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A Unified Minimal Path Tracking and Topology Characterization Approach for Vascular Analysis

机译:用于血管分析的统一的最小路径跟踪和拓扑表征方法

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We present a unified coarse-to-fine approach for extracting the medial axis representations (centerlines) of human vasculature in contrast enhanced (CE)-CTA/MRA. The proposed method constitutes two separate analysis stages that are successively applied (and repeated) for a refined extraction. The former stage involves the use of a graph-based optimization algorithm that identifies the minimum-cost paths between user-specified seed points. The costs of all feasible paths are efficiently computed via the medialness filter, which is a contrast- and scale-invariant local operator sensitive to the presence of tubular structures. Nonetheless, image noise and the presence of nearby blood vessels can affect the quality of detection and delineation. In the latter stage, we thereby employ a novel multiscale orientation descriptor so as to guide/stop additional minimal path extraction steps. Specifically, the descriptor is designed to classify a point of interest as vessel or non-vessel, as well as to obtain a reliable estimate of the number and directions of the vascular segments (branches) at a vessel point. Our method improves the accuracy of extraction by robustly identifying critical configurations such as bifurcations, endpoints, or non-vessel points, and thereby delineating/eliminating missing/spurious vessel branches.
机译:我们提出了一种从粗到细的统一方法,用于在对比增强(CE)-CTA / MRA中提取人类脉管系统的中轴表示(中心线)。所提出的方法包括两个独立的分析阶段,这些阶段相继应用(并重复)以进行精炼提取。前阶段涉及使用基于图形的优化算法,该算法可识别用户指定的种子点之间的最小成本路径。所有可行路径的成本可通过中间性过滤器有效地计算,该过滤器是对管状结构的存在敏感的对比度和比例不变的本地操作员。但是,图像噪声和附近血管的存在会影响检测和描绘的质量。在后面的阶段中,我们将采用一种新颖的多尺度取向描述符,以指导/停止其他最小路径提取步骤。具体地,描述符被设计为将关注点分类为血管或非血管,以及获得对血管点处的血管段(分支)的数量和方向的可靠估计。我们的方法通过稳健地识别关键构型(例如分叉,端点或非血管点),从而描绘/消除缺失/伪造的血管分支,从而提高了提取的准确性。

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