Explainable Federated Learning for Multi-Class Heart Disease Diagnosis via ECG Fiducial Features.

TitleExplainable Federated Learning for Multi-Class Heart Disease Diagnosis via ECG Fiducial Features.
Publication TypeJournal Article
Year of Publication2025
AuthorsSathi TAlam, Jany R, Azad A, Alyami SA, Alotaibi N, Hussain I, Hossain MAzam
JournalDiagnostics (Basel)
Volume15
Issue24
Date Published2025 Dec 07
ISSN2075-4418
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.

DOI10.3390/diagnostics15243110
Alternate JournalDiagnostics (Basel)
PubMed ID41464111
PubMed Central IDPMC12731672
Grant ListKSRG-2024-120 / / King Salman Center for Disability Research /