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Neural Network Based Prediction of Conformational Free Energies - A New Route toward Coarse-Grained Simulation Models
- Source :
- Journal of Chemical Theory and Computation. 13:6213-6221
- Publication Year :
- 2017
- Publisher :
- American Chemical Society (ACS), 2017.
-
Abstract
- Coarse-grained (CG) simulation models have become very popular tools to study complex molecular systems with great computational efficiency on length and time scales that are inaccessible to simulations at atomistic resolution. In so-called bottom-up coarse-graining strategies, the interactions in the CG model are devised such that an accurate representation of an atomistic sampling of configurational phase space is achieved. This means the coarse-graining methods use the underlying multibody potential of mean force (i.e., free-energy surface) derived from the atomistic simulation as parametrization target. Here, we present a new method where a neural network (NN) is used to extract high-dimensional free energy surfaces (FES) from molecular dynamics (MD) simulation trajectories. These FES are used for simulations on a CG level of resolution. The method is applied to simulating homo-oligo-peptides (oligo-glutamic-acid (oligo-glu) and oligo-aspartic-acid (oligo-asp)) of different lengths. We show that the NN not only is able to correctly describe the free-energy surface for oligomer lengths that it was trained on but also is able to predict the conformational sampling of longer chains.
- Subjects :
- Surface (mathematics)
010304 chemical physics
Artificial neural network
Computer science
02 engineering and technology
Molecular Dynamics Simulation
021001 nanoscience & nanotechnology
01 natural sciences
Computer Science Applications
Molecular dynamics
Phase space
0103 physical sciences
Thermodynamics
Neural Networks, Computer
Statistical physics
Physical and Theoretical Chemistry
Potential of mean force
0210 nano-technology
Representation (mathematics)
Parametrization
Algorithms
Energy (signal processing)
Simulation
Subjects
Details
- ISSN :
- 15499626 and 15499618
- Volume :
- 13
- Database :
- OpenAIRE
- Journal :
- Journal of Chemical Theory and Computation
- Accession number :
- edsair.doi.dedup.....25528acf0ac56136bcd4f66d575797da
- Full Text :
- https://doi.org/10.1021/acs.jctc.7b00864