Literature DB >> 26462562

Multiplicative interaction of functional inflammasome genetic variants in determining the risk of gout.

Cushla McKinney1, Lisa K Stamp2, Nicola Dalbeth3, Ruth K Topless4, Richard O Day5,6, Diluk Rw Kannangara7,8, Kenneth M Williams9,10, Matthijs Janssen11, Timothy L Jansen12,13, Leo A Joosten14, Timothy R Radstake15,16, Philip L Riches17, Anne-Kathrin Tausche18, Frederic Lioté19,20, Alexander So21, Tony R Merriman22.   

Abstract

INTRODUCTION: The acute gout flare results from a localised self-limiting innate immune response to monosodium urate (MSU) crystals deposited in joints in hyperuricaemic individuals. Activation of the caspase recruitment domain-containing protein 8 (CARD8) NOD-like receptor pyrin-containing 3 (NLRP3) inflammasome by MSU crystals and production of mature interleukin-1β (IL-1β) is central to acute gouty arthritis. However very little is known about genetic control of the innate immune response involved in acute gouty arthritis. Therefore our aim was to test functional single nucleotide polymorphism (SNP) variants in the toll-like receptor (TLR)-inflammasome-IL-1β axis for association with gout.
METHODS: 1,494 gout cases of European and 863 gout cases of New Zealand (NZ) Polynesian (Māori and Pacific Island) ancestry were included. Gout was diagnosed by the 1977 ARA gout classification criteria. There were 1,030 Polynesian controls and 10,942 European controls including from the publicly-available Atherosclerosis Risk in Communities (ARIC) and Framingham Heart (FHS) studies. The ten SNPs were either genotyped by Sequenom MassArray or by Affymetrix SNP array or imputed in the ARIC and FHS datasets. Allelic association was done by logistic regression adjusting by age and sex with European and Polynesian data combined by meta-analysis. Sample sets were pooled for multiplicative interaction analysis, which was also adjusted by sample set.
RESULTS: Eleven SNPs were tested in the TLR2, CD14, IL1B, CARD8, NLRP3, MYD88, P2RX7, DAPK1 and TNXIP genes. Nominally significant (P < 0.05) associations with gout were detected at CARD8 rs2043211 (OR = 1.12, P = 0.007), IL1B rs1143623 (OR = 1.10, P = 0.020) and CD14 rs2569190 (OR = 1.08; P = 0.036). There was significant multiplicative interaction between CARD8 and IL1B (P = 0.005), with the IL1B risk genotype amplifying the risk effect of CARD8.
CONCLUSION: There is evidence for association of gout with functional variants in CARD8, IL1B and CD14. The gout-associated allele of IL1B increases expression of IL-1β - the multiplicative interaction with CARD8 would be consistent with a synergy of greater inflammasome activity (resulting from reduced CARD8) combined with higher levels of pre-IL-1β expression leading to increased production of mature IL-1β in gout.

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Year:  2015        PMID: 26462562      PMCID: PMC4604627          DOI: 10.1186/s13075-015-0802-3

Source DB:  PubMed          Journal:  Arthritis Res Ther        ISSN: 1478-6354            Impact factor:   5.156


