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IVA-Based Spatio-Temporal Dynamic Connectivity Analysis in Large-Scale FMRI Data

机译:大型FMRI数据中基于IVA的时空动态连接分析

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Recently, much attention has been devoted to examining time-varying changes in functional connectivity to understand the network structure in the human brain. Most studies, however, analyze the time-varying functional connectivity but ignore the time-varying spatial information. In this paper, we propose a method based on independent vector analysis (IVA) to study dynamic functional network connectivity (dFNC) as well as dynamic spatial functional network connectivity (dsFNC) in fMRI data. Though IVA allows one to effectively capture both, its performance degrades with the increase in the number of datasets. Hence, we propose an effective scheme to bypass this limitation followed by graph theoretical analysis to study both inter-network dynamics and intra-network stationarity. We observe higher dFNC fluctuations for patients with schizophrenia in the default-mode (DM)-salience network and cerebellum with associated connections. dsFNC analysis indicates higher inter-network fluctuation in patients while DM, anterior DM and frontal networks demonstrate significant intra-network fluctuation in controls.
机译:最近,很多关注都致力于检查功能连通性的时变变化,以了解人脑中的网络结构。然而,大多数研究分析了时变的功能连通性,但忽略了时变的空间信息。在本文中,我们提出了一种基于独立载体分析(IVA)的方法,以研究动态功能网络连接(DFNC)以及FMRI数据中的动态空间功能网络连接(DSFNC)。虽然IVA允许人们有效地捕获两者,但其性能随着数据集数量的增加而劣化。因此,我们提出了一种有效的方案来绕过这种限制,然后进行图表理论分析,以研究网络间动态和网络内的平静性。我们在默认模式(DM)-Salience网络中的精神分裂症患者和带有相关联的Cenebellum的患者的患者遵守更高的DFNC波动。 DSFNC分析表明,患者的网络间网络间波动较高,而DM,前DM和额头网络在控制中展示了重要的网络内部波动。

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