An Intelligent Decision Support Ensemble Voting Model for Coronary Artery Disease Prediction in Smart Healthcare Monitoring Environments
Anas Maach, Jamila Elalami, Noureddine Elalami, El Houssine El Mazoudi

TL;DR
This paper presents an ensemble voting machine learning model that improves the accuracy of coronary artery disease prediction in smart healthcare systems, outperforming individual classifiers and other ensemble methods.
Contribution
It introduces a novel ensemble majority voting model combining top classifiers, achieving higher accuracy than existing models for CAD diagnosis.
Findings
Ensemble voting achieved 88.12% accuracy in CAD prediction.
The model outperformed individual classifiers and other ensemble techniques.
Top classifiers used were Multilayer Perceptron, Random Forest, and AdaBoost.
Abstract
Coronary artery disease (CAD) is one of the most common cardiac diseases worldwide and causes disability and economic burden. It is the world's leading and most serious cause of mortality, with approximately 80% of deaths reported in low- and middle-income countries. The preferred and most precise diagnostic tool for CAD is angiography, but it is invasive, expensive, and technically demanding. However, the research community is increasingly interested in the computer-aided diagnosis of CAD via the utilization of machine learning (ML) methods. The purpose of this work is to present an e-diagnosis tool based on ML algorithms that can be used in a smart healthcare monitoring system. We applied the most accurate machine learning methods that have shown superior results in the literature to different medical datasets such as RandomForest, XGboost, MLP, J48, AdaBoost, NaiveBayes, LogitBoost,…
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