Introduction

The immediate cause of gout is the deposition of monosodium urate (MSU) crystals in and around body tissues, particularly joints [1]. Initially, these deposits trigger a localised and self-limiting inflammatory response (acute gouty arthritis), which becomes increasingly frequent and severe, involving multiple joints and associated with fever. Monosodium urate crystals form under hyperuricaemic conditions when serum urate levels exceed the physiological saturation level (approximately 6.8 mg/dL; approximately 0.41 mM). The most significant biological cause of hyperuricaemia is relatively low renal clearance of uric acid [2, 3]. This is consistent with findings from genome-wide association studies in which 28 loci associated with serum urate levels have been identified, some of which are in genes involved in renal uric acid handling [4, 5]. Predictably most, but not all, of the 28 loci have been associated with gout [4, 6]. Although hyperuricaemia is a prerequisite for MSU formation, only a relatively small proportion of individuals with hyperuricaemia develop gout [7]. This indicates that beside genetic variants associated with urate metabolism and excretion, other factors contribute to the pathogenesis of gout. MSU crystals play an important role in activation of the innate immune system [8] and the recognition of gout as an auto-inflammatory disorder is consistent with the results of functional studies [9, 10]. Variations within genes of the innate immune system may therefore determine whether MSU crystals trigger an inflammatory reaction in susceptible individuals, leading to acute gout; while in others, no inflammation is elicited. Genetic variants that influence the activation and function of the NOD-like Receptor Pyrin containing 3 (NLRP3) inflammasome are candidate genes in this context [11]. The multi-protein inflammasome complex, comprising the NLRP3 polypeptide, ASC or PYCARD (apoptosis-associated speck-like protein containing a CARD) and caspase-1 [12] forms when monocytes and macrophages encounter damaged and pathogen-associated molecular pattern proteins (DAMPs and PAMP; e.g., bacterial lipopolysaccharide or MSU crystals) and leads to activation of caspase-1. Active caspase-1 processes the pro-interleukin (IL)-1β to the mature pro-inflammatory cytokine IL-1β that is then secreted [12]. CARD8 (also known as TUCAN or Cardinal) is a protein with a caspase-domain that interacts with caspase-1 and inhibits its activation [13] and also with a FIIND domain that binds to NLRP3 preventing its recruitment into the active inflammasome complex [14, 15]. Genetic associations between variants of CARD8 and autoimmune diseases have been previously reported (reviewed in [16]). The T allele of CARD8 rs2043211 (C10X) has been associated with increased risk of gout in Chinese [17], and rs2149356 in toll-like receptor 4 (TLR4), a receptor functionally implicated in MSU-stimulated inflammation [18], has also been associated with serum IL-1β levels and the risk of gout in Han Chinese [19]. However, using a haplotype tagging approach, there is no evidence of association between NLRP3 and gout in Chinese [20].1 Our aim was to extend the findings from the Han Chinese population [17] and to test genetic variants influencing inflammasome function for association with gout in other population groups. Eleven functional variants were tested in eight genes involved in the MSU crystal-mediated activation of the NLRP3-inflammasome and production of mature IL-1β for association with gout in people of European and New Zealand (NZ) Polynesian (Māori and Pacific Island) ancestry. The prevalence of gout in the NZ Polynesian population is 6–8 % (compared to 3 % in NZ European), exhibiting the highest prevalence worldwide [21, 22].

Methods

Participants, ethics and consent

The study was carried out on sample sets comprising: a NZ Polynesian sample set consisting of 1,893 individuals of Samoan, Tongan, Niuean, Cook Island Māori and NZ Māori descent (Table 1; 863 cases and 1,030 controls); and a sample set consisting of 1,684 cases of European ancestry (957 recruited from NZ and Australia and 727 recruited from Europe (‘Eurogout’) [23]) and 882 NZ European controls. All people with gout met the 1977 preliminary American Rheumatism Association classification criteria for gout [24]. New Zealand gout cases were recruited from the Auckland and Christchurch regions of NZ, Australian gout cases from an outpatient clinic in Adelaide, Australian private practice rheumatologists and from a previously reported pharmacogenetic study [25]. European gout cases were recruited from outpatient clinics in Edinburgh, Lausanne, Dresden, Arnhem and Nijmegen. The NZ controls did not have any self-reported history of arthritis, were >17 years of age and were convenience sampled from the Auckland, Christchurch and Otago regions of NZ. The New Zealand Multi-Region Ethics Committee (MEC/105/10/130) and these institutional committees in Europe and Australia granted ethical approval: Research Ethics Committee, University of New South Wales; Ethikkommission, Technische Universität Dresden (EK 8012012); South East Scotland Research Ethics Committee (04/S1102/41); Commission Cantonale (VD) D'éthique de la Recherche sur l'être Humain, Université de Lausanne; Commissie Mensgebonden Onderzoek regio Arnhem Nijmegen. All subjects gave written and informed consent.
Table 1

