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Automatic detection and characterization of pulmonary nodules in thoracic CT scans

机译:胸部CT扫描中肺结节的自动检测和表征

摘要

Lung cancer is the most deadly cancer in both men and women. This can be largely attributed to the fact that lung cancer is usually detected in a late stage. If the disease is detected in an early stage, the survival rate is much better. Therefore, early detection of lung cancer, in which it is still treatable, is of major importance to reduce lung cancer mortality.udEarly stage lung cancer manifests itself as pulmonary nodules, which are described as round opacities, well or poorly defined, measuring up to 3 cm in diameter. Thin-slice helical chest CT scans have a sub-millimeter resolution at which small pulmonary nodules can be detected. Computer-aided detection of lung nodules has the potential to increase reader sensitivity for the detection of pulmonary nodules and may reduce reading time. Furthermore, automated characterization of pulmonary nodules may assist the radiologist in assessing the likelihood of malignancy of lung nodules.udIn this thesis, novel detection and characterization systems for pulmonary nodules are described. We proposed a novel subsolid CAD system which aims to detect subsolid nodules, a system to detect and quantify micronodules, and a system to automatically detect interval change between consecutive CT scans. All three systems were evaluated on large datasets and showed promising performance. In addition, we performed a comparative study with three CAD algorithms on the largest publicly available reference database for pulmonary nodules. Next, we described a method which automatically classifies pulmonary nodules into solid, part-solid, or non-solid nodules. This is crucial for selecting the appropriate workup for pulmonary nodules. Finally, we discussed how the developed methods can be efficiently integrated into clinical practice.
机译:肺癌是男女最致命的癌症。这在很大程度上可以归因于通常在晚期发现肺癌的事实。如果在早期发现该疾病,则存活率要好得多。因此,尽早发现仍可治疗的肺癌对于降低肺癌死亡率具有重要意义。 udard早期肺癌表现为肺结节,被描述为圆形混浊,定义明确或定义不清,进行了测量到直径3厘米。薄层螺旋式胸部CT扫描具有亚毫米级的分辨率,在该分辨率下可以检测到小的肺结节。计算机辅助检测肺结节有可能提高读者对肺结节检测的敏感性,并可能减少阅读时间。此外,肺结节的自动表征可以帮助放射科医生评估肺结节恶性的可能性。 ud在本文中,描述了新颖的肺结节检测和表征系统。我们提出了一种新颖的亚固体CAD系统,旨在检测亚固体结节,检测和量化微结节的系统以及自动检测连续CT扫描之间的间隔变化的系统。所有三个系统均在大型数据集上进行了评估,并显示出令人鼓舞的性能。此外,我们在最大的肺结节参考数据库上使用三种CAD算法进行了比较研究。接下来,我们描述了一种将肺结节自动分类为实心,部分实心或非实心结节的方法。这对于选择合适的肺结节检查至关重要。最后,我们讨论了如何将开发的方法有效地整合到临床实践中。

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  • 作者

    Jacobs C.;

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  • 年度 2015
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