首页> 外文会议>Physiology, Function, and Structure from Medical Images pt.1; Progress in Biomedical Optics and Imaging; vol.7,no.29 >Quantitative analysis of vascular dimension and plaque composition in coronary multidetector computed tomography images
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Quantitative analysis of vascular dimension and plaque composition in coronary multidetector computed tomography images

机译:冠状动脉多探测器计算机断层扫描图像中血管尺寸和斑块成分的定量分析

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The noninvasive assessment of coronary atherosclerosis holds great promise for the future of cardiovascular medicine, and multidetector computed tomography (MDCT) has recently taken the lead in this area. Earlier studies have shown the ability of MDCT to visualize the coronary lumen and various types of atherosclerotic plaque. The aims of this project are to design, implement, and validate a complete system for the automated, quantitative analysis of coronary MDCT images. The developed system uses graph algorithms and knowledge-based cost functions to automatically segment the lumen and wall, and then uses pattern classification techniques to identify and quantify the tissue types found within the detected vascular wall. The system has been validated in comparison with expert tracings and labels, as well as in comparison with intravascular ultrasound (IVUS). In the former, the radial position of the lumen and adventitia were compared at 360 corresponding angular locations in 299 vascular cross sections (from 13 vessels in 5 patients: 5 RCA, 4 LAD, 4 LCX). Results show a border positioning error of 0.150 ± 0.090 mm unsigned / 0.007 ± 0.001 mm signed for the lumen, and 0.210 ± 0.120 mm unsigned / 0.020 ± 0.030 mm signed for the vessel wall. In the comparison with IVUS, the luminal and vascular cross sectional areas were compared in 7 vessels; good correlation was shown for both the lumen (R=0.83) and the vessel wall (R=0.76). The plaque characterization algorithm correctly classified 92% of calcined plaques and 87% of non-calcified plaques.
机译:冠状动脉粥样硬化的非侵入性评估为心血管医学的未来带来了广阔的前景,最近,多探测器计算机断层扫描(MDCT)在这一领域处于领先地位。早期的研究表明,MDCT能够可视化冠状动脉腔和各种类型的动脉粥样硬化斑块。该项目的目的是设计,实施和验证用于冠脉MDCT图像的自动化,定量分析的完整系统。开发的系统使用图形算法和基于知识的成本函数自动分割内腔和壁,然后使用模式分类技术来识别和量化在检测到的血管壁内发现的组织类型。该系统已与专家追踪和标签进行了比较,并与血管内超声(IVUS)进行了比较。在前者中,在299个血管横截面中360个相应的角位置处比较了管腔和外膜的径向位置(来自5例患者的13个血管:5个RCA,4个LAD,4个LCX)。结果显示,管腔的边界定位误差为0.150±0.090 mm(无符号)/ 0.007±0.001 mm(无符号),血管壁的边界定位误差为0.210±0.120 mm(无符号)/ 0.020±0.030 mm。与IVUS的比较,比较了7个血管的腔和血管的横截面积。内腔(R = 0.83)和血管壁(R = 0.76)均显示出良好的相关性。斑块特征化算法正确分类了92%的煅烧斑块和87%的非钙化斑块。

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