首页> 外文会议>Computer-Aided Diagnosis pt.1; Progress in Biomedical Optics and Imaging; vol.8,no.33; Proceedings of SPIE-The International Society for Optical Engineering; vol.6514 pt.1 >The effect of nodule segmentation on the accuracy of computerized lung nodule detection on CT scans: Comparison on a data set annotated by multiple radiologists
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The effect of nodule segmentation on the accuracy of computerized lung nodule detection on CT scans: Comparison on a data set annotated by multiple radiologists

机译:结节分割对CT扫描上计算机肺结节检测准确性的影响:与多位放射科医生注释的数据集的比较

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In computerized nodule detection systems on CT scans, many features that are useful for classifying whether a nodule candidate identified by prescreening is a true positive depend on the shape of the segmented object. We designed two segmentation algorithms for detailed delineation of the boundaries for nodule candidates. The first segmentation technique was a three-dimensional (3D) region-growing (RG) method which grew the object across multiple CT sections. The second technique was based on a 3D active contour (AC) model. A training set of 94 CT scans was used for algorithm design. An independent set of 62 scans, each read by multiple radiologists, was used for testing. Thirty-three scans were collected from patient files at the University of Michigan and 29 scans by the Lung Imaging Database Consortium (LIDC). In this study, we concentrated on the detection of internal lung nodules having a size > 3 mm that were not pure ground-glass opacities. Of the lesions marked by one or multiple radiologists, 124 nodules satisfied these criteria and were considered true nodules. The performance of the detection system in the AC feature space, RG feature space, and the combined feature space were compared using free-response receiver operating curves (FROC). The FROC curve using the combined feature space was significantly higher than that using the RG feature space or the AC feature space alone (p=0.02 and 0.03, respectively). At a sensitivity of 70% for internal non-GGO nodules, the FP rates were 2.2, 2.2, and 1.5 per scan, respectively, for the RG, AC, and the combined methods. Our results indicate that the 3D AC algorithm can provide useful features to improve nodule detection on CT scans.
机译:在CT扫描的计算机结节检测系统中,许多有助于对通过预筛查确定的结节候选是否为真阳性进行分类的功能取决于分割对象的形状。我们设计了两种分割算法,用于详细描述结节候选对象的边界。第一种分割技术是三维(3D)区域生长(RG)方法,该方法可跨多个CT断面生长物体。第二种技术基于3D活动轮廓(AC)模型。 94个CT扫描的训练集用于算法设计。测试使用了一组独立的62次扫描,每个扫描均由多位放射科医生读取。从密歇根大学的患者档案中收集了33项扫描,由肺部成像数据库协会(LIDC)进行了29项扫描。在这项研究中,我们集中于检测大于3 mm的肺结节,这些结节不是纯磨砂玻璃混浊。由一位或多位放射科医生标记的病变中,有124个结节符合这些标准,被认为是真正的结节。使用自由响应接收器工作曲线(FROC)比较了AC特征空间,RG特征空间和组合特征空间中检测系统的性能。使用组合特征空间的FROC曲线显着高于使用RG特征空间或单独使用AC特征空间的FROC曲线(分别为p = 0.02和0.03)。对于内部非GGO结节,灵敏度为70%时,RG,AC和组合方法的每次扫描FP率分别为2.2、2.2和1.5。我们的结果表明3D AC算法可以提供有用的功能,以改善CT扫描中的结节检测。

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