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SMAGEXP: a galaxy tool suite for transcriptomics data meta-analysis

机译:SMAGEXP:用于转录组学数据元分析的星系工具套件

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Background With the proliferation of available microarray and high-throughput sequencing experiments in the public domain, the use of meta-analysis methods increases. In these experiments, where the sample size is often limited, meta-analysis offers the possibility to considerably enhance the statistical power and give more accurate results. For those purposes, it combines either effect sizes or results of single studies in an appropriate manner. R packages metaMA and metaRNASeq perform meta-analysis on microarray and next generation sequencing (NGS) data, respectively. They are not interchangeable as they rely on statistical modeling specific to each technology. Results SMAGEXP (Statistical Meta-Analysis for Gene EXPression) integrates metaMA and metaRNAseq packages into Galaxy. We aim to propose a unified way to carry out meta-analysis of gene expression data, while taking care of their specificities. We have developed this tool suite to analyze microarray data from the Gene Expression Omnibus database or custom data from Affymetrixsup?/sup microarrays. These data are then combined to carry out meta-analysis using metaMA package. SMAGEXP also offers to combine raw read counts from NGS experiments using DESeq2 and metaRNASeq package. In both cases, key values, independent from the technology type, are reported to judge the quality of the meta-analysis. These tools are available on the Galaxy main tool shed. A dockerized instance of galaxy containing SMAGEXP and its dependencies is available on Docker hub. Source code, help, and installation instructions are available on GitHub. Conclusion The use of Galaxy offers an easy-to-use gene expression meta-analysis tool suite based on the metaMA and metaRNASeq packages.
机译:背景技术随着公共领域中可用的微阵列的发展和高通量测序实验的开展,荟萃分析方法的使用增加了。在这些经常受到样本量限制的实验中,荟萃分析提供了显着提高统计功效并给出更准确结果的可能性。为此,它以适当的方式组合了效应量或单个研究的结果。 R包metaMA和metaRNASeq分别对微阵列和下一代测序(NGS)数据进行了荟萃分析。它们不可互换,因为它们依赖于每种技术的特定统计模型。结果SMAGEXP(基因表达统计分析)将metaMA和metaRNAseq软件包集成到Galaxy中。我们旨在提出一种统一的方法来进行基因表达数据的荟萃分析,同时注意其特异性。我们已经开发了此工具套件,用于分析Gene Expression Omnibus数据库中的微阵列数据或Affymetrix ?微阵列中的自定义数据。然后将这些数据合并以使用metaMA软件包进行荟萃分析。 SMAGEXP还提供了结合使用DESeq2和metaRNASeq软件包的NGS实验的原始读取计数的功能。在这两种情况下,都报告了与技术类型无关的关键值,以判断荟萃分析的质量。这些工具可在Galaxy主要工具棚上找到。在Docker集线器上可以找到包含SMAGEXP及其依赖项的docker化银河实例。源代码,帮助和安装说明可在GitHub上获得。结论Galaxy的使用基于metaMA和metaRNASeq软件包提供了易于使用的基因表达荟萃分析工具套件。

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