NMRformer: A Transformer-Based Deep Learning Framework for Peak Assignment in 1D H NMR Spectroscopy.

Journal: Analytical chemistry
PMID:

Abstract

Metabolite identification from 1D H NMR spectra is a major challenge in NMR-based metabolomics. This study introduces NMRformer, a Transformer-based deep learning framework for accurate peak assignment and metabolite identification in 1D H NMR spectroscopy. Unlike traditional approaches, NMRformer interprets spectra as sequences of spectral peaks and integrates a self-attention mechanism and peak height ratios directly into the Transformer encoder layer. It has the capability to recognize and interpret long-range dependencies between peaks and to quickly identify peaks corresponding to identical metabolites. The effectiveness of NMRformer has been rigorously validated by analyzing real 1D H NMR spectra from a variety of cellular and biofluid samples. NMRformer achieved peak assignment accuracies above 88% and metabolite identification accuracies above 80% in four types of cellular samples. It also achieved peak assignment accuracies above 88% and metabolite identification accuracies above 80% in three types of biofluid samples. These results underscore the ability of NMRformer to significantly improve the accuracy and efficiency of peak assignment and metabolite identification in NMR-based metabolomics studies.

Authors

  • Zhouao Zhou
    Institute of Artificial Intelligence, Xiamen University, Xiamen, Fujian, 361005, China.
  • Xinli Liao
    High-Field NMR Laboratory, Key Laboratory for Chemical Biology of Fujian Province, College of Chemistry and Chemical Engineering, Xiamen University, Xiamen, Fujian, 361005, China.
  • Xu Qiu
    High-Field NMR Laboratory, Key Laboratory for Chemical Biology of Fujian Province, College of Chemistry and Chemical Engineering, Xiamen University, Xiamen, Fujian, 361005, China.
  • Yue Zhang
    Department of Ophthalmology, Beijing Hospital, National Center of Gerontology, Institute of Geriatric Medicine, Chinese Academy of Medical Sciences, Beijing, China.
  • Jiyang Dong
    Department of Electronic Science, Xiamen University, Xiamen, China.
  • Xiaobo Qu
  • Donghai Lin