| Literature DB >> 23136561 |
Ekaterina Nevedomskaya1, Tiziana Pacchiarotta, Artem Artemov, Axel Meissner, Cees van Nieuwkoop, Jaap T van Dissel, Oleg A Mayboroda, André M Deelder.
Abstract
Urinary tract infection (UTI) encompasses a variety of clinical syndromes ranging from mild to life-threatening conditions. As such, it represents an interesting model for the development of an analytically based scoring system of disease severity and/or host response. Here we test the feasibility of this concept using (1)H NMR based metabolomics as the analytical platform. Using an exhaustively clinically characterized cohort and taking advantage of the multi-level study design, which opens possibilities for case-control and longitudinal modeling, we were able to identify molecular discriminators that characterize UTI patients. Among those discriminators a number (e.g. acetate, trimethylamine and others) showed association with the degree of bacterial contamination of urine, whereas others, such as, for instance, scyllo-inositol and para-aminohippuric acid, are more likely to be the markers of morbidity. ELECTRONIC SUPPLEMENTARY MATERIAL: The online version of this article (doi:10.1007/s11306-012-0411-y) contains supplementary material, which is available to authorized users.Entities:
Year: 2012 PMID: 23136561 PMCID: PMC3483096 DOI: 10.1007/s11306-012-0411-y
Source DB: PubMed Journal: Metabolomics ISSN: 1573-3882 Impact factor: 4.290
Characteristics of the studied patients and controls groups at baseline (t = 0)
| Characteristics | UTI patients | Controls |
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|---|---|---|---|
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|
| ||
| Age, years, median (sd) | 59 (14.6) | 58 (17.9) | 0.9 |
| Female, | 22 (55) | 22 (55) | 1 |
| Smoking, | 5 (12) | 5 (12) | 1 |
| Co-morbidity, | |||
| Urinary tract disorder | 4 (10) | 4 (10) | 1 |
| Malignancy | 4 (10) | 1 (3) | 0.17 |
| Heart failure | 5 (13) | 3 (8) | 0.46 |
| Renal insufficiency | 1 (4) | 0 (0) | 0.13 |
| Diabetes mellitus | 6 (15) | 2 (5) | 0.14 |
| Immunocompromised | 1 (3) | 1 (3) | 1 |
| Urine dipstick results | |||
| Nitrite | 26/37 (75)a | 0/37 (0)a | <0.001 |
| Leucocyte esterase | 35/37 (95)a | 5/37 (14)a | <0.001 |
a3 missing values
Fig. 1PCA scores plot of 1H NMR data from controls and UTI patients urine samples at baseline, first two principal components covering 14.5 and 10.2% of variation respectively. a Colored according to controls (square) and UTI patients (circle). b Colored according to the logarithm of absolute concentration of paracetamol–glucuronide (Color figure online)
Fig. 2PCA scores plots of 1H NMR data from controls (black) and UTI patients (red) urine samples at baseline after removal of the regions corresponding to paracetamol and its metabolites. First principal component covers 11.7%, second 11.2% and third 9.8% of variation (Color figure online)
Spectroscopic regions that appear as influential in various statistical models and the statistical significance of the corresponding univariate tests based on the quantified corresponding peaks
| Identity | ChemSpider IDs | Spectral bins (ppm)a | Controls vs. UTI patientsb | Bacteria concentrationc | Recovery from | |||
|---|---|---|---|---|---|---|---|---|
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| Change | ANOVA | Change | Paired | Change | |||
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| |||||||
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| 1-Methylnicotinamide | 10628510 | 9.284, 9.271, 8.971, 4.484 | 9.00E-07 | ↓ | 2.00E-05 | ↓ | ||
| Acetic acid | 170 | 1.934, 1.921 | 7.00E-08 | ↑ | 2.00E-07 | ↑ | ||
| Acylcarnitine | NA | 3.189 | 0.004 | ↑ | ||||
| Citric acid | 29081 | 2.562, 2.534 | 9.00E-05 | ↓ | ||||
| Creatinine | 568 | 4.075, 3.066, 3.052 | 0.3 | ↓ | ||||
| Furoylglycine | 20474156 | 7.703, 7.689 | 0.15 | ↑ | ||||
| Glycolic acid derivative | NA | 3.953 | 0.55 | ↓ | 0.56 | ↓ | 0.55 | ↑ |
| Hippuric acid | 451 | 7.853, 7.662, 7.648, 7.580, 3.966, 8.548, 8.534 | 0.001 | ↓ | 0.001 | ↓ | ||
| Lactic acid | 96860 | 1.334 | 0.0008 | ↑ | 0.0002 | ↑ | ||
| Para-aminohippuric acid | 2063 | 7.757 | 0.055 | ↑ | ||||
| Scyllo-inositol | 23975912 | 3.325 | 0.1 | ↑ | ||||
| Taurine | 1091 | 3.448, 3.434, 3.421, 3.257 | 1.00E-03 | ↑ | 0.08 | ↑ | 2.00E-07 | ↓ |
| Trigonelline | 5369 | 8.698, 4.443 | 0.09 | ↑ | ||||
| Trimethylamine | 1114 | 2.889 | 4.00E-06 | ↑ | 0.0001 | ↑ | 0.0001 | |
| Unknown 1 | NA | 7.962 | 0.01 | ↑ | ||||
| Unknown 2 | NA | 7.743 | 0.015 | ↑ | ||||
| Unknown 3 | NA | 7.512 | 0.0006 | ↑ | ||||
| Unknown 4 | NA | 6.68 | 4.00E-05 | ↑ | ||||
| Unknown 5 | NA | 6.503 | 0.065 | ↑ | ||||
| Unknown 6 | NA | 3.162 | 0.05 | ↓ | ||||
aChemical shift corresponding to the center of the bin region
bTwo-group t test for the healthy controls and UTI patients at baseline; ↑ corresponds to intensity of the region being higher in UTI patients compared to controls, ↓ means that region intensity is lower in UTI patients compared to controls
cANOVA analysis for the number of bacteria present in urine; direction corresponds to the correlation to the number of bacteria: ↑ corresponds to the raise of the region intensity with the increase of the number of bacteria, ↓ to the decrease of the region intensity with the increase of the number of bacteria
dPaired t test for the UTI patients at baseline and 30 days; ↑ direction of change corresponds to intensity of the region being higher at 30 days compared to baseline, ↓ means that region intensity is lower at 30 days compared to baseline
Fig. 3Cross-validated PLS-DA scores plot of urine 1H NMR spectra of controls (square) and UTI patients at baseline (circle), R2Y = 0.88, Q2 = 0.63
Fig. 4Predicted response value for two-class PLS-DA model based on controls (black bars) and UTI patients (red bars) at baseline: blue bars are the t = 4 and t = 30 classified as controls, grey are the t = 4 and t = 30 samples classified as UTI patients at t = 0 (Color figure online)
Fig. 5Scores plot of the PLS model of urine 1H NMR spectra at baseline versus the number of bacteria (CFU/ml) found in urine (R2Y = 0.78, Q2 = 0.44). Colored by the number of bacteria (Color figure online)