Revealing Unknown Controlled Substances and New Psychoactive Substances Using High-Resolution LC–MS-MS Machine Learning Models and the Hybrid Similarity Search Algorithm

Author:

Lee So Yeon,Lee Sang Tak1,Suh Sungill2,Ko Bum Jun2,Oh Han Bin1ORCID

Affiliation:

1. Department of Chemistry, Sogang University, Seoul 04107, Republic of Korea

2. Forensic Genetics & Chemistry Division, Supreme Prosecutors’ Office, Seoul 06590, Republic of Korea

Abstract

Abstract High-resolution liquid chromatography (LC)–tandem mass spectrometry (MS-MS)-based machine learning models are constructed to address the analytical challenge of identifying unknown controlled substances and new psychoactive substances (NPSs). Using a training set composed of 770 LC–MS-MS barcode spectra (with binary entries 0 or 1) obtained generally by high-resolution mass spectrometers, three classification machine learning models were generated and evaluated. The three models are artificial neural network (ANN), support vector machine (SVM) and k-nearest neighbor (k-NN) models. In these models, controlled substances and NPSs were classified into 13 subgroups (benzylpiperazine, opiate, benzodiazepine, amphetamine, cocaine, methcathinone, classical cannabinoid, fentanyl, 2C series, indazole carbonyl compound, indole carbonyl compound, phencyclidine and others). Using 193 LC–MS-MS barcode spectra as an external test set, accuracy of the ANN, SVM and k-NN models were evaluated as 72.5%, 90.0% and 94.3%, respectively. Also, the hybrid similarity search (HSS) algorithm was evaluated to examine whether this algorithm can successfully identify unknown controlled substances and NPSs whose data are unavailable in the database. When only 24 representative LC–MS-MS spectra of controlled substances and NPSs were selectively included in the database, it was found that HSS can successfully identify compounds with high reliability. The machine learning models and HSS algorithms are incorporated into our home-coded artificial intelligence screener for narcotic drugs and psychotropic substances standalone software that is equipped with a graphic user interface. The use of this software allows unknown controlled substances and NPSs to be identified in a convenient manner.

Funder

National Research Foundation of Korea

Supreme Prosecutors´ Office

Publisher

Oxford University Press (OUP)

Subject

Chemical Health and Safety,Health, Toxicology and Mutagenesis,Toxicology,Environmental Chemistry,Analytical Chemistry

Reference60 articles.

1. Fifty Years of the 1961 Single Convention on Narcotic Drugs: A Reinterpretation;Bewley-Taylor,2011

2. Addressing the global tragedy of needless pain: rethinking the United Nations single convention on narcotic drugs;Taylor;The Journal of Law, Medicine & Ethics,2007

3. The biochemical pharmacology of abused drugs; III. cannabis, opiates, and synthetic narcotics;Caldwell;Clinical Pharmacology and Therapeutics,1974

4. Opioid abuse in chronic pain — misconceptions and mitigation strategies;Volkow;New England Journal of Medicine,2016

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