Literature DB >> 21341875

Constrained proper sampling of conformations of transition state ensemble of protein folding.

Ming Lin1, Jian Zhang, Hsiao-Mei Lu, Rong Chen, Jie Liang.   

Abstract

Characterizing the conformations of protein in the transition state ensemble (TSE) is important for studying protein folding. A promising approach pioneered by Vendruscolo et al. [Nature (London) 409, 641 (2001)] to study TSE is to generate conformations that satisfy all constraints imposed by the experimentally measured φ values that provide information about the native likeness of the transition states. Faísca et al. [J. Chem. Phys. 129, 095108 (2008)] generated conformations of TSE based on the criterion that, starting from a TS conformation, the probabilities of folding and unfolding are about equal through Markov Chain Monte Carlo (MCMC) simulations. In this study, we use the technique of constrained sequential Monte Carlo method [Lin et al., J. Chem. Phys. 129, 094101 (2008); Zhang et al. Proteins 66, 61 (2007)] to generate TSE conformations of acylphosphatase of 98 residues that satisfy the φ-value constraints, as well as the criterion that each conformation has a folding probability of 0.5 by Monte Carlo simulations. We adopt a two stage process and first generate 5000 contact maps satisfying the φ-value constraints. Each contact map is then used to generate 1000 properly weighted conformations. After clustering similar conformations, we obtain a set of properly weighted samples of 4185 candidate clusters. Representative conformation of each of these cluster is then selected and 50 runs of Markov chain Monte Carlo (MCMC) simulation are carried using a regrowth move set. We then select a subset of 1501 conformations that have equal probabilities to fold and to unfold as the set of TSE. These 1501 samples characterize well the distribution of transition state ensemble conformations of acylphosphatase. Compared with previous studies, our approach can access much wider conformational space and can objectively generate conformations that satisfy the φ-value constraints and the criterion of 0.5 folding probability without bias. In contrast to previous studies, our results show that transition state conformations are very diverse and are far from nativelike when measured in cartesian root-mean-square deviation (cRMSD): the average cRMSD between TSE conformations and the native structure is 9.4 Å for this short protein, instead of 6 Å reported in previous studies. In addition, we found that the average fraction of native contacts in the TSE is 0.37, with enrichment in native-like β-sheets and a shortage of long range contacts, suggesting such contacts form at a later stage of folding. We further calculate the first passage time of folding of TSE conformations through calculation of physical time associated with the regrowth moves in MCMC simulation through mapping such moves to a Markovian state model, whose transition time was obtained by Langevin dynamics simulations. Our results indicate that despite the large structural diversity of the TSE, they are characterized by similar folding time. Our approach is general and can be used to study TSE in other macromolecules.

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Year:  2011        PMID: 21341875      PMCID: PMC3071304          DOI: 10.1063/1.3519056

Source DB:  PubMed          Journal:  J Chem Phys        ISSN: 0021-9606            Impact factor:   3.488


  42 in total

1.  Comparison of successive transition states for folding reveals alternative early folding pathways of two homologous proteins.

Authors:  Nicoletta Calosci; Celestine N Chi; Barbara Richter; Carlo Camilloni; Ake Engström; Lars Eklund; Carlo Travaglini-Allocatelli; Stefano Gianni; Michele Vendruscolo; Per Jemth
Journal:  Proc Natl Acad Sci U S A       Date:  2008-11-25       Impact factor: 11.205

2.  Identifying critical residues in protein folding: Insights from phi-value and P(fold) analysis.

Authors:  P F N Faísca; R D M Travasso; R C Ball; E I Shakhnovich
Journal:  J Chem Phys       Date:  2008-09-07       Impact factor: 3.488

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Review 4.  Computational studies of membrane proteins: models and predictions for biological understanding.

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5.  Spatial confinement is a major determinant of the folding landscape of human chromosomes.

Authors:  Gamze Gürsoy; Yun Xu; Amy L Kenter; Jie Liang
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6.  Fast protein loop sampling and structure prediction using distance-guided sequential chain-growth Monte Carlo method.

Authors:  Ke Tang; Jinfeng Zhang; Jie Liang
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Authors:  Jun Li; Jian Zhang; Jun Wang; Wenfei Li; Wei Wang
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  8 in total

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