| Literature DB >> 34432105 |
Florence Anne Castelli1,2, Giulio Rosati3, Christian Moguet1, Celia Fuentes3, Jose Marrugo-Ramírez3, Thibaud Lefebvre1,4,5, Hervé Volland1, Arben Merkoçi3, Stéphanie Simon1, François Fenaille1,2, Christophe Junot6,7.
Abstract
Metabolomics refers to the large-scale detection, quantification, and analysis of small molecules (metabolites) in biological media. Although metabolomics, alone or combined with other omics data, has already demonstrated its relevance for patient stratification in the frame of research projects and clinical studies, much remains to be done to move this approach to the clinical practice. This is especially true in the perspective of being applied to personalized/precision medicine, which aims at stratifying patients according to their risk of developing diseases, and tailoring medical treatments of patients according to individual characteristics in order to improve their efficacy and limit their toxicity. In this review article, we discuss the main challenges linked to analytical chemistry that need to be addressed to foster the implementation of metabolomics in the clinics and the use of the data produced by this approach in personalized medicine. First of all, there are already well-known issues related to untargeted metabolomics workflows at the levels of data production (lack of standardization), metabolite identification (small proportion of annotated features and identified metabolites), and data processing (from automatic detection of features to multi-omic data integration) that hamper the inter-operability and reusability of metabolomics data. Furthermore, the outputs of metabolomics workflows are complex molecular signatures of few tens of metabolites, often with small abundance variations, and obtained with expensive laboratory equipment. It is thus necessary to simplify these molecular signatures so that they can be produced and used in the field. This last point, which is still poorly addressed by the metabolomics community, may be crucial in a near future with the increased availability of molecular signatures of medical relevance and the increased societal demand for participatory medicine.Entities:
Keywords: Biomarkers; Biosensors; Immunoassays; Metabolomics; Personalized medicine; Point-of-care tests; Precision medicine
Mesh:
Substances:
Year: 2021 PMID: 34432105 PMCID: PMC8386160 DOI: 10.1007/s00216-021-03586-z
Source DB: PubMed Journal: Anal Bioanal Chem ISSN: 1618-2642 Impact factor: 4.142
Fig. 1Omics technologies for biomarker discovery in the medical field. (A) Pie chart displaying the relative contributions of the various omics approaches for the discovery of biomarkers of diseases over the 2015–2020 period. The PubMed database was inquired (March 2021) with the following keywords occurring in titles and/or abstracts: “disease*,” *marker* or signature*, patients; and “metabolom* or lipidom*,” “transcriptom* or gene expression,” “proteom*,” “microbiom*” and “multi-omics,” excluding review articles. (B) Number of publications related to metabolomics and/or lipidomics alone or combined with other omics from 2015 to 2020
Meta-analyses involving untargeted metabolomics-based approaches
| Publication title | Data | Technology | Software | Reference |
|---|---|---|---|---|
| Comprehensive meta-analysis of COVID-19 global metabolomics datasets | 7 datasets from 3 countries, including 5 raw datasets from MetaboLights, MassIVE, and authors, and 2 annotated peak tables from 2 publications. 438 blood samples from 337 subjects | LC/HRMS | MetaboAnalystR 3.0 | Pang et al., |
| Benford’s law and metabolomics: a tale of numbers and blood | Datasets from 3 studies performed by the author, no raw data available, peaktable available for one study | LC/HRMS | No | D'alessandro, |
| Integrating untargeted metabolomics, genetically informed causal inference, and pathway enrichment to define the obesity metabolome | 3 LC/MS datasets, no raw data available, one peaktable available (related to the software publication) | LC/HRMS | PAIRUP-MS | Hsu et al., |
| MicroRNAs regulating human and mouse naïve pluripotency | Meta-analysis including microRNA-seq, RNA-seq, and metabolomics datasets; the metabolomics datasets are from a single published study; peaktables available; no raw data available | LC/HRMS, LC/QQQ-MS, GC/MS | No | Wang et al., |
Fig. 2The road to successful biomarker discovery
