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COMPARATIVE ANALYSIS OF BAYESIAN AND FREQUENCY-BASED METHODS IN GENOMIC SELECTION FOR POPCORN POPULATION BREEDING AND OPTIMIZATION OF SNP MARKER DENSITY

Authors :
Gabrielle Sousa Mafra
Janeo Eustáquio de Almeida Filho
Fabio Tomaz de Oliveira
Fernando Rafael Alves Ferreira
Antônio Teixeira do Amaral Júnior
Yure Pequeno de Souza
Ismael Albino Schwantes
Juliana Saltires Santos
Marcelo Vivas
Pedro Henrique Araújo Diniz Santos
Ismael Fernando Schegoscheski Gerhardt
Source :
Functional Plant Breeding Journal. 1:61-72
Publication Year :
2020
Publisher :
Functional Plant Breeding Journal, 2020.

Abstract

Bayesian methods and frequency-based approaches such GBLUP are used to estimate genomic genetic values in recurrent genomic selection. An important factor in genetic gain is prediction accuracy; therefore, the objective of the present study was to estimate the prediction accuracy of the following methods: GBLUP, Bayes A, Bayes B, Bayes Cπ, Bayes Lasso, and RKHS. After establishing the best method, different densities of SNP markers were tested. The experiment was implemented using an incomplete block design with three repetitions in two locations. Ninety-eight individuals were evaluated using 10,507 SNPs; the assessed traits were grain yield, popping expansion, and popcorn volume. The analyses were performed using R software and a ten-fold cross-validation system. The methods were compared using the t-test, via correlation networks and according to the time required to perform the analysis. The obtained results showed that the methods did not differ statistically with regard to selection accuracy, with high correlation estimates (

Details

ISSN :
25264117
Volume :
1
Database :
OpenAIRE
Journal :
Functional Plant Breeding Journal
Accession number :
edsair.doi...........b8cab172d0d43d3bd328daa2d6e5b010
Full Text :
https://doi.org/10.35418/2526-4117/v1n2a6