A Design of Disease Diagnosis based Smart Healthcare Model using Deep Learning Technique

Illa Pavan, Kumar and R, Mahaveerakannan and K Praveen, Kumar and Indranil, Basu and T Ch Anil, Kumar and Manasi, Choche (2022) A Design of Disease Diagnosis based Smart Healthcare Model using Deep Learning Technique. IEEE XPLORE. pp. 1444-1449. ISSN 978-1-6654-8425-1

[thumbnail of 47.pdf] Text
47.pdf
Restricted to Registered users only

Download (1MB) | Request a copy

Abstract

A Smart Healthcare System (SHS) is developed from
traditional healthcare by integrating the Internet of Things (IoT) with
Artificial Intelligence (AI). The data are captured by millions of
devices and sensors, where it is exchanged continuously with medical
staff to monitor the health of patients. An important message can then
be analyzed using various machine learning (ML) / deep learning
(DL) algorithms to predict the severity of diseases and then shared through wireless connectivity with medical professionals who can make appropriate recommendations. The main aim of the research work is to develop a disease detection model based on SHS for diabetic disease using DL classifiers. The method considered both collected and public datasets stored in the cloud for building SHS to allow accurate time monitoring of patient health conditions. IoT devices as sensors enable smooth data gathering, while AI algorithms use the data to diagnose diseases. For disease diagnosis, Restricted Boltzmann Machine based generative adversarial network (RBM -GAN) model has only three stages for the full prediction process. The experiments are carried out in two datasets, where the performance of the proposed RBM-GAN model is compared with existing DL classifiers. The simulation results show that the proposed model increased the accuracy by 5% on both two datasets than current DL classifiers. The proposed RBM -GAN model is used as a suitable illness analysis tool for SHS from these results.

Item Type: Article
Subjects: AC Rearch Cluster
Depositing User: Unnamed user with email techsupport@mosys.org
Date Deposited: 13 Dec 2023 06:13
Last Modified: 13 Dec 2023 06:13
URI: https://ir.vignan.ac.in/id/eprint/512

Actions (login required)

View Item
View Item