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LCBNI: link completion bipartite network inference for predicting new lncRNA-miRNA interactions

机译:LCBNI:链接完成二分网络推论,用于预测新的LNCRNA-miRNA相互作用

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LncRNAs and miRNAs are two different kinds of non-coding RNAs and are both important for human in the field of health and disease. LncRNAs can interact with miRNAs, and the interactions play key roles in gene regulatory networks. Predicting IncRNA-miRNA interactions is an urgent and significant task and can help to explore the mechanism of involved complicated diseases, but very few computational methods are developed. In this paper, we introduce a computational method named link completion bipartite network inference (LCBNI) to predict the potential interactions between IncRNAs and miRNAs. LCBNI formulates the observed IncRNA-miRNA interactions as a bipartite network. Considering that there is no any known interaction for new IncRNAs or miRNAs, LCBNI calculates the sequence similarity and utilizes weighted nearest neighbor interaction information to construct new interaction scores for these IncRNAs and miRNAs. Then, we implement a resource allocation algorithm on the bipartite network to predict IncRNA-miRNA interactions. The experimental results demonstrate that LCBNI can effectively predict IncRNA-miRNA interactions with higher accuracy compared with other state-of-the-art methods and network-based methods, including random walk with restart (RWR), IncRNA-based collaborative filtering (LncCF) and miRNA-based collaborative filtering (MiCF). Furthermore, case studies are performed to demonstrate the prediction capability of LCBNI using real data.
机译:LNCRNA和MIRNA是两种不同的非编码RNA,对人类在健康和疾病领域都很重要。 LNCRNA可以与miRNA相互作用,并且交互在基因监管网络中发挥关键作用。预测IncRNA-miRNA相互作用是一种紧急和重要的任务,可以帮助探讨涉及复杂性疾病的机制,但是很少开发几乎没有计算方法。在本文中,我们介绍了一个名为Link完成二分网络推断(LCBNI)的计算方法来预测Incrnas和MiRNA之间的潜在交互。 LCBNI将观察到的IncRNA-miRNA相互作用作为二分网络。考虑到New Incrnas或MiRNA没有任何已知的交互,LCBNI计算序列相似度,并利用加权最近邻交互信息来构建这些Incrnas和MiRNA的新交互分数。然后,我们在二分网络上实现资源分配算法,以预测InclNA-miRNA交互。实验结果表明,与其他最先进的方法和基于网络的方法相比,LCBNI可以有效地预测与更高的准确性更高的准确性的相互作用,包括随机步行,与重启(RWR),基于IncRNA的协作滤波(LNCCF)基于miRNA的协同滤波(MICF)。此外,执行案例研究以展示使用真实数据的LCBNI的预测能力。

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