New colors for histology: Optimized bivariate color maps increase perceptual contrast in histological images

Research output: Contribution to journalResearch articleContributedpeer-review

Contributors

  • Jakob Nikolas Kather - , Heidelberg University  (Author)
  • Cleo Aron Weis - , Heidelberg University  (Author)
  • Alexander Marx - , Heidelberg University  (Author)
  • Alexander K. Schuster - , University Medical Center Mainz (Author)
  • Lothar R. Schad - , Heidelberg University  (Author)
  • Frank Gerrit Zöllner - , Heidelberg University  (Author)

Abstract

Background: Accurate evaluation of immunostained histological images is required for reproducible research in many different areas and forms the basis of many clinical decisions. The quality and efficiency of histopathological evaluation is limited by the information content of a histological image, which is primarily encoded as perceivable contrast differences between objects in the image. However, the colors of chromogen and counterstain used for histological samples are not always optimally distinguishable, even under optimal conditions. Methods and Results: In this study, we present a method to extract the bivariate color map inherent in a given histological image and to retrospectively optimize this color map. We use a novel, unsupervised approach based on color deconvolution and principal component analysis to show that the commonly used blue and brown color hues in Hematoxylin - 3,3′-Diaminobenzidine (DAB) images are poorly suited for human observers. We then demonstrate that it is possible to construct improved color maps according to objective criteria and that these color maps can be used to digitally re-stain histological images. Validation: To validate whether this procedure improves distinguishability of objects and background in histological images, we re-stain phantom images and N = 596 large histological images of immunostained samples of human solid tumors. We show that perceptual contrast is improved by a factor of 2.56 in phantom images and up to a factor of 2.17 in sets of histological tumor images. Context: Thus, we provide an objective and reliable approach to measure object distinguishability in a given histological image and to maximize visual information available to a human observer. This method could easily be incorporated in digital pathology image viewing systems to improve accuracy and efficiency in research and diagnostics.

Details

Original languageEnglish
Article numbere0145572
JournalPloS one
Volume10
Issue number12
Publication statusPublished - Dec 2015
Peer-reviewedYes
Externally publishedYes

External IDs

PubMed 26717571

Keywords

ASJC Scopus subject areas