Forkert Nils Daniel, Säring D, Fiehler J, Illies T, Möller D, Handels H
Department of Medical Informatics, University Medical Center Hamburg-Eppendorf, 20246 Hamburg, Germany.
Methods Inf Med. 2009;48(5):399-407. doi: 10.3414/ME9237. Epub 2009 Aug 20.
Cerebral vascular malformations might, caused by ruptures, lead to strokes. The rupture risk depends to a great extent on the individual anatomy of the vasculature. The 3D Time-of-Flight (TOF) MRA technique is one of the most commonly used non-invasive imaging techniques to obtain knowledge about the individual vascular anatomy. Unfortunately TOF images exhibit drawbacks for segmentation and direct volume visualization of the vasculature. To overcome these drawbacks an initial segmentation of the brain tissue is required.
After preprocessing of the data is applied the low-intensity tissues surrounding the brain are segmented using region growing. In a following step this segmentation is used to extract supporting points at the border of the brain for a graph-based contour extraction. Finally a consistency check is performed to identify local outliers which are corrected using non-linear registration.
A quantitative validation of the method proposed was performed on 18 clinical datasets based on manual segmentations. A mean Dice coefficient of 0.989 was achieved while in average 99.56% of all vessel voxels were included by the brain segmentation. A comparison to the results yielded by three commonly used tools for brain segmentation revealed that the method described achieves better results, using TOF images as input, which are within the inter-observer variability.
The method suggested allows a robust and automatic segmentation of brain tissue in TOF images. It is especially helpful to improve the automatic segmentation or direct volume rendering of the cerebral vascular system.
脑血管畸形可能因破裂导致中风。破裂风险在很大程度上取决于血管的个体解剖结构。三维时间飞跃(TOF)磁共振血管造影(MRA)技术是获取个体血管解剖结构信息最常用的非侵入性成像技术之一。不幸的是,TOF图像在血管分割和直接容积可视化方面存在缺点。为克服这些缺点,需要对脑组织进行初始分割。
在对数据进行预处理后,使用区域生长法分割大脑周围的低强度组织。在接下来的步骤中,利用该分割结果在大脑边界提取支撑点,用于基于图的轮廓提取。最后进行一致性检查,以识别局部异常值,并使用非线性配准进行校正。
基于手动分割对18个临床数据集对所提出的方法进行了定量验证。平均骰子系数达到0.989,而大脑分割平均包含了所有血管体素的99.56%。与三种常用的脑部分割工具的结果进行比较,结果表明,以TOF图像作为输入,所描述的方法取得了更好的结果,且在观察者间变异性范围内。
所建议的方法能够对TOF图像中的脑组织进行稳健的自动分割。它对于改善脑血管系统的自动分割或直接容积渲染特别有帮助。