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Predictive mathematical models of the short-term and long-term growth of the COVID-19 pandemic

Authors :
Andrzej Kloczkowski
Ana Cernea
Juan Luis Fernández-Martínez
Zulima Fernández-Muñiz
Source :
Scopus, RUO. Repositorio Institucional de la Universidad de Oviedo, instname, Computational and Mathematical Methods in Medicine, Computational and Mathematical Methods in Medicine, Vol 2021 (2021)
Publication Year :
2021

Abstract

The prediction of the dynamics of the COVID-19 outbreak and the corresponding needs of the health care system (COVID-19 patients’ admissions, the number of critically ill patients, need for intensive care units, etc.) is based on the combination of a limited growth model (Verhulst model) and a short-term predictive model that allows predictions to be made for the following day. In both cases, the uncertainty analysis of the prediction is performed, i.e., the set of equivalent models that adjust the historical data with the same accuracy. This set of models provides the posterior distribution of the parameters of the predictive model that adjusts the historical series. It can be extrapolated to the same analyzed time series (e.g., the number of infected individuals per day) or to another time series of interest to which it is correlated and used, e.g., to predict the number of patients admitted to urgent care units, the number of critically ill patients, or the total number of admissions, which are directly related to health needs. These models can be regionalized, that is, the predictions can be made at the local level if data are disaggregated. We show that the Verhulst and the Gompertz models provide similar results and can be also used to monitor and predict new outbreaks. However, the Verhulst model seems to be easier to interpret and to use.

Details

Database :
OpenAIRE
Journal :
Scopus, RUO. Repositorio Institucional de la Universidad de Oviedo, instname, Computational and Mathematical Methods in Medicine, Computational and Mathematical Methods in Medicine, Vol 2021 (2021)
Accession number :
edsair.doi.dedup.....e06289bcc2d21bea7cf8c788a8ba047e