SPLGMLJan 22, 2019

ICLabel: An automated electroencephalographic independent component classifier, dataset, and website

arXiv:1901.07915v21822 citations
Originality Incremental advance
AI Analysis

This work addresses the need for faster and more accurate automated IC classification in EEG studies, enabling near-real-time applications and reducing manual effort for researchers and practitioners, though it is incremental as it builds upon existing classifiers.

The ICLabel project tackles the problem of automating the classification of independent components (ICs) in EEG analysis by introducing a dataset, a crowdsourcing website, and an automated classifier that improves accuracy and computational efficiency, achieving comparable or better performance than existing methods and being ten times faster.

The electroencephalogram (EEG) provides a non-invasive, minimally restrictive, and relatively low cost measure of mesoscale brain dynamics with high temporal resolution. Although signals recorded in parallel by multiple, near-adjacent EEG scalp electrode channels are highly-correlated and combine signals from many different sources, biological and non-biological, independent component analysis (ICA) has been shown to isolate the various source generator processes underlying those recordings. Independent components (IC) found by ICA decomposition can be manually inspected, selected, and interpreted, but doing so requires both time and practice as ICs have no particular order or intrinsic interpretations and therefore require further study of their properties. Alternatively, sufficiently-accurate automated IC classifiers can be used to classify ICs into broad source categories, speeding the analysis of EEG studies with many subjects and enabling the use of ICA decomposition in near-real-time applications. While many such classifiers have been proposed recently, this work presents the ICLabel project comprised of (1) an IC dataset containing spatiotemporal measures for over 200,000 ICs from more than 6,000 EEG recordings, (2) a website for collecting crowdsourced IC labels and educating EEG researchers and practitioners about IC interpretation, and (3) the automated ICLabel classifier. The classifier improves upon existing methods in two ways: by improving the accuracy of the computed label estimates and by enhancing its computational efficiency. The ICLabel classifier outperforms or performs comparably to the previous best publicly available method for all measured IC categories while computing those labels ten times faster than that classifier as shown in a rigorous comparison against all other publicly available EEG IC classifiers.

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