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Adaptive windowing and windowless approaches to estimate dynamic functional brain connectivity

机译:自适应开窗和无窗方法估计动态功能性大脑的连通性

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In this work, we discuss estimation of dynamic dependence of a multi-variate signal. Commonly used approaches are often based on a locality assumption (e.g. sliding-window) which can miss spontaneous changes due to blurring with local but unrelated changes. We discuss recent approaches to overcome this limitation including 1) a wavelet-space approach, essentially adapting the window to the underlying frequency content and 2) a sparse signal-representation which removes any locality assumption. The latter is especially useful when there is no prior knowledge of the validity of such assumption as in brain-analysis. Results on several large resting-fMRI data sets highlight the potential of these approaches.
机译:在这项工作中,我们讨论了多元信号的动态相关性估计。常用的方法通常基于局部性假设(例如,滑动窗口),该假设可能会由于由于局部但不相关的变化而模糊而错过自发变化。我们讨论了克服此限制的最新方法,包括1)小波空间方法,实质上使窗口适应基础频率内容,以及2)稀疏信号表示,该表示消除了任何局域性假设。当没有像大脑分析这样的假设的先验知识时,后者特别有用。几个大型静息功能磁共振成像数据集的结果凸显了这些方法的潜力。

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