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iMDA-BN: Identification of miRNA-disease associations based on the biological network and graph embedding algorithm

机译:基于生物网络和图形嵌入算法的MiRNA疾病关联的IMDA-BN

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Benefiting from advances in high-throughput experimental techniques, important regulatory roles of miRNAs, lncRNAs, and proteins, as well as biological property information, are gradually being complemented. As the key data support to promote biomedical research, domain knowledge such as intermolecular relationships that are increasingly revealed by molecular genome-wide analysis is often used to guide the discovery of potential associations. However, the method of performing network representation learning from the perspective of the global biological network is scarce. These methods cover a very limited type of molecular associations and are therefore not suitable for more comprehensive analysis of molecular network representation information. In this study, we propose a computational model based on the Biological network for predicting potential associations between miRNAs and diseases called iMDA-BN. The iMDA-BN has three significant advantages: I) It uses a new method to describe disease and miRNA characteristics which analyzes node representation information for disease and miRNA from the perspective of biological networks. II) It can predict unproven associations even if miRNAs and diseases do not appear in the biological network. III) Accurate description of miRNA characteristics from biological properties based on high-throughput sequence information. The iMDA-BN predictor achieves an AUC of 0.9145 and an accuracy of 84.49% on the miRNA-disease association baseline dataset, and it can also achieve an AUC of 0.8765 and an accuracy of 80.96% when predicting unknown diseases and miRNAs in the biological network. Compared to existing miRNA-disease association prediction methods, iMDA-BN has higher accuracy and the advantage of predicting unknown associations. In addition, 45, 49, and 49 of the top 50 miRNA-disease associations with the highest predicted scores were confirmed in the case studies, respectively.
机译:从高通量实验技术的进展中受益,MiRNA,LNCRNA和蛋白质的重要​​调节作用以及生物学性质信息逐渐被补充。作为促进生物医学研究的关键数据支持,域知识如分子基因组的分析越来越揭示的分子间关系通常用于指导潜在关联的发现。然而,从全球生物网络的角度执行网络表示学习的方法是稀缺的。这些方法涵盖了非常有限的分子关联类型,因此不适合对分子网络表示信息的更全面的分析。在这项研究中,我们提出了一种基于生物网络的计算模型,用于预测MiRNA和疾病所谓的IMDA-BN的潜在关联。 IMDA-BN具有三种显着的优点:i)它使用一种新方法来描述从生物网络的角度分析疾病和miRNA的节点表示信息的疾病和miRNA特征。 ii)即使MiRNA和疾病没有出现在生物网络中,它也可以预测未经证实的关联。 III)基于高吞吐量序列信息,精确描述了生物特性的miRNA特征。 IMDA-BN预测器的AUC达到0.9145的AUC,精度为miRNA-疾病关联基线数据集,也可以在预测生物网络中预测未知疾病和MIRNA时实现0.8765的AUC,准确度为80.96% 。与现有的miRNA疾病关联预测方法相比,IMDA-BN具有更高的准确性和预测未知关联的优点。另外,在案例研究中,确认了45,49和49个具有最高预测分数的miRNA疾病关联。

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