Deep learning-based transformation of the H&E stain into special stains
Kevin de Haan, Yijie Zhang, Jonathan E. Zuckerman, Tairan Liu, Anthony, E. Sisk, Miguel F. P. Diaz, Kuang-Yu Jen, Alexander Nobori, Sofia Liou, Sarah, Zhang, Rana Riahi, Yair Rivenson, W. Dean Wallace, Aydogan Ozcan

TL;DR
This study demonstrates a supervised deep learning method to transform standard H&E stained pathology images into virtual special stains, improving diagnostic accuracy and efficiency in kidney disease analysis.
Contribution
The paper introduces a novel deep learning framework for rapid, accurate virtual transformation of H&E images into various special stains, aiding diagnosis without additional laboratory procedures.
Findings
Virtual special stains are statistically equivalent to real stains.
Transformation improves diagnosis in non-neoplastic kidney diseases.
Process is fast, taking less than 1 minute per slide.
Abstract
Pathology is practiced by visual inspection of histochemically stained slides. Most commonly, the hematoxylin and eosin (H&E) stain is used in the diagnostic workflow and it is the gold standard for cancer diagnosis. However, in many cases, especially for non-neoplastic diseases, additional "special stains" are used to provide different levels of contrast and color to tissue components and allow pathologists to get a clearer diagnostic picture. In this study, we demonstrate the utility of supervised learning-based computational stain transformation from H&E to different special stains (Masson's Trichrome, periodic acid-Schiff and Jones silver stain) using tissue sections from kidney needle core biopsies. Based on evaluation by three renal pathologists, followed by adjudication by a fourth renal pathologist, we show that the generation of virtual special stains from existing H&E images…
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