Leveraging convolutional neural networks and hashing techniques for the secure classification of monkeypox disease

Abstract The World Health Organization declared a state of emergency in 2022 because of monkeypox. This disease has raised international concern as it has spread beyond Africa, where it is endemic. The global community has shown attention and solidarity in combating this disease as its daily increas...

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Main Authors: Essam Abdellatef, Alshimaa H. Ismail, M. I. Fath Allah, Wafaa A. Shalaby
Format: Article
Language:English
Published: Nature Portfolio 2024-11-01
Series:Scientific Reports
Subjects:
Online Access:https://doi.org/10.1038/s41598-024-75030-y
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author Essam Abdellatef
Alshimaa H. Ismail
M. I. Fath Allah
Wafaa A. Shalaby
author_facet Essam Abdellatef
Alshimaa H. Ismail
M. I. Fath Allah
Wafaa A. Shalaby
author_sort Essam Abdellatef
collection DOAJ
description Abstract The World Health Organization declared a state of emergency in 2022 because of monkeypox. This disease has raised international concern as it has spread beyond Africa, where it is endemic. The global community has shown attention and solidarity in combating this disease as its daily increase becomes evident. Various skin symptoms appear in people infected with this disease, which can spread easily, especially in a polluted environment. It is difficult to diagnose monkeypox in its early stages because of its similarity with the symptoms of other diseases such as chicken pox and measles. Recently, computer-aided classification methods such as deep learning and machine learning within artificial intelligence have been employed to detect various diseases, including COVID-19, tumor cells, and Monkeypox, in a short period and with high accuracy. In this study, we propose the CanDark model, an end-to-end deep-learning model that incorporates cancelable biometrics for diagnosing Monkeypox. CanDark stands for cancelable DarkNet-53, which means that DarkNet-53 CNN is utilized for extracting deep features from Monkeypox skin images. Then a cancelable method is applied to these features to protect patient information. Various cancelable techniques have been evaluated, such as bio-hashing, multilayer perceptron (MLP) hashing, index-of-maximum Gaussian random projection-based hashing (IoM-GRP), and index-of-maximum uniformly random permutation-based hashing (IoM-URP). The proposed approach’s performance is evaluated using various assessment issues such as accuracy, specificity, precision, recall, and fscore. Using the IoM-URP, the CanDark model is superior to other state-of-the-art Monkeypox diagnostic techniques. The proposed framework achieved an accuracy of 98.81%, a specificity of 98.73%, a precision of 98.9%, a recall of 97.02%, and fscore of 97.95%.
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spelling doaj-art-aa6da6bdbdf64d8fb5d32a56bd1e6b2b2024-11-10T12:26:23ZengNature PortfolioScientific Reports2045-23222024-11-0114112510.1038/s41598-024-75030-yLeveraging convolutional neural networks and hashing techniques for the secure classification of monkeypox diseaseEssam Abdellatef0Alshimaa H. Ismail1M. I. Fath Allah2Wafaa A. Shalaby3Department of Electrical Engineering, Faculty of Engineering, Sinai UniversityInformation Technology Department, Faculty of Computer and Informatics, Tanta UniversityDepartment of Electrical Engineering, Faculty of Engineering, Suez UniversityDepartment of Electronic and Electrical Communication Engineering, Faculty of Electronic Engineering, Menoufia UniversityAbstract The World Health Organization declared a state of emergency in 2022 because of monkeypox. This disease has raised international concern as it has spread beyond Africa, where it is endemic. The global community has shown attention and solidarity in combating this disease as its daily increase becomes evident. Various skin symptoms appear in people infected with this disease, which can spread easily, especially in a polluted environment. It is difficult to diagnose monkeypox in its early stages because of its similarity with the symptoms of other diseases such as chicken pox and measles. Recently, computer-aided classification methods such as deep learning and machine learning within artificial intelligence have been employed to detect various diseases, including COVID-19, tumor cells, and Monkeypox, in a short period and with high accuracy. In this study, we propose the CanDark model, an end-to-end deep-learning model that incorporates cancelable biometrics for diagnosing Monkeypox. CanDark stands for cancelable DarkNet-53, which means that DarkNet-53 CNN is utilized for extracting deep features from Monkeypox skin images. Then a cancelable method is applied to these features to protect patient information. Various cancelable techniques have been evaluated, such as bio-hashing, multilayer perceptron (MLP) hashing, index-of-maximum Gaussian random projection-based hashing (IoM-GRP), and index-of-maximum uniformly random permutation-based hashing (IoM-URP). The proposed approach’s performance is evaluated using various assessment issues such as accuracy, specificity, precision, recall, and fscore. Using the IoM-URP, the CanDark model is superior to other state-of-the-art Monkeypox diagnostic techniques. The proposed framework achieved an accuracy of 98.81%, a specificity of 98.73%, a precision of 98.9%, a recall of 97.02%, and fscore of 97.95%.https://doi.org/10.1038/s41598-024-75030-yMonkeypoxCancelable techniquesCNNAnd DarkNet-53
spellingShingle Essam Abdellatef
Alshimaa H. Ismail
M. I. Fath Allah
Wafaa A. Shalaby
Leveraging convolutional neural networks and hashing techniques for the secure classification of monkeypox disease
Scientific Reports
Monkeypox
Cancelable techniques
CNN
And DarkNet-53
title Leveraging convolutional neural networks and hashing techniques for the secure classification of monkeypox disease
title_full Leveraging convolutional neural networks and hashing techniques for the secure classification of monkeypox disease
title_fullStr Leveraging convolutional neural networks and hashing techniques for the secure classification of monkeypox disease
title_full_unstemmed Leveraging convolutional neural networks and hashing techniques for the secure classification of monkeypox disease
title_short Leveraging convolutional neural networks and hashing techniques for the secure classification of monkeypox disease
title_sort leveraging convolutional neural networks and hashing techniques for the secure classification of monkeypox disease
topic Monkeypox
Cancelable techniques
CNN
And DarkNet-53
url https://doi.org/10.1038/s41598-024-75030-y
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