Combining OpenStreetMap mapping and route optimization algorithms to inform the delivery of community health interventions at the last mile.

PLOS digital health Pub Date : 2024-11-07 eCollection Date: 2024-11-01 DOI:10.1371/journal.pdig.0000621
Mauricianot Randriamihaja, Felana Angella Ihantamalala, Feno H Rafenoarimalala, Karen E Finnegan, Luc Rakotonirina, Benedicte Razafinjato, Matthew H Bonds, Michelle V Evans, Andres Garchitorena
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Abstract

Community health programs are gaining relevance within national health systems and becoming inherently more complex. To ensure that community health programs lead to equitable geographic access to care, the WHO recommends adapting the target population and workload of community health workers (CHWs) according to the local geographic context and population size of the communities they serve. Geographic optimization could be particularly beneficial for those activities that require CHWs to visit households door-to-door for last mile delivery of care. The goal of this study was to demonstrate how geographic optimization can be applied to inform community health programs in rural areas of the developing world. We developed a decision-making tool based on OpenStreetMap mapping and route optimization algorithms in order to inform the micro-planning and implementation of two kinds of community health interventions requiring door-to-door delivery: mass distribution campaigns and proactive community case management (proCCM) programs. We applied the Vehicle Routing Problem with Time Windows (VRPTW) algorithm to optimize the on-foot routes that CHWs take to visit households in their catchment, using a geographic dataset obtained from mapping on OpenStreetMap comprising over 100,000 buildings and 20,000 km of footpaths in the rural district of Ifanadiana, Madagascar. We found that personnel-day requirements ranged from less than 15 to over 60 per CHW catchment for mass distribution campaigns, and from less than 5 to over 20 for proCCM programs, assuming 1 visit per month. To illustrate how these VRPTW algorithms can be used by operational teams, we developed an "e-health" platform to visualize resource requirements, CHW optimal schedules and itineraries according to customizable intervention designs and hypotheses. Further development and scale-up of these tools could help optimize community health programs and other last mile delivery activities, in line with WHO recommendations, linking a new era of big data analytics with the most basic forms of frontline care in resource poor areas.

结合 OpenStreetMap 地图绘制和路线优化算法,为最后一英里的社区卫生干预提供信息。
社区卫生计划在国家卫生系统中的相关性越来越大,其本身也变得越来越复杂。为确保社区卫生计划能在公平的地域范围内提供医疗服务,世卫组织建议根据当地的地理环境和所服务社区的人口规模,调整社区卫生工作人员(CHWs)的目标人群和工作量。对于那些需要社区保健员挨家挨户提供最后一英里医疗服务的活动来说,地理优化尤其有益。本研究的目标是展示如何将地理优化应用于发展中国家农村地区的社区卫生计划。我们开发了一种基于 OpenStreetMap 地图和路线优化算法的决策工具,以便为两种需要上门服务的社区卫生干预项目的微观规划和实施提供信息:大规模分发活动和主动社区病例管理(proCCM)项目。我们利用从 OpenStreetMap 地图中获取的地理数据集,包括马达加斯加 Ifanadiana 农村地区的 10 万多栋建筑和 2 万公里人行道,采用带时间窗口的车辆路由问题 (VRPTW) 算法来优化社区保健工作者走访其集水区住户的步行路线。我们发现,在大规模分发活动中,每个社区保健工作者集聚区所需的人日从不到 15 天到超过 60 天不等;而在促进儿童疾病防治计划中,假设每月访问一次,所需的人日从不到 5 天到超过 20 天不等。为了说明操作团队如何使用这些 VRPTW 算法,我们开发了一个 "电子健康 "平台,以便根据可定制的干预设计和假设,直观显示资源需求、卫生保健工作者的最佳时间表和行程。根据世界卫生组织的建议,进一步开发和推广这些工具有助于优化社区卫生计划和其他最后一英里交付活动,将新时代的大数据分析与资源贫乏地区最基本的一线护理联系起来。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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