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Automated EEG Artifact Detection Using Independent Component Analysis

机译:使用独立成分分析的自动脑电伪像检测

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In electroencephalogram (EEG) recordings, physiological and non-physiological artifacts pose many problems. Independent Component Analysis (ICA) is a widely used algorithm for removing different artifacts from EEG signals. It separates data in linearly Independent Components (IC). However, the evaluation and classification of the calculated ICs as an EEG or artifact is not currently automated which requires manual intervention to reject ICs with visually detected artifacts after decomposition. In this paper, we propose a new automated approach for artifacts detection using the ICA algorithm. The best result of mean square error was achieved using SOBI-ICA (Second Order Blind Identification) and ADJUST algorithms. Compared with the existing automated solutions, our approach is not limited to electrode configurations, number of EEG channels, or specific types of artifacts. It provides a practical tool, reliable, automatic, and real-time capable, which avoids the need for the time-consuming manual selection of ICs during artifacts rejection.
机译:在脑电图(EEG)记录中,生理和非生理伪影会带来许多问题。独立分量分析(ICA)是一种广泛使用的算法,用于从EEG信号中去除不同的伪像。它以线性独立组件(IC)分隔数据。但是,目前尚不自动将计算出的IC作为EEG或伪像进行评估和分类,这需要人工干预才能在分解后剔除具有视觉检测伪像的IC。在本文中,我们提出了一种使用ICA算法进行伪像检测的新自动化方法。均方误差的最佳结果是使用SOBI-ICA(二阶盲识别)和ADJUST算法获得的。与现有的自动化解决方案相比,我们的方法不仅限于电极配置,EEG通道数量或特定类型的伪影。它提供了一种实用,可靠,自动且实时的工具,从而避免了在人工产物剔除期间需要耗时的手动选择IC的情况。

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