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Optimal Evaluation of Re-opening Policies for COVID-19 Through the Use of Metaheuristic Schemes

Overview
Journal Appl Math Model
Date 2023 May 26
PMID 37234701
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Abstract

A new contagious disease or unidentified COVID-19 variants could provoke a new collapse in the global economy. Under such conditions, companies, factories, and organizations must adopt reopening policies that allow their operations to reduce economic effects. Effective reopening policies should be designed using mathematical models that emulate infection chains through individual interactions. In contrast to other modeling approaches, agent-based schemes represent a computational paradigm used to characterize the person-to-person interactions of individuals inside a system, providing accurate simulation results. To evaluate the optimal conditions for a reopening policy, authorities and decision-makers need to conduct an extensive number of simulations manually, with a high possibility of losing information and important details. For this reason, the integration of optimization and simulation of reopening policies could automatically find the realistic scenario under which the lowest risk of infection was attained. In this paper, the metaheuristic technique of the Whale Optimization Algorithm is used to find the solution with the minimal transmission risk produced by an agent-based model that emulates a hypothetical re-opening context. Our scheme finds the optimal results of different generical activation scenarios. The experimental results indicate that our approach delivers practical knowledge and essential estimations for identifying optimal re-opening strategies with the lowest transmission risk.

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References
1.
Hamid S, Mir M, Rohela G . Novel coronavirus disease (COVID-19): a pandemic (epidemiology, pathogenesis and potential therapeutics). New Microbes New Infect. 2020; 35:100679. PMC: 7171518. DOI: 10.1016/j.nmni.2020.100679. View

2.
Li G, Hu R, Gu X . A close-up on COVID-19 and cardiovascular diseases. Nutr Metab Cardiovasc Dis. 2020; 30(7):1057-1060. PMC: 7141632. DOI: 10.1016/j.numecd.2020.04.001. View

3.
Iacus S, Natale F, Santamaria C, Spyratos S, Vespe M . Estimating and projecting air passenger traffic during the COVID-19 coronavirus outbreak and its socio-economic impact. Saf Sci. 2020; 129:104791. PMC: 7200368. DOI: 10.1016/j.ssci.2020.104791. View

4.
Callaway E . COVID super-immunity: one of the pandemic's great puzzles. Nature. 2021; 598(7881):393-394. DOI: 10.1038/d41586-021-02795-x. View

5.
Roda W, Varughese M, Han D, Li M . Why is it difficult to accurately predict the COVID-19 epidemic?. Infect Dis Model. 2020; 5:271-281. PMC: 7104073. DOI: 10.1016/j.idm.2020.03.001. View