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Automatic segmentation of coronary angiograms based on fuzzy inferring and probabilistic tracking

机译:基于模糊推理和概率跟踪的冠状动脉造影自动分割

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Background Segmentation of the coronary angiogram is important in computer-assisted artery motion analysis or reconstruction of 3D vascular structures from a single-plan or biplane angiographic system. Developing fully automated and accurate vessel segmentation algorithms is highly challenging, especially when extracting vascular structures with large variations in image intensities and noise, as well as with variable cross-sections or vascular lesions. Methods This paper presents a novel tracking method for automatic segmentation of the coronary artery tree in X-ray angiographic images, based on probabilistic vessel tracking and fuzzy structure pattern inferring. The method is composed of two main steps: preprocessing and tracking. In preprocessing, multiscale Gabor filtering and Hessian matrix analysis were used to enhance and extract vessel features from the original angiographic image, leading to a vessel feature map as well as a vessel direction map. In tracking, a seed point was first automatically detected by analyzing the vessel feature map. Subsequently, two operators [e.g., a probabilistic tracking operator (PTO) and a vessel structure pattern detector (SPD)] worked together based on the detected seed point to extract vessel segments or branches one at a time. The local structure pattern was inferred by a multi-feature based fuzzy inferring function employed in the SPD. The identified structure pattern, such as crossing or bifurcation, was used to control the tracking process, for example, to keep tracking the current segment or start tracking a new one, depending on the detected pattern. Results By appropriate integration of these advanced preprocessing and tracking steps, our tracking algorithm is able to extract both vessel axis lines and edge points, as well as measure the arterial diameters in various complicated cases. For example, it can walk across gaps along the longitudinal vessel direction, manage varying vessel curvatures, and adapt to varying vessel widths in situations with arterial stenoses and aneurysms. Conclusions Our algorithm performs well in terms of robustness, automation, adaptability, and applicability. In particular, the successful development of two novel operators, namely, PTO and SPD, ensures the performance of our algorithm in vessel tracking.
机译:背景技术冠状动脉血管造影术的细分在计算机辅助动脉运动分析或从单平面或双平面血管造影系统重建3D血管结构中很重要。开发全自动,精确的血管分割算法非常具有挑战性,尤其是在提取图像强度和噪声变化较大,横截面或血管病变可变的血管结构时。方法:本文基于概率血管跟踪和模糊结构模式推断,提出了一种在X射线血管造影图像中自动分割冠状动脉树的跟踪方法。该方法包括两个主要步骤:预处理和跟踪。在预处理过程中,使用多尺度Gabor滤波和Hessian矩阵分析来增强和提取原始血管造影图像中的血管特征,从而生成血管特征图以及血管方向图。在跟踪中,首先通过分析血管特征图自动检测种子点。随后,两个操作员[例如,概率跟踪操作员(PTO)和血管结构模式检测器(SPD)]基于检测到的种子点一起工作,以一次提取血管段或分支一个分支。通过SPD中使用的基于多特征的模糊推理功能来推断局部结构模式。所识别的结构模式(例如交叉或分叉)用于控制跟踪过程,例如,根据检测到的模式,继续跟踪当前段或开始跟踪新段。结果通过适当整合这些先进的预处理和跟踪步骤,我们的跟踪算法能够提取血管轴线和边缘点,并能在各种复杂情况下测量动脉直径。例如,它可以沿着血管的纵向方向跨过间隙,管理变化的血管曲率,并在有动脉狭窄和动脉瘤的情况下适应变化的血管宽度。结论我们的算法在鲁棒性,自动化,适应性和适用性方面表现良好。特别是,两个新颖的算子PTO和SPD的成功开发确保了我们算法在船舶跟踪中的性能。

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