Deep Statistic Shape Model for Myocardium Segmentation
- URL: http://arxiv.org/abs/2207.10607v1
- Date: Thu, 21 Jul 2022 17:01:24 GMT
- Title: Deep Statistic Shape Model for Myocardium Segmentation
- Authors: Xiaoling Hu, Xiao Chen, Yikang Liu, Eric Z. Chen, Terrence Chen,
Shanhui Sun
- Abstract summary: We propose a novel end-to-end deep statistic shape model to focus on myocardium segmentation with both shape integrity and boundary correspondence preserving.
Deep neural network is used to predict the transformation parameters, which are then used to warp the mean point cloud to the image domain.
A differentiable rendering layer is introduced to incorporate mask supervision into the framework to learn more accurate point clouds.
- Score: 10.381467202920303
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: Accurate segmentation and motion estimation of myocardium have always been
important in clinic field, which essentially contribute to the downstream
diagnosis. However, existing methods cannot always guarantee the shape
integrity for myocardium segmentation. In addition, motion estimation requires
point correspondence on the myocardium region across different frames. In this
paper, we propose a novel end-to-end deep statistic shape model to focus on
myocardium segmentation with both shape integrity and boundary correspondence
preserving. Specifically, myocardium shapes are represented by a fixed number
of points, whose variations are extracted by Principal Component Analysis
(PCA). Deep neural network is used to predict the transformation parameters
(both affine and deformation), which are then used to warp the mean point cloud
to the image domain. Furthermore, a differentiable rendering layer is
introduced to incorporate mask supervision into the framework to learn more
accurate point clouds. In this way, the proposed method is able to consistently
produce anatomically reasonable segmentation mask without post processing.
Additionally, the predicted point cloud guarantees boundary correspondence for
sequential images, which contributes to the downstream tasks, such as the
motion estimation of myocardium. We conduct several experiments to demonstrate
the effectiveness of the proposed method on several benchmark datasets.
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