Prediction of the risk of developing heart disease using logistic regression

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Abstract

Heart disease (HD) accounts for more deaths every year than other illnesses. World Health Organization (WHO) assessed 17.9 million life losses caused by heart disease in 2016, demonstrating 31% of all international life losses. Three-quarters of these life losses occur in low and middle-income nations. Machine learning (ML), due to advanced precision in pattern recognition and classification, demonstrates to be in effect in complementing decision-making and threat prediction from the huge number of HD data created by the healthcare sector. Thus, this study aims to develop a logistic regression model (LRM) for predicting the risk of getting HD in ten years. The study explores the different methodologies for improving the performance of base LRM for predicting whether a person gets HD after ten years or not. The result demonstrates the capability of LRM in predicting the risks of getting HD after ten years. The LRM achieves 97.35% accuracy with the recursive feature elimination and random under-sampling. This implies that the LRM can play an important role in precautionary methods to avoid the risk of HD.

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APA

Salau, A. O., Assegie, T. A., Markus, E. D., Eneh, J. N., & Ozue, T. I. (2024). Prediction of the risk of developing heart disease using logistic regression. International Journal of Electrical and Computer Engineering, 14(2), 1809–1815. https://doi.org/10.11591/ijece.v14i2.pp1809-1815

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