Brantley Justin A, Luu Trieu Phat, Ozdemir Recep, Zhu Fangshi, Winslow Anna T, Huang Helen, Contreras-Vidal Jose L
Annu Int Conf IEEE Eng Med Biol Soc. 2016 Aug;2016:5729-5732. doi: 10.1109/EMBC.2016.7592028.
Automated walking intention detection remains a challenge in lower-limb neuroprosthetic systems. Here, we assess the feasibility of extracting motor intent from scalp electroencephalography (EEG). First, we evaluated the corticomuscular coherence between central EEG electrodes (C1, Cz, C2) and muscles of the shank and thigh during walking on level ground and stairs. Second, we trained decoders to predict the linear envelope of the surface electromyogram (EMG). We observed significant EEG-led corticomuscular coupling between electrodes and sEMG (tibialis anterior) in the high delta (3-4 Hz) and low theta (4-5 Hz) frequency bands during level walking, indicating efferent signaling from the cortex to peripheral motor neurons. The coherence was increased between EEG and vastus lateralis and tibialis anterior in the delta band (<; 2 Hz) during stair ascent, indicating a task specific modulation in corticomuscular coupling. However, EMG was the leading signal for biceps femoris and gastrocnemius coherence during stair ascent, possibly representing afferent feedback loops from periphery to the motor cortex. Decoder validation showed that EEG signals contained information about the sEMG patterns during over ground walking, however, the accuracy of the predicted sEMG patterns decreased during the stair condition. Overall, these initial findings support the feasibility of integrating sEMG and EEG into a hybrid decoder for volitional control of lower limb neuroprostheses.
在下肢神经假体系统中,自动步行意图检测仍然是一项挑战。在此,我们评估了从头皮脑电图(EEG)中提取运动意图的可行性。首先,我们评估了在平地上行走和上楼梯过程中,中央脑电图电极(C1、Cz、C2)与小腿和大腿肌肉之间的皮质肌肉相干性。其次,我们训练解码器来预测表面肌电图(EMG)的线性包络。我们观察到,在平地上行走时,电极与表面肌电图(胫前肌)之间在高δ波(3 - 4Hz)和低θ波(4 - 5Hz)频段存在显著的脑电图主导的皮质肌肉耦合,这表明从皮质到外周运动神经元的传出信号。在上楼梯过程中,脑电图与股外侧肌和胫前肌在δ波频段(<; 2Hz)的相干性增加,表明皮质肌肉耦合存在任务特异性调制。然而,在上楼梯过程中,肌电图是股二头肌和腓肠肌相干性的主导信号,这可能代表了从外周到运动皮质的传入反馈回路。解码器验证表明,脑电图信号包含关于地面行走过程中表面肌电图模式的信息,然而,在楼梯条件下预测的表面肌电图模式的准确性降低。总体而言,这些初步发现支持了将表面肌电图和脑电图集成到混合解码器中用于下肢神经假体自主控制的可行性。