IEEE Trans Neural Syst Rehabil Eng. 2021;29:1744-1755. doi: 10.1109/TNSRE.2021.3106897. Epub 2021 Sep 6.
Brain-computer interfaces (BCIs) have achieved successful control of assistive devices, e.g. neuroprosthesis or robotic arm. Previous research based on hand movements Electroencephalogram (EEG) has shown limited success in precise and natural control. In this study, we explored the possibilities of decoding movement types and kinematic information for three reach-and-execute actions using movement-related cortical potentials (MRCPs). EEG signals were acquired from 12 healthy subjects during the execution of pinch, palmar and precision disk rotation actions that involved two levels of speeds and forces. In the case of discrimination between hand movement types under each of four different kinematics conditions, we obtained the average peak accuracies of 83.44% and 73.83% for the binary and 3-class classification, respectively. In the case of discrimination between different movement kinematics for each of three actions, the average peak accuracies of 82.9% and 58.2% could be achieved for the two and 4-class scenario. In both cases, peak decoding performance was significantly higher than the subject-specific chance level. We found that hand movement types all could be classified when these actions were executed at four different kinematic parameters. Meanwhile, for each of three hand movements, we decoded movement parameters successfully. Furthermore, the feasibility of decoding hand movements during hand retraction process was also demonstrated. These findings are of great importance for controlling neuroprosthesis or other rehabilitation devices in a fine and natural way, which would drastically increase the acceptance of motor impaired users.
脑机接口 (BCI) 已经成功地控制了辅助设备,例如神经假体或机械臂。以前基于手部运动的脑电图 (EEG) 的研究在精确和自然控制方面取得了有限的成功。在这项研究中,我们探索了使用运动相关皮质电位 (MRCP) 解码三种伸手执行动作的运动类型和运动学信息的可能性。在执行涉及两种速度和力的捏合、手掌和精密圆盘旋转动作期间,从 12 名健康受试者采集 EEG 信号。在四种不同运动学条件下对每种手部运动类型进行区分的情况下,我们分别获得了二进制和 3 类分类的平均峰值准确率为 83.44%和 73.83%。在三种动作中的每一种的不同运动学的情况下进行区分的情况下,对于两和 4 类情况,可以实现平均峰值准确率为 82.9%和 58.2%。在这两种情况下,峰值解码性能都明显高于特定于主体的机会水平。我们发现,当这些动作在四个不同的运动学参数下执行时,所有手部运动类型都可以被分类。同时,对于三种手部运动中的每一种,我们成功地解码了运动参数。此外,还证明了在手部缩回过程中解码手部运动的可行性。这些发现对于以精细和自然的方式控制神经假体或其他康复设备非常重要,这将极大地增加运动障碍用户的接受度。