Potential of mean force
When examining a system computationally one may be interested in knowing how the free energy changes as a function of some inter- or intramolecular coordinate (such as the distance between two atoms or a torsional angle). The free energy surface along the chosen coordinate is referred to as the potential of mean force (PMF). If the system of interest is in a solvent, then the PMF also incorporates the solvent effects.[1]
General description
The PMF can be obtained in Monte Carlo or Molecular Dynamics simulations which examine how a system's energy changes as a function of some specific reaction coordinate parameter. For example, it may examine how the system's energy changes as a function of the distance between two residues, or as a protein is pulled through a lipid bilayer. It can be a geometrical coordinate or a more general energetic (solvent) coordinate. Often PMF simulations are used in conjunction with umbrella sampling, because typically the PMF simulation will fail to adequately sample the system space as it proceeds.[2]
Mathematical description
The Potential of Mean Force[3] of a system with N particles is by construction the potential that gives the average force over all the configurations of all the n+1...N particles acting on a particle j at any fixed configuration keeping fixed a set of particles 1...n
Above, is the averaged force, i.e. "mean force" on particle j. And is the so-called potential of mean force. For , is the average work needed to bring the two particles from infinite separation to a distance . It is also related to the radial distribution function of the system, , by:[4]
Application
The potential of mean force is usually applied in the Boltzmann inversion method as a first guess for the effective pair interaction potential that ought to reproduce the correct radial distribution function in a mesoscopic simulation.[5] Lemkul et al. have used steered molecular dynamics simulations to calculate the potential of mean force to assess the stability of Alzheimer's amyloid protofibrils.[6] Gosai et al. have also used umbrella sampling simulations to show that potential of mean force decreases between thrombin and its aptamer (a protein-ligand complex) under the effect of electrical fields.[7]
See also
References
- Leach, Dr Andrew (2001-01-30). Molecular Modelling: Principles and Applications (2 ed.). Harlow: Prentice Hall. ISBN 9780582382107.
- A. R. Leach, Molecular Modelling: Principles and Applications, 2001, ISBN 0-582-38210-6
- Kirkwood, John G. (May 1935). "Statistical Mechanics of Fluid Mixtures". The Journal of Chemical Physics. 3 (5): 300–313. Bibcode:1935JChPh...3..300K. doi:10.1063/1.1749657.
- See Chandler, section 7.3
- Reith, Dirk; Pütz, Mathias; Müller-Plathe, Florian (October 2003). "Deriving effective mesoscale potentials from atomistic simulations". Journal of Computational Chemistry. 24 (13): 1624–1636. arXiv:cond-mat/0211454. doi:10.1002/jcc.10307. PMID 12926006. S2CID 1933490.
- Lemkul, Justin A.; Bevan, David R. (4 February 2010). "Assessing the Stability of Alzheimer's Amyloid Protofibrils Using Molecular Dynamics". The Journal of Physical Chemistry B. 114 (4): 1652–1660. doi:10.1021/jp9110794. PMID 20055378.
- Gosai, Agnivo; Ma, Xiao; Balasubramanian, Ganesh; Shrotriya, Pranav (22 November 2016). "Electrical Stimulus Controlled Binding/Unbinding of Human Thrombin-Aptamer Complex". Scientific Reports. 6 (1): 37449. Bibcode:2016NatSR...637449G. doi:10.1038/srep37449. PMC 5118750. PMID 27874042.
Further reading
- McQuarrie, D. A. Statistical Mechanics.
- Chandler, D. (1987). Introduction to Modern Statistical Mechanics. Oxford University Press.