首页> 外文会议>ISPRS Congress >LINKING SATELLITE REMOTE SENSING BASED ENVIRONMENTAL PREDICTORS TO DISEASE: AN APPLICATION TO THE SPATIOTEMPORAL MODELLING OF SCHISTOSOMIASIS IN GHANA
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LINKING SATELLITE REMOTE SENSING BASED ENVIRONMENTAL PREDICTORS TO DISEASE: AN APPLICATION TO THE SPATIOTEMPORAL MODELLING OF SCHISTOSOMIASIS IN GHANA

机译:基于疾病的卫星遥感的环境预测因子与疾病联系起来:加纳血吸虫病时空建模的应用

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90% of the worldwide schistosomiasis burden falls on sub-Saharan Africa. Control efforts are often based on infrequent, small-scale health surveys, which are expensive and logistically difficult to conduct. Use of satellite imagery to predictively model infectious disease transmission has great potential for public health applications. Transmission of schistosomiasis requires specific environmental conditions to sustain freshwater snails, however has unknown seasonality, and is difficult to study due to a long lag between infection and clinical symptoms. To overcome this, we employed a comprehensive 8-year time-series built from remote sensing feeds. The purely environmental predictor variables: accumulated precipitation, land surface temperature, vegetative growth indices, and climate zones created from a novel climate regionalization technique, were regressed against 8 years of national surveillance data in Ghana. All data were aggregated temporally into monthly observations, and spatially at the level of administrative districts. The result of an initial mixed effects model had 41% explained variance overall. Stratification by climate zone brought the R~2 as high as 50% for major zones and as high as 59% for minor zones. This can lead to a predictive risk model used to develop a decision support framework to design treatment schemes and direct scarce resources to areas with the highest risk of infection. This framework can be applied to diseases sensitive to climate or to locations where remote sensing would be better suited than health surveys.
机译:90%的全球血吸虫病负担落在撒哈拉以南非洲。控制努力往往基于不频繁,小规模的健康调查,这是昂贵且逻辑上难以进行的。使用卫星图像来预测模型的传染病传输具有很大的公共卫生应用的潜力。血吸虫病的传播需要特定的环境条件来维持淡水蜗牛,然而季节性未知,并且由于感染和临床症状之间的延长而难以研究。为了克服这一点,我们雇用了一系列全面的8年时间系列,由遥感饲料建造。纯粹的环境预测因子变量:累积的降水,陆地温度,营养生长指标和由新型气候区域化技术创造的陆地表面温度,气候区,在加纳的8年中退回了8年的国家监察数据。所有数据均在时间上汇总到每月观察,并在行政区的水平上。初始混合效果模型的结果总体上有41%的差异。气候区的分层将主要区域的R〜2高达50%,对于小区,高达59%。这可能导致预测风险模型用于制定决策支持框架,以设计处理计划和直接稀缺感染风险风险最高的区域。该框架可以应用于对气候敏感的疾病或遥感的位置比健康调查更适合遥感。

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