Spatio-Temporal Attention Graph Convolution Network for Functional Connectome Classification

Wenhan Wang, Youyong Kong, Z. Hou, Chunfeng Yang, Yonggui Yuan
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引用次数: 3

Abstract

Numerous evidence has demonstrated the pathophysiology of a number of mental disorders is intimately associated with abnormal changes of dysfunctional integration of brain network. Functional connectome (FC) exhibits a strong discriminative power for mental disorder identification. However, existing methods are insufficient for modeling both spatial correlation and temporal dynamics of FC. In this study, we propose a novel Spatio-Temporal Attention Graph Convolution Network (STAGCN) for FC classification. In spatial domain, we develop attention enhanced graph convolutional network to take advantage of brain regions’ topological features. Moreover, a novel multi-head self-attention approach is proposed to capture the temporal relationships among different dynamic FC. Extensive experiments on two tasks of mental disorder diagnosis demonstrate the superior performance of the proposed STAGCN.
用于功能连接体分类的时空注意图卷积网络
大量证据表明,许多精神障碍的病理生理学与脑网络功能失调整合的异常变化密切相关。功能连接体(FC)对精神障碍的识别具有很强的鉴别能力。然而,现有的方法不足以同时模拟FC的空间相关性和时间动态。在这项研究中,我们提出了一种新的用于FC分类的时空注意图卷积网络(STAGCN)。在空间域中,我们利用大脑区域的拓扑特征,开发了注意力增强图卷积网络。此外,提出了一种新的多头自注意方法来捕捉不同动态FC之间的时间关系。在两个精神障碍诊断任务上的大量实验证明了所提出的STAGCN的优越性能。
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