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Evaluation of segmentation algorithms for vessel wall detection in echo particle image velocimetry

机译:回波粒子图像测速中用于血管壁检测的分割算法的评价

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Recent in-vitro and in-vivo validation studies confirmed the accuracy of echo particle image velocimetry (echo PIV), a simple non-invasive means of measuring multi-component blood velocity vectors. Echo PIV should also be useful for direct measurement of wall shear stress (WSS) in clinical studies. However, calculation of WSS requires accurate delineation of vessel walls in ultrasound images, which may be problematic when conventional segmentation techniques are used. In this paper, we proposed two methods for segmenting contrast enhanced B-mode images. The first is based on the intensity profile of ultrasound images, termed intensity-based edge detection (IBED) and the second based on the movement of microbubbles, termed movement-based quadratic difference (MBQD). The parameters related with the two methods were optimized over large sets of microbubble images acquired from human carotid vessels using an echo PIV system (Illumasonix LLC, Boulder, CO). A validation study on the two algorithms was carried out against manual delineations on both common carotid artery (CCA) and carotid bifurcation images, with 20 frames for each group. The inter-observer variability of three manual delineations, in pixels (about 80 ¿m/pixel), was 0.9±0.4, 1.3±0.6, 1.3±0.6 on CCA images, and 2.5±1.0, 3.9±1.1, 2.3±1.1 on bifurcation images. The absolute difference (mean±SD) between each computer-generated contour and the ground truths, taken as the average of three manual delineations, were 1.3±0.8, 3.8±0.8, 5.3±0.5 on CCA images, and 2.3±0.9, 4.6±1.3, 6.3±0.6 on bifurcation images, for the MBQD, IBED and active contour methods, respectively. The MBQD method shows comparable performance with manual delineations on particle images even with poor intima-media layer quality.
机译:最近的体外和体内验证研究证实了回声粒子图像速度(回波PIV)的准确性,一种测量多分量血液速度向量的简单的非侵入式手段。回波PIV还应用于直接测量临床研究中的壁剪应力(WSS)。然而,WSS的计算需要精确描绘超声图像中的血管壁,当使用传统的分段技术时可能是有问题的。在本文中,我们提出了两种用于分割对比增强B模式图像的方法。首先基于超声图像的强度分布,基于基于强度的边缘检测(IBED)和基于微泡的运动,称为基于移动的二次差(MBQD)。使用回声PIV系统(Illumasonix LLC,Boulder,Co)从人类颈动脉血管获取的大组微泡图像上优化了与两种方法相关的参数。对两种算法的验证研究是针对常见的颈动脉(CCA)和颈动脉分叉图像的手动划分,每组20帧。三种手动描绘的观察者间变异性(以像素为单位)(约80±80°,¿m/ pixel)为0.9°,±0.4,1.3°,±0.6 CCA图像上的1.3°,±0.6,2.5°,±1.0,3.9°,±1.1,2.3ƒÂ,±1.1,分叉图片。每台计算机生成的轮廓和地面真相之间的绝对差异(MESALöÂÃ,±SD)作为三个手动描绘的平均值为1.3°,±0.8,3.8àCCA图像上的Ã,±0.8,5.3±0.8,5.3±0.3,±0.5,2.3°,±0.9,4.6°,±1.3,6.3äÂ,分别为MBQD,IBED和主动轮廓方法的分叉图像上的±0.6。 MBQD方法表明,即使内部介质层质量差,颗粒图像的手动描绘也是相当的性能。

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