Zhang Ruoqing, Feng Shanshan, Hu Nan, Low Shunkang, Li Meng, Chen Xiaogang, Cui Hongyan
IEEE J Biomed Health Inform. 2024 Jul;28(7):4194-4203. doi: 10.1109/JBHI.2024.3392412. Epub 2024 Jul 2.
Soft robotic glove controlled by a brain-computer interface (BCI) have demonstrated effectiveness in hand rehabilitation for stroke patients. Current systems rely on static visual representations for patients to perform motor imagination (MI) tasks, resulting in lower BCI performance. Therefore, this study innovatively used MI and high-frequency steady-state visual evoked potential (SSVEP) to construct a friendly and natural hybrid BCI paradigm. Specifically, the stimulation interface sequentially presented decomposed action pictures of the left and right hands gripping a ball, with the pictures flashing at specific stimulation frequencies (left: 34 Hz, right: 35 Hz). Integrating soft robotic glove as feedback, we established a comprehensive "peripheral - central - peripheral" hand rehabilitation system to facilitate the hand rehabilitation of patients. Filter bank common spatial pattern (FBCSP) and filter bank canonical correlation analysis (FBCCA) algorithms were used to identify MI and SSVEP signals, respectively. Additionally, we proposed a novel fusion algorithm to decide the final output of the system. The feasibility of the proposed system was validated through online experiments involving 12 healthy subjects and 9 stroke patients, achieving accuracy rates of 95.83 ± 6.83% and 63.33 ± 10.38, respectively. The accuracy of MI and SSVEP in 12 healthy subjects reached 81.67 ± 15.63% and 95.14 ± 7.47%, both lower than the accuracy after fusion, these results confirmed the effectiveness of the proposed algorithm. The accuracy rate was more than 50% in both healthy subjects and patients, confirming the effectiveness of the proposed system.
由脑机接口(BCI)控制的软机器人手套已在中风患者的手部康复中显示出有效性。当前系统依靠静态视觉表征让患者执行运动想象(MI)任务,导致脑机接口性能较低。因此,本研究创新性地使用运动想象和高频稳态视觉诱发电位(SSVEP)构建了一种友好且自然的混合脑机接口范式。具体而言,刺激界面依次呈现左手和右手抓球的分解动作图片,图片以特定刺激频率闪烁(左:34Hz,右:35Hz)。将软机器人手套作为反馈进行整合,我们建立了一个全面的“外周 - 中枢 - 外周”手部康复系统,以促进患者的手部康复。分别使用滤波器组公共空间模式(FBCSP)和滤波器组典型相关分析(FBCCA)算法来识别运动想象和稳态视觉诱发电位信号。此外,我们提出了一种新颖的融合算法来决定系统的最终输出。通过涉及12名健康受试者和9名中风患者的在线实验验证了所提出系统的可行性,准确率分别达到95.83±6.83%和63.33±10.38。12名健康受试者中运动想象和稳态视觉诱发电位的准确率分别达到81.67±15.63%和95.14±7.47%,均低于融合后的准确率,这些结果证实了所提算法的有效性。健康受试者和患者的准确率均超过50%,证实了所提系统的有效性。