One class classification as a practical approach for accelerating π-π co-crystal discovery.

Journal: Chemical science
Published Date:

Abstract

The implementation of machine learning models has brought major changes in the decision-making process for materials design. One matter of concern for the data-driven approaches is the lack of negative data from unsuccessful synthetic attempts, which might generate inherently imbalanced datasets. We propose the application of the one-class classification methodology as an effective tool for tackling these limitations on the materials design problems. This is a concept of learning based only on a well-defined class without counter examples. An extensive study on the different one-class classification algorithms is performed until the most appropriate workflow is identified for guiding the discovery of emerging materials belonging to a relatively small class, that being the weakly bound polyaromatic hydrocarbon co-crystals. The two-step approach presented in this study first trains the model using all the known molecular combinations that form this class of co-crystals extracted from the Cambridge Structural Database (1722 molecular combinations), followed by scoring possible yet unknown pairs from the ZINC15 database (21 736 possible molecular combinations). Focusing on the highest-ranking pairs predicted to have higher probability of forming co-crystals, materials discovery can be accelerated by reducing the vast molecular space and directing the synthetic efforts of chemists. Further on, using interpretability techniques a more detailed understanding of the molecular properties causing co-crystallization is sought after. The applicability of the current methodology is demonstrated with the discovery of two novel co-crystals, namely pyrene-6-benzo[]chromen-6-one () and pyrene-9,10-dicyanoanthracene ().

Authors

  • Aikaterini Vriza
    Department of Chemistry and Materials Innovation Factory, University of Liverpool 51 Oxford Street Liverpool L7 3NY UK M.S.Dyer@liverpool.ac.uk.
  • Angelos B Canaj
    Department of Chemistry and Materials Innovation Factory, University of Liverpool 51 Oxford Street Liverpool L7 3NY UK M.S.Dyer@liverpool.ac.uk.
  • Rebecca Vismara
    Department of Chemistry and Materials Innovation Factory, University of Liverpool 51 Oxford Street Liverpool L7 3NY UK M.S.Dyer@liverpool.ac.uk.
  • Laurence J Kershaw Cook
    Department of Chemistry and Materials Innovation Factory, University of Liverpool 51 Oxford Street Liverpool L7 3NY UK M.S.Dyer@liverpool.ac.uk.
  • Troy D Manning
    Department of Chemistry and Materials Innovation Factory, University of Liverpool 51 Oxford Street Liverpool L7 3NY UK M.S.Dyer@liverpool.ac.uk.
  • Michael W Gaultois
    Department of Chemistry and Materials Innovation Factory, University of Liverpool 51 Oxford Street Liverpool L7 3NY UK M.S.Dyer@liverpool.ac.uk.
  • Peter A Wood
    Cambridge Crystallographic Data Centre 12 Union Road Cambridge CB2 1EZ UK.
  • Vitaliy Kurlin
    Materials Innovation Factory, Computer Science Department, University of Liverpool Liverpool L69 3BX UK.
  • Neil Berry
    Department of Chemistry and Materials Innovation Factory, University of Liverpool 51 Oxford Street Liverpool L7 3NY UK M.S.Dyer@liverpool.ac.uk.
  • Matthew S Dyer
    Department of Chemistry and Materials Innovation Factory, University of Liverpool 51 Oxford Street Liverpool L7 3NY UK M.S.Dyer@liverpool.ac.uk.
  • Matthew J Rosseinsky
    Department of Chemistry and Materials Innovation Factory, University of Liverpool 51 Oxford Street Liverpool L7 3NY UK M.S.Dyer@liverpool.ac.uk.

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