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连贯网络重构伴随长期训练。

Cohesive network reconfiguration accompanies extended training.

作者信息

Telesford Qawi K, Ashourvan Arian, Wymbs Nicholas F, Grafton Scott T, Vettel Jean M, Bassett Danielle S

机构信息

Department of Bioengineering, University of Pennsylvania, Philadelphia, Pennsylvania, 19104.

Human Research and Engineering Directorate, U.S. Army Research Laboratory, Aberdeen, Maryland, 21001.

出版信息

Hum Brain Mapp. 2017 Sep;38(9):4744-4759. doi: 10.1002/hbm.23699. Epub 2017 Jun 24.

DOI:10.1002/hbm.23699
PMID:28646563
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC5554863/
Abstract

Human behavior is supported by flexible neurophysiological processes that enable the fine-scale manipulation of information across distributed neural circuits. Yet, approaches for understanding the dynamics of these circuit interactions have been limited. One promising avenue for quantifying and describing these dynamics lies in multilayer network models. Here, networks are composed of nodes (which represent brain regions) and time-dependent edges (which represent statistical similarities in activity time series). We use this approach to examine functional connectivity measured by non-invasive neuroimaging techniques. These multilayer network models facilitate the examination of changes in the pattern of statistical interactions between large-scale brain regions that might facilitate behavior. In this study, we define and exercise two novel measures of network reconfiguration, and demonstrate their utility in neuroimaging data acquired as healthy adult human subjects learn a new motor skill. In particular, we identify putative functional modules in multilayer networks and characterize the degree to which nodes switch between modules. Next, we define cohesive switches, in which a set of nodes moves between modules together as a group, and we define disjoint switches, in which a single node moves between modules independently from other nodes. Together, these two concepts offer complementary yet distinct insights into the changes in functional connectivity that accompany motor learning. More generally, our work offers statistical tools that other researchers can use to better understand the reconfiguration patterns of functional connectivity over time. Hum Brain Mapp 38:4744-4759, 2017. © 2017 The Authors Human Brain Mapping Published by Wiley Periodicals, Inc.

摘要

人类行为由灵活的神经生理过程支持,这些过程能够在分布式神经回路中对信息进行精细尺度的操控。然而,理解这些回路相互作用动态的方法一直有限。量化和描述这些动态的一个有前景的途径在于多层网络模型。在此,网络由节点(代表脑区)和随时间变化的边(代表活动时间序列中的统计相似性)组成。我们使用这种方法来检查通过非侵入性神经成像技术测量的功能连接性。这些多层网络模型有助于检查大规模脑区之间统计相互作用模式的变化,而这些变化可能有助于行为。在本研究中,我们定义并运用了两种新的网络重构测量方法,并在健康成年人类受试者学习新运动技能时获取的神经成像数据中展示了它们的效用。具体而言,我们识别多层网络中的假定功能模块,并表征节点在模块之间切换的程度。接下来,我们定义凝聚性切换,即一组节点作为一个整体在模块之间移动,我们还定义了不连续切换,即单个节点独立于其他节点在模块之间移动。这两个概念共同为运动学习过程中伴随的功能连接性变化提供了互补但又不同的见解。更一般地说,我们的工作提供了统计工具,其他研究人员可以用这些工具更好地理解功能连接性随时间的重构模式。《人类大脑图谱》38:4744 - 4759,2017年。© 2017作者 人类大脑图谱 由威利期刊公司出版

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