Literature DB >> 28268452

A comparison of independent component analysis algorithms and measures to discriminate between EEG and artifact components.

Dhani Dharmaprani, Hoang K Nguyen, Trent W Lewis, Dylan DeLosAngeles, John O Willoughby, Kenneth J Pope.   

Abstract

Independent Component Analysis (ICA) is a powerful statistical tool capable of separating multivariate scalp electrical signals into their additive independent or source components, specifically EEG or electroencephalogram and artifacts. Although ICA is a widely accepted EEG signal processing technique, classification of the recovered independent components (ICs) is still flawed, as current practice still requires subjective human decisions. Here we build on the results from Fitzgibbon et al. [1] to compare three measures and three ICA algorithms. Using EEG data acquired during neuromuscular paralysis, we tested the ability of the measures (spectral slope, peripherality and spatial smoothness) and algorithms (FastICA, Infomax and JADE) to identify components containing EMG. Spatial smoothness showed differentiation between paralysis and pre-paralysis ICs comparable to spectral slope, whereas peripherality showed less differentiation. A combination of the measures showed better differentiation than any measure alone. Furthermore, FastICA provided the best discrimination between muscle-free and muscle-contaminated recordings in the shortest time, suggesting it may be the most suited to EEG applications of the considered algorithms. Spatial smoothness results suggest that a significant number of ICs are mixed, i.e. contain signals from more than one biological source, and so the development of an ICA algorithm that is optimised to produce ICs that are easily classifiable is warranted.

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Year:  2016        PMID: 28268452     DOI: 10.1109/EMBC.2016.7590828

Source DB:  PubMed          Journal:  Conf Proc IEEE Eng Med Biol Soc        ISSN: 1557-170X


  2 in total

1.  Using Multiple Decomposition Methods and Cluster Analysis to Find and Categorize Typical Patterns of EEG Activity in Motor Imagery Brain-Computer Interface Experiments.

Authors:  Alexander Frolov; Pavel Bobrov; Elena Biryukova; Mikhail Isaev; Yaroslav Kerechanin; Dmitry Bobrov; Alexander Lekin
Journal:  Front Robot AI       Date:  2020-07-30

2.  Managing electromyogram contamination in scalp recordings: An approach identifying reliable beta and gamma EEG features of psychoses or other disorders.

Authors:  Kenneth J Pope; Trent W Lewis; Sean P Fitzgibbon; Azin S Janani; Tyler S Grummett; Patricia A H Williams; Malcolm Battersby; Tarun Bastiampillai; Emma M Whitham; John O Willoughby
Journal:  Brain Behav       Date:  2022-08-02       Impact factor: 3.405

  2 in total

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