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SPCMLMI:一种基于结构扰动的矩阵补全方法,用于预测长链非编码RNA-微小RNA相互作用。

SPCMLMI: A structural perturbation-based matrix completion method to predict lncRNA-miRNA interactions.

作者信息

Wang Mei-Neng, Lei Li-Lan, He Wei, Ding De-Wu

机构信息

School of Mathematics and Computer Science, Yichun University, Yichun, China.

出版信息

Front Genet. 2022 Nov 15;13:1032428. doi: 10.3389/fgene.2022.1032428. eCollection 2022.

Abstract

Accumulating evidence indicated that the interaction between lncRNA and miRNA is crucial for gene regulation, which can regulate gene transcription, further affecting the occurrence and development of many complex diseases. Accurate identification of interactions between lncRNAs and miRNAs is helpful for the diagnosis and therapeutics of complex diseases. However, the number of known interactions of lncRNA with miRNA is still very limited, and identifying their interactions through biological experiments is time-consuming and expensive. There is an urgent need to develop more accurate and efficient computational methods to infer lncRNA-miRNA interactions. In this work, we developed a matrix completion approach based on structural perturbation to infer lncRNA-miRNA interactions (SPCMLMI). Specifically, we first calculated the similarities of lncRNA and miRNA, including the lncRNA expression profile similarity, miRNA expression profile similarity, lncRNA sequence similarity, and miRNA sequence similarity. Second, a bilayer network was constructed by integrating the known interaction network, lncRNA similarity network, and miRNA similarity network. Finally, a structural perturbation-based matrix completion method was used to predict potential interactions of lncRNA with miRNA. To evaluate the prediction performance of SPCMLMI, five-fold cross validation and a series of comparison experiments were implemented. SPCMLMI achieved AUCs of 0.8984 and 0.9891 on two different datasets, which is superior to other compared methods. Case studies for lncRNA XIST and miRNA hsa-mir-195-5-p further confirmed the effectiveness of our method in inferring lncRNA-miRNA interactions. Furthermore, we found that the structural consistency of the bilayer network was higher than that of other related networks. The results suggest that SPCMLMI can be used as a useful tool to predict interactions between lncRNAs and miRNAs.

摘要

越来越多的证据表明,lncRNA与miRNA之间的相互作用对基因调控至关重要,这种相互作用可调节基因转录,进而影响许多复杂疾病的发生和发展。准确识别lncRNA与miRNA之间的相互作用有助于复杂疾病的诊断和治疗。然而,lncRNA与miRNA已知的相互作用数量仍然非常有限,通过生物学实验识别它们的相互作用既耗时又昂贵。迫切需要开发更准确、高效的计算方法来推断lncRNA-miRNA相互作用。在这项工作中,我们开发了一种基于结构扰动的矩阵补全方法来推断lncRNA-miRNA相互作用(SPCMLMI)。具体而言,我们首先计算了lncRNA和miRNA的相似性,包括lncRNA表达谱相似性、miRNA表达谱相似性、lncRNA序列相似性和miRNA序列相似性。其次,通过整合已知相互作用网络、lncRNA相似性网络和miRNA相似性网络构建了一个双层网络。最后,使用基于结构扰动的矩阵补全方法预测lncRNA与miRNA的潜在相互作用。为了评估SPCMLMI的预测性能,进行了五折交叉验证和一系列比较实验。SPCMLMI在两个不同数据集上的AUC分别达到0.8984和0.9891,优于其他比较方法。对lncRNA XIST和miRNA hsa-mir-195-5-p的案例研究进一步证实了我们的方法在推断lncRNA-miRNA相互作用方面的有效性。此外,我们发现双层网络的结构一致性高于其他相关网络。结果表明,SPCMLMI可作为预测lncRNA与miRNA之间相互作用的有用工具。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/11c6/9705354/60f7fd719937/fgene-13-1032428-g001.jpg

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