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Enhanced detection of artifacts in EEG data using higher-order statistics and independent component analysis

机译:使用高阶统计量和独立成分分析来增强对EEG数据中伪像的检测

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摘要

Detecting artifacts produced in EEG data by muscle activity, eye blinks and electrical noise is a common and important problem in EEG research. It is now widely accepted that independent component analysis (ICA) may be a useful tool for isolating artifacts and/or cortical processes from electroencephalographic (EEG) data. We present results of simulations demonstrating that ICA decomposition, here tested using three popular ICA algorithms Infomax, SOBI, and FastICA, can allow more sensitive automated detection of small non-brain artifacts than applying the same detection methods directly to the scalp channel data. We tested the upper bound performance of five methods for detecting various types of artifacts by separately optimizing and then applying them to artifact-free EEG data into which we had added simulated artifacts of several types, ranging in size from thirty times smaller (−50 dB) to the size of the EEG data themselves (0 dB). Of the methods tested, those involving spectral thresholding were most sensitive. Except for muscle artifact detection where we found no gain of using ICA, all methods proved more sensitive when applied to the ICA-decomposed data than applied to the raw scalp data: the mean performance for ICA was higher and situated at about two standard deviations away from the performance distribution obtained on raw data. We note that ICA decomposition also allows simple subtraction of artifacts accounted for by single independent components, and/or separate and direct examination of the decomposed non-artifact processes themselves.
机译:在脑电图研究中,通过肌肉活动,眨眼和电噪声来检测脑电图数据中产生的伪影是一个普遍而重要的问题。现在,广泛接受的是,独立成分分析(ICA)可能是从脑电图(EEG)数据中分离出伪影和/或皮质过程的有用工具。我们提供的模拟结果表明,与直接将相同的检测方法直接应用到头皮通道数据相比,此处使用三种流行的ICA算法Infomax,SOBI和FastICA进行的ICA分解测试可以更灵敏地自动检测小的非大脑伪影。我们通过分别优化然后将其应用于无伪造的EEG数据,测试了五种用于检测各种伪像的方法的上限性能,在其中添加了几种类型的伪像,其大小从小三十倍(−50 dB )到EEG数据本身的大小(0 dB)。在测试的方法中,那些涉及光谱阈值的方法最为敏感。除了肌肉伪影检测(我们发现没有使用ICA的收益)外,所有方法在应用于ICA分解数据时都比应用于原始头皮数据更为敏感:ICA的平均性能更高,并且相距约两个标准差根据原始数据获得的效果分布。我们注意到,ICA分解还允许简单地减去由单个独立组件造成的伪影,和/或对分解后的非伪影过程本身进行单独直接检查。

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