ADJUST: An automatic EEG artifact detector based on the joint use of spatial and temporal features

A successful method for removing artifacts from electroencephalogram (EEG) recordings is Independent Component Analysis (ICA), but its implementation remains largely user‐dependent. Here, we propose a completely automatic algorithm (ADJUST) that identifies artifacted independent components by combin...

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Vydané v:Psychophysiology Ročník 48; číslo 2; s. 229 - 240
Hlavní autori: Mognon, Andrea, Jovicich, Jorge, Bruzzone, Lorenzo, Buiatti, Marco
Médium: Journal Article
Jazyk:English
Vydavateľské údaje: Malden, USA Blackwell Publishing Inc 01.02.2011
Blackwell Publishing Ltd
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ISSN:0048-5772, 1469-8986, 1469-8986, 1540-5958
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Shrnutí:A successful method for removing artifacts from electroencephalogram (EEG) recordings is Independent Component Analysis (ICA), but its implementation remains largely user‐dependent. Here, we propose a completely automatic algorithm (ADJUST) that identifies artifacted independent components by combining stereotyped artifact‐specific spatial and temporal features. Features were optimized to capture blinks, eye movements, and generic discontinuities on a feature selection dataset. Validation on a totally different EEG dataset shows that (1) ADJUST's classification of independent components largely matches a manual one by experts (agreement on 95.2% of the data variance), and (2) Removal of the artifacted components detected by ADJUST leads to neat reconstruction of visual and auditory event‐related potentials from heavily artifacted data. These results demonstrate that ADJUST provides a fast, efficient, and automatic way to use ICA for artifact removal.
Bibliografia:ArticleID:PSYP1061
istex:B32DA8FE3C28E6DCD51D97F105D706ED214D0C7B
ark:/67375/WNG-K68524L6-H
We thank Mariano Sigman and Stanislas Dehaene for sharing the EEG data, Francesca Bovolo and Michele Dalponte for helpful advice on the use of the thresholding algorithm, and Sara Assecondi for valuable comments on an earlier version of the manuscript.
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ISSN:0048-5772
1469-8986
1469-8986
1540-5958
DOI:10.1111/j.1469-8986.2010.01061.x