Age Prediction with Resting‐State EEG: An Explainable Hybrid Deep Learning Framework Using Periodic and Aperiodic Features Across Eyes‐Open and Eyes‐Closed Conditions
Hamed Azami, Ahmad Zandbagleh

TL;DR
This paper introduces a new deep learning framework that uses EEG data to predict age more accurately by combining eyes-open and eyes-closed brain activity patterns.
Contribution
The novel framework integrates periodic and aperiodic EEG features across eyes-open and eyes-closed conditions with explainable AI for improved age prediction.
Findings
The hybrid model achieved a mean age prediction error of 2.24 years, outperforming models using only eyes-open or eyes-closed data.
LIME-based explanations revealed that the central brain region and beta frequency band are key to age-related neural changes.
Abstract
Resting‐state EEG (rsEEG) elucidates neural aging, yet many deep learning approaches rely on full‐spectrum features, focus on eyes‐closed conditions, and lack interpretability. Unlike power spectrum, periodic and aperiodic power spectral density (PAPSD) isolates oscillatory and background components, capturing subtle neural dynamics. Combining eyes‐open and eyes‐closed rsEEG may further improve performance by leveraging the distinct neural states each condition captures. We developed a hybrid deep learning framework integrating PAPSD across both conditions, employing LIME‐based explainable AI and data augmentation in a single approach to enhance clinical relevance and ensure robust generalizability. We used rsEEG data from 608 healthy participants (376 females) aged 20–70 years in the Dortmund Vital Study, recorded under both eyes‐open (three minutes) and eyes‐closed (three minutes)…
Genes, proteins, chemicals, diseases, species, mutations and cell lines named across the full text — each resolved to its canonical identifier and authoritative record.
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Taxonomy
TopicsEEG and Brain-Computer Interfaces · Functional Brain Connectivity Studies · Neural dynamics and brain function
