Fitzgibbon S P, DeLosAngeles D, Lewis T W, Powers D M W, Whitham E M, Willoughby J O, Pope K J
School of Medicine, Flinders University, GPO Box 2100, Adelaide, South Australia 5001, Australia; Centre for Neuroscience, Flinders University, GPO Box 2100, Adelaide, South Australia 5001, Australia; Medical Device Research Institute, Flinders University, GPO Box 2100, Adelaide, South Australia 5001, Australia.
School of Computer Science, Engineering and Mathematics, Flinders University, GPO Box 2100, Adelaide, South Australia 5001, Australia.
Int J Psychophysiol. 2015 Sep;97(3):277-84. doi: 10.1016/j.ijpsycho.2014.10.006. Epub 2014 Oct 16.
The serious impact of electromyogram (EMG) contamination of electroencephalogram (EEG) is well recognised. The objective of this research is to demonstrate that combining independent component analysis with the surface Laplacian can eliminate EMG contamination of the EEG, and to validate that this processing does not degrade expected neurogenic signals. The method involves sequential application of ICA, using a manual procedure to identify and discard EMG components, followed by the surface Laplacian. The extent of decontamination is quantified by comparing processed EEG with EMG-free data that was recorded during pharmacologically induced neuromuscular paralysis. The combination of the ICA procedure and the surface Laplacian, with a flexible spherical spline, results in a strong suppression of EMG contamination at all scalp sites and frequencies. Furthermore, the ICA and surface Laplacian procedure does not impair the detection of well-known, cerebral responses; alpha activity with eyes-closed; ERP components (N1, P2) in response to an auditory oddball task; and steady state responses to photic and auditory stimulation. Finally, more flexible spherical splines increase the suppression of EMG by the surface Laplacian. We postulate this is due to ICA enabling the removal of local muscle sources of EMG contamination and the Laplacian transform being insensitive to distant (postural) muscle EMG contamination.
肌电图(EMG)对脑电图(EEG)的严重干扰已得到广泛认可。本研究的目的是证明将独立成分分析与表面拉普拉斯算子相结合可以消除EEG中的EMG干扰,并验证这种处理不会降低预期的神经源性信号。该方法包括依次应用独立成分分析(ICA),通过手动操作识别并去除EMG成分,然后应用表面拉普拉斯算子。通过将处理后的EEG与在药物诱导的神经肌肉麻痹期间记录的无EMG数据进行比较,来量化去噪程度。ICA程序与表面拉普拉斯算子相结合,并使用灵活的球形样条,可在所有头皮部位和频率上有效抑制EMG干扰。此外,ICA和表面拉普拉斯算子程序不会影响对已知脑反应的检测,如闭眼时的α活动、对听觉奇偶数任务的事件相关电位成分(N1、P2)以及对光刺激和听觉刺激的稳态反应。最后,更灵活的球形样条可增强表面拉普拉斯算子对EMG的抑制作用。我们推测这是由于ICA能够去除EMG干扰的局部肌肉来源,而拉普拉斯变换对远处(姿势性)肌肉的EMG干扰不敏感。