IF 2.4 3区 医学 Q3 INFECTIOUS DISEASES Malaria Journal Pub Date : 2025-01-30 DOI:10.1186/s12936-025-05266-0
Michelle V Evans, Felana A Ihantamalala, Mauricianot Randriamihaja, Vincent Herbreteau, Christophe Révillion, Thibault Catry, Eric Delaitre, Matthew H Bonds, Benjamin Roche, Ezra Mitsinjoniala, Fiainamirindra A Ralaivavikoa, Bénédicte Razafinjato, Oméga Raobela, Andres Garchitorena
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引用次数: 0

摘要

背景:随着电子卫生系统数据和遥感环境变量的日益普及,出现了能够进行疟疾预测的统计模型。其中许多模型已投入使用,成为疟疾预警系统(MEWS),可提前数月预测国家和地区层面的疟疾动态。然而,疟疾预警系统很少能在村一级做出预测,而村一级是社区卫生系统的运作范围,也是疟疾流行国家大多数农村人口的第一接触点:本研究开发了一种超本地 MEWS,用于马达加斯加农村地区的卫生系统强化干预。它将经过偏差校正的村级病例通知数据与遥感环境变量相结合,空间尺度最小分辨率为 10 米。对来自 195 个社区的 2017 年至 2020 年每月疟疾病例数据训练了一个时空分层广义线性回归模型,并通过交叉验证进行了评估。然后,将该模型与每月更新的环境数据整合到一个自动化工作流程中,创建了一个持续更新的 MEWS,能够提前三个月预测村级疟疾病例。通过估算每个医疗诊所所需的医疗用品数量和社区一级仍未得到治疗的病例数量,将预测结果转化为与医疗系统参与者相关的指标:统计模型能够准确地再现村级病例数据,在交叉验证过程中,其表现几乎是空模型的五倍。动态环境变量,尤其是与积水和稻田动态相关的变量,与疟疾发病率密切相关,使模型能够准确预测未来的发病率。与现有的存量订单量化方法相比,MEWS 在回顾性应用方面的改进幅度超过 50%:这项研究证明了利用遥感环境数据在精细空间尺度上开发自动超本地 MEWS 的可行性。随着卫生系统数据的数字化程度越来越高,这种方法可以很容易地应用到其他地区,并通过近实时卫生数据的更新来进一步提高性能。
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 Increasing the resolution of malaria early warning systems for use by local health actors.

Background: The increasing availability of electronic health system data and remotely-sensed environmental variables has led to the emergence of statistical models capable of producing malaria forecasts. Many of these models have been operationalized into malaria early warning systems (MEWSs), which provide predictions of malaria dynamics several months in advance at national and regional levels. However, MEWSs rarely produce predictions at the village-level, the operational scale of community health systems and the first point of contact for the majority of rural populations in malaria-endemic countries.

Methods: This study developed a hyper-local MEWS for use within a health-system strengthening intervention in rural Madagascar. It combined bias-corrected, village-level case notification data with remotely sensed environmental variables at spatial scales as fine as a 10 m resolution. A spatio-temporal hierarchical generalized linear regression model was trained on monthly malaria case data from 195 communities from 2017 to 2020 and evaluated via cross-validation. The model was then integrated into an automated workflow with environmental data updated monthly to create a continuously updating MEWS capable of predicting malaria cases up to three months in advance at the village-level. Predictions were transformed into indicators relevant to health system actors by estimating the quantities of medical supplies required at each health clinic and the number of cases remaining untreated at the community level.

Results: The statistical model was able to accurately reproduce village-level case data, performing nearly five times as well as a null model during cross-validation. The dynamic environmental variables, particularly those associated with standing water and rice field dynamics, were strongly associated with malaria incidence, allowing the model to accurately predict future incidence rates. The MEWS represented an improvement of over 50% compared to existing stock order quantification methods when applied retrospectively.

Conclusion: This study demonstrates the feasibility of developing an automatic, hyper-local MEWS leveraging remotely-sensed environmental data at fine spatial scales. As health system data become increasingly digitized, this method can be easily applied to other regions and be updated with near real-time health data to further increase performance.

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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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