1. Evaluation of a new additive-dominance genomic model and implications for quantitative genetics and genomic selection
- Author
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Taiana Lopes Rangel Miranda, Marcos Deon Vilela de Resende, Camila Ferreira Azevedo, Andrei Caíque Pires Nunes, Elizabete Keiko Takahashi, Guilherme Ferreira Simiqueli, Fabyano Fonseca e Silva, Rodrigo Silva Alves, TAIANA LOPES RANGEL MIRANDA, UFV, MARCOS DEON VILELA DE RESENDE, CNPCa, CAMILA FERREIRA AZEVEDO, UFV, ANDREI CAÍQUE PIRES NUNES, UNIVERSIDADE FEDERAL DO SUL DA BAHIA, ELIZABETE KEIKO TAKAHASHI, CELULOSE NIPO-BRASILEIRA S.A, GUILHERME FERREIRA SIMIQUELI, UFV, FABYANO FONSECA E SILVA, UFV, and RODRIGO SILVA ALVES, UFLA.
- Subjects
REML ,Plant selection guides ,Restricted maximum likelihood ,Agriculture (General) ,Quantitative genetics ,Maximization ,Variance (accounting) ,Melhoramento Genético Vegetal ,Best linear unbiased prediction ,Quantitative Biology::Genomics ,S1-972 ,Dominance (ethology) ,genetic selection ,Seleção Genética ,Molecular models ,genetic models ,Genetic model ,Statistics ,plant breeding ,BLUP ,Mathematics ,Parametric statistics - Abstract
The Fisher?s infinitesimal model is traditionally used in quantitative genetics and genomic selection, and it attributes most genetic variance to additive variance. Recently, the dominance maximization model was proposed and it prioritizes the dominance variance based on alternative parameterizations. In this model, the additive effects at the locus level are introduced into the model after the dominance variance is maximized. In this study, the new parameterizations of additive and dominance effects on quantitative genetics and genomic selection were evaluated and compared with the parameterizations traditionally applied using the genomic best linear unbiased prediction method. As the parametric relative magnitude of the additive and dominance effects vary with allelic frequencies of populations, we considered different minor allele frequencies to compare the relative magnitudes. We also proposed and evaluated two indices that combine the additive and dominance variances estimated by both models. The dominance maximization model, along with the two indices, offers alternatives to improve the estimates of additive and dominance variances and their respective proportions and can be successfully used in genetic evaluation. Made available in DSpace on 2022-01-19T16:00:25Z (GMT). No. of bitstreams: 1 evaluation-of-a-new-additive.pdf: 725842 bytes, checksum: 2c26fbbce6a08e566a87f91bb64eca59 (MD5) Previous issue date: 2022
- Published
- 2022
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