FocalUNETR: A Focal Transformer for Boundary-aware Segmentation of CT Images
Computed Tomography (CT) based precise prostate segmentation for treatment planning is challenging due to (1) the unclear boundary of the prostate derived from CT's poor soft tissue contrast and (2) the limitation of convolutional neural network-based models in capturing long-range global conte...
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Zusammenfassung: | Computed Tomography (CT) based precise prostate segmentation for treatment
planning is challenging due to (1) the unclear boundary of the prostate derived
from CT's poor soft tissue contrast and (2) the limitation of convolutional
neural network-based models in capturing long-range global context. Here we
propose a novel focal transformer-based image segmentation architecture to
effectively and efficiently extract local visual features and global context
from CT images. Additionally, we design an auxiliary boundary-induced label
regression task coupled with the main prostate segmentation task to address the
unclear boundary issue in CT images. We demonstrate that this design
significantly improves the quality of the CT-based prostate segmentation task
over other competing methods, resulting in substantially improved performance,
i.e., higher Dice Similarity Coefficient, lower Hausdorff Distance, and Average
Symmetric Surface Distance, on both private and public CT image datasets. Our
code is available at this
\href{https://github.com/ChengyinLee/FocalUNETR.git}{link}. |
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DOI: | 10.48550/arxiv.2210.03189 |