School of Civil and Environmental Engineering, UNSW Sydney, Sydney, New South Wales, Australia.
Department of Immunology and Microbial Sciences, The Scripps Research Institute, La Jolla, California, United States of America.
PLoS Negl Trop Dis. 2018 Jan 18;12(1):e0006194. doi: 10.1371/journal.pntd.0006194. eCollection 2018 Jan.
An unprecedented Zika virus epidemic occurred in the Americas during 2015-2016. The size of the epidemic in conjunction with newly recognized health risks associated with the virus attracted significant attention across the research community. Our study complements several recent studies which have mapped epidemiological elements of Zika, by introducing a newly proposed methodology to simultaneously estimate the contribution of various risk factors for geographic spread resulting in local transmission and to compute the risk of spread (or re-introductions) between each pair of regions. The focus of our analysis is on the Americas, where the set of regions includes all countries, overseas territories, and the states of the US.
METHODOLOGY/PRINCIPAL FINDINGS: We present a novel application of the Generalized Inverse Infection Model (GIIM). The GIIM model uses real observations from the outbreak and seeks to estimate the risk factors driving transmission. The observations are derived from the dates of reported local transmission of Zika virus in each region, the network structure is defined by the passenger air travel movements between all pairs of regions, and the risk factors considered include regional socioeconomic factors, vector habitat suitability, travel volumes, and epidemiological data. The GIIM relies on a multi-agent based optimization method to estimate the parameters, and utilizes a data driven stochastic-dynamic epidemic model for evaluation. As expected, we found that mosquito abundance, incidence rate at the origin region, and human population density are risk factors for Zika virus transmission and spread. Surprisingly, air passenger volume was less impactful, and the most significant factor was (a negative relationship with) the regional gross domestic product (GDP) per capita.
CONCLUSIONS/SIGNIFICANCE: Our model generates country level exportation and importation risk profiles over the course of the epidemic and provides quantitative estimates for the likelihood of introduced Zika virus resulting in local transmission, between all origin-destination travel pairs in the Americas. Our findings indicate that local vector control, rather than travel restrictions, will be more effective at reducing the risks of Zika virus transmission and establishment. Moreover, the inverse relationship between Zika virus transmission and GDP suggests that Zika cases are more likely to occur in regions where people cannot afford to protect themselves from mosquitoes. The modeling framework is not specific for Zika virus, and could easily be employed for other vector-borne pathogens with sufficient epidemiological and entomological data.
2015 年至 2016 年,美洲发生了前所未有的寨卡病毒疫情。疫情规模之大,加上新发现的与该病毒相关的健康风险,引起了整个研究界的高度关注。我们的研究补充了最近几项研究,这些研究绘制了寨卡病毒的流行病学要素,引入了一种新提出的方法,同时估计导致本地传播的各种风险因素的贡献,并计算每对地区之间传播(或重新引入)的风险。我们分析的重点是在美洲,其中的地区包括所有国家、海外领土和美国各州。
方法/主要发现:我们提出了广义逆感染模型(GIIM)的新应用。GIIM 模型利用疫情爆发的实际观测数据,试图估计驱动传播的风险因素。观测结果来自每个地区本地寨卡病毒传播的报告日期,网络结构由所有地区对之间的旅客航空旅行流动情况定义,所考虑的风险因素包括区域社会经济因素、病媒栖息地适宜性、旅行量和流行病学数据。GIIM 依赖于基于多主体的优化方法来估计参数,并利用数据驱动的随机动态传染病模型进行评估。不出所料,我们发现蚊子数量、起源地区的发病率和人口密度是寨卡病毒传播和扩散的风险因素。令人惊讶的是,航空旅客量的影响较小,而最重要的因素是(与人均国内生产总值呈负相关关系)地区人均国内生产总值。
结论/意义:我们的模型在疫情期间生成国家层面的出口和进口风险概况,并提供了所有起源地-目的地旅行对之间输入寨卡病毒导致本地传播的可能性的定量估计。我们的研究结果表明,与旅行限制相比,当地的蚊虫控制将更有效地降低寨卡病毒传播和建立的风险。此外,寨卡病毒传播与 GDP 呈负相关关系表明,在人们无法保护自己免受蚊虫叮咬的地区,寨卡病毒病例更有可能发生。该建模框架不仅适用于寨卡病毒,而且可以轻松应用于具有足够流行病学和昆虫学数据的其他虫媒病原体。