articleBMC BioinformaticsMay 23, 2011GOLD OA

Extension of the bayesian alphabet for genomic selection

Iowa State University · Adnan Menderes University · +1 more institution

PubMed
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Abstract

Background

Two bayesian methods, BayesCπ and BayesDπ, were developed for genomic prediction to address the drawback of BayesA and BayesB regarding the impact of prior hyperparameters and treat the prior probability π that a SNP has zero effect as unknown. The methods were compared in terms of inference of the number of QTL and accuracy of genomic estimated breeding values (GEBVs), using simulated scenarios and real data from North American Holstein bulls.

Results

Estimates of π from BayesCπ, in contrast to BayesDπ, were sensitive to the number of simulated QTL and training data size, and provide information about genetic architecture. Milk yield and fat yield have QTL with larger effects than protein yield and somatic cell score. The drawback of BayesA and BayesB did not impair the accuracy of GEBVs. Accuracies of alternative Bayesian methods were similar. BayesA was a good choice for GEBV with the real data. Computing time was shorter for BayesCπ than for BayesDπ, and longest for our implementation of BayesA.

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Authors

4

Topics & keywords

Keywords
  • Quantitative trait locus
  • Bayesian probability
  • Prior probability
  • Statistics
  • Computer science
  • Bayes' theorem
  • Mathematics
  • Biology
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