Literature DB >> 22956599

Evaluation of the genetic overlap between osteoarthritis with body mass index and height using genome-wide association scan data.

Katherine S Elliott1, Kay Chapman, Aaron Day-Williams, Kalliope Panoutsopoulou, Lorraine Southam, Cecilia M Lindgren, Nigel Arden, Nadim Aslam, Fraser Birrell, Ian Carluke, Andrew Carr, Panos Deloukas, Michael Doherty, John Loughlin, Andrew McCaskie, William E R Ollier, Ashok Rai, Stuart Ralston, Mike R Reed, Timothy D Spector, Ana M Valdes, Gillian A Wallis, Mark Wilkinson, Eleftheria Zeggini.   

Abstract

OBJECTIVES: Obesity as measured by body mass index (BMI) is one of the major risk factors for osteoarthritis. In addition, genetic overlap has been reported between osteoarthritis and normal adult height variation. We investigated whether this relationship is due to a shared genetic aetiology on a genome-wide scale.
METHODS: We compared genetic association summary statistics (effect size, p value) for BMI and height from the GIANT consortium genome-wide association study (GWAS) with genetic association summary statistics from the arcOGEN consortium osteoarthritis GWAS. Significance was evaluated by permutation. Replication of osteoarthritis association of the highlighted signals was investigated in an independent dataset. Phenotypic information of height and BMI was accounted for in a separate analysis using osteoarthritis-free controls.
RESULTS: We found significant overlap between osteoarthritis and height (p=3.3×10(-5) for signals with p≤0.05) when the GIANT and arcOGEN GWAS were compared. For signals with p≤0.001 we found 17 shared signals between osteoarthritis and height and four between osteoarthritis and BMI. However, only one of the height or BMI signals that had shown evidence of association with osteoarthritis in the arcOGEN GWAS was also associated with osteoarthritis in the independent dataset: rs12149832, within the FTO gene (combined p=2.3×10(-5)). As expected, this signal was attenuated when we adjusted for BMI.
CONCLUSIONS: We found a significant excess of shared signals between both osteoarthritis and height and osteoarthritis and BMI, suggestive of a common genetic aetiology. However, only one signal showed association with osteoarthritis when followed up in a new dataset.

Entities:  

Keywords:  Epidemiology; Gene Polymorphism; Osteoarthritis

Mesh:

Substances:

Year:  2012        PMID: 22956599      PMCID: PMC3664369          DOI: 10.1136/annrheumdis-2012-202081

Source DB:  PubMed          Journal:  Ann Rheum Dis        ISSN: 0003-4967            Impact factor:   19.103


Introduction

Osteoarthritis is a common complex disease of synovial joints characterised by degeneration of hyaline cartilage and bone remodelling, usually affecting middle-aged to elderly individuals. It is a leading cause of pain and chronic disability worldwide.1 Comorbidities such as obesity are frequently observed with osteoarthritis and epidemiological studies have noted a link between osteoarthritis and obesity as measured by body mass index (BMI). In particular, reports show a consistent relationship between overweight measures and knee osteoarthritis.2 Some population studies have demonstrated that the weight of individuals at age 37 years (median) could predict the onset of knee osteoarthritis 36 years later.1 In addition, a decrease in BMI of two units over the 10 years preceding diagnosis can reduce the odds of knee osteoarthritis.3 A Norwegian population-based study of approximately 265 000 individuals concluded that the risk of developing hip osteoarthritis was dependent on the age at which weight gain was most dramatic. Younger adults (<20 years) are at greater risk compared with older individuals (>30 years).4 In a large prospective population-based cohort from Iceland the incidence of clinically severe osteoarthritis (as indicated by arthroplasty), in relation to measures of overweight, found that 36% and 50% of those with hip and knee osteoarthritis, respectively, had a BMI greater than  30.5 This is compared with a national prevalence of 17% of the adult population (the International Obesity Task force, http://www.iotf.org/). Furthermore, the Chingford Study has demonstrated that in middle-aged women a one unit increase in BMI is associated with a 10% increased risk of total knee replacement in the following 19 years.6 There have been a number of large-scale genome-wide association studies (GWAS) for obesity and/or BMI, establishing several genetic loci at genome-wide significance association levels.7–13 Based on the well-established epidemiological link, we hypothesise here that osteoarthritis and obesity may have a shared genetic background.14 Variation in human adult height is also highly heritable. Numerous studies have identified over 180 loci to be associated with the trait.15–18 There is weak or conflicting evidence for shared genetic determinants between osteoarthritis and height. However, for example, the functional single nucleotide polymorphism (SNP) (rs143383, T/C) in the 5′ untranslated region of the GDF5 gene, previously observed to be significantly associated with osteoarthritis in Asian and European cohorts, is also significantly associated with normal variation in human height.19–23 In addition, height itself has been reported to be a risk factor for non-generalised severe hip osteoarthritis even after adjusting for age, gender and BMI.24 The aim of this study was to carry out an investigation of the genetic overlap between osteoarthritis and the two traits of BMI and height by examining the overlap of SNPs association signals across the genome. This may uncover possible common mechanistic pathways.

