4.6 Article

Heart Disease Risk Prediction Using Machine Learning Classifiers with Attribute Evaluators

期刊

APPLIED SCIENCES-BASEL
卷 11, 期 18, 页码 -

出版社

MDPI
DOI: 10.3390/app11188352

关键词

heart disease; data pre-processing; attribute evaluation; machine learning classifiers; hyperparameter tuning

资金

  1. Universiti Teknologi PETRONAS [0153AB-M66]

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This research utilized various machine learning classifiers to predict heart disease risk efficiently, with the SMO classifier achieving accuracies of 85.148% and 86.468% on the full attribute set and optimal attribute set respectively. The bagging meta classifier achieved the highest ROC area of 0.91 on both attribute sets.
Cardiovascular diseases (CVDs) kill about 20.5 million people every year. Early prediction can help people to change their lifestyles and to ensure proper medical treatment if necessary. In this research, ten machine learning (ML) classifiers from different categories, such as Bayes, functions, lazy, meta, rules, and trees, were trained for efficient heart disease risk prediction using the full set of attributes of the Cleveland heart dataset and the optimal attribute sets obtained from three attribute evaluators. The performance of the algorithms was appraised using a 10-fold cross-validation testing option. Finally, we performed tuning of the hyperparameter number of nearest neighbors, namely, 'k' in the instance-based (IBk) classifier. The sequential minimal optimization (SMO) achieved an accuracy of 85.148% using the full set of attributes and 86.468% was the highest accuracy value using the optimal attribute set obtained from the chi-squared attribute evaluator. Meanwhile, the meta classifier bagging with logistic regression (LR) provided the highest ROC area of 0.91 using both the full and optimal attribute sets obtained from the ReliefF attribute evaluator. Overall, the SMO classifier stood as the best prediction method compared to other techniques, and IBk achieved an 8.25% accuracy improvement by tuning the hyperparameter 'k' to 9 with the chi-squared attribute set.

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