Self-Supervised Learning with Graph Neural Networks for Region of Interest Retrieval in Histopathology

Yigit Ozen, S. Aksoy, K. Kösemehmetoğlu, S. Önder, A. Üner
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引用次数: 8

Abstract

Deep learning has achieved successful performance in representation learning and content-based retrieval of histopathology images. The commonly used setting in deep learning-based approaches is supervised training of deep neural networks for classification, and using the trained model to extract representations that are used for computing and ranking the distances between images. However, there are two remaining major challenges. First, supervised training of deep neural networks requires large amount of manually labeled data which is often limited in the medical field. Transfer learning has been used to overcome this challenge, but its success remained limited. Second, the clinical practice in histopathology necessitates working with regions of interest (ROI) of multiple diagnostic classes with arbitrary shapes and sizes. The typical solution to this problem is to aggregate the representations of fixed-sized patches cropped from these regions to obtain region-level representations. However, naive methods cannot sufficiently exploit the rich contextual information in the complex tissue structures. To tackle these two challenges, we propose a generic method that utilizes graph neural networks (GNN), combined with a self-supervised training method using a contrastive loss. GNN enables representing arbitrarily-shaped ROIs as graphs and encoding contextual information. Self-supervised contrastive learning improves quality of learned representations without requiring labeled data. The experiments using a challenging breast histopathology data set show that the proposed method achieves better performance than the state-of-the-art.
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基于图神经网络的组织病理学兴趣区检索自监督学习
深度学习在组织病理学图像的表示学习和基于内容的检索方面取得了成功的表现。在基于深度学习的方法中,常用的设置是对深度神经网络进行监督训练,用于分类,并使用训练好的模型提取用于计算和排序图像之间距离的表示。然而,仍然存在两个主要挑战。首先,深度神经网络的监督训练需要大量的人工标记数据,而这在医学领域往往是有限的。迁移学习已经被用来克服这一挑战,但它的成功仍然有限。其次,组织病理学的临床实践需要处理任意形状和大小的多个诊断类别的感兴趣区域(ROI)。该问题的典型解决方案是从这些区域裁剪的固定大小补丁的表示进行聚合,以获得区域级表示。然而,简单的方法不能充分利用复杂组织结构中丰富的上下文信息。为了解决这两个挑战,我们提出了一种利用图神经网络(GNN)的通用方法,结合使用对比损失的自监督训练方法。GNN支持将任意形状的roi表示为图形并编码上下文信息。自监督对比学习在不需要标记数据的情况下提高了学习表征的质量。使用具有挑战性的乳腺组织病理学数据集的实验表明,所提出的方法比最先进的方法取得了更好的性能。
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