Label Refinement Network from Synthetic Error Augmentation for Medical
Image Segmentation
- URL: http://arxiv.org/abs/2209.06353v1
- Date: Wed, 14 Sep 2022 00:25:32 GMT
- Title: Label Refinement Network from Synthetic Error Augmentation for Medical
Image Segmentation
- Authors: Shuai Chen, Antonio Garcia Uceda, Jiahang Su, Gijs van Tulder, Lennard
Wolff, Theo van Walsum, Marleen de Bruijne
- Abstract summary: Deep convolutional neural networks for image segmentation do not learn the label structure explicitly.
We propose a novel label refinement method to correct such errors from an initial segmentation.
- Score: 8.435559487504351
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Deep convolutional neural networks for image segmentation do not learn the
label structure explicitly and may produce segmentations with an incorrect
structure, e.g., with disconnected cylindrical structures in the segmentation
of tree-like structures such as airways or blood vessels. In this paper, we
propose a novel label refinement method to correct such errors from an initial
segmentation, implicitly incorporating information about label structure. This
method features two novel parts: 1) a model that generates synthetic structural
errors, and 2) a label appearance simulation network that produces synthetic
segmentations (with errors) that are similar in appearance to the real initial
segmentations. Using these synthetic segmentations and the original images, the
label refinement network is trained to correct errors and improve the initial
segmentations. The proposed method is validated on two segmentation tasks:
airway segmentation from chest computed tomography (CT) scans and brain vessel
segmentation from 3D CT angiography (CTA) images of the brain. In both
applications, our method significantly outperformed a standard 3D U-Net and
other previous refinement approaches. Improvements are even larger when
additional unlabeled data is used for model training. In an ablation study, we
demonstrate the value of the different components of the proposed method.
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