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Published byAllison Cunningham Modified over 8 years ago
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Abstract Premise Figure 1: Flowchart pri-miRNAs were collected from miRBase 10.0 pri-miRNAs were compared to hsa and ptr genomes using BlastN and potential candidates folded into hairpins by RNAfold A list of candidate pre-miRNA was compiled and matched to a list of mature miRNAs (miRBase) Only pri-miRNA candidates that contain mature miRNAs made up final list of candidates Advantage of procedure: fully automated low false positive predictions (conservative nature of prediction algorithm) Algorithm Results We predicted 483 unique miRNA sequences in ptr based on homology to validated miRNAs that were not recorded in miRBase 10.0. Figure 2: Results – hsa-miR-941 multiple locations of hsa-miR-941 precursor hairpin and mature miRNA not recorded in current miRBase registry hsa-miR-941 is located in sub-telomeric region of chromosome 20 pre-miRNA overlap partially over a span of 600 nts 8 potential pre- miRNA hairpins H. Alexander Ebhardt 1, Yifeng Liu 2 and Duane Szafron 2 1 Department of Biochemistry, 2 Department of Computing Science *ebhardt@ualberta.ca Background: micro RNAs Growing number of confirmed micro RNAs (miRNAs) reported in miRBase (see below) Goal: automated prediction of miRNAs based on homology with high accuracy. Presented here is our algorithm together with independent validation. Validation of Results Homology Based Micro RNA Prediction Figure 1: Flowchart Flowchart of automated miRNA prediction algorithm. Figure 2: Results – hsa-miR-941 Our algorithm predicted overlapping genomic location of miR-941 in sub-telomeric region of chromsome 20 not recorded in current miRBase v.10.1. blue: miR-941 registered in miRBase v.10.1 red: additional genomic locations for hsa-miR-941 predicted by our algorithm Figure 3: Independent validation of our results Our algorithm was based on miRBase version 10.0. With the publication of miRBase version 10.1, a subset of our predicted miRNAs were validated by other researchers. Figure 3: Validation of results Our algorithm developed with miRBase 10.0 miRBase 10.1 contained Pan troglodytes miRNAs that were predicted by our algorithm using miRBase 10.0 11 ptr-miR predicted and confirmed 2 ptr-miR not predicted due to stringency parameters in algorithm 2 ptr-miR found pre-miRNA, but not exact match 2 ptr-miR did not have homologoues in 10.0 Ongoing: conformation of prediction by Northern hybridization. RISC Ago1 mRNA AAAAAAAA Drosha pri-miRNA pre-miRNA miRNA/miRNA* duplex Micro RNA mediated translational inhibition of mRNA. Nucleus Cytoplasm Exportin5 RDE-4 Dicer 5' 3' Genomes Homo sapiens Pan troglodytes miRBase 10.0 hairpin miRNA Homo sapiens Pan troglodytes BlastN + Hairpin fold Vienna Package Candidate list Homologous precursor miRNA candidates Exact Match miRBase 10.0 mature miRNA Homo sapiens Pan troglodytes Predicted high confidence miRNAs miRBase 10.0 Pan troglodytes 1 Homo sapiens 533-82 = 45182 miRBase 10.1 Pan troglodytes 1+2 = 3 Homo sapiens 541-97 = 444 82+15 = 97 Pan troglodytes miRNAs miRBase 10.1 Predictions based on miRBase 10.0 483 miRBase 10.1 611 References: Griffiths-Jones S, et al. miRBase: tools for microRNA genomics. Nucleic Acids Res. 2008 Jan;36(Database issue):D154-8. Jackson RJ, Standart N. Ivo L. Hofacker. The Vienna RNA secondary structure server. Nucl. Acids Res., 31:3429–3431, 2003. How do microRNAs regulate gene expression? Sci STKE. 2007 Jan 2;2007(367):re1
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