Scientific Reports (Nov 2023)

In vitro and in silico prediction of antibacterial interaction between essential oils via graph embedding approach

  • Hiroaki Yabuuchi,
  • Kazuhito Hayashi,
  • Akihiko Shigemoto,
  • Makiko Fujiwara,
  • Yuhei Nomura,
  • Mayumi Nakashima,
  • Takeshi Ogusu,
  • Megumi Mori,
  • Shin-ichi Tokumoto,
  • Kazuyuki Miyai

DOI
https://doi.org/10.1038/s41598-023-46377-5
Journal volume & issue
Vol. 13, no. 1
pp. 1 – 8

Abstract

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Abstract Essential oils contain a variety of volatile metabolites, and are expected to be utilized in wide fields such as antimicrobials, insect repellents and herbicides. However, it is difficult to foresee the effect of oil combinations because hundreds of compounds can be involved in synergistic and antagonistic interactions. In this research, it was developed and evaluated a machine learning method to classify types of (synergistic/antagonistic/no) antibacterial interaction between essential oils. Graph embedding was employed to capture structural features of the interaction network from literature data, and was found to improve in silico predicting performances to classify synergistic interactions. Furthermore, in vitro antibacterial assay against a standard strain of Staphylococcus aureus revealed that four essential oil pairs (Origanum compactum—Trachyspermum ammi, Cymbopogon citratus—Thujopsis dolabrata, Cinnamomum verum—Cymbopogon citratus and Trachyspermum ammi—Zingiber officinale) exhibited synergistic interaction as predicted. These results indicate that graph embedding approach can efficiently find synergistic interactions between antibacterial essential oils.