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Ilm-NMR-P31: an open-access 31 P nuclear magnetic resonance database and data-driven prediction of 31 P NMR shifts
by
Eulenberger, Isabel
, Raru, Melissa
, Zorn, Hannes Sönke
, Seyfarth, Alex
, Schmitt, Alina
, Hack, Jasmin
, Geitner, Robert
, Jordan, Moritz
2023
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Ilm-NMR-P31: an open-access 31 P nuclear magnetic resonance database and data-driven prediction of 31 P NMR shifts
by
Eulenberger, Isabel
, Raru, Melissa
, Zorn, Hannes Sönke
, Seyfarth, Alex
, Schmitt, Alina
, Hack, Jasmin
, Geitner, Robert
, Jordan, Moritz
2023
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Ilm-NMR-P31: an open-access 31 P nuclear magnetic resonance database and data-driven prediction of 31 P NMR shifts
Journal Article
Ilm-NMR-P31: an open-access 31 P nuclear magnetic resonance database and data-driven prediction of 31 P NMR shifts
2023
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Overview
This publication introduces a novel open-access
P Nuclear Magnetic Resonance (NMR) shift database. With 14,250 entries encompassing 13,730 distinct molecules from 3,648 references, this database offers a comprehensive repository of organic and inorganic compounds. Emphasizing single-phosphorus atom compounds, the database facilitates data mining and machine learning endeavors, particularly in signal prediction and Computer-Assisted Structure Elucidation (CASE) systems. Additionally, the article compares different models for
P NMR shift prediction, showcasing the database's potential utility. Hierarchically Ordered Spherical Environment (HOSE) code-based models and Graph Neural Networks (GNNs) perform exceptionally well with a mean squared error of 11.9 and 11.4 ppm respectively, achieving accuracy comparable to quantum chemical calculations.
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