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3D Anatomical Shape Atlas Construction Using Mesh Quality Preserved Deformable Models

机译:3D使用网格质量保存可变形模型的剖钉形状地图集施工

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The construction of 3D anatomical shape atlas has been extensively studied in medical image analysis research for a variety of applications. Among the multiple steps of shape atlas construction, establishing anatomical correspondences across subjects is probably the most critical and challenging one. The adaptive focus deformable model (AFDM) [16] was proposed to tackle this problem by exploiting cross-scale geometry characteristics of 3D anatomy surfaces. Although the effectiveness of AFDM has been proved in various studies, its performance is highly dependent on the quality of 3D surface meshes. In this paper, we propose a new framework for 3D anatomical shape atlas construction. Our method aims to robustly establish correspondences across different subjects and simultaneously generate high-quality surface meshes without removing shape detail. Mathematically, a new energy term is embedded into the original energy function of AFDM to preserve surface mesh qualities during the deformable surface matching. Shape details and smoothness constraints are encoded into the new energy term using the Laplacian representation An expectation-maximization style algorithm is designed to optimize multiple energy terms alternatively until convergence. We demonstrate the performance of our method via two diverse applications: 3D high resolution CT cardiac images and rat brain MRIs with multiple structures.
机译:各种应用的医学图像分析研究中已经广泛研究了3D解剖结构图集的构建。在形状地图集结构的多个步骤中,在跨学科建立解剖学的对应可能是最关键和挑战的。提出了通过利用3D解剖表面的横尺度几何特征来解决该问题的自适应聚焦可变形模型(AFDM)[16]。虽然AFDM的有效性已被证明在各种研究中,但其性能高度依赖于3D表面网格的质量。在本文中,我们向3D解剖形状地图集建设提出了一种新的框架。我们的方法旨在强大地建立跨不同对象的对应关系,并同时产生高质量的表面网格而不去除形状细节。在数学上,新的能量术语嵌入到AFDM的原始能量功能中,以在可变形的表面匹配期间保持表面网格质量。使用LAPLACIAN表示编码的形状细节和平滑度约束,预期最大化样式算法旨在可选地在收敛之前优化多个能量术语。我们通过两个不同的应用展示了我们的方法:3D高分辨率CT心脏图像和大鼠脑MRIS,具有多种结构。

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