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Prioritizing candidate disease miRNAs by topological features in the miRNA target-dysregulated network: case study of prostate cancer.

机译:通过miRNA靶点失调的网络中的拓扑特征优先考虑候选疾病miRNA:前列腺癌的案例研究。

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Recently, microRNAs (miRNA), small noncoding RNAs, have taken center stage in the field of human molecular oncology. However, their roles in tumor biology remain largely unknown. According to the assumption that miRNAs implicated in a specific tumor phenotype will show aberrant regulation of their target genes, we introduce an approach based on the miRNA target-dysregulated network (MTDN) to prioritize novel disease miRNAs. Target genes have predicted binding sites for any miRNA. The MTDN is constructed by combining computational target prediction with miRNA and mRNA expression profiles in tumor and nontumor tissues. Application of the proposed method to prostate cancer reveals that known prostate cancer miRNAs are characterized by a greater number of dysregulations and coregulators and the tendency to coregulate with each other and that they share a higher proportion of targets with other prostate cancer miRNAs. Support vector machine classifier, based on these features and changes in miRNA expression, is constructed and gives an average overall prediction accuracy of 0.8872 in cross-validation tests. The classifier is then applied to miRNAs in the MTDN. Functions enriched by dysregulated targets of novel predicted miRNAs are closely associated with oncogenesis. In addition, predicted cancer miRNAs within families or from different families show combinatorial dysregulation of target genes, as revealed by analysis of the MTDN modular organization. Finally, 3 miRNA target regulations are verified to hold in prostate cancer cells by transfection assays. These results show that the network-centric method could prioritize novel disease miRNAs and model how oncogenic lesions are mediated by miRNAs, providing important insights into tumorigenesis.
机译:近来,微小的非编码RNA microRNA(miRNA)在人类分子肿瘤学领域中占据了中心位置。但是,它们在肿瘤生物学中的作用仍然未知。根据与特定肿瘤表型相关的miRNA将显示其靶基因异常调节的假设,我们引入一种基于miRNA靶标失调网络(MTDN)的方法来对新型疾病miRNA进行优先排序。靶基因已预测任何miRNA的结合位点。 MTDN是通过将计算目标预测与miRNA和mRNA在肿瘤和非肿瘤组织中的表达谱相结合而构建的。所提出的方法在前列腺癌中的应用表明,已知的前列腺癌miRNA的特征在于更多的失调和共调节因子,以及彼此共趋化的趋势,并且它们与其他前列腺癌miRNA共享更高比例的靶标。基于这些特征和miRNA表达的变化,构建了支持向量机分类器,并在交叉验证测试中提供了0.8872的平均总预测准确度。然后将分类器应用于MTDN中的miRNA。新型预测的miRNA的靶标失调富集的功能与肿瘤发生密切相关。此外,如对MTDN模块化组织的分析所揭示,在家族中或来自不同家族的预测的癌症miRNA显示出靶基因的组合失调。最终,通过转染测定法证实了3种miRNA靶标调控可在前列腺癌细胞中保持。这些结果表明,以网络为中心的方法可以对新型疾病miRNA进行优先级排序,并模拟miRNA如何介导致癌性病变,从而为肿瘤发生提供重要见解。

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