Materials and methods

Description of datasets

Genome-wide summary statistics (effect size, p values) for BMI and height from the Genetic Investigation of Anthropometric Traits (GIANT) consortium GWAS were compared with genome-wide osteoarthritis data from the arcOGEN consortium. The GIANT consortium has brought together GWAS data from 46 studies.25 26 Overlap analysis with osteoarthritis utilised 2 400 344 SNPs and 32 387 individuals from the BMI dataset and 2 834 208 SNPs and 133 653 individuals from the height dataset. The arcOGEN GWAS was carried out in two stages and includes a total of 7567 osteoarthritis cases from the UK (ascertained by radiographic evidence of disease, Kellgren–Lawrence score ≥2, or clinical evidence of the disease to a level requiring total joint replacement) genotyped on the Illumina HumanHap 610-Quad panel. Stage 1 of the arcOGEN GWAS was employed in the main overlap analysis and included 3177 osteoarthritis cases and 4894 population-based controls from the UK (WTCCC2).27 Genotypes of 17 SNPs that were imputed in arcOGEN stage 1 were validated by direct typing using Sequenom in the stage 1 cases (n=2949) and examining concordance. Replication of association with osteoarthritis for the signals highlighted from the overlap analysis (tables 1 and 2) was carried out using 4324 stage 2 cases from the arcOGEN Consortium and 6518 population-based controls (from the WTCCC2, T1DGC, ALSPAC study and PoBI studies) (see supplementary methods, available online only). SNPs that were not genotyped in the stage 2 arcOGEN GWAS or did not pass quality control were genotyped with Sequenom in 5165 cases and 6115 controls (see supplementary methods, available online only).
Table 1

