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EEGIFT: Group Independent Component Analysis for Event-Related EEG Data

机译:EEGIFT:事件相关脑电数据的组独立成分分析

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摘要

Independent component analysis (ICA) is a powerful method for source separation and has been used for decomposition of EEG, MRI, and concurrent EEG-fMRI data. ICA is not naturally suited to draw group inferences since it is a non-trivial problem to identify and order components across individuals. One solution to this problem is to create aggregate data containing observations from all subjects, estimate a single set of components and then back-reconstruct this in the individual data. Here, we describe such a group-level temporal ICA model for event related EEG. When used for EEG time series analysis, the accuracy of component detection and back-reconstruction with a group model is dependent on the degree of intra- and interindividual time and phase-locking of event related EEG processes. We illustrate this dependency in a group analysis of hybrid data consisting of three simulated event-related sources with varying degrees of latency jitter and variable topographies. Reconstruction accuracy was tested for temporal jitter 1, 2 and 3 times the FWHM of the sources for a number of algorithms. The results indicate that group ICA is adequate for decomposition of single trials with physiological jitter, and reconstructs event related sources with high accuracy.
机译:独立成分分析(ICA)是一种强大的源分离方法,已用于分解EEG,MRI和并发EEG-fMRI数据。 ICA自然不适合绘制组推理,因为在个人中识别和排序组件是一个不小的问题。解决该问题的一种方法是创建包含来自所有受试者的观察结果的汇总数据,估计一组成分,然后在单个数据中进行反向重构。在这里,我们描述了与事件相关的脑电图的这种组级时间ICA模型。当用于脑电图时间序列分析时,使用组模型进行组件检测和反向重建的准确性取决于事件相关脑电图过程中个体内和个体间时间以及锁相的程度。我们在混合数据的组分析中说明了这种依赖性,该混合数据由三个模拟的事件相关源组成,这些源具有不同程度的延迟抖动和可变的拓扑。对于多种算法,测试了时间精度为源FWHM的1、2和3倍的重建精度。结果表明,ICA组足以分解具有生理抖动的单个试验,并能以较高的准确度重建事件相关源。

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