We propose a way to model the underdetection of infected and removed individuals in a compartmental model for estimating the COVID-19 epidemic. The proposed approach is demonstrated on a stochastic SIR model, specified as a system of stochastic differential equations, to analyse datafrom the Italian COVID-19 epidemic. We find that a correct assessment of the amount of underdetection is important to obtain reliable estimates of the critical model parameters. The adaptation of the model in each time interval between relevant government decrees implementing contagionmitigation measures provides short-term predictions and a continuously updated assessment of the basic reproduction number.
Underdetection in a stochastic SIR model for the analysis of the COVID-19 Italian epidemic
A Bodini;S Pasquali;A Pievatolo;F Ruggeri
2022
Abstract
We propose a way to model the underdetection of infected and removed individuals in a compartmental model for estimating the COVID-19 epidemic. The proposed approach is demonstrated on a stochastic SIR model, specified as a system of stochastic differential equations, to analyse datafrom the Italian COVID-19 epidemic. We find that a correct assessment of the amount of underdetection is important to obtain reliable estimates of the critical model parameters. The adaptation of the model in each time interval between relevant government decrees implementing contagionmitigation measures provides short-term predictions and a continuously updated assessment of the basic reproduction number.File | Dimensione | Formato | |
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Descrizione: Underdetection in a stochastic SIR model for the analysis of the COVID-19 Italian epidemic
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