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In-vivo segmentation and quantification of coronary lesions by optical coherence tomography images for a lesion type definition and stenosis grading

机译:通过光学相干断层扫描图像对病变类型进行定义和狭窄分级,对冠状动脉病变进行体内分割和定量

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摘要

Optical coherence tomography (OCT) is a catheter-based medical imaging technique that produces cross-sectional images of blood vessels. This technique is particularly useful for studying coronary atherosclerosis. In this paper, we present a new framework that allows a segmentation and quantification of OCT images of coronary arteries to define the plaque type and stenosis grading. These analyses are usually carried out on-line on the OCT-workstation where measuring is mainly operator-dependent and mouse-based. The aim of this program is to simplify and improve the processing of OCT images for mor-phometric investigations and to present a fast procedure to obtain 3D geometrical models that can also be used for external purposes such as for finite element simulations. The main phases of our toolbox are the lumen segmentation and the identification of the main tissues in the artery wall. We validated the proposed method with identification and segmentation manually performed by expert OCT readers. The method was evaluated on ten datasets from clinical routine and the validation was performed on 210 images randomly extracted from the pullbacks. Our results show that automated segmentation of the vessel and of the tissue components are possible off-line with a precision that is comparable to manual segmentation for the tissue component and to the proprietary-OCT-console for the lumen segmentation. Several OCT sections have been processed to provide clinical outcome.
机译:光学相干断层扫描(OCT)是一种基于导管的医学成像技术,可产生血管的横截面图像。该技术对于研究冠状动脉粥样硬化特别有用。在本文中,我们提出了一个新的框架,该框架允许对冠状动脉的OCT图像进行分割和量化,以定义斑块类型和狭窄分级。这些分析通常在OCT工作站上在线进行,其中的测量主要取决于操作员并且基于鼠标。该程序的目的是简化和改进用于形态计量学研究的OCT图像的处理,并提出一种快速的程序来获得3D几何模型,该模型也可用于外部用途,例如有限元模拟。我们工具箱的主要阶段是管腔分割和动脉壁主要组织的识别。我们通过专家OCT读者手动执行的识别和分段验证了所提出的方法。该方法在来自临床常规的十个数据集上进行了评估,并且对从回撤中随机抽取的210张图像进行了验证。我们的结果表明,可以离线自动进行血管和组织成分的分割,其精确度可与组织成分的手动分割和管腔分割的专有OCT控制台相媲美。一些OCT部分已经过处理以提供临床结果。

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