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Prediction of lncRNAs and their interactions with nucleic acids: benchmarking bioinformatics tools

机译:LNCRNA预测及其与核酸的相互作用:基准测试生物信息学工具

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The genomes of mammalian species are pervasively transcribed producing as many noncoding as protein-coding RNAs. There is a growing body of evidence supporting their functional role. Long noncoding RNA (lncRNA) can bind both nucleic acids and proteins through several mechanisms. A reliable computational prediction of the most probable mechanism of lncRNA interaction can facilitate experimental validation of its function. In this study, we benchmarked computational tools capable to discriminate lncRNA from mRNA and predict lncRNA interactions with other nucleic acids. We assessed the performance of 9 tools for distinguishing protein-coding from noncoding RNAs, as well as 19 tools for prediction of RNA-RNA and RNA-DNA interactions. Our conclusions about the considered tools were based on their performances on the entire genome/transcriptome level, as it is the most common task nowadays. We found that FEELnc and CPAT distinguish between coding and noncoding mammalian transcripts in the most accurate manner. ASSA, RIBlast and LASTAL, as well as Triplexator, turned out to be the best predictors of RNA-RNA and RNA-DNA interactions, respectively. We showed that the normalization of the predicted interaction strength to the transcript length and GC content may improve the accuracy of inferring RNA interactions. Yet, all the current tools have difficulties to make accurate predictions of short-trans RNA-RNA interactionsstretches of sparse contacts. All over, there is still room for improvement in each category, especially for predictions of RNA interactions.
机译:哺乳动物物种的基因组被普及转录的蛋白质编码RNA产生多元化。有一种不断增长的证据支持他们的功能作用。长度非划分RNA(LNCRNA)可以通过几种机制将核酸和蛋白质结合。可靠的LNCRNA相互作用机制的可靠计算预测可以促进其功能的实验验证。在本研究中,我们基准基准测试工具能够从mRNA区分LNCRNA并预测与其他核酸的LNCRNA相互作用。我们评估了9种工具的性能,用于将蛋白质编码与非编码RNA分开,以及19个用于预测RNA-RNA和RNA-DNA相互作用的工具。我们关于考虑工具的结论是基于它们对整个基因组/转录组水平的表现,因为它是现在最常见的任务。我们发现,EVENC和CPAT以最准确的方式区分编码和非编码哺乳动物转录物。 ASSA,R技司和腹圈以及三重配合器分别成为RNA-RNA和RNA-DNA相互作用的最佳预测因子。我们表明,预测相互作用强度与转录物长度和GC含量的标准化可以提高推断RNA相互作用的准确性。然而,所有目前的工具都具有困难,以便准确预测稀疏触点的短型RNA-RNA相互作用。遍历,每个类别仍有改进的余地,特别是对于RNA相互作用的预测。

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