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利用人类流动数据和SEIR模型的邻里层面模拟揭示COVID-19的地理传播模式:南卡罗来纳州的案例研究

Revealing geographic transmission pattern of COVID-19 using neighborhood-level simulation with human mobility data and SEIR model: A Case Study of South Carolina.

作者信息

Ning Huan, Li Zhenlong, Qiao Shan, Zeng Chengbo, Zhang Jiajia, Olatosi Bankole, Li Xiaoming

机构信息

Geoinformation and Big Data Research Laboratory, Department of Geography, University of South Carolina, SC, USA.

Big Data Health Science Center, University of South Carolina, SC, USA.

出版信息

medRxiv. 2022 Aug 17:2022.08.16.22278809. doi: 10.1101/2022.08.16.22278809.

DOI:10.1101/2022.08.16.22278809
PMID:36032968
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC9413698/
Abstract

Direct human physical contact accelerates COVID-19 transmission. Smartphone mobility data has been an emerging data source to reveal fine-grained human mobility, which can be used to estimate the intensity of physical contact surrounding different locations. Our study applied smartphone mobility data to simulate the second wave spreading of COVID-19 in January 2021 in three major metropolitan statistical areas (Columbia, Greenville, and Charleston) in South Carolina, United States. Based on the simulation, the number of historical county-level COVID-19 cases was allocated to neighborhoods (Census blockgroups) and points of interest (POIs), and the transmission rate of each allocated place was estimated. The result reveals that the COVID-19 infections during the study period mainly occurred in neighborhoods (86%), and the number is approximately proportional to the neighborhood’s population. Restaurants and elementary and secondary schools contributed more COVID-19 infections than other POI categories. The simulation results for the coastal tourism Charleston area show high transmission rates in POIs related to travel and leisure activities. The results suggest that the neighborhood-level infectious controlling measures are critical in reducing COVID-19 infections. We also found that the households of lower socioeconomic status may be an umbrella against infection due to fewer visits to places such as malls and restaurants associated with their low financial status. Control measures should be tailored to different geographic locations since transmission rates and infection counts of POI categories vary among metropolitan areas.

摘要

直接的人际身体接触会加速新冠病毒的传播。智能手机移动数据已成为一种新兴的数据源,可揭示细粒度的人类移动情况,进而用于估计不同地点周围身体接触的强度。我们的研究运用智能手机移动数据,模拟了2021年1月新冠病毒在美国南卡罗来纳州三个主要大都市统计区(哥伦比亚、格林维尔和查尔斯顿)的第二波传播情况。基于该模拟,将历史县级新冠病例数分配到各个社区(人口普查街区组)和兴趣点(POI),并估计每个分配地点的传播率。结果显示,研究期间的新冠病毒感染主要发生在社区(86%),且感染人数与社区人口大致成正比。与其他兴趣点类别相比,餐厅以及中小学导致的新冠病毒感染更多。沿海旅游城市查尔斯顿地区的模拟结果显示,与旅游和休闲活动相关的兴趣点传播率较高。结果表明,社区层面的感染控制措施对于减少新冠病毒感染至关重要。我们还发现,社会经济地位较低的家庭可能因其较低的经济状况而较少前往商场和餐厅等场所,从而成为抵御感染的保护伞。由于不同大都市统计区兴趣点类别的传播率和感染数各不相同,控制措施应因地制宜。

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本文引用的文献

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基于日常流动性的邻里社会经济不平等预示着旧金山、西雅图和威斯康星州的新冠病毒感染情况。
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