...
首页> 外文期刊>Academic radiology >Automated detection of small pulmonary nodules in whole lung CT scans.
【24h】

Automated detection of small pulmonary nodules in whole lung CT scans.

机译:在全肺CT扫描中自动检测小肺结节。

获取原文
获取原文并翻译 | 示例
           

摘要

RATIONALE AND OBJECTIVES: The objective of this work was to develop and evaluate a robust algorithm that automatically detects small solid pulmonary nodules in whole lung helical CT scans from a lung cancer screening study. MATERIALS AND METHODS: We developed a three-stage detection algorithm for both isolated and attached nodules. The algorithm consisted of nodule search space demarcation, nodule candidates' generation, and a sequential elimination of false positives. Isolated nodules are nodules that are surrounded by lung parenchyma, whereas attached nodules are connected to large, dense structures such as pleural and/or mediastinal surface. Two large well-documented whole lung CT scan databases (Databases A and B) were created to train and test the detection algorithm. Database A contains 250 sequentially selected scans with 2.5-mm slice thickness that were obtained at Weill Medical College of Cornell University. With equipment upgrade at this college, a second database, Database B, was created containing 250 scans with a 1.25-mm slice thickness. A total of 395 and 482 nodules were identified in Databases A and B, respectively. In both databases, the majority of the nodules were isolated, comprising 72.1% and 82.3% of nodules in Databases A and B, respectively. RESULTS: The detection algorithm was trained and tested on both Databases A and B. For isolated nodules with sizes 4 mm or larger, the algorithm achieved 94.0% sensitivity and 7.1 false positives per case (FPPC) for Database A (2.5 mm). Similarly, the algorithm achieved 91% sensitivity and 6.9 FPPC for Database B (1.25 mm). The algorithm achieved 92% sensitivity with 17.4 FPPC and 89% sensitivity with 5.5 FFPC for attached nodules with sizes 3 mm or larger in the Database A (2.5 mm) and Database B (1.25 mm), respectively. CONCLUSION: The developed algorithm achieved practical performance for automated detection of both isolated and the more challenging attached nodules. The automated system will be a useful tool to assist radiologists in identifying nodules from whole lung CT scans in a clinical setting.
机译:理由和目的:这项工作的目的是开发和评估一种强大的算法,该算法可自动从肺癌筛查研究的全肺螺旋CT扫描中检测出小的实心肺结节。材料与方法:我们针对孤立和结节开发了三阶段检测算法。该算法包括结节搜索空间划分,结节候选的生成以及误报的顺序消除。孤立的结节是被肺实质包围的结节,而附着的结节则与大而致密的结构如胸膜和/或纵隔表面相连。创建了两个记录良好的大型全肺CT扫描数据库(数据库A和B)来训练和测试检测算法。数据库A包含250个顺序选择的,厚度为2.5毫米的扫描,这些扫描是从康奈尔大学的威尔医学院获得的。随着该学院设备的升级,创建了第二个数据库数据库B,其中包含250个扫描结果,切片厚度为1.25毫米。在数据库A和数据库B中分别识别出395个和482个结核。在这两个数据库中,大多数结节都是分离的,分别占数据库A和B中的72.1%和82.3%。结果:该检测算法在数据库A和数据库B上均经过了培训和测试。对于大小为4 mm或更大的孤立结节,该算法对数据库A(2.5 mm)的敏感度为94.0%,每例假阳性率(FPPC)为7.1。同样,对于数据库B(1.25毫米),该算法实现了91%的灵敏度和6.9 FPPC。对于数据库A(2.5 mm)和数据库B(1.25 mm)中尺寸为3 mm或更大的附着结节,该算法分别以17.4 FPPC和92%的FPC达到了92%的灵敏度。结论:所开发的算法在自动检测孤立的和更具挑战性的结节方面均达到了实用的性能。自动化系统将是一个有用的工具,可协助放射科医生在临床环境中从全肺CT扫描中识别结节。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号