Age, sex and serum urate details of studied sample sets

Sample setMale,Female,
number (%)Average agea (range)Average serum urate mmol/Lb (range)number (%)Average agea (range)Average serum urate mmol/Lb (range)
Eastern PolynesianGout365 (76.5)37.8 (8–78)0.47 (0.11–0.98)112 (23.5)51.0 (10–81)0.45 (0.10–0.74)
Control268 (38.0)42.5 (17–85)0.41 (0.13–0.67)437 (62.0)46.5 (17–88)0.34 (0.15–0.58)
Western PolynesianGout341 (91.9)35.1 (11–75)0.49 (0.17–0.84)30 (8.1)43.8 (14–80)0.49 (0.22–0.72)
Control175 (56.8)38.3 (18–72)0.42 (0.19–0.73)133 (43.2)41.2 (17–58)0.35 (0.14–0.67)
AustralasianGout794 (82.7)45.9 (5–92)0.42 (0.11–0.80)163 (17.3)62.6 (20–90)0.39 (0.13–0.74)
Control465 (53.0)52.3 (18–87)0.38 ( 0.18–0.77) 412 (47.0)44.9 (17–95)0.27 (0.13–0.59)
EurogoutGout628 (86.4)44.9 (16–83)0.42 (0.09–0.92)99 (13.6)57.5 (30–92)0.47 (0.13–0.88)
FHSControl1681 (53.7)40.8 (19–69)0.38 (0.13–0.67)1450 (46.3)43.9 (23–58)0.26 (0.07–0.54)
ARICControl3172 (45.4)54.3 (44–66)0.39 (0.08–0.71)3817 (54.6)55.6 (45–65)0.31 (0.03–0.66)
All EuropeanGout1422 (84.5)45.5 (5–92)0.42 0.09–0.92)262 (15.5)60.9 (20–92)0.42 (0.13–0.88)
Control5318 (61.9)50.0 (18–87)0.38 (0.08–0.77)5679 (38.1)49.9 (17–95)0.29 (0.03–0.66)

aAge at diagnosis for gout cases, at recruitment for controls. bSerum urate levels at recruitment. Data presented for individuals for whom sex information was available

Age, sex and serum urate details of studied sample sets aAge at diagnosis for gout cases, at recruitment for controls. bSerum urate levels at recruitment. Data presented for individuals for whom sex information was available Control subjects of European ancestry, who had been genotyped genome-wide, were also included from the Atherosclerosis Risk in Communities (ARIC) study (n = 6,989) and the Framingham Heart Study (FHS; n = 3,131). Participants with self-reported gout were excluded. The sample sets were also screened to remove all but one representative of any closely related family grouping (full/half siblings and parent/child duos and trios). The ARIC study and FHS analyses (project #834) were approved by the relevant Database of Genotype and Phenotype (dbGaP; [26]) Data Access Committees.

Genotyping and imputation

A Sequenom MassARRAY System was used for genotyping the 4,269 individuals without genome-wide genoytpe data available as previously described [27]. Publicly available genome-wide genotype data from ARIC and FHS were imputed as required to obtain genotypes from the eleven selected SNPs. Imputations were carried out by IMPUTE V2.2 software based on the combined 1000 Genomes V3 population reference set. Individuals and SNPs with a call rate of <0.98 were excluded from analysis, as were monomorphic markers and those with a minor allele frequency of <0.01, and a post-imputation quality threshold of 0.30 was used. Imputations were successful for all eleven SNPs and all imputed SNPs were in Hardy-Weinberg equilibrium (P >0.005) with the exception of NLRP3 rs7512998 in ARIC (PHWE = 1.3 × 10-27) - these data were excluded from analysis. Where necessary, imputed data were strand-adjusted to match the strand interrogated by the Sequenom data prior to analysis.

Association testing

Allelic association analysis was carried out using R software and adjusting for age and sex. For Polynesian samples, a genetically estimated proportion of Polynesian ancestry, calculated as previously described [27], was included as an additional covariate. All odds ratios are reported relative to the minor allele present in the genotyped NZ European control sample set. Meta-analyses were carried out using METAL [28] with weighting based on standard error and log (odds ratio (OR)) as the effect variable. Significant association was declared if P was <0.05 in the European and Polynesian meta-analysis. No correction for multiple testing was applied because there is prior functional evidence for each variant tested. Power curves are shown in Additional file 1. The Polynesian sample set was adequately powered to detect common effects (minor allele frequency (MAF) >0.1) of OR ≥1.4, whereas the European sample set was adequately powered to detect common effects of MAF >0.2 at OR >1.2 and stronger effects (OR >1.4) at lower MAF (>0.05).

Interaction analysis

As reviewed by Cordell [29] there are a number of ways to test for interaction or a departure from additivity. We used Stata 13.1 software to carry out logistic regression analysis comparing the disease risk for heterozygosity and minor allele homozygosity for each locus individually and in combination. Previously we reported a large allele frequency difference at ABCG2 rs2231142 and heterogeneity in association with gout between Eastern (EP) and Western (WP) Polynesian sample sets [30]. Similarly, there are differences in allele and genotype frequencies between the two groups (Additional file 2), and heterogeneity will be magnified in combined genotypes. Therefore, in the interaction analysis adjustment was made separately for EP and WP, along with European data. An interaction term was included and a P value <0.017 (Bonferroni-adjusted for number of interaction analyses performed) was considered to indicate significant multiplicative interaction between genetic variants.

