Use este identificador para citar ou linkar para este item: http://www.alice.cnptia.embrapa.br/alice/handle/doc/1185326
Título: Predicting individual dry matter intake in Holstein × Gyr cows using behavior-monitoring sensor, phenotypic, and weather data with supervised machine learning.
Autoria: SILVA, C. S. D.
SILVA, T. E. da
SGUIZATTO, A. L. L.
MACHADO, A. F.
SILVA, A. S.
COSTA, J. H. C.
CAMPOS, M. M.
PACIULLO, D. S. C.
GOMIDE, C. A. de M.
MORENZ, M. J. F.
Afiliação: CAMILA SOUSA DA SILVA, CPAMN; TADEU E. DA SILVA, UNIVERSITY OF VERMONT; ANNA L. L. SGUIZATTO, UNIVERSIDADE FEDERAL DE VIÇOSA.; ANDREIA FERREIRA MACHADO, CNPGL; ABIAS SANTOS SILVA, CPAA; JOÃO H. C. COSTA, UNIVERSITY OF VERMONT; MARIANA MAGALHAES CAMPOS, CNPGL; DOMINGOS SAVIO CAMPOS PACIULLO, CNPGL; CARLOS AUGUSTO DE MIRANDA GOMIDE, CNPGL; MIRTON JOSE FROTA MORENZ, CNPGL.
Ano de publicação: 2026
Referência: JDS Communications, v. 7, n. 2, p. 179-184, Mar. 2026.
Conteúdo: Accurate estimation of DMI is essential for optimizing nutrition, efficiency, and economic performance in modern dairy herds. However, most existing equations to estimate DMI are designed for herd-level predictions in purebred Holstein cows. This study evaluated the accuracy and precision of machine learning (ML) algorithms to predict daily individual DMI in Holstein × Gyr crossbred lactating cows using a supervised and integrative approach that combined behavior monitoring data, cow phenotypes, and weather features. Data from 31 cows were individually and consecutively collected over 18 d. Twenty-two cows (71% of the dataset) were used to train 4 linear regression models (multiple linear, ridge, lasso, and elastic net) and 3 ensemble algorithms (random forest, gradient boosting, and extreme gradient boosting) through leave-one-group-out cross-validation, with the number of folds equal to the number of cows (k = 22). The remaining 9 cows were used as an external test set. Among all algorithms, Gradient boosting achieved the best overall performance, yielding moderate precision (R2 = 0.68) and accuracy (root mean squared error = 1.60 kg/d) metrics on test data. Our results indicate that gradient boosting is more suitable for capturing complex nonlinear relationships underlying daily DMI compared with the other models evaluated. Further advancements in ML-based DMI prediction should consider integrating intra- and interindividual variability in feeding behavior and accounting for animal-specific effects.
Thesagro: Bovino
Gado Leiteiro
Matéria Seca
Ingestão
Nutrição Animal
Gado Mestiço
Vaca Leiteira
Gado Holandês
Gado Gir
NAL Thesaurus: Dairy cattle
Animal nutrition
Crossbreds
Dairy cows
Dry matter intake
Digital Object Identifier: https://doi.org/10.3168/jdsc.2025-0850
Notas: Short communication.
Tipo do material: Artigo de periódico
Acesso: openAccess
Aparece nas coleções:Nota Técnica/Nota científica (CPAMN)

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