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Local topographic wetness indices predict household malaria risk better than land-use and land-cover in the western Kenya highlands

机译:当地地形湿度指数预测肯尼亚西部高地的家庭疟疾风险优于土地利用和土地覆盖

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Background Identification of high-risk malaria foci can help enhance surveillance or control activities in regions where they are most needed. Associations between malaria risk and land-use/land-cover are well-recognized, but these environmental characteristics are closely interrelated with the land's topography (e.g., hills, valleys, elevation), which also influences malaria risk strongly. Parsing the individual contributions of land-cover/land-use variables to malaria risk requires examining these associations in the context of their topographic landscape. This study examined whether environmental factors like land-cover, land-use, and urban density improved malaria risk prediction based solely on the topographically-determined context, as measured by the topographic wetness index. Methods The topographic wetness index, an estimate of predicted water accumulation in a defined area, was generated from a digital terrain model of the landscape surrounding households in two neighbouring western Kenyan highland communities. Variables determined to best encompass the variance in this topographic wetness surface were calculated at a household level. Land-cover/land-use information was extracted from a high-resolution satellite image using an object-based classification method. Topographic and land-cover variables were used individually and in combination to predict household-level malaria in the communities through an iterative split-sample model fitting and testing procedure. Models with only topographic variables were compared to those with additional predictive factors related to land-cover/land-use to investigate whether these environmental factors improved prediction of malaria based on the shape of the land alone. Results Variables related to topographic wetness proved most useful in predicting the households of individuals contracting malaria in this region of rugged terrain. Other variables related to human modification of the environment also demonstrated clear associations with household malaria. However, these land-cover/land-use variables failed to produce unambiguous improvements in statistical predictive models controlling for important topographic factors, with none improving prediction of household-level malaria more than 75% of the time. Conclusions Topographic wetness values in this region of highly varied terrain more accurately predicted houses at greater risk of malaria than did consideration of land-cover/land-use characteristics. As such, those planning control or local elimination strategies in similar highland regions may use topographic and geographic characteristics to effectively identify high-receptivity regions that may require enhanced vigilance.
机译:背景识别高危疟疾疫源地可以帮助加强最需要的地区的监视或控制活动。疟疾风险与土地利用/土地覆盖之间的关联已得到公认,但这些环境特征与土地地形(例如丘陵,山谷,海拔)密切相关,这也极大地影响了疟疾风险。解析土地覆盖/土地利用变量对疟疾风险的个体贡献,需要在其地形环境中检查这些关联。这项研究检查了诸如土地覆盖率,土地利用和城市密度之类的环境因素是否仅根据地形确定的背景(通过地形湿度指数测量)改善了疟疾风险预测。方法根据肯尼亚西部两个高地社区周围居民家庭周围景观的数字地形模型,生成地形湿度指数(估计的定义区域内的蓄水量)。在家庭水平上计算确定为最能涵盖该地形湿度表面变化的变量。使用基于对象的分类方法从高分辨率卫星图像中提取土地覆盖/土地利用信息。通过迭代分割样本模型拟合和测试程序,单独或结合使用地形变量和土地覆盖变量来预测社区中的家庭级疟疾。将仅具有地形变量的模型与具有与土地覆盖/土地利用相关的其他预测因素的模型进行比较,以研究这些环境因素是否仅基于土地的形状就能改善对疟疾的预测。结果事实证明,与地形湿度有关的变量对于预测在崎this地形中该地区患有疟疾的个人的家庭最为有用。与人类改变环境有关的其他变量也显示出与家庭疟疾的明显关联。但是,这些土地覆盖/土地利用变量未能在控制重要地形因素的统计预测模型中产生明确的改善,没有超过75%的时间能改善家庭水平疟疾的预测。结论与考虑土地覆盖/土地利用特征相比,该地形高度变化的地区的地形湿度值更准确地预测了疟疾风险较高的房屋。这样,在类似的高地地区中那些计划控制或局部消除策略可以使用地形和地理特征来有效地识别可能需要提高警惕性的高接收性地区。

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