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首页> 外文期刊>PLoS Computational Biology >bigPint: A Bioconductor visualization package that makes big data pint-sized
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bigPint: A Bioconductor visualization package that makes big data pint-sized

机译:BigPint:一个生物导体可视化包,使得大数据品脱大小

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摘要

Biological disciplines face the challenge of increasingly large and complex data. One necessary approach toward eliciting information is data visualization. Newer visualization tools incorporate interactive capabilities that allow scientists to extract information more efficiently than static counterparts. In this paper, we introduce technology that allows multiple independent layers of interactive visualization written in open-source code. This technology can be repurposed across various biological problems. Here, we apply this technology to RNA-sequencing data, a popular next-generation sequencing approach that provides snapshots of RNA quantity in biological samples at given moments in time. It can be used to investigate cellular differences between health and disease, cellular changes in response to external stimuli, and additional biological inquiries. RNA-sequencing data is large, noisy, and biased. It requires sophisticated normalization. The most popular open-source RNA-sequencing data analysis software focuses on models, with little emphasis on integrating effective visualization tools. This is despite sound evidence that RNA-sequencing data is most effectively explored using graphical and numerical approaches in a complementary fashion. The software we introduce can make it easier for researchers to use models and visuals in an integrated fashion during RNA-sequencing data analysis.
机译:生物学学科面临越来越大的数据的挑战。引出信息的一个必要方法是数据可视化。较新的可视化工具包含互动功能,使科学家们比静态对应物更有效地提取信息。在本文中,我们介绍了在开源代码中编写的多个独立的交互式可视化层的技术。这项技术可以在各种生物问题中重新培训。在这里,我们将该技术应用于RNA测序数据,是一种流行的下一代测序方法,可在给定时刻在生物样品中提供RNA量的快照。它可用于研究健康和疾病之间的细胞差异,对外部刺激的响应以及额外的生物查询。 RNA排序数据很大,嘈杂和偏见。它需要复杂的归一化。最受欢迎的开源RNA测序数据分析软件专注于模型,几乎没有强调集成有效的可视化工具。尽管有声证据表明,使用以互补方式使用图形和数值方法最有效地探索RNA测序数据。我们介绍的软件可以使研究人员更容易在RNA排序数据分析期间以综合方式使用模型和视觉效果。

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