Evaluating short-term forecasting of COVID-19 cases among different epidemiological models under a Bayesian framework

Gigascience. 2021 Feb 19;10(2):giab009. doi: 10.1093/gigascience/giab009.

Abstract

Background: Forecasting of COVID-19 cases daily and weekly has been one of the challenges posed to governments and the health sector globally. To facilitate informed public health decisions, the concerned parties rely on short-term daily projections generated via predictive modeling. We calibrate stochastic variants of growth models and the standard susceptible-infectious-removed model into 1 Bayesian framework to evaluate and compare their short-term forecasts.

Results: We implement rolling-origin cross-validation to compare the short-term forecasting performance of the stochastic epidemiological models and an autoregressive moving average model across 20 countries that had the most confirmed COVID-19 cases as of August 22, 2020.

Conclusion: None of the models proved to be a gold standard across all regions, while all outperformed the autoregressive moving average model in terms of the accuracy of forecast and interpretability.

Keywords: COVID-19; SARS-CoV-2; stochastic SIR model; stochastic growth model; time-series cross-validation.

Publication types

  • Evaluation Study
  • Research Support, N.I.H., Extramural
  • Research Support, Non-U.S. Gov't

MeSH terms

  • Bayes Theorem*
  • COVID-19 / diagnosis*
  • COVID-19 / epidemiology*
  • COVID-19 / transmission
  • COVID-19 / virology
  • Humans
  • Mathematical Concepts
  • Models, Statistical*
  • Predictive Value of Tests
  • SARS-CoV-2 / isolation & purification*
  • United States / epidemiology