Neighborhood component analysis and support vector machines for heart disease prediction

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Abstract

Nowadays, one of the main reasons for disability and mortality premature in the world is the heart disease, which make its prediction is a critical challenge in the area of healthcare systems. In this paper, we propose a heart disease prediction system based on Neighborhood Component Analysis (NCA) and Support Vector Machine (SVM). In fact, NCA is used for selecting the most relevant parameters to make a good decision. This can seriously reduce the time, materials, and labor to get the final decision while increasing the prediction performance. Besides, the binary SVM is used for predicting the selected parameters in order to identify the presence/absence of heart disease. The conducted experiments on real heart disease dataset show that the proposed system achieved 85.43% of prediction accuracy. This performance is 1.99% higher than the accuracy obtained with the whole parameters. Also, the proposed system outperforms the state-of-the-art heart disease prediction.

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Djerioui, M., Brik, Y., Ladjal, M., & Attallah, B. (2019). Neighborhood component analysis and support vector machines for heart disease prediction. Ingenierie Des Systemes d’Information, 24(6), 591–595. https://doi.org/10.18280/isi.240605

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