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

Viruses. 2022 Jul 2;14(7):1468. doi: 10.3390/v14071468.

Abstract

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 coupled to hidden states of the model by appropriate data models considering possible biases of the data. This includes data issues such as known delays or biases in reporting. We estimate model parameters including their time-dependence by a Bayesian knowledge synthesis process considering parameter ranges derived from external studies as prior information. We applied this approach on a specific SIR-type model and data of Germany and Saxony demonstrating good prediction performances. Our approach can estimate and compare the relative effectiveness of non-pharmaceutical interventions and provide scenarios of the future course of the epidemic under specified conditions. It can be translated to other data sets, i.e., other countries and other SIR-type models.

Keywords: Bayesian knowledge synthesis; COVID-19 epidemiologic models; extended multi-compartment SIR-type model; input-output non-linear dynamical system; parametrization.

Publication types

  • Research Support, Non-U.S. Gov't

MeSH terms

  • Bayes Theorem
  • COVID-19* / epidemiology
  • COVID-19* / prevention & control
  • Forecasting
  • Humans
  • Pandemics / prevention & control
  • SARS-CoV-2

Grants and funding

This project was funded in the framework of the project SaxoCOV (Saxonian COVID-19 Research Consortium). SaxoCOV was financed by the Free State of Saxony. Presentation of data, model results and simulations were funded by the NFDI4Health Task Force COVID-19 (www.nfdi4health.de/task-force-covid-19-2, accessed on 20 June 2022) within the framework of a DFG-project (LO-342/17-1). Epidemiological modeling was also supported by the German Federal Ministry of Education and Research (BMBF) within the framework of the e:Med line of funding (CAPSyS, grant number 01ZX1304A) and the project PROGNOSIS (grant number #031L0296A).