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2018 | OriginalPaper | Chapter

Leveraging Unlabeled Whole-Slide-Images for Mitosis Detection

Authors : Saad Ullah Akram, Talha Qaiser, Simon Graham, Juho Kannala, Janne Heikkilä, Nasir Rajpoot

Published in: Computational Pathology and Ophthalmic Medical Image Analysis

Publisher: Springer International Publishing

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Abstract

Mitosis count is an important biomarker for prognosis of various cancers. At present, pathologists typically perform manual counting on a few selected regions of interest in breast whole-slide-images (WSIs) of patient biopsies. This task is very time-consuming, tedious and subjective. Automated mitosis detection methods have made great advances in recent years. However, these methods require exhaustive labeling of a large number of selected regions of interest. This task is very expensive because expert pathologists are needed for reliable and accurate annotations. In this paper, we present a semi-supervised mitosis detection method which is designed to leverage a large number of unlabeled breast cancer WSIs. As a result, our method capitalizes on the growing number of digitized histology images, without relying on exhaustive annotations, subsequently improving mitosis detection. Our method first learns a mitosis detector from labeled data, uses this detector to mine additional mitosis samples from unlabeled WSIs, and then trains the final model using this larger and diverse set of mitosis samples. The use of unlabeled data improves F1-score by \(\sim \)5% compared to our best performing fully-supervised model on the TUPAC validation set. Our submission (single model) to TUPAC challenge ranks highly on the leaderboard with an F1-score of 0.64.

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Footnotes
Literature
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Metadata
Title
Leveraging Unlabeled Whole-Slide-Images for Mitosis Detection
Authors
Saad Ullah Akram
Talha Qaiser
Simon Graham
Juho Kannala
Janne Heikkilä
Nasir Rajpoot
Copyright Year
2018
DOI
https://doi.org/10.1007/978-3-030-00949-6_9

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