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Automatic detection of lung vessel bifurcation in thoracic CT Images

机译:胸CT图像中肺血管分叉的自动检测

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Computer-aided diagnosis (CAD) systems for detection of lung nodules have been an active topic of research for last few years. It is desirable that a CAD system should generate very low false positives (FPs) while maintaining high sensitivity. This work aims to reduce the number of false positives occurring at vessel bifurcation point. FPs occur quite frequently on vessel branching point due to its shape which can appear locally spherical due to the intrinsic geometry of intersecting tubular vessel structures combined with partial volume effects and soft tissue attenuation appearance surrounded by parenchyma. We propose a model-based technique for detection of vessel branching points using skeletonization, followed by branch-point analysis. First we perform vessel structure enhancement using a multi-scale Hessian filter to accurately segment tubular structures of various sizes followed by thresholding to get binary vessel structure segmentation [6]. A modified Reebgraph [7] is applied next to extract the critical points of structure and these are joined by a nearest neighbor criterion to obtain complete skeletal model of vessel structure. Finally, the skeletal model is traversed to identify branch points, and extract metrics including individual branch length, number of branches and angle between various branches. Results on 80 sub-volumes consisting of 60 actual vessel-branching and 20 solitary solid nodules show that the algorithm identified correctly vessel branching points for 57 sub-volumes (95% sensitivity) and misclassified 2 nodules as vessel branch. Thus, this technique has potential in explicit identification of vessel branching points for general vessel analysis, and could be useful in false positive reduction in a lung CAD system.
机译:用于检测肺结核的计算机辅助诊断(CAD)系统是过去几年的主题研究。期望CAD系统应产生非常低的误报(FPS),同时保持高灵敏度。这项工作旨在减少在船舶分叉点处发生的误报的数量。由于其形状,FPS在血管分支点上发生,这是由于交叉管状容器结构的固有几何形状,这些形状可以出现局部球形,其与薄壁症包围的部分体积效应和软组织衰减外观。我们提出了一种基于模型的技术,用于使用骨架化检测血管分支点,然后进行分支点分析。首先,我们使用多尺寸Hessian滤波器进行血管结构增强,以精确地分割各种尺寸的管状结构,然后进行阈值,以获得二进制血管结构分割[6]。接下来应用修改的Reebgraph [7]以提取结构的临界点,并且这些通过最接近的邻标准连接,以获得容器结构的完整骨骼模型。最后,遍历骨架模型以识别分支点,提取包括各个分支长度,分支数量的分支点数,分支数量和角度。结果80个由60个实际血管支化和20个孤立固体结节组成的80个子体积表明,该算法鉴定了57个亚体积(95%敏感性)和被错误分类的2个结节作为血管分支的血管分支点。因此,该技术具有显式识别血管分支点的潜力,并且可用于肺CAD系统的假阳性降低。

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