13 research outputs found
A diagnostic biomarker profile for fibromyalgia syndrome based on an NMR metabolomics study of selected patients and controls
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174056.pdf (publisher's version ) (Open Access)BACKGROUND: Fibromyalgia syndrome (FMS) is a chronic pain syndrome. A plausible pathogenesis of the disease is uncertain and the pursuit of measurable biomarkers for objective identification of affected individuals is a continuing endeavour in FMS research. Our objective was to perform an explorative metabolomics study (1) to elucidate the global urinary metabolite profile of patients suffering from FMS, and (2) to explore the potential of this metabolite information to augment existing medical practice in diagnosing the disease. METHODS: We selected patients with a medical history of persistent FMS (n = 18), who described their recent state of the disease through the Fibromyalgia Impact Questionnaire (FIQR) and an in-house clinical questionnaire (IHCQ). Three control groups were used: first-generation family members of the patients (n = 11), age-related individuals without any indications of FMS or related conditions (n = 10), and healthy young (18-22 years) individuals (n = 20). All subjects were female and the biofluid under investigation was urine. Correlation analysis of the FIQR showed the FMS patients represented a well-defined disease group for this metabolomics study. Spectral analyses of urine were conducted using a 500 MHz 1H nuclear magnetic resonance (NMR) spectrometer; data processing and analyses were performed using Matlab, R, SPSS and SAS software. RESULTS AND DISCUSSION: Unsupervised and supervised multivariate analyses distinguished all three control groups and the FMS patients, and significant increases in metabolites related to the gut microbiome (hippuric, succinic and lactic acids) were observed. We have developed an algorithm for the diagnosis of FMS consisting of three metabolites - succinic acid, taurine and creatine - that have a good level of diagnostic accuracy (Receiver Operating Characteristic (ROC) analysis - area under the curve 90%) and on the pain and fatigue symptoms for the selected FMS patient group. CONCLUSION: Our data and comparative analyses indicated an altered metabolic profile of patients with FMS, analytically detectable within their urine. Validation studies may substantiate urinary metabolites to supplement information from medical assessment, tender-point measurements and FIQR questionnaires for an improved objective diagnosis of FMS
Towards the disease biomarker in an individual patient using statistical health monitoring
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128446.pdf (publisher's version ) (Open Access)In metabolomics, identification of complex diseases is often based on application of (multivariate) statistical techniques to the data. Commonly, each disease requires its own specific diagnostic model, separating healthy and diseased individuals, which is not very practical in a diagnostic setting. Additionally, for orphan diseases such models cannot be constructed due to a lack of available data. An alternative approach adapted from industrial process control is proposed in this study: statistical health monitoring (SHM). In SHM the metabolic profile of an individual is compared to that of healthy people in a multivariate manner. Abnormal metabolite concentrations, or abnormal patterns of concentrations, are indicated by the method. Subsequently, this biomarker can be used for diagnosis. A tremendous advantage here is that only data of healthy people is required to construct the model. The method is applicable in current-population based -clinical practice as well as in personalized health applications. In this study, SHM was successfully applied for diagnosis of several orphan diseases as well as detection of metabotypic abnormalities related to diet and drug intake
(1)H NMR spectral identification of medication in cerebrospinal fluid of pediatric meningitis
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Molecular identification in metabolomics using infrared ion spectroscopy
Small molecule identification is a continually expanding field of research and represents the core challenge in various areas of (bio) analytical science, including metabolomics. Here, we unequivocally differentiate enantiomeric N-acetylhexosamines in body fluids using infrared ion spectroscopy, providing orthogonal identification of molecular structure unavailable by standard liquid chromatography/high-resolution tandem mass spectrometry. These results illustrate the potential of infrared ion spectroscopy for the identification of small molecules from complex mixtures
Reference-standard free metabolite identification using infrared ion spectroscopy
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Unraveling the unknown areas of the human metabolome: the role of infrared ion spectroscopy
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191841.pdf (Publisher’s version ) (Open Access
Targeted Small-Molecule Identification Using Heartcutting Liquid Chromatography-Infrared Ion Spectroscopy
Infrared ion spectroscopy
(IRIS) can be used to identify molecular
structures detected in mass spectrometry (MS) experiments and has
potential applications in a wide range of analytical fields. However,
MS-based approaches are often combined with orthogonal separation
techniques, in many cases liquid chromatography (LC). The direct coupling
of LC and IRIS is challenging due to the mismatching timescales of
the two technologies: an IRIS experiment typically takes several minutes,
whereas an LC fraction typically elutes in several seconds. To resolve
this discrepancy, we present a heartcutting LC-IRIS approach using
a setup consisting of two switching valves and two sample loops as
an alternative to direct online LC-IRIS coupling. We show that this
automated setup enables us to record multiple IR spectra for two LC-features
from a single injection without degrading the LC-separation performance.
We demonstrate the setup for application in drug metabolism research
by recording six m/z-selective IR spectra for two drug metabolites
from a single 2 μL sample of cell incubation extract. Additionally,
we measure the IR spectra of two closely eluting diastereomeric biomarkers
for the inborn error of metabolism pyridoxine-dependent epilepsy (PDE-ALDH7A1),
which shows that the heartcutting LC-IRIS setup has good sensitivity
(requiring ∼μL injections of ∼μM samples)
and that the separation between closely eluting isomers is maintained.
We envision applications in a range of research fields, where the
identification of molecular structures detected by LC–MS is
required
Integration of genomics and metabolomics for prioritization of rare disease variants: a 2018 literature review
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200196.pdf (publisher's version ) (Open Access