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Título

Assessment of milk metabolites as biomarkers for predicting feed efficiency in dairy sheep

AutorMarina, Héctor; Arranz, Juan José; Suárez-Vega, Aroa; Pelayo, Rocío; Gutiérrez Gil, Beatriz; Toral, Pablo G. CSIC ORCID; Hervás, Gonzalo CSIC ORCID ; Frutos, Pilar CSIC ORCID ; Fonseca, Pablo A.S.
Palabras claveDairy Sheep
Milk metabolomics
Feed efficiency predictions
Machine learning
Fecha de publicación2024
EditorAmerican Dairy Science Association
Elsevier
CitaciónJournal of Dairy Science (in press)
ResumenEstimating feed efficiency (FE) in dairy sheep is challenging due to the high cost of systems that measure individual feed intake. Identifying proxies that can serve as effective predictors of FE could make it possible to introduce FE into breeding programs. Here, 39 Assaf ewes in first lactation were evaluated regarding their FE by two metrics, residual feed intake (RFI) and feed conversion ratio (FCR). The ewes were classified into high, medium and low groups for each metric. Milk samples of the 39 ewes were subjected to untargeted metabolomics analysis. The complete milk metabolomic signature was used to discriminate the FE groups using partial least squares discriminant analysis. A total of 41 and 26 features were selected as the most relevant features for the discrimination of RFI and FCR groups, respectively. The predictive ability when utilizing the complete milk metabolomic signature and the reduced datasets were investigated using four machine-learning algorithms and a multivariate regression method. The Orthogonal Partial Least Square algorithm outperformed other ML algorithms for the FCR prediction in the scenarios using the complete milk metabolite signature (r2=0.62±0.06) and the 26 selected features (0.62±0.15). Regarding RFI predictions, the scenarios using the 41 selected features outperformed the scenario with the complete milk metabolite signature, where the Multilayer feedforward artificial neural network (r2=0.18±0.14) and extreme gradient boosting (r2=0.17±0.15) outperformed other algorithms. The functionality of the selected metabolites implied that the metabolism of glucose, galactose, fructose, sphingolipids, amino acids, insulin, and thyroid hormones was at play. Compared to the use of traditional methods, practical applications of these biomarkers might simplify and reduce costs in selecting feed-efficient ewes.
URIhttp://hdl.handle.net/10261/342738
ISSN0022-0302
E-ISSN1525-3198
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