A Novel Spatio-Temporal Hub Identification in Brain Networks by Learning Dynamic Graph Embedding on Grassmannian Manifolds

Defu Yang;Hui Shen;Minghan Chen;Shuai Wang;Jiazhou Chen;Hongmin Cai;Xueli Chen;Guorong Wu;Wentao Zhu
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Abstract

Mounting evidence has revealed that functional brain networks are intrinsically dynamic, undergoing changes over time, even in the resting-state environment. Notably, recent studies have highlighted the existence of a small number of critical brain regions within each functional brain network that exhibit a flexible role in adapting the geometric pattern of brain connectivity over time, referred to as “temporal hub” regions. Therefore, the identification of these temporal hubs becomes pivotal for comprehending the mechanisms that underlie the dynamic evolution of brain connectivity. However, existing spatio-temporal hub identification methods rely on static network-based approaches, wherein each temporal hub region is independently inferred from individual time-segmented networks without considering their temporal consistency and consequently fails to align the evolution of hubs with the dynamic changes in brain states. To address this limitation, we propose a novel spatio-temporal hub identification method that fully leverages dynamic graph embedding to distinguish temporal hubs from peripheral nodes, in which dynamic graph embeddings are learned from both spatial and temporal dimensions. Specifically, to preserve the temporal consistency of evolving networks, we model the dynamic graph embedding as a physical model of time, where the network-to-network transition is mathematically expressed as a total variation of dynamic graph embedding with respect to time. Furthermore, a Grassmannian manifold optimization scheme is introduced to enhance graph embedding learning and capture the time-varying topology of brain networks. Experimental results on both synthetic and real fMRI data demonstrate superior temporal consistency in hub identification, surpassing conventional approaches.
通过学习格拉斯曼漫域上的动态图嵌入识别脑网络中的新型时空枢纽
越来越多的证据表明,功能性大脑网络本质上是动态的,随着时间的推移而发生变化,即使在休息状态环境中也是如此。值得注意的是,最近的研究强调了每个功能性大脑网络中存在的少数关键大脑区域,这些区域在适应大脑连接的几何模式方面表现出灵活的作用,被称为“时间枢纽”区域。因此,识别这些时间枢纽对于理解大脑连接动态进化的机制至关重要。然而,现有的时空枢纽识别方法依赖于基于静态网络的方法,其中每个时间枢纽区域都是独立地从单个时间分段网络中推断出来的,而没有考虑它们的时间一致性,因此无法将枢纽的演变与大脑状态的动态变化结合起来。为了解决这一限制,我们提出了一种新的时空枢纽识别方法,该方法充分利用动态图嵌入来区分时间枢纽和周边节点,其中动态图嵌入从空间和时间维度学习。具体来说,为了保持进化网络的时间一致性,我们将动态图嵌入建模为时间的物理模型,其中网络到网络的转换在数学上表示为动态图嵌入相对于时间的总变化。此外,引入了格拉斯曼流形优化方案来增强图嵌入学习并捕获大脑网络的时变拓扑。在合成和真实fMRI数据上的实验结果表明,轮毂识别的时间一致性优于传统方法。
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