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Semi-automatic 3D Segmentation Of Costal Cartilage In CT Data From Pectus Excavatum Patients

机译:来自PECTUS ECHAVATUM患者CT数据昂贵软骨的半自动三维分割

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One of the current frontiers in the clinical management of Pectus Excavatum (PE) patients is the prediction of the surgical outcome prior to the intervention. This can be done through computerized simulation of the Nuss procedure, which requires an anatomically correct representation of the costal cartilage. To this end, we take advantage of the costal cartilage tubular structure to detect it through multi-scale vesselness filtering. This information is then used in an interactive 2D initialization procedure which uses anatomical maximum intensity projections of 3D vesselness feature images to efficiently initialize the 3D segmentation process. We identify the cartilage tissue centerlines in these projected 2D images using a livewire approach. We finally refine the 3D cartilage surface through region-based sparse field level-sets. We have tested the proposed algorithm in 6 non-contrast CT datasets from PE patients. A good segmentation performance was found against reference manual contouring, with an average Dice coefficient of 0.75±0.04 and an average mean surface distance of 1.69±0.30mm. The proposed method requires roughly 1 minute for the interactive initialization step, which can positively contribute to an extended use of this tool in clinical practice, since current manual delineation of the costal cartilage can take up to an hour.
机译:Pectus Encavatum(PE)临床管理中的目前的前沿之一是在干预之前预测手术结果。这可以通过对纽斯手术的计算机模拟来完成,这需要昂贵的软骨的解剖学校正表示。为此,我们利用了肋骨软骨管状结构来通过多尺度血管滤波来检测。然后在交互式的2D初始化过程中使用该信息,其使用3D血管的解剖最大强度投影,特征图像来有效地初始化3D分段处理。我们使用LiveWire方法识别这些投影2D图像中的软骨组织中心线。我们终于通过基于区域的稀疏场级集合来改进3D软骨表面。我们已经在PE患者中测试了在6个非对比度CT数据集中的提出的算法。发现了良好的分割性能,反对参考手动轮廓,平均骰子系数为0.75±0.04,平均平均表面距离为1.69±0.30mm。该方法需要大约1分钟的交互式初始化步骤,这可以积极促进该工具在临床实践中的扩展使用,因为目前的手动描绘肋骨软骨可能需要一个小时。

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