Publication | Closed Access
Using path sampling to build better Markovian state models: Predicting the folding rate and mechanism of a tryptophan zipper beta hairpin
272
Citations
21
References
2004
Year
EngineeringProtein FoldingFolding ProbabilityHidden Markov ModelComputational BiologyMolecular BiologyProtein ModelingProtein Structure PredictionMarkovian State ModelsMarkov Chain Monte CarloMonte Carlo SamplingSystems BiologyMedicineMolecular DynamicsFolding RateBiophysicsRate ConstantsComputational Biophysics
We propose an efficient method for the prediction of protein folding rate constants and mechanisms. We use molecular dynamics simulation data to build Markovian state models (MSMs), discrete representations of the pathways sampled. Using these MSMs, we can quickly calculate the folding probability (P(fold)) and mean first passage time of all the sampled points. In addition, we provide techniques for evaluating these values under perturbed conditions without expensive recomputations. To demonstrate this method on a challenging system, we apply these techniques to a two-dimensional model energy landscape and the folding of a tryptophan zipper beta hairpin.
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