Electromyogenic Artifacts and Electroencephalographic Inferences

Muscle or electromyogenic (EMG) artifact poses a serious risk to inferential validity for any electroencephalography (EEG) investigation in the frequency-domain owing to its high amplitude, broad spectrum, and sensitivity to psychological processes of interest. Even weak EMG is detectable across the scalp in frequencies as low as the alpha band. Given these hazards, there is substantial interest in developing EMG correction tools. Unfortunately, most published techniques are subjected to only modest validation attempts, rendering their utility questionable. We review recent work by our laboratory quantitatively investigating the validity of two popular EMG correction techniques, one using the general linear model (GLM), the other using temporal independent component analysis (ICA). We show that intra-individual GLM-based methods represent a sensitive and specific tool for correcting on-going or induced, but not evoked (phase-locked) or source-localized, spectral changes. Preliminary work with ICA shows that it may not represent a panacea for EMG contamination, although further scrutiny is strongly warranted. We conclude by describing emerging methodological trends in this area that are likely to have substantial benefits for basic and applied EEG research.

[1]  W. van Paesschen,et al.  A new muscle artifact removal technique to improve the interpretation of the ictal scalp electroencephalogram , 2005, 2005 IEEE Engineering in Medicine and Biology 27th Annual Conference.

[2]  Franca Tecchio,et al.  Functional source separation applied to induced visual gamma activity , 2008, Human brain mapping.

[3]  Tülay Adali,et al.  Estimating the number of independent components for functional magnetic resonance imaging data , 2007, Human brain mapping.

[4]  E. Whitham,et al.  Scalp electrical recording during paralysis: Quantitative evidence that EEG frequencies above 20Hz are contaminated by EMG , 2007, Clinical Neurophysiology.

[5]  Jeffrey S. Maxwell,et al.  Validation of regression-based myogenic correction techniques for scalp and source-localized EEG. , 2009, Psychophysiology.

[6]  J. Cacioppo,et al.  The skeletomotor system: Surface electromyography. , 2007 .

[7]  Mercedes Atienza,et al.  Muscle Artifact Removal from Human Sleep EEG by Using Independent Component Analysis , 2008, Annals of Biomedical Engineering.

[8]  R. Ward,et al.  EMG and EOG artifacts in brain computer interface systems: A survey , 2007, Clinical Neurophysiology.

[9]  Terrence J. Sejnowski,et al.  Enhanced detection of artifacts in EEG data using higher-order statistics and independent component analysis , 2007, NeuroImage.

[10]  Frédéric Grouiller,et al.  A comparative study of different artefact removal algorithms for EEG signals acquired during functional MRI , 2007, NeuroImage.

[11]  Francesco Carlo Morabito,et al.  Enhanced automatic artifact detection based on independent component analysis and Renyi's entropy , 2008, Neural Networks.

[12]  A. Lutz,et al.  Long-term meditators self-induce high-amplitude gamma synchrony during mental practice. , 2004, Proceedings of the National Academy of Sciences of the United States of America.

[13]  Kenneth J. Pope,et al.  Relation of Gamma Oscillations in Scalp Recordings to Muscular Activity , 2009, Brain Topography.

[14]  J. Cacioppo,et al.  Handbook Of Psychophysiology , 2019 .

[15]  Kenneth J. Pope,et al.  Thinking activates EMG in scalp electrical recordings , 2008, Clinical Neurophysiology.

[16]  D. Pizzagalli Electroencephalography and High-Density Electrophysiological Source Localization , 2007 .

[17]  S. Makeig,et al.  Mining event-related brain dynamics , 2004, Trends in Cognitive Sciences.

[18]  J. Wolpaw,et al.  EMG contamination of EEG: spectral and topographical characteristics , 2003, Clinical Neurophysiology.

[19]  S P Fitzgibbon,et al.  Removal of EEG Noise and Artifact Using Blind Source Separation , 2007, Journal of clinical neurophysiology : official publication of the American Electroencephalographic Society.

[20]  Karl J. Friston,et al.  Unified SPM–ICA for fMRI analysis , 2005, NeuroImage.

[21]  Ronald C. Serlin,et al.  Equivalence confidence intervals for two-group comparisons of means , 1998 .