Video segmentation of the common carotid artery intima media complex

C. Loizou, T. Kasparis, P. Papakyriakou, L. Christodoulou, M. Pantziaris, C. Pattichis
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引用次数: 10

Abstract

The correct identification of the intima-media thickness (IMT) of the common carotid artery (CCA) walls has a high clinical relevance as it represents one of the most reliable predictor for future cardiovascular events. In this work we propose and evaluate an integrated system for the segmentation of the intima-media complex (IMC) and the lumen diameter in longitudinal ultrasound video of the CCA based on normalization, speckle reduction filtering (with a first order statistics filter) and snakes segmentation. The algorithm is initialized in the first video frame of the cardiac cycle by an automated initialization procedure and the borders of the far wall and near wall of the CCA are estimated. The IMC and the carotid diameter are then segmented automatically in the consecutive video frames for one cardiac cycle. The proposed algorithm was evaluated on 10 longitudinal ultrasound B-mode videos of the CCA and is compared with the manual tracings of a neurovascular expert, for every 20 frames in a time span of 3-5 seconds, covering in general 1-2 cardiac cycles. The algorithm estimated an IMTmean± standard deviation of (0.72±0.22) mm while the manual results were (0.70±0.19). The mean maximum and minimum diameter was (7.08±1.37) mm and (6.53±1.13) mm respectively. The results were validated based on statistical measures and univariate statistical analysis. It was shown that there was no significant difference between the snakes segmentation measurements and the manual measurements. The proposed integrated system could successfully segment the IMC in ultrasound CCA video sequences thus complementing manual measurements.
颈总动脉中内膜复合体的视频分割
正确识别颈总动脉(CCA)壁的内膜-中膜厚度(IMT)具有很高的临床相关性,因为它代表了未来心血管事件最可靠的预测因素之一。在这项工作中,我们提出并评估了一个基于归一化、斑点减少滤波(带有一阶统计滤波器)和蛇形分割的CCA纵向超声视频中内膜-中膜复合体(IMC)和管腔直径分割的集成系统。该算法通过自动初始化程序在心动周期的第一视频帧中初始化,并估计CCA远壁和近壁的边界。然后在一个心动周期的连续视频帧中自动分割颈动脉内径和颈动脉直径。在CCA的10个纵向超声b模视频上对所提出的算法进行了评估,并与神经血管专家的手动跟踪进行了比较,每20帧在3-5秒的时间跨度内,通常覆盖1-2个心动周期。该算法估计的IMTmean±标准偏差为(0.72±0.22)mm,而人工结果为(0.70±0.19)mm。平均最大、最小直径分别为(7.08±1.37)mm和(6.53±1.13)mm。通过统计测量和单变量统计分析对结果进行验证。结果表明,蛇的分割结果与人工分割结果无显著差异。所提出的集成系统可以成功地分割超声CCA视频序列中的IMC,从而补充了人工测量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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