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Computational prediction of the localization of microRNAs within their pre-miRNA

机译:microRNA在其pre-miRNA中的定位的计算预测

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MicroRNAs (miRNAs) are short RNA species derived from hairpin-forming miRNA precursors (pre-miRNA) and acting as key posttranscriptional regulators. Most computational tools labeled as miRNA predictors are in fact pre-miRNA predictors and provide no information about the putative miRNA location within the pre-miRNA. Sequence and structural features that determine the location of the miRNA, and the extent to which these properties vary from species to species, are poorly understood. We have developed miRdup, a computational predictor for the identification of the most likely miRNA location within a given pre-miRNA or the validation of a candidate miRNA. MiRdup is based on a random forest classifier trained with experimentally validated miRNAs from miRbase, with features that characterize the miRNA-miRNA* duplex. Because we observed that miRNAs have sequence and structural properties that differ between species, mostly in terms of duplex stability, we trained various clade-specific miRdup models and obtained increased accuracy. MiRdup self-trains on the most recent version of miRbase and is easy to use. Combined with existing pre-miRNA predictors, it will be valuable for both de novo mapping of miRNAs and filtering of large sets of candidate miRNAs obtained from transcriptome sequencing projects. MiRdup is open source under the GPLv3 and available at http://www.cs.mcgill.ca/similar to blanchem/mirdup/.
机译:微小RNA(miRNA)是从发夹形成的miRNA前体(pre-miRNA)衍生而来的短RNA种类,并起着关键的转录后调节剂的作用。标记为miRNA预测因子的大多数计算工具实际上都是pre-miRNA预测因子,并且不提供有关pre-miRNA内推定miRNA位置的信息。决定miRNA位置的序列和结构特征,以及这些特性因物种而异的程度了解得很少。我们已经开发了miRdup,这是一种计算预测器,可用于识别给定pre-miRNA中最可能的miRNA位置或候选miRNA的验证。 MiRdup基于随机森林分类器,该分类器接受了miRbase的经过实验验证的miRNA的训练,具有表征miRNA-miRNA *双链体的特征。因为我们观察到miRNA具有不同物种之间的序列和结构特性,主要是在双链体稳定性方面,所以我们训练了各种进化枝特异性miRdup模型,并获得了更高的准确性。 MiRdup可在最新版本的miRbase上进行自训练,并且易于使用。结合现有的pre-miRNA预测因子,这对于从头绘制miRNA以及过滤从转录组测序项目中获得的大量候选miRNA都是有价值的。 MiRdup是GPLv3下的开源软件,可从http://www.cs.mcgill.ca/类似blanchem / mirdup /获得。

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