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Segmentation of arterial walls in intravascular ultrasound cross-sectional images using extremal region selection

机译:极端区域选择血管内超声横截面图像中动脉壁的分割

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摘要

Intravascular Ultrasound (IVUS) is an intra-operative imaging modality that facilitates observing and appraising the vessel wall structure of the human coronary arteries. Segmentation of arterial wall boundaries from the IVUS images is not only crucial for quantitative analysis of the vessel walls and plaque characteristics, but is also necessary for generating 3D reconstructed models of the artery. The aim of this study is twofold. Firstly, we investigate the feasibility of using a recently proposed region detector, namely Extremal Region of Extremum Level (EREL) to delineate the luminal and media-adventitia borders in IVUS frames acquired by 20 MHz probes. Secondly, we propose a region selection strategy to label two ERELs as lumen and media based on the stability of their textural information. We extensively evaluated our selection strategy on the test set of a standard publicly available dataset containing 326 IVUS Bmode images. We showed that in the best case, the average Hausdorff Distances (HD) between the extracted ERELs and the actual lumen and media were 0.22 mm and 0.45 mm, respectively. The results of our experiments revealed that our selection strategy was able to segment the lumen with 6 0: 3 mm HD to the gold standard even though the images contained major artifacts such as bifurcations, shadows, and side branches. Moreover, when there was no artifact, our proposed method was able to delineate media-adventitia boundaries with 0: 31 mmHD to the gold standard. Furthermore, our proposed segmentation method runs in time that is linear in the number of pixels in each frame. Based on the results of this work, by using a 20 MHz IVUS probe with controlled pullback, not only can we now analyze the internal structure of human arteries more accurately, but also segment each frame during the pullback procedure because of the low run time of our proposed segmentation method. (C) 2017 Elsevier B.V. All rights reserved.
机译:血管内超声(IVUS)是一种术中的帧内成像模态,其有助于观察和评估人冠状动脉的血管壁结构。来自IVUS图像的动脉壁边界的分割不仅对血管壁和斑块特性的定量分析至关重要,而且还需要产生动脉的3D重建模型所必需的。这项研究的目的是双重的。首先,我们研究了使用最近提出的区域检测器的可行性,即极值水平(EREL)的极值区域,以描绘由20MHz探针获得的IVUS帧中的腔内和介质 - 复发型边界。其次,我们提出了一个区域选择策略,以根据其纹理信息的稳定性标记两个渗透为漏洞和媒体。我们广泛地评估了包含326 IVUS BMode图像的标准公共数据集的测试集的选择策略。我们表明,在最佳情况下,提取的渗漏与实际内腔和介质之间的平均Hausdorff距离(HD)分别为0.22mm和0.45mm。我们的实验结果透露,我们的选择策略能够将内腔分段为60:3 mm HD的金标,即使图像包含主要的伪像,如分支,阴影和侧枝。此外,当没有伪影时,我们所提出的方法能够用0:31 mmhd描绘媒体 - 脑膜界限到金标准。此外,我们所提出的分割方法在每个帧中的像素数量的时间中运行。根据这项工作的结果,通过使用20 MHz IVUS探针,我们现在可以更准确地分析人类动脉的内部结构,而且由于低运行时间,还可以在回调程序期间分段我们提出的分割方法。 (c)2017 Elsevier B.v.保留所有权利。

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