Department of Physics of Complex Systems, Weizmann Institute of Science, Rehovot, 76100, Israel.
Nucleic Acids Res. 2012 Nov;40(21):10614-27. doi: 10.1093/nar/gks841. Epub 2012 Sep 12.
MicroRNAs (miRs) function primarily as post-transcriptional negative regulators of gene expression through binding to their mRNA targets. Reliable prediction of a miR's targets is a considerable bioinformatic challenge of great importance for inferring the miR's function. Sequence-based prediction algorithms have high false-positive rates, are not in agreement, and are not biological context specific. Here we introduce CoSMic (Context-Specific MicroRNA analysis), an algorithm that combines sequence-based prediction with miR and mRNA expression data. CoSMic differs from existing methods--it identifies miRs that play active roles in the specific biological system of interest and predicts with less false positives their functional targets. We applied CoSMic to search for miRs that regulate the migratory response of human mammary cells to epidermal growth factor (EGF) stimulation. Several such miRs, whose putative targets were significantly enriched by migration processes were identified. We tested three of these miRs experimentally, and showed that they indeed affected the migratory phenotype; we also tested three negative controls. In comparison to other algorithms CoSMic indeed filters out false positives and allows improved identification of context-specific targets. CoSMic can greatly facilitate miR research in general and, in particular, advance our understanding of individual miRs' function in a specific context.
微小 RNA(miRs)主要通过与其 mRNA 靶标结合,作为转录后基因表达的负调控因子发挥作用。可靠地预测 miR 的靶标是一个相当大的生物信息学挑战,对于推断 miR 的功能非常重要。基于序列的预测算法具有高的假阳性率,不一致,并且不是生物上下文特定的。在这里,我们介绍了 CoSMic(特定于上下文的 miRNA 分析),这是一种将基于序列的预测与 miR 和 mRNA 表达数据相结合的算法。CoSMic 与现有方法不同,它可以识别在特定生物系统中发挥积极作用的 miR,并以较低的假阳性率预测其功能靶标。我们应用 CoSMic 来寻找调节人乳腺细胞对表皮生长因子(EGF)刺激的迁移反应的 miR。鉴定出了几个具有显著富集迁移过程的潜在靶标。我们通过实验测试了其中的三个 miR,并证明它们确实影响了迁移表型;我们还测试了三个负对照。与其他算法相比,CoSMic 确实可以过滤掉假阳性,并有助于更好地识别特定于上下文的靶标。CoSMic 可以极大地促进一般的 miR 研究,特别是促进我们对特定于特定环境的单个 miR 功能的理解。