| Literature DB >> 30535603 |
Miguel Fernández-García1, David Rojo2, Fernanda Rey-Stolle2, Antonia García2, Coral Barbas2.
Abstract
A robust biomarker screening and validation is crucial for overcoming the current limits in the clinical management of infectious diseases. In this chapter, a general workflow for metabolomics is summarized. Subsequently, an overview of the major contributions of this omics science to the field of biomarkers of infectious diseases is discussed. Different approaches using a variety of analytical platforms can be distinguished to unveil the key metabolites for the diagnosis, prognosis, response to treatment and susceptibility for infectious diseases. To allow the implementation of such biomarkers into the clinics, the performance of large-scale studies employing solid validation criteria becomes essential. Focusing on the etiological agents and after an extensive review of the field, we present a comprehensive revision of the main metabolic biomarkers of viral, bacterial, fungal, and parasitic diseases. Finally, we discussed several articles which show the strongest validation criteria. Following these research avenues, precious clinical resources will be revealed, allowing for reduced misdiagnosis, more efficient therapies, and affordable costs, ultimately leading to a better patient management.Entities:
Keywords: Biomarker discovery; Biomarkers; Diagnostics; Infectious diseases; Metabolomics
Mesh:
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Year: 2018 PMID: 30535603 PMCID: PMC7124096 DOI: 10.1007/978-3-319-74932-7_7
Source DB: PubMed Journal: Exp Suppl ISSN: 1664-431X
Fig. 7.1General scheme showing the major mass fluxes (normal arrows) and molecular interactions (dashed arrows) between the different systems of an organism and its environment
Overview of the metabolome coverage of the main analytical techniques
| Analytical technique | Metabolome coverage | Compound requirements | Polarity | Examples |
|---|---|---|---|---|
| GC-MS | Low | Thermostable compounds with acidic H or volatiles | High–mid | Amino acids, small organic acids, carbohydrates, fatty acids, terpenes, cholesterol derivatives |
| LC-MS | High | Soluble compounds | Depending on column | Amino acids, oligopeptides, small organic acids, carbohydrates, phosphate compounds nucleosides, lipids, nucleotides, carnitines |
| CE-MS | Medium | Charged compounds | Only polar | Amino acids, oligopeptides, small organic acids, phosphate compounds nucleosides, nucleotides, carnitines |
| 1H-NMR | Low | Abundant compounds with non-exchangeable protons | – | Small organic acids, carbohydrates, amino acids |
| 31P-NMR | Low | Abundant phosphorus-containing compounds | – | Nucleotides, nucleosides, polyphosphate, phosphate enzyme cofactors, sugar phosphates |
Fig. 7.2General workflow in a metabolomics experiment for biomarker discovery and validation
Fig. 7.3Classification of metabolomics experiments in infectious diseases attending to (a) host nature, (b) analytical technique, (c) sample type, and (d) disease under study. Items in pie charts are displayed clockwise