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NASQAR: a web-based platform for high-throughput sequencing data analysis and visualization

机译:NASQAR:用于高吞吐量排序数据分析和可视化的基于Web的平台

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As high-throughput sequencing applications continue to evolve, the rapid growth in quantity and variety of sequence-based data calls for the development of new software libraries and tools for data analysis and visualization. Often, effective use of these tools requires computational skills beyond those of many researchers. To ease this computational barrier, we have created a dynamic web-based platform, NASQAR (Nucleic Acid SeQuence Analysis Resource). NASQAR offers a collection of custom and publicly available open-source web applications that make extensive use of a variety of R packages to provide interactive data analysis and visualization. The platform is publicly accessible at http://nasqar.abudhabi.nyu.edu/ . Open-source code is on GitHub at https://github.com/nasqar/NASQAR , and the system is also available as a Docker image at https://hub.docker.com/r/aymanm/nasqarall . NASQAR is a collaboration between the core bioinformatics teams of the NYU Abu Dhabi and NYU New York Centers for Genomics and Systems Biology. NASQAR empowers non-programming experts with a versatile and intuitive toolbox to easily and efficiently explore, analyze, and visualize their Transcriptomics data interactively. Popular tools for a variety of applications are currently available, including Transcriptome Data Preprocessing, RNA-seq Analysis (including Single-cell RNA-seq), Metagenomics, and Gene Enrichment.
机译:随着高吞吐量的排序应用程序继续发展,基于序列的数据的数量和种类的快速增长,用于开发新的软件库和用于数据分析和可视化的工具。通常,有效使用这些工具需要超出许多研究人员的计算技能。为了简化这种计算障碍,我们创建了一种基于动态的基于Web的平台NASQAR(核酸序列分析资源)。 NASQAR提供了一系列定制和公开的开源Web应用程序,可以大量使用各种R包,以提供交互式数据分析和可视化。该平台可公开访问http://nasqar.abudhabi.nyu.edu/。在https://github.com/nasqar/nasqar上,开源代码在github上,并且系统也可以在https://hub.docker.com/r/aymanm/nasqarall中作为码头图像。 NASQAR是Nyu Abu Dhabi和Nyu新约克基因组学和系统生物学中心的核心生物信息学团队之间的合作。 NASQAR赋予了具有多功能和直观的工具箱的非编程专家,以便以交互方式轻松探索,分析和可视化其转录组数据。目前可用的各种应用程序的流行工具,包括转录组数据预处理,RNA-SEQ分析(包括单细胞RNA-SEQ),偏见组和基因富集。

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