作者
M Pilar Romero, Yu-Mei Chang, Lucy A Brunton, Alison Prosser, Paul Upton, Eleanor Rees, Oliver Tearne, Mark Arnold, Kim Stevens, Julian A Drewe
发表日期
2021
期刊
Preventive Veterinary Medicine
页码范围
105264
出版商
Elsevier
简介
Nearly a decade into Defra’s current eradication strategy, bovine tuberculosis (bTB) remains a serious animal health problem in England, with c.30,000 cattle slaughtered annually in the fight against this insidious disease. There is an urgent need to improve our understanding of bTB risk in order to enhance the current disease control policy. Machine learning approaches applied to big datasets offer a potential way to do this. Regularized regression and random forest machine learning methodologies were implemented using 2016 herd-level data to generate the best possible predictive models for a bTB incident in England and its three surveillance risk areas (High-risk area [HRA], Edge area [EA] and Low-risk area [LRA]). Their predictive performance was compared and the best models in each area were used to characterize herds according to risk.
While all models provided excellent discrimination, random forest …
引用总数
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