Comparative Analysis of Supervised Learning Algorithms for Clinical Diagnosis Heart Attack Prediction
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Keywords

Heart Attack Prediction
Machine Learning
Healthcare Analytics
Feature Engineering
Medical Diagnosis
Random Forest

How to Cite

S., Syed Rafiammal, Padma Usha M., Turika N., and Shaik Sharukh. 2025. “Comparative Analysis of Supervised Learning Algorithms for Clinical Diagnosis Heart Attack Prediction”. Journal of Artificial Intelligence and Capsule Networks 7 (3): 271-83. https://doi.org/10.36548/jaicn.2025.3.004.

Abstract

This paper involves comparative research of novel deep machine learning and machine learning networks for the prediction of heart disease symptoms. Heart disease is one of the leading causes of death worldwide, and its early discovery saves a person's life. The objective of the research was to create a method of predicting heart attacks from lifestyle and clinical data through machine learning. The Machine learning algorithms that will be employed for prediction are discovered by conducting experiments that test combination of ML algorithms such as Logistic Regression, Random Forest, Support Vector Machines, and Gradient Boosting in the study. Data sets are downloaded from public sources and are processed to completion with missing value management, feature scaling, and exploratory data analysis (EDA). Validation has been performed using accuracy, precision, recall, and F1-score. The Random Forest classifier performed with an accuracy of 89%. The paper also discusses constraints and how to follow up the work, such as using larger data sets and new deep learning algorithms.

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References

Detrano, R., et al., “International Application of a New Probability Algorithm for the Diagnosis of Coronary Artery Disease,” Am. J. Cardiol.,1989.

UCI Machine Learning Repository: Heart Disease Dataset. https://archive.ics.uci.edu/dataset/45/heart+disease

Oliullah, Khondokar, Alistair Barros, and Md Whaiduzzaman. "Analyzing the effectiveness of several machine learning methods for heart attack prediction." In Proceedings of the Fourth International Conference on Trends in Computational and Cognitive Engineering: TCCE 2022, 25-236. Singapore: Springer Nature Singapore, 2023.

Abd Allah, Enas M., Doaa E. El-Matary, Esraa M. Eid, and Adly S. Tag El Dien. "Performance comparison of various machine learning approaches to identify the best one in predicting heart disease." Journal of Computer and Communications 10, no. 2 (2022): 1-18.

Solanki, Aman, Anand Vardhan, Aman Jharwal, and Narender Kumar. "Heart Diseases Prediction Using Machine Learning." In 2023 14th International Conference on Computing Communication and Networking Technologies (ICCCNT), 1-6. IEEE, 2023.

Rose, J. Sharon, P. Malin Bruntha, Salomi Selvadass, and Rajath MV. "Heart Attack Prediction using Machine Learning Techniques." In 2023 9th International Conference on Advanced Computing and Communication Systems (ICACCS), vol. 1, 210-213. IEEE, 2023.

Rana, Meghavi, Mohammad Zia Ur Rehman, and Srishti Jain. "Comparative study of supervised machine learning methods for prediction of heart disease." In 2022 IEEE VLSI Device Circuit and System (VLSI DCS), 295-299. IEEE, 2022.

Akter, Sharmin, Mahdia Amina, and Nafees Mansoor. "Early diagnosis and comparative analysis of different machine learning algorithms for myocardial infarction prediction." In 2021 IEEE 9th region 10 humanitarian technology conference (R10-HTC), 01-06. IEEE, 2021.

Tripathi, Priyanka, Kirti Vishwakarma, Sourabh Sahu, Amee Vishwakarma, and Diksha Kori. "Enhancing Cardiovascular Health: A Machine Learning Approach to Predicting Heart Disease." In 2023 IEEE World Conference on Applied Intelligence and Computing (AIC), 238-242. IEEE, 2023.

Than, M.P., Pickering, J.W., Sandoval, Y., Shah, A.S., Tsanas, A., Apple, F.S., Blankenberg, S., Cullen, L., Mueller, C., Neumann, J.T. and Twerenbold, R., 2019. Machine learning to predict the likelihood of acute myocardial infarction. Circulation, 140(11),899-909.