Machine Learning Implicit Solvation for Molecular Dynamics
- URL: http://arxiv.org/abs/2106.07492v1
- Date: Mon, 14 Jun 2021 15:21:45 GMT
- Title: Machine Learning Implicit Solvation for Molecular Dynamics
- Authors: Yaoyi Chen, Andreas Kr\"amer, Nicholas E. Charron, Brooke E. Husic,
Cecilia Clementi, Frank No\'e
- Abstract summary: We introduce Bornet, a graph neural network, to model the implicit solvent potential of mean force.
The success of this novel method demonstrates the potential benefit of applying machine learning methods in accurate modeling of solvent effects.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Accurate modeling of the solvent environment for biological molecules is
crucial for computational biology and drug design. A popular approach to
achieve long simulation time scales for large system sizes is to incorporate
the effect of the solvent in a mean-field fashion with implicit solvent models.
However, a challenge with existing implicit solvent models is that they often
lack accuracy or certain physical properties compared to explicit solvent
models, as the many-body effects of the neglected solvent molecules is
difficult to model as a mean field. Here, we leverage machine learning (ML) and
multi-scale coarse graining (CG) in order to learn implicit solvent models that
can approximate the energetic and thermodynamic properties of a given explicit
solvent model with arbitrary accuracy, given enough training data. Following
the previous ML--CG models CGnet and CGSchnet, we introduce ISSNet, a graph
neural network, to model the implicit solvent potential of mean force. ISSNet
can learn from explicit solvent simulation data and be readily applied to MD
simulations. We compare the solute conformational distributions under different
solvation treatments for two peptide systems. The results indicate that ISSNet
models can outperform widely-used generalized Born and surface area models in
reproducing the thermodynamics of small protein systems with respect to
explicit solvent. The success of this novel method demonstrates the potential
benefit of applying machine learning methods in accurate modeling of solvent
effects for in silico research and biomedical applications.
Related papers
- Predicting solvation free energies with an implicit solvent machine learning potential [0.0]
We introduce a Solvation Free Energy Path Reweighting (ReSolv) framework to parametrize an implicit solvent ML potential for small organic molecules.
With a combination of top-down (experimental hydration free energy data) and bottom-up (ab initio data of molecules in a vacuum) learning, ReSolv bypasses the need for intractable ab initio data of molecules in explicit bulk solvent.
Compared to the explicit solvent ML potential, ReSolv offers a computational speedup of four orders of magnitude and attains closer agreement with experiments.
arXiv Detail & Related papers (2024-05-31T20:28:08Z) - Diffusion models as probabilistic neural operators for recovering unobserved states of dynamical systems [49.2319247825857]
We show that diffusion-based generative models exhibit many properties favourable for neural operators.
We propose to train a single model adaptable to multiple tasks, by alternating between the tasks during training.
arXiv Detail & Related papers (2024-05-11T21:23:55Z) - Discovering Interpretable Physical Models using Symbolic Regression and
Discrete Exterior Calculus [55.2480439325792]
We propose a framework that combines Symbolic Regression (SR) and Discrete Exterior Calculus (DEC) for the automated discovery of physical models.
DEC provides building blocks for the discrete analogue of field theories, which are beyond the state-of-the-art applications of SR to physical problems.
We prove the effectiveness of our methodology by re-discovering three models of Continuum Physics from synthetic experimental data.
arXiv Detail & Related papers (2023-10-10T13:23:05Z) - Predicting Drug Solubility Using Different Machine Learning Methods --
Linear Regression Model with Extracted Chemical Features vs Graph
Convolutional Neural Network [1.8936798735951967]
We employ two machine learning models: a linear regression model and a graph convolutional neural network (GCNN) model, using various experimental datasets.
The present GCNN model has limited interpretability while the linear regression model allows scientists for a greater in-depth analysis of the underlying factors.
From the perspective of chemistry, using the linear regression model, we elucidated the impact of individual atom species and functional groups on overall solubility.
arXiv Detail & Related papers (2023-08-23T15:35:20Z) - Prediction of liquid fuel properties using machine learning models with
Gaussian processes and probabilistic conditional generative learning [56.67751936864119]
The present work aims to construct cheap-to-compute machine learning (ML) models to act as closure equations for predicting the physical properties of alternative fuels.
Those models can be trained using the database from MD simulations and/or experimental measurements in a data-fusion-fidelity approach.
The results show that ML models can predict accurately the fuel properties of a wide range of pressure and temperature conditions.
arXiv Detail & Related papers (2021-10-18T14:43:50Z) - Model Uncertainty and Correctability for Directed Graphical Models [3.326320568999945]
We develop information-theoretic, robust uncertainty quantification methods and non-parametric stress tests for directed graphical models.
We provide a mathematically rigorous approach to correctability that guarantees a systematic selection for improvement of components of a graphical model.
We demonstrate our methods in two physico-chemical examples, namely quantum scale-informed chemical kinetics and materials screening to improve the efficiency of fuel cells.
arXiv Detail & Related papers (2021-07-17T04:30:37Z) - Graphical Gaussian Process Regression Model for Aqueous Solvation Free
Energy Prediction of Organic Molecules in Redox Flow Battery [2.7919873713279033]
We present a machine learning (ML) model that can learn and predict the aqueous solvation free energy of an organic molecule.
We demonstrate that our ML model can predict the solvation free energy of molecules at chemical accuracy with a mean absolute error of less than 1 kcal/mol.
arXiv Detail & Related papers (2021-06-15T13:48:26Z) - Predicting Aqueous Solubility of Organic Molecules Using Deep Learning
Models with Varied Molecular Representations [3.10678679607547]
The goal of this study is to develop a general model capable of predicting the solubility of a broad range of organic molecules.
Using the largest currently available solubility dataset, we implement deep learning-based models to predict solubility from molecular structure.
We find that models using molecular descriptors achieve the best performance, with GNN models also achieving good performance.
arXiv Detail & Related papers (2021-05-26T15:54:54Z) - Sufficiently Accurate Model Learning for Planning [119.80502738709937]
This paper introduces the constrained Sufficiently Accurate model learning approach.
It provides examples of such problems, and presents a theorem on how close some approximate solutions can be.
The approximate solution quality will depend on the function parameterization, loss and constraint function smoothness, and the number of samples in model learning.
arXiv Detail & Related papers (2021-02-11T16:27:31Z) - Large-scale Neural Solvers for Partial Differential Equations [48.7576911714538]
Solving partial differential equations (PDE) is an indispensable part of many branches of science as many processes can be modelled in terms of PDEs.
Recent numerical solvers require manual discretization of the underlying equation as well as sophisticated, tailored code for distributed computing.
We examine the applicability of continuous, mesh-free neural solvers for partial differential equations, physics-informed neural networks (PINNs)
We discuss the accuracy of GatedPINN with respect to analytical solutions -- as well as state-of-the-art numerical solvers, such as spectral solvers.
arXiv Detail & Related papers (2020-09-08T13:26:51Z) - Hybrid modeling: Applications in real-time diagnosis [64.5040763067757]
We outline a novel hybrid modeling approach that combines machine learning inspired models and physics-based models.
We are using such models for real-time diagnosis applications.
arXiv Detail & Related papers (2020-03-04T00:44:57Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.