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Identifying Environmental Risk Factors and Mapping the Distribution of West Nile Virus in an Endemic Region of North America

机译:确定环境危险因素并绘制北美流行区西尼罗河病毒的分布图

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Understanding the geographic distribution of mosquito‐borne disease and mapping disease risk are important for prevention and control efforts. Mosquito‐borne viruses (arboviruses), such as West Nile virus (WNV), are highly dependent on environmental conditions. Therefore, the use of environmental data can help in making spatial predictions of disease distribution. We used geocoded human case data for 2004–2017 and population‐weighted control points in combination with multiple geospatial environmental data sets to assess the environmental drivers of WNV cases and to map relative infection risk in South Dakota, USA. We compared the effectiveness of (1) land cover and physiography data, (2) climate data, and (3) spectral data for mapping the risk of WNV in South Dakota. A final model combining all data sets was used to predict spatial patterns of disease transmission and characterize the associations between environmental factors and WNV risk. We used a boosted regression tree model to identify the most important variables driving WNV risk and generated risk maps by applying this model across the entire state. We found that combining multiple sources of environmental data resulted in the most accurate predictions. Elevation, late‐season humidity, and early‐season surface moisture were the most important predictors of disease distribution. Indices that quantified interannual variability of climatic conditions and land surface moisture were better predictors than interannual means. We suggest that combining measures of interannual environmental variability with static land cover and physiography variables can help to improve spatial predictions of arbovirus transmission risk.
机译:了解蚊媒疾病的地理分布并绘制疾病风险图对于预防和控制工作很重要。诸如西尼罗河病毒(WNV)等蚊媒病毒(虫媒病毒)高度依赖于环境条件。因此,使用环境数据可以帮助做出疾病分布的空间预测。我们使用经过地理编码的2004-2017年人类病例数据和人口加权控制点,并结合多个地理空间环境数据集,来评估WNV病例的环境驱动因素,并绘制美国南达科他州的相对感染风险。我们比较了(1)土地覆盖和地貌数据,(2)气候数据和(3)光谱数据在绘制南达科他州WNV风险时的有效性。结合所有数据集的最终模型用于预测疾病传播的空间格局,并表征环境因素与WNV风险之间的关联。我们使用增强的回归树模型来确定驱动WNV风险的最重要变量,并通过在整个州中应用此模型来生成风险图。我们发现,结合多种环境数据源可以得出最准确的预测。海拔,季节后期湿度和季节早期表面湿度是疾病分布的最重要预测指标。量化气候条件和陆地表面湿度的年际变化的指标比年际均值更好。我们建议将年际环境变化与静态土地覆盖和生理变量结合起来的测量方法可以帮助改善虫媒病毒传播风险的空间预测。

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