Functional Brain Connectivity Hyper-Network Embedded with Structural Information for Epilepsy Diagnosis

Gengbiao Zhang, Qi Zhu, Jing Yang, Ruting Xu, Zhiqiang Zhang, Daoqiang Zhang
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Abstract

Automatic diagnosis of brain diseases based on brain connectivity network (BCN) classification is one of the hot research fields in medical image analysis. The functional brain network reflects the brain functional activities and structural brain network reflects the neural connections of the main brain regions. It is of great significance to explore and explain the inner mechanism of the brain and to understand and treat brain diseases. In this paper, based on the graph structure characteristics of brain network, the fusion model of functional brain network and structural brain network is designed to classify the diagnosis of brain mental diseases. Specifically, the main work of this paper is to use the Laplacian graph embed the information of diffusion tensor imaging, which contains the characteristics of structural brain networks, into the functional brain network with hyper-order functional connectivity information built based on functional magnetic resonance data using the sparse representation method, to obtain brain network with both functional and structural characteristics. Projection of the brain network and the two original modes data to the kernel space respectively and then classified by the multi-task learning method. Experiments on the epilepsy dataset show that our method has better performance than several state-of-the-art methods. In addition, brain regions and connections that are highly correlated with disease revealed by our method are discussed.
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嵌入结构信息的功能性脑连接超网络用于癫痫诊断
基于脑连接网络(BCN)分类的脑疾病自动诊断是医学图像分析领域的研究热点之一。功能性脑网络反映脑功能活动,结构性脑网络反映脑主要区域的神经连接。这对于探索和解释大脑的内在机制,认识和治疗脑部疾病具有重要意义。本文根据脑网络的图结构特点,设计了功能性脑网络与结构性脑网络的融合模型,对脑精神疾病的诊断进行分类。具体而言,本文的主要工作是利用拉普拉斯图将包含结构脑网络特征的弥散张量成像信息嵌入到基于功能磁共振数据,采用稀疏表示方法构建的具有超阶功能连接信息的功能脑网络中,得到兼具功能和结构特征的脑网络。将脑网络和两种原始模式数据分别投影到核空间,然后采用多任务学习方法进行分类。在癫痫数据集上的实验表明,我们的方法比几种最先进的方法具有更好的性能。此外,还讨论了我们的方法揭示的与疾病高度相关的大脑区域和连接。
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