Dynamic Graph Representation Learning for Spatio-Temporal Neuroimaging Analysis

IF 10.5 1区 计算机科学 Q1 AUTOMATION & CONTROL SYSTEMS IEEE Transactions on Cybernetics Pub Date : 2025-02-04 DOI:10.1109/TCYB.2025.3531657
Rui Liu;Yao Hu;Jibin Wu;Ka-Chun Wong;Zhi-An Huang;Yu-An Huang;Kay Chen Tan
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Abstract

Neuroimaging analysis aims to reveal the information-processing mechanisms of the human brain in a noninvasive manner. In the past, graph neural networks (GNNs) have shown promise in capturing the non-Euclidean structure of brain networks. However, existing neuroimaging studies focused primarily on spatial functional connectivity, despite temporal dynamics in complex brain networks. To address this gap, we propose a spatio-temporal interactive graph representation framework (STIGR) for dynamic neuroimaging analysis that encompasses different aspects from classification and regression tasks to interpretation tasks. STIGR leverages a dynamic adaptive-neighbor graph convolution network to capture the interrelationships between spatial and temporal dynamics. To address the limited global scope in graph convolutions, a self-attention module based on Transformers is introduced to extract long-term dependencies. Contrastive learning is used to adaptively contrast similarities between adjacent scanning windows, modeling cross-temporal correlations in dynamic graphs. Extensive experiments on six public neuroimaging datasets demonstrate the competitive performance of STIGR across different platforms, achieving state-of-the-art results in classification and regression tasks. The proposed framework enables the detection of remarkable temporal association patterns between regions of interest based on sequential neuroimaging signals, offering medical professionals a versatile and interpretable tool for exploring task-specific neurological patterns. Our codes and models are available at https://github.com/77YQ77/STIGR/.
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时空神经影像分析的动态图表示学习
神经影像学分析旨在以无创的方式揭示人脑的信息处理机制。过去,图神经网络(gnn)在捕获大脑网络的非欧几里得结构方面显示出了希望。然而,现有的神经影像学研究主要集中在空间功能连接,尽管在复杂的大脑网络的时间动态。为了解决这一差距,我们提出了一个用于动态神经成像分析的时空交互图表示框架(STIGR),该框架涵盖了从分类和回归任务到解释任务的不同方面。STIGR利用动态自适应邻居图卷积网络来捕捉空间和时间动态之间的相互关系。为了解决图卷积有限的全局范围问题,引入了一种基于transformer的自关注模块来提取长期依赖关系。对比学习用于自适应对比相邻扫描窗口之间的相似性,在动态图中建模跨时间相关性。在六个公共神经成像数据集上的大量实验证明了STIGR在不同平台上的竞争力,在分类和回归任务中取得了最先进的结果。提出的框架能够检测基于顺序神经成像信号的感兴趣区域之间显着的时间关联模式,为医学专业人员提供了一种多功能和可解释的工具,用于探索特定任务的神经模式。我们的代码和模型可在https://github.com/77YQ77/STIGR/上获得。
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来源期刊
IEEE Transactions on Cybernetics
IEEE Transactions on Cybernetics COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE-COMPUTER SCIENCE, CYBERNETICS
CiteScore
25.40
自引率
11.00%
发文量
1869
期刊介绍: The scope of the IEEE Transactions on Cybernetics includes computational approaches to the field of cybernetics. Specifically, the transactions welcomes papers on communication and control across machines or machine, human, and organizations. The scope includes such areas as computational intelligence, computer vision, neural networks, genetic algorithms, machine learning, fuzzy systems, cognitive systems, decision making, and robotics, to the extent that they contribute to the theme of cybernetics or demonstrate an application of cybernetics principles.
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