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首页> 外文期刊>Medical Physics >Uncluttered single-image visualization of the abdominal aortic vessel tree: method and evaluation.
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Uncluttered single-image visualization of the abdominal aortic vessel tree: method and evaluation.

机译:腹部主动脉血管树的整洁的单图像可视化:方法和评估。

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PURPOSE: The authors develop a method to visualize the abdominal aorta and its branches, obtained by CT or MR angiography, in a single 2D stylistic image without overlap among branches. METHODS: The abdominal aortic vasculature is modeled as an articulated object whose underlying topology is a rooted tree. The inputs to the algorithm are the 3D centerlines of the abdominal aorta, its branches, and their associated diameter information. The visualization problem is formulated as an optimization problem that finds a spatial configuration of the bounding boxes of the centerlines most similar to the projection of the input into a given viewing direction (e.g., anteroposterior), while not introducing intersections among the boxes. The optimization algorithm minimizes a score function regarding the overlap of the bounding boxes and the deviation from the input. The output of the algorithm is used to produce a stylistic visualization, made of the 2D centerlines modulated by the associated diameter information, on a plane. The authors performed a preliminary evaluation by asking three radiologists to label 366 arterial branches from the 30 visualizations of five cases produced by the method. Each of the five patients was presented in six different variant images, selected from ten variants with the three lowest and three highest scores. For each label, they assigned confidence and distortion ratings (low/medium/high). They studied the association between the quantitative metrics measured from the visualization and the subjective ratings by the radiologists. RESULTS: All resulting visualizations were free from branch overlaps. Labeling accuracies of the three readers were 93.4%, 94.5%, and 95.4%, respectively. For the total of 1098 samples, the distortion ratings were low: 77.39%, medium: 10.48%, and high: 12.12%. The confidence ratings were low: 5.56%, medium: 16.50%, and high: 77.94%. The association study shows that the proposed quantitative metrics can predict a reader's subjective ratings and suggests that the visualization with the lowest score should be selected for readers. CONCLUSIONS: The method for eliminating misleading false intersections in 2D projections of the abdominal aortic tree conserves the overall shape and does not diminish accurate identifiability of the branches.
机译:目的:作者开发了一种方法,可在单个2D样式图像中可视化通过CT或MR血管造影术获得的腹主动脉及其分支,分支之间没有重叠。方法:腹主动脉脉管系统被建模为一个关节对象,其基础拓扑结构是一棵有根的树。该算法的输入是腹主动脉的3D中心线,其分支及其相关的直径信息。可视化问题被表述为一种优化问题,该优化问题找到了中心线的边界框的空间配置,该空间配置与输入在给定查看方向(例如,前后)上的投影最相似,而没有在框之间引入交点。优化算法将关于边界框的重叠和与输入的偏差的得分函数最小化。该算法的输出用于在平面上生成由2D中心线构成的样式可视化效果,该2D中心线由关联的直径信息调制。作者进行了初步评估,要求三名放射科医生从该方法产生的五例病例的30个可视化图像中标记366个动脉分支。五位患者中的每位都出现在六个不同的变体图像中,这些图像是从十个变体中选出的,三个最低和三个最高分。他们为每个标签分配了置信度和失真等级(低/中/高)。他们研究了通过可视化测量的量化指标与放射科医生的主观评分之间的关​​联。结果:所有得到的可视化没有分支重叠。三个阅读器的标签准确性分别为93.4%,94.5%和95.4%。对于总共1098个样本,失真评级为低:77.39%,中:10.48%,高:12.12%。置信等级为低:5.56%,中:16.50%,高:77.94%。关联研究表明,提出的量化指标可以预测读者的主观评分,并建议应为读者选择得分最低的可视化效果。结论:用于消除腹主动脉树的2D投影中的误导性错误交集的方法可以保留整体形状,并且不会降低分支的准确可识别性。

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