| Literature DB >> 22859960 |
Anna L Gloyn1, Johan H Faber, Daniel Malmodin, Gaya Thanabalasingham, Francis Lam, Per Magne Ueland, Mark I McCarthy, Katharine R Owen, Dorrit Baunsgaard.
Abstract
It is important to identify patients with Maturity-onset diabetes of the young (MODY) as a molecular diagnosis determines both treatment and prognosis. Genetic testing is currently expensive and many patients are therefore not assessed and are misclassified as having either type 1 or type 2 diabetes. Biomarkers could facilitate the prioritisation of patients for genetic testing. We hypothesised that patients with different underlying genetic aetiologies for their diabetes could have distinct metabolic profiles which may uncover novel biomarkers. The aim of this study was to perform metabolic profiling in urine from patients with MODY due to mutations in the genes encoding glucokinase (GCK) or hepatocyte nuclear factor 1 alpha (HNF1A), type 2 diabetes (T2D) and normoglycaemic control subjects. Urinary metabolic profiling by Nuclear Magnetic Resonance (NMR) and ultra performance liquid chromatography hyphenated to Q-TOF mass spectrometry (UPLC-MS) was performed in a Discovery set of subjects with HNF1A-MODY (n = 14), GCK-MODY (n = 17), T2D (n = 14) and normoglycaemic controls (n = 34). Data were used to build a valid partial least squares discriminate analysis (PLS-DA) model where HNF1A-MODY subjects could be separated from the other diabetes subtypes. No single metabolite contributed significantly to the separation of the patient groups. However, betaine, valine, glycine and glucose were elevated in the urine of HNF1A-MODY subjects compared to the other subgroups. Direct measurements of urinary amino acids and betaine in an extended dataset did not support differences between patients groups. Elevated urinary glucose in HNF1A-MODY is consistent with the previously reported low renal threshold for glucose in this genetic subtype. In conclusion, we report the first metabolic profiling study in monogenic diabetes and show that, despite the distinct biochemical pathways affected, there are unlikely to be robust urinary biomarkers which distinguish monogenic subtypes from T2D. Our results have implications for studies investigating metabolic profiles in complex traits including T2D.Entities:
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Year: 2012 PMID: 22859960 PMCID: PMC3408469 DOI: 10.1371/journal.pone.0040962
Source DB: PubMed Journal: PLoS One ISSN: 1932-6203 Impact factor: 3.240
Clinical Characteristics of Subjects in the Discovery and extended datasets.
| Discovery dataset | Extended dataset | |||||
| HNF1A-MODY n = 25 | GCK-MODY n = 24 | T2D n = 14 | Non-diabetic n = 34 | HNF1A-MODY n = 39 | T2D n = 158 | |
|
| 36:64 | 42:58 | 50:50 | 53:47 | 33:67 | 57:43 |
|
| 38.3(26.9) | 25.1(11.4) | 52.7(12.1) | 49(8.5) | 44.2(24.0) | 52.4(18.2) |
|
| 11.9(24.9) 4 subjects non-diabetic | Hyperglycaemia from birth | 3.8(3.5) | N/A | 21.5(29.1) 6 subjects non-diabetic | 14.8(16.9) |
|
| 14:43:38 | 79:21:0 | 100:0:0 | N/A | 10:43:47 | 3:29:68 |
|
| 8.3(3.4) | 7.1(1.1) | 6.3(2.4) | 5.1(0.4) | 6.9 (4.1) | 8.5(3.8) |
|
| 7 (1.4) | 6.5(0.7) | 6.1(0.7) | Not available | 7.1(1.4) | 7.6(2.0) |
|
| 24.3(4.1) | 25.1(11.4) | 31.4(8.5) | 24.7(3.4) | 24.2(4.7) | 33.1(9.4) |
Data is shown as median (IQR) or %.
Figure 13D score plot of a two-class PLS-DA model of HNF1A versus T2D/GCK; green triangle = HNF1A, red triangle = GCK and blue triangle = T2D.
Q2 = 0.518 using three PLS-components in a valid model (Q2Y = 0.52).
Figure 2Scatter diagrams of betaine (A) and glucose adduct (B) ESI+-MS peak intensities in detected samples; grey triangle = control, green triangle = HNF1A, red triangle = GCK and blue triangle = T2D.
Intensity of the signal is plotted as a constant sum normalized value.
Follow up of glucose, amino acid and betaine signals.
| HNF1A-MODY | GCK-MODY | T2D | p | C statistic HNF1A vs T2D | |
|
| n = 27 | n = 17 | n = 158 | ||
| Urinary glucose/Cr ratio (mmol/mmol) | 0.67(1.84) | 0.039(0.024) | 0.13(1.88) | *0.01 | 0.58 |
| Plasma glucose/Urinary glucose ratio (mmol/mmol) | 0.73(5.87) | 12.41(9.47) | 6.92(19.14) | *0.04 | 0.63 |
| Plasma glucose/(Urinary glucose/ creatinine ratio) mmol/ (mmol/mmol) | 13.1 (138.3) | 178. 9 (100.3) | 72.0 (174.7) | *0.01 | 0.55 |
|
| n = 22 | n = 22- | |||
| Valine/Cr ratio (µmol/mmol) | 0.35 (0.62) | 0.67 (0.92) | 0.08 | ||
| Alanine/Cr ratio (µmol/mmol) | 2.00 (3.80) | 4.79 (4.61) | 0.18 | ||
|
| n = 39 | N = 80 | |||
| Glycine/Cr ratio (µmol/mmol) | 93.6 (73.6) | 88.1 (68.0) | 0.87 | ||
| Urinary betaine/Cr ratio (µmol/mmol) | 19.5 (28.2) | 34.9 (52.9) | <0.001 | 0.70 | |
| Sarcosine/Cr ratio (µmol/mmol) | 0.21 (0.25) | 0.27 (0.24) | 0.03 | 0.63 | |
| Choline/Cr ratio (µmol/mmol) | 2.75 (2.59) | 4.00 (3.43) | 0.003 | 0.67 |
Data are median (IQR). P values compare HNF1A and T2D using Mann Whitney U test except for * where comparisons between all 3 groups are calculated by Kruskal-Wallis test.