InkVis: A High-Particle-Count Approach for Visualization of Phase-Contrast Magnetic Resonance Imaging Data

Niels H. L. C. de Hoon, K. Lawonn, A. Jalba, E. Eisemann, A. Vilanova
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引用次数: 2

Abstract

Phase-Contrast Magnetic Resonance Imaging (PC-MRI) measures volumetric and time-varying blood flow data, unsurpassed in quality and completeness. Such blood-flow data have been shown to have the potential to improve both diagnosis and risk assessment of cardiovascular diseases (CVDs) uniquely. Typically PC-MRI data is visualized using stream- or pathlines. However, time-varying aspects of the data, e.g., vortex shedding, breakdown, and formation, are not sufficiently captured by these visualization techniques. Experimental flow visualization techniques introduce a visible medium, like smoke or dye, to visualize flow aspects including time-varying aspects. We propose a framework that mimics such experimental techniques by using a high number of particles. The framework offers great flexibility which allows for various visualization approaches. These include common traditional flow visualizations, but also streak visualizations to show the temporal aspects, and uncertainty visualizations. Moreover, these patient-specific measurements suffer from noise artifacts and a coarse resolution, causing uncertainty. Traditional flow visualizations neglect uncertainty and, therefore, may give a false sense of certainty, which can mislead the user yielding incorrect decisions. Previously, the domain experts had no means to visualize the effect of the uncertainty in the data. Our framework has been adopted by domain experts to visualize the vortices present in the sinuses of the aorta root showing the potential of the framework. Furthermore, an evaluation among domain experts indicated that having the option to visualize the uncertainty contributed to their confidence on the analysis.
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InkVis:一种用于相位对比磁共振成像数据可视化的高粒子计数方法
相衬磁共振成像(PC-MRI)测量容量和时变的血流数据,在质量和完整性方面无与伦比。这种血流数据已被证明具有独特的改善心血管疾病(cvd)诊断和风险评估的潜力。通常,PC-MRI数据使用流线或路径进行可视化。然而,这些可视化技术并不能充分捕捉到数据的时变方面,例如漩涡脱落、破裂和形成。实验流动可视化技术引入一种可见介质,如烟雾或染料,以可视化流动方面,包括时变方面。我们提出了一个框架,通过使用大量的粒子来模拟这种实验技术。该框架提供了很大的灵活性,允许使用各种可视化方法。这些包括常见的传统流可视化,也包括显示时间方面的条纹可视化和不确定性可视化。此外,这些针对患者的测量受到噪声伪影和粗分辨率的影响,导致不确定性。传统的流可视化忽略了不确定性,因此,可能会给人一种错误的确定性,这可能会误导用户做出错误的决定。以前,领域专家没有办法可视化数据中不确定性的影响。我们的框架已被领域专家采用,以可视化主动脉根部鼻窦中存在的漩涡,显示该框架的潜力。此外,领域专家之间的评估表明,拥有可视化不确定性的选项有助于他们对分析的信心。
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