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Kidney segmentation in 3D CT images using B-Spline Explicit Active Surfaces

机译:使用B样条显式主动曲面在3D CT图像中进行肾脏分割

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In this manuscript, we propose to adapt the B-Spline Explicit Active Surfaces (BEAS) framework for semi-automatic kidney segmentation in computed tomography (CT) images. To study the best energy functional for kidney CT extraction, three different localized region-based energies were implemented within the BEAS framework, namely localized Chan-Vese, localized Yezzi, and signed localized Yezzi energies. Moreover, a novel gradient-based regularization term is proposed. The method was applied on 18 kidneys from 9 CT datasets, with different image properties. Several energy combinations were contrasted using surface-based comparison against ground truth meshes, assessing their accuracy and robustness against surface initialization. Overall, the hybrid energy functional combining the localized signed Yezzi energy with gradient-based regularization simultaneously showed the highest accuracy and the lowest sensitivity to the initialization. Volumetric analysis demonstrated the feasibility of the method from a clinical point of view, with similar reproducibility to manual observers.
机译:在此手稿中,我们建议针对计算机断层扫描(CT)图像中的半自动肾脏分割,采用B样条显式主动曲面(BEAS)框架。为了研究用于肾脏CT提取的最佳能量功能,在BEAS框架内实现了三种不同的基于局部区域的能量,即局部Chan-Vese,局部Yezzi和有符号局部Yezzi能量。此外,提出了一种新颖的基于梯度的正则化项。该方法已应用于来自9个CT数据集的18个肾脏,具有不同的图像属性。使用基于表面的比较与地面真实网格对几种能量组合进行了对比,评估了它们的准确性和针对表面初始化的鲁棒性。总体而言,将局部带符号的Yezzi能量与基于梯度的正则化相结合的混合能量函数同时显示了最高的准确性和最低的初始化敏感性。体积分析从临床角度证明了该方法的可行性,与手动观察者具有相似的重现性。

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