Spatially-constrained and -unconstrained bi-graph interaction network for multi-organ pathology image classification.

Doanh C Bui, Boram Song, Kyungeun Kim, Jin Tae Kwak
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Abstract

In computational pathology, graphs have shown to be promising for pathology image analysis. There exist various graph structures that can discover differing features of pathology images. However, the combination and interaction between differing graph structures have not been fully studied and utilized for pathology image analysis. In this study, we propose a parallel, bi-graph neural network, designated as SCUBa-Net, equipped with both graph convolutional networks and Transformers, that processes a pathology image as two distinct graphs, including a spatially-constrained graph and a spatially-unconstrained graph. For efficient and effective graph learning, we introduce two inter-graph interaction blocks and an intra-graph interaction block. The inter-graph interaction blocks learn the node-to-node interactions within each graph. The intra-graph interaction block learns the graph-to-graph interactions at both global- and local-levels with the help of the virtual nodes that collect and summarize the information from the entire graphs. SCUBa-Net is systematically evaluated on four multi-organ datasets, including colorectal, prostate, gastric, and bladder cancers. The experimental results demonstrate the effectiveness of SCUBa-Net in comparison to the state-of-the-art convolutional neural networks, Transformer, and graph neural networks.

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用于多器官病理图像分类的空间受限和非受限双图交互网络
在计算病理学领域,图形在病理图像分析方面大有可为。现有的各种图结构可以发现病理图像的不同特征。然而,在病理图像分析中,不同图结构之间的组合和相互作用尚未得到充分研究和利用。在本研究中,我们提出了一种并行的双图神经网络,命名为 SCUBa-Net,它配备了图卷积网络和变换器,可将病理图像处理为两个不同的图,包括空间受限图和空间非受限图。为了实现高效的图学习,我们引入了两个图间交互块和一个图内交互块。图间交互块学习每个图内节点到节点的交互。图内交互块则借助收集和汇总整个图信息的虚拟节点,学习全局和局部层面的图与图之间的交互。SCUBa-Net 在四个多器官数据集上进行了系统评估,包括结直肠癌、前列腺癌、胃癌和膀胱癌。实验结果表明,与最先进的卷积神经网络、Transformer 和图神经网络相比,SCUBa-Net 非常有效。
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