Efficient Labeling of EEG Signal Artifacts Using Active Learning

Electroencephalography (EEG) has been widely used in a variety of contexts, including medical monitoring of subjects as well as performance monitoring in healthy individuals. Recent technological advances have now enabled researchers to quickly record and collect EEG on a wide scale. Although EEG is fairly easy to record, it is highly susceptible to noise sources called artifacts which can occur at amplitudes several times greater than the EEG signal of interest. Because of this, users must manually annotate the EEG signal to identify artifact regions in the data prior to any downstream processing. This can be time-consuming and impractical for large data collections. In this paper we present a method which uses Active Learning (AL) to improve the reliability of existing EEG artifact classifiers with minimal amounts of user interaction. Our results show that classification accuracy equivalent to classifiers trained on full data annotation can be obtained while labeling less than 25% of the data. This suggests significant time savings can be obtained when manually annotating artifacts in large EEG data collections.

[1]  T. Cutmore,et al.  Identifying and reducing noise in psychophysiological recordings. , 1999, International journal of psychophysiology : official journal of the International Organization of Psychophysiology.

[2]  Brent Lance,et al.  Transfer learning and active transfer learning for reducing calibration data in single-trial classification of visually-evoked potentials , 2014, 2014 IEEE International Conference on Systems, Man, and Cybernetics (SMC).

[3]  John Platt,et al.  Probabilistic Outputs for Support vector Machines and Comparisons to Regularized Likelihood Methods , 1999 .

[4]  Scott E. Kerick,et al.  Brain–Computer Interface Technologies in the Coming Decades , 2012, Proceedings of the IEEE.

[5]  R. B. Reilly,et al.  FASTER: Fully Automated Statistical Thresholding for EEG artifact Rejection , 2010, Journal of Neuroscience Methods.

[6]  Anders Krogh,et al.  Neural Network Ensembles, Cross Validation, and Active Learning , 1994, NIPS.

[7]  S. Smith EEG in the diagnosis, classification, and management of patients with epilepsy , 2005, Journal of Neurology, Neurosurgery & Psychiatry.

[8]  Fabien Lotte,et al.  Brain-Computer Interfaces: Beyond Medical Applications , 2012, Computer.

[9]  Terrence J. Sejnowski,et al.  Independent Component Analysis Using an Extended Infomax Algorithm for Mixed Subgaussian and Supergaussian Sources , 1999, Neural Computation.

[10]  D. Sculley,et al.  Online Active Learning Methods for Fast Label-Efficient Spam Filtering , 2007, CEAS.

[11]  Nikolaos Papanikolopoulos,et al.  Scalable Active Learning for Multiclass Image Classification , 2012, IEEE Transactions on Pattern Analysis and Machine Intelligence.

[12]  Richard J. Davidson,et al.  Validation of ICA-based myogenic artifact correction for scalp and source-localized EEG , 2010, NeuroImage.

[13]  W. David Hairston,et al.  Optimal Feature Selection for Artifact Classification in EEG Time Series , 2013, HCI.

[14]  Kwang Suk Park,et al.  Helmet-based physiological signal monitoring system , 2008, European Journal of Applied Physiology.

[15]  T. Sejnowski,et al.  Removing electroencephalographic artifacts by blind source separation. , 2000, Psychophysiology.

[16]  Terrence J. Sejnowski,et al.  Enhanced detection of artifacts in EEG data using higher-order statistics and independent component analysis , 2007, NeuroImage.

[17]  Chih-Jen Lin,et al.  LIBSVM: A library for support vector machines , 2011, TIST.

[18]  Burr Settles,et al.  Active Learning Literature Survey , 2009 .

[19]  Chin-Teng Lin,et al.  A Real-Time Wireless Brain–Computer Interface System for Drowsiness Detection , 2010, IEEE Transactions on Biomedical Circuits and Systems.

[20]  Tom Eichele,et al.  Semi-automatic identification of independent components representing EEG artifact , 2009, Clinical Neurophysiology.

[21]  W. David Hairston,et al.  DETECT: A MATLAB Toolbox for Event Detection and Identification in Time Series, with Applications to Artifact Detection in EEG Signals , 2013, PloS one.

[22]  Arnaud Delorme,et al.  EEGLAB: an open source toolbox for analysis of single-trial EEG dynamics including independent component analysis , 2004, Journal of Neuroscience Methods.

[23]  Kaleb McDowell,et al.  Detection and classification of subject-generated artifacts in EEG signals using autoregressive models , 2012, Journal of Neuroscience Methods.

[24]  A. Mognon,et al.  ADJUST: An automatic EEG artifact detector based on the joint use of spatial and temporal features. , 2011, Psychophysiology.