Deep convolutional neural network based archimedes optimization algorithm for heart disease prediction based on secured IoT enabled health care monitoring system

Abstract The Internet of Things (IoT) is a rapidly evolving and user-friendly technology that connects everything and enables effective communication between linked things. In hospitals and other healthcare centers, healthcare monitoring systems have exploded in popularity over the last decade, and...

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Main Authors: Sureshkumar S, Santhosh Babu A. V, Joseph James S, Maranco M
Format: Article
Language:English
Published: Nature Portfolio 2025-07-01
Series:Scientific Reports
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Online Access:https://doi.org/10.1038/s41598-025-12581-8
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author Sureshkumar S
Santhosh Babu A. V
Joseph James S
Maranco M
author_facet Sureshkumar S
Santhosh Babu A. V
Joseph James S
Maranco M
author_sort Sureshkumar S
collection DOAJ
description Abstract The Internet of Things (IoT) is a rapidly evolving and user-friendly technology that connects everything and enables effective communication between linked things. In hospitals and other healthcare centers, healthcare monitoring systems have exploded in popularity over the last decade, and wireless healthcare monitoring devices using diverse technologies have a huge interest in several countries worldwide. The existing studies in healthcare IoT met a few shortcomings in terms of privacy, security, higher data dimensionality, higher cost, larger execution time, and so on. To tackle these issues, we proposed a novel IoT-enabled and secured healthcare monitoring framework (IoT-SHMF) for heart disease prediction. The data are taken from the Cleveland Heart Disease database. First, authentication is performed through registration, login, and patient data verification. The Matrix-based RSA encryption technology and a blockchain-based data storage concept provide safe data transmission and authorization. Subsequently, the secured data is downloaded by the hospital management (HM) system. The HM system scrutinizes the decrypted data. Finally, the Deep Convolutional Neural Network-based Archimedes Optimization (DCNN-AO) algorithm classifies the normal and abnormal classes of heart disease. The implementation work of the proposed model is simulated using JAVA software with different performance measures. Various performance metrics with state-of-art methods validate the effectiveness of the proposed model. The proposed IoT-based system ensures better security by about 98%. The decryption time of our proposed approach, when the sensor nodes are equal to 25, is 37 seconds.
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spelling doaj-art-093e4862c2ff4f97b89b4da15af9128a2025-08-20T04:01:51ZengNature PortfolioScientific Reports2045-23222025-07-0115111910.1038/s41598-025-12581-8Deep convolutional neural network based archimedes optimization algorithm for heart disease prediction based on secured IoT enabled health care monitoring systemSureshkumar S0Santhosh Babu A. V1Joseph James S2Maranco M3P. A. College of Engineering and TechnologyInformation Technology, Hindusthan Institute of TechnologyComputational Intelligence, College of Engineering and Technology, SRM Institute of Science and TechnologyNetworking and Communications, College of Engineering and Technology, SRM Institute of Science and TechnologyAbstract The Internet of Things (IoT) is a rapidly evolving and user-friendly technology that connects everything and enables effective communication between linked things. In hospitals and other healthcare centers, healthcare monitoring systems have exploded in popularity over the last decade, and wireless healthcare monitoring devices using diverse technologies have a huge interest in several countries worldwide. The existing studies in healthcare IoT met a few shortcomings in terms of privacy, security, higher data dimensionality, higher cost, larger execution time, and so on. To tackle these issues, we proposed a novel IoT-enabled and secured healthcare monitoring framework (IoT-SHMF) for heart disease prediction. The data are taken from the Cleveland Heart Disease database. First, authentication is performed through registration, login, and patient data verification. The Matrix-based RSA encryption technology and a blockchain-based data storage concept provide safe data transmission and authorization. Subsequently, the secured data is downloaded by the hospital management (HM) system. The HM system scrutinizes the decrypted data. Finally, the Deep Convolutional Neural Network-based Archimedes Optimization (DCNN-AO) algorithm classifies the normal and abnormal classes of heart disease. The implementation work of the proposed model is simulated using JAVA software with different performance measures. Various performance metrics with state-of-art methods validate the effectiveness of the proposed model. The proposed IoT-based system ensures better security by about 98%. The decryption time of our proposed approach, when the sensor nodes are equal to 25, is 37 seconds.https://doi.org/10.1038/s41598-025-12581-8Heart disease predictionIoT-based healthcare monitoring systemArchimedes optimization algorithmDCNNDeep learningMedical data security
spellingShingle Sureshkumar S
Santhosh Babu A. V
Joseph James S
Maranco M
Deep convolutional neural network based archimedes optimization algorithm for heart disease prediction based on secured IoT enabled health care monitoring system
Scientific Reports
Heart disease prediction
IoT-based healthcare monitoring system
Archimedes optimization algorithm
DCNN
Deep learning
Medical data security
title Deep convolutional neural network based archimedes optimization algorithm for heart disease prediction based on secured IoT enabled health care monitoring system
title_full Deep convolutional neural network based archimedes optimization algorithm for heart disease prediction based on secured IoT enabled health care monitoring system
title_fullStr Deep convolutional neural network based archimedes optimization algorithm for heart disease prediction based on secured IoT enabled health care monitoring system
title_full_unstemmed Deep convolutional neural network based archimedes optimization algorithm for heart disease prediction based on secured IoT enabled health care monitoring system
title_short Deep convolutional neural network based archimedes optimization algorithm for heart disease prediction based on secured IoT enabled health care monitoring system
title_sort deep convolutional neural network based archimedes optimization algorithm for heart disease prediction based on secured iot enabled health care monitoring system
topic Heart disease prediction
IoT-based healthcare monitoring system
Archimedes optimization algorithm
DCNN
Deep learning
Medical data security
url https://doi.org/10.1038/s41598-025-12581-8
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