Performance Analysis of Selected Decision Tree Algorithms for Predicting Drug Adverse Reaction among COVID-19 Hospitalized Patients

Increase in drug allergies and unpleasant adverse effects caused by COVID-19 medication therapies has doubled the need for computing technologies and intelligent systems for predicting poor medication outcomes. This study aimed to construct machine learning (ML) based prediction models to better pre...

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Main Authors: Nopour, R., Mashoufi, M., Amraei, M., Mehrabi, N., Mohammadnia, A., Mahdavi, A., Mirani, N., Saki, M., Shanbehzadeh, M.
Format: Article in Journal/Newspaper
Language:unknown
Published: 2022
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Online Access:http://eprints.medilam.ac.ir/4117/
https://www.scopus.com/inward/record.uri?eid=2-s2.0-85128531384&doi=10.26655%2fJMCHEMSCI.2022.4.7&partnerID=40&md5=361f08d0df024ebd6a034aa70db43053
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spelling ftilamunivms:oai:eprints.medilam.ac.ir:4117 2023-09-05T13:22:56+02:00 Performance Analysis of Selected Decision Tree Algorithms for Predicting Drug Adverse Reaction among COVID-19 Hospitalized Patients Nopour, R. Mashoufi, M. Amraei, M. Mehrabi, N. Mohammadnia, A. Mahdavi, A. Mirani, N. Saki, M. Shanbehzadeh, M. 2022 http://eprints.medilam.ac.ir/4117/ https://www.scopus.com/inward/record.uri?eid=2-s2.0-85128531384&doi=10.26655%2fJMCHEMSCI.2022.4.7&partnerID=40&md5=361f08d0df024ebd6a034aa70db43053 unknown (2022) Performance Analysis of Selected Decision Tree Algorithms for Predicting Drug Adverse Reaction among COVID-19 Hospitalized Patients. Journal of Medicinal and Chemical Sciences. pp. 505-517. ISSN 26514702 (ISSN) Article PeerReviewed 2022 ftilamunivms 2023-08-11T12:13:23Z Increase in drug allergies and unpleasant adverse effects caused by COVID-19 medication therapies has doubled the need for computing technologies and intelligent systems for predicting poor medication outcomes. This study aimed to construct machine learning (ML) based prediction models to better predict adverse drug effects among COVID-19 hospitalized patients. In this retrospective and single-center study, 482 hospitalized COVID-19 patients were used for analysis. First, the Chi-square test was employed to determine the most critical factors predicting adverse drug effects at P<0.05. Second, the four selected decision tree (DT) algorithms were applied to implement the model. Finally, the best DT model was acquired for predicting adverse drug effects using various performance criteria. This study showed that the 18 variables gained the Chi-square at P<0.05 as the most important factors predicting adverse drug reactions. Besides, comparing the performance of selected algorithms demonstrated that generally, the J-48 algorithm with F-Score=94.6 and AUC=0.957 was the best classifier predicting adverse drug reactions among hospitalized COVID-19 patients. Finally, it found that the J-48 algorithm enables a reasonable level of accuracy in predicting the risk of harmful drug effects among COVID-19 hospitalized patients. It potentially facilitates identifying high-risk patients and informing proper interventions by the clinicians. © 2022 by SPC (Sami Publishing Company) Article in Journal/Newspaper sami Ilam University of Medical Sciences: Research Repository Portal of Medilam
institution Open Polar
collection Ilam University of Medical Sciences: Research Repository Portal of Medilam
op_collection_id ftilamunivms
language unknown
description Increase in drug allergies and unpleasant adverse effects caused by COVID-19 medication therapies has doubled the need for computing technologies and intelligent systems for predicting poor medication outcomes. This study aimed to construct machine learning (ML) based prediction models to better predict adverse drug effects among COVID-19 hospitalized patients. In this retrospective and single-center study, 482 hospitalized COVID-19 patients were used for analysis. First, the Chi-square test was employed to determine the most critical factors predicting adverse drug effects at P<0.05. Second, the four selected decision tree (DT) algorithms were applied to implement the model. Finally, the best DT model was acquired for predicting adverse drug effects using various performance criteria. This study showed that the 18 variables gained the Chi-square at P<0.05 as the most important factors predicting adverse drug reactions. Besides, comparing the performance of selected algorithms demonstrated that generally, the J-48 algorithm with F-Score=94.6 and AUC=0.957 was the best classifier predicting adverse drug reactions among hospitalized COVID-19 patients. Finally, it found that the J-48 algorithm enables a reasonable level of accuracy in predicting the risk of harmful drug effects among COVID-19 hospitalized patients. It potentially facilitates identifying high-risk patients and informing proper interventions by the clinicians. © 2022 by SPC (Sami Publishing Company)
format Article in Journal/Newspaper
author Nopour, R.
Mashoufi, M.
Amraei, M.
Mehrabi, N.
Mohammadnia, A.
Mahdavi, A.
Mirani, N.
Saki, M.
Shanbehzadeh, M.
spellingShingle Nopour, R.
Mashoufi, M.
Amraei, M.
Mehrabi, N.
Mohammadnia, A.
Mahdavi, A.
Mirani, N.
Saki, M.
Shanbehzadeh, M.
Performance Analysis of Selected Decision Tree Algorithms for Predicting Drug Adverse Reaction among COVID-19 Hospitalized Patients
author_facet Nopour, R.
Mashoufi, M.
Amraei, M.
Mehrabi, N.
Mohammadnia, A.
Mahdavi, A.
Mirani, N.
Saki, M.
Shanbehzadeh, M.
author_sort Nopour, R.
title Performance Analysis of Selected Decision Tree Algorithms for Predicting Drug Adverse Reaction among COVID-19 Hospitalized Patients
title_short Performance Analysis of Selected Decision Tree Algorithms for Predicting Drug Adverse Reaction among COVID-19 Hospitalized Patients
title_full Performance Analysis of Selected Decision Tree Algorithms for Predicting Drug Adverse Reaction among COVID-19 Hospitalized Patients
title_fullStr Performance Analysis of Selected Decision Tree Algorithms for Predicting Drug Adverse Reaction among COVID-19 Hospitalized Patients
title_full_unstemmed Performance Analysis of Selected Decision Tree Algorithms for Predicting Drug Adverse Reaction among COVID-19 Hospitalized Patients
title_sort performance analysis of selected decision tree algorithms for predicting drug adverse reaction among covid-19 hospitalized patients
publishDate 2022
url http://eprints.medilam.ac.ir/4117/
https://www.scopus.com/inward/record.uri?eid=2-s2.0-85128531384&doi=10.26655%2fJMCHEMSCI.2022.4.7&partnerID=40&md5=361f08d0df024ebd6a034aa70db43053
genre sami
genre_facet sami
op_relation (2022) Performance Analysis of Selected Decision Tree Algorithms for Predicting Drug Adverse Reaction among COVID-19 Hospitalized Patients. Journal of Medicinal and Chemical Sciences. pp. 505-517. ISSN 26514702 (ISSN)
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