Lancaster Ecology and Epidemiology Group, Lancaster Medical School, Lancaster University, United Kingdom.
Laboratory of Entomology, Wageningen University & Research, Wageningen, The Netherlands.
PLoS Pathog. 2022 Jul 6;18(7):e1010622. doi: 10.1371/journal.ppat.1010622. eCollection 2022 Jul.
Malaria hotspots have been the focus of public health managers for several years due to the potential elimination gains that can be obtained from targeting them. The identification of hotspots must be accompanied by the description of the overall network of stable and unstable hotspots of malaria, especially in medium and low transmission settings where malaria elimination is targeted. Targeting hotspots with malaria control interventions has, so far, not produced expected benefits. In this work we have employed a mechanistic-stochastic algorithm to identify clusters of super-spreader houses and their related stable hotspots by accounting for mosquito flight capabilities and the spatial configuration of malaria infections at the house level. Our results show that the number of super-spreading houses and hotspots is dependent on the spatial configuration of the villages. In addition, super-spreaders are also associated to house characteristics such as livestock and family composition. We found that most of the transmission is associated with winds between 6pm and 10pm although later hours are also important. Mixed mosquito flight (downwind and upwind both with random components) were the most likely movements causing the spread of malaria in two out of the three study areas. Finally, our algorithm (named MALSWOTS) provided an estimate of the speed of malaria infection progression from house to house which was around 200-400 meters per day, a figure coherent with mark-release-recapture studies of Anopheles dispersion. Cross validation using an out-of-sample procedure showed accurate identification of hotspots. Our findings provide a significant contribution towards the identification and development of optimal tools for efficient and effective spatio-temporal targeted malaria interventions over potential hotspot areas.
疟疾热点多年来一直是公共卫生管理者关注的焦点,因为从靶向治疗的角度来看,这些热点地区具有消除疟疾的潜在收益。识别热点地区必须伴随着对疟疾稳定和不稳定热点的整体网络的描述,特别是在中低传播地区,目标是消除疟疾。迄今为止,针对疟疾控制干预措施的热点地区并没有产生预期的效果。在这项工作中,我们采用了一种基于机制和随机的算法,通过考虑蚊子的飞行能力和房屋层面疟疾感染的空间配置,来识别超级传播者房屋及其相关稳定热点的集群。我们的研究结果表明,超级传播者房屋和热点的数量取决于村庄的空间配置。此外,超级传播者也与房屋特征有关,如牲畜和家庭构成。我们发现,虽然晚些时候也很重要,但大部分传播都与下午 6 点到 10 点之间的风向有关。混合蚊子飞行(顺风和逆风都有随机成分)是导致疟疾在三个研究区域中的两个区域传播的最可能的运动方式。最后,我们的算法(名为 MALSWOTS)提供了从一个房屋到另一个房屋的疟疾感染进展速度的估计,每天约为 200-400 米,这一数字与疟蚊扩散的标记释放捕获研究结果一致。使用样本外程序的交叉验证表明,热点的识别非常准确。我们的研究结果为识别和开发针对潜在热点地区的高效和有效的时空靶向疟疾干预措施的最佳工具提供了重要贡献。