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Sparse dictionary learning of resting state fMRI networks

机译:休息状态FMRI网络的稀疏字典学习

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摘要

Research in resting state fMRI (rsfMRI) has revealed the presence of stable, anti-correlated functional subnetworks in the brain. Task-positive networks are active during a cognitive process and are anti-correlated with task-negative networks, which are active during rest. In this paper, based on the assumption that the structure of the resting state functional brain connectivity is sparse, we utilize sparse dictionary modeling to identify distinct functional sub-networks. We propose two ways of formulating the sparse functional network learning problem that characterize the underlying functional connectivity from different perspectives. Our results show that the whole-brain functional connectivity can be concisely represented with highly modular, overlapping task-positiveegative pairs of sub-networks.
机译:休息状态的研究FMRI(RSFMRI)揭示了大脑中存在稳定的反相关的功能子网。任务正网络在认知过程中是活动的,并且与任务负网络反相关,在休息期间处于活动状态。在本文中,基于静止状态功能脑连接的结构稀疏的假设,我们利用稀疏的字典建模来识别不同的功能子网。我们提出了两种方式,可以制定稀疏功能网络学习问题,这些网络学习问题从不同的角度来表征潜在的功能连接。我们的研究结果表明,全脑功能连接可以用高度模块化,重叠的任务正/负对的子网并简洁地表示。

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