4.7 Article

A Novel Classification Framework Using the Graph Representations of Electroencephalogram for Motor Imagery Based Brain-Computer Interface

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TNSRE.2021.3139095

关键词

Task analysis; Electroencephalography; Image edge detection; Electrodes; Mutual information; Entropy; Symmetric matrices; Motor imagery (MI); electroencephalogram (EEG); functional connectivity; graph representation

资金

  1. National Key Research and Development Program [2017YFB13003002]
  2. National Natural Science Foundation of China [61573142, 61773164]
  3. Program of Introducing Talents of Discipline to Universities (the 111 Project) [B17017]
  4. Shanghai Municipal Education Commission
  5. Shanghai Education Development Foundation [19SG25]

向作者/读者索取更多资源

In this study, we propose a novel motor imagery classification model based on functional connectivity measurement between brain regions and graph theory. The model extracts motifs describing local network structures from functional connectivity graphs and uses a graph embedding model to build a classifier. Experimental results showed high classification accuracies, indicating the potential of our proposed method for motor imagery classification.
The motor imagery (MI) based brain-computer interfaces (BCIs) have been proposed as a potential physical rehabilitation technology. However, the low classification accuracy achievable with MI tasks is still a challenge when building effective BCI systems. We propose a novel MI classification model based on measurement of functional connectivity between brain regions and graph theory. Specifically, motifs describing local network structures in the brain are extracted from functional connectivity graphs. A graph embedding model called Ego-CNNs is then used to build a classifier, which can convert the graph from a structural representation to a fixed-dimensional vector for detecting critical structure in the graph. We validate our proposed method on four datasets, and the results show that our proposed method produces high classification accuracies in two-class classification tasks (92.8% for dataset 1, 93.4% for dataset 2, 96.5% for dataset 3, and 80.2% for dataset 4) and multiclass classification tasks (90.33% for dataset 1). Our proposed method achieves a mean Kappa value of 0.88 across nine participants, which is superior to other methods we compared it to. These results indicate that there is a local structural difference in functional connectivity graphs extracted under different motor imagery tasks. Our proposed method has great potential for motor imagery classification in future studies.

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