Rapid Identification of Novel Psychoactive and Other Controlled Substances Using Low-Field 1H NMR Spectroscopy

An automated approach to the collection of 1H NMR (nuclear magnetic resonance) spectra using a benchtop NMR spectrometer and the subsequent analysis, processing, and elucidation of components present in seized drug samples are reported. An algorithm is developed to compare spectral data to a referen...

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Veröffentlicht in:ACS omega 2019-04, Vol.4 (4), p.7103-7112
Hauptverfasser: Antonides, Lysbeth H, Brignall, Rachel M, Costello, Andrew, Ellison, Jamie, Firth, Samuel E, Gilbert, Nicolas, Groom, Bethany J, Hudson, Samuel J, Hulme, Matthew C, Marron, Jack, Pullen, Zoe A, Robertson, Thomas B. R, Schofield, Christopher J, Williamson, David C, Kemsley, E. Kate, Sutcliffe, Oliver B, Mewis, Ryan E
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Sprache:eng
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Zusammenfassung:An automated approach to the collection of 1H NMR (nuclear magnetic resonance) spectra using a benchtop NMR spectrometer and the subsequent analysis, processing, and elucidation of components present in seized drug samples are reported. An algorithm is developed to compare spectral data to a reference library of over 300 1H NMR spectra, ranking matches by a correlation-based score. A threshold for identification was set at 0.838, below which identification of the component present was deemed unreliable. Using this system, 432 samples were surveyed and validated against contemporaneously acquired GC–MS (gas chromatography–mass spectrometry) data. Following removal of samples which possessed no peaks in the GC–MS trace or in both the 1H NMR spectrum and GC–MS trace, the remaining 416 samples matched in 93% of cases. Thirteen of these samples were binary mixtures. A partial match (one component not identified) was obtained for 6% of samples surveyed whilst only 1% of samples did not match at all.
ISSN:2470-1343
2470-1343
DOI:10.1021/acsomega.9b00302