数字病理组织图像染色归一化和质量增强的单生成网络

Xintian Mao, Jiansheng Wang, X. Tao, Yan Wang, Qingli Li, Xiufeng Zhou, Yonghe Zhang
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引用次数: 2

摘要

组织病理图像的染色归一化是计算机辅助诊断中常用的一种有前途的技术。这个过程消除了染色强度和色差的影响(批效应)从各种病理成像系统。在本文中,我们的重点是染色归一化和视觉质量增强。虽然最先进的方法,如CycleGAN,在图像风格转移方面表现良好,但它们受到原始图像质量的限制。本文提出了一种新的框架——单生成网络(SGNet)来训练染色模型。提出了基于CBS (clarity-brightness-saturation)调整的数据预增强方法,并引入了输入与中间特征之间的最大池化和位置归一化(PONO)来优化网络结构。采用绒毛、滋养细胞和血管区胎盘病理标本对该方法进行了评价。胎盘样本的特征融合结果表明,该模型优于现有的ESPCN、CycleGAN和SegCN-Net方法。烧蚀研究也显示了附加元件的必要性。我们在来自不同成像系统的低质量图像上测试了该网络。实验结果保留了组织的详细结构信息,在组织图像的泛化能力上表现良好,提高了数字病理诊断的分割精度。这些发现为组织染色标准的建立提供了可能,具有批量效应的大量病理图像可以借助权威的染色基准进行规范化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Single Generative Networks for Stain Normalization and Quality Enhancement of Histological Images in Digital Pathology
Stain normalization of histopathology images is a promising technique commonly used in computer-aided diagnosis. This process eliminates the effects of staining intensity and color difference (batch effects) from various pathologic imaging systems. In this paper, we are focusing on stain normalization and visual quality enhancement. Although state-of-the-art methods, such as CycleGAN, perform well in image style transfer, they have been limiting by raw imaging quality. This paper propose a novel framework, single generative networks (SGNet), to train the staining model. We yield data pre-augmentation instantiated by clarity-brightness-saturation (CBS) adjustment, and introduce max pooling between the input and the intermediate features and positional normalization (PONO) to optimize network structure. The proposed approach is evaluated by using the placental pathological samples with villi, trophoblast cells and vascular area. Feature fusion results on placental sample demonstrate the proposed model outperforms existing methods, ESPCN, CycleGAN and SegCN-Net. Ablation studies also show the necessity of additional components. We test this network on low-quality images from different imaging systems. Experimental results preserve detailed structural information of tissues and show desirable performances on generalization ability of histological image, which increases the segmentation accuracy for digital pathology diagnosis. These findings have the potential for the establishment of histological staining criterion, massive pathological images with batch effects can be normalized with the aid of authoritative staining benchmark.
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