首页> 外文期刊>International journal of psychophysiology: official journal of the International Organization of Psychophysiology >The trees and the forest: Characterization of complex brain networks with minimum spanning trees
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The trees and the forest: Characterization of complex brain networks with minimum spanning trees

机译:树木与森林:最小跨度树木的复杂脑网络的表征

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摘要

In recent years there has been a shift in focus from the study of local, mostly task-related activation to the exploration of the organization and functioning of large-scale structural and functional complex brain networks. Progress in the interdisciplinary field of modern network science has introduced many new concepts, analytical tools and models which allow a systematic interpretation of multivariate data obtained from structural and functional MRI, EEG and MEG. However, progress in this field has been hampered by the absence of a simple, unbiased method to represent the essential features of brain networks, and to compare these across different conditions, behavioural states and neuropsychiatriceurological diseases. One promising solution to this problem is to represent brain networks by a minimum spanning tree (MST), a unique acyclic subgraph that connects all nodes and maximizes a property of interest such as synchronization between brain areas. We explain how the global and local properties of an MST can be characterized. We then review early and more recent applications of the MST to EEG and MEG in epilepsy, development, schizophrenia, brain tumours, multiple sclerosis and Parkinson's disease, and show how MST characterization performs compared to more conventional graph analysis. Finally, we illustrate how MST characterization allows representation of observed brain networks in a space of all possible tree configurations and discuss how this may simplify the construction of simple generative models of normal and abnormal brain network organization.
机译:近年来,重点已经从研究与任务相关的局部激活转移到探索大型结构和功能性复杂脑网络的组织和功能。现代网络科学跨学科领域的进步引入了许多新概念,分析工具和模型,可以系统地解释从结构和功能MRI,EEG和MEG获得的多元数据。但是,由于缺少一种简单,公正的方法来表示脑部网络的基本特征,并且无法在不同的状况,行为状态和神经精神病/神经疾病中进行比较,因此阻碍了该领域的进展。解决此问题的一种有希望的解决方案是通过最小生成树(MST)来表示大脑网络,该树是连接所有节点并最大化感兴趣的属性(例如大脑区域之间的同步)的唯一无环子图。我们解释了如何表征MST的全局和局部属性。然后,我们回顾了MST在EEG和MEG在癫痫,发展,精神分裂症,脑瘤,多发性硬化症和帕金森氏病中的早期和较新的应用,并显示了与更常规的图形分析相比,MST表征的性能。最后,我们说明了MST表征如何在所有可能的树状配置空间中表示观察到的大脑网络,并讨论了这如何简化正常和异常大脑网络组织的简单生成模型的构建。

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