Graph neural networks for image-guided disease diagnosis: A review

iRadiology Pub Date : 2023-06-27 DOI:10.1002/ird3.20
Lin Zhang, Yan Zhao, Tongtong Che, Shuyu Li, Xiuying Wang
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Abstract

Medical imaging is playing an increasingly crucial role in disease diagnosis. Numerous deep learning-based methods have been developed for image-guided automatic disease diagnosis. Most of the methods have harnessed conventional convolutional neural networks, which are directly applied in the regular image domain. However, some irregular spatial patterns revealed in medical images are also critical to disease diagnosis, since they can describe latent relations in different image regions of a subject (e.g., different focal lesions in an image) or between different groups (e.g., Alzheimer's disease and healthy control). Therefore, how to exploit and analyze irregular spatial patterns and their relations has become a research challenge in the field of image-guided disease diagnosis. To address this challenge, graph neural networks (GNNs) are proposed to perform the convolution operation on graphs. Graphs can naturally represent irregular spatial structures. Because of their ability to aggregate node features, edge features, and graph structure information to capture and learn hidden spatial patterns in irregular structures, GNN-based algorithms have achieved promising results in the detection of various diseases. In this paper, we introduce commonly used GNN-based algorithms and systematically review their applications to disease diagnosis. We summarize the workflow of GNN-based applications in disease diagnosis, ranging from localizing the regions of interest and edge construction to modeling. Furthermore, we discuss the limitations and outline potential research directions for GNNs in disease diagnosis.

Abstract Image

图形神经网络在图像引导疾病诊断中的应用综述
医学影像学在疾病诊断中发挥着越来越重要的作用。已经开发了许多基于深度学习的方法用于图像引导的疾病自动诊断。大多数方法都利用了传统的卷积神经网络,这些网络直接应用于规则图像域。然而,医学图像中揭示的一些不规则空间模式对疾病诊断也至关重要,因为它们可以描述受试者不同图像区域中(例如,图像中的不同局灶性病变)或不同组之间(例如,阿尔茨海默病和健康对照)的潜在关系。因此,如何利用和分析不规则的空间模式及其关系已成为图像引导疾病诊断领域的研究挑战。为了应对这一挑战,提出了图神经网络(GNN)来对图进行卷积运算。图形可以自然地表示不规则的空间结构。由于它们能够聚合节点特征、边缘特征和图结构信息,以捕捉和学习不规则结构中隐藏的空间模式,基于GNN的算法在检测各种疾病方面取得了很好的结果。在本文中,我们介绍了常用的基于GNN的算法,并系统地回顾了它们在疾病诊断中的应用。我们总结了基于GNN的疾病诊断应用的工作流程,从感兴趣区域的定位、边缘构建到建模。此外,我们还讨论了GNNs在疾病诊断中的局限性,并概述了潜在的研究方向。
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