Learning to Evaluate Color Similarity for Histopathology Images using Triplet Networks.

Anirudh Choudhary, Hang Wu, Li Tong, May D Wang
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引用次数: 4

Abstract

Stain normalization is a crucial pre-processing step for histopathological image processing, and can help improve the accuracy of downstream tasks such as segmentation and classification. To evaluate the effectiveness of stain normalization methods, various metrics based on color-perceptual similarity and stain color evaluation have been proposed. However, there still exists a huge gap between metric evaluation and human perception, given the limited explainability power of existing metrics and inability to combine color and semantic information efficiently. Inspired by the effectiveness of deep neural networks in evaluating perceptual similarity of natural images, in this paper, we propose TriNet-P, a color-perceptual similarity metric for whole slide images, based on deep metric embeddings. We evaluate the proposed approach using four publicly available breast cancer histological datasets. The benefit of our approach is its representation efficiency of the perceptual factors associated with H&E stained images with minimal human intervention. We show that our metric can capture the semantic similarities, both at subject (patient) and laboratory levels, and leads to better performance in image retrieval and clustering tasks.

Abstract Image

Abstract Image

Abstract Image

使用三重网络学习评估组织病理学图像的颜色相似性。
染色归一化是组织病理图像处理的关键预处理步骤,有助于提高下游任务(如分割和分类)的准确性。为了评估染色归一化方法的有效性,人们提出了各种基于颜色感知相似性和染色颜色评价的度量。然而,由于现有度量的解释能力有限,并且无法有效地将颜色和语义信息结合起来,度量评价与人类感知之间仍然存在巨大差距。受深度神经网络在评估自然图像感知相似性方面有效性的启发,本文提出了基于深度度量嵌入的全幻灯片图像颜色感知相似性度量TriNet-P。我们使用四个公开可用的乳腺癌组织学数据集来评估所提出的方法。我们的方法的好处是它的表示效率与H&E染色图像相关的感知因素与最小的人为干预。我们表明,我们的度量可以捕获受试者(患者)和实验室级别的语义相似性,并在图像检索和聚类任务中获得更好的性能。
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