Garcia Javier O, Ashourvan Arian, Muldoon Sarah F, Vettel Jean M, Bassett Danielle S
U.S. Army Research Laboratory, Aberdeen Proving Ground, MD 21005 USA.
Department of Bioengineering, School of Engineering and Applied Science, University of Pennsylvania, Philadelphia, PA 19104 USA.
Proc IEEE Inst Electr Electron Eng. 2018 May;106(5):846-867. doi: 10.1109/JPROC.2017.2786710. Epub 2018 Feb 1.
The human brain can be represented as a graph in which neural units such as cells or small volumes of tissue are heterogeneously connected to one another through structural or functional links. Brain graphs are parsimonious representations of neural systems that have begun to offer fundamental insights into healthy human cognition, as well as its alteration in disease. A critical open question in network neuroscience lies in how neural units cluster into densely interconnected groups that can provide the coordinated activity that is characteristic of perception, action, and adaptive behaviors. Tools that have proven particularly useful for addressing this question are community detection approaches, which can identify communities or modules: groups of neural units that are densely interconnected with other units in their own group but sparsely interconnected with units in other groups. In this paper, we describe a common community detection algorithm known as , and we detail its applications to brain graphs constructed from neuroimaging data. We pay particular attention to important algorithmic considerations, especially in recent extensions of these techniques to graphs that evolve in time. After recounting a few fundamental insights that these techniques have provided into brain function, we highlight potential avenues of methodological advancements for future studies seeking to better characterize the patterns of coordinated activity in the brain that accompany human behavior. This tutorial provides a naive reader with an introduction to theoretical considerations pertinent to the generation of brain graphs, an understanding of modularity maximization for community detection, a resource of statistical measures that can be used to characterize community structure, and an appreciation of the usefulness of these approaches in uncovering behaviorally-relevant network dynamics in neuroimaging data.
人类大脑可以表示为一个图,其中诸如细胞或小体积组织等神经单元通过结构或功能连接相互异构连接。脑图是神经系统的简约表示,已开始为健康人类认知及其在疾病中的改变提供基本见解。网络神经科学中的一个关键开放性问题在于神经单元如何聚集成紧密相连的组,这些组能够提供感知、行动和适应性行为所特有的协调活动。已证明对解决这个问题特别有用的工具是社区检测方法,它可以识别社区或模块:即与自身组内的其他单元紧密相连,但与其他组内的单元稀疏相连的神经单元组。在本文中,我们描述了一种称为的常见社区检测算法,并详细介绍了其在由神经成像数据构建的脑图中的应用。我们特别关注重要的算法考量,尤其是这些技术在最近对随时间演变的图的扩展方面。在叙述了这些技术对脑功能提供的一些基本见解之后,我们强调了未来研究方法改进的潜在途径,这些研究旨在更好地表征伴随人类行为的大脑中协调活动的模式。本教程为普通读者介绍了与脑图生成相关的理论考量,理解用于社区检测的模块化最大化,可用于表征社区结构的统计量资源,以及认识到这些方法在揭示神经成像数据中与行为相关的网络动态方面的有用性。