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Segmentation of hepatic artery in multi-phase liver CT using directional dilation and connectivity analysis

机译:定向扩张和连通性分析在多相肝CT中分割肝动脉

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Segmentation of hepatic arteries in multi-phase computed tomography (CT) images is indispensable in liver surgery planning. During image acquisition, the hepatic artery is enhanced by the injection of contrast agent. The enhanced signals are often not stably acquired due to non-optimal contrast timing. Other vascular structure, such as hepatic vein or portal vein, can be enhanced as well in the arterial phase, which can adversely affect the segmentation results. Furthermore, the arteries might suffer from partial volume effects due to their small diameter. To overcome these difficulties, we propose a framework for robust hepatic artery segmentation requiring a minimal amount of user interaction. First, an efficient multi-scale Hessian-based vesselness filter is applied on the artery phase CT image, aiming to enhance vessel structures with specified diameter range. Second, the vesselness response is processed using a Bayesian classifier to identify the most probable vessel structures. Considering the vesselness filter normally performs not ideally on the vessel bifurcations or the segments corrupted by noise, two vessel-reconnection techniques are proposed. The first technique uses a directional morphological operator to dilate vessel segments along their centerline directions, attempting to fill the gap between broken vascular segments. The second technique analyzes the connectivity of vessel segments and reconnects disconnected segments and branches. Finally, a 3D vessel tree is reconstructed. The algorithm has been evaluated using 18 CT images of the liver. To quantitatively measure the similarities between segmented and reference vessel trees, the skeleton coverage and mean symmetric distance are calculated to quantify the agreement between reference and segmented vessel skeletons, resulting in an average of 0.55 ± 0.27 and 12.7 ± 7.9 mm (mean standard deviation), respectively.
机译:在肝脏手术计划中,在多阶段计算机断层扫描(CT)图像中分割肝动脉是必不可少的。在图像采集期间,通过注入造影剂增强肝动脉。由于非最佳的对比度定时,通常不能稳定地获取增强的信号。在动脉期也可以增强其他血管结构,例如肝静脉或门静脉,这可能会对分割结果产生不利影响。此外,由于动脉直径小,可能会受到部分体积的影响。为了克服这些困难,我们提出了一个鲁棒的肝动脉分割框架,需要最少的用户交互。首先,将有效的多尺度基于Hessian的脉管滤波器应用于动脉相位CT图像,旨在增强指定直径范围内的脉管结构。其次,使用贝叶斯分类器处理容器响应,以识别最可能的容器结构。考虑到血管过滤器通常在血管分支或受噪声破坏的部分上表现不理想,提出了两种血管重新连接技术。第一种技术使用定向形态学运算符沿其中心线方向扩展血管段,以尝试填充破碎的血管段之间的间隙。第二种技术分析了血管段的连通性,并重新连接了断开的段和分支。最后,重建3D血管树。该算法已使用18张肝脏CT图像进行了评估。为了定量测量分段和参考血管树之间的相似性,计算骨架覆盖率和平均对称距离以量化参考和分段血管骨架之间的一致性,得出平均值为0.55±0.27和12.7±7.9 mm(平均标准偏差) , 分别。

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