Determination of Flavonoid Glycoside Isomers Using Vision Transformer and Tandem Mass Spectrometry

  • Plants (Basel). 2024 Dec 4;13(23):3401. doi: 10.3390/plants13233401.
Ji In Park  1 Myeong Ji Kim  1 Kyu Hyeong Lee  1 Seung Hyun Oh  1 Young Hoon Kang  1 Hyunwoo Kim  1
Affiliations
  • 1. College of Pharmacy and Integrated Research Institute for Drug Development, Dongguk University-Seoul, Goyang 10326, Republic of Korea.
Abstract

A vision transformer (ViT)-based deep neural network was applied to classify the flavonoid glycoside isomers by analyzing electrospray ionization tandem mass spectrometry (ESI-MS/MS) spectra. Our model successfully classified the flavonoid isomers with various substitution patterns (3-O, 6-C, 7-O, 8-C, 4'-O) and multiple glycosides, achieving over 80% accuracy during training. In addition, the experimental spectra from flavonoid glycoside standards were acquired with different adducts, and our model showed robust performance regardless of the experimental conditions. As a result, the vision transformer-based computer vision model is promising for analyzing mass spectrometry data.

Keywords
artificial intelligence; flavonoid; vision transformer.
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