Department of Neuroimaging, Institute of Psychiatry, King's College London, London, UK.
Brain Topogr. 2013 Jan;26(1):50-61. doi: 10.1007/s10548-012-0255-9. Epub 2012 Sep 11.
Neural oscillations in the gamma band are of increasing interest, but separating them from myogenic electrical activity has proved difficult. A novel algorithm has been developed to reduce the effect of tonic scalp and neck muscle activity on the gamma band of the EEG. This uses mathematical modelling to fit individual muscle spikes and then subtracts them from the data. The method was applied to the detection of motor associated gamma in two separate groups of eight subjects using different sampling rates. A reproducible increase in high gamma (65-85 Hz) magnitude occurred immediately after the motor action in the left central area (p = 0.02 and p = 0.0002 for the two cohorts with individually optimized algorithm parameters, compared to p = 0.03 and p = 0.16 before correction). Whilst the magnitude of this event-related gamma synchronisation was not reduced by the application of the EMG reduction algorithm, the baseline left central gamma magnitude was significantly reduced by an average of 23 % with a faster sampling rate (p < 0.05). In comparison, at left and right temporo-parietal locations the gamma amplitude was reduced by 60 and 54 % respectively (p < 0.05). The reduction of EMG contamination by fitting and subtraction of individual spikes shows promise as a method of improving the signal to noise ratio of high frequency neural oscillations in scalp EEG.
伽马波段的神经振荡越来越受到关注,但要将其与肌源性电活动分离一直很困难。现已开发出一种新算法,可减少紧张性头皮和颈部肌肉活动对 EEG 伽马波段的影响。该算法使用数学模型来拟合单个肌肉尖峰,然后从数据中减去这些尖峰。该方法应用于两组 8 名受试者的运动相关伽马的检测,使用不同的采样率。在左中央区域(对于两个队列,使用单独优化的算法参数,与校正前相比,p=0.02 和 p=0.0002,而 p=0.03 和 p=0.16),在运动动作后立即出现高伽马(65-85 Hz)幅度的可重复增加。虽然应用肌电图降低算法不会降低这种与事件相关的伽马同步的幅度,但以更快的采样率(p<0.05),左中央伽马幅度平均降低了 23%。相比之下,在左和右颞顶位置,伽马幅度分别降低了 60%和 54%(p<0.05)。通过拟合和减去单个尖峰来消除肌电干扰显示出一种很有前途的方法,可以提高头皮 EEG 中高频神经振荡的信噪比。