Laboratory of Biorheology and Medical Ultrasonics, University of Montreal Hospital Research Center, Montreal, Quebec H2L 2W5, Canada.
Med Phys. 2010 Jul;37(7):3633-47. doi: 10.1118/1.3438476.
Intravascular ultrasound (IVUS) is a vascular imaging technique that is used to study atherosclerosis since it has the ability to show the lumen and the vessel wall. Cross-sectional images of blood vessels are produced and they provide quantitative assessment of the vascular wall, information about the nature of atherosclerotic lesions, as well as the plaque shape and size. Due to the ultrasound speckle, catheter artifacts, or calcification shadows, the automated analysis of large IVUS data sets represents an important challenge.
A multiple interface 3D fast-marching method is presented for the detection of the lumen and external vessel wall boundaries. The segmentation is based on a combination of region and contour information, namely, the gray level probability density functions of the vessel structures and the intensity gradient. The detection of the lumen boundary is fully automatic. The segmentation method includes an interactive initialization procedure of the external vessel wall border. The segmentation method was applied to 20 in vivo IVUS data sets acquired from femoral arteries. This database contained three subgroups: Pullbacks acquired before balloon angioplasty (n=7), after the intervention (n=7), and at a 1 yr follow-up examination (n=6). Results were compared to validation contours that were manually traced by two experts on more than 1500 individual frames.
For all subgroups, no significant difference was found between the area measurements of the segmentation and validation contours for the lumen and external vessel wall. Moreover, high intraclass correlation coefficients (> 0.96) between the area of the manually traced contours and detected boundaries with the fast-marching method were obtained for both vessel layers over the whole database. The segmentation performance was also evaluated with point-to-point contour distances between segmentation results and manually traced contours. A good overall accuracy was obtained with average distances < 0.13 mm and maximum distances < 0.46 mm, indicating a good performance in regions lacking information or containing artifacts. Only small differences of less than a pixel (0.02 mm) were observed between the average distance metrics of each subgroup, which prove the segmentation consistency.
This new IVUS segmentation method provides accurate results that correspond well to the experts' manually traced contours, but requires much less manual interactions and is faster.
血管内超声(IVUS)是一种血管成像技术,用于研究动脉粥样硬化,因为它能够显示管腔和血管壁。生成血管的横截面图像,并提供血管壁的定量评估、关于粥样硬化病变性质的信息以及斑块形状和大小的信息。由于超声斑点、导管伪影或钙化阴影,对大型 IVUS 数据集的自动分析是一个重要的挑战。
提出了一种用于检测管腔和外血管壁边界的多界面 3D 快速行进方法。分割基于区域和轮廓信息的组合,即血管结构的灰度概率密度函数和强度梯度。管腔边界的检测是全自动的。分割方法包括对外血管壁边界的交互式初始化程序。该分割方法应用于从股动脉采集的 20 个体内 IVUS 数据集。该数据库包含三个亚组:在球囊血管成形术前(n=7)、介入后(n=7)和 1 年随访检查(n=6)采集的回缩。结果与由两位专家手动跟踪的超过 1500 个个体帧的验证轮廓进行了比较。
对于所有亚组,管腔和外血管壁的分割和验证轮廓的面积测量均未发现显著差异。此外,在整个数据库中,对于两个血管层,手动跟踪轮廓的面积与快速行进方法检测边界之间的高组内相关系数(>0.96)。还通过分割结果与手动跟踪轮廓之间的点到点轮廓距离评估了分割性能。在信息缺乏或存在伪影的区域,获得了良好的整体准确性,平均距离<0.13mm,最大距离<0.46mm,表明性能良好。观察到每个亚组的平均距离指标之间只有很小的差异(小于一个像素,即 0.02mm),证明了分割的一致性。
这种新的 IVUS 分割方法提供了与专家手动跟踪轮廓相对应的准确结果,但需要更少的手动交互并且速度更快。