Application of advanced sampling and analysis methods to predict the structure of adsorbed protein on a material surface

Abstract

The use of standard molecular dynamics simulation methods to predict the interactions of a protein with a material surface have the inherent limitations of lacking the ability to determine the most likely conformations and orientations of the adsorbed protein on the surface and to determine the level of convergence attained by the simulation. In addition, standard mixing rules are typically applied to combine the nonbonded force field parameters of the solution and solid phases of the system to represent interfacial behavior without validation. As a means to circumvent these problems, the authors demonstrate the application of an efficient advanced sampling method (TIGER2A) for the simulation of the adsorption of hen egg-white lysozyme on a crystalline (110) high-density polyethylene surface plane. Simulations are conducted to generate a Boltzmann-weighted ensemble of sampled states using force field parameters that were validated to represent interfacial behavior for this system. The resulting ensembles of sampled states were then analyzed using an in-house-developed cluster analysis method to predict the most probable orientations and conformations of the protein on the surface based on the amount of sampling performed, from which free energy differences between the adsorbed states were able to be calculated. In addition, by conducting two independent sets of TIGER2A simulations combined with cluster analyses, the authors demonstrate a method to estimate the degree of convergence achieved for a given amount of sampling. The results from these simulations demonstrate that these methods enable the most probable orientations and conformations of an adsorbed protein to be predicted and that the use of our validated interfacial force field parameter set provides closer agreement to available experimental results compared to using standard CHARMM force field parameterization to represent molecular behavior at the interface.

Document Details

Document Type
Pub Defense Publication
Publication Date
May 17, 2017
Source ID
10.1116/1.4983274

Entities

People

  • David L. Hyde-volpe
  • Robert A. Latour
  • Steven J. Stuart
  • Tigran M. Abramyan

Organizations

  • Clemson University
  • Defense Threat Reduction Agency
  • National Institutes of Health
  • Wellcome Trust

Tags

Readers

  • Computational Modeling and Simulation
  • Molecular and Cellular Biochemistry
  • Quantum Chemistry