Feng David, Kwock Lester, Lee Yueh, Taylor Russell M
Vis Data Anal. 2010 Jan 18;7530. doi: 10.1117/12.839818.
We present a system for visualizing magnetic resonance spectroscopy (MRS) data sets. Using MRS, radiologists generate multiple 3D scalar fields of metabolite concentrations within the brain and compare them to anatomical magnetic resonance imaging. By understanding the relationship between metabolic makeup and anatomical structure, radiologists hope to better diagnose and treat tumors and lesions. Our system consists of three linked visualizations: a spatial glyph-based technique we call Scaled Data-Driven Spheres, a parallel coordinates visualization augmented to incorporate uncertainty in the data, and a slice plane for accurate data value extraction. The parallel coordinates visualization uses specialized brush interactions designed to help users identify nontrivial linear relationships between scalar fields. We describe two novel contributions to parallel coordinates visualizations: linear function brushing and new axis construction. Users have discovered significant relationships among metabolites and anatomy by linking interactions between the three visualizations.
我们展示了一个用于可视化磁共振波谱(MRS)数据集的系统。通过MRS,放射科医生可以生成大脑内代谢物浓度的多个三维标量场,并将它们与解剖磁共振成像进行比较。通过了解代谢组成与解剖结构之间的关系,放射科医生希望能更好地诊断和治疗肿瘤及病变。我们的系统由三个相互关联的可视化组成:一种基于空间标志的技术,我们称之为缩放数据驱动球体;一个增强了数据不确定性的平行坐标可视化;以及一个用于精确提取数据值的切片平面。平行坐标可视化使用专门的画笔交互,旨在帮助用户识别标量场之间的重要线性关系。我们描述了对平行坐标可视化的两项新贡献:线性函数画笔和新轴构建。通过链接三个可视化之间的交互,用户发现了代谢物与解剖结构之间的重要关系。