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Cascaded statistical shape model based segmentation of the full lower limb in CT

机译:基于级联统计形状模型的CT下肢全段分割

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Image segmentation has become an important tool in orthopedic and biomechanical research. However, it greatly remains a time-consuming and laborious task. In this manuscript, we propose a fully automatic model-based segmentation pipeline for the full lower limb in computed tomography (CT) images. The method relies on prior shape model fitting, followed by a gradient-defined free from deformation. The technique allows for the generation of anatomically corresponding surface meshes, which can subsequently be applied in anatomical and mechanical simulation studies. Starting from an initial, small (n = 10) sample of manual segmentations, the model is continuously updated and refined with newly segmented training samples. Validation of the segmentation pipeline was performed by comparing the automatic segmentations against corresponding manual segmentations. Convergence of the segmentation pipeline was obtained in 250 cases and failed in three samples. The average distance error ranged from 0.53 to 0.76 mm and maximal error ranged from 2.0 to 7.8 mm for the 7 different osteological structures that were investigated. The accuracy of the shape model-based segmentation gradually increased as the number of training shapes in the updated population also increased. When optimized with the free form deformation, however, average segmentation accuracy rapidly plateaued from already as little as 20 training samples on. The maximum segmentation error plateaued from 100 training samples on.
机译:图像分割已成为骨科和生物力学研究的重要工具。但是,这仍然是一项费时费力的工作。在这份手稿中,我们为计算机断层扫描(CT)图像中的整个下肢提出了一种基于模型的全自动分割流水线。该方法依赖于先验的形状模型拟合,然后是没有变形的梯度定义。该技术允许生成解剖学上对应的表面网格,随后可以将其应用于解剖学和机械仿真研究中。从手动分割的初始小样本(n <= 10)开始,使用新分割的训练样本不断更新和完善模型。通过将自动分段与相应的手动分段进行比较来执行分段流水线的验证。在250个案例中获得了细分管道的收敛性,但在三个样本中均未通过。对于所研究的7种不同的骨科结构,平均距离误差范围为0.53至0.76 mm,最大误差范围为2.0至7.8 mm。随着更新群体中训练形状的数量也增加,基于形状模型的分割的准确性逐渐提高。但是,当通过自由形式变形进行优化时,平均分割精度已从仅20个训练样本开始迅速稳定下来。最大分割误差从100个训练样本开始稳定。

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