Stability of ICA decomposition across within-subject EEG datasets
- 1 August 2012
- conference paper
- Published by Institute of Electrical and Electronics Engineers (IEEE)
- Vol. 2012 (1094687X) , 6735-6739
- https://doi.org/10.1109/embc.2012.6347540
Abstract
Independent Component Analysis (ICA) has been successfully used to identify brain related signals and artifacts from multi-channel electroencephalographic (EEG) data. However the stability of ICA decompositions across sessions from a single subject has not been investigated. The goal of this study was to isolate EEG independent components (ICs) across sessions for each subject so as to assess whether ICs are reproducible across sessions. We used 64-channel EEG data recorded from two subjects during a simple mind-wandering experiment. Each subject participated in 11 twenty-minute sessions over a period of five weeks. Extended Infomax ICA decomposition was performed on the continuous data of each session. We used a simple IC clustering technique based on correlation of scalp topographies. Several clusters of homogenous components were identified for each subject. Typical component clusters accounting for eye movement and eye blink artifacts were identified. Both clusters included one component from each recording session. In addition, several clusters corresponding to brain electrical sources, among them clusters exhibiting prominent alpha, beta and Mu band activities, included components from most sessions. These results present evidence that ICA can provide relatively stable solutions across sessions, with important implications for Brain Computer Interface research.Keywords
This publication has 23 references indexed in Scilit:
- Lost in thoughts: Neural markers of low alertness during mind wanderingNeuroImage, 2011
- Semi-automatic identification of independent components representing EEG artifactClinical Neurophysiology, 2009
- Comparing clusterings—an information based distanceJournal of Multivariate Analysis, 2007
- Seperability of four-class motor imagery data using independent components analysisJournal of Neural Engineering, 2006
- Recognition of Motor Imagery Electroencephalography Using Independent Component Analysis and Machine ClassifiersAnnals of Biomedical Engineering, 2005
- Electroencephalographic Brain Dynamics Following Manually Responded Visual TargetsPLoS Biology, 2004
- EEGLAB: an open source toolbox for analysis of single-trial EEG dynamics including independent component analysisJournal of Neuroscience Methods, 2004
- Re-representing consciousness: dissociations between experience and meta-consciousnessPublished by Elsevier ,2002
- Application of model-selection criteria to some problems in multivariate analysisPsychometrika, 1987
- A new look at the statistical model identificationIEEE Transactions on Automatic Control, 1974