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纽约萨福克县蚊子中寨卡病毒生态和社会学预测因子的时空建模

Spatiotemporal modeling of ecological and sociological predictors of West Nile virus in Suffolk County, NY, mosquitoes.

作者信息

Myer Mark H, Campbell Scott R, Johnston John M

机构信息

Oak Ridge Institute for Science and Education, Office of Research and Development, National Exposure Research Laboratory, U.S. Environmental Protection Agency, 960 College Station Road, Athens, Georgia 30605 USA.

Arthropod-Borne Disease Laboratory, Suffolk County Department of Health Services, Yaphank, New York 11980 USA.

出版信息

Ecosphere. 2017;8(6):e01854. doi: 10.1002/ecs2.1854.

Abstract

Suffolk County, New York, is a locus for West Nile virus (WNV) infection in the American northeast that includes the majority of Long Island to the east of New York City. The county has a system of light and gravid traps used for mosquito collection and disease monitoring. In order to identify predictors of WNV incidence in mosquitoes and predict future occurrence of WNV, we have developed a spatiotemporal Bayesian model, beginning with over 40 ecological, meteorological, and built-environment covariates. A mixed-effects model including spatially and temporally correlated errors was fit to WNV surveillance data from 2008 to 2014 using the R package "R-INLA," which allows for Bayesian modeling using the stochastic partial differential equation (SPDE) approach. The integrated nested Laplace approximation (INLA) SPDE allows for simultaneous fitting of a temporal parameter and a spatial covariance, while incorporating a variety of likelihood functions and running in R statistical software on a home computer. We found that land cover classified as open water and woody wetlands had a negative association with WNV incidence in mosquitoes, and the count of septic systems was associated with an increase in WNV. Mean temperature at two-week lag was associated with a strong positive impact, while mean precipitation at no lag and one-week lag was associated with positive and negative impacts on WNV, respectively. Incorporation of spatiotemporal factors resulted in a marked increase in model goodness-of-fit. The predictive power of the model was evaluated on 2015 surveillance results, where the best model achieved a sensitivity of 80.9% and a specificity of 77.0%. The spatial covariate was mapped across the county, identifying a gradient of WNV prevalence increasing from east to west. The Bayesian spatiotemporal model improves upon previous approaches, and we recommend the INLA SPDE methodology as an efficient way to develop robust models from surveillance data to develop and enhance monitoring and control programs. Our study confirms previously found associations between weather conditions and WNV and suggests that wetland cover has a mitigating effect on WNV infection in mosquitoes, while high septic system density is associated with an increase in WNV infection.

摘要

纽约州萨福克县是美国东北部西尼罗河病毒(WNV)感染的一个集中区域,涵盖了纽约市以东的长岛大部分地区。该县有一个用于蚊子采集和疾病监测的灯光诱捕器和孕蚊诱捕器系统。为了确定蚊子中WNV发病率的预测因素并预测WNV的未来发生情况,我们开发了一个时空贝叶斯模型,最初使用了40多个生态、气象和建筑环境协变量。使用R包“R-INLA”将一个包含空间和时间相关误差的混合效应模型拟合到2008年至2014年的WNV监测数据,该模型允许使用随机偏微分方程(SPDE)方法进行贝叶斯建模。集成嵌套拉普拉斯近似(INLA)SPDE允许同时拟合时间参数和空间协方差,同时纳入各种似然函数,并可在家庭计算机上的R统计软件中运行。我们发现,分类为开阔水域和木本湿地的土地覆盖与蚊子中WNV的发病率呈负相关,化粪池系统的数量与WNV的增加有关。滞后两周的平均温度具有强烈的正向影响,而无滞后和滞后一周的平均降水量分别对WNV有正向和负向影响。纳入时空因素导致模型拟合优度显著提高。该模型的预测能力根据2015年的监测结果进行评估,最佳模型的灵敏度达到80.9%,特异性达到77.0%。空间协变量在全县范围内进行了绘制,确定了WNV流行率从东向西递增的梯度。贝叶斯时空模型改进了以前的方法,我们建议将INLA SPDE方法作为一种从监测数据开发稳健模型以制定和加强监测与控制计划的有效方法。我们的研究证实了先前发现的天气条件与WNV之间的关联,并表明湿地覆盖对蚊子中的WNV感染有缓解作用,而化粪池系统密度高与WNV感染增加有关。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/98af/6104833/40c4c2a07a10/nihms-983434-f0001.jpg

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