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Open Force Field Consortium: Escaping atom types using direct chemical perception with SMIRNOFF v0.1

View ORCID ProfileDavid L. Mobley, View ORCID ProfileCaitlin C. Bannan, Andrea Rizzi, Christopher I. Bayly, View ORCID ProfileJohn D. Chodera, View ORCID ProfileVictoria T. Lim, Nathan M. Lim, View ORCID ProfileKyle A. Beauchamp, View ORCID ProfileMichael R. Shirts, View ORCID ProfileMichael K. Gilson, Peter K. Eastman
doi: https://doi.org/10.1101/286542
David L. Mobley
1Department of Pharmaceutical Science, University of California, Irvine CA 92697
2Department of Chemistry, University of California, Irvine CA 92697
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Caitlin C. Bannan
2Department of Chemistry, University of California, Irvine CA 92697
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Andrea Rizzi
3Tri-Institutional Program in Computational Biology and Medicine, New York NY 10065
5Computational and Systems Biology Program, Memorial Sloan Kettering Cancer Center, New York NY 10065
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Christopher I. Bayly
4OpenEye Scientific Software, Santa Fe NM 87507
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John D. Chodera
5Computational and Systems Biology Program, Memorial Sloan Kettering Cancer Center, New York NY 10065
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Victoria T. Lim
2Department of Chemistry, University of California, Irvine CA 92697
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Nathan M. Lim
1Department of Pharmaceutical Science, University of California, Irvine CA 92697
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Kyle A. Beauchamp
6Counsyl, South San Francisco, CA 94080
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Michael R. Shirts
7Department of Chemical and Biological Engineering, University of Colorado Boulder, Boulder, CO 80309
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Michael K. Gilson
8Skaggs School of Pharmacy and Pharmaceutical Sciences, University of California, San Diego
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Peter K. Eastman
9Department of Chemistry, Stanford University, Stanford, CA 94305
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Abstract

Here, we focus on testing and improving force fields for molecular modeling, which see widespread use in diverse areas of computational chemistry and biomolecular simulation. A key issue affecting the accuracy and transferrability of these force fields is the use of atom typing. Traditional approaches to defining molecular mechanics force fields must encode, within a discrete set of atom types, all information which will ever be needed about the chemical environment; parameters are then assigned by looking up combinations of these atom types in tables. This atom typing approach leads to a wide variety of problems such as inextensible atom-typing machinery, enormous difficulty in expanding parameters encoded by atom types, and unnecessarily proliferation of encoded parameters. Here, we describe a new approach to assigning parameters for molecular mechanics force fields based on the industry standard SMARTS chemical perception language (with extensions to identify specific atoms available in SMIRKS). In this approach, each force field term (bonds, angles, and torsions, and nonbonded interactions) features separate definitions assigned in a hierarchical manner without using atom types. We accomplish this using direct chemical perception, where parameters are assigned directly based on substructure queries operating on the molecule(s) being parameterized, thereby avoiding the intermediate step of assigning atom types — a step which can be considered indirect chemical perception. Direct chemical perception allows for substantial simplification of force fields, as well as additional generality in the substructure queries. This approach is applicable to a wide variety of (bio)molecular systems, and can greatly reduce the number of parameters needed to create a complete force field. Further flexibility can also be gained by allowing force field terms to be interpolated based on the assignment of fractional bond orders via the same procedure used to assign partial charges. As an example of the utility of this approach, we provide a minimalist small molecule force field derived from Merck’s parm@Frosst (an Amber parm99 descendant), in which a parameter definition file only «300 lines long can parameterize a large and diverse spectrum of pharmaceutically relevant small molecule chemical space. We benchmark this minimalist force field on the FreeSolv small molecule hydration free energy set and calculations of densities and dielectric constants from the ThermoML Archive, demonstrating that it achieves comparable accuracy to the Generalized Amber Force Field (GAFF) that consists of many thousands of parameters.

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The copyright holder for this preprint is the author/funder, who has granted bioRxiv a license to display the preprint in perpetuity. It is made available under a CC-BY 4.0 International license.
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Posted July 13, 2018.
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Open Force Field Consortium: Escaping atom types using direct chemical perception with SMIRNOFF v0.1
David L. Mobley, Caitlin C. Bannan, Andrea Rizzi, Christopher I. Bayly, John D. Chodera, Victoria T. Lim, Nathan M. Lim, Kyle A. Beauchamp, Michael R. Shirts, Michael K. Gilson, Peter K. Eastman
bioRxiv 286542; doi: https://doi.org/10.1101/286542
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Open Force Field Consortium: Escaping atom types using direct chemical perception with SMIRNOFF v0.1
David L. Mobley, Caitlin C. Bannan, Andrea Rizzi, Christopher I. Bayly, John D. Chodera, Victoria T. Lim, Nathan M. Lim, Kyle A. Beauchamp, Michael R. Shirts, Michael K. Gilson, Peter K. Eastman
bioRxiv 286542; doi: https://doi.org/10.1101/286542

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