Published September 15, 2025 | Version v1
Journal article Open

ARTIFICIAL BEE COLONY-DRIVEN FEATURE SELECTION EMPOWERING NAIVE BAYES CLASSIFIER FOR SUPERIOR CORONARY ARTERY DISEASE PROGNOSIS

Description

The rise in mortality due to Coronary Artery Disease (CAD) underscores the urgent need for accurate, early-stage detection systems. Traditional classification models often struggle with imbalanced datasets, irrelevant features, and limited interpretability, hindering clinical reliability. This study introduces an optimized hybrid diagnostic model Firefly Swarm Optimization-based Decision Tree (FSO-DT)designed to overcome these limitations. The approach leverages the bio-inspired characteristics of firefly swarms to perform robust feature selection, reducing dimensionality and enhancing classification relevance. The refined feature set is subsequently processed through a decision tree classifier, selected for its transparency and clinical interpretability. The proposed model was evaluated using a benchmark CAD dataset, assessing performance through key metrics including accuracy, sensitivity, specificity, and F1-score. Results indicate significant improvements compared to conventional classifiers and unoptimized decision trees. This optimization not only improves classification performance but also ensures model efficiency by minimizing computational overhead. The FSO-DT model delivers an interpretable and scalable solution, capable of aiding clinicians in risk assessment and decision-making processes. The bio-inspired nature of the algorithm ensures adaptability across diverse clinical scenarios, making it a promising tool in medical data analytics. This work contributes to intelligent healthcare systems by integrating evolutionary computation with interpretable learning, fostering advancements in early diagnosis and patient-centered outcomes.

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