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Inferring potential small molecule–miRNA association based on triple layer heterogeneous network

机译:基于三层异构网络推断潜在的小分子-miRNA关联

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摘要

Recently, many biological experiments have indicated that microRNAs (miRNAs) are a newly discovered small molecule (SM) drug targets that play an important role in the development and progression of human complex diseases. More and more computational models have been developed to identify potential associations between SMs and target miRNAs, which would be a great help for disease therapy and clinical applications for known drugs in the field of medical research. In this study, we proposed a computational model of triple layer heterogeneous network based small molecule–MiRNA association prediction (TLHNSMMA) to uncover potential SM–miRNA associations by integrating integrated SM similarity, integrated miRNA similarity, integrated disease similarity, experimentally verified SM–miRNA associations and miRNA–disease associations into a heterogeneous graph. To evaluate the performance of TLHNSMMA, we implemented global and two types of local leave-one-out cross validation as well as fivefold cross validation to compare TLHNSMMA with one previous classical computational model (SMiR-NBI). As a result, for Dataset 1, TLHNSMMA obtained the AUCs of 0.9859, 0.9845, 0.7645 and 0.9851 ± 0.0012, respectively; for Dataset 2, the AUCs are in turn 0.8149, 0.8244, 0.6057 and 0.8168 ± 0.0022. As the result of case studies shown, among the top 10, 20 and 50 potential SM-related miRNAs, there were 2, 7 and 14 SM–miRNA associations confirmed by experiments, respectively. Therefore, TLHNSMMA could be effectively applied to the prediction of SM–miRNA associations.Electronic supplementary materialThe online version of this article (10.1186/s13321-018-0284-9) contains supplementary material, which is available to authorized users.
机译:最近,许多生物学实验表明,microRNA(miRNA)是新发现的小分子(SM)药物靶标,在人类复杂疾病的发展和进程中起着重要作用。已经开发出越来越多的计算模型来识别SM与靶标miRNA之间的潜在关联,这将为疾病研究和医学研究领域中已知药物的临床应用提供巨大帮助。在这项研究中,我们提出了一个基于三层异构网络的小分子-MiRNA关联预测(TLHNSMMA)的计算模型,以通过整合整合的SM相似性,整合的miRNA相似性,整合的疾病相似性,通过实验验证的SM-miRNA来发现潜在的SM-miRNA关联。关联和miRNA-疾病关联成一个异构图。为了评估TLHNSMMA的性能,我们实施了全局和两种类型的局部留一法交叉验证以及五重交叉验证,以将TLHNSMMA与一个先前的经典计算模型(SMiR-NBI)进行比较。结果,对于数据集1,TLHNSMMA获得的AUC分别为0.9859、0.9845、0.7645和0.9851±0.0012;对于数据集2,AUC依次为0.8149、0.8244、0.6057和0.8168±0.0022。案例研究结果显示,在前10、20和50个潜在的SM相关miRNA中,分别有2、7和14个SM–miRNA关联被实验证实。因此,TLHNSMMA可以有效地用于SM-miRNA关联的预测。电子补充材料本文的在线版本(10.1186 / s13321-018-0284-9)包含补充材料,授权用户可以使用。

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