RNA Structure Prediction

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Presentation transcript:

RNA Structure Prediction Tutorial 9 RNA Structure Prediction

RNA Structure Prediction RNA secondary structure prediction RNAfold, RNAalifold microRNA prediction TargetScan – Cool story of the day: How viruses use miRNAs to attack humans

RNA secondary structure prediction GGGCUAUUAGCUCAGUUGGUUAGAGCGCACCCCUGAUAAGGGUGAGGUCGCUGAUUCGAAUUCAGCAUAGCCCA Base pair probability

RNA structure prediction by Vienna RNA package RNAfold server  Minimum free energy structures and base pair probabilities from single RNA or DNA sequences. RNAalifold server  Consensus secondary structures from an alignment of several related RNA or DNA sequences. You need to upload an alignment.

http://rna.tbi.univie.ac.at/

RNAfold Gives best stabilized structure (structure with minimal free energy (MFE)) Uses a dynamic programming algorithm that exploits base pairing and thermodynamic probabilities in order to predict the most likely structures of an RNA molecule.

RNAfold - input RNA sequence

RNAfold - output Minimal free energy structure Structure prediction Free energy of the ensamble Best “average” structure

Graphic representation An average, may not exist in the ensemble MFE structure

Structure prediction based on alignments RNAalifold Structure prediction based on alignments Alignment

RNAalifold - output

Understanding the color scheme C-G U-A C-G G-C U-A A-U C-C http://www.almob.org/content/pdf/1748-7188-6-26.pdf

MicroRNAs miRNA gene mature miRNA Target gene

MicroRNA in Cancer Sun et al, 2012

The challenge for Bioinformatics: - Identifying new microRNA genes - Identifying the targets of specific microRNA

How to find microRNA genes? Searching for sequences that fold to a hairpin ~70 nt -RNAfold -other efficient algorithms for identifying stem loops Concentrating on intragenic regions and introns - Filtering coding regions Filtering out non conserved candidates -Mature and pre-miRNA is usually evolutionary conserved

How to find microRNA genes? A. Structure prediction B. Evolutionary Conservation

Predicting microRNA targets MicroRNA targets are located in 3’ UTRs, and complementing mature microRNAs Why is it hard to find them ?? Base pairing is required only in the seed sequence (7-8 nt) Lots of known miRNAs have similar seed sequences Very high probability to find by chance mature miRNA 3’ UTR of Target gene

Predicting microRNA target genes General methods - Find motifs which complements the seed sequence (allow mismatches) Look for conserved target sites Consider the MFE of the RNA-RNA pairing ∆G (miRNA+target) Consider the delta MFE for RNA-RNA pairing versus the folding of the target ∆G (miRNA+target )- ∆G (target)

http://www.targetscan.org/

A score reflecting the probability that a site is conserved due to selective maintenance of miRNA targeting rather than by chance or any other reason. Sum of phylogenetic branch lengths between species that contain a site More negative scores represent a more favorable site The stability of of a miRNA-target duplex

Mir 136

Mir 136 - conserved* microRNA * conserved across most mammals, but usually not beyond placental mammals

How to evaluate our results True positive (TP) = correctly identified (miRNA targets correctly identified) False positive (FP)= incorrectly identified (non miRNA targets miss identified as targets) True negative (TN)= correctly rejected (non miRNA targets correctly not identified) False negative (FN) = incorrectly rejected (miRNA targets not identified) Sensitivity (recall)= True positive Rate = TP /(TP+FN) Specificity (precision)= True Negative Rate = TN /(TN+FP)

How viruses use miRNAs to attack humans? Cool Story of the day How viruses use miRNAs to attack humans?

The group developed an algorithm for predicting miRNA targets and applied it to human Cytomegalovirus (hcmv) miRNAs MICB, an immunorelated gene, was among the highest ranking predicted targets and the top prediction for hcmv-miR-UL112. They found that hcmv-miR-UL112 specifically down-regulates MICB expression during viral infection, leading to reduced killing by Natural Killer cells (A human virus-defense mechanism)

Natural Killer (NK) cells NK cells are cytotoxic lymphocyte that kill virus-infected cells and tumor cells. In order to function they should be activated through receptors. One of these is NKG2D. MICB is a stress-induced ligand of NK cells through the NKG2D receptor). Cerwenka et al. Nature Reviews Immunology 2001