Contrasformer: A Brain Network Contrastive Transformer for Neurodegenerative Condition Identification

Jiaxing Xu, Kai He, Mengcheng Lan, Qingtian Bian, Wei Li, Tieying Li, Yiping Ke, Miao Qiao
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Abstract

Understanding neurological disorder is a fundamental problem in neuroscience, which often requires the analysis of brain networks derived from functional magnetic resonance imaging (fMRI) data. Despite the prevalence of Graph Neural Networks (GNNs) and Graph Transformers in various domains, applying them to brain networks faces challenges. Specifically, the datasets are severely impacted by the noises caused by distribution shifts across sub-populations and the neglect of node identities, both obstruct the identification of disease-specific patterns. To tackle these challenges, we propose Contrasformer, a novel contrastive brain network Transformer. It generates a prior-knowledge-enhanced contrast graph to address the distribution shifts across sub-populations by a two-stream attention mechanism. A cross attention with identity embedding highlights the identity of nodes, and three auxiliary losses ensure group consistency. Evaluated on 4 functional brain network datasets over 4 different diseases, Contrasformer outperforms the state-of-the-art methods for brain networks by achieving up to 10.8\% improvement in accuracy, which demonstrates its efficacy in neurological disorder identification. Case studies illustrate its interpretability, especially in the context of neuroscience. This paper provides a solution for analyzing brain networks, offering valuable insights into neurological disorders. Our code is available at \url{https://github.com/AngusMonroe/Contrasformer}.
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对比变换器用于神经退行性疾病识别的脑网络对比变换器
理解神经系统疾病是神经科学领域的一个基本问题,通常需要分析从功能磁共振成像(fMRI)数据中得出的脑网络。尽管图神经网络(GNN)和图变换器在各个领域都很普遍,但将它们应用于脑部网络却面临着挑战。具体来说,数据集受到子群间分布偏移和忽略节点身份所造成的噪声的严重影响,这两者都阻碍了疾病特异性模式的识别。为了应对这些挑战,我们提出了一种新型对比脑网络转换器(Contrasformer)。它通过双流注意力机制生成事先知识增强的对比图,以解决跨亚群的分布变化问题。带有身份嵌入的交叉注意突出了节点的身份,三个辅助损失确保了群体的一致性。通过对4种不同疾病的4个大脑功能网络数据集进行评估,Contrasformer的准确率提高了10.8%,优于目前最先进的大脑网络方法,这证明了它在神经紊乱识别方面的功效。案例研究说明了它的可解释性,尤其是在神经科学领域。本文为分析大脑网络提供了一种解决方案,为神经紊乱提供了有价值的见解。我们的代码可在(url{https://github.com/AngusMonroe/Contrasformer}.
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