학술논문

Towards Accurate Heart Disease Diagnosis: An Overview of Machine Learning Approaches
Document Type
Conference
Source
2023 6th International Conference on Recent Trends in Advance Computing (ICRTAC) Recent Trends in Advance Computing (ICRTAC), 2023 6th International Conference on. :126-131 Dec, 2023
Subject
Communication, Networking and Broadcast Technologies
Computing and Processing
Engineered Materials, Dielectrics and Plasmas
Engineering Profession
General Topics for Engineers
Power, Energy and Industry Applications
Heart
Support vector machines
Measurement
Machine learning
Artificial neural networks
Benchmark testing
Market research
data analytics
data mining
artificial intelligence
heart disease
Language
Abstract
cardiovascular diseases, especially heart ailments, pose substantial health challenges globally, often exacerbated by unhealthy lifestyle habits. Recent technological advances in machine learning (ML) have emerged as a beacon of hope, presenting avenues for swift and efficient heart disease detection. Despite the voluminous health data accumulated daily, its vast analytical potential is frequently overlooked, creating a pronounced knowledge disparity. Thus, it becomes imperative to study recent ML approaches for accurate heart diagnosis, which allows to fetch critical insights. In this paper, we discussed a comparative analysis of ML algorithms, datasets for heart diseases, and compared ML algorithms in terms of metrics like precision, recall, F1 and accuracy. We considered the benchmark Cleveland Heart Dataset for analysis. We observed an accuracy of 84% by Artificial Neural Network (ANN), while Support Vector Machine (SVM) has the highest recall of 95%. The presented findings and analysis indicate the efficacy of the analysis in heart prediction using ML in real-world setups.