Results

Eleven functional genetic variants in NLRP3, CARD8, IL1B, DAPK1, TXNIP, TLR2, P2XR7, MYD88 and CD14 were selected from the literature (Table 2) and genotyped; genotype distributions are presented in Additional file 2. There was nominal allelic association (P <0.05) for three variants in the combined European and Polynesian analysis (Table 3) - IL1B, CARD8 and CD14 (OR = 1.10, 1.12 and 1.08, respectively). CARD8 rs2043211 was also associated with gout in Europeans (OR = 1.11).
Table 2

Eleven genetic variants in NLRP3, CARD8, DAPK1, TXNIP, TLR2, P2XR7, MYD88 and CD14 were selected from the literature

SNP (gene)Functional informationAssociation with auto-inflammatory phenotype
rs10754558 (NLRP3) NLRP3 is a component of the NALP3 inflammasome.Variant influences transcription (G > C) [46]None
rs35829419 (NLRP3)Gain-of-function, with CARD8pC10X identified in arthritic patient with abnormally high IL-1 [47, 48]Minor allele protective against celiac disease in a small study [49]
rs7512998 (NLRP3)NoneRefer endnote 1 [20]
rs2043211 (CARD8). CARD8 is a negative regulator of IL-1β secretionC10X encodes a truncated protein that does not abrogate NFkB transcription [50]. Can be evaded by alternative splicing [51]. Identified as F102I in dbSNPInteracts with NLRP3 rs35892419 in risk of Crohn’s disease [31]. Associated with disease severity in RA [50]
rs1143623 (IL1B). IL-1β is a pro-inflammatory cytokine produced by activated NALP3 inflammasomePromoter variant influences IL6 levels after fatty-acid rich meals [38] and IL-1β levels in small Crohn’s disease study [52]G allele associated with protection from RA [53]
rs4696480 (TLR2). Toll-like receptor involved in NALP3 inflammasome activationWithin binding site for the THP-1-derived nuclear protein, influences reporter expression [54]None
rs2569190 (CD14). CD14 is an adaptor molecule used by TLR2 Rs2569190 T allele alters transcriptional activity [42, 43]On meta-analysis is associated with Crohn’s disease [55] and asthma [56]
rs6853 (MYD88). MYD88 is a transducer in the TLR signalling pathwayA allele creates potential miR-562b binding site [57]None
rs17525809 (P2RX7). Purine receptor involved in a pathway of NALP3 activation via amyloid AMissense variant (Val > Ala), T allele reduces activity [58]None
rs4878104 (DAPK1). DAPK1 (death associated kinase) is involved in NALP3 assembly.Exhibits allelic specific differences in expression [59]None
rs7212 (TXNIP). TXNIP is thioredoxin-interacting protein required for full inflammasome activationIncreased mRNA expression in smooth muscle cells with G allele [60]None

NALP3 NACHT, LRR and PYD domains containing protein 3, CARD8 caspase recruitment domain-containing protein 8, RA rheumatoid arthritis, TLR toll-like receptor, NLRP3 NOD-like Receptor Pyrin containing 3

Table 3

Analysis of associations between the minor alleles of the eleven variants and gout

EuropeanPolynesianMeta-analysis
Gene, SNP, minor alleleMAF caseMAF controlOR (95 % CI) P MAF caseMAF controlOR (95 % CI) P OR (StdErr) P
NLRP3, rs10754558, G0.4080.4180.95 (0.87–1.04)0.250.4590.4341.07 (0.91–1.24)0.420.96 (0.036)0.44
NLRP3, rs35829419, A0.0460.0470.88 (0.71–1.07)0.200.0040.0120.58 (0.20–1.53)0.290.87 (0.098)0.15
NLRP3, rs7512998, C0.1700.1601.09 (0.94–1.27)0.250.0330.0451.03 (0.67–1.60)0.881.08 (0.075)0.29
CARD8, rs2043211, T0.3380.3211.11 (1.01–1.22)0.0230.4990.4391.15 (0.98–1.35)0.0781.12 (0.042)0.007
IL1B, rs1143623, G0.2780.2661.09 (0.99–1.20)0.0660.5320.4811.14 (0.98–1.33)0.0981.10 (0.042)0.020
TLR2, rs4696480, T0.4950.4991.02 (0.93–1.11)0.680.4820.4900.98 (0.84–1.15)0.841.01 (0.036)0.74
CD14, rs2569190, A0.4960.4751.08 (0.99–1.18)0.0700.5760.5421.07 (0.92–1.26)0.371.08 (0.036)0.036
MYD88, rs6853, G0.1120.1200.88 (0.77–1.00)0.0590.0260.0281.18 (0.71–1.98)0.520.90 (0.068)0.11
P2RX7, rs17525809, C0.0710.0681.09 (0.92–1.29)0.300.0560.0680.78 (0.56–1.08)0.131.01 (0.080)0.87
DAPK1, rs4878104, T0.3580.3531.02 (0.93–1.11)0.720.7010.6221.13 (0.96–1.34)0.141.05 (0.044)0.32
TNXIP, rs7212, G0.0500.0411.27 (1.04–1.55)0.0200.1910.1751.00 (0.82–1.22)0.981.13 (0.071)0.091

