A completely annotated whole slide image dataset of canine breast cancer to aid human breast cancer research

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作者
Marc Aubreville
Christof A. Bertram
Taryn A. Donovan
Christian Marzahl
Andreas Maier
Robert Klopfleisch
机构
[1] Computer Science,Pattern Recognition Lab
[2] Friedrich-Alexander-Universität Erlangen-Nürnberg,Institute of Veterinary Pathology
[3] Freie Universität Berlin,Department of Anatomic Pathology
[4] Animal Medical Center,undefined
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Canine mammary carcinoma (CMC) has been used as a model to investigate the pathogenesis of human breast cancer and the same grading scheme is commonly used to assess tumor malignancy in both. One key component of this grading scheme is the density of mitotic figures (MF). Current publicly available datasets on human breast cancer only provide annotations for small subsets of whole slide images (WSIs). We present a novel dataset of 21 WSIs of CMC completely annotated for MF. For this, a pathologist screened all WSIs for potential MF and structures with a similar appearance. A second expert blindly assigned labels, and for non-matching labels, a third expert assigned the final labels. Additionally, we used machine learning to identify previously undetected MF. Finally, we performed representation learning and two-dimensional projection to further increase the consistency of the annotations. Our dataset consists of 13,907 MF and 36,379 hard negatives. We achieved a mean F1-score of 0.791 on the test set and of up to 0.696 on a human breast cancer dataset.
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