DocumentCode :
68814
Title :
Unsupervised Eye Blink Artifact Denoising of EEG Data with Modified Multiscale Sample Entropy, Kurtosis, and Wavelet-ICA
Author :
Mahajan, Rashima ; Morshed, Bashir I.
Author_Institution :
Dept. of Electr. & Comput. Eng., Univ. of Memphis, Memphis, TN, USA
Volume :
19
Issue :
1
fYear :
2015
fDate :
Jan. 2015
Firstpage :
158
Lastpage :
165
Abstract :
Brain activities commonly recorded using the electroencephalogram (EEG) are contaminated with ocular artifacts. These activities can be suppressed using a robust independent component analysis (ICA) tool, but its efficiency relies on manual intervention to accurately identify the independent artifactual components. In this paper, we present a new unsupervised, robust, and computationally fast statistical algorithm that uses modified multiscale sample entropy (mMSE) and Kurtosis to automatically identify the independent eye blink artifactual components, and subsequently denoise these components using biorthogonal wavelet decomposition. A 95% two-sided confidence interval of the mean is used to determine the threshold for Kurtosis and mMSE to identify the blink related components in the ICA decomposed data. The algorithm preserves the persistent neural activity in the independent components and removes only the artifactual activity. Results have shown improved performance in the reconstructed EEG signals using the proposed unsupervised algorithm in terms of mutual information, correlation coefficient, and spectral coherence in comparison with conventional zeroing-ICA and wavelet enhanced ICA artifact removal techniques. The algorithm achieves an average sensitivity of 90% and an average specificity of 98%, with average execution time for the datasets (N = 7) of 0.06 s (SD = 0.021) compared to the conventional wICA requiring 0.1078 s (SD = 0.004). The proposed algorithm neither requires manual identification for artifactual components nor additional electrooculographic channel. The algorithm was tested for 12 channels, but might be useful for dense EEG systems.
Keywords :
biomechanics; correlation methods; electroencephalography; entropy; eye; feature extraction; independent component analysis; medical signal processing; neurophysiology; signal classification; signal denoising; signal reconstruction; wavelet transforms; EEG data; EEG signal reconstruction; ICA data decomposition; ICA tool; additional electrooculographic channel; artifactual activity removal; automatic eye blink artifactual component identification; average execution time; average sensitivity; average specificity; biorthogonal wavelet decomposition; blink related component identification; brain activity recording; brain activity suppression; computationally fast statistical algorithm; conventional wICA; conventional zeroing-ICA artifact removal; correlation coefficient; dense EEG system; electroencephalogram contamination; independent artifactual component identification; independent eye blink artifactual component identification; kurtosis threshold; mMSE method; mMSE threshold; manual artifactual component identification; manual intervention; modified multiscale sample entropy; mutual information; ocular artifact; persistent neural activity preservation; robust independent component analysis; robust statistical algorithm; spectral coherence; two-sided confidence interval; unsupervised eye blink artifact denoising; unsupervised statistical algorithm; wavelet enhanced ICA artifact removal; wavelet-ICA; Algorithm design and analysis; Discrete wavelet transforms; Electroencephalography; Entropy; Integrated circuits; Noise reduction; Artifact removal; Biorthogonal wavelet; Electroencephalogram; biorthogonal wavelet; electroencephalogram (EEG); independent component analysis (ICA); kurtosis; modified multiscale sample entropy (mMSE);
fLanguage :
English
Journal_Title :
Biomedical and Health Informatics, IEEE Journal of
Publisher :
ieee
ISSN :
2168-2194
Type :
jour
DOI :
10.1109/JBHI.2014.2333010
Filename :
6843355
Link To Document :
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