Robust Mitosis Detection Using a Cascade Mask-RCNN Approach With Domain-Specific Residual Cycle-GAN Data Augmentation
For the MIDOG mitosis detection challenge, we created a cascade algorithm consisting of a Mask-RCNN detector, followed by a classification ensemble consisting of ResNet50 and DenseNet201 to refine detected mitotic candidates. The MIDOG training data consists of 200 frames originating from four scann...
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Zusammenfassung: | For the MIDOG mitosis detection challenge, we created a cascade algorithm
consisting of a Mask-RCNN detector, followed by a classification ensemble
consisting of ResNet50 and DenseNet201 to refine detected mitotic candidates.
The MIDOG training data consists of 200 frames originating from four scanners,
three of which are annotated for mitotic instances with centroid annotations.
Our main algorithmic choices are as follows: first, to enhance the
generalizability of our detector and classification networks, we use a
state-of-the-art residual Cycle-GAN to transform each scanner domain to every
other scanner domain. During training, we then randomly load, for each image,
one of the four domains. In this way, our networks can learn from the fourth
non-annotated scanner domain even if we don't have annotations for it. Second,
for training the detector network, rather than using centroid-based fixed-size
bounding boxes, we create mitosis-specific bounding boxes. We do this by
manually annotating a small selection of mitoses, training a Mask-RCNN on this
small dataset, and applying it to the rest of the data to obtain full
annotations. We trained the follow-up classification ensemble using only the
challenge-provided positive and hard-negative examples. On the preliminary test
set, the algorithm scores an F1 score of 0.7578, putting us as the second-place
team on the leaderboard. |
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DOI: | 10.48550/arxiv.2109.01878 |