基于低维嵌入的脑信号探索性分析

Yuxiao Wang, C. Ting, Xu Gao, H. Ombao
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引用次数: 6

摘要

在本文中,我们开发了计算效率和理论上合理的工具来分析高维大脑信号。我们的方法是提取每个大脑区域的最佳低维表示,然后通过这些因素表征和估计区域之间的连通性。这种方法的动机是我们观察到每个区域内许多通道的脑电图(eeg)表现出高度的多重共线性和同步性,从而表明提取每个区域的汇总因子是明智的。在这里,汇总因子是导致最低重构误差的编码。重点研究了线性自编码器和自解码器的两种特殊情况。第一种方法将这些因素描述为观测信号的瞬时线性混合。在第二种方法中,因子是观察到的信号的卷积(这比第一种方法更通用)。通过不同条件下的仿真,比较了这些方法的优缺点。最后,对静息状态脑电图数据进行探索性分析。估计了因子的光谱特性,并利用相干度量计算了通过因子的区域之间的连通性。我们在Matlab工具箱XHiDiTS (https://goo.gl/uXc8ei)中实现了这些方法。在整个静息状态期间,利用工具箱来研究这些因素在所有时期的一致性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Exploratory Analysis of Brain Signals through Low Dimensional Embedding
In this paper, we develop computationally efficient and theoretically justified tools for analyzing high dimensional brain signals. Our approach is to extract the optimal lower dimensional representations for each brain region and then characterize and estimate connectivity between regions through these factors. This approach is motivated by our observation that electroencephalograms (EEGs) from many channels within each region exhibit a high degree of multicollinearity and synchrony thereby suggesting that it would be sensible to extract summary factors for each region. Here, the summary factors are the encodings that lead to the lowest reconstruction error. We focus on two special cases of linear auto encoder and decoder. The first characterizes the factors as instantaneous linear mixing of the observed signals. In the second approach, the factors are convolutions of the observed signals (which is more general than the first). These methods were compared through simulations under different conditions and the results provide insights on advantages and limitations of each. Finally, we performed exploratory analysis of resting state EEG data. The spectral properties of the factors were estimated and connectivity between regions via the factors using coherence measures were computed. We implemented these methods in a Matlab toolbox XHiDiTS (https://goo.gl/uXc8ei). The toolbox was utilized to investigate consistency of these factors across all epochs during the entire resting-state period.
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