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Predicting the acid/base behavior of proteins: a constant-pH Monte Carlo approach with generalized born solvent
- Source :
- Journal of Physical Chemistry B, Journal of Physical Chemistry B, American Chemical Society, 2010, 114 (32), pp.10634-48. ⟨10.1021/jp104406x⟩, J Phys Chem B
- Publication Year :
- 2010
- Publisher :
- HAL CCSD, 2010.
-
Abstract
- The acid/base properties of proteins are essential in biochemistry, and proton binding is a valuable reporter on electrostatic interactions. We propose a constant-pH Monte Carlo strategy to compute protonation free energies and pKas. The solvent is described implicitly, through a generalized Born model. The electronic polarizability and backbone motions of the protein are included through the protein dielectric constant. Side chain motions are described explicitly, by the Monte Carlo scheme. An efficient computational algorithm is described, which allows us to treat the fluctuating shape of the protein/solvent boundary in a way that is numerically exact (within the GB framework) this contrasts with several previous constant-pH approaches. For a test set of six proteins and 78 titratable groups, the model performs well, with an rms error of 1.2 pH units. While this is slightly greater than a simple Null model (rms error of 1.1) and a fully empirical model (rms error of 0.9), it is obtained using physically meaningful model parameters, including a low protein dielectric of four. Importantly, similar performance is obtained for side chains with large and small pKa shifts (relative to a standard model compound). The titration curve slopes and the conformations sampled are reasonable. Several directions to improve the method further are discussed. © 2010 American Chemical Society. 114 32 10634 10648 Cited By :20
- Subjects :
- Models, Molecular
Computation theory
MESH: Hydrogen-Ion Concentration
Monte Carlo approach
Protein Conformation
Electronic-polarizability
Monte Carlo method
Proton binding
MESH: Solvents
01 natural sciences
Biochemistry
MESH: Protein Conformation
Computational chemistry
Materials Chemistry
MESH: Proteins
0303 health sciences
Quantitative Biology::Biomolecules
010304 chemical physics
Chemistry
Quantitative Biology::Molecular Networks
MESH: Models, Chemical
Model parameters
Null model
Monte Carlo methods
Hydrogen-Ion Concentration
Electrostatics
Generalized Born
Surfaces, Coatings and Films
Computational efficiency
Generalized born models
Thermodynamics
MESH: Thermodynamics
Monte Carlo Method
MESH: Models, Molecular
Monte Carlo molecular modeling
Standard model
Test sets
MESH: Monte Carlo Method
Quantitative Biology::Subcellular Processes
Hybrid Monte Carlo
Protonation free energy
03 medical and health sciences
Acid/base properties
Empirical model
MONTE CARLO
0103 physical sciences
[SDV.BBM]Life Sciences [q-bio]/Biochemistry, Molecular Biology
Physical and Theoretical Chemistry
Base (exponentiation)
Side chains
030304 developmental biology
Monte carlo schemes
Computational algorithm
Electrostatic interactions
Proteins
RMS errors
Titration curves
Models, Chemical
Solvents
Dynamic Monte Carlo method
Dielectric constants
Constant (mathematics)
Subjects
Details
- Language :
- English
- ISSN :
- 15206106 and 15205207
- Database :
- OpenAIRE
- Journal :
- Journal of Physical Chemistry B, Journal of Physical Chemistry B, American Chemical Society, 2010, 114 (32), pp.10634-48. ⟨10.1021/jp104406x⟩, J Phys Chem B
- Accession number :
- edsair.doi.dedup.....3d141787a5010d0525403b0c741ba475
- Full Text :
- https://doi.org/10.1021/jp104406x⟩