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Towards malaria risk prediction in Afghanistan using remote sensing

机译:使用遥感进行阿富汗疟疾风险预测

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Background Malaria is a significant public health concern in Afghanistan. Currently, approximately 60% of the population, or nearly 14 million people, live in a malaria-endemic area. Afghanistan's diverse landscape and terrain contributes to the heterogeneous malaria prevalence across the country. Understanding the role of environmental variables on malaria transmission can further the effort for malaria control programme. Methods Provincial malaria epidemiological data (2004-2007) collected by the health posts in 23 provinces were used in conjunction with space-borne observations from NASA satellites. Specifically, the environmental variables, including precipitation, temperature and vegetation index measured by the Tropical Rainfall Measuring Mission and the Moderate Resolution Imaging Spectoradiometer, were used. Regression techniques were employed to model malaria cases as a function of environmental predictors. The resulting model was used for predicting malaria risks in Afghanistan. The entire time series except the last 6 months is used for training, and the last 6-month data is used for prediction and validation. Results Vegetation index, in general, is the strongest predictor, reflecting the fact that irrigation is the main factor that promotes malaria transmission in Afghanistan. Surface temperature is the second strongest predictor. Precipitation is not shown as a significant predictor, as it may not directly lead to higher larval population. Autoregressiveness of the malaria epidemiological data is apparent from the analysis. The malaria time series are modelled well, with provincial average R2 of 0.845. Although the R2 for prediction has larger variation, the total 6-month cases prediction is only 8.9% higher than the actual cases. Conclusions The provincial monthly malaria cases can be modelled and predicted using satellite-measured environmental parameters with reasonable accuracy. The Third Strategic Approach of the WHO EMRO Malaria Control and Elimination Plan is aimed to develop a cost-effective surveillance system that includes forecasting, early warning and detection. The predictive and early warning capabilities shown in this paper support this strategy.
机译:背景疟疾是阿富汗的重要公共卫生问题。目前,大约60%的人口(即近1,400万人)生活在疟疾流行地区。阿富汗多样的地形和地形助长了该国各种疟疾的流行。了解环境变量在疟疾传播中的作用可以进一步推动疟疾控制计划的努力。方法将23个省的卫生站收集的省级疟疾流行病学数据(2004- 2007年)与NASA卫星的星载观测结果结合起来使用。具体而言,使用了环境变量,包括由热带降雨测量团和中分辨率成像光谱仪测量的降水,温度和植被指数。回归技术用于根据环境预测因素对疟疾病例进行建模。结果模型用于预测阿富汗的疟疾风险。除最近6个月以外的整个时间序列都用于训练,而最近6个月的数据则用于预测和验证。结果总体而言,植被指数是最强的预测指标,反映了以下事实:灌溉是促进阿富汗疟疾传播的主要因素。表面温度是第二大预测指标。未将降水显示为重要的预测因子,因为它可能不会直接导致幼虫数量增加。从分析中可以明显看出疟疾流行病学数据的自回归性。疟疾时间序列建模良好,全省平均R2为0.845。尽管用于预测的R2具有较大的变化,但6个月总病例预测仅比实际病例高8.9%。结论可以使用卫星测量的环境参数以合理的精度对省级每月疟疾病例进行建模和预测。 WHO EMRO疟疾控制和消除计划的第三项战略方针旨在开发一种具有成本效益的监视系统,其中包括预测,预警和发现。本文显示的预测和预警功能支持该策略。

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