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首页> 外文期刊>Scientific reports. >miRDDCR: a miRNA-based method to comprehensively infer drug-disease causal relationships
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miRDDCR: a miRNA-based method to comprehensively infer drug-disease causal relationships

机译:miRDDCR:一种基于miRNA的方法,可全面推断药物疾病的因果关系

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Revealing the cause-and-effect mechanism behind drug-disease relationships remains a challenging task. Recent studies suggested that drugs can target microRNAs (miRNAs) and alter their expression levels. In the meanwhile, the inappropriate expression of miRNAs will lead to various diseases. Therefore, targeting specific miRNAs by small-molecule drugs to modulate their activities provides a promising approach to human disease treatment. However, few studies attempt to discover drug-disease causal relationships through the molecular level of miRNAs. Here, we developed a miRNA-based inference method miRDDCR to comprehensively predict drug-disease causal relationships. We first constructed a three-layer drug-miRNA-disease heterogeneous network by combining similarity measurements, existing drug-miRNA associations and miRNA-disease associations. Then, we extended the algorithm of Random Walk to the three-layer heterogeneous network and ranked the potential indications for drugs. Leave-one-out cross-validations and case studies demonstrated that our method miRDDCR can achieve excellent prediction power. Compared with related methods, our causality discovery-based algorithm showed superior prediction ability and highlighted the molecular basis miRNAs, which can be used to assist in the experimental design for drug development and disease treatment. Finally, comprehensively inferred drug-disease causal relationships were released for further studies.
机译:揭示毒品疾病关系背后的因果机制仍然是一项艰巨的任务。最近的研究表明,药物可以靶向microRNA(miRNA)并改变其表达水平。同时,miRNA的不适当表达将导致多种疾病。因此,通过小分子药物靶向特定的miRNA以调节其活性为人类疾病治疗提供了一种有前途的方法。然而,很少有研究试图通过miRNA的分子水平发现药物-疾病的因果关系。在这里,我们开发了一种基于miRNA的推断方法miRDDCR来全面预测药物-疾病的因果关系。我们首先通过结合相似性测量,现有药物-miRNA关联和miRNA-疾病关联,构建了一个三层的药物-miRNA-疾病异质网络。然后,我们将“随机游走”算法扩展到三层异构网络,并对可能的药物适应症进行排序。留一法交叉验证和案例研究表明,我们的方法miRDDCR可以实现出色的预测能力。与相关方法相比,我们基于因果关系发现的算法显示出出众的预测能力并突出了分子基础miRNA,可用于辅助药物开发和疾病治疗的实验设计。最后,发布了全面推断的药物-疾病因果关系以供进一步研究。

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