Quantification of coronary artery Stenosis by Area Stenosis from cardiac CT angiography.

Jiayin Zhou, Weimin Huang, Yanling Chi, Yuping Duan, Liang Zhong, Xiaodan Zhao, Junmei Zhang, Wei Xiong, Ru San Tan, Kyaw Kyar Toe
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引用次数: 1

Abstract

Non-invasive cardiac computed tomography angiography (CTA) is widely used to assess coronary artery stenosis and give clinical decision-making support to clinicians. The severity of stenosis lesion is commonly graded by a range of percent Diameter Stenosis (DS), which can introduce false positive diagnoses or over-estimation, triggering unnecessary further procedures. In this paper, a system and the associate methods to quantify stenosis by the percent Area Stenosis (AS) from cardiac CTA is presented. In the process, coronary artery tree is segmented and the centerline is extracted by Hessian filtering and the minimal path method. After a serial of 2D cross-sectional artery images along the artery centerline are obtained, lumen areas are segmented by ellipse-fitting with deformable models, and consequently to compute the lesion's AS. Experimental results on 5 CTA data sets show that compared to DS, AS better correlates to the reference standard for stenosis quantification, suggesting the efficacy of the proposed system.
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冠状动脉狭窄的CT造影定量分析。
无创心脏计算机断层血管造影(CTA)广泛用于评估冠状动脉狭窄,为临床医生提供临床决策支持。狭窄病变的严重程度通常以狭窄直径百分比(DS)来分级,这可能会导致假阳性诊断或高估,引发不必要的进一步手术。本文介绍了一种通过心脏CTA测量面积狭窄百分比(AS)来量化狭窄的系统和相关方法。在此过程中,对冠状动脉树进行分割,并采用Hessian滤波和最小路径法提取中心线。在获得一系列沿动脉中心线的二维动脉横截面图像后,使用可变形模型对管腔区域进行椭圆拟合,从而计算病变的AS。在5组CTA数据集上的实验结果表明,与DS相比,AS与狭窄量化参考标准的相关性更好,表明了所提出系统的有效性。
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