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脑电图记录中用于去除伪迹的与伪迹相关独立成分的自动识别

Automatic Identification of Artifact-Related Independent Components for Artifact Removal in EEG Recordings.

作者信息

Zou Yuan, Nathan Viswam, Jafari Roozbeh

出版信息

IEEE J Biomed Health Inform. 2016 Jan;20(1):73-81. doi: 10.1109/JBHI.2014.2370646. Epub 2014 Nov 13.

DOI:10.1109/JBHI.2014.2370646
PMID:25415992
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC5309922/
Abstract

Electroencephalography (EEG) is the recording of electrical activity produced by the firing of neurons within the brain. These activities can be decoded by signal processing techniques. However, EEG recordings are always contaminated with artifacts which hinder the decoding process. Therefore, identifying and removing artifacts is an important step. Researchers often clean EEG recordings with assistance from independent component analysis (ICA), since it can decompose EEG recordings into a number of artifact-related and event-related potential (ERP)-related independent components. However, existing ICA-based artifact identification strategies mostly restrict themselves to a subset of artifacts, e.g., identifying eye movement artifacts only, and have not been shown to reliably identify artifacts caused by nonbiological origins like high-impedance electrodes. In this paper, we propose an automatic algorithm for the identification of general artifacts. The proposed algorithm consists of two parts: 1) an event-related feature-based clustering algorithm used to identify artifacts which have physiological origins; and 2) the electrode-scalp impedance information employed for identifying nonbiological artifacts. The results on EEG data collected from ten subjects show that our algorithm can effectively detect, separate, and remove both physiological and nonbiological artifacts. Qualitative evaluation of the reconstructed EEG signals demonstrates that our proposed method can effectively enhance the signal quality, especially the quality of ERPs, even for those that barely display ERPs in the raw EEG. The performance results also show that our proposed method can effectively identify artifacts and subsequently enhance the classification accuracies compared to four commonly used automatic artifact removal methods.

摘要

脑电图(EEG)是对大脑内神经元放电产生的电活动进行记录。这些活动可以通过信号处理技术进行解码。然而,EEG记录总是会受到伪迹的污染,这会阻碍解码过程。因此,识别和去除伪迹是重要的一步。研究人员通常借助独立成分分析(ICA)来清理EEG记录,因为它可以将EEG记录分解为一些与伪迹相关和与事件相关电位(ERP)相关的独立成分。然而,现有的基于ICA的伪迹识别策略大多局限于伪迹的一个子集,例如仅识别眼动伪迹,并且尚未被证明能够可靠地识别由非生物来源(如高阻抗电极)引起的伪迹。在本文中,我们提出了一种用于识别一般伪迹的自动算法。所提出的算法由两部分组成:1)一种基于事件相关特征的聚类算法,用于识别具有生理起源的伪迹;2)用于识别非生物伪迹的电极-头皮阻抗信息。从十名受试者收集的EEG数据的结果表明,我们的算法能够有效地检测、分离和去除生理和非生物伪迹。对重建的EEG信号的定性评估表明,我们提出的方法能够有效地提高信号质量,特别是ERP的质量,即使对于那些在原始EEG中几乎不显示ERP的信号也是如此。性能结果还表明,与四种常用的自动伪迹去除方法相比,我们提出的方法能够有效地识别伪迹并随后提高分类准确率。

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