Clean Balance-Ensemble CHD: A Balanced Ensemble Learning Framework for Accurate Coronary Heart Disease Prediction
Downloads
Published
DOI:
https://doi.org/10.58414/SCIENTIFICTEMPER.2025.16.10.05Keywords:
Coronary Heart Disease (CHD) Prediction, Balanced Ensemble Learning, Preprocessing, Noise Reduction, Prediction AccuracyDimensions Badge
Issue
Section
License
Copyright (c) 2025 The Scientific Temper

This work is licensed under a Creative Commons Attribution-NonCommercial-ShareAlike 4.0 International License.
Coronary Heart Disease (CHD) is still one of the leading causes of death worldwide, which necessitates early and reliable prediction methods to support timely medical interventions. Traditional machine learning approaches frequently struggle with noisy and imbalanced datasets which leading to biased predictions and reduced diagnostic reliability. To address these limitations, this paper proposes the CleanBalance-EnsembleCHD algorithm that combines data cleaning, balancing, and ensemble learning to improve prediction accuracy. The goal is to reduce noise, handle imbalance, and combine the strengths of multiple classifiers to detect CHDs more effectively. For noise reduction, the methodology employs Edited Nearest Neighbor (ENN) and Iterative Partitioning Filter (IPF), if imbalance persists Synthetic Minority Oversampling Technique (SMOTE) used. Five classifiers namely Rotation Forest, LogitBoost, Multilayer Perceptron, Logistic Model Trees (LMT), and Random Forest were trained, with the best models chosen for weighted soft-voting ensemble integration. The experimental evaluation on a CHD dataset with an initial class imbalance (maj/min ratio: 1.038, Gini index: 0.4998) revealed significant improvements. After ENN and IPF cleaning, the dataset was reduced from 1011 to 853 balanced instances (class counts: {1.0=414, 0.0=439}). Individual classifiers performed well, with accuracies of 97.36% (Rotation Forest), 94.72% (LogitBoost), 96.04% (Multilayer Perceptron), 97.95% (LMT), and 98.53% (Random Forest). After that, the top three models chosen Random Forest, LMT, and Rotation Forest were combined into an ensemble that outperformed all individual models on the test set, with Accuracy: 99.42%, F1-score: 0.9939, and MCC: 0.9884. These findings show that CleanBalance-EnsembleCHD provides superior predictive reliability leading to noise-resistant and balanced decision-making. Finally, the proposed framework provides a powerful and interpretable solution for early CHD detection using the potential to help clinicians with risk assessment and medical decision support.Abstract
How to Cite
Downloads
Similar Articles
- Sathya R., Balamurugan P, Classification of glaucoma in retinal fundus images using integrated YOLO-V8 and deep CNN , The Scientific Temper: Vol. 15 No. 03 (2024): The Scientific Temper
- V. Mahalakshmi, M. Manimekalai, Location Specific Paddy Yield Prediction using Monte Carlo Simulation incorporated Long Short-Term Memory , The Scientific Temper: Vol. 16 No. 10 (2025): The Scientific Temper
- M. Rajalakshmi, V. Sulochana, Enhancing deep learning model performance in air quality classification through probabilistic hyperparameter tuning with tree-structured Parzen estimators , The Scientific Temper: Vol. 14 No. 04 (2023): The Scientific Temper
- P. Ananthi, A. Chandrabose, The socio-technical opportunities and threats of crowdsensing , The Scientific Temper: Vol. 15 No. spl-1 (2024): The Scientific Temper
- D. Padma Prabha, C. Victoria Priscilla, A combined framework based on LSTM autoencoder and XGBoost with adaptive threshold classification for credit card fraud detection , The Scientific Temper: Vol. 15 No. 02 (2024): The Scientific Temper
- Hemamalini V., Victoria Priscilla C, Deep learning driven image steganalysis approach with the impact of dilation rate using DDS_SE-net on diverse datasets , The Scientific Temper: Vol. 15 No. 04 (2024): The Scientific Temper
- A. Sandanasamy, P. Joseph Charles, Distributed SDN control for IoT networks: A federated meta reinforcement learning solution for load balancing , The Scientific Temper: Vol. 16 No. 06 (2025): The Scientific Temper
- Bajeesh Balakrishnan, Swetha A. Parivara, E-HRM: Learning approaches, applications and the role of artificial intelligence , The Scientific Temper: Vol. 14 No. 04 (2023): The Scientific Temper
- R. Sivakumar, S. Vijaya, Eco-epidemiology of prey and competitive predator species in the SEI model , The Scientific Temper: Vol. 15 No. spl-2 (2024): The Scientific Temper
- M. Prabhu, A. Chandrabose, Improving the resource allocation with enhanced learning in wireless sensor networks , The Scientific Temper: Vol. 15 No. spl-1 (2024): The Scientific Temper
<< < 5 6 7 8 9 10 11 12 13 14 > >>
You may also start an advanced similarity search for this article.

