The solvation free energy of organic molecules is a critical parameter in determining emergent properties such as solubility, liquid-phase equilibrium constants, and pKa and redox potentials in an organic redox flow battery. In this work, we present a machine learning (ML) model that can learn and predict the aqueous solvation free energy of an organic molecule using Gaussian process regression method based on a new molecular graph kernel. To investigate the performance of the ML model on electrostatic interaction, the nonpolar interaction contribution of solvent and the conformational entropy of solute in solvation free energy, three data sets with implicit or explicit water solvent models, and contribution of conformational entropy of sol...
While the use of machine-learning (ML) techniques is well established in cheminformatics for the pre...
We present a group contribution method (SoluteGC) and a machine learning model (SoluteML) to predict...
We discuss models fit to data collected by Duffy and Jorgensen to predict solvation free energies an...
The solvation free energy of organic molecules is a critical parameter in determining emergent prope...
Prediction of aqueous solubilities or hydration free energies is an extensively studied area in mach...
We present the full database of the article "Explainable Supervised Machine Learning Model to Predic...
ABSTRACT: We present four models of solution free-energy prediction for druglike molecules utilizing...
For exploration of chemical and biological systems, the combined quantum mechanics and molecular mec...
In this paper we apply a recursive neural network (RNN) model to the prediction of the standard Gibb...
RedPred is an reaction energy prediction model for redox flow battery molecules that consists ensemb...
Free energies govern the behavior of soft and liquid matter, and improving their predictions could h...
Several quantitative structure-property relationship (QSPR) approaches have been explored for the pr...
We have developed a fast procedure to predict solvation free energies for both organic and biologica...
The potential to predict Solvation Free Energies (SFEs) in any solvent using a machine learning (ML)...
Due to environmental and economic pressures, society has an ever-increasing need for renewable fuels...
While the use of machine-learning (ML) techniques is well established in cheminformatics for the pre...
We present a group contribution method (SoluteGC) and a machine learning model (SoluteML) to predict...
We discuss models fit to data collected by Duffy and Jorgensen to predict solvation free energies an...
The solvation free energy of organic molecules is a critical parameter in determining emergent prope...
Prediction of aqueous solubilities or hydration free energies is an extensively studied area in mach...
We present the full database of the article "Explainable Supervised Machine Learning Model to Predic...
ABSTRACT: We present four models of solution free-energy prediction for druglike molecules utilizing...
For exploration of chemical and biological systems, the combined quantum mechanics and molecular mec...
In this paper we apply a recursive neural network (RNN) model to the prediction of the standard Gibb...
RedPred is an reaction energy prediction model for redox flow battery molecules that consists ensemb...
Free energies govern the behavior of soft and liquid matter, and improving their predictions could h...
Several quantitative structure-property relationship (QSPR) approaches have been explored for the pr...
We have developed a fast procedure to predict solvation free energies for both organic and biologica...
The potential to predict Solvation Free Energies (SFEs) in any solvent using a machine learning (ML)...
Due to environmental and economic pressures, society has an ever-increasing need for renewable fuels...
While the use of machine-learning (ML) techniques is well established in cheminformatics for the pre...
We present a group contribution method (SoluteGC) and a machine learning model (SoluteML) to predict...
We discuss models fit to data collected by Duffy and Jorgensen to predict solvation free energies an...