Monitoring individual rice field flooding dynamics over a large scale to improve mosquito surveillance and control.

IF 2.4 3区 医学 Q3 INFECTIOUS DISEASES
Mauricianot Randriamihaja, Tokiniaina M Randrianjatovo, Michelle V Evans, Felana A Ihantamalala, Vincent Herbreteau, Christophe Révillion, Eric Delaitre, Thibault Catry, Andres Garchitorena
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Abstract

Background: Progress in malaria elimination has been hindered by recent changes in mosquito behaviour and increased insecticide resistance in response to traditional vector control measures, such as indoor residual spraying and long-lasting insecticidal nets. There is, therefore, increasing interest in the use of larval source management (LSM) to supplement current insecticide-based interventions. However, LSM implementation requires the characterization of larval habitats at fine spatial and temporal scales to ensure interventions are well-placed and well-timed. Remotely sensed optical imagery captured via drones or satellites offers one way to monitor larval habitats remotely, but its use at large spatio-temporal scales has important limitations.

Methods: A method using radar imagery is proposed to monitor flooding dynamics in individual rice fields, a primary larval habitat, over very large geographic areas relevant to national malaria control programmes aiming to implement LSM at scale. This is demonstrated for a 3971 km2 malaria-endemic district in Madagascar with over 17,000 rice fields. Rice field mapping on OpenStreetMap was combined with Sentinel-1 satellite imagery (radar, 10 m) from 2016 to 2022 to train a classification model of radar backscatter to identify rice fields with vegetated and open water, resulting in a time-series of weekly flooding dynamics for thousands of rice fields.

Results: From these time-series, over a dozen indicators useful for LSM implementation, such as the timing and frequency of flooding seasons, were obtained for each rice field. These monitoring tools were integrated into an interactive GIS dashboard for operational use by vector control programmes, with results available at multiple scales (district, sub-district, rice field) relevant for different phases of LSM intervention (e.g. prioritization of sites, implementation, follow-up).

Conclusions: Scale-up of these methods could enable wider implementation of evidence-based LSM interventions and reduce malaria burdens in contexts where irrigated agriculture is a major transmission driver.

大规模监测个别稻田水患动态,以改善蚊虫监测和控制。
背景:最近蚊子行为发生变化,针对传统的病媒控制措施,如室内滞留喷洒和长效驱虫蚊帐,杀虫剂耐药性增强,阻碍了消除疟疾工作的进展。因此,人们对使用幼虫源管理(LSM)来补充目前基于杀虫剂的干预措施越来越感兴趣。然而,LSM的实施需要在精细的空间和时间尺度上对幼虫栖息地进行表征,以确保干预措施的位置和时机。通过无人机或卫星捕获的遥感光学图像提供了一种远程监测幼虫栖息地的方法,但其在大时空尺度上的使用具有重要的局限性。方法:提出了一种利用雷达图像监测单个稻田(主要幼虫栖息地)洪水动态的方法,该方法覆盖了与旨在大规模实施LSM的国家疟疾控制规划相关的非常大的地理区域。这在马达加斯加一个3971平方公里的疟疾流行区得到了证明,该区有超过17,000块稻田。OpenStreetMap上的稻田地图与2016年至2022年的Sentinel-1卫星图像(雷达,10米)相结合,训练雷达后向散射分类模型,以识别植被和开放水域的稻田,从而获得数千块稻田每周洪水动态的时间序列。结果:从这些时间序列中,获得了十几个对LSM实施有用的指标,例如每个稻田的洪水季节的时间和频率。这些监测工具被整合到一个交互式地理信息系统仪表板中,供病媒介控制规划实际使用,并可在多个尺度(区、街道、稻田)获得与LSM干预的不同阶段相关的结果(例如,确定地点的优先顺序、实施、后续行动)。结论:在灌溉农业是主要传播驱动因素的地区,推广这些方法可以促进更广泛地实施循证LSM干预措施,并减少疟疾负担。
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来源期刊
Malaria Journal
Malaria Journal 医学-寄生虫学
CiteScore
5.10
自引率
23.30%
发文量
334
审稿时长
2-4 weeks
期刊介绍: Malaria Journal is aimed at the scientific community interested in malaria in its broadest sense. It is the only journal that publishes exclusively articles on malaria and, as such, it aims to bring together knowledge from the different specialities involved in this very broad discipline, from the bench to the bedside and to the field.
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