Kim Hyunji, Chang Won Kee, Kim Won-Seok, Jang Ji-Hee, Lee Yoon-Ah, Vermehren Mareike, Peekhaus Niels, Colucci Annalisa, Angerhöfer Cornelius, Hömberg Volker, Soekadar Surjo R, Paik Nam-Jong
Department of Health Science and Technology, Graduate School of Convergence Science and Technology, Seoul National University; Department of Rehabilitation Medicine, Seoul National University College of Medicine, Seoul National University Bundang Hospital.
Department of Rehabilitation Medicine, Seoul National University College of Medicine, Seoul National University Bundang Hospital.
J Vis Exp. 2025 Apr 18(218). doi: 10.3791/67601.
This study introduces a Brain-Computer Interface (BCI)-controlled upper limb assistive robot for post-stroke rehabilitation. The system utilizes electroencephalogram (EEG) and electrooculogram (EOG) signals to help users assist upper limb function in everyday tasks while interacting with a robotic hand. We evaluated the effectiveness of this BCI-robot system using the Berlin Bimanual Test for Stroke (BeBiTS), a set of 10 daily living tasks involving both hands. Eight stroke patients participated in this study, but only four participants could adapt to the BCI robot system training and perform the postBeBiTS. Notably, when the preBeBiTS score for each item was four or less, the BCI robot system showed greater assistive effectiveness in the postBeBiTS assessment. Furthermore, our current robotic hand does not assist with arm and wrist functions, limiting its use in tasks requiring complex hand movements. More participants are required to confirm the training effectiveness of the BCI-robot system, and future research should consider using robots that can assist with a broader range of upper limb functions. This study aimed to determine the BCI-robot system's ability to assist patients in performing daily living activities.
本研究介绍了一种用于中风后康复的脑机接口(BCI)控制的上肢辅助机器人。该系统利用脑电图(EEG)和眼电图(EOG)信号,帮助用户在与机器人手交互时,在日常任务中辅助上肢功能。我们使用柏林中风双手测试(BeBiTS)评估了这个BCI机器人系统的有效性,这是一组涉及双手的10项日常生活任务。8名中风患者参与了本研究,但只有4名参与者能够适应BCI机器人系统训练并完成BeBiTS测试后的评估。值得注意的是,当每个项目的BeBiTS测试前得分小于或等于4分时,BCI机器人系统在BeBiTS测试后的评估中显示出更大的辅助效果。此外,我们目前的机器人手无法辅助手臂和手腕功能,限制了其在需要复杂手部动作的任务中的应用。需要更多参与者来确认BCI机器人系统的训练效果,未来的研究应考虑使用能够辅助更广泛上肢功能的机器人。本研究旨在确定BCI机器人系统协助患者进行日常生活活动的能力。