A Multi-Objective Optimization Method for Hospital Admission Problem—A Case Study on Covid-19 Patients

The wide spread of Covid-19 has led to infecting a huge number of patients, simultaneously. This resulted in a massive number of requests for medical care, at the same time. During the first wave of Covid-19, many people were not able to get admitted to appropriate hospitals because of the immense n...

Full description

Bibliographic Details
Main Authors: Amr Mohamed AbdelAziz, Louai Alarabi, Saleh Basalamah, Abdeltawab Hendawi
Format: Article
Language:English
Published: MDPI AG 2021-01-01
Series:Algorithms
Subjects:
Online Access:https://www.mdpi.com/1999-4893/14/2/38
id doaj-c64ba5a6fc6646b9a3a4d38cec7a53e2
record_format Article
spelling doaj-c64ba5a6fc6646b9a3a4d38cec7a53e22021-01-28T00:01:12ZengMDPI AGAlgorithms1999-48932021-01-0114383810.3390/a14020038A Multi-Objective Optimization Method for Hospital Admission Problem—A Case Study on Covid-19 PatientsAmr Mohamed AbdelAziz0Louai Alarabi1Saleh Basalamah2Abdeltawab Hendawi3Faculty of Computers and Artificial Intelligence, Beni-Suef University, Bani Sweif 62511, EgyptDepartment of Computer Science, Umm Al-Qura University, Mecca 21421, Saudi ArabiaDepartment of Computer Engineering, Umm Al-Qura University, Mecca 21421, Saudi ArabiaDepartment of Computer Science and Statistics, University of Rhode Island, Kingston, RI 02881, USAThe wide spread of Covid-19 has led to infecting a huge number of patients, simultaneously. This resulted in a massive number of requests for medical care, at the same time. During the first wave of Covid-19, many people were not able to get admitted to appropriate hospitals because of the immense number of patients. Admitting patients to suitable hospitals can decrease the in-bed time of patients, which can lead to saving many lives. Also, optimizing the admission process can minimize the waiting time for medical care, which can save the lives of severe cases. The admission process needs to consider two main criteria: the admission time and the readiness of the hospital that will accept the patients. These two objectives convert the admission problem into a Multi-Objective Problem (MOP). Pareto Optimization (PO) is a common multi-objective optimization method that has been applied to different MOPs and showed its ability to solve them. In this paper, a PO-based algorithm is proposed to deal with admitting Covid-19 patients to hospitals. The method uses PO to vary among hospitals to choose the most suitable hospital for the patient with the least admission time. The method also considers patients with severe cases by admitting them to hospitals with the least admission time regardless of their readiness. The method has been tested over a real-life dataset that consisted of 254 patients obtained from King Faisal specialist hospital in Saudi Arabia. The method was compared with the lexicographic multi-objective optimization method regarding admission time and accuracy. The proposed method showed its superiority over the lexicographic method regarding the two criteria, which makes it a good candidate for real-life admission systems.https://www.mdpi.com/1999-4893/14/2/38multi-objective optimizationsmart healthhospital use
collection DOAJ
language English
format Article
sources DOAJ
author Amr Mohamed AbdelAziz
Louai Alarabi
Saleh Basalamah
Abdeltawab Hendawi
spellingShingle Amr Mohamed AbdelAziz
Louai Alarabi
Saleh Basalamah
Abdeltawab Hendawi
A Multi-Objective Optimization Method for Hospital Admission Problem—A Case Study on Covid-19 Patients
Algorithms
multi-objective optimization
smart health
hospital use
author_facet Amr Mohamed AbdelAziz
Louai Alarabi
Saleh Basalamah
Abdeltawab Hendawi
author_sort Amr Mohamed AbdelAziz
title A Multi-Objective Optimization Method for Hospital Admission Problem—A Case Study on Covid-19 Patients
title_short A Multi-Objective Optimization Method for Hospital Admission Problem—A Case Study on Covid-19 Patients
title_full A Multi-Objective Optimization Method for Hospital Admission Problem—A Case Study on Covid-19 Patients
title_fullStr A Multi-Objective Optimization Method for Hospital Admission Problem—A Case Study on Covid-19 Patients
title_full_unstemmed A Multi-Objective Optimization Method for Hospital Admission Problem—A Case Study on Covid-19 Patients
title_sort multi-objective optimization method for hospital admission problem—a case study on covid-19 patients
publisher MDPI AG
series Algorithms
issn 1999-4893
publishDate 2021-01-01
description The wide spread of Covid-19 has led to infecting a huge number of patients, simultaneously. This resulted in a massive number of requests for medical care, at the same time. During the first wave of Covid-19, many people were not able to get admitted to appropriate hospitals because of the immense number of patients. Admitting patients to suitable hospitals can decrease the in-bed time of patients, which can lead to saving many lives. Also, optimizing the admission process can minimize the waiting time for medical care, which can save the lives of severe cases. The admission process needs to consider two main criteria: the admission time and the readiness of the hospital that will accept the patients. These two objectives convert the admission problem into a Multi-Objective Problem (MOP). Pareto Optimization (PO) is a common multi-objective optimization method that has been applied to different MOPs and showed its ability to solve them. In this paper, a PO-based algorithm is proposed to deal with admitting Covid-19 patients to hospitals. The method uses PO to vary among hospitals to choose the most suitable hospital for the patient with the least admission time. The method also considers patients with severe cases by admitting them to hospitals with the least admission time regardless of their readiness. The method has been tested over a real-life dataset that consisted of 254 patients obtained from King Faisal specialist hospital in Saudi Arabia. The method was compared with the lexicographic multi-objective optimization method regarding admission time and accuracy. The proposed method showed its superiority over the lexicographic method regarding the two criteria, which makes it a good candidate for real-life admission systems.
topic multi-objective optimization
smart health
hospital use
url https://www.mdpi.com/1999-4893/14/2/38
work_keys_str_mv AT amrmohamedabdelaziz amultiobjectiveoptimizationmethodforhospitaladmissionproblemacasestudyoncovid19patients
AT louaialarabi amultiobjectiveoptimizationmethodforhospitaladmissionproblemacasestudyoncovid19patients
AT salehbasalamah amultiobjectiveoptimizationmethodforhospitaladmissionproblemacasestudyoncovid19patients
AT abdeltawabhendawi amultiobjectiveoptimizationmethodforhospitaladmissionproblemacasestudyoncovid19patients
AT amrmohamedabdelaziz multiobjectiveoptimizationmethodforhospitaladmissionproblemacasestudyoncovid19patients
AT louaialarabi multiobjectiveoptimizationmethodforhospitaladmissionproblemacasestudyoncovid19patients
AT salehbasalamah multiobjectiveoptimizationmethodforhospitaladmissionproblemacasestudyoncovid19patients
AT abdeltawabhendawi multiobjectiveoptimizationmethodforhospitaladmissionproblemacasestudyoncovid19patients
_version_ 1724320376749555712