Deep Residual Convolutional Neural Networks for Brain-Computer Interface to Visualize Neural Processing of Hand Movements in the Human Brain

被引:5
|
作者
Fujiwara, Yosuke [1 ,2 ]
Ushiba, Junichi [3 ]
机构
[1] Keio Univ, Grad Sch Sci & Technol, Yokohama, Japan
[2] Dentsu Ltd, Informat Serv Int, Tokyo, Japan
[3] Keio Univ, Fac Sci & Technol, Yokohama, Japan
关键词
deep learning; brain-computer interface; Grad-CAM; electroencephalography; deep residual convolutional neural networks (CNN); CHRONIC STROKE; SENSORY INPUT; CORTEX; BCI; OPTIMIZATION; GAMES;
D O I
10.3389/fncom.2022.882290
中图分类号
Q [生物科学];
学科分类号
07 ; 0710 ; 09 ;
摘要
Concomitant with the development of deep learning, brain-computer interface (BCI) decoding technology has been rapidly evolving. Convolutional neural networks (CNNs), which are generally used as electroencephalography (EEG) classification models, are often deployed in BCI prototypes to improve the estimation accuracy of a participant's brain activity. However, because most BCI models are trained, validated, and tested via within-subject cross-validation and there is no corresponding generalization model, their applicability to unknown participants is not guaranteed. In this study, to facilitate the generalization of BCI model performance to unknown participants, we trained a model comprising multiple layers of residual CNNs and visualized the reasons for BCI classification to reveal the location and timing of neural activities that contribute to classification. Specifically, to develop a BCI that can distinguish between rest, left-hand movement, and right-hand movement tasks with high accuracy, we created multilayers of CNNs, inserted residual networks into the multilayers, and used a larger dataset than in previous studies. The constructed model was analyzed with gradient-class activation mapping (Grad-CAM). We evaluated the developed model via subject cross-validation and found that it achieved significantly improved accuracy (85.69 +/- 1.10%) compared with conventional models or without residual networks. Grad-CAM analysis of the classification of cases in which our model produced correct answers showed localized activity near the premotor cortex. These results confirm the effectiveness of inserting residual networks into CNNs for tuning BCI. Further, they suggest that recording EEG signals over the premotor cortex and some other areas contributes to high classification accuracy.
引用
收藏
页数:18
相关论文
共 50 条
  • [21] The research of brain-computer interface based on AAR parameters and neural networks classifier
    Ma, Xin
    2011 INTERNATIONAL CONFERENCE ON COMPUTER SCIENCE AND NETWORK TECHNOLOGY (ICCSNT), VOLS 1-4, 2012, : 2561 - 2564
  • [22] Programmable Neural Processing on a Smartdust for Brain-Computer Interfaces
    Sun, Yuwen
    Huang, Shimeng
    Oresko, Joseph J.
    Cheng, Allen C.
    IEEE TRANSACTIONS ON BIOMEDICAL CIRCUITS AND SYSTEMS, 2010, 4 (05) : 265 - 273
  • [23] Motor Imagery Classification for Brain Computer Interface Using Deep Convolutional Neural Networks and Mixup Augmentation
    Alwasiti, Haider
    Yusoff, Mohd Zuki
    IEEE OPEN JOURNAL OF ENGINEERING IN MEDICINE AND BIOLOGY, 2022, 3 : 171 - 177
  • [24] Deep learning and deep knowledge representation in Spiking Neural Networks for Brain-Computer Interfaces
    Kumarasinghe, Kaushalya
    Kasabov, Nikola
    Taylor, Denise
    NEURAL NETWORKS, 2020, 121 (121) : 169 - 185
  • [25] Multi-Functional Brain Computer Interface Using Convolutional Neural Networks
    Choi, Woosung
    Yeom, Honggi
    Ko, Nakyong
    2022 22ND INTERNATIONAL CONFERENCE ON CONTROL, AUTOMATION AND SYSTEMS (ICCAS 2022), 2022, : 1072 - 1076
  • [26] Deep Learning With Convolutional Neural Networks for Motor Brain-Computer Interfaces Based on Stereo-Electroencephalography (SEEG)
    Wu, Xiaolong
    Jiang, Shize
    Li, Guangye
    Liu, Shengjie
    Metcalfe, Benjamin
    Chen, Liang
    Zhang, Dingguo
    IEEE JOURNAL OF BIOMEDICAL AND HEALTH INFORMATICS, 2023, 27 (05) : 2387 - 2398
  • [27] On-Board brain-computer interface based on the recognition of patterns of brain activity through a convolutional neural network
    Makhrov, Stanislav S.
    Denisova, Elena N.
    2018 SYSTEMS OF SIGNALS GENERATING AND PROCESSING IN THE FIELD OF ON BOARD COMMUNICATIONS, 2018,
  • [28] Convolutional Neural Networks for P300 Detection with Application to Brain-Computer Interfaces
    Cecotti, Hubert
    Graeser, Axel
    IEEE TRANSACTIONS ON PATTERN ANALYSIS AND MACHINE INTELLIGENCE, 2011, 33 (03) : 433 - 445
  • [29] A Review: Research Progress of Neural Probes for Brain Research and Brain-Computer Interface
    Luo, Jiahui
    Xue, Ning
    Chen, Jiamin
    BIOSENSORS-BASEL, 2022, 12 (12):
  • [30] Modeling and classification of voluntary and imagery movements for brain-computer interface from fNIR and EEG signals through convolutional neural network
    Rahman, Md. Asadur
    Uddin, Mohammad Shorif
    Ahmad, Mohiuddin
    HEALTH INFORMATION SCIENCE AND SYSTEMS, 2019, 7 (01)