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首页> 外文期刊>Plant and cell physiology >AtCAST3.0 Update: A Web-Based Tool for Analysis of Transcriptome Data by Searching Similarities in Gene Expression Profiles
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AtCAST3.0 Update: A Web-Based Tool for Analysis of Transcriptome Data by Searching Similarities in Gene Expression Profiles

机译:AtCAST3.0更新:一种基于Web的工具,用于通过搜索基因表达谱中的相似性来分析转录组数据

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摘要

In transcriptome experiments, the experimental conditions (e.g. mutants and/or treatments) cause transcriptional changes. Identifying experimental conditions that induce similar or opposite transcriptional changes can be useful to identify experimental conditions that affect the same biological process. AtCAST (http://atpbsmd.yokohama-cu.ac.jp) is a web-based tool to analyze the relationship between experimental conditions among transcriptome data. Users can analyze 'user's transcriptome data' of a new mutant or a new chemical compound whose function remains unknown to generate novel biological hypotheses. This tool also allows for mining of related 'experimental conditions' from the public microarray data, which are pre-included in AtCAST. This tool extracts a set of genes (i.e. module) that show significant transcriptional changes and generates a network graph to present related transcriptome data. The updated AtCAST now contains data on >7,000 microarrays, including experiments on various stresses, mutants and chemical treatments. Gene ontology term enrichment (GOE) analysis is introduced to assist the characterization of transcriptome data. The new AtCAST supports input from multiple platforms, including the 'Arabisopsis gene 1.1 ST array', a new microarray chip from Affymetrix and RNA sequencing (RNA-seq) data obtained using next-generation sequencing (NGS). As a pilot study, we conducted microarray analysis of Arabidopsis under auxin treatment using the new Affymetrix chip, and then analyzed the data in AtCAST. We also analyzed RNA-seq data of the pifq mutant using AtCAST. These new features will facilitate analysis of associations between transcriptome data obtained using different platforms.
机译:在转录组实验中,实验条件(例如突变体和/或治疗)引起转录变化。鉴定诱导相似或相反转录变化的实验条件可用于鉴定影响相同生物学过程的实验条件。 AtCAST(http://atpbsmd.yokohama-cu.ac.jp)是一个基于Web的工具,用于分析转录组数据之间实验条件之间的关系。用户可以分析功能未知的新突变体或新化合物的“用户转录组数据”,以产生新的生物学假设。该工具还允许从公共微阵列数据中挖掘相关的“实验条件”,这些数据预先包含在AtCAST中。该工具提取一组显示显着转录变化的基因(即模块),并生成网络图以显示相关的转录组数据。更新后的AtCAST现在包含超过7,000个微阵列的数据,包括各种应力,突变体和化学处理的实验。引入基因本体术语富集(GOE)分析以辅助表征转录组数据。新的AtCAST支持来自多个平台的输入,包括“拟南芥基因1.1 ST阵列”,来自Affymetrix的新型微阵列芯片以及使用下一代测序(NGS)获得的RNA测序(RNA-seq)数据。作为一项先导研究,我们使用新的Affymetrix芯片对生长素处理下的拟南芥进行了微阵列分析,然后在AtCAST中分析了数据。我们还使用AtCAST分析了pifq突变体的RNA-seq数据。这些新功能将有助于分析使用不同平台获得的转录组数据之间的关联。

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