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Fast vertex-based graph convolutional neural network and its application to brain images

机译:基于快速的Vertex图卷积神经网络及其在脑图像中的应用

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摘要

This paper proposes a vertex-based graph convolutional neural network (vertex-CNN) for analyzing structured data on graphs. We represent graphs using semi-regular triangulated meshes in which each vertex has 6 connected neighbors. We generalize classical CNN defined on equi-spaced grids to that defined on semi-regular triangulated meshes by introducing main building blocks of the CNN, including convolution, down-sampling, and pooling, on a vertex domain. By exploiting the regularity of semi regular meshes in terms of vertex connections, the proposed vertex-CNN keeps the inherent properties of classical CNN in a Euclidean space, such as shift-invariance and down-sampling at a rate of 2, 4, etc. We employ brain images from Alzheimer & rsquo;s Disease Neuroimaging Initiative (ADNI) (n = 6767) and extract cortical features (e.g., cortical thickness, surface area, curvature, Jacobian, sulcal depth, and volume) for the classification of healthy controls (CON), patients with mild cognitive impairment (MCI) and Alzheimer & rsquo;s disease (AD). Based on cortical thickness, we show that the proposed vertex-CNN is near 3 times faster and performs significantly better in the classification performance of CON, MCI, and AD than an existing graph CNN defined on the graph spectral domain given in Defferrard (2016). Moreover, we examine the robustness of a multi-channel implementation of vertex-CNN on 6 cortical measures for the MCI and AD classification. Finally, we show a promising finding of the prediction accuracy from MCI to AD as a function of years before the onset of AD. Our experiments demonstrate the fast computation and promising classification performance of the vertex-CNN.(c) 2021 Elsevier B.V. All rights reserved.
机译:本文提出了一种基于顶点的图形卷积神经网络(Vertex-CNN),用于分析图形上的结构化数据。我们代表使用半常规三角形网格的图表,其中每个顶点具有6个连接的邻居。我们通过在顶点域上引入CNN的主构件块,在半常规三角形网格上定义的经典CNN概括了在半常规三角形网格上定义的。在顶点域上,包括卷积,下采样和池。通过在顶点连接方面利用半常规网格的规律性,所提出的顶点-CNN将经典CNN中的固有特性保持在欧几里德空间中的经典CNN,例如以2,4等的速率换档不变性和下抽样。我们使用阿尔茨海默氏症和rsquo的脑图像疾病神经影像序列(ADNI)(n = 6767)并提取皮质特征(例如,皮质厚度,表面积,曲率,曲曲,静脉深度和体积)进行健康对照的分类(CON),认知障碍患者(MCI)和阿尔茨海默氏症和rsquo; S病(AD)。基于皮质厚度,我们表明所提出的Vertex-CNN在Con,MCI和AD的分类性能方面越好,而不是Defferrard(2016)的图谱域(2016)上的图形谱域所定义的现有图CNN显着更好地执行。 。此外,我们研究了WATEX-CNN的多通道实现的鲁棒性,对于MCI和AD分类的6个皮质测量。最后,我们展示了在广告发作前几年来从MCI到AD的预测准确性。我们的实验证明了Vertex-CNN的快速计算和有希望的分类性能。(c)2021 Elsevier B.v.保留所有权利。

著录项

  • 来源
    《Neurocomputing》 |2021年第28期|1-10|共10页
  • 作者

    Liu Chaoqiang; Ji Hui; Qiu Anqi;

  • 作者单位

    Natl Univ Singapore Dept Biomed Engn Singapore Singapore;

    Natl Univ Singapore Dept Math Singapore Singapore;

    Natl Univ Singapore Dept Biomed Engn Singapore Singapore|Natl Univ Singapore Smart Syst Inst Singapore Singapore|Natl Univ Singapore 1 Inst Hlth Singapore Singapore|Johns Hopkins Univ Dept Biomed Engn Baltimore MD 21218 USA;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Convolutional neural network; Graph-structured data; Dementia classification; Semi-triangulated meshes;

    机译:卷积神经网络;图形结构数据;痴呆症分类;半三角形网格;
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