Luo Jiawei, Huang Cong, Ding Pingjian
College of Information Science and Electronic Engineering & Collaboration and Innovation Center for Digital Chinese Medicine of 2011 Project of Colleges and Universities in Hunan Province, Hunan University, Changsha, Hunan 410082, China.
College of Information Science and Electronic Engineering, Hunan University, Changsha, Hunan 410082, China.
Biomed Res Int. 2016;2016:7460740. doi: 10.1155/2016/7460740. Epub 2016 Sep 15.
MicroRNAs (miRNAs) are short noncoding RNAs that play important roles in regulating gene expressing, and the perturbed miRNAs are often associated with development and tumorigenesis as they have effects on their target mRNA. Predicting potential miRNA-target associations from multiple types of genomic data is a considerable problem in the bioinformatics research. However, most of the existing methods did not fully use the experimentally validated miRNA-mRNA interactions. Here, we developed RMLM and RMLMSe to predict the relationship between miRNAs and their targets. RMLM and RMLMSe are global approaches as they can reconstruct the missing associations for all the miRNA-target simultaneously and RMLMSe demonstrates that the integration of sequence information can improve the performance of RMLM. In RMLM, we use RM measure to evaluate different relatedness between miRNA and its target based on different meta-paths; logistic regression and MLE method are employed to estimate the weight of different meta-paths. In RMLMSe, sequence information is utilized to improve the performance of RMLM. Here, we carry on fivefold cross validation and pathway enrichment analysis to prove the performance of our methods. The fivefold experiments show that our methods have higher AUC scores compared with other methods and the integration of sequence information can improve the performance of miRNA-target association prediction.
微小RNA(miRNA)是一类短链非编码RNA,在基因表达调控中发挥着重要作用。由于其对靶mRNA有影响,因此受干扰的miRNA通常与发育和肿瘤发生相关。从多种类型的基因组数据预测潜在的miRNA-靶标关联是生物信息学研究中的一个重要问题。然而,大多数现有方法并未充分利用经过实验验证的miRNA-mRNA相互作用。在此,我们开发了RMLM和RMLMSe来预测miRNA与其靶标的关系。RMLM和RMLMSe是全局方法,因为它们可以同时重建所有miRNA-靶标之间缺失的关联,并且RMLMSe表明序列信息的整合可以提高RMLM的性能。在RMLM中,我们使用RM度量基于不同的元路径评估miRNA与其靶标之间的不同相关性;采用逻辑回归和最大似然估计方法估计不同元路径的权重。在RMLMSe中,利用序列信息来提高RMLM的性能。在此,我们进行了五折交叉验证和通路富集分析以证明我们方法的性能。五折实验表明,与其他方法相比,我们的方法具有更高的AUC分数,并且序列信息的整合可以提高miRNA-靶标关联预测的性能。