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TOWARD MALARIA RISK PREDICTION IN AFGHANISTAN USING REMOTE SENSING

机译:利用遥感对阿富汗的疟疾风险预测

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Malaria causes more than one million deaths every year worldwide, with most of the mortality in Sub-Saharan Africa. It is also a significant public health concern in Afghanistan, with approximately 60percent of the population, or nearly 14 million people, living in a malaria-endemic area. Malaria transmission has been shown to be dependent on a number of environmental and meteorological variables. For countries in the tropics and the subtropics, rainfall is normally the most important variable, except for regions with high altitude where temperature may also be important. Afghanistan's diverse landscape contributes to the heterogeneous malaria distribution. Understanding the environmental effects on malaria transmission is essential to the effective control of malaria in Afghanistan. Provincial malaria data gathered by Health Posts in 23 provinces during 2004-2007 are used in this study. Remotely sensed geophysical parameters, including precipitation from TRMM, and surface temperature and vegetation index from MODIS are used to derive the empirical relationship between malaria cases and these geophysical parameters. Both neural network methods and regression analyses are used to examine the environmental dependency of malaria transmission. And the trained models are used for predicting future transmission. While neural network methods are intrinsically more adaptive for nonlinear relationship, the regression approach lends itself in providing statistical significance measures. Our results indicate that NDVI is the strongest predictor. This reflects the role of irrigation, instead of precipitation, in Afghanistan for agricultural production. The second strongest prediction is surface temperature. Precipitation is not shown as a significant predictor, contrary to other malarious countries in the tropics or subtropics. With the regression approach, the malaria time series are modelled well, with average R~(2) of 0.845. For cumulative 6-month prediction of malaria cases, the average provincial accuracy reaches 91percent. The developed predictive and early warning capabilities support the Third Strategic Approach of the WHO EMRO Malaria Control and Elimination Plan.
机译:疟疾在全球每年导致超过一百万人死亡,大部分死亡率都是撒哈拉以南非洲。它在阿富汗也是一个重要的公共卫生问题,大约60%的人口,或近1400万人,生活在疟疾地方区域。疟疾传输已被证明依赖于许多环境和气象变量。对于热带地区和亚热带的国家,降雨通常是最重要的变量,除了高海拔地区,温度可能很重要。阿富汗的多样化景观有助于异质疟疾分布。了解对疟疾传播的环境影响对于阿富汗疟疾的有效控制至关重要。在本研究中使用了23个省份的健康职位收集的省级疟疾数据。遥感的地球物理参数,包括从TRMM的降水,以及MODIS的表面温度和植被指数用于导出疟疾病例与这些地球物理参数之间的经验关系。神经网络方法和回归分析都用于检查疟疾传输的环境依赖性。训练有素的模型用于预测未来的传输。虽然神经网络方法本质上更适应非线性关系,但回归方法在提供统计显着性措施方面提供自身。我们的结果表明,NDVI是最强的预测因子。这反映了阿富汗灌溉,而不是降水的作用,以进行农业生产。第二个最强的预测是表面温度。降水不是作为一个重要的预测因子,与热带或副数据中的其他疟疾国家相反。随着回归的方法,疟疾时间序列进行了良好的建模,平均R〜(2)为0.845。对于累积6个月的疟疾病例预测,平均省级精度达到91cercent。发达的预测和预警能力支持世界卫生组织Emro疟疾控制和消除计划的第三种战略方法。

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