Computation of identity by descent probabilities conditional on DNA markers <it>via </it>a Monte Carlo Markov Chain method

<p>Abstract</p> <p>The accurate estimation of the probability of identity by descent (IBD) at loci or genome positions of interest is paramount to the genetic study of quantitative and disease resistance traits. We present a Monte Carlo Markov Chain method to compute IBD probabilit...

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Main Authors: Pérez-Enciso Miguel, Varona Luis, Rothschild Max F
Format: Article
Language:deu
Published: BMC 2000-09-01
Series:Genetics Selection Evolution
Subjects:
Online Access:http://www.gsejournal.org/content/32/5/467
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spelling doaj-2a10be6eeeb249b7a6ffbb048fcf1ecc2020-11-24T21:27:20ZdeuBMCGenetics Selection Evolution0999-193X1297-96862000-09-0132546748210.1186/1297-9686-32-5-467Computation of identity by descent probabilities conditional on DNA markers <it>via </it>a Monte Carlo Markov Chain methodPérez-Enciso MiguelVarona LuisRothschild Max F<p>Abstract</p> <p>The accurate estimation of the probability of identity by descent (IBD) at loci or genome positions of interest is paramount to the genetic study of quantitative and disease resistance traits. We present a Monte Carlo Markov Chain method to compute IBD probabilities between individuals conditional on DNA markers and on pedigree information. The IBDs can be obtained in a completely general pedigree at any genome position of interest, and all marker and pedigree information available is used. The method can be split into two steps at each iteration. First, phases are sampled using current genotypic configurations of relatives and second, crossover events are simulated conditional on phases. Internal track is kept of all founder origins and crossovers such that the IBD probabilities averaged over replicates are rapidly obtained. We illustrate the method with some examples. First, we show that all pedigree information should be used to obtain line origin probabilities in F2 crosses. Second, the distribution of genetic relationships between half and full sibs is analysed in both simulated data and in real data from an F2 cross in pigs.</p> http://www.gsejournal.org/content/32/5/467DNA markersidentity by descent probabilityMonte Carlo Markov Chain
collection DOAJ
language deu
format Article
sources DOAJ
author Pérez-Enciso Miguel
Varona Luis
Rothschild Max F
spellingShingle Pérez-Enciso Miguel
Varona Luis
Rothschild Max F
Computation of identity by descent probabilities conditional on DNA markers <it>via </it>a Monte Carlo Markov Chain method
Genetics Selection Evolution
DNA markers
identity by descent probability
Monte Carlo Markov Chain
author_facet Pérez-Enciso Miguel
Varona Luis
Rothschild Max F
author_sort Pérez-Enciso Miguel
title Computation of identity by descent probabilities conditional on DNA markers <it>via </it>a Monte Carlo Markov Chain method
title_short Computation of identity by descent probabilities conditional on DNA markers <it>via </it>a Monte Carlo Markov Chain method
title_full Computation of identity by descent probabilities conditional on DNA markers <it>via </it>a Monte Carlo Markov Chain method
title_fullStr Computation of identity by descent probabilities conditional on DNA markers <it>via </it>a Monte Carlo Markov Chain method
title_full_unstemmed Computation of identity by descent probabilities conditional on DNA markers <it>via </it>a Monte Carlo Markov Chain method
title_sort computation of identity by descent probabilities conditional on dna markers <it>via </it>a monte carlo markov chain method
publisher BMC
series Genetics Selection Evolution
issn 0999-193X
1297-9686
publishDate 2000-09-01
description <p>Abstract</p> <p>The accurate estimation of the probability of identity by descent (IBD) at loci or genome positions of interest is paramount to the genetic study of quantitative and disease resistance traits. We present a Monte Carlo Markov Chain method to compute IBD probabilities between individuals conditional on DNA markers and on pedigree information. The IBDs can be obtained in a completely general pedigree at any genome position of interest, and all marker and pedigree information available is used. The method can be split into two steps at each iteration. First, phases are sampled using current genotypic configurations of relatives and second, crossover events are simulated conditional on phases. Internal track is kept of all founder origins and crossovers such that the IBD probabilities averaged over replicates are rapidly obtained. We illustrate the method with some examples. First, we show that all pedigree information should be used to obtain line origin probabilities in F2 crosses. Second, the distribution of genetic relationships between half and full sibs is analysed in both simulated data and in real data from an F2 cross in pigs.</p>
topic DNA markers
identity by descent probability
Monte Carlo Markov Chain
url http://www.gsejournal.org/content/32/5/467
work_keys_str_mv AT perezencisomiguel computationofidentitybydescentprobabilitiesconditionalondnamarkersitviaitamontecarlomarkovchainmethod
AT varonaluis computationofidentitybydescentprobabilitiesconditionalondnamarkersitviaitamontecarlomarkovchainmethod
AT rothschildmaxf computationofidentitybydescentprobabilitiesconditionalondnamarkersitviaitamontecarlomarkovchainmethod
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