Shared genetic determinants (p≤1.0×10−3) between osteoarthritis and height

SNPChromosomeAlleleOsteoarthritis p valueOsteoarthritis OR95% CIHeight p valueHeight OR95% CINearest gene
rs27447181T8.9×10−51.201.10 to 1.313.5×10−50.980.97 to 0.99WNT4
rs66704861T9.6×10−51.161.07 to 1.246.5×10−70.980.98 to 0.98COL11A1
rs48337724G2.5×10−41.121.05 to 1.191.3×10−51.021.01 to 1.02TMEM155
rs5720046G2.4×10−41.141.06 to 1.227.5×10−50.980.97 to 0.99EYA4
rs38228566A9.2×10−41.121.05 to 1.196.5×10−40.990.98 to 0.99NT5DC1
rs16358537T2.0×10−51.151.08 to 1.228.8×10−211.041.03 to 1.04JAZF1
rs100947278A3.7×10−41.231.10 to 1.396.0×10−50.970.06 to 0.98MSR1
rs96573718A1.3×10−41.131.06 to 1.212.7×10−50.980.97 to 0.99CSMD1
rs119911398C6.2×10−51.141.06 to 1.224.3×10−40.980.98 to 0.99BLK
rs38088809G7.5×10−41.131.05 to 1.216.8×10−41.011.01 to 1.02ROD1
rs1119889310A3.8×10−41.221.09 to 1.365.7×10−41.021.01 to 1.03GRK5
rs793227211A1.1×10−41.301.12 to 1.522.4×10−71.041.03 to 1.06PACS1
rs729705112T3.3×10−41.141.05 to 1.236.0×10−51.021.01 to 1.03PTHLH
rs1050647412C5.2×10−41.151.06 to 1.274.4×10−50.990.97 to 0.99HMGA2
rs479392717C1.4×10−41.141.06 to 1.223.0×10−61.021.01 to 1.03HOXB3
rs286441919G8.4×10−51.141.07 to 1.211.1×10−121.031.02 to 1.04DOT1L
rs810588519T7.9×10−41.201.08 to 1.374.3×10−40.980.96 to 0.98ZNF98

SNP, single nucleotide polymorphism.

Table 2

Shared genetic determinants (p≤1.0 × 10−3) between osteoarthritis and BMI

SNPChromosomeAlleleOsteoarthritis p valueOsteoarthritis OR95% CIBMI p valueBMI z scoreNearest gene
rs48563463T6.1×10−41.141.05 to 1.227.1×10−43.48GBE1
rs78280428G1.1×10−41.141.07 to 1.222.1×10−44.05SLURP1
rs720321916T3.5×10−41.191.08 to 1.313.4×10−43.87GPR139
rs1214983216A2.8×10−41.121.06 to 1.201.9×10−168.47FTO

BMI, body mass index; SNP, single nucleotide polymorphism.

Shared genetic determinants (p≤1.0×10−3) between osteoarthritis and height SNP, single nucleotide polymorphism. Shared genetic determinants (p≤1.0 × 10−3) between osteoarthritis and BMI BMI, body mass index; SNP, single nucleotide polymorphism. Analysis accounting for phenotypic information of height and BMI was carried out using 1671 unrelated female individuals from the osteoarthritis-free TwinsUK cohort as a control set. This cohort is ascertained to study the heritability of age-related diseases and contains full phenotypic information for osteoarthritis status as well as height and BMI.24 Additional quality control that was performed for this study is described in the supplementary methods (available online only). arcOGEN stage 1 female cases (n=1009 for height; n=1358 for BMI) were utilised for these analyses.

Osteoarthritis replication genotyping

Osteoarthritis association signals at directly typed variants, highlighted in tables 3 and 4, were followed up through in-silico replication using stage 2 arcOGEN GWAS data (see supplementary methods, available online only). Association signals at imputed variants were followed up by carrying out de-novo genotyping in 5165 arcOGEN stage 2 cases and 6115 WTCCC2 controls using the Sequenom MassArray iPLex Gold assay at the Wellcome Trust Sanger Institute. Genotypes were assigned using the MassArray TyperAnalyser software V.4.0 (Sequenom). All genotypes were confirmed manually and passed standard quality control checks (see supplementary methods, available online only).
Table 3

Replication of osteoarthritis association at shared genetic determinants between osteoarthritis and height

