2.5D Geometric Mapping of Aortic Blood Flow Data for Cohort Visualization

B. Behrendt, David Pleuss-Engelhardt, M. Gutberlet, B. Preim
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引用次数: 3

Abstract

Four-dimensional phase-contrast magnetic resonance imaging (4D PC-MRI) allows for a non-invasive acquisition of timeresolved blood flow measurements, providing a valuable aid to clinicians and researchers seeking a better understanding of the interrelation between pathologies of the cardiovascular system and changes in blood flow patterns. Such research requires extensive analysis and comparison of blood flow data within and between different patient cohorts representing different age groups, genders and pathologies. However, a direct comparison between large numbers of datasets is not feasible due to the complexity of the data. In this paper, we present a novel approach to normalize aortic 4D PC-MRI datasets to enable qualitative and quantitative comparisons. We define normalized coordinate systems for the vessel surface as well as the intravascular volume, allowing for the computation of quantitative measures between datasets for both hemodynamic surface parameters as well as flow or pressure fields. To support the understanding of the geometric deformations involved in this process, individual transformations can not only be toggled on or off, but smoothly transitioned between anatomically faithful and fully abstracted states. In an informal interview with an expert radiologist, we confirm the usefulness of our technique. We also report on initial findings from exploring a database of 138 datasets consisting of both patient and healthy volunteers. CCS Concepts • Human-centered computing → Visualization toolkits; Information visualization;
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2.5D主动脉血流数据几何映射用于队列可视化
四维相位对比磁共振成像(4D PC-MRI)允许无创获取时间分辨率的血流测量,为临床医生和研究人员提供有价值的帮助,以更好地了解心血管系统病理与血流模式变化之间的相互关系。这类研究需要对代表不同年龄组、性别和病理的不同患者队列内部和之间的血流数据进行广泛的分析和比较。然而,由于数据的复杂性,在大量数据集之间进行直接比较是不可行的。在本文中,我们提出了一种新的方法来规范化主动脉4D PC-MRI数据集,以便进行定性和定量比较。我们定义了血管表面和血管内体积的归一化坐标系统,允许在血流动力学表面参数以及流量或压力场的数据集之间计算定量测量。为了支持对这一过程中涉及的几何变形的理解,个体转换不仅可以打开或关闭,而且可以在解剖学忠实和完全抽象的状态之间顺利过渡。在与放射科专家的非正式访谈中,我们确认了我们技术的有效性。我们还报告了对由患者和健康志愿者组成的138个数据集的数据库进行探索的初步发现。CCS概念•以人为中心的计算→可视化工具包;信息可视化;
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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