Bouma Henri, Sonnemans Jeroen J, Vilanova Anna, Gerritsen Frans A
TU Eindhoven, 5600 MB Eindhoven, The Netherlands.
IEEE Trans Med Imaging. 2009 Aug;28(8):1223-30. doi: 10.1109/TMI.2009.2013618. Epub 2009 Feb 10.
Pulmonary embolism (PE) is a common life-threatening disorder for which an early diagnosis is desirable. We propose a new system for the automatic detection of PE in contrast-enhanced CT images. The system consists of candidate detection, feature computation and classification. Candidate detection focuses on the inclusion of PE--even complete occlusions--and the exclusion of false detections, such as tissue and parenchymal diseases. Feature computation does not only focus on the intensity, shape and size of an embolus, but also on locations and the shape of the pulmonary vascular tree. Several classifiers have been tested and the results show that the performance is optimized by using a bagged tree classifier with two features based on the shape of a blood vessel and the distance to the vessel boundary. The system was trained on 38 CT data sets. Evaluation on 19 other data sets showed that the system generalizes well. The sensitivity of our system on the evaluation data is 63% at 4.9 false positives per data set, which allowed the radiologist to improve the number of detected PE by 22%.
肺栓塞(PE)是一种常见的危及生命的疾病,早期诊断很有必要。我们提出了一种用于在增强CT图像中自动检测PE的新系统。该系统由候选检测、特征计算和分类组成。候选检测侧重于包含PE(甚至完全闭塞)以及排除假检测,如组织和实质疾病。特征计算不仅关注栓子的强度、形状和大小,还关注肺血管树的位置和形状。已经测试了几种分类器,结果表明,使用基于血管形状和到血管边界距离的两个特征的袋装树分类器可优化性能。该系统在38个CT数据集上进行了训练。对其他19个数据集的评估表明该系统具有良好的泛化能力。我们的系统在评估数据上的灵敏度为63%,每个数据集有4.9个假阳性,这使得放射科医生能够将检测到的PE数量提高22%。