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Federated Learning Framework for Privacy-Preserving Explainable AI-Driven Clinical Decision-Making

  • Emad-ul-Haq Qazi
  • , Waleed Khalid AL-Ghanem
  • , Muhammad Hamza Faheem
  • , Hanif Ullah

Research output: Contribution to journalArticlepeer-review

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Abstract

The application of artificial intelligence (AI) in clinical diagnostics has shown substantial potential; however, conventional centralized learning frameworks often encounter critical limitations related to patient data privacy, data heterogeneity, and limited generalizability. To address these challenges, we propose a novel Federated Deep Learning (FDL) framework tailored for privacy-preserving, AI-driven clinical decision support. The proposed architecture integrates Vision Transformers (ViT) with DINOv2-based self-supervised learning to enable effective representation learning in the absence of extensive labeled datasets. Furthermore, personalized model updates are facilitated using Federated Self-Supervised Learning (FedSSL) in conjunction with FedProx, ensuring client-specific adaptation in non-identically distributed (non-IID) data environments. Privacy preservation is ensured through the application of differential privacy mechanisms at the model update level, coupled with Elliptic Curve Cryptography (ECC) for secure communication. To enhance clinical transparency and interpretability, the framework incorporates Grad-CAM and LIME for sample-level explainability. The proposed system is evaluated on three publicly available medical imaging datasets encompassing Tuberculosis (TB) detection from chest X-rays, Diabetic Retinopathy (DR) from fundus images, and Brain Tumor (BT) classification from MRI scans. The federated model achieved an accuracy and F1-score of 99.80% for Tuberculosis, 89.0% for Diabetic Retinopathy (DR), and 97.1% for Brain Tumors (BTs), reflecting high overall diagnostic performance across all tasks. These findings validate the efficacy, scalability, and privacy-resilience of the proposed method, positioning it as a robust candidate for real-world clinical deployment in distributed healthcare environments.
Original languageEnglish
Pages (from-to)1-16
Number of pages16
JournalIEEE Journal of Biomedical and Health Informatics
Early online date31 Mar 2026
DOIs
Publication statusPublished online - 31 Mar 2026

Bibliographical note

Publisher Copyright:
© 2013 IEEE.

Data Availability Statement

The datasets are available on the following links:
• Tuberculosis
Chest
X-ray
Database
//www.kaggle.com/datasets/tawsifurrahman/
tuberculosis-tb-chest-xray-dataset
• Diabetic
Retinopathy
224x224
(2019
https://www.kaggle.com/datasets/sovitrath/
diabetic-retinopathy-224x224-2019-data
https:
Data)
• Brain Tumor Classification (MRI) https://www.kaggle.
com/datasets/sartajbhuvaji/brain-tumor-classification-mri

Funding

This research was funded by Naif Arab University for Security Sciences under grant No. NAUSS-24 R01.

Funder number
NAUSS-24-R01

    UN SDGs

    This output contributes to the following UN Sustainable Development Goals (SDGs)

    1. SDG 3 - Good Health and Well-being
      SDG 3 Good Health and Well-being

    Keywords

    • Federated learning
    • Vision Transformer
    • Tuberculosis
    • Diabetic Retinopathy
    • Brain Tumor
    • Self-Supervised Learning
    • DINOv2
    • Privacy-Preserving AI
    • Differential Privacy
    • ECC Encryption
    • Explainable AI
    • Clinical Decision Support
    • Medical Imaging
    • Federated Learning

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