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Adaptive particle filtering for coronary artery segmentation from 3D CT angiograms

机译:从3D CT血管造影图中对冠状动脉分割进行自适应粒子滤波

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摘要

Considering vessel segmentation as an iterative tracking process, we propose a new Bayesian tracking algorithm based on particle filters for the delineation of coronary arteries from 3D computed tomography angiograms. It relies on a medial-based geometric model, learned by kernel density estimation, and on a simple, fast and discriminative flux-based image feature. Combining a new sampling scheme and a mean-shift clustering for bifurcation detection and result extraction leads to an efficient and robust method. Results on a database of 61 volumes demonstrate the effectiveness of the proposed approach, with an overall Dice coefficient of 86.2% (and 92.5% on clinically relevant vessels), and a good accuracy of centerline position and radius estimation (errors below the image resolution).
机译:考虑到血管分割是一个迭代的跟踪过程,我们提出了一种新的基于粒子滤波器的贝叶斯跟踪算法,用于从3D计算机断层扫描血管造影图中描绘出冠状动脉。它依赖于通过内核密度估计学习的基于中间的几何模型,以及基于简单,快速和可辨别的基于通量的图像特征。将新的采样方案与均值漂移聚类相结合以进行分叉检测和结果提取,可产生一种高效且鲁棒的方法。 61卷的数据库中的结果证明了该方法的有效性,总体Dice系数为86.2%(在临床相关血管上为92.5%),中心线位置和半径估计的准确性很高(误差低于图像分辨率) 。

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