CONTRAfold: RNA secondary structure prediction without physics-based models.

Chuong B Do, Daniel A Woods, Serafim Batzoglou
Author Information
  1. Chuong B Do: Computer Science Department, Stanford University, Stanford, CA 94305, USA. chuongdo@cs.stanford.edu

Abstract

MOTIVATION: For several decades, free energy minimization methods have been the dominant strategy for single sequence RNA secondary structure prediction. More recently, stochastic context-free grammars (SCFGs) have emerged as an alternative probabilistic methodology for modeling RNA structure. Unlike physics-based methods, which rely on thousands of experimentally-measured thermodynamic parameters, SCFGs use fully-automated statistical learning algorithms to derive model parameters. Despite this advantage, however, probabilistic methods have not replaced free energy minimization methods as the tool of choice for secondary structure prediction, as the accuracies of the best current SCFGs have yet to match those of the best physics-based models.
RESULTS: In this paper, we present CONTRAfold, a novel secondary structure prediction method based on conditional log-linear models (CLLMs), a flexible class of probabilistic models which generalize upon SCFGs by using discriminative training and feature-rich scoring. In a series of cross-validation experiments, we show that grammar-based secondary structure prediction methods formulated as CLLMs consistently outperform their SCFG analogs. Furthermore, CONTRAfold, a CLLM incorporating most of the features found in typical thermodynamic models, achieves the highest single sequence prediction accuracies to date, outperforming currently available probabilistic and physics-based techniques. Our result thus closes the gap between probabilistic and thermodynamic models, demonstrating that statistical learning procedures provide an effective alternative to empirical measurement of thermodynamic parameters for RNA secondary structure prediction.
AVAILABILITY: Source code for CONTRAfold is available at http://contra.stanford.edu/contrafold/.

Grants

  1. U01-HG003162/NHGRI NIH HHS

MeSH Term

Algorithms
Base Sequence
Computer Simulation
Models, Chemical
Models, Molecular
Models, Statistical
Molecular Sequence Data
Nucleic Acid Conformation
Physics
RNA
Sequence Alignment
Sequence Analysis, RNA
Software

Chemicals

RNA

Word Cloud

Created with Highcharts 10.0.0structurepredictionsecondarymodelsmethodsprobabilisticRNASCFGsphysics-basedthermodynamicparametersCONTRAfoldfreeenergyminimizationsinglesequencealternativestatisticallearningaccuraciesbestCLLMsavailableMOTIVATION:severaldecadesdominantstrategyrecentlystochasticcontext-freegrammarsemergedmethodologymodelingUnlikerelythousandsexperimentally-measuredusefully-automatedalgorithmsderivemodelDespiteadvantagehoweverreplacedtoolchoicecurrentyetmatchRESULTS:paperpresentnovelmethodbasedconditionallog-linearflexibleclassgeneralizeuponusingdiscriminativetrainingfeature-richscoringseriescross-validationexperimentsshowgrammar-basedformulatedconsistentlyoutperformSCFGanalogsFurthermoreCLLMincorporatingfeaturesfoundtypicalachieveshighestdateoutperformingcurrentlytechniquesresultthusclosesgapdemonstratingproceduresprovideeffectiveempiricalmeasurementAVAILABILITY:Sourcecodehttp://contrastanfordedu/contrafold/CONTRAfold:without

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