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仅使用二阶统计量通过盲源分离对单次试验事件相关电位中的伪迹进行自动校正。

Automatic correction of artifact from single-trial event-related potentials by blind source separation using second order statistics only.

作者信息

Ting K H, Fung P C W, Chang C Q, Chan F H Y

机构信息

Department of Electrical and Electronic Engineering, The University of Hong Kong, Pokfulam Road, Hong Kong, HKSAR, PR China.

出版信息

Med Eng Phys. 2006 Oct;28(8):780-94. doi: 10.1016/j.medengphy.2005.11.006. Epub 2006 Jan 6.

Abstract

Event-related potentials (ERP) are in general masked by various kinds of artifacts. To attenuate the effects of artifacts, various schemes have been introduced, such as epoch rejection, electro-oculogram (EOG) regression and independent component analysis (ICA). However, none of the existing techniques can automatically remove various kinds of artifacts from a single ERP epoch. EOG regression cannot handle artifacts other than ocular ones. ICA incorporating higher order statistics (HOS) normally requires data with large number of time samples in order that the solution is robust. In this paper we blindly separate the multi-channel ERP into source components by estimating the correlation matrices of the data. Since only second order statistics (SOS) is involved, the process performs well at the single epoch level. Automatic artifact identification is performed in the source domain by introducing objective criteria for various artifacts. Criteria are based on time domain signal amplitude for blink and spurious peak artifact, scalp distribution of signal power for eye movement artifact and power distribution of frequency components for muscle artifact. The correction procedure can be completed by removing the identified artifactual sources from the raw multi-channel ERP.

摘要

事件相关电位(ERP)通常会被各种伪迹所掩盖。为了减弱伪迹的影响,人们引入了各种方案,如时段剔除、眼电图(EOG)回归和独立成分分析(ICA)。然而,现有的技术都无法从单个ERP时段中自动去除各种伪迹。EOG回归无法处理眼部以外的伪迹。结合高阶统计量(HOS)的ICA通常需要大量时间样本的数据才能使解决方案稳健。在本文中,我们通过估计数据的相关矩阵,将多通道ERP盲目分离为源成分。由于只涉及二阶统计量(SOS),该过程在单个时段水平上表现良好。通过为各种伪迹引入客观标准,在源域中进行自动伪迹识别。这些标准基于眨眼和伪峰伪迹的时域信号幅度、眼动伪迹的信号功率头皮分布以及肌肉伪迹的频率成分功率分布。通过从原始多通道ERP中去除识别出的伪迹源,可以完成校正过程。

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