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Testing Stationarity of Brain Functional Connectivity Using Change-Point Detection in fMRI Data

机译:使用fMRI数据中的变化点检测测试大脑功能连接的平稳性

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This paper studies two questions: (1) Does the functional connectivity (FC) in a human brain remain stationary during performance of a task? (2) If it is non-stationary, how can one evaluate and estimate dynamic FC? The framework presented here relies on pre-segmented brain regions to represent instantaneous FC as symmetric, positive-definite matrices (SPDMs), with entries denoting covariances of fMRI signals across regions. The time series of such SPDMs is tested for change point detection using two important ideas: (1) a convenient Riemannian structure on the space of SPDMs for calculating geodesic distances and sample statistics, and (2) a graph-based approach, for testing similarity of distributions, that uses pairwise distances and a minimal spanning tree. This hypothesis test results in a temporal segmentation of observation interval into parts with stationary connectivity and an estimation of graph displaying FC during each such interval. We demonstrate these ideas using fMRI data from HCP database.
机译:本文研究了两个问题:(1)在执行任务期间,人脑中的功能连接(FC)是否保持静止? (2)如果它是非平稳的,那么如何评估和估计动态FC?本文介绍的框架依赖于预先分割的大脑区域,将瞬时FC表示为对称的正定矩阵(SPDM),其条目表示跨区域的fMRI信号的协方差。使用两个重要的思想对此类SPDM的时间序列进行了测试,以检测变化点:(1)SPDM空间上方便的黎曼结构,用于计算测地距离和样本统计数据;(2)基于图的方法,用于测试相似性分布,使用成对距离和最小生成树。该假设检验导致观察间隔在时间上划分为具有固定连通性的部分,并估计了每个此类间隔内显示FC的图形的估计。我们使用来自HCP数据库的fMRI数据演示了这些想法。

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