首页> 外文会议>Conference on Medical Imaging 2008: Computer-Aided Diagnosis; 20080219-21; San Diego,CA(US) >Comparison of computer versus manual determination of pulmonary nodule volumes in CT scans
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Comparison of computer versus manual determination of pulmonary nodule volumes in CT scans

机译:CT扫描中计算机和手动确定肺结节体积的比较

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Accurate nodule volume estimation is necessary in order to estimate the clinically relevant growth rate or change in size over time. An automated nodule volume-measuring algorithm was applied to a set of pulmonary nodules that were documented by the Lung Image Database Consortium (LIDC). The LIDC process model specifies that each scan is assessed by four experienced thoracic radiologists and that boundaries are to be marked around the visible extent of the nodules for nodules 3 mm and larger. Nodules were selected from the LIDC database with the following inclusion criteria: (a) they must have a solid component on a minimum of three CT image slices and (b) they must be marked by all four LIDC radiologists. A total of 113 nodules met the selection criterion with diameters ranging from 3.59 mm to 32.68 mm (mean 9.37 mm, median 7.67 mm). The centroid of each marked nodule was used as the seed point for the automated algorithm. 95 nodules (84.1%) were correctly segmented, but one was considered not meeting the first selection criterion by the automated method; for the remaining ones, eight (7.1%) were structurally too complex or extensively attached and 10 (8.8%) were considered not properly segmented after a simple visual inspection by a radiologist. Since the LIDC specifications, as aforementioned, instruct radiologists to include both solid and sub-solid parts, the automated method core capability of segmenting solid tissues was augmented to take into account also the nodule sub-solid parts. We ranked the distances of the automated method estimates and the radiologist-based estimates from the median of the radiologist-based values. The automated method was in 76.6% of the cases closer to the median than at least one of the values derived from the manual markings, which is a sign of a very good agreement with the radiologists' markings.
机译:为了估算临床上相关的生长速率或随时间变化的大小,准确的结节体积估算是必要的。自动肺结节体积测量算法应用于肺结节集,这些结节由肺图像数据库协会(LIDC)记录。 LIDC过程模型规定,每次扫描均由四名经验丰富的胸放射科医生进行评估,并且对于结节3 mm及更大的结节,应在结节的可见范围附近标出边界。从LIDC数据库中选择符合以下纳入标准的结节:(a)它们必须在至少三个CT图像切片上具有固体成分,并且(b)必须由所有四位LIDC放射科医生进行标记。共有113个结节符合选择标准,直径范围从3.59毫米到32.68毫米(平均9.37毫米,中值7.67毫米)。每个标记结节的质心用作自动算法的种子点。正确分割了95个结节(占84.1%),但通过自动化方法认为其中一个不符合第一个选择标准。对于其余的,有八名(7.1%)在结构上过于复杂或广泛连接,而放射线医师进行了简单的目视检查后,认为有十名(8.8%)没有正确分割。如前所述,由于LIDC规范指示放射科医生包括实体和亚实体部分,因此增加了对实体组织进行分割的自动方法核心功能,同时还考虑了结节亚实体部分。我们对自动方法估计值和基于放射线医师的估计值与基于放射线医师的值的中位数之间的距离进行排名。自动化方法在76.6%的病例中比至少一个从手动标记得出的值更接近中位数,这表明与放射科医生的标记非常吻合。

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