Virtual histological staining of unlabelled tissue-autofluorescence images via deep learning

  • Yair Rivenson
  • , Hongda Wang
  • , Zhensong Wei
  • , Kevin de Haan
  • , Yibo Zhang
  • , Yichen Wu
  • , Harun Günaydın
  • , Jonathan E. Zuckerman
  • , Thomas Chong
  • , Anthony E. Sisk
  • , Lindsey M. Westbrook
  • , W. Dean Wallace
  • , Aydogan Ozcan

Research output: Contribution to journalArticlepeer-review

541 Scopus citations

Abstract

The histological analysis of tissue samples, widely used for disease diagnosis, involves lengthy and laborious tissue preparation. Here, we show that a convolutional neural network trained using a generative adversarial-network model can transform wide-field autofluorescence images of unlabelled tissue sections into images that are equivalent to the bright-field images of histologically stained versions of the same samples. A blind comparison, by board-certified pathologists, of this virtual staining method and standard histological staining using microscopic images of human tissue sections of the salivary gland, thyroid, kidney, liver and lung, and involving different types of stain, showed no major discordances. The virtual-staining method bypasses the typically labour-intensive and costly histological staining procedures, and could be used as a blueprint for the virtual staining of tissue images acquired with other label-free imaging modalities.

Original languageEnglish
Pages (from-to)466-477
Number of pages12
JournalNature Biomedical Engineering
Volume3
Issue number6
DOIs
StatePublished - 1 Jun 2019
Externally publishedYes

ASJC Scopus subject areas

  • Biotechnology
  • Bioengineering
  • Medicine (miscellaneous)
  • Biomedical Engineering
  • Computer Science Applications

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