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Hepatic vessel segmentation for 3D planning of liver surgery experimental evaluation of a new fully automatic algorithm.

机译:肝血管分割用于肝脏外科手术的3D规划实验评估的一种新型全自动算法。

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RATIONALE AND OBJECTIVES: The aim of this study was to identify the optimal parameter configuration of a new algorithm for fully automatic segmentation of hepatic vessels, evaluating its accuracy in view of its use in a computer system for three-dimensional (3D) planning of liver surgery. MATERIALS AND METHODS: A phantom reproduction of a human liver with vessels up to the fourth subsegment order, corresponding to a minimum diameter of 0.2 mm, was realized through stereolithography, exploiting a 3D model derived from a real human computed tomographic data set. Algorithm parameter configuration was experimentally optimized, and the maximum achievable segmentation accuracy was quantified for both single two-dimensional slices and 3D reconstruction of the vessel network, through an analytic comparison of the automatic segmentation performed on contrast-enhanced computed tomographic phantom images with actual model features. RESULTS: The optimal algorithm configuration resulted in a vessel detection sensitivity of 100% for vessels > 1 mm in diameter, 50% in the range 0.5 to 1 mm, and 14% in the range 0.2 to 0.5 mm. An average area overlap of 94.9% was obtained between automatically and manually segmented vessel sections, with an average difference of 0.06 mm(2). The average values of corresponding false-positive and false-negative ratios were 7.7% and 2.3%, respectively. CONCLUSIONS: A robust and accurate algorithm for automatic extraction of the hepatic vessel tree from contrast-enhanced computed tomographic volume images was proposed and experimentally assessed on a liver model, showing unprecedented sensitivity in vessel delineation. This automatic segmentation algorithm is promising for supporting liver surgery planning and for guiding intraoperative resections.
机译:理由和目的:这项研究的目的是确定用于肝血管全自动分割的新算法的最佳参数配置,并鉴于其在用于肝脏的三维(3D)规划的计算机系统中的使用,评估其准确性手术。材料与方法:利用立体光刻技术,利用从真实的人类计算机断层扫描数据集获得的3D模型,实现了人体肝脏的幻影复制,该容器具有至第四子段级的血管,对应于最小直径为0.2 mm。通过对在对比增强的计算机断层摄影体模图像上进行的自动分割与实际模型进行的解析比较,对实验参数进行了算法优化,并针对单个二维切片和血管网络的3D重建量化了最大的分割精度。特征。结果:最佳算法配置导致直径> 1 mm的血管的血管检测灵敏度为100%,范围为0.5至1 mm的血管为50%,范围为0.2至0.5 mm的血管为14%。自动和手动分段的血管截面之间的平均面积重叠为94.9%,平均差异为0.06 mm(2)。相应的假阳性率和假阴性率的平均值分别为7.7%和2.3%。结论:提出了一种健壮而准确的算法,用于从造影剂增强的计算机断层摄影体积图像中自动提取肝血管树,并在肝脏模型上进行了实验评估,显示出血管轮廓描绘中空前的敏感性。这种自动分割算法有望支持肝脏手术计划并指导术中切除。

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