Artikel,

On the Parametrization of Epidemiologic Models—Lessons from Modelling COVID-19 Epidemic

, , und .
Viruses, (2022)
DOI: 10.3390/v14071468

Zusammenfassung

Numerous prediction models of SARS-CoV-2 pandemic were proposed in the past. Unknown parameters of these models are often estimated based on observational data. However, lag in case-reporting, changing testing policy or incompleteness of data lead to biased estimates. Moreover, parametrization is time-dependent due to changing age-structures, emerging virus variants, non-pharmaceutical interventions, and vaccination programs. To cover these aspects, we propose a principled approach to parametrize a SIR-type epidemiologic model by embedding it as a hidden layer into an input-output non-linear dynamical system (IO-NLDS). Observable data are cou…(mehr)

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