Deep Learning-Enabled MS/MS Spectrum Prediction Facilitates Automated Identification Of Novel Psychoactive Substances

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  • Fei Wang
  • Pasin, Daniel Joel
  • Michael A. Skinnider
  • Jaanus Liigand
  • Jan Niklas Kleis
  • David Brown
  • Eponine Oler
  • Tanvir Sajed
  • Vasuk Gautam
  • Stephen Harrison
  • Russell Greiner
  • Leonard J. Foster
  • Dalsgaard, Petur Weihe
  • David S. Wishart

The market for illicit drugs has been reshaped by the emergence of more than 1100 new psychoactive substances (NPS) over the past decade, posing a major challenge to the forensic and toxicological laboratories tasked with detecting and identifying them. Tandem mass spectrometry (MS/MS) is the primary method used to screen for NPS within seized materials or biological samples. The most contemporary workflows necessitate labor-intensive and expensive MS/MS reference standards, which may not be available for recently emerged NPS on the illicit market. Here, we present NPS-MS, a deep learning method capable of accurately predicting the MS/MS spectra of known and hypothesized NPS from their chemical structures alone. NPS-MS is trained by transfer learning from a generic MS/MS prediction model on a large data set of MS/MS spectra. We show that this approach enables a more accurate identification of NPS from experimentally acquired MS/MS spectra than any existing method. We demonstrate the application of NPS-MS to identify a novel derivative of phencyclidine (PCP) within an unknown powder seized in Denmark without the use of any reference standards. We anticipate that NPS-MS will allow forensic laboratories to identify more rapidly both known and newly emerging NPS. NPS-MS is available as a web server at https://nps-ms.ca/, which provides MS/MS spectra prediction capabilities for given NPS compounds. Additionally, it offers MS/MS spectra identification against a vast database comprising approximately 8.7 million predicted NPS compounds from DarkNPS and 24.5 million predicted ESI-QToF-MS/MS spectra for these compounds.

Original languageEnglish
JournalAnalytical Chemistry
Volume95
Issue number50
Pages (from-to)18326-18334
ISSN0003-2700
DOIs
Publication statusPublished - 2023

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© 2023 The Authors. Published by American Chemical Society.

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