Victor Yukio Shirasuna, Emilio Ashton Vital Brazil, et al.
ACS Fall 2025
Phosphorus-31 Nuclear Magnetic Resonance (31P-NMR) spectroscopy is a powerful technique for characterizing phosphorus-containing compounds in diverse chemical environments. However, spectral interpretation remains a time-consuming and expertise-dependent task, relying on reference tables and empirical comparisons. In this study, we introduce a data-driven approach that automates 31P-NMR spectral analysis, providing rapid and accurate predictions of local phosphorus environments. By leveraging a curated dataset of experimental and synthetic spectra, our model achieves a Top–1 accuracy of 53.64% and a Top-5 accuracy 77.69% at predicting the local environment around a phosphorous atom. Furthermore, it demonstrates robustness across different solvent conditions and outperforms expert chemists by 25% in spectral assignment tasks. The models, datasets, and architecture are openly available, facilitating seamless adoption in chemical laboratories engaged in structure elucidation, with the goal of advancing 31P-NMR spectral analysis and interpretation.
Victor Yukio Shirasuna, Emilio Ashton Vital Brazil, et al.
ACS Fall 2025
L.K. Wang, A. Acovic, et al.
MRS Spring Meeting 1993
Sharee J. McNab, Richard J. Blaikie
Materials Research Society Symposium - Proceedings
J.A. Barker, D. Henderson, et al.
Molecular Physics