Department of Disease Control, London School of Hygiene & Tropical Medicine, London WC1E 7HT, UK.
Centre on Climate Change and Planetary Health, London School of Hygiene & Tropical Medicine, London WC1E 7HT, UK.
J Environ Public Health. 2021 Nov 1;2021:3220244. doi: 10.1155/2021/3220244. eCollection 2021.
Land-use practices such as agriculture can impact mosquito vector breeding ecology, resulting in changes in disease transmission. The typical breeding habitats of Africa's second most important malaria vector are large, semipermanent water bodies, which make them potential candidates for targeted larval source management. This is a technical workflow for the integration of drone surveys and mosquito larval sampling, designed for a case study aiming to characterise breeding sites near two villages in an agricultural setting in Côte d'Ivoire. Using satellite remote sensing data, we developed an environmentally and spatially representative sampling frame and conducted paired mosquito larvae and drone mapping surveys from June to August 2021. To categorise the drone imagery, we also developed a land cover classification scheme with classes relative to breeding ecology. We sampled 189 potential breeding habitats, of which 119 (63%) were positive for the genus and nine (4.8%) were positive for . We mapped 30.42 km of the region of interest including all water bodies which were sampled for larvae. These data can be used to inform targeted vector control efforts, although its generalisability over a large region is limited by the fine-scale nature of this study area. This paper develops protocols for integrating drone surveys and statistically rigorous entomological sampling, which can be adjusted to collect data on vector breeding habitats in other ecological contexts. Further research using data collected in this study can enable the development of deep-learning algorithms for identifying breeding habitats across rural agricultural landscapes in Côte d'Ivoire and the analysis of risk factors for these sites.
土地利用方式如农业会影响蚊虫媒介的滋生地生态,从而改变疾病传播情况。非洲第二大重要疟疾媒介的典型滋生地是大型半永久性水体,这使得它们成为有针对性的幼虫源管理的潜在候选者。这是一个将无人机调查和蚊虫幼虫采样相结合的技术工作流程,旨在对科特迪瓦两个村庄附近的滋生地进行案例研究。我们使用卫星遥感数据制定了一个具有环境和空间代表性的抽样框架,并于 2021 年 6 月至 8 月进行了配对的蚊虫幼虫和无人机测绘调查。为了对无人机图像进行分类,我们还开发了一个土地覆盖分类方案,其中包含与滋生生态相关的类别。我们共抽样了 189 个可能的滋生地,其中 119 个(63%)对属呈阳性,9 个(4.8%)对呈阳性。我们绘制了包括所有幼虫采样水体在内的 30.42 公里感兴趣区域的地图。这些数据可用于为有针对性的病媒控制工作提供信息,但由于该研究区域的精细尺度性质,其在较大区域的通用性受到限制。本文制定了整合无人机调查和统计学上严格的昆虫学抽样的方案,可对其他生态背景下的病媒滋生地进行数据收集进行调整。进一步使用本研究中收集的数据进行研究,可以开发出用于在科特迪瓦农村农业景观中识别滋生地的深度学习算法,并分析这些地点的风险因素。