| Title | Explainable Federated Learning for Multi-Class Heart Disease Diagnosis via ECG Fiducial Features. |
| Publication Type | Journal Article |
| Year of Publication | 2025 |
| Authors | Sathi TAlam, Jany R, Azad A, Alyami SA, Alotaibi N, Hussain I, Hossain MAzam |
| Journal | Diagnostics (Basel) |
| Volume | 15 |
| Issue | 24 |
| Date Published | 2025 Dec 07 |
| ISSN | 2075-4418 |
| Abstract | Background/Objectives: Cardiovascular disease (CVD) remains a leading cause of mortality and disability worldwide, with timely diagnosis critical for preventing long-term functional impairment. Electrocardiograms (ECGs) provide essential biomarkers of cardiac function, but their interpretation is often complex, particularly across multi-institutional datasets. Methods: This study presents an explainable federated learning framework with long short-term memory (FL-LSTM) for multi-class heart disease classification, capable of distinguishing arrhythmia, ischemia, and healthy states while preserving patient privacy. Results: The model was trained and evaluated on three heterogeneous ECG datasets, achieving 92% accuracy, 99% AUC, and 91% F1 score, outperforming existing federated approaches. Model interpretability is provided via SHapley Additive exPlanations (SHAP) and Local Interpretable Model-Agnostic Explanations (LIME), highlighting clinically relevant ECG biomarkers such as P-wave height, R-wave height, QRS complex, RR interval, and QT interval. Conclusions: By integrating temporal modeling, federated learning, and interpretable AI, the framework enables secure and collaborative cardiac diagnosis while supporting transparent clinical decision-making in distributed healthcare settings. |
| DOI | 10.3390/diagnostics15243110 |
| Alternate Journal | Diagnostics (Basel) |
| PubMed ID | 41464111 |
| PubMed Central ID | PMC12731672 |
| Grant List | KSRG-2024-120 / / King Salman Center for Disability Research / |
