Enhancing Monkeypox Detection through Data Analytics: A Comparative Study of Machine and Deep Learning Techniques

Monkeypox detection is a challenging task due to the disease's resemblance to other viral infections such as smallpox and chickenpox. This paper presents a comprehensive study that investigates the efficacy of machine and deep learning techniques in detecting monkeypox. The research utilizes mo...

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Main Authors: Kinjal A. Patel, Asadi Srinivasulu, Kuntesh Jani, Goddindla Sreenivasulu
Format: Article
Language:English
Published: Bilijipub publisher 2023-12-01
Series:Advances in Engineering and Intelligence Systems
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Online Access:https://aeis.bilijipub.com/article_186525_f983462b3e3de215f3ef921c1112eaff.pdf
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author Kinjal A. Patel
Asadi Srinivasulu
Kuntesh Jani
Goddindla Sreenivasulu
author_facet Kinjal A. Patel
Asadi Srinivasulu
Kuntesh Jani
Goddindla Sreenivasulu
author_sort Kinjal A. Patel
collection DOAJ
description Monkeypox detection is a challenging task due to the disease's resemblance to other viral infections such as smallpox and chickenpox. This paper presents a comprehensive study that investigates the efficacy of machine and deep learning techniques in detecting monkeypox. The research utilizes monkeypox detection data to train and assess the performance of various machine learning and deep learning models. The results demonstrate that deep learning models outperform traditional machine learning approaches in accurately identifying cases of monkeypox. The study emphasizes the significance of machine and deep learning techniques for enhancing the accuracy and speed of monkeypox detection. The findings highlight the potential of these advanced algorithms to aid in controlling outbreaks and curbing the transmission of the disease. By leveraging the power of data analytics, healthcare professionals can quickly and accurately identify cases of monkeypox, facilitating timely intervention and effective management strategies. This research contributes to the field of infectious disease surveillance by showcasing the advantages of employing cutting-edge machine and deep learning techniques for monkeypox detection. The study serves as a foundation for further research, encouraging the exploration of novel methodologies and the development of intelligent systems to assist healthcare providers in promptly identifying and responding to monkeypox outbreaks. Ultimately, this work aims to improve public health outcomes and mitigate the impact of monkeypox on affected populations.
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institution Kabale University
issn 2821-0263
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publishDate 2023-12-01
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spelling doaj-art-53844a34dcb3444084d5db2583f14a792025-02-12T08:47:31ZengBilijipub publisherAdvances in Engineering and Intelligence Systems2821-02632023-12-0100204688010.22034/aeis.2023.415920.1131186525Enhancing Monkeypox Detection through Data Analytics: A Comparative Study of Machine and Deep Learning TechniquesKinjal A. Patel0Asadi Srinivasulu1Kuntesh Jani2Goddindla Sreenivasulu3Faculty of Computer Applications and Information Technology, Gujarat Law Society University, Ahmedabad, Gujarat, 380006, IndiaData Science Research Lab, Blue Crest University, Monrovia, 1000, LiberiaDepartment of Information Technology, L.D. College of Engineering, Ahmedabad, Gujarat, 380015, IndiaDepartment of Biotechnology, Prathyusha Engineering College, Tamil Nadu, 602025, IndiaMonkeypox detection is a challenging task due to the disease's resemblance to other viral infections such as smallpox and chickenpox. This paper presents a comprehensive study that investigates the efficacy of machine and deep learning techniques in detecting monkeypox. The research utilizes monkeypox detection data to train and assess the performance of various machine learning and deep learning models. The results demonstrate that deep learning models outperform traditional machine learning approaches in accurately identifying cases of monkeypox. The study emphasizes the significance of machine and deep learning techniques for enhancing the accuracy and speed of monkeypox detection. The findings highlight the potential of these advanced algorithms to aid in controlling outbreaks and curbing the transmission of the disease. By leveraging the power of data analytics, healthcare professionals can quickly and accurately identify cases of monkeypox, facilitating timely intervention and effective management strategies. This research contributes to the field of infectious disease surveillance by showcasing the advantages of employing cutting-edge machine and deep learning techniques for monkeypox detection. The study serves as a foundation for further research, encouraging the exploration of novel methodologies and the development of intelligent systems to assist healthcare providers in promptly identifying and responding to monkeypox outbreaks. Ultimately, this work aims to improve public health outcomes and mitigate the impact of monkeypox on affected populations.https://aeis.bilijipub.com/article_186525_f983462b3e3de215f3ef921c1112eaff.pdfmonkeypox detectionmachine learningcomparative studycnnecnndisease surveillance
spellingShingle Kinjal A. Patel
Asadi Srinivasulu
Kuntesh Jani
Goddindla Sreenivasulu
Enhancing Monkeypox Detection through Data Analytics: A Comparative Study of Machine and Deep Learning Techniques
Advances in Engineering and Intelligence Systems
monkeypox detection
machine learning
comparative study
cnn
ecnn
disease surveillance
title Enhancing Monkeypox Detection through Data Analytics: A Comparative Study of Machine and Deep Learning Techniques
title_full Enhancing Monkeypox Detection through Data Analytics: A Comparative Study of Machine and Deep Learning Techniques
title_fullStr Enhancing Monkeypox Detection through Data Analytics: A Comparative Study of Machine and Deep Learning Techniques
title_full_unstemmed Enhancing Monkeypox Detection through Data Analytics: A Comparative Study of Machine and Deep Learning Techniques
title_short Enhancing Monkeypox Detection through Data Analytics: A Comparative Study of Machine and Deep Learning Techniques
title_sort enhancing monkeypox detection through data analytics a comparative study of machine and deep learning techniques
topic monkeypox detection
machine learning
comparative study
cnn
ecnn
disease surveillance
url https://aeis.bilijipub.com/article_186525_f983462b3e3de215f3ef921c1112eaff.pdf
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AT asadisrinivasulu enhancingmonkeypoxdetectionthroughdataanalyticsacomparativestudyofmachineanddeeplearningtechniques
AT kunteshjani enhancingmonkeypoxdetectionthroughdataanalyticsacomparativestudyofmachineanddeeplearningtechniques
AT goddindlasreenivasulu enhancingmonkeypoxdetectionthroughdataanalyticsacomparativestudyofmachineanddeeplearningtechniques