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Novel Solubility Prediction Models: Molecular Fingerprints and Physicochemical Features vs Graph Convolutional Neural Networksopen access

Authors
Lee, SuminLee, MyeonghunGyak, Ki-WonKim, Sung DugKim, Mi-JeongMin, Kyoungmin
Issue Date
Apr-2022
Publisher
AMER CHEMICAL SOC
Citation
ACS OMEGA, v.7, no.14, pp.12268 - 12277
Journal Title
ACS OMEGA
Volume
7
Number
14
Start Page
12268
End Page
12277
URI
http://scholarworks.bwise.kr/ssu/handle/2018.sw.ssu/42426
DOI
10.1021/acsomega.2c00697
ISSN
2470-1343
Abstract
Predicting both accurate and reliable solubility values has long been a crucial but challenging task. In this work, surrogated model-based methods were developed to accurately predict the solubility of two molecules (solute and solvent) through machine learning and deep learning. The current study employed two methods: (1) converting molecules into molecular fingerprints and adding optimal physicochemical properties as descriptors and (2) using graph convolutional network (GCN) models to convert molecules into a graph representation and deal with prediction tasks. Then, two prediction tasks were conducted with each method: (1) the solubility value (regression) and (2) the solubility class (classification). The fingerprint-based method clearly demonstrates that high performance is possible by adding simple but significant physicochemical descriptors to molecular fingerprints, while the GCN method shows that it is possible to predict various properties of chemical compounds with relatively simplified features from the graph representation. The developed methodologies provide a comprehensive understanding of constructing a proper model for predicting solubility and can be employed to find suitable solutes and solvents.
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