Stage 1Stage 2Combined
SNPChromosomep ValueOR95% CIP ValueOR95% CIp ValueOR95% CI
rs2744718†‡18.9×10−51.201.10 to 1.31Failed QCFailed QC
rs667048619.6×10−51.161.07 to 1.240.581.020.96 to 1.083.5×10−31.071.02 to 1.12
rs4833772*42.5×10−41.121.05 to 1.190.240.970.92 to 1.021.6×10−11.030.99 to 1.07
rs57200462.4×10−41.141.06 to 1.220.291.030.97 to 1.099.0×10−41.071.03 to 1.14
rs382285669.2×10−41.121.05 to 1.190.291.020.97 to 1.092.5×10−31.061.02 to 1.11
rs163585372.0×10−51.151.08 to 1.220.561.020.96 to 1.074.4×10−41.081.03 to 1.12
rs10094727‡83.7×10−41.231.10 to 1.390.800.990.89 to 1.093.0×10−21.091.01 to 1.17
rs9657371‡81.3×10−41.131.06 to 1.210.601.020.96 to 1.073.7×10−31.061.02 to 1.11
rs11991139*86.2×10−51.141.06 to 1.220.371.021.0 to 1.093.1×10−31.051.02 to 1.10
rs3808880*97.5×10−41.131.05 to 1.210.030.940.88 to 0.995.6×10−11.010.97 to 1.06
rs11198893†‡103.8×10−41.221.09 to 1.36Failed QC
rs7932272111.1×10−41.301.12 to 1.520.081.100.99 to 1.205.2×10−41.161.06 to 1.26
rs7297051123.3×10−41.141.05 to 1.230.150.950.89 to 1.014.1×10−11.020.97 to 1.07
rs10506474125.2×10−41.151.06 to 1.270.370.970.90 to 1.041.5×10−11.040.98 to 1.09
rs4793927171.4×10−41.141.06 to 1.220.290.970.92 to 1.031.2×10−11.030.99 to 1.07
rs2864419‡198.4×10−51.141.07 to 1.210.721.010.96 to 1.074.6×10−31.061.02 to 1.11
rs8105885197.9×10−41.201.08 to 1.370.150.930.85 to 1.033.2×10−11.040.96 to 1.12

*Proxies used for analysis due to failure of SNP in stage 2 replication. Proxy for rs4833772 is rs4833233 (r2 = 1), for rs11991139 is rs13280813 (r2 = 0.94) and for rs3808880 is rs13293285 (r2 = 0.89).

†No proxies found for r2 > 0.3 (rs2744718); r2 > 0.43 (rs11198893).

‡Directly typed SNP analysed from arcOGEN genome-wide association scan.

QC, qualtiy control; SNP, single nucleotide polymorphism.

Table 4

Replication of osteoarthritis association at shared genetic determinants between osteoarthritis and body mass index

Stage 1Stage 2Combined
SNPChromosomep ValueOR95% CIp ValueOR95% CIp ValueOR95% CI
rs4856346*36.1×10−41.141.06 to 1.230.870.990.94 to 1.060.0411.051.00 to 1.10
rs7828042†81.1×10−41.141.07 to 1.220.450.980.92 to 1.040.0501.041.00 to 1.08
rs7203219†163.5×10−41.191.08 to 1.310.921.010.93 to 1.090.0161.081.01 to 1.15
rs12149832*162.8×10−41.121.06 to 1.200.0091.071.02 to 1.142.3 × 10−51.101.05 to 1.15

*Proxies (r2 > 0.93) were used for analysis due to failure of SNP in stage 2 replication. Proxy for rs4856346 is rs898763 (r2 = 1), for rs12149832 is rs8050136 (r2 = 0.93).

†Directly typed SNP from arcOGEN genome-wide association scan.

SNP, single nucleotide polymorphism.

Replication of osteoarthritis association at shared genetic determinants between osteoarthritis and height *Proxies used for analysis due to failure of SNP in stage 2 replication. Proxy for rs4833772 is rs4833233 (r2 = 1), for rs11991139 is rs13280813 (r2 = 0.94) and for rs3808880 is rs13293285 (r2 = 0.89). †No proxies found for r2 > 0.3 (rs2744718); r2 > 0.43 (rs11198893). ‡Directly typed SNP analysed from arcOGEN genome-wide association scan. QC, qualtiy control; SNP, single nucleotide polymorphism. Replication of osteoarthritis association at shared genetic determinants between osteoarthritis and body mass index *Proxies (r2 > 0.93) were used for analysis due to failure of SNP in stage 2 replication. Proxy for rs4856346 is rs898763 (r2 = 1), for rs12149832 is rs8050136 (r2 = 0.93). †Directly typed SNP from arcOGEN genome-wide association scan. SNP, single nucleotide polymorphism.

