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Heart disease prediction using supervised machine learning algorithms: Performance analysis and comparison

Author Affiliations
Daffodil International University, Mawlana Bhashani Science and Technology University, University of Saskatchewan, Garvan Institute of Medical Research, ...
Published InComputers in Biology and Medicine
Year2021
Citations480

Abstract

Machine learning and data mining-based approaches to prediction and detection of heart disease would be of great clinical utility, but are highly challenging to develop. In most countries there is a lack of cardiovascular expertise and a significant rate of incorrectly diagnosed cases which could be addressed by developing accurate and efficient early-stage heart disease prediction by analytical support of clinical decision-making with digital patient records. This study aimed to identify machine learning classifiers with the highest accuracy for such diagnostic purposes. Several supervised machine-learning algorithms were applied and compared for performance and accuracy in heart disease prediction. Feature importance scores for each feature were estimated for all applied algorithms except MLP and KNN. All the features were ranked based…
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