Publication | Open Access
Machine Learning-Guided Approach for Studying Solvation Environments
69
Citations
93
References
2019
Year
EngineeringMachine LearningMachine Learning ToolMolecular BiologyComputational ChemistryChemistryMolecular GraphicSolution (Chemistry)Data ScienceSolvation EnvironmentMathematical ChemistryBiophysicsCluster ScienceSolvation EnvironmentsPhysical ChemistryQuantum ChemistryMolecular ModelingNatural SciencesSolvation ChemistrySketch MapsComputational Biophysics
Molecular-level understanding and characterization of solvation environments are often needed across chemistry, biology, and engineering. Toward practical modeling of local solvation effects of any solute in any solvent, we report a static and all-quantum mechanics-based cluster-continuum approach for calculating single-ion solvation free energies. This approach uses a global optimization procedure to identify low-energy molecular clusters with different numbers of explicit solvent molecules and then employs the smooth overlap for atomic positions learning kernel to quantify the similarity between different low-energy solute environments. From these data, we use sketch maps, a nonlinear dimensionality reduction algorithm, to obtain a two-dimensional visual representation of the similarity between solute environments in differently sized microsolvated clusters. After testing this approach on different ions having charges 2+, 1+, 1-, and 2-, we find that the solvation environment around each ion can be seen to usually become more similar in hand with its calculated single-ion solvation free energy. Without needing either dynamics simulations or an a priori knowledge of local solvation structure of the ions, this approach can be used to calculate solvation free energies within 5% of experimental measurements for most cases, and it should be transferable for the study of other systems where dynamics simulations are not easily carried out.
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