Manniesing Rashindra, Viergever Max A, van der Lugt Aad, Niessen Wiro J
Departments of Medical Informatics and Radiology, Erasmus MC-University Medical Center Rotterdam, Dr. Molewaterplein 40/50, 3015 GE Rotterdam, the Netherlands.
Radiology. 2008 Jun;247(3):841-6. doi: 10.1148/radiol.2473070436.
The purpose of this study was to retrospectively assess the feasibility of a fully automated image postprocessing tool for the segmentation of the arterial cerebrovasculature from computed tomographic (CT) angiography in 27 patients (nine men, 18 women; mean age, 55 years; age range, 33-76 years) with subarachnoid hemorrhage. The institutional review board approved this study, and informed consent was waived. The proposed method, which does not require the acquisition of an additional CT scan for bone suppression, consists of the following: (a) automatic detection of the main arteries for initialization, (b) segmentation of these arteries through the skull base, and (c) suppression of the large veins near the skull. The parameters of this method were optimized on the training subset of nine patients, and the method was successful at segmentation of the arteries in 15 (83%) of the 18 remaining patients. The difference between automatic and manual diameter measurements was 0.0 mm +/- 0.4 (standard deviation). The study results showed that fully automated segmentation of the cerebral arteries is feasible.
本研究的目的是回顾性评估一种全自动图像后处理工具在27例蛛网膜下腔出血患者(9例男性,18例女性;平均年龄55岁;年龄范围33 - 76岁)的计算机断层扫描(CT)血管造影中分割动脉脑血管系统的可行性。机构审查委员会批准了本研究,并豁免了知情同意。所提出的方法无需额外进行CT扫描以抑制骨骼,该方法包括以下步骤:(a)自动检测主要动脉以进行初始化,(b)通过颅底分割这些动脉,以及(c)抑制颅骨附近的大静脉。该方法的参数在9例患者的训练子集中进行了优化,并且该方法在其余18例患者中的15例(83%)成功分割出了动脉。自动测量直径与手动测量直径之间的差异为0.0 mm±0.4(标准差)。研究结果表明,脑动脉的全自动分割是可行的。