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MetaOmGraph: a workbench for interactive exploratory data analysis of large expression datasets

机译:Metaomgraph:用于大表达数据集的交互式探索数据分析的工作台

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The diverse and growing omics data in public domains provide researchers with tremendous opportunity to extract hidden, yet undiscovered, knowledge. However, the vast majority of archived data remain unused. Here, we present MetaOmGraph (MOG), a free, open-source, standalone software for exploratory analysis of massive datasets. Researchers, without coding, can interactively visualize and evaluate data in the context of its metadata, honing-in on groups of samples or genes based on attributes such as expression values, statistical associations, metadata terms and ontology annotations. Interaction with data is easy via interactive visualizations such as line charts, box plots, scatter plots, histograms and volcano plots. Statistical analyses include co-expression analysis, differential expression analysis and differential correlation analysis, with significance tests. Researchers can send data subsets to R for additional analyses. Multithreading and indexing enable efficient big data analysis. A researcher can create new MOG projects from any numerical data; or explore an existing MOG project. MOG projects, with history of explorations, can be saved and shared. We illustrate MOG by case studies of large curated datasets from human cancer RNA-Seq, where we identify novel putative biomarker genes in different tumors, and microarray and metabolomics data from Arabidopsis thaliana. MOG executable and code: http://metnetweb.gdcb.iastate.edu/ and https://github.com/urmi-21/MetaOmGraph/.
机译:公共域中的多样化和越来越多的OMIC数据为研究人员提供了提取隐藏,未被发现的知识的巨大机会。但是,绝大多数归档数据仍未使用。在这里,我们呈现Metaomgraph(MOG),免费,开源独立的独立软件,以便对大规模数据集进行探索性分析。在不编码的情况下,研究人员可以在其元数据的上下文中互动地可视化和评估数据基于表达式值,统计关联,元数据和本体注释等属性的样本或基因组的数据。与数据的交互通过交互式可视化诸如线条图,框图,散点图,直方图和火山图之类的交互式可视化。统计分析包括具有重要性测试的共表达分析,差异表达分析和差异相关分析。研究人员可以向R发送数据子集以进行其他分析。多线程和索引使高效的大数据分析。研究人员可以从任何数值数据创建新的MOG项目;或探索现有的MOG项目。可以保存和共享探索历史的MOG项目。我们通过来自人癌RNA-SEQ的大型愈合数据集的情况来说明MOG,在那里我们识别不同肿瘤中的新推定生物标志物基因,以及拟南芥拟南芥的微阵列和代谢组学数据。 MOG可执行和代码:http:///tnetweb.gdcb.iastate.edu/和https://github.com/urmi-21/molaomgraph/。

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