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Unsupervised Eye Blink Artifact Denoising of EEG Data with Modified Multiscale Sample Entropy, Kurtosis, and Wavelet-ICA

机译:具有修正的多尺度样本熵,峰度和小波ICA的EEG数据无监督眼动伪像降噪

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摘要

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 ( ) of 0.06 s () compared to the conventional wICA requiring 0.1078 s (). 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.
机译:通常使用脑电图(EEG)记录的大脑活动被眼部伪影污染。可以使用强大的独立成分分析(ICA)工具来抑制这些活动,但是其效率依赖于手动干预才能准确识别独立的人为成分。在本文中,我们提出了一种新的无监督,鲁棒,计算快速的统计算法,该算法使用修正的多尺度样本熵(mMSE)和峰度来自动识别独立的眨眼人为成分,然后使用双正交小波分解对这些成分进行消噪。平均值的95%双向置信区间用于确定峰度和mMSE的阈值,以识别ICA分解数据中与眨眼相关的成分。该算法保留了独立组件中的持久性神经活动,并且仅删除了人为活动。结果表明,与传统的归零ICA和小波增强的ICA伪像去除技术相比,使用拟议的无监督算法在互信息,相关系数和频谱相干性方面改进了EEG信号的性能。该算法可实现90%的平均灵敏度和98%的平均特异性,而数据集()的平均执行时间为0.06 s(),而传统的wICA需要0.1078 s()。所提出的算法既不需要人工识别人工成分,也不需要额外的眼电位通道。该算法已针对12个通道进行了测试,但可能对密集的EEG系统有用。

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