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Augmenting Internet of Medical Things Security: Deep Ensemble Integration and Methodological Fusion

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dc.rights.license CC BY eng
dc.contributor.author Naeem, Hamad cze
dc.contributor.author Alsirhani, A. cze
dc.contributor.author Alserhani, F.M. cze
dc.contributor.author Ullah, F. cze
dc.contributor.author Krejcar, Ondřej cze
dc.date.accessioned 2025-12-05T15:17:33Z
dc.date.available 2025-12-05T15:17:33Z
dc.date.issued 2024 eng
dc.identifier.issn 1526-1492 eng
dc.identifier.uri http://hdl.handle.net/20.500.12603/2239
dc.description.abstract When it comes to smart healthcare business systems, network-based intrusion detection systems are crucial for protecting the system and its networks from malicious network assaults. To protect IoMT devices and networks in healthcare and medical settings, our proposed model serves as a powerful tool for monitoring IoMT networks. This study presents a robust methodology for intrusion detection in Internet of Medical Things (IoMT) environments, integrating data augmentation, feature selection, and ensemble learning to effectively handle IoMT data complexity. Following rigorous preprocessing, including feature extraction, correlation removal, and Recursive Feature Elimination (RFE), selected features are standardized and reshaped for deep learning models. Augmentation using the BAT algorithm enhances dataset variability. Three deep learning models, Transformer-based neural networks, self-attention Deep Convolutional Neural Networks (DCNNs), and Long Short-Term Memory (LSTM) networks, are trained to capture diverse data aspects. Their predictions form a meta-feature set for a subsequent meta-learner, which combines model strengths. Conventional classifiers validate meta-learner features for broad algorithm suitability. This comprehensive method demonstrates high accuracy and robustness in IoMT intrusion detection. Evaluations were conducted using two datasets: the publicly available WUSTL-EHMS-2020 dataset, which contains two distinct categories, and the CICIoMT2024 dataset, encompassing sixteen categories. Experimental results showcase the method’s exceptional performance, achieving optimal scores of 100% on the WUSTL-EHMS-2020 dataset and 99% on the CICIoMT2024. Copyright © 2024 The Authors. Published by Tech Science Press. eng
dc.format p. 2185-2223 eng
dc.language.iso eng eng
dc.publisher Tech Science Press eng
dc.relation.ispartof Computer Modeling in Engineering & Sciences, volume 141, issue: 3 eng
dc.subject BAT augmentation eng
dc.subject Cyberattack eng
dc.subject ensemble learning eng
dc.subject feature selection eng
dc.subject intrusion detection eng
dc.subject machine learning eng
dc.subject smart cities eng
dc.title Augmenting Internet of Medical Things Security: Deep Ensemble Integration and Methodological Fusion eng
dc.type article eng
dc.identifier.obd 43881447 eng
dc.identifier.doi 10.32604/cmes.2024.056308 eng
dc.publicationstatus postprint eng
dc.peerreviewed yes eng
dc.source.url https://www.techscience.com/CMES/v141n3/58509 cze
dc.relation.publisherversion https://www.techscience.com/CMES/v141n3/58509 eng
dc.rights.access Open Access eng


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