A New Ontology-Based Method for Functional Composed Comparison of MicroRNAs

Mariana Yuri Sasazaki, J. C. Felipe
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Abstract

MicroRNAs (miRNAs) are small non-coding RNA molecules that negatively regulate gene expression, playing critical roles in many relevant biological processes. Since there are no terms of miRNAs annotation in Gene Ontology (GO) nor a database with miRNA functional annotation, the direct computation of functional similarity between miRNAs cannot be done under an established standardized approach. However, a miRNA can be annotated with a set of information, such as if it acts as oncogene or as tumour suppressor, the organism that it belongs, its association with diseases, target genes, proteins and pathological events. This way, the similarity between two miRNAs can be inferred based, for example, in the relative position of their respective target genes in GO. In this study, we propose and evaluate CFSim, a method that uses GO and the disease ontology MeSH to compute miRNAs composed similarity by combining different information related to them. We validated CFSim by examining functional similarity values inferred intra and inter miRNA families, and the results showed that our method is efficient in sense that the functional similarity between miRNAs in the same family was higher compared to other miRNAs from distinct families. Furthermore, in comparison with existing methods for functional similarity, CFSim is more effective in distinguishing miRNA families.
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基于本体的microrna功能组成比较新方法
MicroRNAs (miRNAs)是一种非编码小分子RNA,可以负向调节基因表达,在许多相关的生物学过程中发挥关键作用。由于基因本体(Gene Ontology, GO)中没有miRNA注释的术语,也没有miRNA功能注释的数据库,因此无法在既定的标准化方法下直接计算miRNA之间的功能相似性。然而,miRNA可以用一系列信息进行注释,例如它是作为致癌基因还是肿瘤抑制基因,它所属的生物体,它与疾病的关联,靶基因,蛋白质和病理事件。通过这种方式,可以推断出两个mirna之间的相似性,例如,基于它们各自靶基因在氧化石墨烯中的相对位置。在本研究中,我们提出并评估了CFSim,这是一种使用GO和疾病本体MeSH通过组合与它们相关的不同信息来计算mirna组成相似度的方法。我们通过检查miRNA家族内部和家族间推断的功能相似性值来验证CFSim,结果表明我们的方法是有效的,因为同一家族的miRNA之间的功能相似性高于来自不同家族的其他miRNA。此外,与现有的功能相似性方法相比,CFSim在区分miRNA家族方面更有效。
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