Title
Lessons learned from comparing molecular dynamics engines on the SAMPL5 dataset.
Abstract
We describe our efforts to prepare common starting structures and models for the SAMPL5 blind prediction challenge. We generated the starting input files and single configuration potential energies for the host-guest in the SAMPL5 blind prediction challenge for the GROMACS, AMBER, LAMMPS, DESMOND and CHARMM molecular simulation programs. All conversions were fully automated from the originally prepared AMBER input files using a combination of the ParmEd and InterMol conversion programs. We find that the energy calculations for all molecular dynamics engines for this molecular set agree to better than 0.1 % relative absolute energy for all energy components, and in most cases an order of magnitude better, when reasonable choices are made for different cutoff parameters. However, there are some surprising sources of statistically significant differences. Most importantly, different choices of Coulomb's constant between programs are one of the largest sources of discrepancies in energies. We discuss the measures required to get good agreement in the energies for equivalent starting configurations between the simulation programs, and the energy differences that occur when simulations are run with program-specific default simulation parameter values. Finally, we discuss what was required to automate this conversion and comparison.
Year
DOI
Venue
2017
10.1007/s10822-016-9977-1
Journal of Computer-Aided Molecular Design
Keywords
Field
DocType
Molecular dynamics,Simulation validation,Molecular simulation,SAMPL5
Coulomb,Verification and validation of computer simulation models,Molecular conformation,Molecular simulation,Computer science,Cutoff,Computational chemistry,Software,Molecular dynamics,Bioinformatics,Order of magnitude
Journal
Volume
Issue
ISSN
31
1
1573-4951
Citations 
PageRank 
References 
3
0.43
6
Authors
8
Name
Order
Citations
PageRank
Michael R. Shirts11078.64
Christoph Klein230.77
Jason M Swails330.43
Jian Yin450.80
Michael K. Gilson570764.90
David L. Mobley621920.01
David A. Case71324117.73
Ellen D Zhong830.77