Revealing spatiotemporal transmission patterns and stages of COVID-19 in China using individual patients' trajectory data.

IF 2.6 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Computational urban science Pub Date : 2021-01-01 Epub Date: 2021-06-04 DOI:10.1007/s43762-021-00009-8
Tao Cheng, Tianhua Lu, Yunzhe Liu, Xiaowei Gao, Xianghui Zhang
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引用次数: 6

Abstract

Gauging viral transmission through human mobility in order to contain the COVID-19 pandemic has been a hot topic in academic studies and evidence-based policy-making. Although it is widely accepted that there is a strong positive correlation between the transmission of the coronavirus and the mobility of the general public, there are limitations to existing studies on this topic. For example, using digital proxies of mobile devices/apps may only partially reflect the movement of individuals; using the mobility of the general public and not COVID-19 patients in particular, or only using places where patients were diagnosed to study the spread of the virus may not be accurate; existing studies have focused on either the regional or national spread of COVID-19, and not the spread at the city level; and there are no systematic approaches for understanding the stages of transmission to facilitate the policy-making to contain the spread. To address these issues, we have developed a new methodological framework for COVID-19 transmission analysis based upon individual patients' trajectory data. By using innovative space-time analytics, this framework reveals the spatiotemporal patterns of patients' mobility and the transmission stages of COVID-19 from Wuhan to the rest of China at finer spatial and temporal scales. It can improve our understanding of the interaction of mobility and transmission, identifying the risk of spreading in small and medium-sized cities that have been neglected in existing studies. This demonstrates the effectiveness of the proposed framework and its policy implications to contain the COVID-19 pandemic.

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利用个体患者轨迹数据揭示新冠肺炎在中国的时空传播模式和阶段
通过人员流动衡量病毒传播以控制COVID-19大流行一直是学术研究和循证决策的热门话题。虽然人们普遍认为冠状病毒的传播与公众的流动性之间存在很强的正相关关系,但现有的研究仍存在局限性。例如,使用移动设备/应用程序的数字代理可能只能部分反映个人的移动;利用公众而不是COVID-19患者的流动性,或仅使用诊断出患者的地方来研究病毒的传播可能不准确;现有研究侧重于COVID-19的区域或国家传播,而不是城市层面的传播;目前还没有系统的方法来了解传播的各个阶段,以促进制定政策以遏制传播。为了解决这些问题,我们根据个体患者的轨迹数据开发了一种新的COVID-19传播分析方法框架。通过创新的时空分析,该框架在更精细的时空尺度上揭示了患者流动的时空格局和COVID-19从武汉到中国其他地区的传播阶段。它可以提高我们对流动性和传播相互作用的理解,识别在现有研究中被忽视的中小城市传播的风险。这表明拟议框架的有效性及其对遏制COVID-19大流行的政策影响。
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