Movatterモバイル変換


[0]ホーム

URL:


[Medical Imaging with Deep Learning Logo] Proceedings of Machine Learning Research

[edit]

Semi-Supervised Segmentation via Embedding Matching

Weiyi Xie, Nathalie Willems, Nikolas Lessmann, Tom Gibbons, Daniele De Massari
Proceedings of The 7nd International Conference on Medical Imaging with Deep Learning, PMLR 250:1741-1753, 2024.

Abstract

Deep convolutional neural networks are widely used in medical image segmentation but require many labeled images for training. Annotating three-dimensional medical images is a time-consuming and costly process. To overcome this limitation, we propose a novel semi-supervised segmentation method that leverages mostly unlabeled images and a small set of labeled images in training. Our approach involves assessing prediction uncertainty to identify reliable predictions on unlabeled voxels from the teacher model. These voxels serve as pseudo-labels for training the student model. In voxels where the teacher model produces unreliable predictions, pseudo-labeling is carried out based on voxel-wise embedding correspondence using reference voxels from labeled images.We applied this method to automate hip bone segmentation in CT images, achieving notable results with just 4 CT scans. The proposed approach yielded a Hausdorff distance with 95th percentile (HD95) of 3.30 and IoU of 0.929, surpassing existing methods achieving HD95 (4.07) and IoU (0.927) at their best.

Cite this Paper


BibTeX
@InProceedings{pmlr-v250-xie24a, title = {Semi-Supervised Segmentation via Embedding Matching}, author = {Xie, Weiyi and Willems, Nathalie and Lessmann, Nikolas and Gibbons, Tom and Massari, Daniele De}, booktitle = {Proceedings of The 7nd International Conference on Medical Imaging with Deep Learning}, pages = {1741--1753}, year = {2024}, editor = {Burgos, Ninon and Petitjean, Caroline and Vakalopoulou, Maria and Christodoulidis, Stergios and Coupe, Pierrick and Delingette, Hervé and Lartizien, Carole and Mateus, Diana}, volume = {250}, series = {Proceedings of Machine Learning Research}, month = {03--05 Jul}, publisher = {PMLR}, pdf = {https://raw.githubusercontent.com/mlresearch/v250/main/assets/xie24a/xie24a.pdf}, url = {https://proceedings.mlr.press/v250/xie24a.html}, abstract = {Deep convolutional neural networks are widely used in medical image segmentation but require many labeled images for training. Annotating three-dimensional medical images is a time-consuming and costly process. To overcome this limitation, we propose a novel semi-supervised segmentation method that leverages mostly unlabeled images and a small set of labeled images in training. Our approach involves assessing prediction uncertainty to identify reliable predictions on unlabeled voxels from the teacher model. These voxels serve as pseudo-labels for training the student model. In voxels where the teacher model produces unreliable predictions, pseudo-labeling is carried out based on voxel-wise embedding correspondence using reference voxels from labeled images.We applied this method to automate hip bone segmentation in CT images, achieving notable results with just 4 CT scans. The proposed approach yielded a Hausdorff distance with 95th percentile (HD95) of 3.30 and IoU of 0.929, surpassing existing methods achieving HD95 (4.07) and IoU (0.927) at their best.}}
Endnote
%0 Conference Paper%T Semi-Supervised Segmentation via Embedding Matching%A Weiyi Xie%A Nathalie Willems%A Nikolas Lessmann%A Tom Gibbons%A Daniele De Massari%B Proceedings of The 7nd International Conference on Medical Imaging with Deep Learning%C Proceedings of Machine Learning Research%D 2024%E Ninon Burgos%E Caroline Petitjean%E Maria Vakalopoulou%E Stergios Christodoulidis%E Pierrick Coupe%E Hervé Delingette%E Carole Lartizien%E Diana Mateus%F pmlr-v250-xie24a%I PMLR%P 1741--1753%U https://proceedings.mlr.press/v250/xie24a.html%V 250%X Deep convolutional neural networks are widely used in medical image segmentation but require many labeled images for training. Annotating three-dimensional medical images is a time-consuming and costly process. To overcome this limitation, we propose a novel semi-supervised segmentation method that leverages mostly unlabeled images and a small set of labeled images in training. Our approach involves assessing prediction uncertainty to identify reliable predictions on unlabeled voxels from the teacher model. These voxels serve as pseudo-labels for training the student model. In voxels where the teacher model produces unreliable predictions, pseudo-labeling is carried out based on voxel-wise embedding correspondence using reference voxels from labeled images.We applied this method to automate hip bone segmentation in CT images, achieving notable results with just 4 CT scans. The proposed approach yielded a Hausdorff distance with 95th percentile (HD95) of 3.30 and IoU of 0.929, surpassing existing methods achieving HD95 (4.07) and IoU (0.927) at their best.
APA
Xie, W., Willems, N., Lessmann, N., Gibbons, T. & Massari, D.D.. (2024). Semi-Supervised Segmentation via Embedding Matching.Proceedings of The 7nd International Conference on Medical Imaging with Deep Learning, inProceedings of Machine Learning Research 250:1741-1753 Available from https://proceedings.mlr.press/v250/xie24a.html.

Related Material


[8]ページ先頭

©2009-2025 Movatter.jp