Publication | Closed Access
RNA modeling using Gibbs sampling and stochastic context free grammars.
34
Citations
18
References
1994
Year
Common Secondary StructureGeneticsSecondary StructureMolecular BiologySequence AlignmentGene RecognitionSequence MotifGibbs SamplingRna Structure PredictionSequence AnalysisGrammar InductionFunctional GenomicsBioinformaticsStructural BiologyBiologyNatural SciencesComputational BiologySystems BiologyMedicine
A new method of discovering the common secondary structure of a family of homologous RNA sequences using Gibbs sampling and stochastic context-free grammars is proposed. Given an unaligned set of sequences, a Gibbs sampling step simultaneously estimates the secondary structure of each sequence and a set of statistical parameters describing the common secondary structure of the set as a whole. These parameters describe a statistical model of the family. After the Gibbs sampling has produced a crude statistical model for the family, this model is translated into a stochastic context-free grammar, which is then refined by an Expectation Maximization (EM) procedure to produce a more complete model. A prototype implementation of the method is tested on tRNA, pieces of 16S rRNA and on U5 snRNA with good results.
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