Armato S G, Giger M L, MacMahon H
Department of Radiology, The University of Chicago, Illinois 60637, USA.
Med Phys. 2001 Aug;28(8):1552-61. doi: 10.1118/1.1387272.
We have developed a fully automated computerized method for the detection of lung nodules in helical computed tomography (CT) scans of the thorax. This method is based on two-dimensional and three-dimensional analyses of the image data acquired during diagnostic CT scans. Lung segmentation proceeds on a section-by-section basis to construct a segmented lung volume within which further analysis is performed. Multiple gray-level thresholds are applied to the segmented lung volume to create a series of thresholded lung volumes. An 18-point connectivity scheme is used to identify contiguous three-dimensional structures within each thresholded lung volume, and those structures that satisfy a volume criterion are selected as initial lung nodule candidates. Morphological and gray-level features are computed for each nodule candidate. After a rule-based approach is applied to greatly reduce the number of nodule candidates that corresponds to nonnodules, the features of remaining candidates are merged through linear discriminant analysis. The automated method was applied to a database of 43 diagnostic thoracic CT scans. Receiver operating characteristic (ROC) analysis was used to evaluate the ability of the classifier to differentiate nodule candidates that correspond to actual nodules from false-positive candidates. The area under the ROC curve for this categorization task attained a value of 0.90 during leave-one-out-by-case evaluation. The automated method yielded an overall nodule detection sensitivity of 70% with an average of 1.5 false-positive detections per section when applied to the complete 43-case database. A corresponding nodule detection sensitivity of 89% with an average of 1.3 false-positive detections per section was achieved with a subset of 20 cases that contained only one or two nodules per case.
我们开发了一种全自动计算机化方法,用于在胸部螺旋计算机断层扫描(CT)中检测肺结节。该方法基于在诊断性CT扫描期间获取的图像数据的二维和三维分析。肺部分割逐节进行,以构建一个分割后的肺容积,在其中进行进一步分析。对分割后的肺容积应用多个灰度阈值,以创建一系列阈值化的肺容积。使用18点连通性方案来识别每个阈值化肺容积内的连续三维结构,并且选择满足体积标准的那些结构作为初始肺结节候选者。为每个结节候选者计算形态学和灰度特征。在应用基于规则的方法以大幅减少对应于非结节的结节候选者数量之后,通过线性判别分析合并剩余候选者的特征。将该自动化方法应用于一个包含43例诊断性胸部CT扫描的数据库。使用接受者操作特征(ROC)分析来评估分类器区分对应于实际结节的结节候选者与假阳性候选者的能力。在逐病例留一法评估期间,该分类任务的ROC曲线下面积达到0.90。当应用于完整的43例数据库时,该自动化方法产生的总体结节检测灵敏度为70%,每节平均有1.5例假阳性检测。对于每例仅包含一两个结节的20例病例子集,实现了相应的结节检测灵敏度为89%,每节平均有1.3例假阳性检测。