A novel machine learning-based web application for field identification of infectious and inflammatory disorders of the central nervous system in cattle

J Vet Intern Med. 2023 Mar;37(2):766-773. doi: 10.1111/jvim.16664. Epub 2023 Mar 10.

Abstract

Background: Central nervous system (CNS) infections in cattle are a major cause of economic loss and mortality. Machine learning (ML) techniques are gaining widespread application in solving predictive tasks in both human and veterinary medicine.

Objectives: Our primary aim was to develop and compare ML models that could predict the likelihood of a CNS disorder of infectious or inflammatory origin in neurologically-impaired cattle. Our secondary aim was to create a user-friendly web application based on the ML model for the diagnosis of infection and inflammation of the CNS.

Animals: Ninety-eight cattle with CNS infection and 86 with CNS disorders of other origin.

Methods: Retrospective observational study. Six different ML methods (logistic regression [LR]; support vector machine [SVM]; random forest [RF]; multilayer perceptron [MLP]; K-nearest neighbors [KNN]; gradient boosting [GB]) were compared for their ability to predict whether an infectious or inflammatory disease was present based on demographics, neurological examination findings, and cerebrospinal fluid (CSF) analysis.

Results: All 6 methods had high prediction accuracy (≥80%). The accuracy of the LR model was significantly higher (0.843 ± 0.005; receiver operating characteristic [ROC] curve 0.907 ± 0.005 ) than the other models and was selected for implementation in a web application.

Conclusion and clinical importance: Our findings support the use of ML algorithms as promising tools for veterinarians to improve diagnosis. The open-access web application may aid clinicians in achieving correct diagnosis of infectious and inflammatory neurological disorders in livestock, with the added benefit of promoting appropriate use of antimicrobials.

Keywords: bovine neurology; central nervous system infections; clinical decision-making process; machine learning.

Publication types

  • Observational Study, Veterinary

MeSH terms

  • Algorithms
  • Animals
  • Cattle
  • Cattle Diseases* / diagnosis
  • Central Nervous System
  • Central Nervous System Diseases* / veterinary
  • Machine Learning
  • ROC Curve
  • Software