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Sequential Monte Carlo tracking of the marginal artery by multiple cue fusion and random forest regression

机译:多线索融合和随机森林回归对边缘动脉的顺序蒙特卡洛追踪

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摘要

Given the potential importance of marginal artery localization in automated registration in computed tomography colonography (CC), we have devised a semi-automated method of marginal vessel detection employing sequential Monte Carlo tracking (also known as particle filtering tracking) by multiple cue fusion based on intensity, vesselness, organ detection, and minimum spanning tree information for poorly enhanced vessel segments. We then employed a random forest algorithm for intelligent cue fusion and decision making which achieved high sensitivity and robustness. After applying a vessel pruning procedure to the tracking results, we achieved statistically significantly improved precision compared to a baseline Hessian detection method (2.7% versus 75.2%, p < 0.001). This method also showed statistically significantly improved recall rate compared to a 2-cue baseline method using fewer vessel cues (30.7% versus 67.7%, p < 0.001). These results demonstrate that marginal artery localization on CTC is feasible by combining a discriminative classifier (i.e., random forest) with a sequential Monte Carlo tracking mechanism. In so doing, we present the effective application of an anatomical probability map to vessel pruning as well as a supplementary spatial coordinate system for colonic segmentation and registration when this task has been confounded by colon lumen collapse. Published by Elsevier B.V.
机译:考虑到边缘动脉定位在计算机断层扫描结肠造影(CC)中自动配准中的潜在重要性,我们设计了一种半自动化的边缘血管检测方法,该方法采用基于多个提示融合的顺序蒙特卡洛跟踪(也称为粒子过滤跟踪),基于强度,血管分布,器官检测和最小生成树信息,用于增强的血管段。然后,我们采用随机森林算法进行智能提示融合和决策,从而实现了高灵敏度和鲁棒性。在对跟踪结果应用容器修剪程序之后,与基线Hessian检测方法相比,我们在统计学上显着提高了精度(2.7%对75.2%,p <0.001)。与使用较少血管提示的2线索基线方法相比,该方法还显示出统计学上显着提高的召回率(30.7%对67.7%,p <0.001)。这些结果表明,通过将判别式分类器(即随机森林)与顺序蒙特卡洛跟踪机制相结合,可以在CTC上进行边缘动脉定位。通过这样做,我们提出了将解剖概率图有效地应用于血管修剪的方法,以及当结肠腔塌陷混淆了这项任务时用于结肠分割和定位的补充空间坐标系。由Elsevier B.V.发布

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