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Automatic Artifact Rejection From Multichannel Scalp EEG by Wavelet ICA

机译:小波ICA从多通道头皮脑电图自动剔除伪像

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Electroencephalographic (EEG) recordings are often contaminated by artifacts, i.e., signals with noncerebral origin that might mimic some cognitive or pathologic activity, this way affecting the clinical interpretation of traces. Artifact rejection is, thus, a key analysis for both visual inspection and digital processing of EEG. Automatic artifact rejection is needed for effective real time inspection because manual rejection is time consuming. In this paper, a novel technique (Automatic Wavelet Independent Component Analysis, AWICA) for automatic EEG artifact removal is presented. Through AWICA we claim to improve the performance and fully automate the process of artifact removal from scalp EEG. AWICA is based on the joint use of the Wavelet Transform and of ICA: it consists of a two-step procedure relying on the concepts of kurtosis and Renyi''s entropy. Both synthesized and real EEG data are processed by AWICA and the results achieved were compared to the ones obtained by applying to the same data the “wavelet enhanced” ICA method recently proposed by other authors. Simulations illustrate that AWICA compares favorably to the other technique. The method here proposed is shown to yield improved success in terms of suppression of artifact components while reducing the loss of residual informative data, since the components related to relevant EEG activity are mostly preserved.
机译:脑电图(EEG)记录经常被伪影污染,即非大脑起源的信号可能会模仿某些认知或病理活动,从而影响痕迹的临床解释。因此,工件剔除是EEG视觉检查和数字处理的关键分析。有效的实时检查需要自动剔除工件,因为手动剔除非常耗时。在本文中,提出了一种新的技术(自动小波独立分量分析,AWICA),用于自动脑电信号伪影去除。通过AWICA,我们声称可以改善性能并完全自动化从头皮EEG去除伪影的过程。 AWICA基于小波变换和ICA的联合使用:它由两步过程组成,该过程依赖于峰度和Renyi熵的概念。 AWICA处理合成的和真实的EEG数据,并将获得的结果与其他作者最近提出的“小波增强” ICA方法应用于同一数据所获得的结果进行比较。仿真表明,AWICA优于其他技术。由于在很大程度上保留了与相关脑电活动有关的成分,因此本文提出的方法在抑制伪影成分的同时减少了剩余信息数据的丢失方面显示出改进的成功。

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