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Multi-kernel change detection for dynamic functional connectivity graphs

机译:动态功能连接图的多内核变化检测

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Dynamic functional connectivity (dFC) analyses of fMRI time-courses are typically performed using sliding-window based schemes. Such approaches not only inherently confine analysis to a single time-scale, but also do not generally lend themselves to accurate change-time estimates of the dynamically evolving graph topology. Change point detection methods on the other hand, offer the potential to overcome both limitations. However, the approaches employed so far in the dFC context are limited to detecting changes in linear relationships among time-courses corresponding to distinct regions of the brain. The present work puts forth a novel multi-kernel change point detection approach with the goal of capturing changes in the generally nonlinear relationships among time-courses, and thus in the topologies of the corresponding dynamically evolving FC graphs. The approach is tested on dynamic causal model (DCM) based synthetic resting-state fMRI data.
机译:通常使用基于滑动窗口的方案进行FMRI时间路线的动态功能连接(DFC)分析。这些方法不仅是对单个时间级的本身限制分析,而且通常不会借助自行借鉴动态演化的图形拓扑的准确变化估计。另一方面,更改点检测方法,提供克服这两个限制的可能性。然而,到目前为止在DFC上下文中采用的方法仅限于检测与大脑的不同区域对应的时间课程中线性关系的变化。本工作提出了一种新的多核变化点检测方法,其目的是捕获时间课程中一般非线性关系中的变化,从而在相应的动态演化FC图中的拓扑中。该方法在动态因果模型(DCM)合成休息状态FMRI数据上进行了测试。

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