Differentiable Boundary Point Extraction for Weakly Supervised Star-Shaped Object Segmentation
Abstract
Although Deep Learning is the new gold standard in medical image segmentation, the annotation burden limits its expansion to clinical practice. We also observe a mismatch between annotations required by deep learning methods designed with pixel-wise optimization in mind and clinically relevant annotations designed for biomarkers extraction (diameters, counts, etc.). Our study proposes a first step toward bridging this gap, optimizing vessel segmentation based on its diameter annotations. To do so we propose to extract bound- ary points from a star-shaped segmentation in a differentiable manner. This differentiable extraction allows reducing annotation burden as instead of the pixel-wise segmentation only the two annotated points required for diameter measurement are used for training the model. Our experiments show that training based on diameter is efficient; produces state-of-the-art weakly supervised segmentation; and performs reasonably compared to full supervision. Our code is publicly available: https://gitlab.com/radiology/aim/carotid-artery-image-analysis/diameter-learning
Cite
Text
Camarasa et al. "Differentiable Boundary Point Extraction for Weakly Supervised Star-Shaped Object Segmentation." Medical Imaging with Deep Learning, 2023.Markdown
[Camarasa et al. "Differentiable Boundary Point Extraction for Weakly Supervised Star-Shaped Object Segmentation." Medical Imaging with Deep Learning, 2023.](https://mlanthology.org/midl/2023/camarasa2023midl-differentiable/)BibTeX
@inproceedings{camarasa2023midl-differentiable,
title = {{Differentiable Boundary Point Extraction for Weakly Supervised Star-Shaped Object Segmentation}},
author = {Camarasa, Robin and Kervadec, Hoel and Bos, Daniel and Bruijne, Marleen},
booktitle = {Medical Imaging with Deep Learning},
year = {2023},
pages = {188-198},
volume = {172},
url = {https://mlanthology.org/midl/2023/camarasa2023midl-differentiable/}
}