| Literature DB >> 19503597 |
Melanie Kolz1, Toby Johnson, Serena Sanna, Alexander Teumer, Veronique Vitart, Markus Perola, Massimo Mangino, Eva Albrecht, Chris Wallace, Martin Farrall, Asa Johansson, Dale R Nyholt, Yurii Aulchenko, Jacques S Beckmann, Sven Bergmann, Murielle Bochud, Morris Brown, Harry Campbell, John Connell, Anna Dominiczak, Georg Homuth, Claudia Lamina, Mark I McCarthy, Thomas Meitinger, Vincent Mooser, Patricia Munroe, Matthias Nauck, John Peden, Holger Prokisch, Perttu Salo, Veikko Salomaa, Nilesh J Samani, David Schlessinger, Manuela Uda, Uwe Völker, Gérard Waeber, Dawn Waterworth, Rui Wang-Sattler, Alan F Wright, Jerzy Adamski, John B Whitfield, Ulf Gyllensten, James F Wilson, Igor Rudan, Peter Pramstaller, Hugh Watkins, Angela Doering, H-Erich Wichmann, Tim D Spector, Leena Peltonen, Henry Völzke, Ramaiah Nagaraja, Peter Vollenweider, Mark Caulfield, Thomas Illig, Christian Gieger.
Abstract
Elevated serum uric acid levels cause gout and are a risk factor for cardiovascular disease and diabetes. To investigate the polygenetic basis of serum uric acid levels, we conducted a meta-analysis of genome-wide association scans from 14 studies totalling 28,141 participants of European descent, resulting in identification of 954 SNPs distributed across nine loci that exceeded the threshold of genome-wide significance, five of which are novel. Overall, the common variants associated with serum uric acid levels fall in the following nine regions: SLC2A9 (p = 5.2x10(-201)), ABCG2 (p = 3.1x10(-26)), SLC17A1 (p = 3.0x10(-14)), SLC22A11 (p = 6.7x10(-14)), SLC22A12 (p = 2.0x10(-9)), SLC16A9 (p = 1.1x10(-8)), GCKR (p = 1.4x10(-9)), LRRC16A (p = 8.5x10(-9)), and near PDZK1 (p = 2.7x10(-9)). Identified variants were analyzed for gender differences. We found that the minor allele for rs734553 in SLC2A9 has greater influence in lowering uric acid levels in women and the minor allele of rs2231142 in ABCG2 elevates uric acid levels more strongly in men compared to women. To further characterize the identified variants, we analyzed their association with a panel of metabolites. rs12356193 within SLC16A9 was associated with DL-carnitine (p = 4.0x10(-26)) and propionyl-L-carnitine (p = 5.0x10(-8)) concentrations, which in turn were associated with serum UA levels (p = 1.4x10(-57) and p = 8.1x10(-54), respectively), forming a triangle between SNP, metabolites, and UA levels. Taken together, these associations highlight additional pathways that are important in the regulation of serum uric acid levels and point toward novel potential targets for pharmacological intervention to prevent or treat hyperuricemia. In addition, these findings strongly support the hypothesis that transport proteins are key in regulating serum uric acid levels.Entities:
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Year: 2009 PMID: 19503597 PMCID: PMC2683940 DOI: 10.1371/journal.pgen.1000504
Source DB: PubMed Journal: PLoS Genet ISSN: 1553-7390 Impact factor: 5.917
Figure 1Genome-wide association results.
Manhattan plots showing significance of association of all SNPs in the meta-analysis for (A) men and women combined, (B) men only, and (C) women only. SNPs are plotted on the x-axis according to their position on each chromosome against association with uric acid concentrations on the y-axis (shown as −log10 p-value).
Nine loci associated with uric acid concentrations.
| Loci | SNP | Chr | Position (bp) | Allele | Frequency (Effect allele) | All individuals | Explained variability | ||||
| Effect | Other | N | beta | [95% CI] | p-value | ||||||
|
| rs12129861 | 1 | 144437046 | A | G | 46.40% | 25627 | −0.062 | [−0.083; −0.042] | 2.68E-09 | 0.19% |
|
| rs780094 | 2 | 27594741 | T | C | 41.70% | 27991 | 0.052 | [0.035; 0.068] | 1.40E-09 | 0.13% |
|
| rs734553 | 4 | 9532102 | T | G | 76.81% | 27817 | 0.315 | [0.294; 0.335] | 5.22E-201 | 3.53% |
|
| rs2231142 | 4 | 89271347 | T | G | 10.77% | 23622 | 0.173 | [0.141; 0.205] | 3.10E-26 | 0.57% |
|
| rs742132 | 6 | 25715550 | A | G | 69.57% | 27923 | 0.054 | [0.036; 0.072] | 8.50E-09 | 0.12% |
|
| rs1183201 | 6 | 25931423 | A | T | 48.24% | 27908 | −0.062 | [−0.078; −0.459] | 3.04E-14 | 0.19% |
|
| rs12356193 | 10 | 61083359 | A | G | 82.68% | 23559 | 0.078 | [0.051; 0.105] | 1.07E-08 | 0.17% |
|
| rs17300741 | 11 | 64088038 | A | G | 51.06% | 27727 | 0.062 | [0.046; 0.078] | 6.68E-14 | 0.19% |
|
| rs505802 | 11 | 64113648 | T | C | 69.83% | 27967 | −0.056 | [−0.074; −0.038] | 2.04E-09 | 0.13% |
*: Chromosome.
