Novel Approach Explains Spatio-Spectral Interactions in Raw Electroencephalogram Deep Learning Classifiers.
Charles A EllisAbhinav SattirajuRobyn L MillerVince D CalhounPublished in: bioRxiv : the preprint server for biology (2023)
The application of deep learning classifiers to resting-state electroencephalography (rs-EEG) data has become increasingly common. However, relative to studies using traditional machine learning methods and extracted features, deep learning methods are less explainable. A growing number of studies have presented explainability approaches for rs-EEG deep learning classifiers. However, to our knowledge, no approaches give insight into spatio-spectral interactions (i.e., how spectral activity in one channel may interact with activity in other channels). In this study, we combine gradient and perturbation-based explainability approaches to give insight into spatio-spectral interactions in rs-EEG deep learning classifiers for the first time. We present the approach within the context of major depressive disorder (MDD) diagnosis identifying differences in frontal δ activity and reduced interactions between frontal electrodes and other electrodes. Our approach provides novel insights and represents a significant step forward for the field of explainable EEG classification.
Keyphrases
- deep learning
- functional connectivity
- resting state
- major depressive disorder
- machine learning
- artificial intelligence
- optical coherence tomography
- working memory
- convolutional neural network
- bipolar disorder
- big data
- healthcare
- dual energy
- case control
- reduced graphene oxide
- computed tomography
- electronic health record
- magnetic resonance
- carbon nanotubes