Literature DB >> 22208123

A large clinical study on the ability of stroke patients to use an EEG-based motor imagery brain-computer interface.

Kai Keng Ang1, Cuntai Guan, Karen Sui Geok Chua, Beng Ti Ang, Christopher Wee Keong Kuah, Chuanchu Wang, Kok Soon Phua, Zheng Yang Chin, Haihong Zhang.   

Abstract

Brain-computer interface (BCI) technology has the prospects of helping stroke survivors by enabling the interaction with their environ ment through brain signals rather than through muscles, and restoring motor function by inducing activity-dependent brain plasticity. This paper presents a clinical study on the extent of detectable brain signals from a large population of stroke patients in using EEG-based motor imagery BCI. EEG data were collected from 54 stroke patients whereby finger tapping and motor imagery of the stroke-affected hand were performed by 8 and 46 patients, respectively. EEG data from 11 patients who gave further consent to perform motor imagery were also collected for second calibration and third independent test sessions conducted on separate days. Off-line accuracies of classifying the two classes of EEG from finger tapping or motor imagery of the stroke-affected hand versus the EEG from background rest were then assessed and compared to 16 healthy subjects. The mean off-line accuracy of detecting motor imagery by the 46 patients (mu=0.74) was significantly lower than finger tapping by 8 patients (mu=0.87, p=0.008), but not significantly lower than motor imagery by healthy subjects (mu=0.78, p=0.23). Six stroke patients performed motor imagery at chance level, and no correlation was found between the accuracies of detecting motor imagery and their motor impairment in terms of Fugl-Meyer Assessment (p=0.29). The off-line accuracies of the 11 patients in the second session (mu=0.76) were not significantly different from the first session (mu=0.72, p=0.16), or from the on-line accuracies of the third independent test session (mu=0.82, p=0.14). Hence this study showed that the majority of stroke patients could use EEG-based motor imagery BCI.

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Year:  2011        PMID: 22208123     DOI: 10.1177/155005941104200411

Source DB:  PubMed          Journal:  Clin EEG Neurosci        ISSN: 1550-0594            Impact factor:   1.843


  51 in total

1.  An Automatic Channel Selection Approach for ICA-Based Motor Imagery Brain Computer Interface.

Authors:  Jing Ruan; Xiaopei Wu; Bangyan Zhou; Xiaojing Guo; Zhao Lv
Journal:  J Med Syst       Date:  2018-11-06       Impact factor: 4.460

2.  Current Trends in Robot-Assisted Upper-Limb Stroke Rehabilitation: Promoting Patient Engagement in Therapy.

Authors:  Amy A Blank; James A French; Ali Utku Pehlivan; Marcia K O'Malley
Journal:  Curr Phys Med Rehabil Rep       Date:  2014-09

Review 3.  Physiological properties of brain-machine interface input signals.

Authors:  Marc W Slutzky; Robert D Flint
Journal:  J Neurophysiol       Date:  2017-06-14       Impact factor: 2.714

4.  Effects of Soft Drinks on Resting State EEG and Brain-Computer Interface Performance.

Authors:  Jianjun Meng; John Mundahl; Taylor Streitz; Kaitlin Maile; Nicholas Gulachek; Jeffrey He; Bin He
Journal:  IEEE Access       Date:  2017-09-11       Impact factor: 3.367

5.  Improving robotic stroke rehabilitation by incorporating neural intent detection: Preliminary results from a clinical trial.

Authors:  Jennifer L Sullivan; Nikunj A Bhagat; Nuray Yozbatiran; Ruta Paranjape; Colin G Losey; Robert G Grossman; Jose L Contreras-Vidal; Gerard E Francisco; Marcia K O'Malley
Journal:  IEEE Int Conf Rehabil Robot       Date:  2017-07

6.  Using Multiple Decomposition Methods and Cluster Analysis to Find and Categorize Typical Patterns of EEG Activity in Motor Imagery Brain-Computer Interface Experiments.

Authors:  Alexander Frolov; Pavel Bobrov; Elena Biryukova; Mikhail Isaev; Yaroslav Kerechanin; Dmitry Bobrov; Alexander Lekin
Journal:  Front Robot AI       Date:  2020-07-30

7.  Decoding continuous limb movements from high-density epidural electrode arrays using custom spatial filters.

Authors:  A R Marathe; D M Taylor
Journal:  J Neural Eng       Date:  2013-04-23       Impact factor: 5.379

8.  Impact of Shoulder Abduction Loading on Brain-Machine Interface in Predicting Hand Opening and Closing in Individuals With Chronic Stroke.

Authors:  Jun Yao; Clay Sheaff; Carolina Carmona; Julius P A Dewald
Journal:  Neurorehabil Neural Repair       Date:  2015-07-27       Impact factor: 3.919

9.  Simultaneous and independent control of a brain-computer interface and contralateral limb movement.

Authors:  Ivana Milovanovic; Robert Robinson; Eberhard E Fetz; Chet T Moritz
Journal:  Brain Comput Interfaces (Abingdon)       Date:  2015-09-14

Review 10.  A review of the progression and future implications of brain-computer interface therapies for restoration of distal upper extremity motor function after stroke.

Authors:  Alexander Remsik; Brittany Young; Rebecca Vermilyea; Laura Kiekhoefer; Jessica Abrams; Samantha Evander Elmore; Paige Schultz; Veena Nair; Dorothy Edwards; Justin Williams; Vivek Prabhakaran
Journal:  Expert Rev Med Devices       Date:  2016-05       Impact factor: 3.166

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