| Literature DB >> 31134189 |
Andrea E Steuer1, Lana Brockbals1, Thomas Kraemer1.
Abstract
Drug of abuse (DOA) consumption is a growing problem worldwide, particularly with increasing numbers of new psychoactive substances (NPS) entering the drug market. Generally, little information on their adverse effects and toxicity are available. The direct detection and identification of NPS is an analytical challenge due to their ephemerality on the drug scene. An approach that does not directly focus on the structural detection of an analyte or its metabolites, would be beneficial for this complex analytical scenario and the development of alternative screening methods could help to provide fast response on suspected NPS consumption. A metabolomics approach might represent such an alternative strategy for the identification of biomarkers for different questions in DOA testing. Metabolomics is the monitoring of changes in small (endogenous) molecules (<1,000 Da) in response to a certain stimulus, e.g., DOA consumption. For this review, a literature search targeting "metabolomics" and different DOAs or NPS was conducted. Thereby, different applications of metabolomic strategies in biomarker research for DOA identification were identified: (a) as an additional tool for metabolism studies bearing the major advantage that particularly a priori unknown or unexpected metabolites can be identified; and (b) for identification of endogenous biomarker or metabolite patterns, e.g., for synthetic cannabinoids or also to indirectly detect urine manipulation attempts by chemical adulteration or replacement with artificial urine samples. The majority of the currently available literature in that field, however, deals with metabolomic studies for DOAs to better assess their acute or chronic effects or to find biomarkers for drug addiction and tolerance. Certain changes in endogenous compounds are detected for all studied DOAs, but often similar compounds/pathways are influenced. When evaluating these studies with regard to possible biomarkers for drug consumption, the observed changes appear, albeit statistically significant, too small to reliably work as biomarker for drug consumption. Further, different drugs were shown to affect the same pathways. In conclusion, metabolomic approaches possess potential for detection of biomarkers indicating drug consumption. More studies, including more sensitive targeted analyses, multi-variant statistical models or deep-learning approaches are needed to fully explore the potential of omics science in DOA testing.Entities:
Keywords: NPS; biomarker; drugs of abuse; indirect; metabolism; metabolomics; urine adulteration
Year: 2019 PMID: 31134189 PMCID: PMC6523029 DOI: 10.3389/fchem.2019.00319
Source DB: PubMed Journal: Front Chem ISSN: 2296-2646 Impact factor: 5.221
Figure 1Overview of different omics-sciences such as genomics, transcriptomics, and proteomics. Metabolomics represents the downstream output of the genome but also the upstream input from the environment and is therefore positioned at the bottom of the “omics” cascade.
Figure 2Schematic of a typical untargeted metabolomics workflow including data analysis, feature detection (peak picking), statistical evaluation and compound identification.
Summary of studies applying untargeted metabolomics approaches for the elucidation of xenobiotic drug metabolism.
| CBD | HO-CBD (3 isomers) | Untargeted | Homogenization | LC-HRMS | XCMS online | Citti et al., |
| GHB | GHB-carnitine | Untargeted | Dilution/filtration | LC-HRMS | Progensis Qi | Steuer et al., |
| Sildenafil | Reduced sildenafil | untargeted | PP | LC-HRMS | MZmine 2 | Kim et al., |
| Valproic acid | 3-hydroxy-4-en-valproic acid | Untargeted | PP | LC-HRMS | UNIFI | Mollerup et al., |
Figure 3Box plots for promising analytical targets of GHB consumption representing observed changes between placebo and GHB intake [shown as analyte peak area to creatinine peak area ratios (n = 19 each)]. Statistical evaluation was carried out using a paired t-test (p < 0.05; ****p < 0.0001). Reprinted (adapted) with permission from Steuer et al. (2018c). Copyright 2018, Wiley.
Summary of studies applying metabolomics for biomarker search of acute drug intake or manipulation.
| MA | 5-oxoproline | Untargeted | LLE | GC-HRMS | MetAlign | Shima et al., |
| GHB | glycolate | Untargeted | Lyophilization | NMR | SIMCA 14 | Palomino-Schatzlein et al., |
| GHB | b-citryl glutamic acid | Untargeted | LC-HRMS | Agilent Profinder | Piper et al., | |
| GHB | Glycolate | Untargeted | Dilution/filtration | LC-HRMS | Progensis Qi | Steuer et al., |
| Synthetic cannabinoids/ | Scopoletin | Untargeted | PP | LC-HRMS | MassLynx | Bijlsma et al., |
Summary of studies applying metabolomics for biomarker search of urine manipulation attempts.