Analysis strategy

We carried out pairwise comparisons between osteoarthritis and height and between osteoarthritis and BMI genome-wide summary statistics. For each comparison, we focused on the intersection of SNPs for which summary statistics were present in both GWAS. We then sorted these SNPs based on association p value for osteoarthritis. This list of SNPs was then thinned to an independent unlinked set using an r2 threshold of 0.05 based on HapMap CEU release #27. Starting with the first SNP in the list, any subsequent SNP with r2>0.05 was removed and then the next available SNP was taken. This continued until a set of independent SNPs was obtained (osteoarthritis–BMI n=62 280, osteoarthritis–height n=64 702). We investigated the distribution of p values above and below given thresholds (0.5, 0.1, 0.05, 0.04, 0.03, 0.02, 0.01, 0.005, 0.001, 0.0005) for each trait. The distribution of counts in the resulting 2×2 contingency tables was analysed using the χ2 test. A significant excess of signals with p values less than the given threshold for both phenotypes was taken to indicate a concurrence of signals. In addition, we examined the SNPs for each comparative analysis of osteoarthritis–height and osteoarthritis–BMI to see if there was an overabundance of discordant or concordant risk alleles between the datasets (see supplementary methods, available online only).

Permutations

Based on the results obtained for the analysis of the signal overlap between the osteoarthritis–height and osteoarthritis–BMI comparisons (table 5), we selected p value thresholds of 0.001 (osteoarthritis–BMI) and 0.05 (osteoarthritis–height) for further follow-up. We permuted the p value signals for the entire datasets as well as for linkage disequilibrium (LD)-thinned data of r2 = 0.2 and 0.05. We generated 100 000 permutations of the arcOGEN case–control data using PLINK28 (make-perm-pheno command) and performed a GWAS for each permutation under the log-additive model. We carried out the overlap analysis for each permuted case–control dataset considering only SNPs that were directly typed in arcOGEN and present in the GIANT data. We thus generated a null distribution of p values. From this we calculated the probability of seeing an overlap p value equal to or less than the original p value for directly typed SNPs.
Table 5

Analysis of shared excess signals between osteoarthritis and normal height variation and osteoarthritis and BMI

Osteoarthritis–normal adult height comparisonOsteoarthritis–BMI comparison
Total no of SNPs6228064702
Signal definition (p value)Overlapping SNPs (n)p Value for overlapOverlapping SNPs (n)p Value for overlap
0.5281940.5189235260.4299
0.135710.002618670.5814
0.0514913.04×10−55840.7483
0.0411601.00×10−64120.6315
0.038141.00×10−62670.1715
0.025111.00×10−161430.0368
0.012136.20×10−4500.0356
0.005920.0173200.0057
0.001170.599941.2×10−5
0.000580.127834.8×10−17

BMI, body mass index; SNP, single nucleotide polymorphism.

Analysis of shared excess signals between osteoarthritis and normal height variation and osteoarthritis and BMI BMI, body mass index; SNP, single nucleotide polymorphism. In addition, we sought to get a more precise empirical p value for the osteoarthritis–height comparison as this gave the most compelling results for the signal overlap analysis (table 5). Using the LD-thinned data (r2 = 0.05) and p value threshold of 0.05, we generated 500 000 000 permutations of the arcOGEN and GIANT height datasets by permuting which p value was associated with which SNP. We performed 500 000 000 overlap analyses by randomly choosing without replacement a permutation from each dataset to generate the null distribution of overlap p values, given a specific distribution of original p values. From this constructed null distribution of p values we calculated the probability of seeing an overlap p value equal to or less than the original overlap p value for the entire dataset.

