Systems Neuroscience Section, Department of Rehabilitation for Brain Functions, Research Institute of National Rehabilitation Center for Persons with Disabilities Tokorozawa, Japan.
Front Neurosci. 2013 Sep 23;7:172. doi: 10.3389/fnins.2013.00172. eCollection 2013.
A brain-machine interface (BMI) is an interface technology that uses neurophysiological signals from the brain to control external machines. Recent invasive BMI technologies have succeeded in the asynchronous control of robot arms for a useful series of actions, such as reaching and grasping. In this study, we developed non-invasive BMI technologies aiming to make such useful movements using the subject's own hands by preparing a BMI-based occupational therapy assist suit (BOTAS). We prepared a pre-recorded series of useful actions-a grasping-a-ball movement and a carrying-the-ball movement-and added asynchronous control using steady-state visual evoked potential (SSVEP) signals. A SSVEP signal was used to trigger the grasping-a-ball movement and another SSVEP signal was used to trigger the carrying-the-ball movement. A support vector machine was used to classify EEG signals recorded from the visual cortex (Oz) in real time. Untrained, able-bodied participants (n = 12) operated the system successfully. Classification accuracy and time required for SSVEP detection were ~88% and 3 s, respectively. We further recruited three patients with upper cervical spinal cord injuries (SCIs); they also succeeded in operating the system without training. These data suggest that our BOTAS system is potentially useful in terms of rehabilitation of patients with upper limb disabilities.
脑机接口(BMI)是一种接口技术,它使用来自大脑的神经生理信号来控制外部机器。最近的侵入性 BMI 技术已经成功地实现了对机器人手臂的异步控制,以便执行一系列有用的动作,例如伸手和抓握。在这项研究中,我们开发了非侵入性 BMI 技术,旨在通过准备基于 BMI 的职业治疗辅助套装(BOTAS),使用主体自己的手来完成这些有用的动作。我们准备了一系列预先录制的有用动作——抓球动作和带球动作,并添加了使用稳态视觉诱发电位(SSVEP)信号的异步控制。一个 SSVEP 信号用于触发抓球动作,另一个 SSVEP 信号用于触发带球动作。支持向量机用于实时分类从视觉皮层(Oz)记录的 EEG 信号。未经训练的健全参与者(n = 12)成功地操作了该系统。SSVEP 检测的分类准确性和所需时间分别约为 88%和 3 秒。我们进一步招募了三名患有上颈椎脊髓损伤(SCI)的患者;他们也无需训练就成功地操作了该系统。这些数据表明,我们的 BOTAS 系统在治疗上肢残疾患者方面具有潜在的应用价值。