Probabilistic Structure Learning for EEG/MEG Source Imaging with Hierarchical Graph Prior
Feng Liu, Li Wang, Yifei Lou, Rencang Li, Patrick Purdon

TL;DR
This paper introduces a probabilistic EEG/MEG source imaging method with a hierarchical graph prior that improves noise robustness and captures time-varying brain activity patterns, validated through synthetic and real data.
Contribution
A novel hierarchical graph prior model for EEG/MEG source imaging that enforces spatiotemporal continuity and outperforms benchmark methods in noisy conditions.
Findings
Significant improvement in source localization accuracy.
Robustness to high noise levels demonstrated.
Effective capture of time-varying brain activity patterns.
Abstract
Brain source imaging is an important method for noninvasively characterizing brain activity using Electroencephalogram (EEG) or Magnetoencephalography (MEG) recordings. Traditional EEG/MEG Source Imaging (ESI) methods usually assume that either source activity at different time points is unrelated, or that similar spatiotemporal patterns exist across an entire study period. The former assumption makes ESI analyses sensitive to noise, while the latter renders ESI analyses unable to account for time-varying patterns of activity. To effectively deal with noise while maintaining flexibility and continuity among brain activation patterns, we propose a novel probabilistic ESI model based on a hierarchical graph prior. Under our method, a spanning tree constraint ensures that activity patterns have spatiotemporal continuity. An efficient algorithm based on alternating convex search is…
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Taxonomy
TopicsBlind Source Separation Techniques · EEG and Brain-Computer Interfaces · Functional Brain Connectivity Studies
