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Bursty properties revealed in large-scale brain networks with a point-based method for dynamic functional connectivity

机译:大型脑网络中的突发性质,具有基于点的动态功能连接的方法

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The brain is organized into large scale spatial networks that can be detected during periods of rest using fMRI. The brain is also a dynamic organ with activity that changes over time. We developed a method and investigated properties where the connections as a function of time are derived and quantified. The point based method (PBM) presented here derives covariance matrices after clustering individual time points based upon their global spatial pattern. This method achieved increased temporal sensitivity, together with temporal network theory, allowed us to study functional integration between resting-state networks. Our results show that functional integrations between two resting-state networks predominately occurs in bursts of activity. This is followed by varying intermittent periods of less connectivity. The described point-based method of dynamic resting-state functional connectivity allows for a detailed and expanded view on the temporal dynamics of resting-state connectivity that provides novel insights into how neuronal information processing is integrated in the human brain at the level of large-scale networks.
机译:大脑被组织成大规模空间网络,可以在使用FMRI的休息期间检测到。大脑也是一种动态器官,随着时间的推移而变化。我们开发了一种方法和调查的属性,其中作为时间函数的连接是衍生和量化的。此处呈现的基于点的方法(PBM)在基于其全局空间模式培养各个时间点之后派生协方差矩阵。该方法实现了时间敏感性提高,以及时间网络理论,使我们能够研究休息状态网络之间的功能集成。我们的结果表明,两个休息状态网络之间的功能集成主要发生在活动突发中。接下来是改变间歇性的间歇性较少的连接。所描述的动态休息状态功能连接方法允许对休息状态连接的时间动态进行详细和扩展的视图,该静态连接的时间动态提供了新的洞察,以在大型的大脑中集成在人类大脑中的内容中集成在人类大脑中尺度网络。

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