Issue 36, 2019

Delfos: deep learning model for prediction of solvation free energies in generic organic solvents

Abstract

Prediction of aqueous solubilities or hydration free energies is an extensively studied area in machine learning applications in chemistry since water is the sole solvent in the living system. However, for non-aqueous solutions, few machine learning studies have been undertaken so far despite the fact that the solvation mechanism plays an important role in various chemical reactions. Here, we introduce Delfos (deep learning model for solvation free energies in generic organic solvents), which is a novel, machine-learning-based QSPR method which predicts solvation free energies for various organic solute and solvent systems. A novelty of Delfos involves two separate solvent and solute encoder networks that can quantify structural features of given compounds via word embedding and recurrent layers, augmented with the attention mechanism which extracts important substructures from outputs of recurrent neural networks. As a result, the predictor network calculates the solvation free energy of a given solvent–solute pair using features from encoders. With the results obtained from extensive calculations using 2495 solute–solvent pairs, we demonstrate that Delfos not only has great potential in showing accuracy comparable to that of the state-of-the-art computational chemistry methods, but also offers information about which substructures play a dominant role in the solvation process.

Graphical abstract: Delfos: deep learning model for prediction of solvation free energies in generic organic solvents

Supplementary files

Article information

Article type
Edge Article
Submitted
20 May 2019
Accepted
19 Aug 2019
First published
20 Aug 2019
This article is Open Access

All publication charges for this article have been paid for by the Royal Society of Chemistry
Creative Commons BY-NC license

Chem. Sci., 2019,10, 8306-8315

Delfos: deep learning model for prediction of solvation free energies in generic organic solvents

H. Lim and Y. Jung, Chem. Sci., 2019, 10, 8306 DOI: 10.1039/C9SC02452B

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