论文标题
连通性的梯度作为图形的大脑活动傅立叶基础
Gradients of Connectivity as Graph Fourier Bases of Brain Activity
论文作者
论文摘要
图理论对大脑的复杂结构和功能进行建模的应用为其组织和功能提供了新的启示,促使网络神经科学的出现。尽管在该领域取得了巨大的进步,但相对较少的方法利用了大脑网络拓扑来分析大脑活动。在这个方向上的最新尝试已利用图形频谱分析和图形信号处理来分解连通性本征或梯度中的大脑活性。如果结果在可解释性和功能相关性方面是有希望的,那么方法和术语有时会令人困惑。本文的目标是双重的。首先,我们总结了与连通性梯度和图形信号处理有关的最新贡献,并尝试澄清现场使用的术语和方法,同时指出当前的方法论局限性。其次,我们讨论了连通性梯度的功能相关性可以通过将它们视为脑活动的图形傅立叶底部来有效地利用。
The application of graph theory to model the complex structure and function of the brain has shed new light on its organization and function, prompting the emergence of network neuroscience. Despite the tremendous progress that has been achieved in this field, still relatively few methods exploit the topology of brain networks to analyze brain activity. Recent attempts in this direction have leveraged on graph spectral analysis and graph signal processing to decompose brain activity in connectivity eigenmodes or gradients. If results are promising in terms of interpretability and functional relevance, methodologies and terminology are sometimes confusing. The goals of this paper are twofold. First, we summarize recent contributions related to connectivity gradients and graph signal processing, and attempt a clarification of the terminology and methods used in the field, while pointing out current methodological limitations. Second, we discuss the perspective that the functional relevance of connectivity gradients could be fruitfully exploited by considering them as graph Fourier bases of brain activity.