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使用功能磁共振成像对脑功能连接网络进行高阶图形拓扑分析

High-Order Graphical Topology Analysis of Brain Functional Connectivity Networks Using fMRI.

作者信息

Ling Qinrui, Liu Aiping, Li Yu, Mi Taomian, Chan Piu, Thomas Yeo B T, Chen Xun

出版信息

IEEE Trans Neural Syst Rehabil Eng. 2025;33:1611-1620. doi: 10.1109/TNSRE.2025.3564293. Epub 2025 May 5.

Abstract

The brain connectivity network can be represented as a graph to reveal its intrinsic topological properties. While classical graph theory provides a powerful framework for examining brain connectivity patterns, it often focuses on low-order graphical indicators and pays less attention to high-order topological metrics, which are crucial to the comprehensive understanding of brain topology. In this paper, we capture high-order topological features via a graphical topology analysis framework for brain connectivity networks derived from functional Magnetic Resonance Imaging (fMRI). Several high-order metrics are examined across varying sparsity levels of binary graphs to trace the evolution of brain networks. Topological phase transitions are primarily investigated that reflect brain criticality, and a novel indicator called "redundant energy" is proposed to measure the chaos level of the brain. Extensive experiments on diverse datasets from healthy controls validate the reproducibility and generalizability of our framework. The results demonstrate that around critical points, classical graph theoretical indicators change sharply, driven by crucial brain regions that have high node curvatures. Further investigations on fMRI of subjects with and without Parkinson's disease uncover significant alterations in high-order topological features which are further associated with the severity of the disease. This study provides a fresh perspective on studying topological architectures of the brain, with the potential to expand our comprehension on brain function in both healthy and diseased states.

摘要

大脑连接网络可以表示为一个图形,以揭示其内在的拓扑特性。虽然经典图论为研究大脑连接模式提供了一个强大的框架,但它通常侧重于低阶图形指标,而较少关注高阶拓扑度量,而高阶拓扑度量对于全面理解大脑拓扑结构至关重要。在本文中,我们通过一个图形拓扑分析框架来捕捉源自功能磁共振成像(fMRI)的大脑连接网络的高阶拓扑特征。在不同稀疏度水平的二元图上考察了几个高阶度量,以追踪大脑网络的演化。主要研究了反映大脑临界性的拓扑相变,并提出了一种名为“冗余能量”的新指标来衡量大脑的混沌程度。对来自健康对照的不同数据集进行的大量实验验证了我们框架的可重复性和通用性。结果表明,在临界点附近,经典图论指标在具有高节点曲率的关键脑区的驱动下急剧变化。对患有和未患有帕金森病的受试者的fMRI进一步研究发现,高阶拓扑特征存在显著改变,这些改变与疾病的严重程度进一步相关。本研究为研究大脑的拓扑结构提供了一个新的视角,有可能扩展我们对健康和患病状态下大脑功能的理解。

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