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GenAMap: Visualization strategies for structured association mapping

机译:GenAMap:结构化关联映射的可视化策略

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Association mapping studies promise to link DNA mutations to gene expression data, possibly leading to innovative treatments for diseases. One challenge in large-scale association mapping studies is exploring the results of the computational analysis to find relevant and interesting associations. Although many association mapping studies find associations from a genome-wide collection of genomic data to hundreds or thousands of traits, current visualization software only allow these associations to be explored one trait at a time. The inability to explore the association of a genomic location to multiple traits hides the inherent interaction between traits in the analysis. Additionally, researchers must rely on collections of in-house scripts and multiple tools to perform an analysis, adding time and effort to find interesting associations. In this paper, we present a novel visual analytics system called GenAMap. GenAMap replaces the time-consuming analysis of large-scale association mapping studies with exploratory visualization tools that give geneticists an overview of the data and lead them to relevant information. We present the results of a preliminary evaluation that validated our basic approach.
机译:协会作图研究有望将DNA突变与基因表达数据联系起来,可能导致疾病的创新治疗。大规模关联映射研究中的一项挑战是探索计算分析的结果,以找到相关且有趣的关联。尽管许多关联映射研究发现从全基因组数据集到数百或数千个特征的关联,但是当前的可视化软件仅允许一次探索这些关联。无法探索基因组位置与多个性状之间的关联,隐藏了分析中性状之间的固有相互作用。此外,研究人员必须依靠内部脚本和多种工具的集合来进行分析,从而增加了时间和精力来寻找有趣的关联。在本文中,我们提出了一种新颖的视觉分析系统,称为GenAMap。 GenAMap用探索性的可视化工具代替了大型关联映射研究的费时分析,该工具可以使遗传学家对数据进行概述并引导他们获得相关信息。我们提供的初步评估结果验证了我们的基本方法。

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