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Automatic analysis of bioresorbable vascular scaffolds in intravascular optical coherence tomography images

机译:在血管内光学相干断层扫描图像中自动分析可生物吸收的血管支架

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摘要

The bioresorbable vascular scaffold (BVS) is a new generation of bioresorbable scaffold (BRS) for the treatment of coronary artery disease. A potential challenge of BVS is malapposition, which may possibly lead to late stent thrombosis. It is therefore important to conduct malapposition analysis right after stenting. Since an intravascular optical coherence tomography (IVOCT) image sequence contains thousands of BVS struts, manual analysis is labor intensive and time consuming. Computer-based automatic analysis is an alternative, but faces some difficulties due to the interference of blood artifacts and the uncertainty of the struts number, position and size. In this paper, we propose a novel framework for a struts malapposition analysis that breaks down the problem into two steps. Firstly, struts are detected by a cascade classifier trained by AdaBoost and a region of interest (ROI) is determined for each strut to completely contain it. Then, strut boundaries are segmented within ROIs through dynamic programming. Based on the segmentation result, malapposition analysis is conducted automatically. Tested on 7 pullbacks labeled by an expert, our method correctly detected 91.5% of 5821 BVS struts with 12.1% false positives. The average segmentation Dice coefficient for correctly detected struts was 0.81. The time consumption for a pullback is 15 sec on average. We conclude that our method is accurate and efficient for BVS strut detection and segmentation, and enables automatic BVS malapposition analysis in IVOCT images.
机译:生物可吸收血管支架(BVS)是用于治疗冠状动脉疾病的新一代生物可吸收支架(BRS)。 BVS的潜在挑战是贴壁不良,这可能导致晚期支架血栓形成。因此,在置入支架后立即进行贴壁不良分析很重要。由于血管内光学相干断层扫描(IVOCT)图像序列包含成千上万的BVS支杆,因此手动分析非常耗费劳力且耗时。基于计算机的自动分析是一种替代方法,但是由于血液伪影的干扰以及支柱数量,位置和大小的不确定性而面临一些困难。在本文中,我们提出了一种用于支杆错位分析的新颖框架,该框架将问题分解为两个步骤。首先,由AdaBoost训练的级联分类器检测支杆,并为每个支杆确定感兴趣区域(ROI),以完全容纳支杆。然后,通过动态编程在ROI内分割支杆边界。根据分割结果,自动进行贴壁不良分析。经过专家标记的7种回调测试,我们的方法正确检测到了5821个BVS支杆中的91.5%,假阳性率为12.1%。正确检测到的支杆的平均分割Dice系数为0.81。拉回的平均时间为15秒。我们得出的结论是,我们的方法对于BVS支杆检测和分割是准确而有效的,并且可以在IVOCT图像中自动进行BVS贴壁不良分析。

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