A New Strategy for Efficient Retrospective Data Analyses for Designer Benzodiazepines in Large LC-HRMS Datasets

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Standard

A New Strategy for Efficient Retrospective Data Analyses for Designer Benzodiazepines in Large LC-HRMS Datasets. / Pan, Meiru; Rasmussen, Brian Schou; Dalsgaard, Petur Weihe; Mollerup, Christian Brinch; Nielsen, Marie Katrine Klose; Nedahl, Michael; Linnet, Kristian; Mardal, Marie.

I: Frontiers in Chemistry, Bind 10, 868532, 2022.

Publikation: Bidrag til tidsskriftTidsskriftartikelForskningfagfællebedømt

Harvard

Pan, M, Rasmussen, BS, Dalsgaard, PW, Mollerup, CB, Nielsen, MKK, Nedahl, M, Linnet, K & Mardal, M 2022, 'A New Strategy for Efficient Retrospective Data Analyses for Designer Benzodiazepines in Large LC-HRMS Datasets', Frontiers in Chemistry, bind 10, 868532. https://doi.org/10.3389/fchem.2022.868532

APA

Pan, M., Rasmussen, B. S., Dalsgaard, P. W., Mollerup, C. B., Nielsen, M. K. K., Nedahl, M., Linnet, K., & Mardal, M. (2022). A New Strategy for Efficient Retrospective Data Analyses for Designer Benzodiazepines in Large LC-HRMS Datasets. Frontiers in Chemistry, 10, [868532]. https://doi.org/10.3389/fchem.2022.868532

Vancouver

Pan M, Rasmussen BS, Dalsgaard PW, Mollerup CB, Nielsen MKK, Nedahl M o.a. A New Strategy for Efficient Retrospective Data Analyses for Designer Benzodiazepines in Large LC-HRMS Datasets. Frontiers in Chemistry. 2022;10. 868532. https://doi.org/10.3389/fchem.2022.868532

Author

Pan, Meiru ; Rasmussen, Brian Schou ; Dalsgaard, Petur Weihe ; Mollerup, Christian Brinch ; Nielsen, Marie Katrine Klose ; Nedahl, Michael ; Linnet, Kristian ; Mardal, Marie. / A New Strategy for Efficient Retrospective Data Analyses for Designer Benzodiazepines in Large LC-HRMS Datasets. I: Frontiers in Chemistry. 2022 ; Bind 10.

Bibtex

@article{d396af70221c414491ed7ecd2f4e5177,
title = "A New Strategy for Efficient Retrospective Data Analyses for Designer Benzodiazepines in Large LC-HRMS Datasets",
abstract = "The expanding and dynamic market of new psychoactive substances (NPSs) poses challenges for laboratories worldwide. The retrospective data analysis (RDA) of previously analyzed samples for new targets can be used to investigate analytes missed in the first data analysis. However, RDA has historically been unsuitable for routine evaluation because reprocessing and reevaluating large numbers of forensic samples are highly work- and time-consuming. In this project, we developed an efficient and scalable retrospective data analysis workflow that can easily be tailored and optimized for groups of NPSs. The objectives of the study were to establish a retrospective data analysis workflow for benzodiazepines in whole blood samples and apply it on previously analyzed driving-under-the-influence-of-drugs (DUID) cases. The RDA workflow was based on a training set of hits in ultrahigh-performance liquid chromatography–quadrupole time-of-flight–mass spectrometry (UHPLC-QTOF-MS) data files, corresponding to common benzodiazepines that also had been analyzed with a complementary UHPLC–tandem mass spectrometry (MS/MS) method. Quantitative results in the training set were used as the true condition to evaluate whether a hit in the UHPLC-QTOF-MS data file was true or false positive. The training set was used to evaluate and set filters. The RDA was used to extract information from 47 DBZDs in 13,514 UHPLC-QTOF-MS data files from DUID cases analyzed from 2014 to 2020, with filters on the retention time window, count level, and mass error. Sixteen designer and uncommon benzodiazepines (DBZDs) were detected, where 47 identifications had been confirmed by using complementary methods when the case was open (confirmed positive finding), and 43 targets were not reported when the case was open (tentative positive finding). The most common tentative and confirmed findings were etizolam (n = 26), phenazepam (n = 13), lorazepam (n = 9), and flualprazolam (n = 8). This method efficiently found DBZDs in previously acquired UHPLC-QTOF-MS data files, with only nine false-positive hits. When the standard of an emerging DBZD becomes available, all previously acquired DUID data files can be screened in less than 1 min. Being able to perform a fast and accurate retrospective data analysis across previously acquired data files is a major technological advancement in monitoring NPS abuse.",
keywords = "cheminformatics, designer benzodiazepines, drug screening, HRMS, LC-QTOF, new psychoactive substances, retrospective screening",
author = "Meiru Pan and Rasmussen, {Brian Schou} and Dalsgaard, {Petur Weihe} and Mollerup, {Christian Brinch} and Nielsen, {Marie Katrine Klose} and Michael Nedahl and Kristian Linnet and Marie Mardal",
note = "Funding Information: MM acknowledges the Norwegian Research Council (project number: 312267), and MP acknowledges the Chinese Scholarship Council (CSC No. 201908210318) for funding. Publisher Copyright: Copyright {\textcopyright} 2022 Pan, Rasmussen, Dalsgaard, Mollerup, Nielsen, Nedahl, Linnet and Mardal.",
year = "2022",
doi = "10.3389/fchem.2022.868532",
language = "English",
volume = "10",
journal = "Frontiers in Chemistry",
issn = "2296-2646",
publisher = "Frontiers Media S.A.",

