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Estimating and modeling spontaneous mobility changes during the COVID-19 pandemic without stay-at-home orders

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Estimating and modeling spontaneous mobility changes during the COVID-19 pandemic without stay-at-home orders

B. Zhao, X. Wang, et al.

This exciting research led by Baining Zhao and colleagues explores spontaneous mobility changes in Shenzhen following the end of the 'Zero-COVID' policy. With a robust analysis of 148 million travel data points, the study reveals significant spatial discrepancies in mobility patterns, providing crucial insights for future public health strategies against infectious diseases.

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~3 min • Beginner • English
Abstract
Comprehending the complex interplay among urban mobility, human behavior, and the COVID-19 pandemic could deliver vital perspectives to steer forthcoming public health endeavors. In late 2022, China lifted its Zero-COVID policy and rapidly abandoned nearly all interventions. It provides a unique opportunity to observe spontaneous mobility changes without government restriction throughout such a pandemic with high infection. Based on 148 million travel data from the public bus, subway, and taxi systems in Shenzhen, China, our analysis reveals discernible spatial discrepancies within mobility patterns. This phenomenon can be ascribed to the heterogeneous responses of mobility behavior tailored to specific purposes and travel modes in reaction to the pandemic. Considering both the physiological effects of virus infection and subjective willingness to travel, a dynamic model is proposed and capable of fitting fine-grained urban mobility. The analysis and model can interpret mobility data and underlying population behavior to inform policymakers when evaluating public health strategies against future large-scale infectious diseases.
Publisher
Humanities and Social Sciences Communications
Published On
May 08, 2024
Authors
Baining Zhao, Xuzhe Wang, Tianyu Zhang, Rongye Shi, Fengli Xu, Fanhang Man, Erbing Chen, Yang Li, Yong Li, Tao Sun, Xinlei Chen
Tags
mobility changes
COVID-19
urban mobility
public health
Shenzhen
travel data
dynamic model
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