AI Article Synopsis

  • The text suggests a new method to account for the underreporting of infected and removed individuals in a compartmental model used for studying the COVID-19 epidemic.
  • The method is applied to a stochastic SIR model, leveraging stochastic differential equations to analyze data from the COVID-19 outbreak in Italy.
  • Accurate evaluation of underreporting is crucial for reliable estimates of key model parameters, and the model adapts to changes in government restrictions to provide ongoing predictions and updates on the basic reproduction number.

Article 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 data from 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 contagion mitigation measures provides short-term predictions and a continuously updated assessment of the basic reproduction number.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC8397881PMC
http://dx.doi.org/10.1007/s00477-021-02081-2DOI Listing

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