}

RIS

TY - JOUR

T1 - A New Strategy for Efficient Retrospective Data Analyses for Designer Benzodiazepines in Large LC-HRMS Datasets

AU - Pan, Meiru

AU - Rasmussen, Brian Schou

AU - Dalsgaard, Petur Weihe

AU - Mollerup, Christian Brinch

AU - Nielsen, Marie Katrine Klose

AU - Nedahl, Michael

AU - Linnet, Kristian

AU - Mardal, Marie

N1 - Funding Information: MM acknowledges the Norwegian Research Council (project number: 312267), and MP acknowledges the Chinese Scholarship Council (CSC No. 201908210318) for funding. Publisher Copyright: Copyright © 2022 Pan, Rasmussen, Dalsgaard, Mollerup, Nielsen, Nedahl, Linnet and Mardal.

PY - 2022

Y1 - 2022

N2 - The expanding and dynamic market of new psychoactive substances (NPSs) poses challenges for laboratories worldwide. The retrospective data analysis (RDA) of previously analyzed samples for new targets can be used to investigate analytes missed in the first data analysis. However, RDA has historically been unsuitable for routine evaluation because reprocessing and reevaluating large numbers of forensic samples are highly work- and time-consuming. In this project, we developed an efficient and scalable retrospective data analysis workflow that can easily be tailored and optimized for groups of NPSs. The objectives of the study were to establish a retrospective data analysis workflow for benzodiazepines in whole blood samples and apply it on previously analyzed driving-under-the-influence-of-drugs (DUID) cases. The RDA workflow was based on a training set of hits in ultrahigh-performance liquid chromatography–quadrupole time-of-flight–mass spectrometry (UHPLC-QTOF-MS) data files, corresponding to common benzodiazepines that also had been analyzed with a complementary UHPLC–tandem mass spectrometry (MS/MS) method. Quantitative results in the training set were used as the true condition to evaluate whether a hit in the UHPLC-QTOF-MS data file was true or false positive. The training set was used to evaluate and set filters. The RDA was used to extract information from 47 DBZDs in 13,514 UHPLC-QTOF-MS data files from DUID cases analyzed from 2014 to 2020, with filters on the retention time window, count level, and mass error. Sixteen designer and uncommon benzodiazepines (DBZDs) were detected, where 47 identifications had been confirmed by using complementary methods when the case was open (confirmed positive finding), and 43 targets were not reported when the case was open (tentative positive finding). The most common tentative and confirmed findings were etizolam (n = 26), phenazepam (n = 13), lorazepam (n = 9), and flualprazolam (n = 8). This method efficiently found DBZDs in previously acquired UHPLC-QTOF-MS data files, with only nine false-positive hits. When the standard of an emerging DBZD becomes available, all previously acquired DUID data files can be screened in less than 1 min. Being able to perform a fast and accurate retrospective data analysis across previously acquired data files is a major technological advancement in monitoring NPS abuse.

AB - The expanding and dynamic market of new psychoactive substances (NPSs) poses challenges for laboratories worldwide. The retrospective data analysis (RDA) of previously analyzed samples for new targets can be used to investigate analytes missed in the first data analysis. However, RDA has historically been unsuitable for routine evaluation because reprocessing and reevaluating large numbers of forensic samples are highly work- and time-consuming. In this project, we developed an efficient and scalable retrospective data analysis workflow that can easily be tailored and optimized for groups of NPSs. The objectives of the study were to establish a retrospective data analysis workflow for benzodiazepines in whole blood samples and apply it on previously analyzed driving-under-the-influence-of-drugs (DUID) cases. The RDA workflow was based on a training set of hits in ultrahigh-performance liquid chromatography–quadrupole time-of-flight–mass spectrometry (UHPLC-QTOF-MS) data files, corresponding to common benzodiazepines that also had been analyzed with a complementary UHPLC–tandem mass spectrometry (MS/MS) method. Quantitative results in the training set were used as the true condition to evaluate whether a hit in the UHPLC-QTOF-MS data file was true or false positive. The training set was used to evaluate and set filters. The RDA was used to extract information from 47 DBZDs in 13,514 UHPLC-QTOF-MS data files from DUID cases analyzed from 2014 to 2020, with filters on the retention time window, count level, and mass error. Sixteen designer and uncommon benzodiazepines (DBZDs) were detected, where 47 identifications had been confirmed by using complementary methods when the case was open (confirmed positive finding), and 43 targets were not reported when the case was open (tentative positive finding). The most common tentative and confirmed findings were etizolam (n = 26), phenazepam (n = 13), lorazepam (n = 9), and flualprazolam (n = 8). This method efficiently found DBZDs in previously acquired UHPLC-QTOF-MS data files, with only nine false-positive hits. When the standard of an emerging DBZD becomes available, all previously acquired DUID data files can be screened in less than 1 min. Being able to perform a fast and accurate retrospective data analysis across previously acquired data files is a major technological advancement in monitoring NPS abuse.

KW - cheminformatics

KW - designer benzodiazepines

KW - drug screening

KW - HRMS

KW - LC-QTOF

KW - new psychoactive substances

KW - retrospective screening

U2 - 10.3389/fchem.2022.868532

DO - 10.3389/fchem.2022.868532

M3 - Journal article

C2 - 35692684

AN - SCOPUS:85131854363

VL - 10

JO - Frontiers in Chemistry

JF - Frontiers in Chemistry

SN - 2296-2646

M1 - 868532

ER -

ID: 314913000