SNP single nucleotide polymorphism, MAF minor allele frequency, OR odds ratio, StdErr standard error

Eleven genetic variants in NLRP3, CARD8, DAPK1, TXNIP, TLR2, P2XR7, MYD88 and CD14 were selected from the literature NALP3 NACHT, LRR and PYD domains containing protein 3, CARD8 caspase recruitment domain-containing protein 8, RA rheumatoid arthritis, TLR toll-like receptor, NLRP3 NOD-like Receptor Pyrin containing 3 Analysis of associations between the minor alleles of the eleven variants and gout SNP single nucleotide polymorphism, MAF minor allele frequency, OR odds ratio, StdErr standard error Because of reported interactions between NLRP3 and CARD8 in other auto-inflammatory conditions [30, 31], and the biological interaction between the inflammasome and IL-1β we tested for pairwise multiplicative interaction between NLRP3/CARD8, NLRP3/IL1B and CARD8/IL1B (Table 4), using only rs10754558 of NLRP3 owing to the low MAF of rs35829419 in both Europeans and Polynesians and the low MAF of rs7512998 in Polynesians. There was evidence for interaction between CARD8 and IL1B (P = 0.005, Pc = 0.015), driven by amplification of the risk conferred by the CARD8 rs2043211 T allele in the presence of the rs1143623 IL1B minor allele homozygous (GG) genotype. Nominally significant interaction between NLRP3/IL1B (PNominal  = 0.048) was also observed, although this was not significant after adjustment for multiple testing (Pc = 0.144).
Table 4

Interaction analysis: genotype combinations of CARD8 rs2043211 and NLRP3 rs10754558, CARD8 rs2043211 and IL1B rs1143623, and NLRP3 rs10754558 and IL1B rs1143623

Number (%)
CombinationCasesControlsOR (95 % CI) P a
rs10754558- rs2043211 (NLRP3-CARD8)
CC/AA318 (0.127)1,862 (0.155)1.00
CC/AT376 (0.150)1,722 (0.144)1.17 (0.96–1.42)0.11
CC/TT133 (0.053)476 (0.040)1.55 (1.18–2.04)0.001
CG/AA450 (0.180)2,606 (0.217)0.94 (0.78–1.13)0.53
CG/AT583 (0.233)2,565 (0.214)1.16 (0.97–1.38)0.11
CG/TT186 (0.074)635 (0.053)1.45 (1.11–1.81)0.006
GG/AA172 (0.069)964 (0.080)0.95 (0.75–1.20)0.65
GG/AT206 (0.082)905 (0.076)1.22 (0.97–1.54)0.085
GG/TT80 (0.032)258 (0.022)1.71 (1.23–2.39)0.002
rs1143623-rs2043211 (IL1B-CARD8)
CC/AA430 (0.174)2,821 (0.236)1.00
CC/AT488 (0.197)2,740 (0.229)1.13 (0.96–1.32)0.16
CC/TT136 (0.055)644 (0.054)1.26 (0.99–1.62)0.066
CG/AA390 (0.157)2,182 (0.182)1.10 (0.92–1.31)0.28
CG/AT495 (0.200)1,979 (0.165)1.48 (1.25–1.75)4.3 × 10−6
CG/TT162 (0.065)575 (0.048)1.74 (1.36–2.22)8.7 × 10−6
GG/AA112 (0.045)425 (0.036)1.33 (1.00–1.77)0.049
GG/AT166 (0.067)465 (0.039)1.61 (1.25–2.07)2.0 × 10−4
GG/TT100 (0.040)147 (0.012)3.77 (2.65–5.34)<1.0 × 10−6
rs10754558- rs1143623 (NLRP3-IL1B)
CC/CC352 (0.141)2,147 (0.179)1.00
CC/CG346 (0.139)1,574 (0.131)1.32 (1.09–1.60)0.005
CC/GG128 (0.051)340 (0.028)2.09 (1.57–2.78)<1.0 × 10−6
CG/CC497 (0.200)2,963 (0.247)1.00 (0.84–1.19)1.00
CG/CG529 (0.212)2,312 (0.193)1.30 (1.09–1.54)0.004
CG/GG184 (0.074)524 (0.044)1.43 (1.11–1.85)0.005
GG/CC209 (0.084)1,099 (0.092)1.22 (0.98–1.52)0.072
GG/CG179 (0.072)851 (0.071)1.14 (0.90–1.44)0.272
GG/GG66 (0.026)173 (0.014)1.70 (1.17–2.48)0.006

