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The emerging concept of travel therapy in health science: Will it be applied to tourists visiting sub-frigid climate zones?
Jun Wen, Danni Zheng, Fangli Hu
2022, 2(4): 200-203. doi: 10.2478/fzm-2022-0027
Comparisons of different statistical models for analyzing the effects of meteorological factors on COVID-19
Yulu Zheng, Zheng Guo, Zhiyuan Wu, Jun Wen, Haifeng Hou
2023, 3(3): 161-166. doi: 10.2478/fzm-2023-0020
Keywords: coronavirus disease 2019, meteorological factors, general coronavirus disease 2019, meteorological factors, general
  Objective   This general non-systematic review aimed to gather information on reported statistical models examing the effects of meteorological factors on coronavirus disease 2019 (COVID-19) and compare these models.   Methods   PubMed, Web of Science, and Google Scholar were searched for studies on "meteorological factors and COVID-19" published between January 1, 2020, and October 1, 2022.   Results   The most commonly used approaches for analyzing the association between meteorological factors and COVID-19 were the linear regression model (LRM), generalized linear model (GLM), generalized additive model (GAM), and distributed lag non-linear model (DLNM). In addition to these classical models commonly applied in environmental epidemiology, machine learning techniques are increasingly being used to select risk factors for the outcome of interest and establishing robust prediction models.   Conclusion   Selecting an appropriate model is essential before conducting research. To ensure the reliability of analysis results, it is important to consider including non-meteorological factors (e.g., government policies on physical distancing, vaccination, and hygiene practices) along with meteorological factors in the model.