首页> 美国卫生研究院文献>Frontiers in Computational Neuroscience >Novel Modeling of Task vs. Rest Brain State Predictability Using a Dynamic Time Warping Spectrum: Comparisons and Contrasts with Other Standard Measures of Brain Dynamics
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Novel Modeling of Task vs. Rest Brain State Predictability Using a Dynamic Time Warping Spectrum: Comparisons and Contrasts with Other Standard Measures of Brain Dynamics

机译:使用动态时间扭曲频谱对任务与静止大脑状态可预测性进行新颖建模:与其他标准动力学方法的比较和对比

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摘要

Dynamic time warping, or DTW, is a powerful and domain-general sequence alignment method for computing a similarity measure. Such dynamic programming-based techniques like DTW are now the backbone and driver of most bioinformatics methods and discoveries. In neuroscience it has had far less use, though this has begun to change. We wanted to explore new ways of applying DTW, not simply as a measure with which to cluster or compare similarity between features but in a conceptually different way. We have used DTW to provide a more interpretable spectral description of the data, compared to standard approaches such as the Fourier and related transforms. The DTW approach and standard discrete Fourier transform (DFT) are assessed against benchmark measures of neural dynamics. These include EEG microstates, EEG avalanches, and the sum squared error (SSE) from a multilayer perceptron (MLP) prediction of the EEG time series, and simultaneously acquired FMRI BOLD signal. We explored the relationships between these variables of interest in an EEG-FMRI dataset acquired during a standard cognitive task, which allowed us to explore how DTW differentially performs in different task settings. We found that despite strong correlations between DTW and DFT-spectra, DTW was a better predictor for almost every measure of brain dynamics. Using these DTW measures, we show that predictability is almost always higher in task than in rest states, which is consistent to other theoretical and empirical findings, providing additional evidence for the utility of the DTW approach.
机译:动态时间规整(DTW)是一种功能强大且领域通用的序列比对方法,用于计算相似性度量。像DTW这样的基于动态编程的技术,如今已成为大多数生物信息学方法和发现的骨干和推动力。在神经科学中,它的用途已大大减少,尽管这种情况已开始改变。我们想探索应用DTW的新方法,而不仅仅是作为一种在特征之间进行聚类或比较相似性的方法,而是一种概念上不同的方法。与诸如傅立叶和相关变换之类的标准方法相比,我们已经使用DTW提供了更可解释的数据频谱描述。 DTW方法和标准离散傅里叶变换(DFT)是根据神经动力学的基准度量进行评估的。这些包括脑电图微状态,脑电图雪崩和来自脑电信号时间序列的多层感知器(MLP)预测的平方和误差(SSE),以及同时获取的FMRI BOLD信号。我们探讨了在标准认知任务期间获取的EEG-FMRI数据集中这些关注变量之间的关系,这使我们能够探索DTW在不同任务设置下的差异表现。我们发现,尽管DTW与DFT光谱之间存在很强的相关性,但DTW几乎可以对几乎所有的脑动力学指标进行更好的预测。使用这些DTW度量,我们显示出任务中的可预测性几乎总是比静止状态下更高,这与其他理论和经验发现是一致的,这为DTW方法的实用性提供了额外的证据。

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