EEG-GMACN: Interpretable EEG Graph Mutual Attention Convolutional Network
Journal:
arXiv
Published Date:
Dec 15, 2024
Abstract
Electroencephalogram (EEG) is a valuable technique to record brain electrical
activity through electrodes placed on the scalp. Analyzing EEG signals
contributes to the understanding of neurological conditions and developing
brain-computer interface. Graph Signal Processing (GSP) has emerged as a
promising method for EEG spatial-temporal analysis, by further considering the
topological relationships between electrodes. However, existing GSP studies
lack interpretability of electrode importance and the credibility of prediction
confidence. This work proposes an EEG Graph Mutual Attention Convolutional
Network (EEG-GMACN), by introducing an 'Inverse Graph Weight Module' to output
interpretable electrode graph weights, enhancing the clinical credibility and
interpretability of EEG classification results. Additionally, we incorporate a
mutual attention mechanism module into the model to improve its capability to
distinguish critical electrodes and introduce credibility calibration to assess
the uncertainty of prediction results. This study enhances the transparency and
effectiveness of EEG analysis, paving the way for its widespread use in
clinical and neuroscience research.