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Genomic prediction of breeding values using previously estimated SNP variances

Overview of attention for article published in Genetics Selection Evolution, September 2014
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Title
Genomic prediction of breeding values using previously estimated SNP variances
Published in
Genetics Selection Evolution, September 2014
DOI 10.1186/s12711-014-0052-x
Pubmed ID
Authors

Mario PL Calus, Chris Schrooten, Roel F Veerkamp

Abstract

Genomic prediction requires estimation of variances of effects of single nucleotide polymorphisms (SNPs), which is computationally demanding, and uses these variances for prediction. We have developed models with separate estimation of SNP variances, which can be applied infrequently, and genomic prediction, which can be applied routinely. SNP variances were estimated with Bayes Stochastic Search Variable Selection (BSSVS) and BayesC. Genome-enhanced breeding values (GEBV) were estimated with RR-BLUP (ridge regression best linear unbiased prediction), using either variances obtained from BSSVS (BLUP-SSVS) or BayesC (BLUP-C), or assuming equal variances for each SNP. Datasets used to estimate SNP variances comprised (1) all animals, (2) 50% random animals (RAN50), (3) 50% best animals (TOP50), or (4) 50% worst animals (BOT50). Traits analysed were protein yield, udder depth, somatic cell score, interval between first and last insemination, direct longevity, and longevity including information from predictors. BLUP-SSVS and BLUP-C yielded similar GEBV as the equivalent Bayesian models that simultaneously estimated SNP variances. Reliabilities of these GEBV were consistently higher than from RR-BLUP, although only significantly for direct longevity. Across scenarios that used data subsets to estimate GEBV, observed reliabilities were generally higher for TOP50 than for RAN50, and much higher than for BOT50. Reliabilities of TOP50 were higher because the training data contained more ancestors of selection candidates. Using estimated SNP variances based on random or non-random subsets of the data, while using all data to estimate GEBV, did not affect reliabilities of the BLUP models. A convergence criterion of 10(-8) instead of 10(-10) for BLUP models yielded similar GEBV, while the required number of iterations decreased by 71 to 90%. Including a separate polygenic effect consistently improved reliabilities of the GEBV, but also substantially increased the required number of iterations to reach convergence with RR-BLUP. SNP variances converged faster for BayesC than for BSSVS. Combining Bayesian variable selection models to re-estimate SNP variances and BLUP models that use those SNP variances, yields GEBV that are similar to those from full Bayesian models. Moreover, these combined models yield predictions with higher reliability and less bias than the commonly used RR-BLUP model.

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Geographical breakdown

Country Count As %
France 1 2%
Finland 1 2%
New Zealand 1 2%
Mexico 1 2%
China 1 2%
Poland 1 2%
Unknown 37 86%

Demographic breakdown

Readers by professional status Count As %
Researcher 15 35%
Student > Ph. D. Student 8 19%
Student > Master 7 16%
Student > Bachelor 2 5%
Other 2 5%
Other 3 7%
Unknown 6 14%
Readers by discipline Count As %
Agricultural and Biological Sciences 28 65%
Biochemistry, Genetics and Molecular Biology 2 5%
Computer Science 2 5%
Mathematics 1 2%
Veterinary Science and Veterinary Medicine 1 2%
Other 2 5%
Unknown 7 16%
Attention Score in Context

Attention Score in Context

This research output has an Altmetric Attention Score of 1. This is our high-level measure of the quality and quantity of online attention that it has received. This Attention Score, as well as the ranking and number of research outputs shown below, was calculated when the research output was last mentioned on 20 October 2015.
All research outputs
#20,656,820
of 25,374,647 outputs
Outputs from Genetics Selection Evolution
#667
of 822 outputs
Outputs of similar age
#192,393
of 263,063 outputs
Outputs of similar age from Genetics Selection Evolution
#7
of 16 outputs
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