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Which statistical significance test best detects oncomiRNAs in cancer tissues? An exploratory analysis

机译:哪种统计学意义的检测方法可以最好地检测癌组织中的癌基因RNA?探索性分析

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摘要

MicroRNAs(miRNAs) often exert their oncogenic and tumor suppressor functions by suppressing protein-coding genes expressions in cancers and thus have a strong association with cancers' generation, development and metastasis. Through comprehensively understanding differentially expressed miRNAs (oncomiRNA) in tumor tissues, we can elucidate the underlying molecular mechanisms in tumorigenesis and develop novel strategies for cancer diagnosis and treatment. The differential expression of miRNAs can now be analyzed through numerous statistical significance tests based on different principles, which are also available in various R packages. However, the results can be notably different. In this study, we compared miRNAs obtained from 6 common significance tests/R packages (t-test, Limma, DESeq, edgeR, LRT and MARS) with the miRNAs archived in two databases; HMDD 2.0 database, which collects experimentally validated differentially expressed miRNAs, and Infer microRNA-disease association database, which contains the potential disease-associated miRNAs by network forecasting. Finally, we sought the MARS method in DEGseq package more effectively searched out differentially expressed miRNAs than other common methods.
机译:微小RNA(miRNA)通常通过抑制癌症中蛋白质编码基因的表达来发挥其致癌和抑癌功能,因此与癌症的发生,发展和转移密切相关。通过全面了解肿瘤组织中差异表达的miRNA(oncomiRNA),我们可以阐明肿瘤发生中的潜在分子机制,并开发新的癌症诊断和治疗策略。现在可以通过基于不同原理的众多统计显着性检验来分析miRNA的差异表达,这些检验也可在各种R包中获得。但是,结果可能会明显不同。在这项研究中,我们比较了从6种常见显着性测试/ R包(t检验,Limma,DESeq,edgeR,LRT和MARS)获得的miRNA与两个数据库中存储的miRNA; HMDD 2.0数据库收集经过实验验证的差异表达的miRNA,以及推断microRNA-疾病关联数据库,该数据库包含通过网络预测可能与疾病相关的miRNA。最后,我们寻求DEGseq包中的MARS方法比其他常见方法更有效地搜索差异表达的miRNA。

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