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Authors |
Araki, Nozomu
Graduate School of Engineering, University of Hyogo
Hoshino, Takayuki
Graduate School of Science and Technology, Hirosaki University
Fukayama, Osamu
Center for Information and Neural Networks, National Institute of Information and Communications Technology
Mabuchi, Kunihiko
Graduate School of Information Science and Technology, The University of Tokyo
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Keywords | brain-machine interface
event related desynchronization
ergometer
self-agency
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Abstract | Objective: Robotic rehabilitation systems have been investigated to assist with motor dysfunction recovery in patients with lower-extremity paralysis caused by central nervous system lesions. These systems are intended to provide appropriate sensory feedback associated with locomotion. Appropriate feedback is thought to cause synchronous neuron firing, resulting in the recovery of function. Approach: In this study, we designed and evaluated an ergometric cycling wheelchair, with a brain-machine interface (BMI), that can force the legs to move by including normal stepping speeds and quick responses. Experiments were conducted in five healthy subjects and one patient with spinal cord injury (SCI), who experienced the complete paralysis of the lower limbs. Event-related desynchronization (ERD) in the β band (18‐28 Hz) was used to detect lower-limb motor images. Main results: An ergometer-based BMI system was able to safely and easily force patients to perform leg movements, at a rate of approximately 1.6 seconds/step (19 rpm), with an online accuracy rate of 73.1% for the SCI participant. Mean detection time from the cue to pedaling onset was 0.83±0.31 s Significance: This system can easily and safely maintain a normal walking speed during the experiment and be designed to accommodate the expected delay between the intentional onset and physical movement, to achieve rehabilitation effects for each participant. Similar BMI systems, implemented with rehabilitation systems, may be applicable to a wide range of patients.
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Publisher | IOP Publishing
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Content Type |
Journal Article
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Link | |
ISSN | 17412560
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EISSN | 17412552
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Journal Title | JOURNAL OF NEURAL ENGINEERING
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Volume | 18
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Issue | 1
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Published Date | 2021-02
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Publisher-DOI | |
Text Version |
Author
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Rights | (C) 2021 IOP Publishing Ltd
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Citation | Nakatani Shintaro, Araki Nozomu, Hoshino Takayuki, et al. Brain-controlled cycling system for rehabilitation following paraplegia with delay-time prediction. JOURNAL OF NEURAL ENGINEERING. 2021. 18(1). doi:10.1088/1741-2552/abd1bf
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Department |
Faculty of Engineering/Graduate School of Engineering
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Language |
English
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Web of Science Key ut | WOS:000620951300001
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