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RNentropy: an entropy-based tool for the detection of significant variation of gene expression across multiple RNA-Seq experiments

机译:RNENtropy:一种基于熵的工具,用于检测多个RNA-SEQ实验中基因表达的显着变化

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摘要

RNA sequencing (RNA-Seq) has become the experimental standard in transcriptome studies. While most of the bioinformatic pipelines for the analysis of RNA-Seq data and the identification of significant changes in transcript abundance are based on the comparison of two conditions, it is common practice to perform several experiments in parallel (e.g. from different individuals, developmental stages, tissues), for the identification of genes showing a significant variation of expression across all the conditions studied. In this work we present RNentropy, a methodology based on information theory devised for this task, which given expression estimates from any number of RNA-Seq samples and conditions identifies genes or transcripts with a significant variation of expression across all the conditions studied, together with the samples in which they are over- or under-expressed. To show the capabilities offered by our methodology, we applied it to different RNASeq datasets: 48 biological replicates of two different yeast conditions; samples extracted from six human tissues of three individuals; seven different mouse brain cell types: human liver samples from six individuals. Results, and their comparison to different state of the art bioinformatic methods, show that RNentropy can provide a quick and in depth analysis of significant changes in gene expression profiles over any number of conditions.
机译:RNA测序(RNA-SEQ)已成为转录组研究的实验标准。虽然大多数生物信息管道用于分析RNA-SEQ数据和鉴定转录性丰度的显着变化是基于两个条件的比较,但常常并行执行几个实验(例如来自不同的个体,发育阶段组织),用于鉴定在研究所有病症的情况下显示出显着的表达变化的基因。在这项工作中,我们呈现RNEntropy,一种基于信息理论的方法,该方法设计了针对该任务的表达估计,其中来自任何数量的RNA-SEQ样本和条件鉴定了在研究中所研究的所有条件的显着变化的基因或转录物中的基因或转录物它们过度或表达的样品。为了显示我们的方法提供的能力,我们将其应用于不同的RNASEQ数据集:48个不同酵母条件的生物学重复;样品从三个人的六个人组织中提取;七种不同的小鼠脑细胞类型:来自六个人的人肝样品。结果,及其与不同态度的生物信息化方法的比较,表明RNEntropy可以在任何数量的条件下提供基因表达谱的显着变化的快速和深入分析。

著录项

  • 来源
    《Nucleic Acids Research》 |2018年第8期|共16页
  • 作者单位

    Univ Milan Dipartimento Biosci Via Celoria 26 I-20133 Milan Italy;

    Univ Bari Dipartimento Biosci Biotecnol &

    Biofarmaceut Via Orabona 4 I-70126 Bari Italy;

    CNR Ist Biomembrane Bioenerget &

    Biotecnol Mol Via Amendola 165-A I-70126 Bari Italy;

    CNR Ist Biomembrane Bioenerget &

    Biotecnol Mol Via Amendola 165-A I-70126 Bari Italy;

    CNR Ist Biomembrane Bioenerget &

    Biotecnol Mol Via Amendola 165-A I-70126 Bari Italy;

    Univ Milan Dipartimento Biosci Via Celoria 26 I-20133 Milan Italy;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 生物化学;
  • 关键词

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