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HuMiTar:一种基于序列的人类微小RNA靶标预测方法。

HuMiTar: a sequence-based method for prediction of human microRNA targets.

作者信息

Ruan Jishou, Chen Hanzhe, Kurgan Lukasz, Chen Ke, Kang Chunsheng, Pu Peiyu

机构信息

Department of Electrical and Computer Engineering, University of Alberta, Canada.

出版信息

Algorithms Mol Biol. 2008 Dec 22;3:16. doi: 10.1186/1748-7188-3-16.

Abstract

BACKGROUND

MicroRNAs (miRs) are small noncoding RNAs that bind to complementary/partially complementary sites in the 3' untranslated regions of target genes to regulate protein production of the target transcript and to induce mRNA degradation or mRNA cleavage. The ability to perform accurate, high-throughput identification of physiologically active miR targets would enable functional characterization of individual miRs. Current target prediction methods include traditional approaches that are based on specific base-pairing rules in the miR's seed region and implementation of cross-species conservation of the target site, and machine learning (ML) methods that explore patterns that contrast true and false miR-mRNA duplexes. However, in the case of the traditional methods research shows that some seed region matches that are conserved are false positives and that some of the experimentally validated target sites are not conserved.

RESULTS

We present HuMiTar, a computational method for identifying common targets of miRs, which is based on a scoring function that considers base-pairing for both seed and non-seed positions for human miR-mRNA duplexes. Our design shows that certain non-seed miR nucleotides, such as 14, 18, 13, 11, and 17, are characterized by a strong bias towards formation of Watson-Crick pairing. We contrasted HuMiTar with several representative competing methods on two sets of human miR targets and a set of ten glioblastoma oncogenes. Comparison with the two best performing traditional methods, PicTar and TargetScanS, and a representative ML method that considers the non-seed positions, NBmiRTar, shows that HuMiTar predictions include majority of the predictions of the other three methods. At the same time, the proposed method is also capable of finding more true positive targets as a trade-off for an increased number of predictions. Genome-wide predictions show that the proposed method is characterized by 1.99 signal-to-noise ratio and linear, with respect to the length of the mRNA sequence, computational complexity. The ROC analysis shows that HuMiTar obtains results comparable with PicTar, which are characterized by high true positive rates that are coupled with moderate values of false positive rates.

CONCLUSION

The proposed HuMiTar method constitutes a step towards providing an efficient model for studying translational gene regulation by miRs.

摘要

背景

微小RNA(miR)是一类小的非编码RNA,它们与靶基因3'非翻译区中的互补/部分互补位点结合,以调节靶转录本的蛋白质产生,并诱导mRNA降解或mRNA切割。能够准确、高通量地鉴定生理活性miR靶标将有助于对单个miR进行功能表征。当前的靶标预测方法包括基于miR种子区域中特定碱基配对规则和靶位点跨物种保守性的传统方法,以及探索区分真假miR-mRNA双链体模式的机器学习(ML)方法。然而,传统方法的研究表明,一些保守的种子区域匹配是假阳性,并且一些经过实验验证的靶位点并不保守。

结果

我们提出了HuMiTar,一种用于鉴定miR共同靶标的计算方法,它基于一个评分函数,该函数考虑了人类miR-mRNA双链体种子和非种子位置的碱基配对。我们的设计表明,某些非种子miR核苷酸,如14、18、13、11和17,具有强烈的形成沃森-克里克配对的倾向。我们在两组人类miR靶标和一组十个胶质母细胞瘤癌基因上,将HuMiTar与几种代表性竞争方法进行了对比。与表现最佳的两种传统方法PicTar和TargetScanS,以及一种考虑非种子位置的代表性ML方法NBmiRTar相比,结果表明HuMiTar的预测涵盖了其他三种方法的大部分预测。同时,该方法还能够找到更多真正的阳性靶标,作为预测数量增加的一种权衡。全基因组预测表明,该方法的信噪比为1.99,并且计算复杂度相对于mRNA序列长度呈线性。ROC分析表明,HuMiTar获得的结果与PicTar相当,其特点是真阳性率高,同时假阳性率适中。

结论

所提出的HuMiTar方法朝着为研究miR介导的翻译基因调控提供一个有效模型迈出了一步。

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