Xu Ren, Jiang Ning, Dosen Strahinja, Lin Chuang, Mrachacz-Kersting Natalie, Dremstrup Kim, Farina Dario
IEEE Trans Neural Syst Rehabil Eng. 2016 Aug;24(8):901-10. doi: 10.1109/TNSRE.2016.2523565. Epub 2016 Jan 29.
In this study, we present a novel multi-class brain-computer interface (BCI) for communication and control. In this system, the information processing is shared by the algorithm (computer) and the user (human). Specifically, an electro-tactile cycle was presented to the user, providing the choice (class) by delivering timely sensory input. The user discriminated these choices by his/her endogenous sensory ability and selected the desired choice with an intuitive motor task. This selection was detected by a fast brain switch based on real-time detection of movement-related cortical potentials from scalp EEG. We demonstrated the feasibility of such a system with a four-class BCI, yielding a true positive rate of ∼ 80% and ∼ 70%, and an information transfer rate of ∼ 7 bits/min and ∼ 5 bits/min, for the movement and imagination selection command, respectively. Furthermore, when the system was extended to eight classes, the throughput of the system was improved, demonstrating the capability of accommodating a large number of classes. Combining the endogenous sensory discrimination with the fast brain switch, the proposed system could be an effective, multi-class, gaze-independent BCI system for communication and control applications.
在本研究中,我们提出了一种用于通信和控制的新型多分类脑机接口(BCI)。在该系统中,信息处理由算法(计算机)和用户(人)共同完成。具体而言,向用户呈现一个电触觉周期,通过及时提供感觉输入来提供选择(类别)。用户通过其内在的感觉能力区分这些选择,并通过直观的运动任务选择所需的选择。这种选择通过基于头皮脑电图实时检测与运动相关的皮层电位的快速脑开关进行检测。我们用一个四分类BCI证明了这种系统的可行性,对于运动和想象选择命令,真阳性率分别约为80%和70%,信息传输速率分别约为7比特/分钟和5比特/分钟。此外,当系统扩展到八分类时,系统的吞吐量得到了提高,证明了其容纳大量类别的能力。将内在感觉辨别与快速脑开关相结合,所提出的系统可以成为一种用于通信和控制应用的有效、多分类、不依赖注视的BCI系统。