Abstract Background: Genomic prediction of breeding values from dense single nucleotide polymorphisms (SNP) genotypes is used for livestock and crop breeding, and can also be used to predict disease risk in humans. For some traits, the most accurate genomic predictions are achieved with non-linear estimates of SNP effects from Bayesian methods that treat SNP effects as random effects from a heavy tailed prior distribution. These Bayesian methods are usually implemented via Markov chain Monte Carlo (MCMC) schemes to sample from the posterior distribution of SNP effects, which is computationally expensive. Our aim was to develop an efficient expectation-maximisation algorithm (emBayesR) that gives similar estimates of SNP effects and accuraci...
International audienceAbstractBackgroundThe rapid adoption of genomic selection is due to two key fa...
Abstract Background Two Bayesian methods, BayesCπ and BayesDπ, were developed for genomic prediction...
Abstract Background The increasing availability of whole-genome sequence data is expected to increas...
BACKGROUND: Genomic prediction of breeding values from dense single nucleotide polymorphisms (SNP) g...
BACKGROUND: Bayesian mixture models in which the effects of SNP are assumed to come from normal dist...
Background: Bayesian mixture models in which the effects of SNP are assumed to come from normal dist...
Prediction accuracies of estimated breeding values for economically important traits are expected to...
BACKGROUND: Using whole genome sequence data might improve genomic prediction accuracy, when compare...
<div><p>Prediction accuracies of estimated breeding values for economically important traits are exp...
Abstract Background Using whole genome sequence data might improve genomic prediction accuracy, when...
Abstract Genomic selection uses genome-wide dense SNP marker genotyping for the prediction of geneti...
The prediction of complex or quantitative traits from single nucleotide polymorphism (SNP) genotypes...
Abstract Background The rapid adoption of genomic selection is due to two key factors: availability ...
Genomic selection uses genome-wide dense SNP marker genotyping for the prediction of genetic values,...
Background: The rapid adoption of genomic selection is due to two key factors: availability of both ...
International audienceAbstractBackgroundThe rapid adoption of genomic selection is due to two key fa...
Abstract Background Two Bayesian methods, BayesCπ and BayesDπ, were developed for genomic prediction...
Abstract Background The increasing availability of whole-genome sequence data is expected to increas...
BACKGROUND: Genomic prediction of breeding values from dense single nucleotide polymorphisms (SNP) g...
BACKGROUND: Bayesian mixture models in which the effects of SNP are assumed to come from normal dist...
Background: Bayesian mixture models in which the effects of SNP are assumed to come from normal dist...
Prediction accuracies of estimated breeding values for economically important traits are expected to...
BACKGROUND: Using whole genome sequence data might improve genomic prediction accuracy, when compare...
<div><p>Prediction accuracies of estimated breeding values for economically important traits are exp...
Abstract Background Using whole genome sequence data might improve genomic prediction accuracy, when...
Abstract Genomic selection uses genome-wide dense SNP marker genotyping for the prediction of geneti...
The prediction of complex or quantitative traits from single nucleotide polymorphism (SNP) genotypes...
Abstract Background The rapid adoption of genomic selection is due to two key factors: availability ...
Genomic selection uses genome-wide dense SNP marker genotyping for the prediction of genetic values,...
Background: The rapid adoption of genomic selection is due to two key factors: availability of both ...
International audienceAbstractBackgroundThe rapid adoption of genomic selection is due to two key fa...
Abstract Background Two Bayesian methods, BayesCπ and BayesDπ, were developed for genomic prediction...
Abstract Background The increasing availability of whole-genome sequence data is expected to increas...