Li Yanchao, Ran Ziyu, Tsai Lily, Williams Sarah
Department of Urban Studies and Planning, Massachusetts Institute of Technology, USA.
Department of Political Science, Massachusetts Institute of Technology, USA.
Environ Plan B Urban Anal City Sci. 2023 Jun;50(5):1298-1312. doi: 10.1177/23998083231158377. Epub 2023 Jun 6.
Human mobility patterns created from mobile phone call detail records (CDRs) can provide an essential resource in data-poor environments to monitor the effects of health outbreaks. Analysis of this data can be instrumental for understanding the movement pattern of populations allowing governments to set and refine policies to respond to community health risks. Building on CDR mobility analysis techniques, this research set out to test whether combining CDR mobility indicators with socio-economic information can illustrate differences between different socio-economic groups' exposure risks to COVID-19. The work focuses on the Western Area of Sierra Leone which houses the capital Freetown because it lacks existing mobility data and therefore can be a great example of how CDR can be transformed for this use. To determine mobility patterns, we applied the radius of gyration, regularity of movement, and motif types analytics commonly used in CDR research. We then applied a clustering algorithm to these results to understand user trends. Then we compared the results of the three methods with socio-economic status determined from census data in the same geography. The results show the daily movement of cell phone users of lower socio-economic status covered greater distances in the Western Area before and after lockdown, thereby showing a greater risk to COVID-19. The research also shows that groups of higher social status decreased mobility significantly after lockdown and did not return to pre-COVID-19 levels, unlike lower-social status groups.
从手机通话记录(CDR)生成的人类流动模式,能在数据匮乏的环境中提供重要资源,以监测健康疫情的影响。对这些数据进行分析,有助于理解人群的流动模式,使政府能够制定和完善应对社区健康风险的政策。基于CDR流动分析技术,本研究旨在测试将CDR流动指标与社会经济信息相结合,是否能够阐明不同社会经济群体对新冠病毒的暴露风险差异。这项工作聚焦于塞拉利昂西部地区,该地区首府为弗里敦,因其缺乏现有的流动数据,因此可以作为一个很好的例子,展示如何将CDR用于此用途。为了确定流动模式,我们应用了回转半径、移动规律性和模式类型分析,这些都是CDR研究中常用的方法。然后,我们对这些结果应用聚类算法,以了解用户趋势。接着,我们将这三种方法的结果与同一地区人口普查数据确定的社会经济状况进行比较。结果显示,在西部地区,社会经济地位较低的手机用户在封锁前后的日常移动距离更远,从而表明感染新冠病毒的风险更大。研究还表明,与社会经济地位较低的群体不同,社会经济地位较高的群体在封锁后显著减少了移动,且未恢复到新冠疫情前的水平。