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Functional connectivity eigennetworks reveal different brain dynamics in multiple sclerosis patients

机译:功能连接eigennetworks在多发性硬化症患者中显示出不同的脑动力学

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Resting state functional connectivity is defined as correlations in brain activity measured by functional magnetic resonance imaging without any stimulation paradigm. Such connectivity is dynamic, even over the course of minutes, and the development of tools for its analysis is an important challenge in neuroscience. We propose a novel data-driven technique to extract connectivity patterns from dynamic whole-brain networks of multiple subjects. Our technique is based on singular value decomposition and decomposes a collection of networks into linearly independent “eigennetworks” and associated time courses. To deal with the temporal redundancy of networks, we propose a novel subsampling method based on the standard deviation of the connectivity strength. We apply the proposed technique to dynamic resting-state networks of healthy subjects and multiple sclerosis patients, and show its potential to detect aberrant connectivity patterns in patients.
机译:休息状态功能连接被定义为通过功能磁共振成像测量的脑活动中的相关性,没有任何刺激范例。这种连接是动态的,即使在几分钟内,也是一种分析工具的开发是神经科学中的重要挑战。我们提出了一种新的数据驱动技术,以从多个受试者的动态全脑网络中提取连接模式。我们的技术基于奇异值分解,并将网络集合分解成线性独立的“Eigennetworks”和相关时间课程。为了处理网络的时间冗余,我们提出了一种基于连接强度的标准偏差的新型自述方法。我们将提议的技术应用于动态休息状态网络的健康受试者和多发性硬化症患者,并显示出患者检测异常连接模式的可能性。

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