IEEE Transactions on Neural Systems and Rehabilitation Engineering (Jan 2022)

An Effective Fusing Approach by Combining Connectivity Network Pattern and Temporal-Spatial Analysis for EEG-Based BCI Rehabilitation

  • Lei Cao,
  • Wenrong Wang,
  • Chenxi Huang,
  • Zhixiong Xu,
  • Han Wang,
  • Jie Jia,
  • Shugeng Chen,
  • Yilin Dong,
  • Chunjiang Fan,
  • Victor Hugo C. de Albuquerque

DOI
https://doi.org/10.1109/TNSRE.2022.3198434
Journal volume & issue
Vol. 30
pp. 2264 – 2274

Abstract

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Motor-modality-based brain computer interface (BCI) could promote the neural rehabilitation for stroke patients. Temporal-spatial analysis was commonly used for pattern recognition in this task. This paper introduced a novel connectivity network analysis for EEG-based feature selection. The network features of connectivity pattern not only captured the spatial activities responding to motor task, but also mined the interactive pattern among these cerebral regions. Furthermore, the effective combination between temporal-spatial analysis and network analysis was evaluated for improving the performance of BCI classification (81.7%). And the results demonstrated that it could raise the classification accuracies for most of patients (6 of 7 patients). This proposed method was meaningful for developing the effective BCI training program for stroke rehabilitation.

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