Improving Motor Imagery-Based Brain-Computer Interface Performance Based on Sensory Stimulation Training: An Approach Focused on Poorly Performing Users

被引:12
作者
Park, Sangin [1 ]
Ha, Jihyeon [1 ,2 ]
Kim, Da-Hye [1 ]
Kim, Laehyun [1 ,3 ]
机构
[1] Korea Inst Sci & Technol, Ctr Bion, Seoul, South Korea
[2] Hanyang Univ, Dept Biomed Engn, Seoul, South Korea
[3] Hanyang Univ, Dept HY KIST Bioconvergence, Seoul, South Korea
关键词
motor imagery; brain-computer interface (BCI); sensory stimulation training (SST); somatosensory attentional orientation (SAO); poor performer; BCI; FEEDBACK; EEG; MOVEMENTS; SPEED; FORCE;
D O I
10.3389/fnins.2021.732545
中图分类号
Q189 [神经科学];
学科分类号
071006 ;
摘要
The motor imagery (MI)-based brain-computer interface (BCI) is an intuitive interface that provides control over computer applications directly from brain activity. However, it has shown poor performance compared to other BCI systems such as P300 and SSVEP BCI. Thus, this study aimed to improve MI-BCI performance by training participants in MI with the help of sensory inputs from tangible objects (i.e., hard and rough balls), with a focus on poorly performing users. The proposed method is a hybrid of training and imagery, combining motor execution and somatosensory sensation from a ball-type stimulus. Fourteen healthy participants participated in the somatosensory-motor imagery (SMI) experiments (within-subject design) involving EEG data classification with a three-class system (signaling with left hand, right hand, or right foot). In the scenario of controlling a remote robot to move it to the target point, the participants performed MI when faced with a three-way intersection. The SMI condition had a better classification performance than did the MI condition, achieving a 68.88% classification performance averaged over all participants, which was 6.59% larger than that in the MI condition (p < 0.05). In poor performers, the classification performance in SMI was 10.73% larger than in the MI condition (62.18% vs. 51.45%). However, good performers showed a slight performance decrement (0.86%) in the SMI condition compared to the MI condition (80.93% vs. 81.79%). Combining the brain signals from the motor and somatosensory cortex, the proposed hybrid MI-BCI system demonstrated improved classification performance, this phenomenon was predominant in poor performers (eight out of nine subjects). Hybrid MI-BCI systems may significantly contribute to reducing the proportion of BCI-inefficiency users and closing the performance gap with other BCI systems.
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页数:12
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共 54 条
  • [41] Benefits of deep learning classification of continuous noninvasive brain-computer interface control
    Stieger, James R.
    Engel, Stephen A.
    Suma, Daniel
    He, Bin
    [J]. JOURNAL OF NEURAL ENGINEERING, 2021, 18 (04)
  • [42] Review of the BCI competition IV
    Tangermann, Michael
    Mueller, Klaus-Robert
    Aertsen, Ad
    Birbaumer, Niels
    Braun, Christoph
    Brunner, Clemens
    Leeb, Robert
    Mehring, Carsten
    Miller, Kai J.
    Mueller-Putz, Gemot R.
    Nolte, Guido
    Pfurtscheller, Gert
    Preissl, Hubert
    Schalk, Gerwin
    Schoegl, Alois
    Vidaurre, Carmen
    Waldert, Stephan
    Blankertz, Benjamin
    [J]. FRONTIERS IN NEUROSCIENCE, 2012, 6
  • [43] Tibrewal N., 2021, BIORXIV PREPRINT, DOI [10.1101/2021.06.18.448960, DOI 10.1101/2021.06.18.448960]
  • [44] Robust Averaging of Covariance Matrices by Riemannian Geometry for Motor-Imagery Brain-Computer Interfacing
    Uehara, Takashi
    Tanaka, Toshihisa
    Fiori, Simone
    [J]. ADVANCES IN COGNITIVE NEURODYNAMICS (V), 2016, : 347 - 353
  • [45] A BCI based visual-haptic neurofeedback training improves cortical activations and classification performance during motor imagery
    Wang, Zhongpeng
    Zhou, Yijie
    Chen, Long
    Gu, Bin
    Liu, Shuang
    Xu, Minpeng
    Qi, Hongzhi
    He, Feng
    Ming, Dong
    [J]. JOURNAL OF NEURAL ENGINEERING, 2019, 16 (06)
  • [46] Evaluation of motor training performance in 3D virtual environment via combining brain-computer interface and haptic feedback
    Wu, Hong
    Liang, Shuang
    Hang, Wenlong
    Liu, Xiaolu
    Wang, Qiong
    Choi, Kup-Sze
    Qin, Jing
    [J]. ADVANCES IN INFORMATION AND COMMUNICATION TECHNOLOGY, 2017, 107 : 256 - 261
  • [47] Single-Trial Recognition of Imagined Forces and Speeds of Hand Clenching Based on Brain Topography and Brain Network
    Xiong, Xin
    Fu, Yunfa
    Chen, Jian
    Liu, Lijun
    Zhang, Xiabing
    [J]. BRAIN TOPOGRAPHY, 2019, 32 (02) : 240 - 254
  • [48] A Multi-Class BCI Based on Somatosensory Imagery
    Yao, Lin
    Mrachacz-Kersting, Natalie
    Sheng, Xinjun
    Zhu, Xiangyang
    Farina, Dario
    Jiang, Ning
    [J]. IEEE TRANSACTIONS ON NEURAL SYSTEMS AND REHABILITATION ENGINEERING, 2018, 26 (08) : 1508 - 1515
  • [49] A Stimulus-Independent Hybrid BCI Based on Motor Imagery and Somatosensory Attentional Orientation
    Yao, Lin
    Sheng, Xinjun
    Zhang, Dingguo
    Jiang, Ning
    Mrachacz-Kersting, Natalie
    Zhu, Xiangyang
    Farina, Dario
    [J]. IEEE TRANSACTIONS ON NEURAL SYSTEMS AND REHABILITATION ENGINEERING, 2017, 25 (09) : 1674 - 1682
  • [50] Combining Motor Imagery With Selective Sensation Toward a Hybrid-Modality BCI
    Yao, Lin
    Meng, Jianjun
    Zhang, Dingguo
    Sheng, Xinjun
    Zhu, Xiangyang
    [J]. IEEE TRANSACTIONS ON BIOMEDICAL ENGINEERING, 2014, 61 (08) : 2304 - 2312