Prediction of health disorders in dairy cows monitored with collar based on Binary logistic analysis

ABSTRACT The objective of this study was to analyze data on physical activity and rumination time monitored via collars at the farm coupled with milk yield recorded by the rotary milking system to predict cows based on several disorders using the binary Logistic regression conducted with R software....

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Bibliographic Details
Main Authors: Xiaojing Zhou, Chuang Xu, Zixuan Zhao, Hao Wang, Mengxing Chen, Bin Jia
Format: Article
Language:English
Published: Universidade Federal de Minas Gerais 2023-06-01
Series:Arquivo Brasileiro de Medicina Veterinária e Zootecnia
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Online Access:http://www.scielo.br/scielo.php?script=sci_arttext&pid=S0102-09352023000300467&tlng=en
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Summary:ABSTRACT The objective of this study was to analyze data on physical activity and rumination time monitored via collars at the farm coupled with milk yield recorded by the rotary milking system to predict cows based on several disorders using the binary Logistic regression conducted with R software. Data for metritis (n=60), mastitis (n=98), lameness (n=35), and digestive disorders (n=52) were collected from 1,618 healthy cows used to construct the prediction model. To verify the feasibility and adaptability of the proposed method, we analyzed data of cows in the same herd (herd 1) not used to construct the model, and cows in another herd (herd 2) with data recorded by the same type of automated system, and led to detection of 75.0%, 64.2%, 74.2%, and 76.9% animals in herd 1 correctly predicted to suffer from metritis, mastitis, lameness, and digestive disorders, respectively. For cows in herd 2, 66.6%, 58.8%, 80.7%, and 71.4% were correctly predicted for metritis, mastitis, lameness, and digestive disorders, respectively. Compared with traditional clinical diagnoses by farm personnel, the algorithm developed allowed for earlier prediction of cows with a disorder.
ISSN:1678-4162