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Lymph node segmentation on CT images by a shape model guided deformable surface method

机译:形状模型可变形表面法对CT图像淋巴结分割

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With many tumor entities, quantitative assessment of lymph node growth over time is important to make therapy choices or to evaluate new therapies. The clinical standard is to document diameters on transversal slices, which is not the best measure for a volume. We present a new algorithm to segment (metastatic) lymph nodes and evaluate the algorithm with 29 lymph nodes in clinical CT images. The algorithm is based on a deformable surface search, which uses statistical shape models to restrict free deformation. To model lymph nodes, we construct an ellipsoid shape model, which strives for a surface with strong gradients and user-defined gray values. The algorithm is integrated into an application, which also allows interactive correction of the segmentation results. The evaluation shows that the algorithm gives good results in the majority of cases and is comparable to time-consuming manual segmentation. The median volume error was 10.1 % of the reference volume before and 6.1 % after manual correction. Integrated into an application, it is possible to perform lymph node volumetry for a whole patient within the 10 to 15 minutes time limit imposed by clinical routine.
机译:随着许多肿瘤实体,随着时间的推移,淋巴结生长的定量评估对于进行治疗选择或评估新疗法是重要的。临床标准是对横向切片上的直径进行文件,这不是体积的最佳措施。我们提出了一种新的段(转移性)淋巴结算法,并评估临床CT图像中的29个淋巴结算法。该算法基于可变形的表面搜索,其使用统计形状模型来限制自由变形。为了模拟淋巴结,我们构建一个椭球形状模型,其争取具有强大渐变和用户定义的灰度值的表面。该算法集成到应用中,这也允许分段结果的交互式校正。评估表明,该算法在大多数情况下提供了良好的结果,并且与耗时的手动分割相当。在手工校正后,中位数误差为参考体积的10.1%,6.1%。集成到应用中,可以在临床常规施加的10至15分钟的时间限制内对整个患者进行淋巴结体积。

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