首页> 外文期刊>Computerized Medical Imaging and Graphics: The Official Jounal of the Computerized Medical Imaging Society >Automatic segmentation and 3D reconstruction of intravascular ultrasound images for a fast preliminar evaluation of vessel pathologies.
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Automatic segmentation and 3D reconstruction of intravascular ultrasound images for a fast preliminar evaluation of vessel pathologies.

机译:血管内超声图像的自动分割和3D重建,可快速初步评估血管病变。

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摘要

Intravascular ultrasound (IVUS) imaging is used along with X-ray coronary angiography to detect vessel pathologies. Manual analysis of IVUS images is slow and time-consuming and it is not feasible for clinical purposes. A semi-automated method is proposed to generate 3D reconstructions from IVUS video sequences, so that a fast diagnose can be easily done, quantifying plaque length and severity as well as plaque volume of the vessels under study. The methodology described in this work has four steps: a pre-processing of IVUS images, a segmentation of media-adventitia contour, a detection of intima and plaque and a 3D reconstruction of the vessel. Preprocessing is intended to remove noise from the images without blurring the edges. Segmentation of media-adventitia contour is achieved using active contours (snakes). In particular, we use the gradient vector flow (GVF) as external force for the snakes. The detection of lumen border is obtained taking into account gray-level information of the inner part ofthe previously detected contours. A knowledge-based approach is used to determine which level of gray corresponds statistically to the different regions of interest: intima, plaque and lumen. The catheter region is automatically discarded. An estimate of plaque type is also given. Finally, 3D reconstruction of all detected regions is made. The suitability of this methodology has been verified for the analysis and visualization of plaque length, stenosis severity, automatic detection of the most problematic regions, calculus of plaque volumes and a preliminary estimation of plaque type obtaining for automatic measures of lumen and vessel area an average error smaller than 1mm(2) (equivalent aproximately to 10% of the average measure), for calculus of plaque and lumen volume errors smaller than 0.5mm(3) (equivalent approximately to 20% of the average measure) and for plaque type estimates a mismatch of less than 8% in the analysed frames.
机译:血管内超声(IVUS)成像与X射线冠状动脉造影术一起使用可检测血管病变。手动分析IVUS图像速度慢且费时,并且在临床上不可行。提出了一种半自动化的方法,可以从IVUS视频序列生成3D重建,以便可以轻松进行快速诊断,量化所研究血管的斑块长度和严重程度以及斑块体积。这项工作中描述的方法包括四个步骤:IVUS图像的预处理,中膜-外膜轮廓的分割,内膜和斑块的检测以及血管的3D重建。预处理旨在消除图像中的噪声而不会模糊边缘。使用活动轮廓(蛇形)可实现中膜-外膜轮廓的分割。特别是,我们将梯度矢量流(GVF)用作蛇的外力。考虑到先前检测到的轮廓的内部的灰度级信息来获得管腔边界的检测。基于知识的方法用于确定哪个灰度级别在统计上对应于感兴趣的不同区域:内膜,斑块和管腔。导管区域会自动丢弃。还给出了噬菌斑类型的估计。最后,对所有检测到的区域进行3D重建。已经验证了该方法的适用性,用于分析和可视化斑块长度,狭窄严重程度,自动检测最有问题的区域,斑块体积的结石以及初步估计斑块类型,以自动测量平均内腔和血管面积小于1mm(2)的误差(相当于平均测量值的10%),牙垢的结石和管腔体积误差小于0.5mm(3)(大约等于平均测量值的20%)以及噬斑类型估计在分析的帧中的不匹配率小于8%。

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