2020
DOI: 10.1101/2020.11.23.393702
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A Novel Tool for the Removal of Muscle Artefacts from EEG: Improving Data Quality in the Gamma Frequency Range

Abstract: BackgroundThe past two decades have seen a particular Focus towards high-Frequency neural activity in the gamma band (>30Hz). However, gamma band activity shares Frequency range with unwanted artefacts From muscular activity.New MethodWe developed a novel approach to remove muscle artefacts From neurophysiological data. We re-analysed existing EEG data that were decomposed by a blind source separation method (independent component analysis, ICA), which helped to better spatially and temporally separate sing… Show more

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“…On the component data, 50 Hz power line noise was removed using CleanLine (Mullen, 2012) and artefactual components reflecting eye movements and other larger artefacts were removed from the data. A second ICA was performed and muscle artefacts were removed from the data (Liebisch et al, 2021). A third ICA was utilised to remove components with residual artefacts and spectrum interpolation (Leske & Dalal, 2019) eliminated residual power line noise.…”
Section: Pre-processingmentioning
confidence: 99%
“…On the component data, 50 Hz power line noise was removed using CleanLine (Mullen, 2012) and artefactual components reflecting eye movements and other larger artefacts were removed from the data. A second ICA was performed and muscle artefacts were removed from the data (Liebisch et al, 2021). A third ICA was utilised to remove components with residual artefacts and spectrum interpolation (Leske & Dalal, 2019) eliminated residual power line noise.…”
Section: Pre-processingmentioning
confidence: 99%