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Prediction of human miRNA target genes using computationally reconstructed ancestral mammalian sequences

机译:使用计算重建的祖先哺乳动物序列预测人类miRNA靶基因

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摘要

MicroRNAs (miRNA) are short single-stranded RNA molecules derived from hairpin-forming precursors that play a crucial role as post-transcriptional regulators in eukaryotes and viruses. In the past years, many microRNA target genes (MTGs) have been identified experimentally. However, because of the high costs of experimental approaches, target genes databases remain incomplete. Although several target prediction programs have been developed in the recent years to identify MTGs in silico, their specificity and sensitivity remain low. Here, we propose a new approach called MirAncesTar, which uses ancestral genome reconstruction to boost the accuracy of existing MTGs prediction tools for human miRNAs. For each miRNA and each putative human target UTR, our algorithm makes uses of existing prediction tools to identify putative target sites in the human UTR, as well as in its mammalian orthologs and inferred ancestral sequences. It then evaluates evidence in support of selective pressure to maintain target site counts (rather than sequences), accounting for the possibility of target site turnover. It finally integrates this measure with several simpler ones using a logistic regression predictor. MirAncesTar improves the accuracy of existing MTG predictors by 26% to 157%. Source code and prediction results for human miRNAs, as well as supporting evolutionary data are available at .
机译:MicroRNA(miRNA)是短短的单链RNA分子,由形成发夹的前体衍生,在真核生物和病毒中作为转录后调节剂发挥关键作用。在过去的几年中,已经通过实验鉴定了许多microRNA靶基因(MTG)。然而,由于实验方法的高成本,靶基因数据库仍然不完整。尽管近年来已经开发了几种目标预测程序来识别计算机模拟MTG,但它们的特异性和敏感性仍然很低。在这里,我们提出了一种名为MirAncesTar的新方法,该方法使用祖先基因组重建来提高现有的人类miRNA的MTG预测工具的准确性。对于每个miRNA和每个推定的人类靶标UTR,我们的算法都利用现有的预测工具来识别人类UTR以及其哺乳动物直系同源物和推断的祖先序列中的推定靶标位点。然后,它评估支持选择性压力以维持目标位点计数(而不是序列)的证据,从而说明了目标位点周转的可能性。最后,使用逻辑回归预测器将该度量与几个更简单的度量进行集成。 MirAncesTar将现有MTG预测器的准确性提高了26%至157%。有关人类miRNA的源代码和预测结果以及支持的进化数据,请访问。

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