Predicting Critical Micelle Concentrations for Surfactants Using Graph Convolutional Neural Networks.

J Phys Chem B

Department of Chemical and Biological Engineering, University of Wisconsin - Madison, 1415 Engineering Drive, Madison, Wisconsin 53706, United States.

Published: September 2021

AI Article Synopsis

  • Surfactants are molecules used in various applications, and their critical micelle concentration (CMC) marks the point where they start to self-assemble in solutions.
  • A new study demonstrates that graph convolutional neural networks (GCNs) can accurately predict CMCs directly from the molecular structure of surfactants, outperforming traditional experimental methods.
  • The study also reveals insights into how different surfactant structures influence CMCs and suggests new surfactant candidates for future testing based on predicted data and physical rules.

Article Abstract

Surfactants are amphiphilic molecules that are widely used in consumer products, industrial processes, and biological applications. A critical property of a surfactant is the critical micelle concentration (CMC), which is the concentration at which surfactant molecules undergo cooperative self-assembly in solution. Notably, the primary method to obtain CMCs experimentally-tensiometry-is laborious and expensive. In this study, we show that graph convolutional neural networks (GCNs) can predict CMCs directly from the surfactant molecular structure. In particular, we developed a GCN architecture that encodes the surfactant structure in the form of a molecular graph and trained it using experimental CMC data. We found that the GCN can predict CMCs with higher accuracy on a more inclusive data set than previously proposed methods and that it can generalize to anionic, cationic, zwitterionic, and nonionic surfactants using a single model. Molecular saliency maps revealed how atom types and surfactant molecular substructures contribute to CMCs and found this behavior to be in agreement with physical rules that correlate constitutional and topological information to CMCs. Following such rules, we proposed a small set of new surfactants for which experimental CMCs are not available; for these molecules, CMCs predicted with our GCN exhibited similar trends to those obtained from molecular simulations. These results provide evidence that GCNs can enable high-throughput screening of surfactants with desired self-assembly characteristics.

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Source
http://dx.doi.org/10.1021/acs.jpcb.1c05264DOI Listing

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