Genetics Selection Evolution
Online Access:http://www.gsejournal.org/content/44/1/29
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spelling doaj-e1928962a3934372b731df66da3de33a2020-11-25T00:55:15ZdeuBMCGenetics Selection Evolution0999-193X1297-96862012-09-014412910.1186/1297-9686-44-29Parallel Markov chain Monte Carlo - bridging the gap to high-performance Bayesian computation in animal breeding and geneticsWu Xiao-LinSun ChuanyuBeissinger Timothy MRosa Guilherme JMWeigel Kent AGatti Natalia deGianola Daniel<p>Abstract</p> <p>Background</p> <p>Most Bayesian models for the analysis of complex traits are not analytically tractable and inferences are based on computationally intensive techniques. This is true of Bayesian models for genome-enabled selection, which uses whole-genome molecular data to predict the genetic merit of candidate animals for breeding purposes. In this regard, parallel computing can overcome the bottlenecks that can arise from series computing. Hence, a major goal of the present study is to bridge the gap to high-performance Bayesian computation in the context of animal breeding and genetics.</p> <p>Results</p> <p>Parallel Monte Carlo Markov chain algorithms and strategies are described in the context of animal breeding and genetics. Parallel Monte Carlo algorithms are introduced as a starting point including their applications to computing single-parameter and certain multiple-parameter models. Then, two basic approaches for parallel Markov chain Monte Carlo are described: one aims at parallelization within a single chain; the other is based on running multiple chains, yet some variants are discussed as well. Features and strategies of the parallel Markov chain Monte Carlo are illustrated using real data, including a large beef cattle dataset with 50K SNP genotypes.</p> <p>Conclusions</p> <p>Parallel Markov chain Monte Carlo algorithms are useful for computing complex Bayesian models, which does not only lead to a dramatic speedup in computing but can also be used to optimize model parameters in complex Bayesian models. Hence, we anticipate that use of parallel Markov chain Monte Carlo will have a profound impact on revolutionizing the computational tools for genomic selection programs.</p> http://www.gsejournal.org/content/44/1/29
collection DOAJ
language deu
format Article
sources DOAJ
author Wu Xiao-Lin
Sun Chuanyu
Beissinger Timothy M
Rosa Guilherme JM
Weigel Kent A
Gatti Natalia de
Gianola Daniel
spellingShingle Wu Xiao-Lin
Sun Chuanyu
Beissinger Timothy M
Rosa Guilherme JM
Weigel Kent A
Gatti Natalia de
Gianola Daniel
Parallel Markov chain Monte Carlo - bridging the gap to high-performance Bayesian computation in animal breeding and genetics
Genetics Selection Evolution
author_facet Wu Xiao-Lin
Sun Chuanyu
Beissinger Timothy M
Rosa Guilherme JM
Weigel Kent A
Gatti Natalia de
Gianola Daniel
author_sort Wu Xiao-Lin
title Parallel Markov chain Monte Carlo - bridging the gap to high-performance Bayesian computation in animal breeding and genetics
title_short Parallel Markov chain Monte Carlo - bridging the gap to high-performance Bayesian computation in animal breeding and genetics
title_full Parallel Markov chain Monte Carlo - bridging the gap to high-performance Bayesian computation in animal breeding and genetics
title_fullStr Parallel Markov chain Monte Carlo - bridging the gap to high-performance Bayesian computation in animal breeding and genetics
title_full_unstemmed Parallel Markov chain Monte Carlo - bridging the gap to high-performance Bayesian computation in animal breeding and genetics
title_sort parallel markov chain monte carlo - bridging the gap to high-performance bayesian computation in animal breeding and genetics
publisher BMC
series Genetics Selection Evolution
issn 0999-193X
1297-9686
publishDate 2012-09-01
description <p>Abstract</p> <p>Background</p> <p>Most Bayesian models for the analysis of complex traits are not analytically tractable and inferences are based on computationally intensive techniques. This is true of Bayesian models for genome-enabled selection, which uses whole-genome molecular data to predict the genetic merit of candidate animals for breeding purposes. In this regard, parallel computing can overcome the bottlenecks that can arise from series computing. Hence, a major goal of the present study is to bridge the gap to high-performance Bayesian computation in the context of animal breeding and genetics.</p> <p>Results</p> <p>Parallel Monte Carlo Markov chain algorithms and strategies are described in the context of animal breeding and genetics. Parallel Monte Carlo algorithms are introduced as a starting point including their applications to computing single-parameter and certain multiple-parameter models. Then, two basic approaches for parallel Markov chain Monte Carlo are described: one aims at parallelization within a single chain; the other is based on running multiple chains, yet some variants are discussed as well. Features and strategies of the parallel Markov chain Monte Carlo are illustrated using real data, including a large beef cattle dataset with 50K SNP genotypes.</p> <p>Conclusions</p> <p>Parallel Markov chain Monte Carlo algorithms are useful for computing complex Bayesian models, which does not only lead to a dramatic speedup in computing but can also be used to optimize model parameters in complex Bayesian models. Hence, we anticipate that use of parallel Markov chain Monte Carlo will have a profound impact on revolutionizing the computational tools for genomic selection programs.</p>
url http://www.gsejournal.org/content/44/1/29
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