Lin Chuang, Wang Bing-Hui, Jiang Ning, Xu Ren, Mrachacz-Kersting Natalie, Farina Dario
IEEE Trans Neural Syst Rehabil Eng. 2016 Sep;24(9):921-927. doi: 10.1109/TNSRE.2016.2531118. Epub 2016 Mar 2.
The detection of voluntary motor intention from EEG has been applied to closed-loop brain-computer interfacing (BCI). The movement-related cortical potential (MRCP) is a low frequency component of the EEG signal, which represents movement intention, preparation, and execution. In this study, we aim at detecting MRCPs from single-trial EEG traces. For this purpose, we propose a detector based on a discriminant manifold learning method, called locality sensitive discriminant analysis (LSDA), and we test it in both online and offline experiments with executed and imagined movements. The online and offline experimental results demonstrated that the proposed LSDA approach for MRCP detection outperformed the Locality Preserving Projection (LPP) approach, which was previously shown to be the most accurate algorithm so far tested for MRCP detection. For example, in the online tests, the performance of LSDA was superior than LPP in terms of a significant reduction in false positives (FP) (passive FP: 1.6 ±0.9/min versus 2.9 ±1.0/min, p = 0.002, active FP: 2.2 ±0.8/min versus 2.7 ±0.6/min , p = 0.03 ), for a similar rate of true positives. In conclusion, the proposed LSDA based MRCP detection method is superior to previous approaches and is promising for developing patient-driven BCI systems for motor function rehabilitation as well as for neuroscience research.
从脑电图中检测自主运动意图已应用于闭环脑机接口(BCI)。运动相关皮层电位(MRCP)是脑电图信号的低频成分,它代表运动意图、准备和执行。在本研究中,我们旨在从单次试验脑电图轨迹中检测MRCP。为此,我们提出了一种基于判别流形学习方法的检测器,称为局部敏感判别分析(LSDA),并在执行和想象运动的在线和离线实验中对其进行测试。在线和离线实验结果表明,所提出的用于MRCP检测的LSDA方法优于局部保持投影(LPP)方法,LPP方法此前被证明是迄今为止测试的用于MRCP检测最准确的算法。例如,在在线测试中,在真阳性率相似的情况下,LSDA在显著减少误报(FP)方面的性能优于LPP(被动FP:1.6±0.9/分钟对2.9±1.0/分钟,p = 0.002,主动FP:2.2±0.8/分钟对2.7±0.6/分钟,p = 0.03)。总之,所提出的基于LSDA的MRCP检测方法优于先前的方法,对于开发患者驱动的用于运动功能康复的BCI系统以及神经科学研究具有前景。