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 prop- erties compared to explicit solvent models as the many-body effects of the neglected solvent molecules are 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...
For exploration of chemical and biological systems, the combined quantum mechanics and molecular mec...
While the use of machine-learning (ML) techniques is well established in cheminformatics for the pre...
ABSTRACT Coarse graining enables the investigation of molecular dynamics for larger systems and at ...
Accurate modeling of the solvent environment for biological molecules is crucial for computational b...
This release corresponds to the code used to generate the results of the publication: J. Chem. Phys....
Implicit solvation is a mean force approach to model solvent forces acting on a solute molecule. It ...
Implicit solvation is a mean force approach to model solvent forces acting on a solute molecule. It ...
The development of accurate implicit solvation models with low computational cost is essential for a...
Due to environmental and economic pressures, society has an ever-increasing need for renewable fuels...
AbstractIncreasingly complex schemes for representing solvent effects in an implicit fashion are bei...
Implicit solvation provides a means of accelerating and improving the efficiency of computational bi...
A generalized understanding of protein dynamics is an unsolved scientific problem, the solution of w...
Solvation is a fundamental driving force in many biological processes including biomolecular recogni...
Prediction of aqueous solubilities or hydration free energies is an extensively studied area in mach...
Implicit solvent models, such as Poisson-Boltzmann models, play important roles in computational stu...
For exploration of chemical and biological systems, the combined quantum mechanics and molecular mec...
While the use of machine-learning (ML) techniques is well established in cheminformatics for the pre...
ABSTRACT Coarse graining enables the investigation of molecular dynamics for larger systems and at ...
Accurate modeling of the solvent environment for biological molecules is crucial for computational b...
This release corresponds to the code used to generate the results of the publication: J. Chem. Phys....
Implicit solvation is a mean force approach to model solvent forces acting on a solute molecule. It ...
Implicit solvation is a mean force approach to model solvent forces acting on a solute molecule. It ...
The development of accurate implicit solvation models with low computational cost is essential for a...
Due to environmental and economic pressures, society has an ever-increasing need for renewable fuels...
AbstractIncreasingly complex schemes for representing solvent effects in an implicit fashion are bei...
Implicit solvation provides a means of accelerating and improving the efficiency of computational bi...
A generalized understanding of protein dynamics is an unsolved scientific problem, the solution of w...
Solvation is a fundamental driving force in many biological processes including biomolecular recogni...
Prediction of aqueous solubilities or hydration free energies is an extensively studied area in mach...
Implicit solvent models, such as Poisson-Boltzmann models, play important roles in computational stu...
For exploration of chemical and biological systems, the combined quantum mechanics and molecular mec...
While the use of machine-learning (ML) techniques is well established in cheminformatics for the pre...
ABSTRACT Coarse graining enables the investigation of molecular dynamics for larger systems and at ...