Classification and detection of Covid-19 based on X-Ray and CT images using deep learning and machine learning techniques: A bibliometric analysis

During the COVID-19 pandemic, it was crucial for the healthcare sector to detect and classify the virus using X-ray and CT scans. This has underlined the need for advanced Deep Learning and Machine Learning approaches to effectively spot and manage the virus's spread. Indeed, researchers worldw...

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Main Authors: Youness Chawki, Khalid Elasnaoui, Mohamed Ouhda
Format: Article
Language:English
Published: AIMS Press 2024-03-01
Series:AIMS Electronics and Electrical Engineering
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Online Access:https://www.aimspress.com/article/doi/10.3934/electreng.2024004
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author Youness Chawki
Khalid Elasnaoui
Mohamed Ouhda
author_facet Youness Chawki
Khalid Elasnaoui
Mohamed Ouhda
author_sort Youness Chawki
collection DOAJ
description During the COVID-19 pandemic, it was crucial for the healthcare sector to detect and classify the virus using X-ray and CT scans. This has underlined the need for advanced Deep Learning and Machine Learning approaches to effectively spot and manage the virus's spread. Indeed, researchers worldwide have dynamically participated in the field by publishing an important number of papers across various databases. In this context, we present a bibliometric analysis focused on the detection and classification of COVID-19 using Deep Learning and Machine Learning techniques, based on X-Ray and CT images. We analyzed published documents of the six prominent databases (IEEE Xplore, ACM, MDPI, PubMed, Springer, and ScienceDirect) during the period between 2019 and November 2023. Our results showed that rising forces in economy and technology, especially India, China, Turkey, and Pakistan, began to compete with the great powers in the field of scientific research, which could be seen from their number of publications. Moreover, researchers contributed to Deep Learning techniques more than the use of Machine Learning techniques or the use of both together and preferred to submit their works to Springer Database. An important result was that more than 57% documents were published as Journal Articles, which was an important portion compared to other publication types (conference papers and book chapters). Moreover, the PubMed journal 'Multimedia Tools and Applications' tops the list of journals with a total of 29 published articles.
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series AIMS Electronics and Electrical Engineering
spelling doaj-art-a76c0be5a99e495797866d019edf15a52025-01-24T01:10:21ZengAIMS PressAIMS Electronics and Electrical Engineering2578-15882024-03-01817110310.3934/electreng.2024004Classification and detection of Covid-19 based on X-Ray and CT images using deep learning and machine learning techniques: A bibliometric analysisYouness Chawki0Khalid Elasnaoui1Mohamed Ouhda2Moulay Ismail University, Faculty of Sciences and Techniques, Errachidia, MoroccoMohammed First University, ENSAO, SmartICT Lab, Oujda, MoroccoSultan Moulay Slimane University, Higher School of Technology, Department of Computer and Mathematics, TIAD Laboratory, Khenifra, MoroccoDuring the COVID-19 pandemic, it was crucial for the healthcare sector to detect and classify the virus using X-ray and CT scans. This has underlined the need for advanced Deep Learning and Machine Learning approaches to effectively spot and manage the virus's spread. Indeed, researchers worldwide have dynamically participated in the field by publishing an important number of papers across various databases. In this context, we present a bibliometric analysis focused on the detection and classification of COVID-19 using Deep Learning and Machine Learning techniques, based on X-Ray and CT images. We analyzed published documents of the six prominent databases (IEEE Xplore, ACM, MDPI, PubMed, Springer, and ScienceDirect) during the period between 2019 and November 2023. Our results showed that rising forces in economy and technology, especially India, China, Turkey, and Pakistan, began to compete with the great powers in the field of scientific research, which could be seen from their number of publications. Moreover, researchers contributed to Deep Learning techniques more than the use of Machine Learning techniques or the use of both together and preferred to submit their works to Springer Database. An important result was that more than 57% documents were published as Journal Articles, which was an important portion compared to other publication types (conference papers and book chapters). Moreover, the PubMed journal 'Multimedia Tools and Applications' tops the list of journals with a total of 29 published articles.https://www.aimspress.com/article/doi/10.3934/electreng.2024004covid-19x-ray imagescomputed tomography scanclassificationdetectionmachine learningdeep learning
spellingShingle Youness Chawki
Khalid Elasnaoui
Mohamed Ouhda
Classification and detection of Covid-19 based on X-Ray and CT images using deep learning and machine learning techniques: A bibliometric analysis
AIMS Electronics and Electrical Engineering
covid-19
x-ray images
computed tomography scan
classification
detection
machine learning
deep learning
title Classification and detection of Covid-19 based on X-Ray and CT images using deep learning and machine learning techniques: A bibliometric analysis
title_full Classification and detection of Covid-19 based on X-Ray and CT images using deep learning and machine learning techniques: A bibliometric analysis
title_fullStr Classification and detection of Covid-19 based on X-Ray and CT images using deep learning and machine learning techniques: A bibliometric analysis
title_full_unstemmed Classification and detection of Covid-19 based on X-Ray and CT images using deep learning and machine learning techniques: A bibliometric analysis
title_short Classification and detection of Covid-19 based on X-Ray and CT images using deep learning and machine learning techniques: A bibliometric analysis
title_sort classification and detection of covid 19 based on x ray and ct images using deep learning and machine learning techniques a bibliometric analysis
topic covid-19
x-ray images
computed tomography scan
classification
detection
machine learning
deep learning
url https://www.aimspress.com/article/doi/10.3934/electreng.2024004
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AT khalidelasnaoui classificationanddetectionofcovid19basedonxrayandctimagesusingdeeplearningandmachinelearningtechniquesabibliometricanalysis
AT mohamedouhda classificationanddetectionofcovid19basedonxrayandctimagesusingdeeplearningandmachinelearningtechniquesabibliometricanalysis