2022
DOI: 10.21203/rs.3.rs-1672326/v1
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Investigating the causal inference of vaccine on COVID-19 disease propagation based on Bayesian approach

Abstract: The causal impact of COVID-19 vaccine coverage on effective reproduction number R(t) under the disease control measures in the real-world scenario is understudied, making the optimal reopening strategy (e.g., when and which control measures are supposed to be conducted) during the recovery phase difficult to design. In this study, we examine the demographic heterogeneity and time variation of the vaccine effect on disease propagation based on the Bayesian structural time series analysis. Furthermore, we explor… Show more

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