论文标题
H&E Evrversial网络:通过苏木精和曙红回归学习染色不变特征的卷积神经网络
H&E-adversarial network: a convolutional neural network to learn stain-invariant features through Hematoxylin & Eosin regression
论文作者
论文摘要
计算病理学是一个领域,旨在开发算法以自动分析大型数字化组织病理学图像,称为全幻灯片图像(WSI)。 WSI是生产扫描薄组织样品的,这些样品被染色以使特定的结构可见。由于在医疗中心进行了不同的准备和扫描设置,它们显示出染色的异质性。染色颜色异质性是训练卷积神经网络(CNN)的问题,这是大多数计算病理学任务的最新算法,因为与用于训练CNN的数据相比,CNN通常在包括不同的染色变化的图像上测试包括不同的染色变化时表现不佳。尽管开发了几种方法,但染色异质性仍然是一个未解决的挑战,它限制了可以从几个医疗中心的数据推广的CNN的发展。本文旨在提出一种新的方法来训练CNN,以更好地概括包括几种颜色变化的数据。该方法称为H&E-e-Adversial CNN,利用H&E矩阵信息来学习培训期间的染色不变功能。该方法对结肠和前列腺组织病理学图像的分类进行了评估,涉及11个异质数据集,并与用于处理染色颜色异质性的其他五种技术进行了比较。与其他算法相比,H&E Edressarial CNNS的性能有所提高,表明它可以帮助更好地处理染色颜色的异质图像。
Computational pathology is a domain that aims to develop algorithms to automatically analyze large digitized histopathology images, called whole slide images (WSI). WSIs are produced scanning thin tissue samples that are stained to make specific structures visible. They show stain colour heterogeneity due to different preparation and scanning settings applied across medical centers. Stain colour heterogeneity is a problem to train convolutional neural networks (CNN), the state-of-the-art algorithms for most computational pathology tasks, since CNNs usually underperform when tested on images including different stain variations than those within data used to train the CNN. Despite several methods that were developed, stain colour heterogeneity is still an unsolved challenge that limits the development of CNNs that can generalize on data from several medical centers. This paper aims to present a novel method to train CNNs that better generalize on data including several colour variations. The method, called H&E-adversarial CNN, exploits H&E matrix information to learn stain-invariant features during the training. The method is evaluated on the classification of colon and prostate histopathology images, involving eleven heterogeneous datasets, and compared with five other techniques used to handle stain colour heterogeneity. H&E-adversarial CNNs show an improvement in performance compared to the other algorithms, demonstrating that it can help to better deal with stain colour heterogeneous images.