IEEE Trans Biomed Eng. 2019 Jun;66(6):1588-1597. doi: 10.1109/TBME.2018.2876068. Epub 2018 Oct 15.
Human body movements can be reflected in brain signals and collected noninvasively with electroencephalography (EEG). Motor-related signals include sensory motor rhythms (also known as the Mu wave) in the upper-alpha band of 8-13 Hz and slow cortical potentials (SCPs) in the low frequency range of 0.1-5 Hz. This study compares the two signals for decoding finger movements. Human subjects were asked to individually lift each of the five digits of their right hand, at the rate of one every 10 s. EEG was recorded using a bipolar montage between ipsilateral and contralateral motor cortices. Electromyograms were obtained for identifying movement onsets. Linear discriminant analysis (LDA) generated significant performance with SCPs but not with Mu. Meanwhile, continuous wavelet transform (CWT) was applied to SCPs or Mu to create a spectrogram for each finger, showing distinctive amplitude and phase patterns. A dprime-based weighting algorithm was used to extract time-frequency features. With a template-matching paradigm, both SCP and Mu spectrograms yielded significant classification accuracies for multiple subjects, with the highest being >50% (chance = 20%). Interestingly, the index finger was better distinguished with Mu for most of the subjects, whereas the ring finger was better distinguished with SCPs. The CWT algorithm outperformed LDA by better decoding the thumb. This study suggests that the time-frequency characteristics of a single-channel EEG, when phase is preserved, contain critical information on finger movements. SCPs and Mu seem to work in an independent but complementary manner.
人体运动可以反映在大脑信号中,并通过脑电图(EEG)无创地采集。运动相关信号包括 8-13 Hz 频段的上 alpha 波段的感觉运动节律(也称为 Mu 波)和 0.1-5 Hz 低频范围内的慢皮质电位(SCPs)。本研究比较了这两种信号来解码手指运动。要求人类受试者以每秒一个的速度分别抬起右手的五个手指。使用同侧和对侧运动皮质之间的双极蒙太奇记录 EEG。肌电图用于识别运动起始。线性判别分析(LDA)在 SCP 上产生了显著的性能,但在 Mu 上没有。同时,连续小波变换(CWT)应用于 SCP 或 Mu,为每个手指创建一个声谱图,显示出独特的幅度和相位模式。基于 dprime 的加权算法用于提取时频特征。使用模板匹配范式,SCP 和 Mu 声谱图对多个受试者均产生了显著的分类准确性,最高准确率>50%(机会=20%)。有趣的是,对于大多数受试者,Mu 可以更好地区分食指,而 SCP 可以更好地区分无名指。CWT 算法通过更好地解码拇指,优于 LDA。本研究表明,在相位保持的情况下,单通道 EEG 的时频特征包含有关手指运动的关键信息。SCP 和 Mu 似乎以独立但互补的方式工作。