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Using simulation modelling and systems science to help contain COVID‐19: A systematic review

Weiwei Zhang, Shiyong Liu, Nathaniel Osgood, Hongli Zhu, Ying Qian, Peng Jia

2022Systems Research and Behavioral Science47 citationsDOIOpen Access PDF

Abstract

This study systematically reviews applications of three simulation approaches, that is, system dynamics model (SDM), agent-based model (ABM) and discrete event simulation (DES), and their hybrids in COVID-19 research and identifies theoretical and application innovations in public health. Among the 372 eligible papers, 72 focused on COVID-19 transmission dynamics, 204 evaluated both pharmaceutical and non-pharmaceutical interventions, 29 focused on the prediction of the pandemic and 67 investigated the impacts of COVID-19. ABM was used in 275 papers, followed by 54 SDM papers, 32 DES papers and 11 hybrid model papers. Evaluation and design of intervention scenarios are the most widely addressed area accounting for 55% of the four main categories, that is, the transmission of COVID-19, prediction of the pandemic, evaluation and design of intervention scenarios and societal impact assessment. The complexities in impact evaluation and intervention design demand hybrid simulation models that can simultaneously capture micro and macro aspects of the socio-economic systems involved.

Topics & Concepts

Coronavirus disease 2019 (COVID-19)Computer sciencePandemicIntervention (counseling)Management scienceDiscrete event simulationPsychological interventionRisk analysis (engineering)MacroOperations researchData scienceSystems engineeringSimulationEngineeringPsychologyMedicinePathologyProgramming languagePsychiatryDiseaseInfectious disease (medical specialty)COVID-19 epidemiological studiesComplex Systems and Decision MakingHealthcare Operations and Scheduling Optimization