ORISE Research Participant, U.S. Environmental Protection Agency, Office of Research and Development, National Exposure Research Laboratory, 960 College Station Rd, Athens, GA 30605, USA.
U.S. Environmental Protection Agency, Office of Research and Development, National Exposure Research Laboratory, 960 College Station Rd, Athens, GA 30605, USA.
Sci Total Environ. 2019 Feb 10;650(Pt 2):2818-2829. doi: 10.1016/j.scitotenv.2018.09.397. Epub 2018 Oct 2.
Monitoring and control of West Nile virus (WNV) presents a challenge to state and local vector control managers. Models of mosquito presence and viral incidence have revealed that variations in mosquito autecology and land use patterns introduce unique dynamics of disease at the scale of a county or city, and that effective prediction requires locally parameterized models. We applied Bayesian spatiotemporal modeling to West Nile surveillance data from 49 mosquito trap sites in Nassau County, New York, from 2001 to 2015 and evaluated environmental and sociological predictors of West Nile virus incidence in Culex pipiens-restuans. A Bayesian spike-and-slab variable selection algorithm was used to help select influential independent variables. This method can be used to identify locally-important predictors. The best model predicted West Nile positives well, with an Area Under Curve (AUC) of 0.83 on holdout data. The temporal trend was nonlinear and increased throughout the year. The spatial component identified increased West Nile incidence odds in the northwestern portion of the county, with lower odds in wetlands on the south shore of Long Island. High Normalized Difference Vegetation Index (NDVI) areas, wetlands, and areas of high urban development had negative associations with WNV incidence. In this study we demonstrate a method for improving spatiotemporal models of West Nile virus incidence for decision making at the county and community scale, which empowers disease and vector control organizations to prioritize and evaluate prevention efforts.
监测和控制西尼罗河病毒(WNV)对州和地方病媒控制管理者来说是一个挑战。蚊子存在和病毒发病率的模型表明,蚊子自生境和土地利用模式的变化在县或市的规模上引入了疾病的独特动态,有效的预测需要本地化参数化模型。我们应用贝叶斯时空模型对 2001 年至 2015 年期间在纽约拿骚县的 49 个蚊子诱捕器站点的西尼罗河监测数据进行了分析,并评估了库蚊中的环境和社会学预测因子对西尼罗河病毒发病率的影响。贝叶斯尖峰和板条变量选择算法用于帮助选择有影响力的独立变量。这种方法可用于识别本地重要的预测因子。最佳模型对西尼罗河阳性预测良好,在保留数据上的曲线下面积(AUC)为 0.83。时间趋势是非线性的,并在整个年度增加。空间成分确定了该县西北部西尼罗河发病率的几率增加,而长岛南岸湿地的几率降低。归一化差异植被指数(NDVI)高的地区、湿地和城市发展程度高的地区与 WNV 发病率呈负相关。在这项研究中,我们展示了一种用于改进西尼罗河病毒发病率的时空模型的方法,以便在县和社区规模上进行决策,这使疾病和病媒控制组织能够确定优先级并评估预防工作的效果。