A panel regression analysis for the COVID-19 epidemic in the United States

Author:

Guo Yinpei,Li Bo,Duan Tonghua,Yao Nan,Wang Han,Yang Yixue,Yan Shoumeng,Sun Mengzi,Wang Ling,Yao Yan,Sun Yuchen,Jia Jiwei,Liu SiyuORCID

Abstract

This study explored the roles of epidemic-spread-related behaviors, vaccination status and weather factors during the COVID-19 epidemic in 50 U.S. states since March 2020. Data from March 1, 2020 to February 5, 2022 were incorporated into panel model. The states were clustered by the k-means method. In addition to discussing the whole time period, we also took multiple events nodes into account and analyzed the data in different time periods respectively by panel linear regression method. In addition, influence of cluster grouping and different incubation periods were been discussed. Non-segmented analysis showed the rate of people staying at home and the vaccination dose per capita were significantly negatively correlated with the daily incidence rate, while the number of long-distance trips was positively correlated. Weather indicators also had a negative effect to a certain extent. Most segmental results support the above view. The vaccination dose per capita was unsurprisingly proved to be the most significant factor especially for epidemic dominated by Omicron strains. 7-day was a more robust incubation period with the best model fit while weather had different effects on the epidemic spread in different time period. The implementation of prevention behaviors and the promotion of vaccination may have a successful control effect on COVID-19, including variants’ epidemic such as Omicron. The spread of COVID-19 also might be associated with weather, albeit to a lesser extent.

Funder

National Natural Science Foundation of China

the Fundamental Research Funds for the Central Universities, JLU

Natural Science Foundation of Jilin Province

Shanghai Municipal Science and Technology Major Project

Publisher

Public Library of Science (PLoS)

Subject

Multidisciplinary

Reference48 articles.

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