Litcius/Paper detail

DU8ML: Machine Learning-Augmented Density Functional Theory Nuclear Magnetic Resonance Computations for High-Throughput In Silico Solution Structure Validation and Revision of Complex Alkaloids

Ivan M. Novitskiy, Andrei G. Kutateladze

2022The Journal of Organic Chemistry56 citationsDOI

Abstract

Machine learning (ML) profoundly improves the accuracy of the fast DU8+ hybrid density functional theory/parametric computations of nuclear magnetic resonance spectra, allowing for high throughput in silico validation and revision of complex alkaloids and other natural products. Of nearly 170 alkaloids surveyed, 35 structures are revised with the next-generation ML-augmented DU8 method, termed DU8ML.

Topics & Concepts

In silicoDensity functional theoryComputationParametric statisticsThroughputComputer scienceArtificial intelligenceChemistryComputational chemistryAlgorithmMathematicsWirelessGeneStatisticsBiochemistryTelecommunicationsMolecular spectroscopy and chiralityMetabolomics and Mass Spectrometry StudiesPlant-based Medicinal Research
DU8ML: Machine Learning-Augmented Density Functional Theory Nuclear Magnetic Resonance Computations for High-Throughput In Silico Solution Structure Validation and Revision of Complex Alkaloids | Litcius