首页> 外文期刊>Nucleic Acids Research >miRTar2GO: a novel rule-based model learning method for cell line specific microRNA target prediction that integrates Ago2 CLIP-Seq and validated microRNA-target interaction data
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miRTar2GO: a novel rule-based model learning method for cell line specific microRNA target prediction that integrates Ago2 CLIP-Seq and validated microRNA-target interaction data

机译:Mirtar2Go:一种基于规则的小型规则的模型模型学习方法,用于细胞系特定的MicroRNA目标预测,其集成到Agay2剪辑SEQ和验证的MicroRNA-Tarmate交互数据

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摘要

MicroRNAs (miRNAs) are similar to 19-22 nucleotides (nt) long regulatory RNAs that regulate gene expression by recognizing and binding to complementary sequences on mRNAs. The key step in revealing the function of a miRNA, is the identification of miRNA target genes. Recent biochemical advances including PAR-CLIP and HITS-CLIP allow for improved miRNA target predictions and are widely used to validate miRNA targets. Here, we present miRTar2GO, which is a model, trained on the common rules of miRNA-target interactions, Argonaute (Ago) CLIP-Seq data and experimentally validated miRNA target interactions. miRTar2GO is designed to predict miRNA target sites using more relaxed miRNA-target binding characteristics. More importantly, miRTar2GO allows for the prediction of cell-type specific miRNA targets. We have evaluated miRTar2GO against other widely used miRNA target prediction algorithms and demonstrated that miRTar2GO produced significantly higher F1 and G scores. Target predictions, binding specifications, results of the pathway analysis and gene ontology enrichment of miRNA targets are freely available at http://www.mirtar2go.org.
机译:MicroRNA(miRNA)类似于19-22个核苷酸(NT)长调节RNA,其通过识别和结合MRNA的互补序列来调节基因表达。揭示miRNA功能的关键步骤是鉴定miRNA靶基因。最近的生化进步包括PAR-CLIP和HITS-CLIP允许改善的miRNA靶预测,并且广泛用于验证miRNA靶标。在这里,我们呈现Mirtar2Go,这是一种模型,培训了MiRNA-Target相互作用的常见规则,Argonaute(前)剪辑-SEQ数据和实验验证的miRNA目标相互作用。 Mirtar2Go旨在使用更轻松的miRNA-target结合特征来预测miRNA靶位点。更重要的是,Mirtar2Go允许预测细胞型特异性miRNA靶标。我们对其他广泛使用的MiRNA靶预测算法进行了评估的Mirtar2Go,并证明了Mirtar2Go产生了显着更高的F1和G分数。靶预测,结合规范,途径分析和基因本体论富集miRNA靶标的富集在http://www.mirtar2go.org上。

著录项

  • 来源
    《Nucleic Acids Research》 |2017年第6期|共10页
  • 作者单位

    Univ Technol Sydney Sch Software Fac Engn &

    Informat Technol POB 123 Sydney NSW 2007 Australia;

    Univ Technol Sydney Plant Funct Biol &

    Climate Change Cluster C3 POB 123 Sydney NSW 2007 Australia;

    Univ Technol Sydney Ctr Hlth Technol Fac Engn &

    Informat Technol POB 123 Sydney NSW 2007 Australia;

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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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