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arxiv_ml 88% Match Research Paper Medical Researchers,Neuroscientists,AI Researchers in Healthcare,Clinicians 3 weeks ago

Variational Mixture of Graph Neural Experts for Alzheimer's Disease Biomarker Recognition in EEG Brain Networks

graph-neural-networks › molecular-modeling
📄 Abstract

Abstract: Dementia disorders such as Alzheimer's disease (AD) and frontotemporal dementia (FTD) exhibit overlapping electrophysiological signatures in EEG that challenge accurate diagnosis. Existing EEG-based methods are limited by full-band frequency analysis that hinders precise differentiation of dementia subtypes and severity stages. We propose a variational mixture of graph neural experts (VMoGE) that integrates frequency-specific biomarker identification with structured variational inference for enhanced dementia diagnosis and staging. VMoGE employs a multi-granularity transformer to extract multi-scale temporal patterns across four frequency bands, followed by a variational graph convolutional encoder using Gaussian Markov Random Field priors. Through structured variational inference and adaptive gating, VMoGE links neural specialization to physiologically meaningful EEG frequency bands. Evaluated on two diverse datasets for both subtype classification and severity staging, VMoGE achieves superior performance with AUC improvements of +4% to +10% over state-of-the-art methods. Moreover, VMoGE provides interpretable insights through expert weights that correlate with clinical indicators and spatial patterns aligned with neuropathological signatures, facilitating EEG biomarker discovery for comprehensive dementia diagnosis and monitoring.
Authors (5)
Jun-En Ding
Anna Zilverstand
Shihao Yang
Albert Chih-Chieh Yang
Feng Liu
Submitted
October 13, 2025
arXiv Category
cs.LG
arXiv PDF

Key Contributions

Introduces VMoGE, a novel framework integrating frequency-specific EEG biomarker recognition with structured variational inference for enhanced dementia diagnosis and staging. It uses a multi-granularity transformer and variational graph convolutional encoder to link neural specialization to EEG frequency bands.

Business Value

Potential for earlier and more accurate diagnosis of Alzheimer's disease and other dementias, leading to better patient outcomes and more effective treatment strategies. Aids in clinical trials and drug development.