Litcius/Paper detail

Using machine learning improves predictions of herd-level bovine tuberculosis breakdowns in Great Britain

K Stański, Samantha Lycett, Thibaud Porphyre, Mark Bronsvoort

2021Scientific Reports21 citationsDOIOpen Access PDF

Abstract

In the United Kingdom, despite decades of control efforts, bovine tuberculosis (bTB) has not been controlled and currently costs ~ £100 m annually. Critical in the failure of control efforts has been the lack of a sufficiently sensitive diagnostic test. Here we use machine learning (ML) to predict herd-level bTB breakdowns in Great Britain (GB) with the aim of improving herd-level diagnostic sensitivity. The results of routinely-collected herd-level tests were correlated with risk factor data. Four ML methods were independently trained with data from 2012-2014 including ~ 4700 positive herd-level test results annually. The best model's performance was compared to the observed sensitivity and specificity of the herd-level test calculated on the 2015 data resulting in an increased herd-level sensitivity from 61.3 to 67.6% (95% confidence interval (CI): 66.4-68.8%) and herd-level specificity from 90.5 to 92.3% (95% CI: 91.6-93.1%). This approach can improve predictive capability for herd-level bTB and support disease control.

Topics & Concepts

HerdBovine tuberculosisConfidence intervalDisease controlStatisticsTuberculosisMachine learningMedicineVeterinary medicineComputer scienceMathematicsEnvironmental healthMycobacterium bovisPathologyMycobacterium tuberculosisTuberculosis Research and EpidemiologyMicrobial infections and disease researchAnimal Disease Management and Epidemiology