Suppr超能文献

染色变化和颜色归一化对病理学预后预测的影响

Impact of stain variation and color normalization for prognostic predictions in pathology.

作者信息

Lin Siyu, Zhou Haowen, Watson Mark, Govindan Ramaswamy, Cote Richard J, Yang Changhuei

机构信息

Department of Electrical Engineering, California Institute of Technology, Pasadena, CA, 91125, USA.

Department of Pathology and Immunology, Washington University School of Medicine, St. Louis, MO, 63110, USA.

出版信息

Sci Rep. 2025 Jan 18;15(1):2369. doi: 10.1038/s41598-024-83267-w.

Abstract

In recent years, deep neural networks (DNNs) have demonstrated remarkable performance in pathology applications, potentially even outperforming expert pathologists due to their ability to learn subtle features from large datasets. One complication in preparing digital pathology datasets for DNN tasks is the variation in tinctorial qualities. A common way to address this is to perform stain normalization on the images. In this study, we show that a well-trained DNN model trained on one batch of histological slides failed to generalize to another batch prepared at a different time from the same tissue blocks, even when stain normalization methods were applied. This study used sample data from a previously reported DNN that was able to identify patients with early-stage non-small cell lung cancer (NSCLC) whose tumors did and did not metastasize, with high accuracy, based on training and then testing of digital images from H&E stained primary tumor tissue sections processed at the same time. In this study, we obtained a new series of histologic slides from the adjacent recuts of the same tissue blocks processed in the same lab but at a different time. We found that the DNN trained on either batch of slides/images was unable to generalize and failed to predict progression in the other batch of slides/images (AUC = 0.52 - 0.53 compared to AUC = 0.74 - 0.81). The failure to generalize did not improve even when the tinctorial difference corrections were made through either traditional color-tuning or stain normalization with the help of a Cycle Generative Adversarial Network (CycleGAN) process. This highlights the need to develop an entirely new way to process and collect consistent microscopy images from histologic slides that can be used to both train and allow for the general application of predictive DNN algorithms.

摘要

近年来,深度神经网络(DNN)在病理学应用中展现出了卓越的性能,由于其能够从大型数据集中学习细微特征,甚至有可能超越专业病理学家。为DNN任务准备数字病理学数据集时的一个复杂问题是染色质量的差异。解决这一问题的常见方法是对图像进行染色归一化处理。在本研究中,我们发现,即使应用了染色归一化方法,在一批组织学切片上训练良好的DNN模型也无法推广到从相同组织块在不同时间制备的另一批切片上。本研究使用了先前报道的一个DNN的样本数据,该DNN能够通过对同时处理的苏木精-伊红(H&E)染色的原发性肿瘤组织切片的数字图像进行训练和测试,高精度地识别早期非小细胞肺癌(NSCLC)患者的肿瘤是否发生转移。在本研究中,我们从同一实验室在不同时间处理的相同组织块的相邻重切片中获得了一系列新的组织学切片。我们发现,在任何一批切片/图像上训练的DNN都无法推广,并且无法预测另一批切片/图像中的进展情况(AUC = 0.52 - 0.53,而之前的AUC = 0.74 - 0.81)。即使通过传统的颜色调整或借助循环生成对抗网络(CycleGAN)进行染色归一化来校正染色差异,也无法改善泛化失败的情况。这凸显了开发一种全新方法的必要性,以便从组织学切片中处理和收集一致的显微镜图像,用于训练并允许预测性DNN算法的广泛应用。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/e284/11742970/fb54eb1239f8/41598_2024_83267_Fig1_HTML.jpg

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验