On the Value of PHH3 for Mitotic Figure Detection on H&E-stained Images
Jonathan Ganz, Christian Marzahl, Jonas Ammeling, Barbara Richter,, Chlo\'e Puget, Daniela Denk, Elena A. Demeter, Flaviu A. Tabaran, Gabriel, Wasinger, Karoline Lipnik, Marco Tecilla, Matthew J. Valentine, Michael J., Dark, Niklas Abele, Pompei Bolfa, Ramona Erber

TL;DR
This paper investigates how using PHH3-stained images as a ground truth improves mitotic figure detection in H&E-stained slides, revealing increased annotation reliability and a novel dual-stain detection approach.
Contribution
It demonstrates that PHH3-assisted labeling enhances inter-rater agreement and introduces a dual-stain detector that outperforms single-stain models in mitotic figure detection.
Findings
PHH3-assisted labels increase inter-rater reliability.
Dual-stain detector outperforms single-stain models.
PHH3 labels do not improve H&E-only models.
Abstract
The count of mitotic figures (MFs) observed in hematoxylin and eosin (H&E)-stained slides is an important prognostic marker as it is a measure for tumor cell proliferation. However, the identification of MFs has a known low inter-rater agreement. Deep learning algorithms can standardize this task, but they require large amounts of annotated data for training and validation. Furthermore, label noise introduced during the annotation process may impede the algorithm's performance. Unlike H&E, the mitosis-specific antibody phospho-histone H3 (PHH3) specifically highlights MFs. Counting MFs on slides stained against PHH3 leads to higher agreement among raters and has therefore recently been used as a ground truth for the annotation of MFs in H&E. However, as PHH3 facilitates the recognition of cells indistinguishable from H&E stain alone, the use of this ground truth could potentially…
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Taxonomy
TopicsBrain Tumor Detection and Classification
