Hybrid deep ensemble learning with metaheuristic optimization for heart disease prediction

Ahamed, B. Shamreen, Virdee, Bal Singh, Khanna, Ashish, Vidhya, R. G. and Sivashankar, S. (2026) Hybrid deep ensemble learning with metaheuristic optimization for heart disease prediction. In: 2026 Fourth International Conference on Augmented Intelligence and Sustainable Systems (ICAISS), 28 - 30 April 2026, Trichy, India.

Abstract

The major causes of deaths due to heart disease rank among the top for global health concerns, with predicting heart disease for diabetic patients a major challenge. This research study proposes a deep ensemble learning with metaheuristic optimization framework for heart disease prediction. The workflow of this model includes performing extensive preprocessing of the provided dataset, followed by an optimization algorithm-based feature selection. Furthermore, the proposed model utilizes a weighted fusion method for combining various health data sources, convolution-pooling, attention, and spatial-temporal learning. Ensemble stacking learning is also used with an SVM learner, with Pufferfish Optimization Algorithm used for fine-tuning. As indicated, the proposed model was successful in achieving 0.980 accuracy, 0.970 precision, 0.990 recall, and 0.950 F1-score for Dataset 1, with 0.990 accuracy, 0.980 precision, 0.970 recall, and 0.980 F1-score for the Cleveland dataset.

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