a P Interaction was 0.91for CARD8/NLRP3, 0.005 for CARD8/IL1B, and 0.048 for NLRP3/IL1B. OR odds ratio

Interaction analysis: genotype combinations of CARD8 rs2043211 and NLRP3 rs10754558, CARD8 rs2043211 and IL1B rs1143623, and NLRP3 rs10754558 and IL1B rs1143623 a P Interaction was 0.91for CARD8/NLRP3, 0.005 for CARD8/IL1B, and 0.048 for NLRP3/IL1B. OR odds ratio

Discussion

TLR signalling via the NLRP3 inflammasome has been implicated in gout susceptibility and pathology in vivo and in vitro [10]; for example, MSU uptake and IL-1β production by bone marrow-derived macrophages derived from TLR2, TLR4 or Myd88 knockout mice is significantly reduced, as is neutrophil influx, in response to subcutaneous injection of MSU in whole animals [18]. To further elucidate the role of the TLR-inflammasome-IL-1β cascade in gout pathogenesis, eleven candidate genetic variants that functionally impact on this pathway (reviewed in [10]) were tested for association with gout in a sample set of 2,357 cases, adequately powered to detect association with common variants having an effect size of odds ratio 1.4 or greater (Additional file 1). As discussed below, the nominal evidence for association between gout and CD14, CARD8 and IL1B, and the multiplicative interaction between CARD8 and IL1B in determining the risk of gout, support the considerable evidence that TLR-mediated activation of the inflammasome and subsequent release of active IL-1β is a central causal pathogenic pathway of gout [10, 32]. Variants rs2043211 (CARD8), rs1143623 (IL1B) and rs2569190 (CD14), which were associated with gout, are functional variations in genes directly involved in the NLRP3 signaling pathway, and as such are likely to represent genuine disease-susceptibility loci. CARD8 is an adaptor protein that regulates IL-1β secretion by inhibiting NFKβ signaling (required for the expression of pro-IL-1β) and/or interacting with caspase 1 or NLRP3 to inhibit the generation of active IL-1β from inactive pro-IL-1β [13, 15]. The effect size of CARD8 SNP rs2043211 was consistent between the European and NZ Polynesian samples sets (OR = 1.11, P = 0.023 and OR = 1.15, P = 0.078, respectively; combined OR = 1.12, P = 0.007) and the Chinese sample set reported by Chen et al. (OR = 1.19, P = 0.08) [17]. Collectively our results and the study by Chen et al. [17] do suggest that the association of the minor allele of rs2043211 with gout is not a false positive one. SNP rs2043211 encodes a missense protein variation (C10X or F52I depending on transcript, [33]) with the minor allele increasing the risk of gout. Although the functional effect of this variation has not been specifically evaluated, the SNP is within an expression quantitative trait locus peak and carriage of the minor allele is associated with decreased CARD8 expression [34]. It has been inconsistently associated with other auto-inflammatory phenotypes, with some evidence for epistatic interaction with NLRP3 rs35829419 in determining risk of inflammatory bowel disease and abdominal aortic aneurysms [31, 35]. However, we found no evidence of interaction between NLRP3 and CARD8 in determining risk of gout (Table 4) (although we did not specifically analyse rs35829419), and it has also been suggested that under certain conditions, ASC-dependent IL1-β production in response to MSU stimulation can occur in the absence of NLRP3 [36]. IL1B SNP rs1143623 is within a promoter GATA transcription factor family binding site. Although the minor allele exhibits enhanced protein-binding [37] and decreased expression in vitro and in vivo, the effect of this variation seems to be influenced both by the wider promoter haplotype [38-40], and the identity of the stimulatory signal; the minor allele shows increased rather than decreased expression in vitro in response to TNF-α [40], and has also been associated with increased post-prandial triglyceride and IL6 (an effector of IL-1β) levels [41]. The minor allele is over-represented in gout cases compared to controls (OR = 1.10, P = 0.020). If this is replicated it would be consistent with an etiological role for increased IL1B expression in gout. There was evidence of multiplicative interaction with CARD8 rs2043211 in which the IL1B rs1143623 minor (risk) allele homozygous genotype appeared to amplify the effect of the minor allele of rs2043211. This would be consistent with a synergy of greater inflammasome activity (resulting from reduced CARD8) combined with higher levels of pre-IL-1β expression leading to increased production of mature IL-1β in gout. The final variation nominally associated with gout was CD14 SNP rs2569190. This SNP is in the 5’UTR of one of the two CD14 splice variants, with the minor allele (that increases risk of gout) increasing expression in monocytes by decreasing affinity for the inhibitory Sp3 transcription factor [42], enhancing the loading of RNA polymerase II [43] and is associated with increased soluble CD14 levels in healthy individuals [44, 45]. Membrane-bound CD14 forms functional complexes with TLR2 or TLR4 and leukocyte β2-integrins, which could mediate TLR dimerization and optimize the innate immune response to MSU crystals [10].

