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Removing Artifacts and Background Activity in Multichannel Electroencephalograms by Enhancing Common Activity

机译:通过增强共同活动来消除多通道脑电图中的伪像和背景活动

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Removing artifacts and background EEG from multichannel interictal and ictal EEG has become a major research topic in EEG signal processing in recent years. We applied for this purpose a recently developed subspace-based method for modelling the common dynamics in multichannel signals. When the epileptiform activity is common in the majority of channels and the artifacts appear only in a few channels the proposed method can be used to remove the latter. The performance of the method was tested on simulated data for different noise levels. For high noise levels the method was still able to identify the common dynamics. In addition, the method was applied to a real life EEG recording. Also in this case the muscle artifacts were removed successfully. For both the synthetic data and the analyzed real life data the results were compared with the results obtained with principal component analysis (PCA). In both cases the proposed method performed better than PCA
机译:近年来,从多通道发作和发作性EEG中去除伪影和背景EEG已成为EEG信号处理中的主要研究课题。为此,我们应用了一种新近开发的基于子空间的方法来对多通道信号中的通用动态进行建模。当癫痫样活动在大多数通道中很常见并且伪影仅在少数通道中出现时,可以使用所提出的方法来消除后者。在不同噪声水平的模拟数据上测试了该方法的性能。对于高噪声水平,该方法仍然能够识别常见的动态。另外,该方法被应用于现实生活中的脑电图记录。同样在这种情况下,成功清除了肌肉伪影。对于合成数据和分析的现实生活数据,将结果与通过主成分分析(PCA)获得的结果进行比较。在这两种情况下,建议的方法都比PCA表现更好

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