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A Unified Variational Segmentation Framework with a Level-set based Sparse Composite Shape Prior

机译:具有基于水平集的稀疏复合形状先验的统一变分分割框架

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摘要

Image segmentation plays an essential role in many medical applications. Low SNR conditions and various artifacts makes its automation challenging. To achieve robust and accurate segmentation results, a good approach is to introduce proper shape priors. In this study, we present a unified variational segmentation framework that regularizes the target shape with a level-set based sparse composite prior. When the variational problem is solved with a block minimization/decent scheme, the regularizing impact of the sparse composite prior can be observed to adjust to the most recent shape estimate, and may be interpreted as a “dynamic” shape prior, yet without compromising convergence thanks to the unified energy framework. The proposed method was applied to segment corpus callosum from 2D MR images and liver from 3D CT volumes. Its performance was evaluated using Dice Similarity Coefficient and Hausdorff distance, and compared with two benchmark level-set based segmentation methods. The proposed method has achieved statistically significant higher accuracy in both experiments and avoided faulty inclusion/exclusion of surrounding structures with similar intensities, as opposed to the benchmark methods.
机译:图像分割在许多医疗应用中起着至关重要的作用。低SNR条件和各种伪像使其自动化具有挑战性。为了获得鲁棒且准确的分割结果,一种好的方法是引入适当的形状先验。在这项研究中,我们提出了一个统一的变分分割框架,该框架使用基于水平集的稀疏复合先验规则化了目标形状。当使用块最小化/体面方案解决变分问题时,可以观察到稀疏合成先验的正则化影响以适应最新的形状估计,并且可以解释为“动态”先验形状,而不会影响收敛归功于统一的能源框架。所提出的方法被应用于从2D MR图像中分割体和从3D CT体积中分割肝脏。使用骰子相似系数和Hausdorff距离评估了其性能,并与两种基于基准水平集的分割方法进行了比较。与基准方法相比,该方法在两个实验中均达到了统计上显着更高的准确度,并且避免了具有相似强度的周围结构的错误包含/排除。

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