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Smart manual landmarking of organs

机译:智能的器官手动标记

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Statistical shape models play a very important role in most modern medical segmentation frameworks. In this work we propose an extension to an existing approach for statistical shape model generation based on manual mesh deformation. Since the manual acquisition of ground truth segmentation data is a prerequisite for shape model creation, we developed a method that integrates a solution to the landmark correspondence problem in this particular step. This is done by coupling a user guided mesh adaptation for ground truth segmentation with a simultaneous real time optimization of the mesh in order to preserve point correspondences. First, a reference model with evenly distributed points is created that is taken as the basis of manual deformation. Afterwards the user adapts the model to the data set using a 3D Gaussian deformation of varying stiffness. The resulting meshes can be directly used for shape model construction. Furthermore, our approach allows the creation of shape models of arbitrary topology. We evaluate our method on CT data sets of the kidney and 4D MRI time series images of the cardiac left ventricle. A comparison with standard ICP-based and population-based optimization based correspondence algorithms showed better results both in terms of generalization capability and specificity for the model generated by our approach. The proposed method can therefore be used to considerably speed up and ease the process of shape model generation as well as remove potential error sources of landmark and correspondence optimization algorithms needed so far.
机译:统计形状模型在大多数现代医学细分框架中扮演着非常重要的角色。在这项工作中,我们提出了对基于手动网格变形的统计形状模型生成的现有方法的扩展。由于手动获取地面真实分割数据是形状模型创建的先决条件,因此我们开发了一种在此特定步骤中集成地标对应问题解决方案的方法。这是通过将用户指导的网格自适应(适用于地面真相分割)与网格的实时实时优化耦合在一起来完成的,以保留点对应关系。首先,创建具有均匀分布点的参考模型,将其作为手动变形的基础。然后,用户使用具有不同刚度的3D高斯变形使模型适应数据集。生成的网格可以直接用于形状模型的构建。此外,我们的方法允许创建任意拓扑的形状模型。我们在肾脏的CT数据集和心脏左心室的4D MRI时间序列图像上评估我们的方法。与基于标准ICP和基于群体优化的对应算法的比较显示,在泛化能力和针对我们方法生成的模型的特异性方面,结果都更好。因此,所提出的方法可用于显着加快和简化形状模型生成过程,以及消除迄今为止所需的界标和对应优化算法的潜在错误源。

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