Meyer-Spradow Jennis, Stegger Lars, Döring Christian, Ropinski Timo, Hinrichs Klaus
Visualization and Computer Graphics Research Group (VisCG), University of Münster.
IEEE Trans Vis Comput Graph. 2008 Nov-Dec;14(6):1499-506. doi: 10.1109/TVCG.2008.136.
Myocardial perfusion imaging with single photon emission computed tomography (SPECT) is an established method for the detection and evaluation of coronary artery disease (CAD). State-of-the-art SPECT scanners yield a large number of regional parameters of the left-ventricular myocardium (e.g., blood supply at rest and during stress, wall thickness, and wall thickening during heart contraction) that all need to be assessed by the physician. Today, the individual parameters of this multivariate data set are displayed as stacks of 2D slices, bull's eye plots, or, more recently, surfaces in 3D, which depict the left-ventricular wall. In all these visualizations, the data sets are displayed side-by-side rather than in an integrated manner, such that the multivariate data have to be examined sequentially and need to be fused mentally. This is time consuming and error-prone. In this paper we present an interactive 3D glyph visualization, which enables an effective integrated visualization of the multivariate data. Results from semiotic theory are used to optimize the mapping of different variables to glyph properties. This facilitates an improved perception of important information and thus an accelerated diagnosis. The 3D glyphs are linked to the established 2D views, which permit a more detailed inspection, and to relevant meta-information such as known stenoses of coronary vessels supplying the myocardial region. Our method has demonstrated its potential for clinical routine use in real application scenarios assessed by nuclear physicians.
单光子发射计算机断层扫描(SPECT)心肌灌注成像是检测和评估冠状动脉疾病(CAD)的既定方法。最先进的SPECT扫描仪可生成大量左心室心肌的区域参数(例如,静息和负荷状态下的血液供应、壁厚以及心脏收缩期间的壁增厚情况),所有这些参数都需要医生进行评估。如今,这个多变量数据集的各个参数以二维切片堆栈、靶心图或最近的三维表面形式显示,这些形式描绘了左心室壁。在所有这些可视化中,数据集是并排显示的,而不是以集成的方式显示,因此多变量数据必须依次检查并且需要在脑海中进行融合。这既耗时又容易出错。在本文中,我们提出了一种交互式三维符号可视化方法,它能够对多变量数据进行有效的集成可视化。符号学理论的结果被用于优化不同变量到符号属性的映射。这有助于更好地感知重要信息,从而加快诊断速度。三维符号与既定的二维视图相关联,二维视图允许进行更详细的检查,并且与相关的元信息相关联,例如供应心肌区域的冠状动脉已知狭窄情况。我们的方法已在核医学医师评估的实际应用场景中证明了其在临床常规使用中的潜力。