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An eQTL biological data visualization challenge and approaches from the visualization community

机译:可视化社区提出的eQTL生物数据可视化挑战和方法

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摘要

In 2011, the IEEE VisWeek conferences inaugurated a symposium on Biological Data Visualization. Like other domain-oriented Vis symposia, this symposium's purpose was to explore the unique characteristics and requirements of visualization within the domain, and to enhance both the Visualization and Bio/Life-Sciences communities by pushing Biological data sets and domain understanding into the Visualization community, and well-informed Visualization solutions back to the Biological community. Amongst several other activities, the BioVis symposium created a data analysis and visualization contest. Unlike many contests in other venues, where the purpose is primarily to allow entrants to demonstrate tour-de-force programming skills on sample problems with known solutions, the BioVis contest was intended to whet the participants' appetites for a tremendously challenging biological domain, and simultaneously produce viable tools for a biological grand challenge domain with no extant solutions. For this purpose expression Quantitative Trait Locus (eQTL) data analysis was selected. In the BioVis 2011 contest, we provided contestants with a synthetic eQTL data set containing real biological variation, as well as a spiked-in gene expression interaction network influenced by single nucleotide polymorphism (SNP) DNA variation and a hypothetical disease model. Contestants were asked to elucidate the pattern of SNPs and interactions that predicted an individual's disease state. 9 teams competed in the contest using a mixture of methods, some analytical and others through visual exploratory methods. Independent panels of visualization and biological experts judged entries. Awards were given for each panel's favorite entry, and an overall best entry agreed upon by both panels. Three special mention awards were given for particularly innovative and useful aspects of those entries. And further recognition was given to entries that correctly answered a bonus question about how a proposed "gene therapy" change to a SNP might change an individual's disease status, which served as a calibration for each approaches' applicability to a typical domain question. In the future, BioVis will continue the data analysis and visualization contest, maintaining the philosophy of providing new challenging questions in open-ended and dramatically underserved Bio/Life Sciences domains.
机译:2011年,IEEE VisWeek会议举行了关于生物数据可视化的研讨会。与其他面向领域的Vis研讨会一样,本次研讨会的目的是探索领域内可视化的独特特征和要求,并通过将生物数据集和领域理解推入可视化社区来增强可视化和生物/生命科学社区,以及信息灵通的可视化解决方案,返回给生物界。在其他活动中,BioVis专题讨论会创建了一个数据分析和可视化竞赛。与其他场所的许多竞赛不同,BioVis竞赛的主要目的是让参赛者展示具有已知解决方案的样本问题的巡回编程技能,而BioVis竞赛的目的是激发参与者对具有挑战性的生物学领域的食欲,并且无需现有解决方案即可同时为生物重大挑战领域生产可行的工具。为此,选择了定量性状基因座(eQTL)数据分析。在BioVis 2011竞赛中,我们为参赛者提供了一个包含真实生物学变异的合成eQTL数据集,以及受单核苷酸多态性(SNP)DNA变异和假设的疾病模型影响的掺入基因表达相互作用网络。要求参赛者阐明预测个体疾病状态的SNP模式和相互作用。 9个团队使用多种方法参加比赛,一些分析方法和另一些通过视觉探索方法。独立的可视化专家小组和生物学专家对参赛作品进行评判。每个小组最喜欢的作品都获得了奖励,并且两个小组都同意了总体最佳作品。由于这些作品的创新性和实用性,获得了三项特别奖。并且,对那些正确回答了一个额外的问题的条目也给予了进一步的认可,这些问题是关于提议的“基因疗法”对SNP的改变如何改变个人的疾病状态的信息,以此作为每种方法对典型领域问题适用性的校准。将来,BioVis将继续进行数据分析和可视化竞赛,并秉承在开放性且服务不足的Bio / Life Sciences领域中提出新挑战性问题的理念。

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