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Visualizing virus population variability from next generation sequencing data

机译:从下一代测序数据可视化病毒人口可变性

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Advances in genomic sequencing techniques allow for larger scale generation and usage of sequence data. While these techniques afford new types of analysis, they also generate new concerns with regards to data quality and data scale. We present a tool designed to assist in the exploration of the genetic variability of the population of viruses at multiple time points and in multiple individuals, a task that necessitates considering large amounts of sequence data and the quality issues inherent in obtaining such data in a practical manner. Our design affords the examination of the amount of variability and mutation at each position in the genome for many populations of viruses. Our design contains novel visualization techniques that support this specific class of analysis while addressing the issues of data aggregation, confidence visualization, and interaction support that arise when making use of large amounts of sequence data with variable uncertainty. These techniques generalize to a wide class of visualization problems where confidence is not known a priori, and aggregation in multiple directions is necessary.
机译:基因组测序技术的进步允许更大的规模生成和序列数据的使用。虽然这些技术提供了新的分析类型,但它们也在数据质量和数据量表方面产生了新的问题。我们提出了一种旨在帮助在多个时间点和多个人中探索病毒群体的遗传变异的工具,这是需要考虑大量序列数据的任务和在实际获取这些数据中固有的质量问题方式。我们的设计提供了在基因组中的各个位置的可变性和突变的检查,以获得许多病毒的群体。我们的设计包含了新颖的可视化技术,支持这种特定的分析,同时解决了在利用具有可变不确定性的大量序列数据时出现的数据聚集,置信度量和交互支持的问题。这些技术概括到广泛的可视化问题,置信度不知道先验,并且需要多个方向的聚合。

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