Department of Computer Science and Statistics, University of Rhode Island, Rhode Island, United States.
Department of Biological Sciences, University of Rhode Island, Rhode Island, United States.
Spat Spatiotemporal Epidemiol. 2020 Nov;35:100375. doi: 10.1016/j.sste.2020.100375. Epub 2020 Aug 27.
Dengue Fever (DF) is a mosquito vector transmitted flavivirus and a reemerging global public health threat. Although several studies have addressed the relation between climatic and environmental factors and the epidemiology of DF, or looked at purely spatial or time series analysis, this article presents a joint spatio-temporal epidemiological analysis. Our approach accounts for both temporal and spatial autocorrelation in DF incidence and the effect of temperatures and precipitation by using a hierarchical Bayesian approach. We fitted several space-time areal models to predict relative risk at the municipality level and for each month from 1990 to 2014. Model selection was performed according to several criteria: the preferred models detected significant effects for temperature at time lags of up to four months and for precipitation up to three months. A boundary detection analysis is incorporated in the modeling approach, and it was successful in detecting municipalities with historically anomalous risk.
登革热(DF)是一种由蚊子传播的黄病毒,也是一种重新出现的全球公共卫生威胁。尽管有几项研究探讨了气候和环境因素与 DF 流行病学之间的关系,或仅研究了纯粹的空间或时间序列分析,但本文提出了一种联合时空流行病学分析。我们的方法通过使用分层贝叶斯方法来考虑 DF 发病率的时间和空间自相关,以及温度和降水的影响。我们拟合了几个时空区域模型,以预测 1990 年至 2014 年期间每个月的市县级相对风险。根据几个标准进行模型选择:首选模型检测到了长达四个月的时间滞后的温度和长达三个月的降水的显著影响。建模方法中包含了边界检测分析,并且成功检测到了历史上风险异常的市。