| Artificial urine | Urine integrity marker: Phenylalanine | Untargeted acquisition | PP | LC-MS/MS | TF ToxID 2.1.1 | Kluge et al., |
| Artificial urine | BIT | Untargeted | Dilution | LC-HRMS | Manual data comparison | Goggin et al., |
| Marker for chemical urine adulteration | Acetylneuraminic acid | Untargeted | PP | LC-HRMS | XCMSPlus | Steuer et al., |
Figure 4Boxplots of normalized relative concentrations of GHB, glycolate, and succinate at different time points after GHB-intake. p-values from ANOVA are indicated. Reprinted (adapted) with permission from Palomino-Schatzlein et al. (2017). Copyright 2017, American Chemical Society.
Figure 5Anionic metabolites identified in a 0–24 h urine samples using CE-MS. *p < 0.05, **p < 0.01 methamphetamine (MA) vs. saline (SAL). Reprinted (adapted) with permission from Shima et al. (2011). Copyright 2011, Elsevier.
Figure 6(A) Representation of all features from OPLS-DA, shown as S-plot. Marker features are indicated in squares. (B) Boxplot depicting peak area ratios between marker 1 and marker 2 in saliva samples; separated as blank, after herb smoking and after tobacco smoking (n = 24, 18, 6, respectively). Reprinted (adapted) with permission from Bijlsma et al. (2018). Copyright 2018, Springer.
Summary of studies applying metabolomics for biomarker search of drug addiction.
| Cocaine | N-methylserotonin | Tryptophan metabolism | Targeted | PP | Electrochemical detection | R | Patkar et al., |
| Crack | Lactate | Nutritial behavior | Untargeted | Dilution | NMR | Costa et al., | |
| Heroin | myo-inositol-1-P threonate | Untargeted | PP | GC-MS | SIMCAP 11 | Zheng et al., | |
| MA | Acute: Alanine | Energy metabolism | Untargeted | PP | GC-MS | SIMCA-P 13 | Zheng et al., |
Summary of studies applying metabolomics to study acute and chronic toxicity mechanisms.
| CBD | UDP-GlcNac | Glucose metabolism | Untargeted | Homogenization | LC-HRMS | XCMS online | Citti et al., |
| Cocaine | Threonine | Untargeted | LLE | GC-HRMS | Built-in software | Zaitsu et al., | |
| Cocaine/EtOH | Argininosuccinic acid | Amino acid metabolism | Untargeted | PP | LC-HRMS | XCMS in R | Sanchez-Lopez et al., |
| GHB | Acute: | Untargeted | Not described | Not described | Not described | Luca et al., | |
| Long-chain acylcarnitines | |||||||
| MAM 2201 | Malic acid | Energy metabolism | Untargeted | LLE | GC-HRMS | SIMCA-P+13 | Zaitsu et al., |
| MDMA | 5HT | Energy regulation | Targeted | Dilution | NMR | GraphPad Prism 4 | Perrine et al., |
| MDMA | AMP | Energy metabolism | Untargeted | PP | LC-HRMS | XCMS in R | Nielsen et al., |
| LysoPC (16:0) | Energy metabolism | Untargeted | |||||
| MDMA | Spinganine | Energy metabolism | Targeted | LC-(FIA)-MS/MS | Progensis Qi | Boxler et al., | |
| MA | Acute | Acute | Untargeted | Homogenization | LC-MS/MS | In-house software (Metabolon Inc) | McClay et al., |
| Putrescine | |||||||
| MA | N-propylamine | Untargeted | LLE | GC-HRMS | Built-in software | Zaitsu et al., | |
| Opioids Methadone | GSH/GSSG | Antioxidant activity | Targeted | PP | Electrochemical detection | R | Mannelli et al., |
| Opioids | Glutamate | Neurotransmitter metabolism | Untargeted | Homogenization | NMR | MestRe-c2.3 | Hu et al., |
| Opioids | Aspartate | TCA cycle | Untargeted | PP | GC-MS | SIMCAP 11 | Zheng et al., |
| Aspartate | TCA cycle | ||||||
| Opioids | 3-hydroxybutyric acid | TCA cycle | Untargeted | LLE | GC-HRMS | Built-in software | Zaitsu et al., |
| Opioids | Choline | TCA cycle | Untargeted | NMR | SIMICA-P 11.0 | Ning et al., |