Aardvark: Composite Visualizations of Trees, Time-Series, and Images

Devin Lange;Robert Judson-Torres;Thomas A. Zangle;Alexander Lex
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Abstract

How do cancer cells grow, divide, proliferate, and die? How do drugs influence these processes? These are difficult questions that we can attempt to answer with a combination of time-series microscopy experiments, classification algorithms, and data visualization. However, collecting this type of data and applying algorithms to segment and track cells and construct lineages of proliferation is error-prone; and identifying the errors can be challenging since it often requires cross-checking multiple data types. Similarly, analyzing and communicating the results necessitates synthesizing different data types into a single narrative. State-of-the-art visualization methods for such data use independent line charts, tree diagrams, and images in separate views. However, this spatial separation requires the viewer of these charts to combine the relevant pieces of data in memory. To simplify this challenging task, we describe design principles for weaving cell images, time-series data, and tree data into a cohesive visualization. Our design principles are based on choosing a primary data type that drives the layout and integrates the other data types into that layout. We then introduce Aardvark, a system that uses these principles to implement novel visualization techniques. Based on Aardvark, we demonstrate the utility of each of these approaches for discovery, communication, and data debugging in a series of case studies.
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土豚树、时间序列和图像的复合可视化
癌细胞如何生长、分裂、增殖和死亡?药物如何影响这些过程?我们可以尝试结合时间序列显微镜实验、分类算法和数据可视化来回答这些难题。然而,收集这类数据并应用算法来分割和追踪细胞并构建增殖谱系是很容易出错的;识别错误也很有挑战性,因为这往往需要交叉检查多种数据类型。同样,分析和交流结果也需要将不同类型的数据综合成单一的叙述。针对此类数据的最先进的可视化方法是使用独立的折线图、树状图和独立视图中的图像。然而,这种空间上的分离要求这些图表的查看者在内存中组合相关的数据片段。为了简化这项具有挑战性的任务,我们介绍了将细胞图像、时间序列数据和树状数据编织成一个连贯的可视化图表的设计原则。我们的设计原则基于选择一种主要数据类型来驱动布局,并将其他数据类型整合到该布局中。然后,我们将介绍 Aardvark,这是一个利用这些原则实现新颖可视化技术的系统。基于 Aardvark,我们在一系列案例研究中展示了这些方法在发现、交流和数据调试方面的实用性。
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