Decoding Attempted Hand Movements in Stroke Patients Using Surface Electromyography

被引:17
|
作者
Jochumsen, Mads [1 ]
Niazi, Imran Khan [1 ,2 ,3 ]
Rehman, Muhammad Zia Ur [4 ,5 ]
Amjad, Imran [2 ,4 ,5 ]
Shafique, Muhammad [4 ,5 ]
Gilani, Syed Omer [6 ]
Waris, Asim [6 ]
机构
[1] Aalborg Univ, Dept Hlth Sci & Technol, DK-9220 Aalborg, Denmark
[2] New Zealand Coll Chiropract, Ctr Chiropract Res, Auckland 1060, New Zealand
[3] AUT Univ, Hlth & Rehabil Res Inst, Auckland 1010, New Zealand
[4] Riphah Int Univ, Fac Rehabil & Allied Sci, Islamabad 44000, Pakistan
[5] Riphah Int Univ, Fac Engn & Appl Sci, Islamabad 44000, Pakistan
[6] Natl Univ Sci & Technol NUST, Sch Mech & Mfg Engn, Dept Biomed Engn & Sci, Islamabad 44000, Pakistan
关键词
stroke; EMG; brain-computer interface; myoelectric control; pattern recognition; BRAIN-MACHINE INTERFACE; HEMIPARETIC STROKE; MOTOR RECOVERY; REHABILITATION; STIMULATION; INDIVIDUALS; SYSTEM;
D O I
10.3390/s20236763
中图分类号
O65 [分析化学];
学科分类号
070302 ; 081704 ;
摘要
Brain- and muscle-triggered exoskeletons have been proposed as a means for motor training after a stroke. With the possibility of performing different movement types with an exoskeleton, it is possible to introduce task variability in training. It is difficult to decode different movement types simultaneously from brain activity, but it may be possible from residual muscle activity that many patients have or quickly regain. This study investigates whether nine different motion classes of the hand and forearm could be decoded from forearm EMG in 15 stroke patients. This study also evaluates the test-retest reliability of a classical, but simple, classifier (linear discriminant analysis) and advanced, but more computationally intensive, classifiers (autoencoders and convolutional neural networks). Moreover, the association between the level of motor impairment and classification accuracy was tested. Three channels of surface EMG were recorded during the following motion classes: Hand Close, Hand Open, Wrist Extension, Wrist Flexion, Supination, Pronation, Lateral Grasp, Pinch Grasp, and Rest. Six repetitions of each motion class were performed on two different days. Hudgins time-domain features were extracted and classified using linear discriminant analysis and autoencoders, and raw EMG was classified with convolutional neural networks. On average, 79 +/- 12% and 80 +/- 12% (autoencoders) of the movements were correctly classified for days 1 and 2, respectively, with an intraclass correlation coefficient of 0.88. No association was found between the level of motor impairment and classification accuracy (Spearman correlation: 0.24). It was shown that nine motion classes could be decoded from residual EMG, with autoencoders being the best classification approach, and that the results were reliable across days; this may have implications for the development of EMG-controlled exoskeletons for training in the patient's home.
引用
收藏
页码:1 / 14
页数:14
相关论文
共 50 条
  • [41] Hand Gesture Recognition Based on Surface Electromyography
    Samadani, Ali-Akbar
    Kulic, Dana
    2014 36TH ANNUAL INTERNATIONAL CONFERENCE OF THE IEEE ENGINEERING IN MEDICINE AND BIOLOGY SOCIETY (EMBC), 2014, : 4196 - 4199
  • [42] Decoding Individual Finger Movements from One Hand Using Human EEG Signals
    Liao, Ke
    Xiao, Ran
    Gonzalez, Jania
    Ding, Lei
    PLOS ONE, 2014, 9 (01):
  • [43] Surface Electromyography Signal for Artificial Hand Control
    Patricks, Jonathan Victor
    Thing, Goh Thing
    Hong, Lip Zhan
    Zourmand, Alireza
    2020 11TH IEEE CONTROL AND SYSTEM GRADUATE RESEARCH COLLOQUIUM (ICSGRC), 2020, : 366 - 370
  • [44] Hand Gesture Recognition Using Compact CNN via Surface Electromyography Signals
    Chen, Lin
    Fu, Jianting
    Wu, Yuheng
    Li, Haochen
    Zheng, Bin
    SENSORS, 2020, 20 (03)
  • [45] Neural network based prediction of parkinsonian hand tremor using surface electromyography
    Chandra, Sourav
    Bakshi, Koushik
    Konar, Amit
    Tibarewala, D. N.
    INTERNATIONAL JOURNAL OF SIGNAL AND IMAGING SYSTEMS ENGINEERING, 2012, 5 (04) : 246 - 252
  • [46] Electric Prosthetic Hand Activated Using Two-Channel Surface Electromyography
    Supakitamonphan, C.
    Suksri, S.
    Pramunrueang, N.
    Chaichana, T.
    2015 8TH BIOMEDICAL ENGINEERING INTERNATIONAL CONFERENCE (BMEICON), 2015,
  • [47] Sensing and decoding the neural drive to paralyzed muscles during attempted movements of a person with tetraplegia using a sleeve array
    Ting, Jordyn E.
    Del Vecchio, Alessandro
    Sarma, Devapratim
    Verma, Nikhil
    Colachis, Samuel C.
    Annetta, Nicholas, V
    Collinger, Jennifer L.
    Farina, Dario
    Weber, Douglas J.
    JOURNAL OF NEUROPHYSIOLOGY, 2021, 126 (06) : 2104 - 2118
  • [48] Hand Posture and Force Estimation Using Surface Electromyography and an Artificial Neural Network
    Wang, Mengcheng
    Zhao, Chuan
    Barr, Alan
    Fan, Hao
    Yu, Suihuai
    Kapellusch, Jay
    Harris Adamson, Carisa
    HUMAN FACTORS, 2023, 65 (03) : 382 - 402
  • [49] Hand Motion Classification Using a Multi-Channel Surface Electromyography Sensor
    Tang, Xueyan
    Liu, Yunhui
    Lv, Congyi
    Sun, Dong
    SENSORS, 2012, 12 (02) : 1130 - 1147
  • [50] Flexible Neural Trees for Online Hand Gesture Recognition using Surface Electromyography
    Guo, Yina
    Wang, Qinghua
    Huang, Shuhua
    Abraham, Ajith
    JOURNAL OF COMPUTERS, 2012, 7 (05) : 1099 - 1103