A Scalable Molecular Force Field Parameterization Method Based on Density Functional Theory and Quantum-Level Machine Learning

被引:63
作者
Galvelis, Raimondas [1 ]
Doerr, Stefan [1 ,2 ]
Damas, Joao M. [1 ]
Harvey, Matt J. [1 ]
De Fabritiis, Gianni [1 ,2 ,3 ]
机构
[1] Acellera Labs, C Doctor Trueta 183, Barcelona 08005, Spain
[2] Univ Pompeu Fabra, PRBB, Computat Sci Lab, C Doctor Aiguader 88, Barcelona 08003, Spain
[3] ICREA, Passeig Lluis Co 23, Barcelona 08010, Spain
基金
欧盟地平线“2020”;
关键词
EFFICIENT GENERATION; ATOMIC CHARGES; AM1-BCC MODEL; DYNAMICS; REPRESENTATION; CHEMISTRY; ACCURACY; PROTEINS;
D O I
10.1021/acs.jcim.9b00439
中图分类号
R914 [药物化学];
学科分类号
100701 ;
摘要
Fast and accurate molecular force field (FF) parameterization is still an unsolved problem. Accurate FF are not generally available for all molecules, like novel druglike molecules. While methods based on quantum mechanics (QM) exist to parameterize them with better accuracy, they are computationally expensive and slow, which limits applicability to a small number of molecules. Here, we present an automated FF parameterization method which can utilize either density functional theory (DFT) calculations or approximate QM energies produced by different neural network potentials (NNPs), to obtain improved parameters for molecules. We demonstrate that for the case of torchani-ANI-1x NNP, we can parameterize small molecules in a fraction of time compared with an equivalent parameterization using DFT QM calculations while producing more accurate parameters than FF (GAFF2). We expect our method to be of critical importance in computational structure-based drug discovery (SBDD). The current version is available at PlayMolecule (www.playmolecule.org) and implemented in HTMD, allowing to parameterize molecules with different QM and NNP options.
引用
收藏
页码:3485 / 3493
页数:9
相关论文
共 44 条
[1]  
[Anonymous], 2017, NeurIPS, V30, P991
[2]   High-dimensional neural network potentials for metal surfaces: A prototype study for copper [J].
Artrith, Nongnuch ;
Behler, Joerg .
PHYSICAL REVIEW B, 2012, 85 (04)
[3]   A WELL-BEHAVED ELECTROSTATIC POTENTIAL BASED METHOD USING CHARGE RESTRAINTS FOR DERIVING ATOMIC CHARGES - THE RESP MODEL [J].
BAYLY, CI ;
CIEPLAK, P ;
CORNELL, WD ;
KOLLMAN, PA .
JOURNAL OF PHYSICAL CHEMISTRY, 1993, 97 (40) :10269-10280
[4]  
BEHLER J, 2017, ANGEW CHEM, V129, P13006
[5]   Constructing high-dimensional neural network potentials: A tutorial review [J].
Behler, Joerg .
INTERNATIONAL JOURNAL OF QUANTUM CHEMISTRY, 2015, 115 (16) :1032-1050
[6]   Machine Learning of Partial Charges Derived from High-Quality Quantum-Mechanical Calculations [J].
Bleiziffer, Patrick ;
Schaller, Kay ;
Riniker, Sereina .
JOURNAL OF CHEMICAL INFORMATION AND MODELING, 2018, 58 (03) :579-590
[7]   Optimized Lennard-Jones Parameters for Druglike Small Molecules [J].
Boulanger, Eliot ;
Huang, Lei ;
Rupakheti, Chetan ;
MacKerell, Alexander D., Jr. ;
Roux, Benoit .
JOURNAL OF CHEMICAL THEORY AND COMPUTATION, 2018, 14 (06) :3121-3131
[8]   Complete reconstruction of an enzyme-inhibitor binding process by molecular dynamics simulations [J].
Buch, Ignasi ;
Giorgino, Toni ;
De Fabritiis, Gianni .
PROCEEDINGS OF THE NATIONAL ACADEMY OF SCIENCES OF THE UNITED STATES OF AMERICA, 2011, 108 (25) :10184-10189
[9]   Long-range corrected hybrid density functionals with damped atom-atom dispersion corrections [J].
Chai, Jeng-Da ;
Head-Gordon, Martin .
PHYSICAL CHEMISTRY CHEMICAL PHYSICS, 2008, 10 (44) :6615-6620
[10]   A 2ND GENERATION FORCE-FIELD FOR THE SIMULATION OF PROTEINS, NUCLEIC-ACIDS, AND ORGANIC-MOLECULES [J].
CORNELL, WD ;
CIEPLAK, P ;
BAYLY, CI ;
GOULD, IR ;
MERZ, KM ;
FERGUSON, DM ;
SPELLMEYER, DC ;
FOX, T ;
CALDWELL, JW ;
KOLLMAN, PA .
JOURNAL OF THE AMERICAN CHEMICAL SOCIETY, 1995, 117 (19) :5179-5197