Litcius/Paper detail

<i>De Novo</i> Crystal Structure Determination from Machine Learned Chemical Shifts

M. Balodis, Manuel Cordova, Albert Hofstetter, Graeme M. Day, Lyndon Emsley

2022Journal of the American Chemical Society46 citationsDOIOpen Access PDF

Abstract

Determination of the three-dimensional atomic-level structure of powdered solids is one of the key goals in current chemistry. Solid-state NMR chemical shifts can be used to solve this problem, but they are limited by the high computational cost associated with crystal structure prediction methods and density functional theory chemical shift calculations. Here, we successfully determine the crystal structures of ampicillin, piroxicam, cocaine, and two polymorphs of the drug molecule AZD8329 using on-the-fly generated machine-learned isotropic chemical shifts to directly guide a Monte Carlo-based structure determination process starting from a random gas-phase conformation.

Topics & Concepts

ChemistryCrystal structure predictionChemical shiftCrystal structureMoleculeDensity functional theoryMonte Carlo methodIsotropyCrystal (programming language)Computational chemistryChemical physicsCrystallographyPhysical chemistryOrganic chemistryComputer scienceMathematicsProgramming languagePhysicsStatisticsQuantum mechanicsAdvanced NMR Techniques and ApplicationsX-ray Diffraction in CrystallographyCrystallography and molecular interactions