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Multi-Objective artificial bee colony optimized hybrid deep belief network and XGBoost algorithm for heart disease prediction

Kanak Kalita, N. Ganesh, S Jayalakshmi, Jasgurpreet Singh Chohan, Saurav Mallik, Hong Qin

2023Frontiers in Digital Health26 citationsDOIOpen Access PDF

Abstract

The global rise in heart disease necessitates precise prediction tools to assess individual risk levels. This paper introduces a novel Multi-Objective Artificial Bee Colony Optimized Hybrid Deep Belief Network and XGBoost (HDBN-XG) algorithm, enhancing coronary heart disease prediction accuracy. Key physiological data, including Electrocardiogram (ECG) readings and blood volume measurements, are analyzed. The HDBN-XG algorithm assesses data quality, normalizes using z-score values, extracts features via the Computational Rough Set method, and constructs feature subsets using the Multi-Objective Artificial Bee Colony approach. Our findings indicate that the HDBN-XG algorithm achieves an accuracy of 99%, precision of 95%, specificity of 98%, sensitivity of 97%, and F1-measure of 96%, outperforming existing classifiers. This paper contributes to predictive analytics by offering a data-driven approach to healthcare, providing insights to mitigate the global impact of coronary heart disease.

Topics & Concepts

Artificial bee colony algorithmComputer scienceArtificial intelligenceMachine learningCoronary heart diseaseKey (lock)Data miningAlgorithmMedicineCardiologyComputer securityArtificial Intelligence in HealthcareECG Monitoring and AnalysisHeart Rate Variability and Autonomic Control