Title (eng)
Domain generalization across tumor types, laboratories, and species - Insights from the 2022 edition of the Mitosis Domain Generalization Challenge
Author
Marc Aubreville
Author
Nikolas Stathonikos
Author
Taryn A. Donovan
Author
Robert Klopfleisch
Author
Jonas Ammeling
Author
Jonathan Ganz
Author
Frauke Wilm
Author
Mitko Veta
Author
Samir Jabari
Author
Markus Eckstein
Author
Jonas Annuscheit
Author
Christian Krumnow
Author
Engin Bozaba
Author
Sercan Cayir
Author
Hongyan Gu
Author
Xiang Anthony Chen
Author
Mostafa Jahanifar
Author
Adam Shepard
Author
Satoshi Kondo
Author
Sathosi Kasai
Author
Sujatha Kotte
Author
V. G. Saipradeep
Author
Maxime W. Lafarge
Author
Viktor H. Koelzer
Author
Ziyue Wang
Author
Yongbing Zhang
Author
Xiyue Wang
Author
Katharina Breininger
Abstract (eng)
Recognition of mitotic figures in histologic tumor specimens is highly relevant to patient outcome assessment. This task is challenging for algorithms and human experts alike, with deterioration of algorithmic performance under shifts in image representations. Considerable covariate shifts occur when assessment is performed on different tumor types, images are acquired using different digitization devices, or specimens are produced in different laboratories. This observation motivated the inception of the 2022 challenge on MItosis Domain Generalization (MIDOG 2022). The challenge provided annotated histologic tumor images from six different domains and evaluated the algorithmic approaches for mitotic figure detection provided by nine challenge participants on ten independent domains. Ground truth for mitotic figure detection was established in two ways: a three-expert majority vote and an independent, immunohistochemistry-assisted set of labels. This work represents an overview of the challenge tasks, the algorithmic strategies employed by the participants, and potential factors contributing to their success. With an F1 score of 0.764 for the top-performing team, we summarize that domain generalization across various tumor domains is possible with today's deep learning-based recognition pipelines. However, we also found that domain characteristics not present in the training set (feline as new species, spindle cell shape as new morphology and a new scanner) led to small but significant decreases in performance. When assessed against the immunohistochemistry-assisted reference standard, all methods resulted in reduced recall scores, with only minor changes in the order of participants in the ranking.
Keywords (eng)
Domain GeneralizationHistopathologyChallengeDeep LearningMitosis
Type (eng)
Language
[eng]
Is in series
Title (eng)
Medical Image Analysis
Volume
94
ISSN
1361-8423
Issued
2024
Number of pages
16
Publication
Elsevier
Date issued
2024
Access rights (eng)
Rights statement (eng)
Copyright © 2024 The Author(s)