Comparison of Machine Learning Tree-Based Algorithms to Predict Future Paratuberculosis ELISA Results Using Repeat Milk Tests

Author:

Imada Jamie1ORCID,Arango-Sabogal Juan Carlos2ORCID,Bauman Cathy1,Roche Steven13ORCID,Kelton David1ORCID

Affiliation:

1. Department of Population Medicine, University of Guelph, Guelph, ON N1G 2W1, Canada

2. Département de Pathologie et Microbiologie, Faculté de Médecine Vétérinaire, Université de Montréal, Saint-Hyacinthe, QC J2S 2M2, Canada

3. ACER Consulting, 100 Stone Rd West #101, Guelph, ON N1G 5L3, Canada

Abstract

Machine learning algorithms have been applied to various animal husbandry and veterinary-related problems; however, its use in Johne’s disease diagnosis and control is still in its infancy. The following proof-of-concept study explores the application of tree-based (decision trees and random forest) algorithms to analyze repeat milk testing data from 1197 Canadian dairy cows and the algorithms’ ability to predict future Johne’s test results. The random forest models using milk component testing results alongside past Johne’s results demonstrated a good predictive performance for a future Johne’s ELISA result with a dichotomous outcome (positive vs. negative). The final random forest model yielded a kappa of 0.626, a roc AUC of 0.915, a sensitivity of 72%, and a specificity of 98%. The positive predictive and negative predictive values were 0.81 and 0.97, respectively. The decision tree models provided an interpretable alternative to the random forest algorithms with a slight decrease in model sensitivity. The results of this research suggest a promising avenue for future targeted Johne’s testing schemes. Further research is needed to validate these techniques in real-world settings and explore their incorporation in prevention and control programs.

Funder

Ontario Agri-Food Alliance

Dairy Farmers of Canada, Novalait, and the Agri-Food Innovation Partnership

Publisher

MDPI AG

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