Conclusions

In conclusion we provide evidence for association of gout with functional innate immune system variants in CARD8, IL1B and CD14, and multiplicative interaction between IL1B and CARD8. The findings involving IL1B are consistent with genetically determined levels of IL-1β being important in gout.
  57 in total

1.  A Polymorphism* in the 5' flanking region of the CD14 gene is associated with circulating soluble CD14 levels and with total serum immunoglobulin E.

Authors:  M Baldini; I C Lohman; M Halonen; R P Erickson; P G Holt; F D Martinez
Journal:  Am J Respir Cell Mol Biol       Date:  1999-05       Impact factor: 6.914

2.  Single nucleotide polymorphisms in the human interleukin-1B gene affect transcription according to haplotype context.

Authors:  Hongmin Chen; Leon M Wilkins; Nazneen Aziz; Christopher Cannings; David H Wyllie; Colin Bingle; John Rogus; James D Beck; Steven Offenbacher; Michael J Cork; Maryam Rafie-Kolpin; Chung-Ming Hsieh; Kenneth S Kornman; Gordon W Duff
Journal:  Hum Mol Genet       Date:  2006-01-06       Impact factor: 6.150

Review 3.  Mechanisms of inflammation in gout.

Authors:  N Dalbeth; D O Haskard
Journal:  Rheumatology (Oxford)       Date:  2005-06-14       Impact factor: 7.580

4.  Association between CD14 polymorphisms and serum soluble CD14 levels: effect of atopy and endotoxin inhalation.

Authors:  Tricia D Levan; Olivier Michel; Mieke Dentener; Jörgen Thorn; Francoise Vertongen; Lena Beijer; Fernando D Martinez
Journal:  J Allergy Clin Immunol       Date:  2007-10-18       Impact factor: 10.793

5.  Genetic control of the renal clearance of urate: a study of twins.

Authors:  B T Emmerson; S L Nagel; D L Duffy; N G Martin
Journal:  Ann Rheum Dis       Date:  1992-03       Impact factor: 19.103

6.  Innate immunity conferred by Toll-like receptors 2 and 4 and myeloid differentiation factor 88 expression is pivotal to monosodium urate monohydrate crystal-induced inflammation.

Authors:  Ru Liu-Bryan; Peter Scott; Anya Sydlaske; David M Rose; Robert Terkeltaub
Journal:  Arthritis Rheum       Date:  2005-09

7.  Deficiency of the NF-kappaB inhibitor caspase activating and recruitment domain 8 in patients with rheumatoid arthritis is associated with disease severity.

Authors:  Ana Fontalba; Victor Martinez-Taboada; Olga Gutierrez; Carlos Pipaon; Natividad Benito; Alejandro Balsa; Ricardo Blanco; Jose L Fernandez-Luna
Journal:  J Immunol       Date:  2007-10-01       Impact factor: 5.422

Review 8.  The spectrum of autoinflammatory diseases: recent bench to bedside observations.

