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A Bayesian Approach for Estimating Dynamic Functional Network Connectivity in fMRI Data

机译:贝叶斯方法估计功能磁共振成像数据中的动态功能网络连接

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摘要

Dynamic functional connectivity, i.e., the study of how interactions among brain regions change dynamically over the course of an fMRI experiment, has recently received wide interest in the neuroimaging literature. Current approaches for studying dynamic connectivity often rely on ad-hoc approaches for inference, with the fMRI time courses segmented by a sequence of sliding windows. We propose a principled Bayesian approach to dynamic functional connectivity, which is based on the estimation of time varying networks. Our method utilizes a hidden Markov model for classification of latent cognitive states, achieving estimation of the networks in an integrated framework that borrows strength over the entire time course of the experiment. Furthermore, we assume that the graph structures, which define the connectivity states at each time point, are related within a super-graph, to encourage the selection of the same edges among related graphs. We apply our method to simulated task-based fMRI data, where we show how our approach allows the decoupling of the task-related activations and the functional connectivity states. We also analyze data from an fMRI sensorimotor task experiment on an individual healthy subject and obtain results that support the role of particular anatomical regions in modulating interaction between executive control and attention networks.
机译:动态功能连通性,即关于在fMRI实验过程中大脑区域之间的相互作用如何动态变化的研究,最近在神经影像学文献中引起了广泛兴趣。当前研究动态连通性的方法通常依赖于即席方法进行推理,而fMRI时间过程则由一系列滑动窗口进行分割。我们提出了一种基于原理的贝叶斯方法进行动态功能连接,该方法基于时变网络的估计。我们的方法利用隐马尔可夫模型对潜在的认知状态进行分类,从而在整个实验过程中借用强度的集成框架中实现对网络的估计。此外,我们假设定义每个时间点的连接状态的图结构在超图内相关,以鼓励在相关图之间选择相同的边。我们将我们的方法应用于基于任务的模拟fMRI数据,其中我们展示了我们的方法如何允许与任务相关的激活和功能连接状态的解耦。我们还分析了来自单个健康受试者的fMRI感觉运动任务实验的数据,并获得了支持特定解剖区域在调节执行控制和注意力网络之间的相互作用中发挥作用的结果。

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