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Improved estimation of dynamic connectivity from resting-state fMRI data

机译:从休息状态FMRI数据改进了动态连接的估计

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Functional magnetic resonance imaging (fMRI) has been widely used for neuronal connectivity analysis. As a datadriventechnique, independent component analysis (ICA) has become a valuable tool for fMRI studies. Recently, due tothe dynamic nature of the human brain, time-varying connectivity analysis is regarded as an important measure to revealessential information within the network. The sliding window approach has been commonly used to extract dynamicinformation from fMRI time series. However, it has some limitations due to the assumption that connectivity at a giventime can be estimated from all the samples of the input time series data spanned by the selected window. To address thisissue, we apply a time-varying graphical lasso model (TVGL) proposed by Hallac et al., which can infer the networkeven when the observation interval is at only one time point. On the other hand, recent results have shown that theindividual’s connectivity profiles can be used as “fingerprint” to identify subjects from a large group. We hypothesizethat the subject-specific FC profiles may have the critical effect on analyzing FC dynamics at a group level. In this work,we apply a group ICA (GICA) based data-driven framework to assess dynamic functional network connectivity (dFNC),based on the combination of GICA and TVGL. Also, we use the regression model to remove the subject-specificindividuality in detecting functional dynamics. The results prove our hypothesis and suggest that removing theindividual effect may benefit us to assess the connectivity dynamics within the human brain.
机译:功能磁共振成像(FMRI)已广泛用于神经元连接分析。作为一个数据技术,独立分量分析(ICA)已成为FMRI研究的宝贵工具。最近,由于人类大脑的动态性质,时变的连接分析被认为是揭示的重要措施网络内的基本信息。滑动窗口方法通常用于提取动态来自FMRI时间序列的信息。然而,由于假设在给定的情况下,它具有一些限制可以从所选窗口跨越的输入时间序列数据的所有样本估计时间。解决这个问题问题,我们应用了Hallac等人提出的时变图形套索模型(TVGL),可以推断网络即使观察间隔仅在一个时间点。另一方面,最近的结果表明了个人的连接配置文件可以用作“指纹”,以识别来自大型组的主题。我们假设特定于主题的FC配置文件可能具有对分析组级别分析FC动态的关键影响。在这项工作中,我们应用基于ICA(GICA)的数据驱动框架来评估动态功能网络连接(DFNC),基于GICA和TVGL的组合。此外,我们使用回归模型来删除特定主题检测功能动态的个性。结果证明了我们的假设,并建议去除个人效果可能使我们有利于评估人脑内的连接动态。

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