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Spatial seasonal and climatic predictive models of Rift Valley fever disease across Africa

机译:非洲裂谷热疾病的空间季节和气候预测模型

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摘要

Understanding the emergence and subsequent spread of human infectious diseases is a critical global challenge, especially for high-impact zoonotic and vector-borne diseases. Global climate and land-use change are likely to alter host and vector distributions, but understanding the impact of these changes on the burden of infectious diseases is difficult. Here, we use a Bayesian spatial model to investigate environmental drivers of one of the most important diseases in Africa, Rift Valley fever (RVF). The model uses a hierarchical approach to determine how environmental drivers vary both spatially and seasonally, and incorporates the effects of key climatic oscillations, to produce a continental risk map of RVF in livestock (as a proxy for human RVF risk). We find RVF risk has a distinct seasonal spatial pattern influenced by climatic variation, with the majority of cases occurring in South Africa and Kenya in the first half of an El Niño year. Irrigation, rainfall and human population density were the main drivers of RVF cases, independent of seasonal, climatic or spatial variation. By accounting more subtly for the patterns in RVF data, we better determine the importance of underlying environmental drivers, and also make space- and time-sensitive predictions to better direct future surveillance resources.This article is part of the themed issue ‘One Health for a changing world: zoonoses, ecosystems and human well-being’.
机译:了解人类传染病的发生和随后的传播是一项至关重要的全球性挑战,尤其是对于具有高影响力的人畜共患病和媒介传播的疾病。全球气候和土地利用的变化可能会改变宿主和媒介的分布,但要了解这些变化对传染病负担的影响却很困难。在这里,我们使用贝叶斯空间模型来调查非洲最重要疾病之一的裂谷热(RVF)的环境驱动因素。该模型使用分层方法来确定环境驱动因素在空间和季节上如何变化,并结合关键气候波动的影响,以绘制出家畜中RVF的大陆性风险图(作为人类RVF风险的代表)。我们发现RVF风险具有受气候变化影响的明显的季节性空间格局,其中大多数病例发生在厄尔尼诺年份的上半年。灌溉,降雨和人口密度是RVF病例的主要驱动因素,与季节,气候或空间变化无关​​。通过更精细地说明RVF数据中的模式,我们可以更好地确定潜在环境驱动因素的重要性,并做出时空敏感的预测,以更好地指导未来的监视资源。变化的世界:人畜共患病,生态系统和人类福祉”。

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