IEEE Trans Neural Syst Rehabil Eng. 2018 Aug;26(8):1626-1635. doi: 10.1109/TNSRE.2018.2855053. Epub 2018 Jul 11.
Brain-machine interfaces have been used to incorporate the user intention to trigger robotic devices by decoding movement onset from electroencephalography. Active neural participation is crucial to promote brain plasticity thus to enhance the opportunity of motor recovery. This paper presents the decoding of lower-limb movement-related cortical potentials with continuous classification and asynchronous detection. We executed experiments in a customized gait trainer, where 10 healthy subjects performed self-initiated ankle plantar flexion. We further analyzed the features, evaluated the impact of the limb side, and compared the proposed framework with other typical decoding methods. No significant differences were observed between the left and right legs in terms of neural signatures of movement and classification performance. We obtained a higher true positive rate, lower false positives, and comparable latencies with respect to the existing online detection methods. This paper demonstrates the feasibility of the proposed framework to build a closed-loop gait trainer. Potential applications include gait training neurorehabilitation in clinical trials.
脑机接口通过解码脑电图中的运动起始来触发机器人设备,从而将用户的意图整合在一起。积极的神经参与对于促进大脑的可塑性至关重要,从而增加运动恢复的机会。本文提出了一种基于连续分类和异步检测的下肢运动相关皮质电位解码方法。我们在一个定制的步态训练器中进行了实验,其中 10 名健康受试者进行了自我发起的踝跖屈运动。我们进一步分析了特征,评估了肢体侧的影响,并将提出的框架与其他典型的解码方法进行了比较。在运动和分类性能的神经特征方面,左腿和右腿之间没有观察到显著差异。与现有的在线检测方法相比,我们获得了更高的真阳性率、更低的假阳性率和可比的潜伏期。本文证明了提出的框架构建闭环步态训练器的可行性。潜在的应用包括临床试验中的步态训练神经康复。