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Machine Learning to Predict Pregnancy in Dairy Cows: An Approach Integrating Automated Activity Monitoring and On-Farm Data.
Marques, Thaisa Campos; Marques, Letícia Ribeiro; Fernandes, Patrick Bezerra; de Lima, Fabio Soares; do Prado Paim, Tiago; Leão, Karen Martins.
Affiliation
  • Marques TC; Departamento de Zootecnia, Instituto Federal Goiano, Rio Verde 75901-970, Brazil.
  • Marques LR; Department of Population Health and Reproduction, University of California, Davis, CA 95616, USA.
  • Fernandes PB; Departamento de Zootecnia, Instituto Federal Goiano, Rio Verde 75901-970, Brazil.
  • de Lima FS; Departamento de Zootecnia, Instituto Federal Goiano, Rio Verde 75901-970, Brazil.
  • do Prado Paim T; Department of Population Health and Reproduction, University of California, Davis, CA 95616, USA.
  • Leão KM; Departamento de Zootecnia, Instituto Federal Goiano, Rio Verde 75901-970, Brazil.
Animals (Basel) ; 14(11)2024 May 25.
Article de En | MEDLINE | ID: mdl-38891614
ABSTRACT
Automated activity monitoring (AAM) systems are critical in the dairy industry for detecting estrus and optimizing the timing of artificial insemination (AI), thus enhancing pregnancy success rates in cows. This study developed a predictive model to improve pregnancy success by integrating AAM data with cow-specific and environmental factors. Utilizing data from 1,054 cows, this study compared the pregnancy outcomes between two AI timings-8 or 10 h post-AAM alarm. Variables such as age, parity, body condition, locomotion, and vaginal discharge scores, peripartum diseases, the breeding program, the bull used for AI, milk production at the time of AI, and environmental conditions (season, relative humidity, and temperature-humidity index) were considered alongside the AAM data on rumination, activity, and estrus intensity. Six predictive models were assessed to determine their efficacy in predicting pregnancy success logistic regression, Bagged AdaBoost algorithm, linear discriminant, random forest, support vector machine, and Bagged Classification Tree. Integrating the on-farm data with AAM significantly enhanced the pregnancy prediction accuracy at AI compared to using AAM data alone. The random forest models showed a superior performance, with the highest Kappa statistic and lowest false positive rates. The linear discriminant and logistic regression models demonstrated the best accuracy, minimal false negatives, and the highest area under the curve. These findings suggest that combining on-farm and AAM data can significantly improve reproductive management in the dairy industry.
Mots clés

Texte intégral: 1 Collection: 01-internacional Base de données: MEDLINE Langue: En Journal: Animals (Basel) Année: 2024 Type de document: Article Pays d'affiliation: Brésil Pays de publication: Suisse

Texte intégral: 1 Collection: 01-internacional Base de données: MEDLINE Langue: En Journal: Animals (Basel) Année: 2024 Type de document: Article Pays d'affiliation: Brésil Pays de publication: Suisse