1Department of Tropical Hygiene, Faculty of Tropical Medicine, Mahidol University, Bangkok, Thailand.
2Yunnan Institute of Parasitic Diseases, Pu'er, P. R. China.
Am J Trop Med Hyg. 2020 Aug;103(2):793-809. doi: 10.4269/ajtmh.19-0854. Epub 2020 Jun 25.
In moving toward malaria elimination, finer scale malaria risk maps are required to identify hotspots for implementing surveillance-response activities, allocating resources, and preparing health facilities based on the needs and necessities at each specific area. This study aimed to demonstrate the use of multi-criteria decision analysis (MCDA) in conjunction with geographic information systems (GISs) to create a spatial model and risk maps by integrating satellite remote-sensing and malaria surveillance data from 18 counties of Yunnan Province along the China-Myanmar border. The MCDA composite and annual models and risk maps were created from the consensus among the experts who have been working and know situations in the study areas. The experts identified and provided relative factor weights for nine socioeconomic and disease ecology factors as a weighted linear combination model of the following: ([Forest coverage × 0.041] + [Cropland × 0.086] + [Water body × 0.175] + [Elevation × 0.297] + [Human population density × 0.043] + [Imported case × 0.258] + [Distance to road × 0.030] + [Distance to health facility × 0.033] + [Urbanization × 0.036]). The expert-based model had a good prediction capacity with a high area under curve. The study has demonstrated the novel integrated use of spatial MCDA which combines multiple environmental factors in estimating disease risk by using decision rules derived from existing knowledge or hypothesized understanding of the risk factors via diverse quantitative and qualitative criteria using both data-driven and qualitative indicators from the experts. The model and fine MCDA risk map developed in this study could assist in focusing the elimination efforts in the specifically identified locations with high risks.
在向消除疟疾迈进的过程中,需要更精细的疟疾风险地图来确定实施监测-响应活动的热点,根据每个特定地区的需求和必要性分配资源并准备卫生设施。本研究旨在展示如何结合使用多标准决策分析 (MCDA) 和地理信息系统 (GIS),通过整合来自中国云南省与缅甸边境的 18 个县的卫星遥感和疟疾监测数据,创建一个空间模型和风险图。MCDA 综合和年度模型和风险图是由在研究区域工作并了解情况的专家们的共识创建的。专家们确定并提供了九个社会经济和疾病生态学因素的相对因素权重,作为以下加权线性组合模型:([森林覆盖率×0.041]+[耕地×0.086]+[水体×0.175]+[海拔×0.297]+[人口密度×0.043]+[输入病例×0.258]+[距道路的距离×0.030]+[距卫生设施的距离×0.033]+[城市化×0.036])。基于专家的模型具有良好的预测能力,曲线下面积较高。该研究展示了一种新颖的综合使用空间 MCDA 的方法,该方法通过使用决策规则来估计疾病风险,这些决策规则是通过对风险因素的现有知识或假设理解,从数据驱动和专家提供的定性指标中结合多种环境因素得出的。本研究中开发的模型和精细 MCDA 风险图可以帮助将消除工作集中在高风险的特定地点。