Replication of osteoarthritis association for overlapping signals

Case–control association analysis under the log-additive model was carried out using PLINK for directly typed SNPs and SNPTEST for imputed SNPs.28 30 Combined estimates of OR and p values for stages 1 and 2 of arcOGEN were obtained using fixed-effect meta-analyses in GWAMA.29 Heterogeneity was checked using the Cochran's Q and I2 statistics.

Analysis with adjustment for BMI and height

In order to adjust for height and BMI as covariates, we repeated the case–control analysis for stage 1 of the arcOGEN dataset using the TwinsUK cohort as controls. Analysis was carried out using PLINK when the SNPs were directly typed or SNPTEST30 when they were imputed. The analysis was performed twice; with and without an adjustment for height and BMI.

Results

Overlapping signals and permutations

Our findings suggest an excess of shared signals both between osteoarthritis and height and osteoarthritis and BMI. A comparison of signals indicates an excess of sharing at p value thresholds of 0.05, 0.04, 0.03, 0.02 and 0.01 for osteoarthritis and height; there is evidence for overlap between osteoarthritis and BMI at the p value thresholds of 0.005, 0.001 and 0.0005 (table 5). To test the strength of the observed overlap we ran a series of permutations (table 6). The LD-thinned datasets provide the most robust results because the probability of seeing an overlap p value equal to or less than the original analysis p value by chance is unlikely. Both comparisons of osteoarthritis–height and osteoarthritis–BMI showed an excess of overlapping signals (p=1.4×10−3 for the 0.05 p value threshold and p=2.28×10−2 for the 0.001 p value threshold). Based on these results we performed 500 000 000 permutations of the entire LD-thinned (r2 = 0.05) height dataset. This showed that the probability of seeing a p value less than or equal to 3.04×10−5 was 3.3×10−5. A total of 17 SNPs with p values of 1.0×10−3 or less were shared between osteoarthritis and height (table 1), while four SNPs were shared between osteoarthritis and BMI (table 2). These SNPs were distributed throughout the genome (11 chromosomes in the osteoarthritis–height comparison and three chromosomes in the osteoarthritis–BMI comparison). Some of these signals, such as the ones near COL11A1, PTHLH and FTO are well-known loci with established associations with bone development, bone mineral density and obesity, respectively.8 19 31
Table 6

Permutation results for osteoarthritis–height (p value threshold 0.05) and osteoarthritis–BMI overlap (p value threshold 0.001)

Osteoarthritis–adult height comparisonOsteoarthritis–BMI comparison
All datar2 = 0.2r2 = 0.05All datar2 = 0.2r2 = 0.05
No of SNPs†48909863802277284617075527524599
p Value*02.62×10−73.04×10−506.41×10−51.24×10−5
Tested p value**3.30×10−65.33×10−61.10×10−36.19×10−112.91×10−42.25×10−4
No of permutations100000100000100000100000100000100000
Permutation p value0.0128<1×10−50.00140.003740.047160.02288

†Directly typed only analysed.

*p Value of original analysis.

**p Value of the overlap for directly typed SNPs only. This is the p value that the permutation analysis is tested against.

BMI, body mass index; SNPs, single nucleotide polymorphism.

Permutation results for osteoarthritis–height (p value threshold 0.05) and osteoarthritis–BMI overlap (p value threshold 0.001) †Directly typed only analysed. *p Value of original analysis. **p Value of the overlap for directly typed SNPs only. This is the p value that the permutation analysis is tested against. BMI, body mass index; SNPs, single nucleotide polymorphism.

Replication of osteoarthritis association

To evaluate the observed overlap further we attempted to replicate osteoarthritis association of these 21 signals employing stage 2 of the arcOGEN dataset (tables 3 and 4). Seven of the SNP failed quality control in stage 2 and proxies (r2>0.85) were sought. No proxies were found for two of the seven SNPs, rs2744718 and rs11198893. Of the 19 SNPs successfully taken forward for validation, rs12149832 on chromosome 16 within the FTO gene was the only one found to be associated (p<0.01) with osteoarthritis in the replication dataset (p=0.009, in the same direction). The combined p value of both stages increased in significance for this SNP relative to stage 1 alone (p=2.8×10−4 for stage 1 vs p=2.3×10−5 for stages 1 and 2 combined, table 4).

