Xu Mingmin, Chen Yuanyuan, Lu Wei, Kong Lingpeng, Fang Jingya, Li Zutan, Zhang Liangyun, Pian Cong
College of Agriculture, Nanjing Agricultural University, Nanjing, Jiangsu, China.
College of Sciences, Nanjing Agricultural University, Nanjing, Jiangsu, China.
PeerJ. 2021 May 19;9:e11426. doi: 10.7717/peerj.11426. eCollection 2021.
Long non-coding RNA (lncRNA)-microRNA (miRNA) interactions are quickly emerging as important mechanisms underlying the functions of non-coding RNAs. Accordingly, predicting lncRNA-miRNA interactions provides an important basis for understanding the mechanisms of action of ncRNAs. However, the accuracy of the established prediction methods is still limited. In this study, we used structural consistency to measure the predictability of interactive links based on a bilayer network by integrating information for known lncRNA-miRNA interactions, an lncRNA similarity network, and an miRNA similarity network. In particular, by using the structural perturbation method, we proposed a framework called SPMLMI to predict potential lncRNA-miRNA interactions based on the bilayer network. We found that the structural consistency of the bilayer network was higher than that of any single network, supporting the utility of bilayer network construction for the prediction of lncRNA-miRNA interactions. Applying SPMLMI to three real datasets, we obtained areas under the curves of 0.9512 ± 0.0034, 0.8767 ± 0.0033, and 0.8653 ± 0.0021 based on 5-fold cross-validation, suggesting good model performance. In addition, the generalizability of SPMLMI was better than that of the previously established methods. Case studies of two lncRNAs (i.e., SNHG14 and MALAT1) further demonstrated the feasibility and effectiveness of the method. Therefore, SPMLMI is a feasible approach to identify novel lncRNA-miRNA interactions underlying complex biological processes.
长链非编码RNA(lncRNA)-微小RNA(miRNA)相互作用正迅速成为非编码RNA功能的重要潜在机制。因此,预测lncRNA-miRNA相互作用为理解非编码RNA的作用机制提供了重要依据。然而,已建立的预测方法的准确性仍然有限。在本研究中,我们通过整合已知lncRNA-miRNA相互作用信息、lncRNA相似性网络和miRNA相似性网络,利用结构一致性基于双层网络来衡量交互链接的可预测性。具体而言,通过使用结构扰动方法,我们提出了一个名为SPMLMI的框架,用于基于双层网络预测潜在的lncRNA-miRNA相互作用。我们发现双层网络的结构一致性高于任何单个网络,这支持了构建双层网络用于预测lncRNA-miRNA相互作用的实用性。将SPMLMI应用于三个真实数据集,基于5折交叉验证,我们得到的曲线下面积分别为0.9512±0.0034、0.8767±0.0033和0.8653±0.0021,表明模型性能良好。此外,SPMLMI的泛化能力优于先前建立的方法。对两个lncRNA(即SNHG14和MALAT1)的案例研究进一步证明了该方法的可行性和有效性。因此,SPMLMI是一种可行的方法,可用于识别复杂生物过程中潜在的lncRNA-miRNA相互作用。