论文标题

人口共同位置减少对美国Covid-19的跨县传播风险的影响

Effects of Population Co-location Reduction on Cross-county Transmission Risk of COVID-19 in the United States

论文作者

Fan, Chao, Lee, Sanghyeon, Yang, Yang, Oztekin, Bora, Li, Qingchun, Mostafavi, Ali

论文摘要

Covid-19在美国的迅速传播对公共卫生,现实经济和人类福祉构成了重大威胁。由于没有有效的疫苗,社会疏远和减少旅行的预防作用被认为是控制Covid-19的传播的必要非药物方法。先前的研究表明,人类运动和流动性在中国推动了Covid-19的时空分布。然而,关于共同位置减少对跨县的传播风险19的模式和影响知之甚少。这项研究从2020年3月至2020年5月初利用了美国所有县的Facebook共同定位数据。该分析研究了降低旅行和大流行增长轨迹之间的同步性和时间滞后,以评估社会距离在停止人口共同位置概率以及随后每周新病例的增长方面的疗效。结果表明,减少共同定位的缓解效应出现在每周新病例的增长中,并延迟了一周。此外,在不同的县群体中发现了显着的隔离,这些分离是根据案件数量进行分类的。结果表明,组内共同定位概率保持稳定,社会疏远政策主要导致跨组共同定位概率降低(由于县的旅行减少,案件数量较大,案件数量较低)。这些发现可能对地方政府有重要的实际意义,以告知其监测和减少Covid-19的蔓延以及未来大流行的采用措施的干预措施。公共政策,经济预测和流行建模需要考虑人口共同地点模式,以评估跨县的共同传播风险。

The rapid spread of COVID-19 in the United States has imposed a major threat to public health, the real economy, and human well-being. With the absence of effective vaccines, the preventive actions of social distancing and travel reduction are recognized as essential non-pharmacologic approaches to control the spread of COVID-19. Prior studies demonstrated that human movement and mobility drove the spatiotemporal distribution of COVID-19 in China. Little is known, however, about the patterns and effects of co-location reduction on cross-county transmission risk of COVID-19. This study utilizes Facebook co-location data for all counties in the United States from March to early May 2020. The analysis examines the synchronicity and time lag between travel reduction and pandemic growth trajectory to evaluate the efficacy of social distancing in ceasing the population co-location probabilities, and subsequently the growth in weekly new cases. The results show that the mitigation effects of co-location reduction appear in the growth of weekly new cases with one week of delay. Furthermore, significant segregation is found among different county groups which are categorized based on numbers of cases. The results suggest that within-group co-location probabilities remain stable, and social distancing policies primarily resulted in reduced cross-group co-location probabilities (due to travel reduction from counties with large number of cases to counties with low numbers of cases). These findings could have important practical implications for local governments to inform their intervention measures for monitoring and reducing the spread of COVID-19, as well as for adoption in future pandemics. Public policy, economic forecasting, and epidemic modeling need to account for population co-location patterns in evaluating transmission risk of COVID-19 across counties.

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