Disease Dynamics Unit, Department of Veterinary Medicine, University of Cambridge, Madingley Rd, Cambridge, Cambridgeshire, UK.
Department of Genetics, Evolution and Environment, Centre for Biodiversity and Environment Research, University College London, London, UK.
Sci Rep. 2022 Nov 22;12(1):20083. doi: 10.1038/s41598-022-24589-5.
Anthrax is caused by, Bacillus anthracis, a soil-borne bacterium that infects grazing animals. Kenya reported a sharp increase in livestock anthrax cases from 2005, with only 12% of the sub-counties (decentralised administrative units used by Kenyan county governments to facilitate service provision) accounting for almost a third of the livestock cases. Recent studies of the spatial extent of B. anthracis suitability across Kenya have used approaches that cannot capture the underlying spatial and temporal dependencies in the surveillance data. To address these limitations, we apply the first Bayesian approach using R-INLA to analyse a long-term dataset of livestock anthrax case data, collected from 2006 to 2020 in Kenya. We develop a spatial and a spatiotemporal model to investigate the distribution and socio-economic drivers of anthrax occurrence and incidence at the national and sub-county level. The spatial model was robust to geographically based cross validation and had a sensitivity of 75% (95% CI 65-75) against withheld data. Alarmingly, the spatial model predicted high intensity of anthrax across the Northern counties (Turkana, Samburu, and Marsabit) comprising pastoralists who are often economically and politically marginalized, and highly predisposed to a greater risk of anthrax. The spatiotemporal model showed a positive link between livestock anthrax risk and the total human population and the number of exotic dairy cattle, and a negative association with the human population density, livestock producing households, and agricultural land area. Public health programs aimed at reducing human-animal contact, improving access to healthcare, and increasing anthrax awareness, should prioritize these endemic regions.
炭疽是由土壤传播的细菌炭疽杆菌引起的,它会感染放牧动物。肯尼亚报告称,2005 年以来牲畜炭疽病例急剧增加,只有 12%的分区(肯尼亚县政府用于促进服务提供的分散行政单位)占牲畜病例的近三分之一。最近对肯尼亚境内炭疽杆菌适宜性的空间范围的研究使用了无法捕捉监测数据中潜在空间和时间依赖性的方法。为了解决这些限制,我们应用了第一个贝叶斯方法,使用 R-INLA 来分析肯尼亚从 2006 年到 2020 年收集的长期牲畜炭疽病例数据。我们开发了一个空间模型和一个时空模型,以调查国家和分区层面炭疽发生和发病率的分布和社会经济驱动因素。空间模型对基于地理的交叉验证具有稳健性,对保留数据的敏感性为 75%(95%置信区间为 65-75)。令人震惊的是,空间模型预测北方县(图尔卡纳、桑布鲁和马萨比特)炭疽强度很高,这些县的牧民经常在经济和政治上处于边缘地位,炭疽风险更高。时空模型显示,牲畜炭疽风险与总人口和外来奶牛数量呈正相关,与人口密度、牲畜生产家庭和农业用地面积呈负相关。旨在减少人与动物接触、改善获得医疗保健的机会和提高炭疽意识的公共卫生计划应优先考虑这些地方性地区。