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Artifact Removal in Magnetoencephalogram Background Activity With Independent Component Analysis

机译:具有独立分量分析的脑磁图背景活动中的伪影去除

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The aim of this study was to assess whether independent component analysis (ICA) could be valuable to remove power line noise, cardiac, and ocular artifacts from magnetoencephalogram (MEG) background activity. The MEGs were recorded from 11 subjects with a 148-channel whole-head magnetometer. We used a statistical criterion to estimate the number of independent components. Then, a robust ICA algorithm decomposed the MEG epochs and several methods were applied to detect those artifacts. The whole process had been previously tested on synthetic data. We found that the line noise components could be easily detected by their frequency spectrum. In addition, the ocular artifacts could be identified by their frequency characteristics and scalp topography. Moreover, the cardiac artifact was better recognized by its skewness value than by its kurtosis one. Finally, the MEG signals were compared before and after artifact rejection to evaluate our method.
机译:这项研究的目的是评估独立成分分析(ICA)对于消除脑磁图(MEG)背景活动中的电源线噪声,心脏和眼部伪影是否有价值。使用148通道全头磁力计记录11位受试者的MEG。我们使用统计标准来估计独立组件的数量。然后,鲁棒的ICA算法分解了MEG历元,并应用了几种方法来检测这些伪像。整个过程之前已经在综合数据上进行过测试。我们发现,线路噪声分量可以很容易地通过它们的频谱检测出来。另外,可以通过它们的频率特性和头皮形貌识别眼神器。此外,通过其偏度值比通过峰度1更好地识别心脏伪影。最后,在伪影剔除前后比较MEG信号,以评估我们的方法。

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