Shown is the most significant SNP for each independent locus associated (p<5×10−8) with uric acid concentrations on meta-analysis in the complete dataset. Position is given for NCBI Build 36. Effect estimates result from additive linear regression on Z-scores of uric acid concentrations. P-values have been combined weighting by the inverse variance. The effect allele is the allele to which the beta (effect) estimate refers.
Figure 2Regional association plots of nine urate loci.
P-value plots showing the association signals in the region of (A) PDZK1 on chromosome 1, (B) GCKR on chromosome 2, (C) SLC2A9 on chromosome 4, (D) ABCG2 on chromosome 4, (E) LRRC16A on chromosome 6, (F) SLC17A1 on chromosome 6, (G) SLC16A9 on chromosome 10, (H) SLC22A11 on chromosome 11, and (I) SLC22A12 on chromosome 11. −log10 p-values are plotted as a function of genomic position (NCBI Build 36). Large diamonds in red indicate the most significant SNP in the region while other SNPs in the region are given as colour-coded smaller diamonds. Red diamonds indicate high correlation with the lead SNP (r2>0.8), orange diamonds indicate moderate correlation with the most significant SNP (0.5
Gender specific association results at the nine loci.
| Loci | SNP | Chr | Position (bp) | Effect Allele | Men | Women | Difference | |||||||
| N | beta | [95% CI] | p-value | N | beta | [95% CI] | p-value | Δ beta (men - women) | p-value | |||||
|
| rs12129861 | 1 | 144437046 | A | 11888 | −0.080 | [−0.108; −0.048] | 3.68E-07 | 13739 | −0.047 | [−0.075; −0.019] | 9.10E-04 | −0.033 | 0.140 |
|
| rs1471633 | 1 | 144435096 | A | 12225 | 0.072 | [0.044; 0.099] | 2.94E-07 | 14289 | 0.0403 | [0.016; 0.064] | 1.10E-03 | 0.031 | 0.094 |
|
| rs780094 | 2 | 27594741 | T | 12255 | 0.050 | [0.023; 0.077] | 3.05E-04 | 15736 | 0.055 | [0.034; 0.077] | 3.11E-07 | −0.005 | 0.744 |
|
| rs780093 | 2 | 27596107 | T | 12243 | 0.047 | [0.020; 0.074] | 6.18E-04 | 15751 | 0.056 | [0.035; 0.076] | 2.30E-07 | −0.009 | 0.617 |
|
| rs734553 | 4 | 9532102 | T | 12178 | 0.220 | [0.188; 0.252] | 1.13E-41 | 15639 | 0.397 | [0.371; 0.423] | 1.05E-192 | −0.177 | 3.8E-17 |
|
| rs12498742 | 4 | 9553150 | A | 12274 | 0.208 | [0.176; 0.239] | 1.50E-38 | 15761 | 0.395 | [0.369; 0.420] | 2.36E-196 | −0.187 | 2.1E-19 |
|
| rs2231142 | 4 | 89271347 | T | 10324 | 0.221 | [0.171; 0.270] | 2.25E-18 | 13298 | 0.138 | [0.096; 0.181] | 1.13E-10 | 0.083 | 0.013 |
|
| rs2199936 | 4 | 89264355 | A | 10323 | 0.222 | [0.173; 0.272] | 1.65E-18 | 13218 | 0.133 | [0.091; 0.176] | 6.85E-10 | 0.089 | 0.008 |
|
| rs742132 | 6 | 25715550 | A | 12235 | 0.062 | [0.033; 0.091] | 2.68E-05 | 15688 | 0.048 | [0.024; 0.071] | 8.14E-05 | 0.014 | 0.449 |
|
| rs1183201 | 6 | 25931423 | A | 12206 | −0.076 | [−0.103; −0.049] | 2.52E-08 | 15702 | −0.055 | [−0.075; −0.036] | 4.48E-08 | −0.021 | 0.224 |
|
| rs9393672 | 6 | 25950584 | T | 12252 | −0.074 | [−0.101; −0.047] | 6.22E-08 | 15738 | −0.056 | [−0.076; −0.036] | 2.77E-08 | −0.018 | 0.296 |
|
| rs942379 | 6 | 25957599 | A | 12215 | −0.076 | [−0.103; −0.049] | 2.24E-08 | 15686 | −0.054 | [−0.074; −0.034] | 1.01E-07 | −0.022 | 0.198 |
|
| rs12356193 | 10 | 61083359 | A | 10315 | 0.089 | [0.047; 0.131] | 3.57E-05 | 13244 | 0.073 | [0.039; 0.108] | 3.29E-05 | 0.016 | 0.582 |
|
| rs17300741 | 11 | 64088038 | A | 12120 | 0.066 | [0.039; 0.093] | 1.50E-06 | 15607 | 0.060 | [0.040; 0.080] | 3.60E-09 | 0.006 | 0.735 |
|
| rs2078267 | 11 | 64090690 | T | 12259 | −0.066 | [−0.093; −0.039] | 1.62E-06 | 15750 | -0.061 | [−0.081; −0.041] | 3.22E-09 | −0.033 | 0.757 |
|
| rs505802 | 11 | 64113648 | T | 12232 | −0.073 | [−0.102; −0.044] | 7.22E-07 | 15735 | -0.047 | [−0.070; −0.023] | 1.02E-04 | −0.026 | 0.161 |
*: Chromosome.
Shown are the gender-specific loci for the most significant SNP at the nine associated loci. Positions are given according to NCBI Build 36. Effect estimates result from additive linear regression on Z-scores of uric acid concentrations when only males (or females) were considered for the analysis. P-values have been calculated using weighting by the inverse variance. The effect allele is the allele to which the beta (effect) estimate refers. When different from the main meta-analysis, the most associated marker in males (females) is also listed.