论文标题
量化县间流动性模式对美国Covid-19的影响
Quantifying the influence of inter-county mobility patterns on the COVID-19 outbreak in the United States
论文作者
论文摘要
作为一种高度传染性的呼吸道疾病,Covid-19已成为威胁全球健康的大流行。没有有效的治疗方法,非药物干预(例如旅行限制)已被广泛促进以减轻疫情。当前的研究分析了迁移率指标,例如旅行距离;但是,缺乏关于区间旅行流及其对大流行的影响的研究。我们的研究特别关注县间的流动性模式及其对美国共同-19蔓延的影响。为了检索实际的移动性模式,我们使用了一组集成的移动设备位置数据,包括超过1亿个匿名设备。我们首先研究了全国性的时间趋势和县间流动性的空间分布。然后,我们放大了纽约市美国爆发的中心,并评估其流出对其他县的影响。最后,我们在县级开发了“ log linear double风险”模型,以量化县间流动流动进口的“外部风险”的影响,而“内部风险”定义为一个县在具有高风险表型的人口方面的脆弱性。我们的研究提高了美国对县间流动性的意识,并可以帮助改善19009年的非药物干预措施。
As a highly infectious respiratory disease, COVID-19 has become a pandemic that threatens global health. Without an effective treatment, non-pharmaceutical interventions, such as travel restrictions, have been widely promoted to mitigate the outbreak. Current studies analyze mobility metrics such as travel distance; however, there is a lack of research on interzonal travel flow and its impact on the pandemic. Our study specifically focuses on the inter-county mobility pattern and its influence on the COVID-19 spread in the United States. To retrieve real-world mobility patterns, we utilize an integrated set of mobile device location data including over 100 million anonymous devices. We first investigate the nationwide temporal trend and spatial distribution of inter-county mobility. Then we zoom in on the epicenter of the U.S. outbreak, New York City, and evaluate the impacts of its outflow on other counties. Finally, we develop a "log-linear double-risk" model at the county level to quantify the influence of both "external risk" imported by inter-county mobility flows and the "internal risk" defined as the vulnerability of a county in terms of population with high-risk phenotypes. Our study enhances the situation awareness of inter-county mobility in the U.S. and can help improve non-pharmaceutical interventions for COVID-19.