Adjustment for BMI and height

Adjustment for height and BMI (tables 7 and 8) only affected the signal at the FTO SNP rs12149832. Here we found an eightfold increase in the p value after adjustment for BMI (p=0.22576) compared with the unadjusted result (p=0.029219).
Table 7

Results of osteoarthritis association analysis adjusting for height

UnadjustedAdjusted
SNPChromosomeAlleleOR95% CIp ValueOR95% CIp Value
rs27447181T0.940.80 to 1.100.4370.940.80 to 1.100.442
rs66704861T1.191.05 to 1.360.0071.191.05 to 1.360.006
rs48337724G1.010.90 to 1.130.8771.010.90 to 1.130.945
rs5720046G1.080.96 to 1.220.2011.080.96 to 1.220.210
rs38228566A1.020.91 to 1.140.6941.020.91 to 1.140.678
rs16358537T1.171.04 to 1.310.0081.171.04 to 1.310.007
rs100947278A0.870.71 to 1.100.1610.870.71 to 1.060.186
rs96573718A0.920.82 to 1.030.1680.930.83 to 1.040.158
rs119911398C1.030.92 to 1.150.6011.030.92 to 1.150.491
rs38088809G0.990.88 to 1.120.9460.990.88 to 1.120.980
rs1119889310A1.221.02 to 1.450.0251.251.05 to 1.490.013
rs793227211A1.120.85 to 1.370.1951.120.85 to 1.370.174
rs729705112TFailed QC
rs1050647412C1.221.06 to 1.3980.0061.221.06 to 1.400.009
rs479392717C1.131.01 to 1.260.0371.131.01 to 1.260.028
rs286441919GFailed QC
rs810588519T1.160.95 to 1.420.1491.160.95 to 1.420.154

QC, qualtiy control; SNP, single nucleotide polymorphism.

Table 8

Results of osteoarthritis association analysis adjusting for BMI

UnadjustedAdjusted
SNPChromosomeAlleleOR95% CIp ValueOR95% CIp Value
rs48563463T1.060.94 to 1.190.3801.060.94 to 1.190.614
rs78280428G0.850.77 to 0.953.5×10−30.870.77 to 0.971.0×10−2
rs720321916T1.030.88 to 1.210.6671.040.89 to 1.230.591
rs1214983216A1.121.01 to 1.242.9×10−21.121.01 to 1.240.226

BMI, body mass index; SNP, single nucleotide polymorphism.

Results of osteoarthritis association analysis adjusting for height QC, qualtiy control; SNP, single nucleotide polymorphism. Results of osteoarthritis association analysis adjusting for BMI BMI, body mass index; SNP, single nucleotide polymorphism.

