KCS-FCnet: Kernel Cross-Spectral Functional Connectivity Network for EEG-Based Motor Imagery Classification.
Daniel Guillermo García-MurilloAndrés Marino Álvarez-MezaCésar Germán Castellanos-DomínguezPublished in: Diagnostics (Basel, Switzerland) (2023)
This paper uses EEG data to introduce an approach for classifying right and left-hand classes in Motor Imagery (MI) tasks. The Kernel Cross-Spectral Functional Connectivity Network (KCS-FCnet) method addresses these limitations by providing richer spatial-temporal-spectral feature maps, a simpler architecture, and a more interpretable approach for EEG-driven MI discrimination. In particular, KCS-FCnet uses a single 1D-convolutional-based neural network to extract temporal-frequency features from raw EEG data and a cross-spectral Gaussian kernel connectivity layer to model channel functional relationships. As a result, the functional connectivity feature map reduces the number of parameters, improving interpretability by extracting meaningful patterns related to MI tasks. These patterns can be adapted to the subject's unique characteristics. The validation results prove that introducing KCS-FCnet shallow architecture is a promising approach for EEG-based MI classification with the potential for real-world use in brain-computer interface systems.
Keyphrases
- functional connectivity
- resting state
- neural network
- deep learning
- optical coherence tomography
- machine learning
- big data
- working memory
- dual energy
- oxidative stress
- artificial intelligence
- risk assessment
- computed tomography
- magnetic resonance imaging
- brain injury
- white matter
- subarachnoid hemorrhage
- magnetic resonance