首页> 外文会议>Conference on Medical Imaging 2008: Imaging Processing; 20080217-19; San Diego,CA(US) >Fuzzy Pulmonary Vessel Segmentation in Contrast Enhanced CT Data
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Fuzzy Pulmonary Vessel Segmentation in Contrast Enhanced CT Data

机译:增强CT数据对比中的模糊肺血管分割

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Pulmonary vascular tree segmentation has numerous applications in medical imaging and computer-aided diagnosis (CAD), including detection and visualization of pulmonary emboli (PE), improved lung nodule detection, and quantitative vessel analysis. We present a novel approach to pulmonary vessel segmentation based on a fuzzy segmentation concept, combining the strengths of both threshold and seed point based methods. The lungs of the original image are first segmented and a threshold-based approach identifies core vessel components with a high specificity. These components are then used to automatically identify reliable seed points for a fuzzy seed point based segmentation method, namely fuzzy connectedness. The output of the method consists of the probability of each voxel belonging to the vascular tree. Hence, our method provides the possibility to adjust the sensitivity/specificity of the segmentation result a posteriori according to application-specific requirements, through definition of a minimum vessel-probability required to classify a voxel as belonging to the vascular tree. The method has been evaluated on contrast-enhanced thoracic CT scans from clinical PE cases and demonstrates overall promising results. For quantitative validation we compare the segmentation results to randomly selected, semi-automatically segmented sub-volumes and present the resulting receiver operating characteristic (ROC) curves. Although we focus on contrast enhanced chest CT data, the method can be generalized to other regions of the body as well as to different imaging modalities.
机译:肺血管树分割在医学成像和计算机辅助诊断(CAD)中具有许多应用,包括肺栓子(PE)的检测和可视化,改进的肺结节检测以及定量血管分析。我们提出了一种基于模糊分割概念的肺血管分割新方法,结合了阈值和基于种子点的方法的优势。首先分割原始图像的肺部,然后基于阈值的方法以高特异性识别核心血管成分。然后使用这些组件为基于模糊种子点的分割方法(即模糊连接性)自动识别可靠的种子点。该方法的输出包括每个体素属于血管树的概率。因此,通过定义将体素分类为血管树所需的最小血管概率,我们的方法提供了根据特定应用要求调整后验分割结果的灵敏度/特异性的可能性。该方法已在临床PE病例的对比增强胸部CT扫描中进行了评估,并显示出总体有希望的结果。为了进行定量验证,我们将分割结果与随机选择的半自动分割的子体积进行比较,并给出最终的接收器工作特性(ROC)曲线。尽管我们专注于对比增强的胸部CT数据,但是该方法可以推广到身体的其他区域以及不同的成像方式。

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