Electromyogram (EMG) Removal by Adding Sources of EMG (ERASE) -- A novel ICA-based algorithm for removing myoelectric artifacts from EEG -- Part 1
Yongcheng Li, Po T. Wang, Mukta P. Vaidya, Charles Y. Liu, Marc W., Slutzky, An H. Do

TL;DR
This paper introduces ERASE, a novel ICA-based method that effectively removes EMG artifacts from EEG by incorporating additional EMG sources, outperforming traditional ICA in artifact removal while preserving EEG features.
Contribution
ERASE is the first ICA modification that adds real or simulated EMG sources as inputs to enhance artifact removal in EEG recordings.
Findings
ERASE removed approximately 75% of EMG artifacts with real EMG references.
ERASE outperformed conventional ICA by 26% in artifact removal.
The method preserves EEG features related to movement.
Abstract
Electroencephalographic (EEG) recordings are often contaminated by electromyographic (EMG) artifacts, especially when recording during movement. Existing methods to remove EMG artifacts include independent component analysis (ICA), and other high-order statistical methods. However, these methods can not effectively remove most of EMG artifacts. Here, we proposed a modified ICA model for EMG artifacts removal in the EEG, which is called EMG Removal by Adding Sources of EMG (ERASE). In this new approach, additional channels of real EMG from neck and head muscles (reference artifacts) were added as inputs to ICA in order to "force" the most power from EMG artifacts into a few independent components (ICs). The ICs containing EMG artifacts (the "artifact ICs") were identified and rejected using an automated procedure. Simulation results showed ERASE removed EMG artifacts from EEG…
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Taxonomy
TopicsEEG and Brain-Computer Interfaces · Muscle activation and electromyography studies · Neuroscience and Neural Engineering
MethodsIndependent Component Analysis
