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On spatio-temporal component selection in Space-Time Independent Component Analysis: An application to ictal EEG

机译:在时空独立分量分析中的时空组分选择:ICTAL EEG的应用

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This paper assesses the use of Independent Component Analysis (ICA) as applied to epileptic scalp electroencephalographic (EEG) recordings. In particular we address the newly introduced Spatio-Temporal ICA algorithm (ST-ICA), which uses both spatial and temporal information derived from multi-channel biomedical signal recordings to inform (or update) the standard ICA algorithm. ICA is a technique well suited to extracting underlying sources from multi-channel EEG recordings - for ictal EEG recordings, the goal is to both de-noise the EEG recordings (i.e. remove artifacts) as well as isolate and extract epileptic processes. As part of any ICA application, there is an interim stage whereby relevant components (or processes) need to be identified - either objectively or subjectively (usually the latter). In previous work with ST-ICA we used spectral information alone to identify the underlying processes subspaces extracted by the ST-ICA. Here we assess the joint use of spatial as well as spectral information for this purpose. We test this on ictal EEG segments where it can be seen that different underlying processes possess characteristic signatures in both modalities which can be utilized for the clustering (or process selection) stage.
机译:本文评估了使用独立分量分析(ICA),应用于癫痫术头盔脑电图(EEG)录音。特别地,我们解决了新引进的时空ICA算法(ST-ICA),它使用来自多声道生物医学信号记录的空间和时间信息来通知(或更新)标准ICA算法。 ICA是一种很好的技术,适用于从多通道EEG录音中提取底层源 - 对于ICTAL EEG记录,目标是对EEG记录(即去除伪影)以及分离和提取癫痫过程。作为任何ICA应用的一部分,存在临时阶段,即需要识别相关组件(或过程) - 客观地或主观(通常是后者)。在以前的工作与ST-ICA一起使用我们使用Spectral信息来识别ST-ICA提取的底层流程子空间。在这里,我们为此目的评估了空间和光谱信息的联合使用。我们可以在ICTAL EEG段中测试这一点,可以看出,不同的底层过程具有在可以用于聚类(或过程选择)阶段的两种方式中的特征签名。

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