IEEE Trans Neural Syst Rehabil Eng. 2017 Sep;25(9):1674-1682. doi: 10.1109/TNSRE.2017.2684084. Epub 2017 Mar 17.
Distinctive EEG signals from the motor and somatosensory cortex are generated during mental tasks of motor imagery (MI) and somatosensory attentional orientation (SAO). In this paper, we hypothesize that a combination of these two signal modalities provides improvements in a brain-computer interface (BCI) performance with respect to using the two methods separately, and generate novel types of multi-class BCI systems. Thirty two subjects were randomly divided into a Control-Group and a Hybrid-Group. In the Control-Group, the subjects performed left and right hand motor imagery (i.e., L-MI and R-MI). In the Hybrid-Group, the subjects performed the four mental tasks (i.e., L-MI, R-MI, L-SAO, and R-SAO). The results indicate that combining two of the tasks in a hybrid manner (such as L-SAO and R-MI) resulted in a significantly greater classification accuracy than when using two MI tasks. The hybrid modality reached 86.1% classification accuracy on average, with a 7.70% increase with respect to MI ( ), and 7.21% to SAO ( ) alone. Moreover, all 16 subjects in the hybrid modality reached at least 70% accuracy, which is considered the threshold for BCI illiteracy. In addition to the two-class results, the classification accuracy was 68.1% and 54.1% for the three-class and four-class hybrid BCI. Combining the induced brain signals from motor and somatosensory cortex, the proposed stimulus-independent hybrid BCI has shown improved performance with respect to individual modalities, reducing the portion of BCI-illiterate subjects, and provided novel types of multi-class BCIs.
在运动想象 (MI) 和感觉注意定位 (SAO) 的心理任务中,大脑运动和感觉皮层会产生独特的脑电图信号。在本文中,我们假设这两种信号模式的组合相对于分别使用两种方法可以提高脑机接口 (BCI) 的性能,并产生新型的多类 BCI 系统。32 名受试者被随机分为对照组和混合组。在对照组中,受试者执行左手和右手运动想象(即 L-MI 和 R-MI)。在混合组中,受试者执行四种心理任务(即 L-MI、R-MI、L-SAO 和 R-SAO)。结果表明,以混合方式组合两种任务(例如 L-SAO 和 R-MI)的分类准确率明显高于使用两种 MI 任务。混合模式的平均分类准确率为 86.1%,与 MI 相比提高了 7.70%(),与 SAO 相比提高了 7.21%()。此外,混合模式下的所有 16 名受试者的准确率均达到至少 70%,这被认为是 BCI 失读的阈值。除了两类结果外,三类和四类混合 BCI 的分类准确率分别为 68.1%和 54.1%。通过组合来自运动和感觉皮层的诱发脑信号,所提出的刺激无关混合 BCI 与个体模态相比表现出更好的性能,减少了 BCI 失读受试者的比例,并提供了新型的多类 BCI。