Literature DB >> 18074340

An improved pairwise decomposable finite-difference Poisson-Boltzmann method for computational protein design.

Christina L Vizcarra1, Naigong Zhang, Shannon A Marshall, Ned S Wingreen, Chen Zeng, Stephen L Mayo.   

Abstract

Our goal is to develop accurate electrostatic models that can be implemented in current computational protein design protocols. To this end, we improve upon a previously reported pairwise decomposable, finite difference Poisson-Boltzmann (FDPB) model for protein design (Marshall et al., Protein Sci 2005, 14, 1293). The improvement involves placing generic sidechains at positions with unknown amino acid identity and explicitly capturing two-body perturbations to the dielectric environment. We compare the original and improved FDPB methods to standard FDPB calculations in which the dielectric environment is completely determined by protein atoms. The generic sidechain approach yields a two to threefold increase in accuracy per residue or residue pair over the original pairwise FDPB implementation, with no additional computational cost. Distance dependent dielectric and solvent-exclusion models were also compared with standard FDPB energies. The accuracy of the new pairwise FDPB method is shown to be superior to these models, even after reparameterization of the solvent-exclusion model. Copyright 2007 Wiley Periodicals, Inc.

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Year:  2008        PMID: 18074340     DOI: 10.1002/jcc.20878

Source DB:  PubMed          Journal:  J Comput Chem        ISSN: 0192-8651            Impact factor:   3.376


  12 in total

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2.  Adapting Poisson-Boltzmann to the self-consistent mean field theory: application to protein side-chain modeling.

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3.  A solvated ligand rotamer approach and its application in computational protein design.

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4.  Systematic optimization model and algorithm for binding sequence selection in computational enzyme design.

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5.  LUTE (Local Unpruned Tuple Expansion): Accurate Continuously Flexible Protein Design with General Energy Functions and Rigid Rotamer-Like Efficiency.

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6.  Computational design of membrane proteins using RosettaMembrane.

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7.  Protein Design by Provable Algorithms.

Authors:  Mark A Hallen; Bruce R Donald
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8.  Dead-end elimination with perturbations (DEEPer): a provable protein design algorithm with continuous sidechain and backbone flexibility.

Authors:  Mark A Hallen; Daniel A Keedy; Bruce R Donald
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9.  Computational design of enzyme-ligand binding using a combined energy function and deterministic sequence optimization algorithm.

Authors:  Ye Tian; Xiaoqiang Huang; Yushan Zhu
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Review 10.  Computational design of affinity and specificity at protein-protein interfaces.

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