Thompson William Hedley, Brantefors Per, Fransson Peter
Department of Clinical Neuroscience, Karolinska Institutet, Stockholm, Sweden.
Netw Neurosci. 2017 Jun 1;1(2):69-99. doi: 10.1162/NETN_a_00011. eCollection 2017 Spring.
Network neuroscience has become an established paradigm to tackle questions related to the functional and structural connectome of the brain. Recently, interest has been growing in examining the temporal dynamics of the brain's network activity. Although different approaches to capturing fluctuations in brain connectivity have been proposed, there have been few attempts to quantify these fluctuations using temporal network theory. This theory is an extension of network theory that has been successfully applied to the modeling of dynamic processes in economics, social sciences, and engineering article but it has not been adopted to a great extent within network neuroscience. The objective of this article is twofold: (i) to present a detailed description of the central tenets of temporal network theory and describe its measures, and; (ii) to apply these measures to a resting-state fMRI dataset to illustrate their utility. Furthermore, we discuss the interpretation of temporal network theory in the context of the dynamic functional brain connectome. All the temporal network measures and plotting functions described in this article are freely available as the Python package Teneto.
网络神经科学已成为解决与大脑功能和结构连接组相关问题的既定范式。最近,人们对研究大脑网络活动的时间动态的兴趣日益浓厚。尽管已经提出了不同的方法来捕捉大脑连接性的波动,但很少有人尝试使用时间网络理论来量化这些波动。该理论是网络理论的延伸,已成功应用于经济学、社会科学和工程学中动态过程的建模,但在网络神经科学中尚未得到广泛应用。本文的目的有两个:(i)详细描述时间网络理论的核心原则并描述其度量方法;(ii)将这些度量方法应用于静息态功能磁共振成像数据集以说明其效用。此外,我们在动态功能脑连接组的背景下讨论时间网络理论的解释。本文中描述的所有时间网络度量和绘图函数都作为Python包Teneto免费提供。