Fig. 3Head-to-tail comparison of evaluated versus reference MS/MS spectra of taurocholic acid obtained under non-resonant conditions. Evaluated MS/MS spectra (blue color) were obtained in the positive ion mode on a Thermo Q-Exactive instrument (NCE 20%). Reference spectra (red color) are stored in the MoNA database and were recorded in the positive ion mode on a Q-Exactive HF (NCE 20–30–40%) and a Waters Q-TOF II instrument (20 eV). [M+H]+ ion at m/z 516.2974. Spectral matching was performed using the MS-DIAL version 4.12) software [208]. DP, dot product; rev. DP, reverse dot product
Selected publications dealing with recommendations and guidelines regarding metabolomics workflows
| Sumner et al., 2007 [ | – | – | Protocol and extraction methods | Instrumental conditions and performance, method validation | Peak detection/integration | – | Metabolite identification |
| Goodacre et al., 2007 [ | – | – | – | – | Peak detection/integration | Data mining, statistical analyses | – |
| Dunn et al., 2011 [ | QA/QC, large cohorts | Large-scale studies | Serum, plasma | GC and LC-MS, samples, and pooled QC | Data preprocessing workflow | Data processing workflow | Levels of confidence, unknown metabolites |
| Dudzik et al., 2018 [ | QA | Plasma, serum, urine, cells, tissues | Plasma, serum, urine cells, tissues | Instrumental conditions, batch and matrix effects, carryover | QA/QC | QA/QC | – |
| Kirwan et al., 2018 [ | Project planning | Plasma, serum, urine, feces, saliva, CSF, tissues | – | – | – | – | – |
| Broadhurst et al., 2018 [ | – | – | Pooled-QC preparation | Pooled-QC: precision, conditioning | – | Pooled-QC: inter batch correction | – |
| González-Riano et al., 2020 [ | – | – | Plasma, serum, urine, feces, cells, tissues | Multi-targeted metabolomics, GC-MS, CE-MS, IMS, chiral analysis | Peak detection/integration | Data cleaning normalization, confounding factors, variable selection | GC-EI-MS (commercial or in-house spectral libraries), LC-MS and CE-MS solutions |
| Rampler et al., 2021 [ | – | – | Discussion on protocols | Absolute quantification, reference material | Peak detection /integration | MS-based multi-omics, merging metabolomics and lipidomics | Metabolite and lipid annotation |
Fig. 4Comparison of metabolite concentrations measured by using untargeted and targeted approaches. Correlation between LC-HRMS data (peak area, exactive instrument) and absolute quantification data (ng/mL, Waters Xevo TQ-XS instrument) obtained for tryptophan, quinolinic acid, kynurenine, and kynurenic acid measured in the serum of 217 patients with different levels of cirrhosis decompensation. Correlation analyses were achieved by calculating Pearson correlation coefficients (r). Experimental conditions are displayed in the publication of Claria et al. [130]
Fig. 5Competitive laboratory immunoassays for small molecules. a Principle of EMIT (Enzyme Multiplied Immunoassay Technique) [153]. EMIT is a competitive immunoassay in homogenous phase in which an analyte analog is bound to an enzyme using nicotinamide-adenine-dinucleotide (NAD) as a cofactor. The enzymatic reaction generates NADH which is detected by spectrophotometry at 340 nm. A competition between the analyte and the enzyme bound analog takes place toward the antibody. The amount of NADH produced is directly related to the amount of analyte present in the sample. b Competitive ELISA [154]: Antibodies are immobilized on the solid support. A competition takes place between an analyte analog coupled to an enzyme and the free analyte in the sample. The detection is achieved through enzymatic activity
Fig. 6Non-competitive laboratory immunoassays for small molecules [155]. a SPIE-IA (solid-phase immobilized epitope-immunoassay): This format is based on the use of a single antibody that acts as both capture and detection antibody. It takes place in four steps: (i) Analytes are captured by immobilized antibodies. (ii) Analytes are covalently bound to the immobilized antibodies with the help of a reagent (e.g., glutaraldehyde, carbaonyldiimidazole). (iii) C-Analytes are then released from the immobilized antibodies by denaturation with a solvent. (iv) Detection antibodies coupled to an enzyme can then fix the analytes. b AIA-NIA (anti-idiotypic antibody-based non-competitive immunoassay): This format requires the use of three antibodies: an immobilized primary antibody (Ab1), an anti-idiotypic antibody (Ab2α), and a labeled anti-idiotypic antibody (Ab2β) and is performed in four steps : (i) The analyte binds to Ab1. (ii) Ab2β is added to block the remaining Ab1 free binding sites. (iii) Ab2α are then added to capture only the Ab1/analyte complexes (Ab2β/Ab1 complexes cannot be captured due to steric hindrance). The signal strength is proportional to the amount of Ab2α labeled and bound to the Ab1/antigen complex. c AICA-NIA (anti-immune complex antibody-based non-competitive immunoassay): This assay