Artificial intelligence enabled healthcare data analysis for chronic heart disease detection: an evaluation
Publication Name
International Journal of Grid and Utility Computing
Abstract
Chronic heart diseases are a leading cause of death worldwide. This paper examines recently published articles on the use of AI and machine-learning to detect chronic heart diseases. The main findings of these papers are summarised to assist researchers in developing new technology using AI and machine learning. The summary includes information on the technologies used in each research paper, the year of publication, the type of heart disease, the machine learning techniques employed and the advantages and limitations of each approach. The research followed the Preferred Reporting Items for Systematic Review and Meta Analysis (PRISMA) standard and evaluated diagnostic studies using QUADAS-2, the quality assessment of diagnostic accuracy studies. We used the intelligent web-based tool ‘Rayyan’ for data extraction and processing. The results demonstrate that machine learning algorithms have an Area Under the Curve (AUC) between 0.80 and 0.90, which is acceptable for chronic heart conditions overall.
Open Access Status
This publication is not available as open access
Volume
15
Issue
2
First Page
198
Last Page
210