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Dimension reduction: additional benefit of an optimal filter for independent component analysis to extract event-related potentials.

机译:减少尺寸:用于独立成分分析以提取事件相关电位的最佳过滤器的额外好处。

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摘要

The present study addresses benefits of a linear optimal filter (OF) for independent component analysis (ICA) in extracting brain event-related potentials (ERPs). A filter such as the digital filter is usually considered as a denoising tool. Actually, in filtering ERP recordings by an OF, the ERP' topography should not be changed by the filter, and the output should also be able to be modeled by the linear transformation. Moreover, an OF designed for a specific ERP source or component may remove noise, as well as reduce the overlap of sources and even reject some non-targeted sources in the ERP recordings. The OF can thus accomplish both the denoising and dimension reduction (reducing the number of sources) simultaneously. We demonstrated these effects using two datasets, one containing visual and the other auditory ERPs. The results showed that the method including OF and ICA extracted much more reliable components than the sole ICA without OF did, and that OF removed some non-targeted sources and made the underdetermined model of EEG recordings approach to the determined one. Thus, we suggest designing an OF based on the properties of an ERP to filter recordings before using ICA decomposition to extract the targeted ERP component.
机译:本研究解决了用于独立成分分析(ICA)的线性最佳滤波器(OF)在提取脑事件相关电位(ERP)中的优势。诸如数字滤波器之类的滤波器通常被认为是去噪工具。实际上,在通过OF过滤ERP记录时,不应通过过滤器更改ERP的拓扑,并且还应该能够通过线性变换对输出进行建模。此外,为特定的ERP来源或组件设计的OF可以消除噪声,并减少来源的重叠,甚至拒绝ERP记录中的某些非目标来源。因此,OF可以同时完成降噪和降维(减少信号源的数量)。我们使用两个数据集演示了这些效果,其中一个包含视觉数据,另一个包含听觉ERP。结果表明,包括OF和ICA的方法比没有OF的唯一ICA提取的组分可靠得多,并且OF去除了一些非目标来源,并使脑电记录的欠定模型接近确定的模型。因此,我们建议在使用ICA分解提取目标ERP组件之前,基于ERP的属性设计OF来过滤记录。

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