Authors:  John G Ryan; Raphaela Goldbach-Mansky
Journal:  Curr Opin Rheumatol       Date:  2008-01       Impact factor: 5.006

9.  Asymptomatic hyperuricemia. Risks and consequences in the Normative Aging Study.

Authors:  E W Campion; R J Glynn; L O DeLabry
Journal:  Am J Med       Date:  1987-03       Impact factor: 4.965

10.  DAPK1 variants are associated with Alzheimer's disease and allele-specific expression.

Authors:  Yonghong Li; Andrew Grupe; Charles Rowland; Petra Nowotny; John S K Kauwe; Scott Smemo; Anthony Hinrichs; Kristina Tacey; Timothy A Toombs; Shirley Kwok; Joseph Catanese; Thomas J White; Taylor J Maxwell; Paul Hollingworth; Richard Abraham; David C Rubinsztein; Carol Brayne; Fabienne Wavrant-De Vrièze; John Hardy; Michael O'Donovan; Simon Lovestone; John C Morris; Leon J Thal; Michael Owen; Julie Williams; Alison Goate
Journal:  Hum Mol Genet       Date:  2006-07-17       Impact factor: 6.150

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  19 in total

1.  Cytokine Gene Polymorphisms Associated With Various Domains of Quality of Life in Women With Breast Cancer.

Authors:  Kimberly Alexander; Yvette P Conley; Jon D Levine; Bruce A Cooper; Steven M Paul; Judy Mastick; Claudia West; Christine Miaskowski
Journal:  J Pain Symptom Manage       Date:  2017-09-23       Impact factor: 3.612

2.  Differential DNA Methylation of Networked Signaling, Transcriptional, Innate and Adaptive Immunity, and Osteoclastogenesis Genes and Pathways in Gout.

Authors:  Zengmiao Wang; Ying Zhao; Amanda Phipps-Green; Ru Liu-Bryan; Arnoldas Ceponis; David L Boyle; Jun Wang; Tony R Merriman; Wei Wang; Robert Terkeltaub
Journal:  Arthritis Rheumatol       Date:  2020-03-23       Impact factor: 10.995

Review 3.  Review: Gout: A Roadmap to Approaches for Improving Global Outcomes.

Authors:  Nicola Dalbeth; Hyon K Choi; Robert Terkeltaub
Journal:  Arthritis Rheumatol       Date:  2017-01       Impact factor: 10.995

Review 4.  Autoinflammatory Features in Gouty Arthritis.

Authors:  Paola Galozzi; Sara Bindoli; Andrea Doria; Francesca Oliviero; Paolo Sfriso
Journal:  J Clin Med       Date:  2021-04-26       Impact factor: 4.241

5.  Genetic Association for P2X7R rs3751142 and CARD8 rs2043211 Polymorphisms for Susceptibility of Gout in Korean Men: Multi-Center Study.

Authors:  Sung Won Lee; Shin Seok Lee; Dong Ho Oh; Dong Jin Park; Hyun Sook Kim; Jung Ran Choi; Soo Cheon Chae; Ki Jung Yun; Won Tae Chung; Jung Yoon Choe; Seong Kyu Kim
Journal:  J Korean Med Sci       Date:  2016-10       Impact factor: 2.153

Review 6.  What makes gouty inflammation so variable?

Authors:  Robert Terkeltaub
Journal:  BMC Med       Date:  2017-08-18       Impact factor: 8.775

7.  Effects of bariatric surgery on gout incidence in the Swedish Obese Subjects study: a non-randomised, prospective, controlled intervention trial.

Authors:  Cristina Maglio; Markku Peltonen; Martin Neovius; Peter Jacobson; Lennart Jacobsson; Anna Rudin; Lena M S Carlsson
Journal:  Ann Rheum Dis       Date:  2016-10-08       Impact factor: 19.103

Review 8.  ABCG2 polymorphisms in gout: insights into disease susceptibility and treatment approaches.

Authors:  M C Cleophas; L A Joosten; L K Stamp; N Dalbeth; O M Woodward; Tony R Merriman
Journal:  Pharmgenomics Pers Med       Date:  2017-04-20

9.  Triggers of acute attacks of gout, does age of gout onset matter? A primary care based cross-sectional study.

Authors:  Abhishek Abhishek; Ana M Valdes; Wendy Jenkins; Weiya Zhang; Michael Doherty
Journal:  PLoS One       Date:  2017-10-12       Impact factor: 3.240

Review 10.  The genetics of gout: towards personalised medicine?

Authors:  Nicola Dalbeth; Lisa K Stamp; Tony R Merriman
Journal:  BMC Med       Date:  2017-05-31       Impact factor: 8.775

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