Machine Learning of Coarse-Grained Molecular Dynamics Force Fields

被引:363
作者
Wang, Jiang [1 ,2 ]
Olsson, Simon [3 ]
Wehmeyer, Christoph [3 ]
Perez, Adria [4 ]
Charron, Nicholas E. [1 ,5 ]
de Fabritiis, Gianni [4 ,6 ]
Noe, Frank [1 ,2 ,3 ]
Clementi, Cecilia [1 ,2 ,3 ,5 ]
机构
[1] Rice Univ, Ctr Theoret Biol Phys, Houston, TX 77005 USA
[2] Rice Univ, Dept Chem, Houston, TX 77005 USA
[3] Free Univ Berlin, Dept Math & Comp Sci, Arnimallee 6, D-14195 Berlin, Germany
[4] Univ Pompeu Fabra, PRBB, Computat Sci Lab, C Dr Aiguader 88, Barcelona 08003, Spain
[5] Rice Univ, Dept Phys, Houston, TX 77005 USA
[6] ICREA, Passeig Lluis Co 23, Barcelona 08010, Spain
基金
美国国家科学基金会;
关键词
MODEL; SIMULATION; POTENTIALS; PREDICTION; ACCURACY; KINETICS; ROUTE; SCALE;
D O I
10.1021/acscentsci.8b00913
中图分类号
O6 [化学];
学科分类号
0703 ;
摘要
Atomistic or ab initio molecular dynamics simulations are widely used to predict thermodynamics and kinetics and relate them to molecular structure. A common approach to go beyond the time- and length-scales accessible with such computationally expensive simulations is the definition of coarse-grained molecular models. Existing coarse-graining approaches define an effective interaction potential to match defined properties of high-resolution models or experimental data. In this paper, we reformulate coarse-graining as a supervised machine learning problem. We use statistical learning theory to decompose the coarse-graining error and cross-validation to select and compare the performance of different models. We introduce CGnets, a deep learning approach, that learns coarse-grained free energy functions and can be trained by a force-matching scheme. CGnets maintain all physically relevant invariances and allow one to incorporate prior physics knowledge to avoid sampling of unphysical structures. We show that CGnets can capture all-atom explicit-solvent free energy surfaces with models using only a few coarse-grained beads and no solvent, while classical coarse-graining methods fail to capture crucial features of the free energy surface. Thus, CGnets are able to capture multibody terms that emerge from the dimensionality reduction.
引用
收藏
页码:755 / 767
页数:13
相关论文
共 83 条
[1]   Evaluating the transferability of coarse-grained, density-dependent implicit solvent models to mixtures and chains [J].
Allen, Erik C. ;
Rutledge, Gregory C. .
JOURNAL OF CHEMICAL PHYSICS, 2009, 130 (03)
[2]  
[Anonymous], ARXIV171108576
[3]  
[Anonymous], 2018, ARXIV180208549
[4]   Machine learning unifies the modeling of materials and molecules [J].
Bartok, Albert P. ;
De, Sandip ;
Poelking, Carl ;
Bernstein, Noam ;
Kermode, James R. ;
Csanyi, Gabor ;
Ceriotti, Michele .
SCIENCE ADVANCES, 2017, 3 (12)
[5]   Machine-learning approach for one- and two-body corrections to density functional theory: Applications to molecular and condensed water [J].
Bartok, Albert P. ;
Gillan, Michael J. ;
Manby, Frederick R. ;
Csanyi, Gabor .
PHYSICAL REVIEW B, 2013, 88 (05)
[6]   On representing chemical environments [J].
Bartok, Albert P. ;
Kondor, Risi ;
Csanyi, Gabor .
PHYSICAL REVIEW B, 2013, 87 (18)
[7]   Gaussian Approximation Potentials: The Accuracy of Quantum Mechanics, without the Electrons [J].
Bartok, Albert P. ;
Payne, Mike C. ;
Kondor, Risi ;
Csanyi, Gabor .
PHYSICAL REVIEW LETTERS, 2010, 104 (13)
[8]   Generalized neural-network representation of high-dimensional potential-energy surfaces [J].
Behler, Joerg ;
Parrinello, Michele .
PHYSICAL REVIEW LETTERS, 2007, 98 (14)
[9]   Machine-Learned Coarse-Grained Models [J].
Bejagam, Karteek K. ;
Singh, Samrendra ;
An, Yaxin ;
Deshmukh, Sanket A. .
JOURNAL OF PHYSICAL CHEMISTRY LETTERS, 2018, 9 (16) :4667-4672
[10]   Non-covalent interactions across organic and biological subsets of chemical space: Physics-based potentials parametrized from machine learning [J].
Bereau, Tristan ;
DiStasio, Robert A., Jr. ;
Tkatchenko, Alexandre ;
von Lilienfeld, O. Anatole .
JOURNAL OF CHEMICAL PHYSICS, 2018, 148 (24)