Ensemble deep models for covid-19 pandemic classification using chest x-ray images via different fusion techniques

A pandemic epidemic called the coronavirus (COVID-19) has already afflicted people all across the world. Radiologists can visually detect coronavirus infection using a chest X-ray. This study examines two methods for categorizing COVID-19 patients based on chest x-rays: pure deep learning and tradit...

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Main Authors: Lamiaa Menshawy, Ahmad H Eid, Rehab F Abdel-Kader
Format: Article
Language:English
Published: Universitas Ahmad Dahlan 2023-03-01
Series:IJAIN (International Journal of Advances in Intelligent Informatics)
Subjects:
Online Access:http://ijain.org/index.php/IJAIN/article/view/922
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author Lamiaa Menshawy
Ahmad H Eid
Rehab F Abdel-Kader
author_facet Lamiaa Menshawy
Ahmad H Eid
Rehab F Abdel-Kader
author_sort Lamiaa Menshawy
collection DOAJ
description A pandemic epidemic called the coronavirus (COVID-19) has already afflicted people all across the world. Radiologists can visually detect coronavirus infection using a chest X-ray. This study examines two methods for categorizing COVID-19 patients based on chest x-rays: pure deep learning and traditional machine learning. In the first model, three deep learning classifiers' decisions are combined using two distinct decision fusion strategies (majority voting and Bayes optimal). To enhance classification performance, the second model merges the ideas of decision and feature fusion. Using the fusion procedure, feature vectors from deep learning models generate a feature set. The classification metrics of conventional machine learning classifiers were then optimized using a voting classifier. The first proposed model performs better than the second model when it concerns diagnosing binary and multiclass classification. The first model obtains an AUC of 0.998 for multi-class classification and 0.9755 for binary classification. The second model obtains a binary classification AUC of 0.9563 and a multiclass classification AUC of 0.968. The suggested models perform better than both the standard learners and state-of-the-art and state-of-the-art methods.
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spelling doaj.art-21197f23be9c4449ac4818b7ed5cf9352023-04-03T19:51:32ZengUniversitas Ahmad DahlanIJAIN (International Journal of Advances in Intelligent Informatics)2442-65712548-31612023-03-0191516510.26555/ijain.v9i1.922228Ensemble deep models for covid-19 pandemic classification using chest x-ray images via different fusion techniquesLamiaa Menshawy0Ahmad H Eid1Rehab F Abdel-Kader2Technology and Information systems department, Port Said UniversityElectrical Engineering department, Port Said UniversityElectrical Engineering department, Port Said UniversityA pandemic epidemic called the coronavirus (COVID-19) has already afflicted people all across the world. Radiologists can visually detect coronavirus infection using a chest X-ray. This study examines two methods for categorizing COVID-19 patients based on chest x-rays: pure deep learning and traditional machine learning. In the first model, three deep learning classifiers' decisions are combined using two distinct decision fusion strategies (majority voting and Bayes optimal). To enhance classification performance, the second model merges the ideas of decision and feature fusion. Using the fusion procedure, feature vectors from deep learning models generate a feature set. The classification metrics of conventional machine learning classifiers were then optimized using a voting classifier. The first proposed model performs better than the second model when it concerns diagnosing binary and multiclass classification. The first model obtains an AUC of 0.998 for multi-class classification and 0.9755 for binary classification. The second model obtains a binary classification AUC of 0.9563 and a multiclass classification AUC of 0.968. The suggested models perform better than both the standard learners and state-of-the-art and state-of-the-art methods.http://ijain.org/index.php/IJAIN/article/view/922coronavirus (covid-19)deep learningmachine learningdecision fusionfeature fusion
spellingShingle Lamiaa Menshawy
Ahmad H Eid
Rehab F Abdel-Kader
Ensemble deep models for covid-19 pandemic classification using chest x-ray images via different fusion techniques
IJAIN (International Journal of Advances in Intelligent Informatics)
coronavirus (covid-19)
deep learning
machine learning
decision fusion
feature fusion
title Ensemble deep models for covid-19 pandemic classification using chest x-ray images via different fusion techniques
title_full Ensemble deep models for covid-19 pandemic classification using chest x-ray images via different fusion techniques
title_fullStr Ensemble deep models for covid-19 pandemic classification using chest x-ray images via different fusion techniques
title_full_unstemmed Ensemble deep models for covid-19 pandemic classification using chest x-ray images via different fusion techniques
title_short Ensemble deep models for covid-19 pandemic classification using chest x-ray images via different fusion techniques
title_sort ensemble deep models for covid 19 pandemic classification using chest x ray images via different fusion techniques
topic coronavirus (covid-19)
deep learning
machine learning
decision fusion
feature fusion
url http://ijain.org/index.php/IJAIN/article/view/922
work_keys_str_mv AT lamiaamenshawy ensembledeepmodelsforcovid19pandemicclassificationusingchestxrayimagesviadifferentfusiontechniques
AT ahmadheid ensembledeepmodelsforcovid19pandemicclassificationusingchestxrayimagesviadifferentfusiontechniques
AT rehabfabdelkader ensembledeepmodelsforcovid19pandemicclassificationusingchestxrayimagesviadifferentfusiontechniques