Integrating on-farm and genomic information improves the predictive ability of milk infrared prediction of blood indicators of metabolic disorders in dairy cows.
Lúcio Flávio Macedo MotaDiana GiannuzziSara PegoloErminio TrevisiPaolo Ajmone-MarsanAlessio CecchinatoPublished in: Genetics, selection, evolution : GSE (2023)
Our results show that, compared to using only milk FTIR data, a model integrating milk FTIR spectra with on-farm and genomic information improves the prediction of blood metabolic traits in Holstein cattle and that GBM is more accurate in predicting blood metabolites than BayesB, especially for the batch-out CV and herd-out CV scenarios.