Optimization in the Context of COVID-19 Prediction and Control: A Literature Review
This paper presents an overview of some key results from a body of optimization studies that are specifically related to COVID-19, as reported in the literature during 2020-2021. As shown in this paper, optimization studies in the context of COVID-19 have been used for many aspects of the pandemic....
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doaj-aee0ad37fe5d4be48174fd3960e2e5512021-09-27T23:00:28ZengIEEEIEEE Access2169-35362021-01-01913007213009310.1109/ACCESS.2021.31138129540842Optimization in the Context of COVID-19 Prediction and Control: A Literature ReviewElizabeth Jordan0https://orcid.org/0000-0002-8773-0203Delia E. Shin1Surbhi Leekha2Shapour Azarm3https://orcid.org/0000-0001-5248-6266Department of Mechanical Engineering, University of Maryland, College Park, MD, USADepartment of Mechanical Engineering, University of Maryland, College Park, MD, USADepartment of Epidemiology and Public Health, University of Maryland School of Medicine, Baltimore, MD, USADepartment of Mechanical Engineering, University of Maryland, College Park, MD, USAThis paper presents an overview of some key results from a body of optimization studies that are specifically related to COVID-19, as reported in the literature during 2020-2021. As shown in this paper, optimization studies in the context of COVID-19 have been used for many aspects of the pandemic. From these studies, it is observed that since COVID-19 is a multifaceted problem, it cannot be studied from a single perspective or framework, and neither can the related optimization models. Four new and different frameworks are proposed that capture the essence of analyzing COVID-19 (or any pandemic for that matter) and the relevant optimization models. These are: (i) microscale vs. macroscale perspective; (ii) early stages vs. later stages perspective; (iii) aspects with direct vs. indirect relationship to COVID-19; and (iv) compartmentalized perspective. To limit the scope of the review, only optimization studies related to the prediction and control of COVID-19 are considered (public health focused), and which utilize formal optimization techniques or machine learning approaches. In this context and to the best of our knowledge, this survey paper is the first in the literature with a focus on the prediction and control related optimization studies. These studies include optimization of screening testing strategies, prediction, prevention and control, resource management, vaccination prioritization, and decision support tools. Upon reviewing the literature, this paper identifies current gaps and major challenges that hinder the closure of these gaps and provides some insights into future research directions.https://ieeexplore.ieee.org/document/9540842/OptimizationCOVID-19decision supportscreening testingpredictionprevention |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Elizabeth Jordan Delia E. Shin Surbhi Leekha Shapour Azarm |
spellingShingle |
Elizabeth Jordan Delia E. Shin Surbhi Leekha Shapour Azarm Optimization in the Context of COVID-19 Prediction and Control: A Literature Review IEEE Access Optimization COVID-19 decision support screening testing prediction prevention |
author_facet |
Elizabeth Jordan Delia E. Shin Surbhi Leekha Shapour Azarm |
author_sort |
Elizabeth Jordan |
title |
Optimization in the Context of COVID-19 Prediction and Control: A Literature Review |
title_short |
Optimization in the Context of COVID-19 Prediction and Control: A Literature Review |
title_full |
Optimization in the Context of COVID-19 Prediction and Control: A Literature Review |
title_fullStr |
Optimization in the Context of COVID-19 Prediction and Control: A Literature Review |
title_full_unstemmed |
Optimization in the Context of COVID-19 Prediction and Control: A Literature Review |
title_sort |
optimization in the context of covid-19 prediction and control: a literature review |
publisher |
IEEE |
series |
IEEE Access |
issn |
2169-3536 |
publishDate |
2021-01-01 |
description |
This paper presents an overview of some key results from a body of optimization studies that are specifically related to COVID-19, as reported in the literature during 2020-2021. As shown in this paper, optimization studies in the context of COVID-19 have been used for many aspects of the pandemic. From these studies, it is observed that since COVID-19 is a multifaceted problem, it cannot be studied from a single perspective or framework, and neither can the related optimization models. Four new and different frameworks are proposed that capture the essence of analyzing COVID-19 (or any pandemic for that matter) and the relevant optimization models. These are: (i) microscale vs. macroscale perspective; (ii) early stages vs. later stages perspective; (iii) aspects with direct vs. indirect relationship to COVID-19; and (iv) compartmentalized perspective. To limit the scope of the review, only optimization studies related to the prediction and control of COVID-19 are considered (public health focused), and which utilize formal optimization techniques or machine learning approaches. In this context and to the best of our knowledge, this survey paper is the first in the literature with a focus on the prediction and control related optimization studies. These studies include optimization of screening testing strategies, prediction, prevention and control, resource management, vaccination prioritization, and decision support tools. Upon reviewing the literature, this paper identifies current gaps and major challenges that hinder the closure of these gaps and provides some insights into future research directions. |
topic |
Optimization COVID-19 decision support screening testing prediction prevention |
url |
https://ieeexplore.ieee.org/document/9540842/ |
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