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Privacy–preserving dementia classification from EEG via hybrid–fusion EEGNetv4 and federated learning

  • Muhammad Umair
  • , Muhammad Shahbaz Khan* (Corresponding / Lead Author)
  • , Muhammad Hanif
  • , Wad Ghaban
  • , Ibtehal Nafea
  • , Sultan Noman Qasem
  • , Faisal Saeed
  • *Corresponding author for this work
  • University of Southern Queensland
  • Edinburgh Napier University
  • Örebro University
  • University of Tabuk
  • Taibah University
  • Al-Imam Muhammad Ibn Saud Islamic University

Research output: Contribution to journalArticlepeer-review

Abstract

As global life expectancy rises, a growing proportion of the population is affected by dementia, particularly Alzheimer's disease (AD) and Frontotemporal dementia (FTD). Electroencephalography (EEG) based diagnosis presents a non-invasive, cost effective alternative for early detection, yet existing methods are challenged by data scarcity, inter-subject variability, and privacy concerns. This study proposes lightweight and privacy-preserving EEG classification framework combining deep learning and Federated Learning (FL). Five convolutional neural networks (EEGNetv1, EEGNetv4, EEGITNet, EEGInception, EEGInceptionERP) have been evaluated on resting-state EEG dataset comprising 88 subjects. EEG signals are preprocessed using band-pass (1–45 Hz) and notch filtering, followed by exponential standardization and 4-second windowing. EEGNetv4 outperformed among other EEG tailored models, and upon utilizing the hybrid fusion techniques it achieves 97.1% accuracy using only 1,609 parameters and less than 1 MB of memory, demonstrating high efficiency. Moreover, FL using FedAvg is implemented across five stratified clients, achieving 96.9% accuracy on the hybrid fused EEGNetV4 model while preserving data privacy. This work establishes a scalable, resource-efficient, and privacy-compliant framework for EEG-based dementia diagnosis, suitable for deployment in real-world clinical and edge-device settings.
Original languageEnglish
Pages (from-to)1-19
Number of pages19
JournalFrontiers in Computational Neuroscience
Volume19
DOIs
Publication statusPublished (VoR) - 18 Aug 2025

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