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A Very Deep Graph Convolutional Network for 13 C NMR Chemical Shift Calculations with Density Functional Theory Level Performance for Structure Assignment.

Wen-Jing AiJing LiDong-Sheng CaoShao LiuYi-Yun YuanYan LiGui-Shan TanKang-Ping XuXia YuFenghua KangZhen-Xing ZouWen-Xuan Wang
Published in: Journal of natural products (2024)
Nuclear magnetic resonance (NMR) chemical shift calculations are powerful tools for structure elucidation and have been extensively employed in both natural product and synthetic chemistry. However, density functional theory (DFT) NMR chemical shift calculations are usually time-consuming, while fast data-driven methods often lack reliability, making it challenging to apply them to computationally intensive tasks with a high requirement on quality. Herein, we have constructed a 54-layer-deep graph convolutional network for 13 C NMR chemical shift calculations, which achieved high accuracy with low time-cost and performed competitively with DFT NMR chemical shift calculations on structure assignment benchmarks. Our model utilizes a semiempirical method, GFN2-xTB, and is compatible with a broad variety of organic systems, including those composed of hundreds of atoms or elements ranging from H to Rn. We used this model to resolve the controversial J/K ring junction problem of maitotoxin, which is the largest whole molecule assigned by NMR calculations to date. This model has been developed into user-friendly software, providing a useful tool for routine rapid structure validation and assignation as well as a new approach to elucidate the large structures that were previously unsuitable for NMR calculations.
Keyphrases
  • density functional theory
  • magnetic resonance
  • molecular dynamics
  • high resolution
  • solid state
  • contrast enhanced
  • working memory
  • mass spectrometry
  • deep learning
  • data analysis