Despite major advances on miRNA profiling and target predictions, functional readouts for endogenous miRNAs are limited and frequently lead to contradicting conclusions. Numerous approaches including functional high-throughput and miRISC complex evaluations suggest that the functional miRNAome differs from the predictions based on quantitative sRNA profiling. To resolve the apparent contradiction of expression versus function, we generated and applied a fluorescence reporter gene assay enabling single cell analysis. This approach integrates and adapts a mathematical model for miRNA-driven gene repression. This model predicts three distinct miRNA-groups with unique repression activities (low, mid and high) governed not just by expression levels but also by miRNA/target-binding capability. Here, we demonstrate the feasibility of the system by applying controlled concentrations of synthetic siRNAs and in parallel, altering target-binding capability on corresponding reporter-constructs. Furthermore, we compared miRNA-profiles with the modeled predictions of 29 individual candidates. We demonstrate that expression levels only partially reflect the miRNA function, fitting to the model-projected groups of different activities. Furthermore, we demonstrate that subcellular localization of miRNAs impacts functionality. Our results imply that miRNA profiling alone cannot define their repression activity. The gene regulatory function is a dynamic and complex process beyond a minimalistic conception of "highly expressed equals high repression".
Dissecting miRNA gene repression on single cell level with an advanced fluorescent reporter system.
利用先进的荧光报告系统在单细胞水平上解析 miRNA 基因抑制
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作者:Lemus-Diaz Nicolas, Böker Kai O, Rodriguez-Polo Ignacio, Mitter Michael, Preis Jasmin, Arlt Maximilian, Gruber Jens
| 期刊: | Scientific Reports | 影响因子: | 3.900 |
| 时间: | 2017 | 起止号: | 2017 Mar 24; 7:45197 |
| doi: | 10.1038/srep45197 | 研究方向: | 细胞生物学 |
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