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结合脑电图和眼动追踪:脑电图数据中眼动伪迹的识别、特征描述和校正。

Combining EEG and eye tracking: identification, characterization, and correction of eye movement artifacts in electroencephalographic data.

机构信息

Institute of Cognitive Science, University of Osnabrück Osnabrück, Germany.

出版信息

Front Hum Neurosci. 2012 Oct 9;6:278. doi: 10.3389/fnhum.2012.00278. eCollection 2012.

Abstract

Eye movements introduce large artifacts to electroencephalographic recordings (EEG) and thus render data analysis difficult or even impossible. Trials contaminated by eye movement and blink artifacts have to be discarded, hence in standard EEG-paradigms subjects are required to fixate on the screen. To overcome this restriction, several correction methods including regression and blind source separation have been proposed. Yet, there is no automated standard procedure established. By simultaneously recording eye movements and 64-channel-EEG during a guided eye movement paradigm, we investigate and review the properties of eye movement artifacts, including corneo-retinal dipole changes, saccadic spike potentials and eyelid artifacts, and study their interrelations during different types of eye- and eyelid movements. In concordance with earlier studies our results confirm that these artifacts arise from different independent sources and that depending on electrode site, gaze direction, and choice of reference these sources contribute differently to the measured signal. We assess the respective implications for artifact correction methods and therefore compare the performance of two prominent approaches, namely linear regression and independent component analysis (ICA). We show and discuss that due to the independence of eye artifact sources, regression-based correction methods inevitably over- or under-correct individual artifact components, while ICA is in principle suited to address such mixtures of different types of artifacts. Finally, we propose an algorithm, which uses eye tracker information to objectively identify eye-artifact related ICA-components (ICs) in an automated manner. In the data presented here, the algorithm performed very similar to human experts when those were given both, the topographies of the ICs and their respective activations in a large amount of trials. Moreover it performed more reliable and almost twice as effective than human experts when those had to base their decision on IC topographies only. Furthermore, a receiver operating characteristic (ROC) analysis demonstrated an optimal balance of false positive and false negative at an area under curve (AUC) of more than 0.99. Removing the automatically detected ICs from the data resulted in removal or substantial suppression of ocular artifacts including microsaccadic spike potentials, while the relevant neural signal remained unaffected. In conclusion the present work aims at a better understanding of individual eye movement artifacts, their interrelations and the respective implications for eye artifact correction. Additionally, the proposed ICA-procedure provides a tool for optimized detection and correction of eye movement-related artifact components.

摘要

眼动会给脑电图(EEG)记录带来很大的伪迹,从而使得数据分析变得困难甚至不可能。因此,受眼动和眨眼伪迹污染的试验必须被丢弃,在标准的 EEG 范式中,要求受试者注视屏幕。为了克服这个限制,已经提出了几种校正方法,包括回归和盲源分离。然而,目前还没有建立自动化的标准程序。通过在引导眼动范式中同时记录眼动和 64 通道 EEG,我们研究和回顾了眼动伪迹的特性,包括角膜视网膜偶极子变化、扫视尖峰电位和眼睑伪迹,并研究了它们在不同类型的眼动和眼睑运动中的相互关系。与早期的研究结果一致,我们的结果证实这些伪迹来自不同的独立源,并且根据电极位置、注视方向和参考选择,这些源对测量信号的贡献不同。我们评估了各自对校正方法的影响,因此比较了两种突出的方法,即线性回归和独立成分分析(ICA)的性能。我们展示并讨论了由于眼动伪迹源的独立性,基于回归的校正方法不可避免地会过度或不足校正个别伪迹成分,而 ICA 原则上适合解决不同类型伪迹的混合问题。最后,我们提出了一种算法,该算法使用眼动追踪器信息以客观的方式自动识别与眼动相关的 ICA 成分(IC)。在呈现的这些数据中,当算法提供大量试验的 IC 的地形图及其各自的激活情况时,算法的性能与人类专家非常相似。此外,当人类专家仅基于 IC 地形图做出决策时,算法的性能更可靠,几乎是人类专家的两倍有效。此外,接收者操作特征(ROC)分析表明,在曲线下面积(AUC)超过 0.99 时,假阳性和假阴性之间达到了最佳平衡。从数据中去除自动检测到的 IC 会去除或大大抑制包括微扫视尖峰电位在内的眼动伪迹,而相关的神经信号不受影响。总之,本工作旨在更好地理解个体眼动伪迹、它们的相互关系以及对眼动伪迹校正的影响。此外,所提出的 ICA 程序为优化检测和校正眼动相关伪迹成分提供了工具。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/6f33/3466435/d22b9d8c0be1/fnhum-06-00278-g0001.jpg

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