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In-line near-infrared analysis of milk coupled with machine learning methods for the daily prediction of blood metabolic profile in dairy cattle

Authors :
Giannuzzi, Diana
Mota, Lucio Flavio Macedo
Pegolo, Sara
Gallo, Luigi
Schiavon, Stefano
Tagliapietra, Franco
Katz, Gil
Fainboym, David
Minuti, Andrea
Trevisi, Erminio
Cecchinato, Alessio
Minuti, Andrea (ORCID:0000-0002-0617-6571)
Trevisi, Erminio (ORCID:0000-0003-1644-1911)
Giannuzzi, Diana
Mota, Lucio Flavio Macedo
Pegolo, Sara
Gallo, Luigi
Schiavon, Stefano
Tagliapietra, Franco
Katz, Gil
Fainboym, David
Minuti, Andrea
Trevisi, Erminio
Cecchinato, Alessio
Minuti, Andrea (ORCID:0000-0002-0617-6571)
Trevisi, Erminio (ORCID:0000-0003-1644-1911)
Publication Year :
2022

Abstract

Precision livestock farming technologies are used to monitor animal health and welfare parameters continuously and in real time in order to optimize nutrition and productivity and to detect health issues at an early stage. The possibility of predicting blood metabolites from milk samples obtained during routine milking by means of infrared spectroscopy has become increasingly attractive. We developed, for the first time, prediction equations for a set of blood metabolites using diverse machine learning methods and milk near-infrared spectra collected by the AfiLab instrument. Our dataset was obtained from 385 Holstein Friesian dairy cows. Stacking ensemble and multi-layer feedforward artificial neural network outperformed the other machine learning methods tested, with a reduction in the root mean square error of between 3 and 6% in most blood parameters. We obtained moderate correlations (r) between the observed and predicted phenotypes for gamma-glutamyl transferase (r = 0.58), alkaline phosphatase (0.54), haptoglobin (0.66), globulins (0.61), total reactive oxygen metabolites (0.60) and thiol groups (0.57). The AfiLab instrument has strong potential but may not yet be ready to predict the metabolic stress of dairy cows in practice. Further research is needed to find out methods that allow an improvement in accuracy of prediction equations.

Details

Database :
OAIster
Notes :
English
Publication Type :
Electronic Resource
Accession number :
edsoai.on1355228972
Document Type :
Electronic Resource