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Automatic segmentation of pulmonary vasculature in thoracic CT scans with local thresholding and airway wall removal

机译:通过局部阈值化和气道壁切除术在胸部CT扫描中自动分割肺血管

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A system for the automatic segmentation of the pulmonary vasculature in thoracic CT scans is presented. The method is based on a vesselness filter and includes a local thresholding procedure to accurately segment vessels of varying diameters. The output of an automatic segmentation of the airways is used to remove false positive detections in the airway walls. The algorithm is tested with a quantitative evaluation framework based on manual classification of well-dispersed local maxima and random points on ten axial sections in a scan. The algorithm has been applied to ten low dose CT scans annotated by two observers. Results show that local thresholding and airway wall removal both improve segmentation performance and that the accuracy of the proposed method approaches the interobserver variability.
机译:提出了一种在胸部CT扫描中自动分割肺血管的系统。该方法基于血管过滤器,并且包括局部阈值处理过程,以准确地分割直径不同的血管。气道自动分段的输出用于消除气道壁中的误报。该算法使用定量评估框架进行测试,该框架基于对扫描中十个轴向截面上分散良好的局部最大值和随机点的手动分类。该算法已应用于由两名观察员注释的十次低剂量CT扫描。结果表明,局部阈值处理和气道壁去除均可以提高分割性能,并且该方法的准确性接近观察者间的可变性。

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