Abstract

Histological staining is a vital step in diagnosing various diseases and has been used for more than a century to provide contrast in tissue sections, rendering the tissue constituents visible for microscopic analysis by medical experts. However, this process is time consuming, labour intensive, expensive and destructive to the specimen. Recently, the ability to virtually stain unlabelled tissue sections, entirely avoiding the histochemical staining step, has been demonstrated using tissue-stain-specific deep neural networks. Here, we present a new deep-learning-based framework that generates virtually stained images using label-free tissue images, in which different stains are merged following a micro-structure map defined by the user. This approach uses a single deep neural network that receives two different sources of information as its input: (1) autofluorescence images of the label-free tissue sample and (2) a “digital staining matrix”, which represents the desired microscopic map of the different stains to be virtually generated in the same tissue section. This digital staining matrix is also used to virtually blend existing stains, digitally synthesizing new histological stains. We trained and blindly tested this virtual-staining network using unlabelled kidney tissue sections to generate micro-structured combinations of haematoxylin and eosin (H&E), Jones’ silver stain, and Masson’s trichrome stain. Using a single network, this approach multiplexes the virtual staining of label-free tissue images with multiple types of stains and paves the way for synthesizing new digital histological stains that can be created in the same tissue cross section, which is currently not feasible with standard histochemical staining methods.

Highlights

  • Histological analysis is used to diagnose a wide variety of diseases

  • We choose to demonstrate the framework using kidney tissue and three different stains, namely, haematoxylin and eosin (H&E), Masson’s trichrome, and Jones’ silver stain, as these stains are jointly used for practical renal disease diagnostics

  • Visualizations of comparisons between histochemically and virtually stained tissue sections can be seen in Figs. 1 and 2

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Summary

Introduction

Histological analysis is used to diagnose a wide variety of diseases It is considered the gold standard for tissuebased diagnostics, with some well-established versions of common stains, such as haematoxylin and eosin (H&E), having been used for over a hundred years[1]. A wide variety of stains have been developed over the years to enable the visualization of different target tissue constituents. Haematoxylin stains cell nuclei, while Masson’s trichrome stain is used to view connective tissue[2] These stains have been chemically mixed to enable the visualization of different biomarkers. An example of this is when periodic acid-Schiff (PAS) and

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