| Literature DB >> 27110276 |
Ronny Lorenz1, Ivo L Hofacker2, Peter F Stadler3.
Abstract
BACKGROUND: A large class of RNA secondary structure prediction programs uses an elaborate energy model grounded in extensive thermodynamic measurements and exact dynamic programming algorithms. External experimental evidence can be in principle be incorporated by means of hard constraints that restrict the search space or by means of soft constraints that distort the energy model. In particular recent advances in coupling chemical and enzymatic probing with sequencing techniques but also comparative approaches provide an increasing amount of experimental data to be combined with secondary structure prediction.Entities:
Keywords: Constraints; Dynamic programming; RNA folding
Year: 2016 PMID: 27110276 PMCID: PMC4842303 DOI: 10.1186/s13015-016-0070-z
Source DB: PubMed Journal: Algorithms Mol Biol ISSN: 1748-7188 Impact factor: 1.405
Fig. 1Speedup gained from removing low probability base pairs. Speedup for drawing 1,000,000 samples from the Boltzmann ensemble due to removal of low probability thresholds. The speedup largely depends on the fraction of base pairs the can be removed
Fig. 2Prediction performance for tRNAdb benchmark set. Treating chemically modified bases as unpaired increases both sensitivity and positive predictive value on the tRNAdb benchmark set. 95 % confidence intervals were estimated using bootstrapping with 1000 iterations
Fig. 3Theophylline ligand binding to RNA structure motif using the soft constraints framework. a The core motif of the aptamer conformation. b Core motif abstraction to a simple interior loop suitable for the soft constraints framework. c Shift in predicted equilibrium base pair probabilities from ligand free prediction (upper arcs), to prediction with bound theophylline (lower arcs) for an artificial RNA sequence taken from [58]