Enviromic-based kernels may optimize resource allocation with multi-trait multi-environment genomic prediction for tropical Maize.
Raysa GevartoskyHumberto Fanelli CarvalhoGermano Costa-NetoOsval Antonio Montesinos-LópezJosé CrosaRoberto Fritsche-NetoPublished in: BMC plant biology (2023)
Our findings indicate that a genomic by enviromic by trait interaction kernel associated with genetic algorithms is efficient and can be proposed as a promising approach to designing optimized training sets for genomic prediction when the variance-covariance matrix of traits is available. Additionally, great improvements in the genetic gains per dollar invested were observed, suggesting that a good allocation of resources can be deployed by using the proposed approach.