Content area

Abstract

The phenomenon of genotype × environment (G × E) interaction in plant breeding decreases selection accuracy, thereby negatively affecting genetic gains. Several genomic prediction models incorporating G × E have been recently developed and used in genomic selection of plant breeding programs. Genomic prediction models for assessing multi-environment G × E interaction are extensions of a single-environment model, and have advantages and limitations. In this study, we propose two multi-environment Bayesian genomic models: the first model considers genetic effects (u) that can be assessed by the Kronecker product of variance–covariance matrices of genetic correlations between environments and genomic kernels through markers under two linear kernel methods, linear (genomic best linear unbiased predictors, GBLUP) and Gaussian (Gaussian kernel, GK). The other model has the same genetic component as the first model (u) plus an extra component, f, that captures random effects between environments that were not captured by the random effects u. We used five CIMMYT data sets (one maize and four wheat) that were previously used in different studies. Results show that models with G × E always have superior prediction ability than single-environment models, and the higher prediction ability of multi-environment models with u and f over the multi-environment model with only u occurred 85% of the time with GBLUP and 45% of the time with GK across the five data sets. The latter result indicated that including the random effect f is still beneficial for increasing prediction ability after adjusting by the random effect u.

Details

Title
Bayesian Genomic Prediction with Genotype × Environment Interaction Kernel Models
Author
Cuevas, Jaime 1 ; Crossa, José 2 ; Montesinos-López, Osval A 3 ; Burgueño, Juan 2 ; Pérez-Rodríguez, Paulino 4 ; de los Campos, Gustavo 5 

 Universidad de Quintana Roo, Chetumal, Quintana Roo, México 
 Biometrics and Statistics Unit, International Maize and Wheat Improvement Center (CIMMYT), 06600 México D. F., México 
 Facultad de Telemática, Universidad de Colima, C. P. 28040, Edo. de Colima, México 
 Colegio de Postgraduados, C. P. 56230 Montecillos, Edo. de México, México 
 Department of Epidemiology and Biostatistics, Michigan State University, East Lansing, Michigan 48824 
Pages
41-53
Publication year
2017
Publication date
Jan 1, 2017
Publisher
Oxford University Press
e-ISSN
21601836
Source type
Scholarly Journal
Language of publication
English
ProQuest document ID
3169760853
Copyright
© 2017 Cuevas et al..