E. Murali

Work place: Department of Computer Science and Engineering, Sathyabama Institute of Science and Technology, Chennai, India

E-mail: emurali88@gmail.com

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Biography

Dr. E. Murali is working as an Associate Professor in the Department of Computer Science and Engineering at Sathyabama institute of Science and Technology, Chennai, India. He received his Bachelor’s degree in B.E Computer Science and Engineering from Anna University Affiliated College and Master’s in M.Tech Computer Science and Engineering from Dr. MGR Research and Educational Institute. He received his Ph.D in Computer Science and Engineering from Vellore institute of Technology. As a part of research work an ontology based incremental mining model was developed. He has published papers in National, International journals and Conference. He has got teaching experience of 12 years and his areas of interest include data mining, ontology mining and Knowledge engineering.

Author Articles
Data Transformation and Predictive Analytics of Cardiovascular Disease Using Machine and Ensemble Learning Techniques

By J. Cruz Antony E. Murali D. Deepa R. Vignesh S. Hemalatha Umme Fahad

DOI: https://doi.org/10.5815/ijisa.2025.01.06, Pub. Date: 8 Feb. 2025

About one person dies every minute from cardiovascular disease; consequently, it has almost surpassed war as the largest cause of death in the twenty-first century. In cardiology, early and accurate diagnosis of heart illness is a cornerstone of effective healthcare. Predictive analytics, which involves machine-learning algorithms, can be a great option for contributing towards the early detection of cardiovascular disease. This study evaluates the data preprocessing techniques involved in building machine learning models to predict cardiovascular disease and identify the features contributing to the cardio attack. A novel data transformation technique named the superlative boundary binning method was proposed to enhance machine learning and ensemble learning classification models for predicting cardiac illness based on independent physiological feature parameters. The results revealed that the ensemble learning classifier AdaBoost using the superlative boundary binning method has performed well with a classification accuracy of 93% when compared with the other data transformation and machine learning classifier models.

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