Romero M Pilar, Chang Yu-Mei, Brunton Lucy A, Parry Jessica, Prosser Alison, Upton Paul, Drewe Julian A
Animal and Plant Health Agency, Woodham Lane, Addlestone, Surrey KT15 3NB, United Kingdom; Royal Veterinary College, Hawkshead Lane, North Mymms, Hatfield, Hertfordshire AL9 7TA, United Kingdom.
Royal Veterinary College, Hawkshead Lane, North Mymms, Hatfield, Hertfordshire AL9 7TA, United Kingdom.
Prev Vet Med. 2023 Oct;219:106004. doi: 10.1016/j.prevetmed.2023.106004. Epub 2023 Aug 19.
Bovine tuberculosis (bTB) continues to be the costliest, most complex animal health problem in England. The effectiveness of the test-and-slaughter policy is hampered by the imperfect sensitivity of the surveillance tests. Up to half of recurrent incidents within 24 months of a previous one could have been due to undetected infected cattle not being removed. Improving diagnostic testing with more sensitive tests, like the interferon (IFN)-gamma test, is one of the government's top priorities. However, blanket deployment of such tests could result in more false positive results (due to imperfect specificity), together with logistical and cost-efficiency challenges. A targeted application of such tests in higher prevalence scenarios, such as a subpopulation of high-risk herds, could mitigate against these challenges. We developed classification machine learning algorithms (using 80% of 2012-2019 bTB surveillance data as the training set) to evaluate the deployment of IFN-gamma testing in high-risk herds (i.e. those at risk of an incident in England) in two testing data sets: i) the remaining 20% of 2012-19 data, and ii) 2020 bTB surveillance data. The resulting model, classification tree analysis, with an area under a receiver operating characteristic (ROC) curve (AUC) > 95, showed a 73% sensitivity and a 97% specificity in the 2012-2019 test dataset. Used on 2020 data, it predicted eight percent (3 510 of 41 493) of eligible active herds as at-risk of a bTB incident, the majority of them (66% or 2 328 herds) experiencing at least one. Whilst all predicted at-risk herds could have preventive measures applied, the additional application of IFN-gamma test in parallel interpretation to the statutory skin test, if the risk materialises, would have resulted in 8 585 additional IFN-gamma reactors detected (a 217% increase over the 2 710 IFN-gamma reactors already detected by tests carried out). Only 18% (330 of 1 819) of incidents in predicted high-risk herds had the IFN-gamma test applied in 2020. We therefore conclude that this methodology provides a better way of directing the application of the IFN-gamma test towards the high-risk subgroup of herds. Classification tree analysis ensured the systematic identification of high-risk herds to consistently apply additional measures in a targeted way. This could increase the detection of infected cattle more efficiently, preventing recurrence and accelerating efforts to achieve eradication by 2038. This methodology has wider application, like targeting improved biosecurity measures in avian influenza at-risk farms to limit damage to the industry in future outbreaks.
牛结核病(bTB)仍是英格兰代价最高昂、最复杂的动物健康问题。监测检测的敏感性欠佳,阻碍了扑杀政策的有效性。在前一次事件发生后的24个月内,多达一半的复发事件可能是由于未检测出的感染牛未被移除。使用更灵敏的检测方法(如干扰素(IFN)-γ检测)改进诊断检测,是政府的首要任务之一。然而,全面部署此类检测可能会导致更多假阳性结果(由于特异性欠佳),同时带来后勤和成本效益方面的挑战。在高流行率情况下(如高危牛群亚群)有针对性地应用此类检测,可以缓解这些挑战。我们开发了分类机器学习算法(使用2012 - 2019年bTB监测数据的80%作为训练集),以评估IFN -γ检测在两个检测数据集中高危牛群(即英格兰有发病风险的牛群)中的应用情况:i)2012 - 19年数据中剩余的20%,以及ii)2020年bTB监测数据。所得模型——分类树分析,其受试者操作特征(ROC)曲线下面积(AUC)> 95,在2012 - 2019年检测数据集中显示出73%的敏感性和97%的特异性。应用于2020年数据时,它预测41493头符合条件的活跃牛群中有8%(3510头)有bTB发病风险,其中大多数(66%或2328头牛群)至少经历过一次发病。虽然所有预测有风险的牛群都可以采取预防措施,但如果风险成为现实,在对法定皮试进行平行解读时额外应用IFN -γ检测,将会多检测出8585头IFN -γ反应动物(比已通过检测检测出的2710头IFN -γ反应动物增加了217%)。在2020年,预测的高危牛群中只有18%(1819起事件中的330起)应用了IFN -γ检测。因此,我们得出结论,这种方法为将IFN -γ检测应用于高危牛群亚群提供了一种更好的方式。分类树分析确保了系统识别高危牛群,以便有针对性地持续采取额外措施。这可以更有效地增加感染牛的检测数量,防止疾病复发,并加快到2038年实现根除的努力。这种方法有更广泛的应用,比如针对禽流感高危农场改进生物安全措施,以在未来疫情爆发时限制对该行业的损害。