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Segmentation to Label: Automatic Coronary Artery Labeling from Mask Parcellation

机译:标签的分割:来自掩模局部的自动冠状动脉标记

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Automatic and accurate coronary artery labeling technique from CCTA can greatly reduce clinician's manual efforts and benefit large-scale data analysis. Current line of research falls into two general categories: knowledge-based methods and learning-based techniques. However, no matter in which fashion it is developed, the formation of problem finally attributes to tree-structured centerline classification and requires hand-crafted features. Here, instead we present a new concise, effective and flexible framework for automatic coronary artery labeling by modeling the task as coronary artery parsing task. An intact pipeline is proposed and two paralleled sub-modules are further designed to consume volumetric image and unordered point cloud correspondingly. Finally, a self-contained loss is proposed to supervise labeling process. At experiment section, we conduct comprehensive experiments on collected 526 CCTA scans and exhibit stable and promising results.
机译:CCTA的自动和准确的冠状动脉标记技术可以大大减少临床医生的手动努力并使大规模数据分析有益。目前的研究系列分为两种一般类别:基于知识的方法和基于学习的技术。但是,无论是如何开发的时尚,问题最终都属于树木结构的中心线分类,并且需要手工制作的功能。在这里,我们通过将任务建模作为冠状动脉解析任务来提出一种新的简洁,有效和灵活的框架,可用于自动冠状动脉标签。提出了完整的管道,并且两个并行子模块进一步设计成相应地消耗体积图像和无序点云。最后,提出了一种自给自足的损失来监督标签过程。在实验部门,我们对收集的526个CCTA扫描进行了综合实验,表现出稳定和有前途的结果。

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