Randazzo Luca, Iturrate Inaki, Chavarriaga Ricardo, Leeb Robert, Del Millan Jose R
Annu Int Conf IEEE Eng Med Biol Soc. 2015 Aug;2015:1115-8. doi: 10.1109/EMBC.2015.7318561.
Brain-computer interfaces (BCI) have been shown to be a promising tool in rehabilitation and assistive scenarios. Within these contexts, brain signals can be decoded and used as commands for a robotic device, allowing to translate user's intentions into motor actions in order to support the user's impaired neuro-muscular system. Recently, it has been suggested that slow cortical potentials (SCPs), negative deflections in the electroencephalographic (EEG) signals peaking around one second before the initiation of movements, might be of interest because they offer an accurate time resolution for the provided feedback. Many state-of-the-art studies exploiting SCPs have focused on decoding intention of movements related to walking and arm reaching, but up to now few studies have focused on decoding the intention to grasp, which is of fundamental importance in upper-limb tasks. In this work, we present a technique that exploits EEG to decode grasping correlates during reaching movements. Results obtained with four subjects show the existence of SCPs prior to the execution of grasping movements and how they can be used to classify, with accuracy rates greater than 70% across all subjects, the intention to grasp. Using a sliding window approach, we have also demonstrated how this intention can be decoded on average around 400 ms before the grasp movements for two out of four subjects, and after the onset of grasp itself for the two other subjects.
脑机接口(BCI)已被证明是康复和辅助场景中一种很有前景的工具。在这些背景下,脑信号可以被解码并用作机器人设备的指令,从而将用户意图转化为运动动作,以支持用户受损的神经肌肉系统。最近,有人提出慢皮层电位(SCPs)可能值得关注,它是脑电图(EEG)信号中的负向偏转,在运动开始前约一秒达到峰值,因为它们为所提供的反馈提供了精确的时间分辨率。许多利用SCPs的前沿研究都集中在解码与行走和手臂伸展相关的运动意图上,但到目前为止,很少有研究关注解码抓握意图,而抓握意图在上肢任务中至关重要。在这项工作中,我们提出了一种利用脑电图来解码伸手动作过程中抓握相关信号的技术。对四名受试者的研究结果表明,在执行抓握动作之前存在SCPs,以及如何利用它们来对抓握意图进行分类,所有受试者的准确率均超过70%。使用滑动窗口方法,我们还证明了对于四名受试者中的两名,这种意图平均可以在抓握动作前约400毫秒解码出来,而对于另外两名受试者,则可以在抓握动作开始后解码出来。