Armato Samuel G, Li Feng, Giger Maryellen L, MacMahon Heber, Sone Shusuke, Doi Kunio
Kurt Rossmann Laboratories for Radiologic Image Research, Department of Radiology, University of Chicago, 5841 S Maryland Ave, MC 2026, Chicago, IL 60637, USA.
Radiology. 2002 Dec;225(3):685-92. doi: 10.1148/radiol.2253011376.
To evaluate the performance of a fully automated computerized method for the detection of lung nodules in computed tomographic (CT) scans in the identification of lung cancers that may be missed during visual interpretation.
A database of 38 low-dose CT scans with 50 lung nodules was obtained from a lung cancer screening program. Thirty-eight of the nodules represented biopsy-confirmed lung cancers that had not been reported during initial clinical interpretation. A computer detection method that involved the use of gray-level thresholding techniques to identify three-dimensionally contiguous structures within the lungs was applied to the CT data. Computer-extracted volume was used to determine whether a structure became a nodule candidate. A rule-based scheme and a cascaded automated classifier were applied to the set of nodule candidates to distinguish actual nodules from areas of normal anatomy. Overall performance of the computer detection method was evaluated with free-response receiver operating characteristic (FROC) analysis.
At a specific operating point on the FROC curve, the method achieved a sensitivity of 80% (40 of 50 nodules), with an average of 1.0 false-positive detection per section. Missed cancers were detected by the computerized method with a sensitivity of 84% (32 of 38 nodules) and a false-positive rate of 1.0 per section.
With an automated lung nodule detection method, a large fraction (84%, 32 of 38) of missed cancers in a database of low-dose CT scans were detected correctly.
评估一种用于在计算机断层扫描(CT)中检测肺结节的全自动计算机化方法在识别视觉解读过程中可能遗漏的肺癌方面的性能。
从一项肺癌筛查项目中获取了一个包含38例低剂量CT扫描和50个肺结节的数据库。其中38个结节代表活检确诊的肺癌,在初始临床解读时未被报告。一种计算机检测方法被应用于CT数据,该方法使用灰度阈值技术来识别肺内三维连续结构。计算机提取的体积用于确定一个结构是否成为结节候选。基于规则的方案和级联自动分类器被应用于结节候选集,以区分实际结节与正常解剖区域。计算机检测方法的整体性能通过自由响应接收者操作特征(FROC)分析进行评估。
在FROC曲线上的一个特定操作点,该方法的灵敏度达到80%(50个结节中的40个),每幅图像平均有1.0次假阳性检测。计算机化方法检测到漏诊癌症的灵敏度为84%(38个结节中的32个),每幅图像的假阳性率为1.0。
使用自动肺结节检测方法,在低剂量CT扫描数据库中,很大一部分(84%,38个中的32个)漏诊癌症被正确检测到。