Department of Biomedical Engineering, Hanyang University, Seoul, 04763, South Korea.
Department of Neurology, College of Medicine, Hanyang University, Seoul, 04763, South Korea.
J Neuroeng Rehabil. 2019 Jan 30;16(1):18. doi: 10.1186/s12984-019-0493-0.
Brain-computer interfaces (BCIs) have demonstrated the potential to provide paralyzed individuals with new means of communication, but an electroencephalography (EEG)-based endogenous BCI has never been successfully used for communication with a patient in a completely locked-in state (CLIS).
In this study, we investigated the possibility of using an EEG-based endogenous BCI paradigm for online binary communication by a patient in CLIS. A female patient in CLIS participated in this study. She had not communicated even with her family for more than one year with complete loss of motor function. Offline and online experiments were conducted to validate the feasibility of the proposed BCI system. In the offline experiment, we determined the best combination of mental tasks and the optimal classification strategy leading to the best performance. In the online experiment, we investigated whether our BCI system could be potentially used for real-time communication with the patient.
An online classification accuracy of 87.5% was achieved when Riemannian geometry-based classification was applied to real-time EEG data recorded while the patient was performing one of two mental-imagery tasks for 5 s.
Our results suggest that an EEG-based endogenous BCI has the potential to be used for online communication with a patient in CLIS.
脑机接口 (BCI) 已证明有潜力为瘫痪患者提供新的交流方式,但基于脑电图 (EEG) 的内源性 BCI 从未成功用于与完全闭锁状态 (CLIS) 患者进行交流。
在这项研究中,我们研究了使用基于 EEG 的内源性 BCI 范式通过 CLIS 患者进行在线二进制通信的可能性。一名 CLIS 中的女性患者参与了这项研究。她由于完全丧失运动功能,已经超过一年没有与家人进行过任何交流。进行了离线和在线实验以验证所提出的 BCI 系统的可行性。在离线实验中,我们确定了导致最佳性能的最佳心理任务组合和最佳分类策略。在在线实验中,我们研究了我们的 BCI 系统是否可以潜在地用于与患者进行实时通信。
当将基于黎曼几何的分类应用于记录患者执行两个心理想象任务之一 5 秒时的实时 EEG 数据时,实现了 87.5%的在线分类准确率。
我们的结果表明,基于 EEG 的内源性 BCI 有可能用于与 CLIS 患者进行在线交流。