Deep convolutional neural network based archimedes optimization algorithm for heart disease prediction based on secured IoT enabled health care monitoring system
Sureshkumar S, Santhosh Babu A. V, Joseph James S, Maranco M

TL;DR
This paper introduces a secure IoT system for heart disease prediction using a deep learning algorithm and blockchain for data security.
Contribution
A novel IoT-based healthcare framework with Matrix-based RSA encryption and blockchain for secure heart disease prediction.
Findings
The proposed system achieves about 98% security effectiveness.
Decryption time is 37 seconds when sensor nodes are 25.
DCNN-AO algorithm effectively classifies heart disease data.
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…
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Taxonomy
TopicsECG Monitoring and Analysis · COVID-19 diagnosis using AI · IoT and Edge/Fog Computing
