Statistical Sciences Group, Los Alamos National Laboratory, Los Alamos, NM, United States.
Department of Applied Mathematics and Statistics, Colorado School of Mines, Golden, CO, United States.
Front Public Health. 2023 Feb 17;11:1100543. doi: 10.3389/fpubh.2023.1100543. eCollection 2023.
West Nile virus is the most common mosquito borne disease in North America and the leading cause of viral encephalitis. West Nile virus is primarily transmitted between birds and mosquitoes while humans are incidental, dead-end hosts. Climate change may increase the risk of human infections as climatic variables have been shown to affect the mosquito life cycle, biting rate, incubation period of the disease in mosquitoes, and bird migration patterns. We develop a zero-inflated Poisson model to investigate how human West Nile virus case counts vary with respect to mosquito abundance and infection rates, bird abundance, and other environmental covariates. We use a Bayesian paradigm to fit our model to data from 2010-2019 in Ontario, Canada. Our results show mosquito infection rate, temperature, precipitation, and crow abundance are positively correlated with human cases while NDVI and robin abundance are negatively correlated with human cases. We find the inclusion of spatial random effects allows for more accurate predictions, particularly in years where cases are higher. Our model is able to accurately predict the magnitude and timing of yearly West Nile virus outbreaks and could be a valuable tool for public health officials to implement prevention strategies to mitigate these outbreaks.
西尼罗河病毒是北美最常见的蚊媒疾病,也是病毒性脑炎的主要原因。西尼罗河病毒主要在鸟类和蚊子之间传播,而人类是偶然的、无后续作用的宿主。气候变化可能会增加人类感染的风险,因为气候变量已被证明会影响蚊子的生命周期、叮咬率、蚊子疾病的潜伏期以及鸟类的迁徙模式。我们开发了一个零膨胀泊松模型来研究人类西尼罗河病毒病例数如何随蚊子丰度和感染率、鸟类丰度以及其他环境协变量而变化。我们使用贝叶斯范例将我们的模型拟合到 2010-2019 年加拿大安大略省的数据。我们的结果表明,蚊子感染率、温度、降水和乌鸦丰度与人类病例呈正相关,而 NDVI 和知更鸟丰度与人类病例呈负相关。我们发现包含空间随机效应可以实现更准确的预测,特别是在病例较高的年份。我们的模型能够准确预测西尼罗河病毒爆发的规模和时间,并可能成为公共卫生官员实施预防策略以减轻这些爆发的有价值工具。