uses an immobilized (Ab1) and an anti-metatypic (Ab2) antibody, the latter stabilizing the antibody/analyte complex. It takes place in two stages: (i) The analyte binds to the Ab1. (ii) Ab2 is added and binds the analyte-antibody complexes. The intensity reflects the amount of Ab2 that has bound. d OS-NIA (open sandwich non-competitive immunoassay): This format is based on the association of free VH and VL chains from the variable domain of an antibody, which dissociate in the absence of the antigen (i.e., the analyte). It takes place in two stages: (i) The VL chains, conjugated to a carrier protein, are fixed by immobilized antibodies. (ii) The analyte and the labeled VH chains are added. The binding of the antigens to the VL chains allows the association of the VL and VH chains. The intensity of the signal is proportional to the quantity of labeled VH chains present
Fig. 7Principle of competitive lateral flow immunoassays: The device is composed of four parts: (i) a sample pad, on which the sample is deposited; (ii) a conjugate dried buffer, containing the labeled analyte analog; (iii) a nitrocellulose membrane, on which are found test line(s) composed of antibodies recognizing the analyte(s), and control line(s) formed by antibodies which recognize the labeled analyte analog; and (iv) an absorbent paper, which serves to pump the liquid sample and reserves any excess sample. In the absence of the target analyte (negative sample), labeled analog analytes move through the strip and bind on both test and control lines. In a positive sample, a competition takes place on the test line between the analyte and its labeled analog. As before, the excess of labeled analyte analog is captured by antibodies in the control line. Thus, a signal is only observed on the control line. Adapted from reference [166]
Characteristics and performance of the main biosensors currently available for small-molecule detection in biological fluids
| Cocaine and synthetic cathinones | Colorimetric | Aptamer | 10 μM | 5 min | Saliva and urine | Luo et al., 2019 [ |
| Cocaine | Microfluidic, electrochemistry | Aptamer | 10 μM | 1–2 min | Blood serum | Swensen et al., 2009 [ |
| Adenosine trihosphate (ATP) | Lateral-flow assay | Self-assembly of split aptamers fragments | 2 μM | 10 min | Blood serum | Chen et al., 2012 [ |
| Adenosine | Electrochemistry uPAD | Aptamers | 5.7 μM | 10 min | Urine | Fu et al., 2017 [ |
| Cocaine, ATP | Fluorescence | Exonuclease-mediated aptamer digestion | 500 nM | 25 min | Urine | Canoura et al., 2018 [ |
| Tetrahydrocannabinol | Magnetoresistive sensor | Antibodies competitive detection | 10 ng/ml | < 15 min | Saliva | Lee et al., 2016 [ |
| Ochratoxin A, aflatoxin B1, ATP, potassium ions | Localized surface plasmon resonance | Aptamers on gold nanorods | 0.56, 0.63, 0.87, 1.05 pM | 30–60 min | Serum | Park et al., 2017 [ |
| Fluorescence polarization assay | Aptamer | 200 nM | < 10 min | Urine | Ruta et al., 2009 [ | |
| Phenytoin | CMOS BioMEMS | 4.06 μg/ml | 25 min | Artificial samples | Yen et al., 2020 [ | |
| Dopamine, cortisol, serotonin | Thermal variation | MIPs and thermal transducers | 8 μM | / | Serum and urine | Diliën et al., 2017 [ |
| Carnitine | Potentiometric | MIPs, Radical polymerization | 80 μM | / | Urine | Moret et al., 2014 [ |
| Dopamine | Ratiometric electrochemical | MIPs and nanoporous Au | 0.1 μM | 2 min | Artificial CSF | Yang et al., 2019 [ |
| Glucose | Electrochemial | MIPs and AuNPs | 1.25 nM | 30 min | Serum | Sehit et al., 2020 [ |
Fig. 8Overview of the possible adaptation of aptamers in different detection platforms combined with nanomaterials. (a) Gold nanocap-supported up-conversion nanoparticles for fabrication of a solid-phase aptasensor for ochratoxin A detection. Extracted from reference [209]. (b) Calibration-free measurement of phenylalanine levels in the blood using an electrochemical aptamer-based sensor suitable for point-of-care applications extracted from reference [210]. (c and d) Aptamer-based lateral flow test strip for rapid detection of zearalenone in corn samples. Adapted from reference [211]
Fig. 9MIP-based biosensing platforms. a Gold nanoparticle (AuNP) decorated MIPs using o-PD and glucose as monomer and template molecules, respectively. CV and DPV measurement of each step. Extracted from Sehit et al. [188]. b Schematic representation of the heat flow through the MIP and NIP-coated thermocouples. Extracted from Diliën et al. [186]. c Schematic diagram of the synthesis process of MIPs/pThi/NPG electrodes, along with their respective DPV measurements and the calibration curves for dopamine detection. Adapted from Yang et al. [207]