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Network complexity as a measure of information processing across resting-state networks: evidence from the Human Connectome Project

机译:网络复杂性作为跨静止状态网络的信息处理的一种量度:来自人类连接组项目的证据

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摘要

An emerging field of research focused on fluctuations in brain signals has provided evidence that the complexity of those signals, as measured by entropy, conveys important information about network dynamics (e.g., local and distributed processing). While much research has focused on how neural complexity differs in populations with different age groups or clinical disorders, substantially less research has focused on the basic understanding of neural complexity in populations with young and healthy brain states. The present study used resting-state fMRI data from the Human Connectome Project (Van Essen et al., ) to test the extent that neural complexity in the BOLD signal, as measured by multiscale entropy (1) would differ from random noise, (2) would differ between four major resting-state networks previously associated with higher-order cognition, and (3) would be associated with the strength and extent of functional connectivity—a complementary method of estimating information processing. We found that complexity in the BOLD signal exhibited different patterns of complexity from white, pink, and red noise and that neural complexity was differentially expressed between resting-state networks, including the default mode, cingulo-opercular, left and right frontoparietal networks. Lastly, neural complexity across all networks was negatively associated with functional connectivity at fine scales, but was positively associated with functional connectivity at coarse scales. The present study is the first to characterize neural complexity in BOLD signals at a high temporal resolution and across different networks and might help clarify the inconsistencies between neural complexity and functional connectivity, thus informing the mechanisms underlying neural complexity.
机译:专注于大脑信号波动的新兴研究领域提供了证据,即以熵衡量的那些信号的复杂性传达了有关网络动力学的重要信息(例如本地和分布式处理)。尽管许多研究集中于不同年龄组或临床疾病人群的神经复杂性有何不同,但很少有研究集中于具有年轻健康大脑状态的人群对神经复杂性的基本理解。本研究使用了来自人类Connectome项目(Van Essen等人)的静止状态fMRI数据来测试BOLD信号中神经复杂性的程度,如通过多尺度熵(1)所测量的(2) )将在先前与高阶认知相关的四个主要静止状态网络之间有所不同,并且(3)将与功能连接的强度和程度相关—一种估计信息处理的补充方法。我们发现,BOLD信号的复杂性表现出与白噪声,粉红色和红色噪声不同的复杂性模式,并且神经复杂性在静止状态网络(包括默认模式,扣带-耳膜,左侧和右侧额叶网络)之间差异表达。最后,所有网络的神经复杂性与精细连接的功能连通性呈负相关,但与粗糙连接的功能连接性呈正相关。本研究是第一个以高时间分辨率和跨不同网络表征BOLD信号中神经复杂性的研究,它可能有助于阐明神经复杂性和功能连接性之间的矛盾,从而为神经复杂性提供基础。

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