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An epidemiological forecast model and software assessing interventions on the COVID-19 epidemic in China

Lili Wang, Yiwang Zhou, Jie He, Bin Zhu, Fei Wang, Lu Tang, Michael Kleinsasser, Daniel Barker, Marisa C. Eisenberg, Peter X.‐K. Song

2021Journal of Data Science43 citationsDOIOpen Access PDF

Abstract

We develop a health informatics toolbox that enables timely analysis and evaluation of the timecourse dynamics of a range of infectious disease epidemics. As a case study, we examine the novel coronavirus (COVID-19) epidemic using the publicly available data from the China CDC. This toolbox is built upon a hierarchical epidemiological model in which two observed time series of daily proportions of infected and removed cases are generated from the underlying infection dynamics governed by a Markov Susceptible-Infectious-Removed (SIR) infectious disease process. We extend the SIR model to incorporate various types of time-varying quarantine protocols, including government-level ‘macro’ isolation policies and community-level ‘micro’ social distancing (e.g. self-isolation and self-quarantine) measures. We develop a calibration procedure for underreported infected cases. This toolbox provides forecasts, in both online and offline forms, as well as simulating the overall dynamics of the epidemic. An R software package is made available for the public, and examples on the use of this software are illustrated. Some possible extensions of our novel epidemiological models are discussed.

Topics & Concepts

Computer scienceToolboxSoftwareCoronavirus disease 2019 (COVID-19)Isolation (microbiology)Markov chainInfectious disease (medical specialty)Data scienceRisk analysis (engineering)DiseaseMedicineMachine learningProgramming languageBiologyMicrobiologyPathologyCOVID-19 epidemiological studiesMental Health Research Topics