| Literature DB >> 30131454 |
Xing Zhao1, Danze Chen2, Yujie Cai3, Fan Zhang4, Jianzhen Xu5.
Abstract
Gene post-transcription regulation involves several critical regulators such as microRNAs (miRNAs) and RNA-binding proteins (RBPs). Accumulated experimental evidences have shown that miRNAs and RBPs can competitively regulate the shared targeting transcripts. Although this establishes a novel post-transcription regulation mechanism, there are currently no computational tools to scan for the possible competing miRNA and RBP pairs. Here, we developed a novel computational pipeline-RBPvsMIR-that enables us to statistically evaluate the competing relationship between miRNAs and RBPs. RBPvsMIR first combines with previously successful miRNAs and RBP motifs discovery applications to search for overlapping or adjacent binding sites along a given RNA sequence. Then a permutation test is performed to select the miRNA and RBP pairs with the significantly enriched binding sites. As an example, we used RBPvsMIR to identify 235 competing RBP-miRNA pairs for long non-coding RNA (lncRNA) MALAT1. Wet lab experiments verified that splicing factor SRSF2 competes with miR-383, miR-502 and miR-101 to regulate MALAT1 in esophageal squamous carcinoma cells. Our study also revealed the global mutual exclusive pattern for miRNAs and RBP to regulate human lncRNAs. In addition, we provided a convenient web server (http://bmc.med.stu.edu.cn/RBPvsMIR), which should accelerate the exploration of competing miRNAs and RBP pairs regulating the shared targeting transcripts.Entities:
Keywords: MALAT1; RNA-binding protein; long non-coding RNA; microRNA
Year: 2018 PMID: 30131454 PMCID: PMC6162414 DOI: 10.3390/genes9090426
Source DB: PubMed Journal: Genes (Basel) ISSN: 2073-4425 Impact factor: 4.096
Figure 1Overview of RBPvsMIR analytical scheme. In the scanning stage, RBPvsMIR initially uses PITA/TargetScan and RBPmap algorithms to respectively search for microRNA (miRNA) and ribosome binding pairs (RBP). Then, during evaluating stage, RBPvsMIR reports the miRNA and RBP pairs with significantly enriched overlapping or very close sites based on a permutation test. Finally, candidate miRNA and RBP pairs are verified by wet experiments. FDR: false discovery rate.
Figure 2Experimental confirmation of predicted competition between miRNAs and RBPs. (a) SRSF2 and MALAT1 expression in TE1 cells treated with two small interfering RNA (siRNA)-SRSF2 and control siRNAs. (b) Quantitative real time polymerase chain reaction (qRT-qPCR) for MALAT1 in TE1 cells after transfection with miR-101, miR-383 and miR-502. (c) qRT-PCR of MALAT1 in TE1 cells after co-transfection with both siRNA-SRSF2 and miRNAs. (d) qRT-PCR of MALAT1 in TE1 cells after co-transfection with both siRNA-SRSF2 and miRNAs inhibitors. * p < 0.05, ** p < 0.01, *** p < 0.001. The concentrations of miRNA mimics were tested at both 30 nM and 50 nM. The concentrations of miRNA inhibitors were tested at 100 nM. Data are the means ± standard error of mean (s.e.m.) of three experiments.
Figure 3Global patterns of the competing miRNA and RBP pairs on human functional long non-coding RNA (lncRNAs). (a) The range of numbers of significant competing miRNA and RBP pairs for human functional lncRNAs. (b) the number of competing miRNA and RBP pairs is correlated with the sequence length of lncRNAs. (c) the interacting network of competing miRNAs and RBPs along MALAT1 sequence. Orange and blue circular nodes represent miRNAs and RBPs, respectively. Edges represent the competing relationships among them. Note that diamond nodes are the most connected miRNAs and RBPs in the network.