A Habitat Model for Disease Vector Aedes aegypti in the Tampa Bay Area, FloridA.

Pub Date : 2023-06-01 DOI:10.2987/22-7109
Johnny A Uelmen, Connor D Mapes, Agne Prasauskas, Carl Boohene, Leonard Burns, Jason Stuck, Ryan M Carney
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引用次数: 2

Abstract

Within the contiguous USA, Florida is unique in having tropical and subtropical climates, a great abundance and diversity of mosquito vectors, and high rates of human travel. These factors contribute to the state being the national ground zero for exotic mosquito-borne diseases, as evidenced by local transmission of viruses spread by Aedes aegypti, including outbreaks of dengue in 2022 and Zika in 2016. Because of limited treatment options, integrated vector management is a key part of mitigating these arboviruses. Practical knowledge of when and where mosquito populations of interest exist is critical for surveillance and control efforts, and habitat predictions at various geographic scales typically rely on ecological niche modeling. However, most of these models, usually created in partnership with academic institutions, demand resources that otherwise may be too time-demanding or difficult for mosquito control programs to replicate and use effectively. Such resources may include intensive computational requirements, high spatiotemporal resolutions of data not regularly available, and/or expert knowledge of statistical analysis. Therefore, our study aims to partner with mosquito control agencies in generating operationally useful mosquito abundance models. Given the increasing threat of mosquito-borne disease transmission in Florida, our analytic approach targets recent Ae. aegypti abundance in the Tampa Bay area. We investigate explanatory variables that: 1) are publicly available, 2) require little to no preprocessing for use, and 3) are known factors associated with Ae. aegypti ecology. Out of our 4 final models, none required more than 5 out of the 36 predictors assessed (13.9%). Similar to previous literature, the strongest predictors were consistently 3- and 4-wk temperature and precipitation lags, followed closely by 1 of 2 environmental predictors: land use/land cover or normalized difference vegetation index. Surprisingly, 3 of our 4 final models included one or more socioeconomic or demographic predictors. In general, larger sample sizes of trap collections and/or citizen science observations should result in greater confidence in model predictions and validation. However, given disparities in trap collections across jurisdictions, individual county models rather than a multicounty conglomerate model would likely yield stronger model fits. Ultimately, we hope that the results of our assessment will enable more accurate and precise mosquito surveillance and control of Ae. aegypti in Florida and beyond.

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佛罗里达州坦帕湾地区疾病媒介埃及伊蚊的栖息地模型。
在毗连的美国,佛罗里达州是独特的热带和亚热带气候,蚊子载体的丰富和多样性,和高的人类旅行率。这些因素导致该州成为全国外来蚊媒疾病的发源地,埃及伊蚊传播的病毒在当地传播就证明了这一点,包括2022年的登革热和2016年的寨卡病毒爆发。由于治疗选择有限,综合病媒管理是减轻这些虫媒病毒的关键部分。了解蚊虫种群存在的时间和地点对监测和控制工作至关重要,而各种地理尺度上的栖息地预测通常依赖于生态位模型。然而,大多数这些模式通常是与学术机构合作创建的,它们所需要的资源对于蚊子控制项目来说可能过于耗时或难以复制和有效利用。这些资源可能包括密集的计算需求、不经常获得的数据的高时空分辨率和/或统计分析的专业知识。因此,我们的研究旨在与蚊虫控制机构合作,建立实用的蚊子丰度模型。鉴于佛罗里达州蚊媒疾病传播的威胁日益增加,我们的分析方法针对最近的伊蚊。在坦帕湾地区有大量埃及伊蚊。我们调查的解释变量有:1)公开可用,2)使用前几乎不需要预处理,以及3)与Ae相关的已知因素。蚊生态。在我们最终的4个模型中,没有一个模型需要超过36个预测因子中的5个(13.9%)。与之前的文献类似,最强的预测因子始终是3周和4周的温度和降水滞后,紧随其后的是2个环境预测因子中的1个:土地利用/土地覆盖或归一化植被指数。令人惊讶的是,我们最终的4个模型中有3个包含了一个或多个社会经济或人口统计学预测因子。一般来说,陷阱收集和/或公民科学观察的样本量越大,模型预测和验证的信心就越大。然而,考虑到不同司法管辖区陷阱收集的差异,单个县模型而不是多县综合模型可能会产生更强的模型拟合。最终,我们希望我们的评估结果将使伊蚊的监测和控制更加准确和精确。埃及伊蚊在佛罗里达州和其他地方。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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