Proceedings Article10.1109/icetsis61505.2024.10459563
Artificial Intelligence Driven Intelligent Computational Model for Heart Disease Prediction: Leveraging Feature Selection
Purnima Pal,Veena Grover,Manju Nandal,Saikat Gochhait,Harsh Vikram Singh +4 more
- 28 Jan 2024
pp 1422-1428
4
TL;DR: An AI-driven intelligent computational model for heart disease prediction leveraging feature selection achieves high classification accuracy of 99.01%.
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Abstract: In recent years, heart disease has become a very serious threat to the health and safety of people all over the globe. Typically, this condition occurs when there is an insufficient supply of blood from the heart to various parts of the body, which hampers their usual operations. Early and timely detection of this disease holds paramount importance in preventing patients from further harm and saving their lives. Artificial intelligence (AI) has emerged as a pivotal tool in advancing heart disease prediction through its multifaceted roles. In this study, an intelligent computational model is introduced. This intelligent computational model encompasses multiple stages, including comprehensive data preprocessing and a strategic feature selection process utilizing correlation-based techniques. It also utilizes machine learning and deep neural networks to obtain a robust model for heart disease classification. Serval performance metrics are evaluated to observe the effectiveness of the proposed model. The proposed model achieved the highest classification accuracy of 99.01%. The proposed model contributes a powerful predictive model aimed at enhancing heart disease diagnosis, an imperative step toward effective patient care and potentially life-saving interventions.
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References
Effective Heart Disease Prediction Using Hybrid Machine Learning Techniques
TL;DR: This paper proposes a novel method that aims at finding significant features by applying machine learning techniques resulting in improving the accuracy in the prediction of cardiovascular disease with the hybrid random forest with a linear model (HRFLM).
Right Ventricular Function and Failure Report of a National Heart, Lung, and Blood Institute Working Group on Cellular and Molecular Mechanisms of Right Heart Failure
Norbert F. Voelkel,Robert A. Quaife,Leslie A. Leinwand,Robyn J. Barst,Michael D. McGoon,Daniel R. Meldrum,Jocelyn Dupuis,Carlin S. Long,Lewis J. Rubin,Frank W. Smart,Yuichiro J. Suzuki,Mark T. Gladwin,Elizabeth M. Denholm,Dorothy B. Gail +13 more
TL;DR: A working group charged with delineating in broad terms the current base of scientific and medical understanding about the right ventricle and identifying avenues of investigation likely to meaningfully advance knowledge in a clinically useful direction is convened.
1.2K
Rapid and noninvasive diagnosis of the presence and severity of coronary heart disease using 1H-NMR-based metabonomics
Joanne Tracey Brindle,Henrik Antti,Elaine Holmes,George E. Tranter,Jeremy K. Nicholson,Hugh W.L. Bethell,Sarah C. Clarke,Peter R. Schofield,Elaine McKilligin,David E. Mosedale,David J. Grainger +10 more
TL;DR: These studies show for the first time a technique capable of providing an accurate, noninvasive and rapid diagnosis of coronary heart disease that can be used clinically, either in population screening or to allow effective targeting of treatments such as statins.
1K
A Hybrid Intelligent System Framework for the Prediction of Heart Disease Using Machine Learning Algorithms
TL;DR: The proposed machine-learning-based decision support system will assist the doctors to diagnosis heart patients efficiently and can easily identify and classify people with heart disease from healthy people.
Artificial intelligence-enhanced electrocardiography in cardiovascular disease management
TL;DR: In this article, the authors summarize the current and future state of the AI-enhanced ECG in the detection of cardiovascular disease in at-risk populations, discuss its implications for clinical decision-making in patients with cardiovascular disease and critically appraise potential limitations and unknowns.