数据模型转换为独立成分分析提取脑信号

F. Cong, T. Ristaniemi
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引用次数: 1

摘要

本研究针对独立成分分析(ICA)提取脑事件相关电位(ERPs)时的数据模型转换进行了实证研究。我们首先证明了在理论上对多个单次试验的串联脑电图记录和这些单次试验的平均脑电图记录进行ICA是没有区别的。这种结论的一般假设是线性变换的混合模型不会随着单次试验而改变。此外,通过实证研究,我们明确地说明了基于ERP特性的最优小波滤波器可以将EEG的欠定模型转化为至少准定模型,而基于ERP的最优数字滤波器却不能。因此,我们建议将最优小波滤波器和ICA结合在一起,从ERP研究的平均EEG记录中提取所需的脑信号。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Data model conversion for independent component analysis to extract brain signals
This study addresses an empirical study for data model conversion when using independent component analysis (ICA) to extract brain event-related potentials (ERPs). We firstly prove that in theory there is no difference to perform ICA on the concatenated EEG recordings of a number of single trials and the averaged EEG recordings over those single trials. The general assumption for such conclusion is that mixing models of linear transformations do not change along single trials. Furthermore, we explicitly illustrate that an optimal wavelet filter based on properties of an ERP can convert the underdetermined model of EEG to at least quasi-determined one, but the optimal digital filter based on that ERP cannot make it, through empirical studies. Hence, we suggest combining an optimal wavelet filter and ICA together to extract desired brain signal from the averaged EEG recordings in the ERP study.
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