Histopathology relies on the analysis of microscopic tissue images to diagnose disease. A crucial part of tissue preparation is staining whereby a dye is used to make the salient tissue components more distinguishable. However, differences in laboratory protocols and scanning devices result in significant confounding appearance variation in the corresponding images. This variation increases both human error and the inter-rater variability, as well as hinders the performance of automatic or semi-automatic methods. In the present paper we introduce an unsupervised adversarial network to translate (and hence normalize) whole slide images across multiple data acquisition domains. Our key contributions are: (i) an adversarial architecture which learns across multiple domains with a single generator-discriminator network using an information flow branch which optimizes for perceptual loss, and (ii) the inclusion of an additional feature extraction network during training which guides the transformation network to keep all the structural features in the tissue image intact. We: (i) demonstrate the effectiveness of the proposed method firstly on H\&E slides of 120 cases of kidney cancer, as well as (ii) show the benefits of the approach on more general problems, such as flexible illumination based natural image enhancement and light source adaptation.
翻译:组织准备中的一个关键部分是污点,即使用染料使突出组织组成部分更加可辨别;然而,实验室规程和扫描装置的差异导致相应图像的外观差异很大,令人困惑不解;这种差异增加了人类误差和大鼠之间的变异性,并妨碍了自动或半自动方法的性能。在本文件中,我们引入了一个未经监督的对称网络,以便在多个数据获取领域翻译(并因此正常化)整个幻灯片图像。我们的主要贡献是:(一) 一种对抗性结构,利用一个信息流分支,在多个领域学习单一的发电机-干扰器网络,在多个领域学习,以优化感知性损失;以及(二) 在培训期间增加一个特征提取网络,指导改造网络,使组织图像中的所有结构特征保持完整。我们:(一) 将拟议方法首先在120个肾癌病例的H ⁇ E幻灯片上展示其有效性,以及(二) 展示方法在更为普遍的问题上的益处,例如基于灵活的光源的提高和自然图像。