Learning Alzheimer's Disease Signatures by bridging EEG with Spiking Neural Networks and Biophysical Simulations
Szymon Mamo\'n, Max Talanov, Alessandro Crimi

TL;DR
This paper introduces a neuro-bridge framework combining spiking neural networks and biophysical simulations to improve mechanistic understanding and detection of Alzheimer's disease from EEG data.
Contribution
It presents a novel approach linking machine learning signatures with circuit-level mechanisms through biophysical simulations, enhancing interpretability of EEG biomarkers in AD.
Findings
SNN classifier achieved AUC = 0.839 on EEG data
Identified 1/f slope as a key biomarker for AD
Simulations reproduced spectral slowing and alpha changes in AD
Abstract
As the prevalence of Alzheimer's disease (AD) rises, improving mechanistic insight from non-invasive biomarkers is increasingly critical. Recent work suggests that circuit-level brain alterations manifest as changes in electroencephalography (EEG) spectral features detectable by machine learning. However, conventional deep learning approaches for EEG-based AD detection are computationally intensive and mechanistically opaque. Spiking neural networks (SNNs) offer a biologically plausible and energy-efficient alternative, yet their application to AD diagnosis remains largely unexplored. We propose a neuro-bridge framework that links data-driven learning with minimal, biophysically grounded simulations, enabling bidirectional interpretation between machine learning signatures and circuit-level mechanisms in AD. Using resting-state clinical EEG, we train an SNN classifier that achieves…
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Taxonomy
TopicsFunctional Brain Connectivity Studies · Advanced Memory and Neural Computing · Neural dynamics and brain function
