IRMA-International.org: Creator of Knowledge
Information Resources Management Association
Advancing the Concepts & Practices of Information Resources Management in Modern Organizations

Healthcare Automation System by Using Cloud-Based Telemonitoring Technique for Cardiovascular Disease Classification

Healthcare Automation System by Using Cloud-Based Telemonitoring Technique for Cardiovascular Disease Classification
View Sample PDF
Author(s): Basudev Halder (Neotia Institute of Technology, Management, and Science, Kolkata, India), Sucharita Mitra (Netaji Nagar Day College, Kolkata, India)and Madhuchhanda Mitra (University of Calcutta, Kolkata, India)
Copyright: 2021
Pages: 20
Source title: Research Anthology on Telemedicine Efficacy, Adoption, and Impact on Healthcare Delivery
Source Author(s)/Editor(s): Information Resources Management Association (USA)
DOI: 10.4018/978-1-7998-8052-3.ch025

Purchase


Abstract

This paper illustrates the cloud-based telemonitoring framework that implements healthcare automation system for myocardial infarction (MI) disease classification. For this purpose, the pathological feature of ECG signal such as elevated ST segment, inverted T wave, and pathological Q wave are extracted, and MI disease is detected by the rule-based rough set classifier. The information system involves pathological feature as an attribute and decision class. The degree of attributes dependency finds a smaller set of attributes and predicted the comprehensive decision rules. For MI decision, the ECG signal is shared with the respective cardiologist who analyses and prescribes the required medication to the first-aid professional through the cloud. The first-aid professional is notified accordingly to attend the patient immediately. To avoid the identity crisis, ECG signal is being watermarked and uploaded to the cloud in a compressed form. The proposed system reduces both data storage space and transmission bandwidth which facilitates accessibility to quality care in much reduced cost.

Related Content

Nuno Geada. © 2024. 29 pages.
Ushaa Eswaran. © 2024. 31 pages.
Nuno Geada. © 2024. 10 pages.
Kamal Upreti, Khushboo Malik, Anmol Kapoor, Nayan Patel, Pratham Tiwari. © 2024. 22 pages.
Wasswa Shafik. © 2024. 26 pages.
Albérico Travassos Rosário, Isabel Travassos Rosário. © 2024. 33 pages.
Megha Bhushan, Abhishek Kukreti, Arun Negi. © 2024. 10 pages.
Body Bottom