Due to the recent evolution of the COVID-19 outbreak, the scientific community is making efforts to analyse models for understanding the present situation and for predicting future scenarios. In this paper, we propose a forced Susceptible-Exposed-Infected-Recovered-Dead (fSEIRD) differential model for the analysis and forecast of the COVID-19 spread in Italian regions, using the data from the Italian Protezione Civile (Italian Civil Protection Department) from 24/02/2020. In this study, we investigate an adaptation of fSEIRD by proposing two different piecewise time-dependent infection rate functions to fit the current epidemic data affected by progressive movement restriction policies put in place by the Italian government. The proposed models are flexible and can be quickly adapted to monitor various epidemic scenarios. Results on the regions of Lombardia and Emilia-Romagna confirm that the proposed models fit the data very accurately and make reliable predictions.

Monitoring Italian COVID-19 spread by a forced SEIRD model / Loli Piccolomini, Elena; Zama, Fabiana. - In: PLOS ONE. - ISSN 1932-6203. - STAMPA. - 15:8(2020), pp. e0237417.1-e0237417.17. [10.1371/journal.pone.0237417]

Monitoring Italian COVID-19 spread by a forced SEIRD model

Loli Piccolomini, Elena;Zama, Fabiana
2020

Abstract

Due to the recent evolution of the COVID-19 outbreak, the scientific community is making efforts to analyse models for understanding the present situation and for predicting future scenarios. In this paper, we propose a forced Susceptible-Exposed-Infected-Recovered-Dead (fSEIRD) differential model for the analysis and forecast of the COVID-19 spread in Italian regions, using the data from the Italian Protezione Civile (Italian Civil Protection Department) from 24/02/2020. In this study, we investigate an adaptation of fSEIRD by proposing two different piecewise time-dependent infection rate functions to fit the current epidemic data affected by progressive movement restriction policies put in place by the Italian government. The proposed models are flexible and can be quickly adapted to monitor various epidemic scenarios. Results on the regions of Lombardia and Emilia-Romagna confirm that the proposed models fit the data very accurately and make reliable predictions.
2020
Monitoring Italian COVID-19 spread by a forced SEIRD model / Loli Piccolomini, Elena; Zama, Fabiana. - In: PLOS ONE. - ISSN 1932-6203. - STAMPA. - 15:8(2020), pp. e0237417.1-e0237417.17. [10.1371/journal.pone.0237417]
Loli Piccolomini, Elena; Zama, Fabiana
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11585/786878
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