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A Mutual Multi-Scale Triplet Graph Convolutional Network for Classification of Brain Disorders Using Functional or Structural Connectivity

机译:使用功能或结构连接进行脑障碍分类的互相多尺度三态图卷积网络

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摘要

Brain connectivity alterations associated with mental disorders have been widely reported in both functional MRI (fMRI) and diffusion MRI (dMRI). However, extracting useful information from the vast amount of information afforded by brain networks remains a great challenge. Capturing network topology, graph convolutional networks (GCNs) have demonstrated to be superior in learning network representations tailored for identifying specific brain disorders. Existing graph construction techniques generally rely on a specific brain parcellation to define regions-of-interest (ROIs) to construct networks, often limiting the analysis into a single spatial scale. In addition, most methods focus on the pairwise relationships between the ROIs and ignore high-order associations between subjects. In this letter, we propose a mutual multi-scale triplet graph convolutional network (MMTGCN) to analyze functional and structural connectivity for brain disorder diagnosis. We first employ several templates with different scales of ROI parcellation to construct coarse-to-fine brain connectivity networks for each subject. Then, a triplet GCN (TGCN) module is developed to learn functional/structural representations of brain connectivity networks at each scale, with the triplet relationship among subjects explicitly incorporated into the learning process. Finally, we propose a template mutual learning strategy to train different scale TGCNs collaboratively for disease classification. Experimental results on 1,160 subjects from three datasets with fMRI or dMRI data demonstrate that our MMTGCN outperforms several state-of-the-art methods in identifying three types of brain disorders.
机译:与精神障碍相关的脑连接改变已在功能性MRI(FMRI)和扩散MRI(DMRI)中广泛报道。然而,从脑网络提供的大量信息中提取有用信息仍然是一个巨大的挑战。捕获网络拓扑,图表卷积网络(GCNS)已经证明,用于识别特定脑障碍的学习网络表示方面是优越的。现有的图形施工技术通常依赖于特定的大脑局部来定义兴趣区(ROI)以构建网络,通常将分析限制为单个空间尺度。此外,大多数方法都侧重于ROI之间的成对关系,并忽略受试者之间的高阶关联。在这封信中,我们提出了一种相互多尺度三重态图卷积网络(MMTGCN),用于分析脑病诊断的功能性和结构连通性。我们首先采用多个模板,具有不同的ROI局部尺度,为每个受试者构造粗到细小的大脑连接网络。然后,开发了一种三级GCN(TGCN)模块以在每种规模上学习脑连接网络的功能/结构表示,具有明确结合到学习过程中的受试者之间的三重态关系。最后,我们提出了一种模板相互学习策略,用于协同培训不同规模的TGCNS以进行疾病分类。来自三个数据集的1,160个受试者的实验结果表明,我们的MMTGCN在鉴定三种类型的脑障碍时优于几种最先进的方法。

著录项

  • 来源
    《IEEE Transactions on Medical Imaging》 |2021年第4期|1279-1289|共11页
  • 作者单位

    Chinese Acad Sci Brainnetome Ctr Inst Automat Beijing 100190 Peoples R China|Chinese Acad Sci Natl Lab Pattern Recognit Inst Automat Beijing 100190 Peoples R China|Univ North Carolina UNC Dept Radiol Chapel Hill NC 27599 USA|Univ North Carolina UNC BRIC Chapel Hill NC 27599 USA|Univ Chinese Acad Sci Sch Artificial Intelligence Beijing 101408 Peoples R China;

    Chinese Acad Sci Brainnetome Ctr Inst Automat Beijing 100190 Peoples R China|Chinese Acad Sci Natl Lab Pattern Recognit Inst Automat Beijing 100190 Peoples R China|Univ Chinese Acad Sci Sch Artificial Intelligence Beijing 101408 Peoples R China|Triinst Centerfor Translat Res Neuroimaging & Dat Atlanta GA 30303 USA|Georgia State Univ Georgia Inst Technol Atlanta GA 30303 USA|Emory Univ Atlanta GA 30303 USA;

    Nanjing Univ Informat Sci & Technol Sch Comp & Software Nanjing 210044 Peoples R China;

    Univ North Carolina UNC Dept Radiol Chapel Hill NC 27599 USA|Univ North Carolina UNC BRIC Chapel Hill NC 27599 USA;

    Chinese Acad Sci Brainnetome Ctr Inst Automat Beijing 100190 Peoples R China|Chinese Acad Sci Natl Lab Pattern Recognit Inst Automat Beijing 100190 Peoples R China;

    Univ North Carolina UNC Dept Radiol Chapel Hill NC 27599 USA|Univ North Carolina UNC BRIC Chapel Hill NC 27599 USA;

    Univ North Carolina UNC Dept Radiol Chapel Hill NC 27599 USA|Univ North Carolina UNC BRIC Chapel Hill NC 27599 USA;

    ShanghaiTech Univ Sch Biomed Engn Shanghai 201210 Peoples R China|Shanghai United Imaging Intelligence Co Ltd Dept Res & Dev Shanghai 200030 Peoples R China|Korea Univ Dept Artificial Intelligence Seoul 02841 South Korea;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Functional magnetic resonance imaging; Convolution; Diseases; Fuses; Brain modeling; Neuroimaging; White matter; Brain connectivity; graph convolutional network; triplet; classification;

    机译:功能性磁共振成像;卷积;疾病;保险丝;脑建模;神经影像;白质;脑连接;图形卷积网络;三重态;分类;

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