Visualization for Diagnostic Review of Copy Number Variants in Complex DNA Sequencing Data

Emilia Ståhlbom;Jesper Molin;Claes Lundström;Anders Ynnerman
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Abstract

Genomics is at the core of precision medicine, and there are high expectations on genomics-enabled improvement of patient outcomes in the years to come. Around the world, initiatives to increase the use of DNA sequencing in clinical routine are being deployed, such as the use of broad panels in the standard care for oncology patients. Such a development comes at the cost of increased demands on throughput in genomic data analysis. In this paper, we use the task of copy number variant (CNV) analysis as a context for exploring visualization concepts for clinical genomics. CNV calls are generated algorithmically, but time-consuming manual intervention is needed to separate relevant findings from irrelevant ones in the resulting large call candidate lists. We present a visualization environment, named Copycat, to support this review task in a clinical scenario. Key components are a scatter-glyph plot replacing the traditional list visualization, and a glyph representation designed for at-a-glance relevance assessments. Moreover, we present results from a formative evaluation of the prototype by domain specialists, from which we elicit insights to guide both prototype improvements and visualization for clinical genomics in general.
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以可视化方式对复杂 DNA 测序数据中的拷贝数变异进行诊断审查
基因组学是精准医疗的核心,在未来的几年里,人们对基因组学能够改善患者的治疗结果抱有很高的期望。在世界范围内,增加DNA测序在临床常规中的使用的举措正在部署,例如在肿瘤患者的标准护理中使用广泛的面板。这种发展的代价是增加了对基因组数据分析吞吐量的需求。在本文中,我们使用拷贝数变异(CNV)分析任务作为探索临床基因组学可视化概念的背景。CNV呼叫是通过算法生成的,但是需要耗时的人工干预来将相关的结果从产生的大型呼叫候选列表中分离出来。我们提供了一个名为Copycat的可视化环境来支持临床场景中的审查任务。关键组件是取代传统列表可视化的散点字形图,以及为一目了然的相关性评估设计的字形表示。此外,我们还介绍了领域专家对原型的形成性评估的结果,从中我们得出了指导原型改进和临床基因组学可视化的见解。
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