Suppr超能文献

CT自动检测结节后的肺结节自动分类:一种序列方法。

Automated lung nodule classification following automated nodule detection on CT: a serial approach.

作者信息

Armato Samuel G, Altman Michael B, Wilkie Joel, Sone Shusuke, Li Feng, Doi Kunio, Roy Arunabha S

机构信息

Department of Radiology, The University of Chicago, 5841 South Maryland Avenue, Chicago, Illinois 60637, USA.

出版信息

Med Phys. 2003 Jun;30(6):1188-97. doi: 10.1118/1.1573210.

Abstract

We have evaluated the performance of an automated classifier applied to the task of differentiating malignant and benign lung nodules in low-dose helical computed tomography (CT) scans acquired as part of a lung cancer screening program. The nodules classified in this manner were initially identified by our automated lung nodule detection method, so that the output of automated lung nodule detection was used as input to automated lung nodule classification. This study begins to narrow the distinction between the "detection task" and the "classification task." Automated lung nodule detection is based on two- and three-dimensional analyses of the CT image data. Gray-level-thresholding techniques are used to identify initial lung nodule candidates, for which morphological and gray-level features are computed. A rule-based approach is applied to reduce the number of nodule candidates that correspond to non-nodules, and the features of remaining candidates are merged through linear discriminant analysis to obtain final detection results. Automated lung nodule classification merges the features of the lung nodule candidates identified by the detection algorithm that correspond to actual nodules through another linear discriminant classifier to distinguish between malignant and benign nodules. The automated classification method was applied to the computerized detection results obtained from a database of 393 low-dose thoracic CT scans containing 470 confirmed lung nodules (69 malignant and 401 benign nodules). Receiver operating characteristic (ROC) analysis was used to evaluate the ability of the classifier to differentiate between nodule candidates that correspond to malignant nodules and nodule candidates that correspond to benign lesions. The area under the ROC curve for this classification task attained a value of 0.79 during a leave-one-out evaluation.

摘要

我们评估了一种自动分类器在低剂量螺旋计算机断层扫描(CT)扫描中区分恶性和良性肺结节任务中的性能,这些扫描是肺癌筛查项目的一部分。以这种方式分类的结节最初是通过我们的自动肺结节检测方法识别出来的,因此自动肺结节检测的输出被用作自动肺结节分类的输入。这项研究开始缩小“检测任务”和“分类任务”之间的区别。自动肺结节检测基于CT图像数据的二维和三维分析。灰度阈值技术用于识别初始肺结节候选者,并计算其形态和灰度特征。应用基于规则的方法减少与非结节对应的结节候选者数量,剩余候选者的特征通过线性判别分析进行合并以获得最终检测结果。自动肺结节分类通过另一个线性判别分类器合并检测算法识别出的与实际结节对应的肺结节候选者的特征,以区分恶性和良性结节。自动分类方法应用于从包含470个确诊肺结节(69个恶性和401个良性结节)的393例低剂量胸部CT扫描数据库中获得的计算机检测结果。采用受试者操作特征(ROC)分析来评估分类器区分与恶性结节对应的结节候选者和与良性病变对应的结节候选者的能力。在留一法评估期间,该分类任务的ROC曲线下面积达到0.79。

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验