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Capturing Dynamic Connectivity From Resting State fMRI Using Time-Varying Graphical Lasso

机译:使用时变图形套索从静止状态fMRI捕获动态连接

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Functional connectivity (FC) within the human brain evaluated through functional magnetic resonance imaging (fMRI) data has attracted increasing attention and has been employed to study the development of the brain or health conditions of the brain. Many different approaches have been proposed to estimate FC fromfMRI data, whereas many of them rely on an implicit assumption that functional connectivity should be static throughout the fMRI scan session. Recently, the fMRI community has realized the limitation of assuming static connectivity and dynamic approaches are more prominent in the resting state fMRI (rs-fMRI) analysis. The sliding window technique has been widely used in many studies to capture network dynamics, but has a number of limitations. In this study, we apply a time-varying graphical lasso (TVGL) model, an extension from the traditional graphical lasso, to address the challenge, which can greatly improve the estimation of FC. The performance of estimating dynamic FC is evaluated with the TVGL through both simulated experiments and real rsfMRI data from the Philadelphia Neurodevelopmental Cohort project. Improved performance is achieved over the sliding window technique. In particular, group differences and transition behaviors between young adults and children are investigated using the estimated dynamic connectivity networks, which help us to better unveil the mechanisms underlying the evolution of the brain over time.
机译:通过功能磁共振成像(fMRI)数据评估的人脑内部的功能连通性(FC)引起了越来越多的关注,并已被用于研究大脑的发育或大脑的健康状况。已经提出了许多不同的方法来从fMRI数据估计FC,而其中许多方法则基于一个隐含的假设,即功能连通性在整个fMRI扫描过程中应该是静态的。最近,功能磁共振成像界已经认识到假设静态连接和动态方法在静止状态功能磁共振成像(rs-fMRI)分析中更为突出的局限性。滑动窗口技术已在许多研究中广泛用于捕获网络动态,但有许多局限性。在这项研究中,我们应用了时变图形套索(TVGL)模型(它是传统图形套索的扩展)来应对这一挑战,可以极大地改善FC的估计。 TVGL通过模拟实验和费城神经发育队列项目的真实rsfMRI数据,评估了动态FC的估计性能。通过滑动窗口技术可以提高性能。特别是,使用估计的动态连接网络调查了年轻人和儿童之间的群体差异和过渡行为,这有助于我们更好地揭示大脑随时间演变的机制。

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