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Applications of community detection techniques to brain graphs: Algorithmic considerations and implications for neural function

机译:社区检测技术在脑图上的应用:算法考虑和对神经功能的影响

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摘要

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 modularity maximization, 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.
机译:人脑可以表示为一张图,其中神经元(例如细胞或少量组织)通过结构或功能链接彼此异质连接。脑图是神经系统的简化表示,已开始提供有关健康人类认知及其疾病变化的基本见解。网络神经科学中的一个关键的开放性问题在于神经单元如何聚集到紧密互连的组中,这些组可以提供协调的活动,这些活动是感知,动作和适应行为的特征。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:与自己组中的其他单元紧密互连但与其他组中的单元稀疏互连的神经单元组。在本文中,我们描述了一种通用的社区检测算法,称为模块化最大化,并详细介绍了其在根据神经影像数据构建的脑图上的应用。我们特别注意重要的算法考虑因素,尤其是在这些技术最近扩展到随时间变化的图形时。在叙述了这些技术已提供给大脑功能的一些基本见解之后,我们重点介绍了方法学发展的潜在途径,以供将来研究以更好地表征伴随人类行为的大脑中协调活动的模式。本教程向天真的读者介绍了与生成脑图有关的理论考虑,对用于社区检测的模块最大化的理解,可用于表征社区结构的统计方法资源以及对CFM有用性的理解这些方法可揭示神经影像数据中与行为相关的网络动态。

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