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Revista Cubana de Salud Pública
versión On-line ISSN 1561-3127
Resumen
ARGOTA PEREZ, George et al. Epistemological Value of Statistical Models Regarding the Fatality Rate Due to COVID-19. Rev Cub Sal Públ [online]. 2024, vol.50 Epub 08-Ago-2024. ISSN 1561-3127.
Introduction:
Statistical methods allow predicting the prevalence of epidemics, although they are insufficient when pandemics are random and, therefore, it is difficult to generalize a result.
Objective:
To describe the epistemological value of statistical models regarding the fatality rate due to COVID-19.
Methods:
The Google Scholar database was selected where the information was managed in English and the filter precision with the symbology of quotes and the Boolean operators AND and OR. The search equation was “statistical modeling” and “prediction case fatality rate”, pandemic “COVID-19”, infection prevalence. Using non-probabilistic selection for convenience, nine scientific articles published in 2020 were analyzed. According to the inclusion criterion, 50 or more citations were discriminated.
Conclusions:
Given the description of the contagion cases and the fatality rate in 2021, the prediction of the mathematical models was imprecise for the control of COVID-19.
Palabras clave : COVID-19; statistical models; prediction; prevalence; case fatality rate.












