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NMR-TS: de novo molecule identification from NMR spectra

Jinzhe Zhang, Kei Terayama, Masato Sumita, Kazuki Yoshizoe, Kengo Ito, Jun Kikuchi, Koji Tsuda

2020Science and Technology of Advanced Materials45 citationsDOIOpen Access PDF

Abstract

Nuclear magnetic resonance (NMR) spectroscopy is an effective tool for identifying molecules in a sample. Although many previously observed NMR spectra are accumulated in public databases, they cover only a tiny fraction of the chemical space, and molecule identification is typically accomplished manually based on expert knowledge. Herein, we propose NMR-TS, a machine-learning-based python library, to automatically identify a molecule from its NMR spectrum. NMR-TS discovers candidate molecules whose NMR spectra match the target spectrum by using deep learning and density functional theory (DFT)-computed spectra. As a proof-of-concept, we identify prototypical metabolites from their computed spectra. After an average 5451 DFT runs for each spectrum, six of the nine molecules are identified correctly, and proximal molecules are obtained in the other cases. This encouraging result implies that de novo molecule generation can contribute to the fully automated identification of chemical structures. NMR-TS is available at https://github.com/tsudalab/NMR-TS.

Topics & Concepts

NMR spectra databaseMoleculeNuclear magnetic resonance spectroscopySpectral lineTwo-dimensional nuclear magnetic resonance spectroscopyChemical shiftNuclear magnetic resonanceDensity functional theoryCarbon-13 NMR satelliteCarbon-13 NMRChemistryFluorine-19 NMRComputational chemistryPhysicsOrganic chemistryAstronomyComputational Drug Discovery MethodsMetabolomics and Mass Spectrometry StudiesMolecular spectroscopy and chirality
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