Field Of Interest Proposal for Augmented Mitotic Cell Count: Comparison of two Convolutional Networks
Marc Aubreville, Christof A. Bertram, Robert Klopfleisch, Andreas, Maier

TL;DR
This study compares two CNN-based methods for identifying regions with the highest mitotic activity in whole slide images to improve tumor grading accuracy, demonstrating high correlation with ground truth despite minimal differences in proposed regions.
Contribution
The paper introduces and evaluates two CNN-based segmentation approaches at different resolutions for selecting regions of interest in histopathology slides.
Findings
High correlation (0.94 vs. 0.83) with ground truth for the fine resolution method.
Both methods effectively identify regions with high mitotic counts.
Proposed regions contain mitotic counts in the upper quartile of slides.
Abstract
Most tumor grading systems for human as for veterinary histopathology are based upon the absolute count of mitotic figures in a certain reference area of a histology slide. Since time for prognostication is limited in a diagnostic setting, the pathologist will often almost arbitrarily choose a certain field of interest assumed to have the highest mitotic activity. However, as mitotic figures are commonly very sparse on the slide and often have a patchy distribution, this poses a sampling problem which is known to be able to influence the tumor prognostication. On the other hand, automatic detection of mitotic figures can't yet be considered reliable enough for clinical application. In order to aid the work of the human expert and at the same time reduce variance in tumor grading, it is beneficial to assess the whole slide image (WSI) for the highest mitotic activity and use this as a…
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Taxonomy
TopicsAI in cancer detection · Cell Image Analysis Techniques · Cutaneous Melanoma Detection and Management
