Estimate of the rate of unreported COVID-19 cases during the first outbreak in Rio de Janeiro

Autor: L.M. Moschen, Roberto Guglielmi, Maria Soledad Aronna
Rok vydání: 2022
Předmět:
Zdroj: Infectious Disease Modelling. 7:317-332
ISSN: 2468-0427
Popis: In this work we fit an epidemiological model SEIAQR (Susceptible - Exposed - Infectious - Asymptomatic - Quarantined - Removed) to the data of the first COVID-19 outbreak in Rio de Janeiro, Brazil. Particular emphasis is given to the unreported rate, that is, the proportion of infected individuals that is not detected by the health system. The evaluation of the parameters of the model is based on a combination of error-weighted least squares method and appropriate B-splines. The structural and practical identifiability is analyzed to support the feasibility and robustness of the parameters’ estimation. We use the bootstrap method to quantify the uncertainty of the estimates. For the outbreak of March-July 2020 in Rio de Janeiro, we estimate about 90% of unreported cases, with a 95% confidence interval (85%, 93%).
Databáze: OpenAIRE