Quantifying Social Interventions for Combating COVID-19 via a Symmetry-Based Model

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Abstract

The COVID-19 pandemic has revealed new features in terms of substantial changes in rates of infection, cure, and death as a result of social interventions, which significantly challenges traditional SEIR-type models. In this paper we developed a symmetry-based model for quantifying social interventions for combating COVID-19. We found that three key order parameters, separating degree ((Formula presented.)) for susceptible populations, healing degree ((Formula presented.)) for mild cases, and rescuing degree ((Formula presented.)) for severe cases, all display logistic dynamics, establishing a novel dynamic model named SHR. Furthermore, we discovered two evolutionary patterns of healing degree with a universal power law in 23 areas in the first wave. Remarkably, the model yielded a quantitative evaluation of the dynamic back-to-zero policy in the third wave in Beijing using 12 datasets of different sizes. In conclusion, the SHR model constitutes a rational basis by which we can understand this complex epidemic and policymakers can carry out sustainable anti-epidemic measures to minimize its impact.

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APA

Zhang, L., She, G. H., She, Y. R., Li, R., & She, Z. S. (2023). Quantifying Social Interventions for Combating COVID-19 via a Symmetry-Based Model. International Journal of Environmental Research and Public Health, 20(1). https://doi.org/10.3390/ijerph20010476

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