Odiit Martin, Bessell Paul R, Fèvre Eric M, Robinson Tim, Kinoti Jennifer, Coleman Paul G, Welburn Susan C, McDermott John, Woolhouse Mark E J
Sleeping Sickness Programme, National Agricultural Research Organization, LIRI Hospital, P.O. Box 96, Tororo, Uganda.
Trans R Soc Trop Med Hyg. 2006 Apr;100(4):354-62. doi: 10.1016/j.trstmh.2005.04.022. Epub 2005 Oct 21.
Geographic information systems (GIS) and remote sensing were used to identify villages at high risk for sleeping sickness, as defined by reported incidence. Landsat Enhanced Thematic Mapper (ETM) satellite data were classified to obtain a map of land cover, and the Normalised Difference Vegetation Index (NDVI) and Landsat band 5 were derived as unclassified measures of vegetation density and soil moisture, respectively. GIS functions were used to determine the areas of land cover types and mean NDVI and band 5 values within 1.5 km radii of 389 villages where sleeping sickness incidence had been estimated. Analysis using backward binary logistic regression found proximity to swampland and low population density to be predictive of reported sleeping sickness presence, with distance to the sleeping sickness hospital as an important confounding variable. These findings demonstrate the potential of remote sensing and GIS to characterize village-level risk of sleeping sickness in endemic regions.
地理信息系统(GIS)和遥感技术被用于识别按报告发病率定义的昏睡病高风险村庄。对陆地卫星增强型专题绘图仪(ETM)卫星数据进行分类以获得土地覆盖图,并分别得出归一化植被指数(NDVI)和陆地卫星5波段,作为植被密度和土壤湿度的未分类测量指标。利用GIS功能确定了389个已估算昏睡病发病率的村庄半径1.5公里范围内的土地覆盖类型面积以及平均NDVI和5波段值。使用向后二元逻辑回归分析发现,靠近沼泽地和低人口密度可预测报告的昏睡病存在情况,与昏睡病医院的距离是一个重要的混杂变量。这些发现证明了遥感和GIS在确定流行地区村庄层面昏睡病风险特征方面的潜力。