Caleydo:设计和评估基因表达数据在生物学背景下的可视化分析框架

A. Lex, M. Streit, E. Kruijff, D. Schmalstieg
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引用次数: 77

摘要

我们的工作目标是支持专家在关于基因在疾病中的作用的假设生成过程中。为了更深入地了解基因之间复杂的相互依赖关系,将基因表达(测量)与途径结合起来是很重要的。通路是生物过程的模型,可以在在线数据库中找到。在这些数据库中,大型网络被分解成小的子图,以获得更好的可管理性。这种简化导致了上下文的丢失,因为途径是相互联系的,基因可以在分散在网络中的多个实例中出现。因此,我们的主要目标是以一种简单而有效的方式呈现所有相关信息,即基因表达,表达与途径之间的关系以及多种途径之间的关系。为了实现这一点,我们采用了两种不同的多视图方法。传统的多视图用于大型数据集或高度交互的可视化,而2.5D技术用于支持多个路径的无缝导航,这些路径同时链接到所含基因的表达。这种方法有助于理解通路的互连,并使非分散的关系基因表达数据。我们和一群来自生命科学界的用户一起对Caleydo进行了评估。用户被要求完成三个任务:途径探索、基因表达分析和有和没有视觉链接的信息比较,这些任务必须在四种不同的条件下进行。评估结果表明,该系统可以显著改善对复杂通路网络和基因表达调控个体效应的理解过程。特别是可用的上下文信息和空间组织的质量被评为良好的2.5D设置。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Caleydo: Design and evaluation of a visual analysis framework for gene expression data in its biological context
The goal of our work is to support experts in the process of hypotheses generation concerning the roles of genes in diseases. For a deeper understanding of the complex interdependencies between genes, it is important to bring gene expressions (measurements) into context with pathways. Pathways, which are models of biological processes, are available in online databases. In these databases, large networks are decomposed into small sub-graphs for better manageability. This simplification results in a loss of context, as pathways are interconnected and genes can occur in multiple instances scattered over the network. Our main goal is therefore to present all relevant information, i.e., gene expressions, the relations between expression and pathways and between multiple pathways in a simple, yet effective way. To achieve this we employ two different multiple-view approaches. Traditional multiple views are used for large datasets or highly interactive visualizations, while a 2.5D technique is employed to support a seamless navigation of multiple pathways which simultaneously links to the expression of the contained genes. This approach facilitates the understanding of the interconnection of pathways, and enables a non-distracting relation to gene expression data. We evaluated Caleydo with a group of users from the life science community. Users were asked to perform three tasks: pathway exploration, gene expression analysis and information comparison with and without visual links, which had to be conducted in four different conditions. Evaluation results show that the system can improve the process of understanding the complex network of pathways and the individual effects of gene expression regulation considerably. Especially the quality of the available contextual information and the spatial organization was rated good for the presented 2.5D setup.
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