Announcement:
MIDOG 2021 is over. If you are interested in joining it's successor,
MIDOG 2022, here is a
link:https://midog2022.grand-challenge.org
If you are interested in the challenge paper, please find it
at:https://www.sciencedirect.com/science/article/abs/pii/S1361841522003279
We invite you to participate in the MIDOG 2021 microscopy domain
generalization challenge!
Website: https://imig.science/midog2021/
Motivation:
- Mitosis detection is a key component of tumor prognostication for various tumors, including breast cancer.
- Scanning microscopy slides with different scanners leads to a significant visual difference, resulting in a domain shift. This domain shift prevents most deep learning models from generalizing to other scanners, leading to strongly reduced performance.
Scope:
- Detect mitotic figures (cells undergoing cell division) from histopathology images (object detection).
- You will be provided with images scanned by 4 different scanners, 3 out of which are labeled. In total the set consists of 200 cases of breast cancer.
- Evaluation will be done on four scanners (two new, two are part of the training set) with the F1 score as main metric.
How to participate:
- Register on the challenge website and download the data set.
- Submit docker container(s) with your algorithm(s) (template provided here: https://github.com/DeepPathology/MIDOG_reference_docker).
- Provide a short paper (preprint) about your method.
- Note: Only your own work will qualify as a submission.
Important Dates:August 15th: Preliminary test set availableAugust
21th: Deadline for registration of participantsSept 2nd: Deadline for
docker container submission and preprint abstract submission
(extended)Oct 1st: Announcement of results at MICCAI 2021
Publications and Prizes:All participants of the MIDOG challenge may
submit a short LNCS Springer paper (up to 4 pages) with a deadline of
three weeks after the workshop, which will be subject to peer
review. Top performing teams will be invited to contribute to a
challenge overview paper, which will be submitted to a high impact
journal (MedIA/TMI). Best contribution (as of F1 score on test set) will
receive 500€, second 300€ and third 200€.
Organizers:Marc Aubreville, Technische Hochschule Ingolstadt,
GermanyChristof Bertram, Institute of Pathology, University of
Veterinary Medicine, Vienna, AustriaMitko Veta, Medical Image Analysis
Group, TU Eindhoven, The NetherlandsNikolas Stathonikos, Pathology
Department, UMC Utrecht, The NetherlandsRobert Klopfleisch, Institute of
Veterinary Pathology, Freie Universität Berlin, GermanyKatharina
Breininger, Department Artificial Intelligence in Biomedical
Engineering, Friedrich-Alexander- Universität Erlangen-Nürnberg,
GermanyNatalie ter Hoeve, Pathology Department, UMC Utrecht, The
NetherlandsFrancesco Ciompi, Computational Pathology Group, Radboud UMC
Nijmegen, The NetherlandsAndreas Maier, Pattern Recognition Lab,
Friedrich-Alexander-Universität Erlangen-Nürnberg, Germany