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Genome-wide prediction for complex traits under the presence of dominance effects in simulated populations using GBLUP and machine learning methods.
Alves, Anderson Antonio Carvalho; da Costa, Rebeka Magalhães; Bresolin, Tiago; Fernandes Júnior, Gerardo Alves; Espigolan, Rafael; Ribeiro, André Mauric Frossard; Carvalheiro, Roberto; de Albuquerque, Lucia Galvão.
Afiliação
  • Alves AAC; Department of Animal Science, Faculty of Agricultural and Veterinary Sciences, Sao Paulo State University (UNESP), Jaboticabal, SP, Brazil.
  • da Costa RM; Department of Animal Science, Faculty of Agricultural and Veterinary Sciences, Sao Paulo State University (UNESP), Jaboticabal, SP, Brazil.
  • Bresolin T; Department of Animal Sciences, University of Wisconsin, Madison, WI.
  • Fernandes Júnior GA; Department of Animal Science, Faculty of Agricultural and Veterinary Sciences, Sao Paulo State University (UNESP), Jaboticabal, SP, Brazil.
  • Espigolan R; Department of Animal Science, Faculty of Animal Science and Food Engineering, University of Sao Paulo, Pirassununga, SP, Brazil.
  • Ribeiro AMF; National Council of Technological and Scientific Development (CNPq), Brasilia, Brazil.
  • Carvalheiro R; Department of Animal Science, Faculty of Agricultural and Veterinary Sciences, Sao Paulo State University (UNESP), Jaboticabal, SP, Brazil.
  • de Albuquerque LG; National Council of Technological and Scientific Development (CNPq), Brasilia, Brazil.
J Anim Sci ; 98(6)2020 Jun 01.
Article em En | MEDLINE | ID: mdl-32474602
The aim of this study was to compare the predictive performance of the Genomic Best Linear Unbiased Predictor (GBLUP) and machine learning methods (Random Forest, RF; Support Vector Machine, SVM; Artificial Neural Network, ANN) in simulated populations presenting different levels of dominance effects. Simulated genome comprised 50k SNP and 300 QTL, both biallelic and randomly distributed across 29 autosomes. A total of six traits were simulated considering different values for the narrow and broad-sense heritability. In the purely additive scenario with low heritability (h2 = 0.10), the predictive ability obtained using GBLUP was slightly higher than the other methods whereas ANN provided the highest accuracies for scenarios with moderate heritability (h2 = 0.30). The accuracies of dominance deviations predictions varied from 0.180 to 0.350 in GBLUP extended for dominance effects (GBLUP-D), from 0.06 to 0.185 in RF and they were null using the ANN and SVM methods. Although RF has presented higher accuracies for total genetic effect predictions, the mean-squared error values in such a model were worse than those observed for GBLUP-D in scenarios with large additive and dominance variances. When applied to prescreen important regions, the RF approach detected QTL with high additive and/or dominance effects. Among machine learning methods, only the RF was capable to cover implicitly dominance effects without increasing the number of covariates in the model, resulting in higher accuracies for the total genetic and phenotypic values as the dominance ratio increases. Nevertheless, whether the interest is to infer directly on dominance effects, GBLUP-D could be a more suitable method.
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Texto completo: 1 Base de dados: MEDLINE Assunto principal: Genoma / Herança Multifatorial / Genômica / Aprendizado de Máquina Tipo de estudo: Prognostic_studies / Risk_factors_studies Limite: Animals Idioma: En Ano de publicação: 2020 Tipo de documento: Article

Texto completo: 1 Base de dados: MEDLINE Assunto principal: Genoma / Herança Multifatorial / Genômica / Aprendizado de Máquina Tipo de estudo: Prognostic_studies / Risk_factors_studies Limite: Animals Idioma: En Ano de publicação: 2020 Tipo de documento: Article