Prediction of genomic breeding values of milk traits in Brazilian Saanen goats.
Autor: | de Sousa DR; Animal Sciences Department, Federal University of Ceará, Fortaleza, Brazil., do Nascimento AV; Faculty of Agricultural and Veterinary Sciences of Jaboticabal. Animal Sciences Department I, São Paulo State University 'Júlio de Mesquita Filho', Jaboticabal, Brazil., Lôbo RNB; Animal Sciences Department, Federal University of Ceará, Fortaleza, Brazil.; Brazilian Agricultural Research Corporation - EMBRAPA, Embrapa Caprinos e Ovinos, Estrada Sobral/Groaíras, Sobral, Brazil.; National Council for Scientific and Technological Development - CNPq, Lago Sul, Brazil. |
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Jazyk: | angličtina |
Zdroj: | Journal of animal breeding and genetics = Zeitschrift fur Tierzuchtung und Zuchtungsbiologie [J Anim Breed Genet] 2021 Sep; Vol. 138 (5), pp. 541-551. Date of Electronic Publication: 2021 Apr 16. |
DOI: | 10.1111/jbg.12550 |
Abstrakt: | The study's objective was to compare the genomic prediction ability methods for the traits milk yield, milk composition and somatic cell count of Saanen Brazilian goats. Nine hundred forty goats, genotyped with an Axiom_OviCap (Caprine) panel, Affimetrix customized array with 62,557 single nucleotide polymorphisms (SNPs), were used for the genomic selection analyses. The genomic methods studied to estimate the effects of SNPs and direct genomic values (DGV) were as follows: (a) genomic BLUP (GBLUP), (b) Bayes Cπ and (c) Bayesian Lasso (BLASSO). Estimated breeding values (EBV) and deregressed estimated breeding values (dEBV) were used as response variables for the genomic predictions. The prediction ability was assessed by Pearson's correlation between DGV and response variables (EBV and dEBV). Regression coefficients of the response variables on the DGV were obtained to verify if the genomic predictions were biased. In addition, the mean square error of prediction (MSE) was used as a measure of verification of model fit to the data. The means of prediction accuracy, when EBV was used as a response variable, were 0.68, 0.68 and 0.67 for GBLUP, Bayes Cπ and BLASSO, respectively. With dEBV, the mean prediction accuracy was 0.50 for all models. The averages of the EBV regression coefficients on DGV were 1.08 for all models (GBLUP, Bayes Cπ and BLASSO), higher than those obtained for the regression coefficient of dEBV on DGV, which presented values of 1.05, 1.05 and 1.08 for GBLUP, Bayes Cπ and BLASSO, respectively. None of the methods stood out in terms of prediction ability; however, the GBLUP method was the most appropriate for estimating the DGV, in a slightly more reliable and less biased way, besides presenting the lowest computational cost. In the context of the present study, EBV was the preferred response variables considering the genomic prediction accuracy despite dEBV also presented lower bias. (© 2021 Wiley-VCH GmbH.) |
Databáze: | MEDLINE |
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