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Sequence-derived linear neighborhood propagation method for predicting lncRNA-miRNA interactions

机译:基于序列的线性邻域传播方法预测lncRNA-miRNA相互作用

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RNA-miRNA interactions play key roles in gene regulatory networks. Predicting novel lncRNA-miRNA interactions can advance the progress of understanding the functions of lncRNAs and the mechanism of involved complicated diseases, but very few computational methods have been developed for predicting lncRNA-miRNA interactions. In this paper, we propose a computational method named sequence-derived linear neighborhood propagation method (SLNPM) to predict the novel interactions between lncRNAs and miRNAs, especially for lncRNAs and miRNAs which do not have any known interaction. First, SLNPM fully exploits lncRNA sequences, miRNA sequences and known interactions to calculate lncRNA-lncRNA similarities and miRNA-miRNA similarities by using fast linear neighborhood similarity approach. Then, SLNPM integrates multiple lncRNA-lncRNA similarities and multiple miRNA-miRNA similarities respectively to make use of diverse information, and constructs the integrated lncRNA similarity-based graph and the integrated miRNA similarity-based graph. Finally, SLNPM implements the label propagation process on graphs to score lncRNA-miRNA pairs, and adopts the linear combination of their outputs as final predictions. The experimental results demonstrate that SLNPM can predict lncRNA-miRNA interactions with higher accuracy compared with other state-of-the-art methods. We also analyze the prediction capability of SLNPM for lncRNAs or miRNAs without any known interaction, and the results indicate that SLNPM helps to find novel interactions, which do not exist in our dataset. Moreover, our studies reveal that the known interactions provide the most important information for the lncRNA-miRNA interaction prediction, and the incorporating sequence information further improves the performance.
机译:RNA-miRNA相互作用在基因调控网络中起关键作用。预测新的lncRNA-miRNA相互作用可以促进对lncRNA的功能和所涉及的复杂疾病的机理的理解,但是很少有计算方法可以预测lncRNA-miRNA的相互作用。在本文中,我们提出了一种名为序列衍生的线性邻域传播方法(SLNPM)的计算方法,以预测lncRNA和miRNA之间的新型相互作用,尤其是对于没有已知相互作用的lncRNA和miRNA。首先,SLNPM通过使用快速线性邻域相似性方法,充分利用lncRNA序列,miRNA序列和已知的相互作用来计算lncRNA-lncRNA相似性和miRNA-miRNA相似性。然后,SLNPM整合了多个lncRNA-lncRNA相似度和多个miRNA-miRNA相似度,以利用各种信息,并构建了基于lncRNA相似度的整合图和基于miRNA相似度的整合图。最后,SLNPM在图形上实施标签传播过程以对lncRNA-miRNA对进行评分,并采用其输出的线性组合作为最终预测。实验结果表明,与其他最新方法相比,SLNPM可以更准确地预测lncRNA-miRNA相互作用。我们还分析了SLNPM对lncRNA或miRNA的预测能力,而没有任何已知的相互作用,结果表明SLNPM有助于发现新颖的相互作用,而这在我们的数据集中是不存在的。此外,我们的研究表明,已知的相互作用为lncRNA-miRNA相互作用的预测提供了最重要的信息,而结合序列信息进一步提高了性能。

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