An Optimized Stacked Support Vector Machines Based Expert System for the Effective Prediction of Heart Failure

About half of the people who develop heart failure (HF) die within five years of diagnosis. Over the years, researchers have developed several machine learning-based models for the early prediction of HF and to help cardiologists to improve the diagnosis process. In this paper, we introduce an exper...

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Veröffentlicht in:IEEE access 2019, Vol.7, p.54007-54014
Hauptverfasser: Ali, Liaqat, Niamat, Awais, Khan, Javed Ali, Golilarz, Noorbakhsh Amiri, Xingzhong, Xiong, Noor, Adeeb, Nour, Redhwan, Bukhari, Syed Ahmad Chan
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Sprache:eng
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Zusammenfassung:About half of the people who develop heart failure (HF) die within five years of diagnosis. Over the years, researchers have developed several machine learning-based models for the early prediction of HF and to help cardiologists to improve the diagnosis process. In this paper, we introduce an expert system that stacks two support vector machine (SVM) models for the effective prediction of HF. The first SVM model is linear and L_{1} regularized. It has the capability to eliminate irrelevant features by shrinking their coefficients to zero. The second SVM model is L_{2} regularized. It is used as a predictive model. To optimize the two models, we propose a hybrid grid search algorithm (HGSA) that is capable of optimizing the two models simultaneously. The effectiveness of the proposed method is evaluated using six different evaluation metrics: accuracy, sensitivity, specificity, the Matthews correlation coefficient (MCC), ROC charts, and area under the curve (AUC). The experimental results confirm that the proposed method improves the performance of a conventional SVM model by 3.3%. Moreover, the proposed method shows better performance compared to the ten previously proposed methods that achieved accuracies in the range of 57.85%-91.83%. In addition, the proposed method also shows better performance than the other state-of-the-art machine learning ensemble models.
ISSN:2169-3536
2169-3536
DOI:10.1109/ACCESS.2019.2909969