Label-free virtual HER2 immunohistochemical staining of breast tissue using deep learning
Bijie Bai, Hongda Wang, Yuzhu Li, Kevin de Haan, Francesco Colonnese,, Yujie Wan, Jingyi Zuo, Ngan B. Doan, Xiaoran Zhang, Yijie Zhang, Jingxi Li,, Wenjie Dong, Morgan Angus Darrow, Elham Kamangar, Han Sung Lee, Yair, Rivenson, Aydogan Ozcan

TL;DR
This paper introduces a deep learning method that virtually stains breast tissue images for HER2 biomarker detection, matching traditional IHC staining quality without chemical processing, thus saving time and costs.
Contribution
The study presents a novel deep learning framework using GANs for rapid, label-free virtual HER2 IHC staining that matches standard staining accuracy and quality.
Findings
Virtual HER2 images are as accurate as traditional IHC images in HER2 scoring.
Pathologists rated virtual staining quality comparable to chemical staining.
The method reduces staining time and costs significantly.
Abstract
The immunohistochemical (IHC) staining of the human epidermal growth factor receptor 2 (HER2) biomarker is widely practiced in breast tissue analysis, preclinical studies and diagnostic decisions, guiding cancer treatment and investigation of pathogenesis. HER2 staining demands laborious tissue treatment and chemical processing performed by a histotechnologist, which typically takes one day to prepare in a laboratory, increasing analysis time and associated costs. Here, we describe a deep learning-based virtual HER2 IHC staining method using a conditional generative adversarial network that is trained to rapidly transform autofluorescence microscopic images of unlabeled/label-free breast tissue sections into bright-field equivalent microscopic images, matching the standard HER2 IHC staining that is chemically performed on the same tissue sections. The efficacy of this virtual HER2…
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