Biomedical Engineering Department, Semnan University, Semnan, Iran.
Neuroscience. 2024 Dec 6;562:1-9. doi: 10.1016/j.neuroscience.2024.10.030. Epub 2024 Oct 23.
Detecting intentions and estimating movement trajectories in a human-machine interface (HMI) using electromyogram (EMG) signals is particularly challenging, especially for individuals with movement impairments. Therefore, incorporating additional information from other biological sources, potential discrete information in the movement, and the EMG signal can be practical. This study combined EMG and target information to enhance estimation performance during reaching movements. EMG activity of the shoulder and arm muscles, elbow angle, and the electroencephalogram signals of ten healthy subjects were recorded while they reached blinking targets. The reaching target was recognized by steady-state visual evoked potential (SSVEP). The selected target's final angle and EMG were then mapped to the elbow angle trajectory. The proposed bimodal structure, which integrates EMG and final elbow angle information, outperformed the EMG-based decoder. Even under conditions of higher fatigue, the proposed structure provided better performance than the EMG decoder. Including additional information about the recognized reaching target in the trajectory model improved the estimation of the reaching profile. Consequently, this study's findings suggest that bimodal decoders are highly beneficial for enhancing assistive robotic devices and prostheses, especially for real-time upper limb rehabilitation.
使用肌电图 (EMG) 信号在人机界面 (HMI) 中检测意图和估计运动轨迹特别具有挑战性,尤其是对于运动障碍者。因此,结合来自其他生物源的附加信息、运动中的潜在离散信息以及 EMG 信号是切实可行的。本研究结合了 EMG 和目标信息,以增强在进行伸展运动时的估计性能。在十名健康受试者进行眨眼目标伸展运动时,记录了肩部和手臂肌肉的 EMG 活动、肘部角度以及脑电图信号。伸展目标由稳态视觉诱发电位 (SSVEP) 识别。然后将所选目标的最终角度和 EMG 映射到肘部角度轨迹。将 EMG 和最终肘部角度信息集成的提出的双模结构在性能上优于基于 EMG 的解码器。即使在更高疲劳条件下,所提出的结构也提供了优于 EMG 解码器的性能。在轨迹模型中包含关于识别出的伸展目标的附加信息,提高了对伸展轮廓的估计。因此,本研究的结果表明,双模解码器对于增强辅助机器人设备和假肢非常有益,特别是对于实时上肢康复。