Discussion

Identification of the genetic loci contributing to variation in quantitative traits such as height and BMI, and risk of osteoarthritis could help elucidate possible mechanistic pathways. There is an established genetic link between height and osteoarthritis. The pleiotropic action of GDF5 on human height is an example that may shed light on shared signalling functions and pathways affecting the two traits.19 Epidemiological evidence has also suggested a link between osteoarthritis and BMI.32 It is plausible that these traits also share genetic associations and we carried out a SNP-by-SNP pairwise comparison of GWAS data to investigate their genetic overlap. We obtained evidence for overlap of association signals between osteoarthritis and height and between osteoarthritis and BMI at different definition thresholds, corroborated by permutation analyses to obtain empirical p values. We investigated specific signals that may be representative of these findings and looked at all SNPs with p≤1.0×10−3 for both comparisons. Some signals reside in the vicinity of genes, such as the structural protein collagen gene COL11A1 and the parathyroid hormone-related protein PTHLH that regulates endochondral bone development, which have previously been identified as possible candidates for osteoarthritis susceptibility.33–36 For the osteoarthritis–BMI comparison the FTO gene for obesity was highlighted. Using a second dataset we attempted to replicate the osteoarthritis association of overlapping signals. The fact that the FTO locus was the only one to replicate in our second osteoarthritis dataset suggests that the other signals may have been false positive signals for osteoarthritis, or low power in the replication cohort. Adjustment for BMI attenuated this osteoarthritis signal, indicating that the primary association is with BMI. The established osteoarthritis and height overlapping signal rs143383 located in GDF5 was not identified in this analysis. We found it to be strongly associated with height (p=1.94×10−50), but not associated with osteoarthritis in the arcOGEN dataset (p=0.602). Although association between the GDF5 locus and hip and knee osteoarthritis was first reported in a study of Japanese and Chinese individuals in 2007,20 it took several years and large-scale meta-analysis efforts to replicate the association robustly in European populations.21–23 In addition to allele frequency disparities between ethnic groups, this observation also highlights the limited power (<10% at α=5×10−8) of a dataset such as arcOGEN (comprising 3177 cases and 4894 controls) to detect a signal with modest effect (OR 1.15) and common risk allele frequency (∼0.60 for the GDF5 signal).27 Our results should be interpreted within the power constraints of our study. First, osteoarthritis is a heterogeneous disease and the definition of the cases here was primarily based on painful rather than structural osteoarthritis. Second, we examined GWAS platform SNP content rather than known causal variants. Finally, the osteoarthritis GWAS used population-based controls, which can dilute power due to misclassifications of cases as controls in a common disease such as osteoarthritis. In conclusion, our genome-wide comparison of GIANT and arcOGEN generated evidence for an overall excess of overlapping signals between osteoarthritis and the two quantitative traits of BMI and height. The FTO signal was robustly associated with BMI and osteoarthritis, and showed evidence of association in the replication osteoarthritis dataset. This signal underpins the known epidemiological link between BMI and osteoarthritis, and represents the single largest genetic effect for BMI, which may have facilitated its identification as a shared locus. Better-powered GWAS datasets, along with large-scale replication samples, will help unveil additional shared loci and highlight common biological pathways.
  34 in total

1.  Does obesity predict knee pain over fourteen years in women, independently of radiographic changes?

Authors:  Lyndsey M Goulston; A Kiran; M K Javaid; A Soni; K M White; D J Hart; T D Spector; N K Arden
Journal:  Arthritis Care Res (Hoboken)       Date:  2011-10       Impact factor: 4.794

Review 2.  Osteoarthritis.

Authors:  P Creamer; M C Hochberg
Journal:  Lancet       Date:  1997-08-16       Impact factor: 79.321

3.  A functional polymorphism in the 5' UTR of GDF5 is associated with susceptibility to osteoarthritis.

Authors:  Yoshinari Miyamoto; Akihiko Mabuchi; Dongquan Shi; Toshikazu Kubo; Yoshio Takatori; Susumu Saito; Mikihiro Fujioka; Akihiro Sudo; Atsumasa Uchida; Seizo Yamamoto; Koichi Ozaki; Masaharu Takigawa; Toshihiro Tanaka; Yusuke Nakamura; Qing Jiang; Shiro Ikegawa
Journal:  Nat Genet       Date:  2007-03-25       Impact factor: 38.330

4.  Weight gain and the risk of total hip replacement a population-based prospective cohort study of 265,725 individuals.

Authors:  H Apold; H E Meyer; B Espehaug; L Nordsletten; L I Havelin; G B Flugsrud
Journal:  Osteoarthritis Cartilage       Date:  2011-04-12       Impact factor: 6.576

5.  GWAMA: software for genome-wide association meta-analysis.

Authors:  Reedik Mägi; Andrew P Morris
Journal:  BMC Bioinformatics       Date:  2010-05-28       Impact factor: 3.169

6.  Large-scale analysis of association between GDF5 and FRZB variants and osteoarthritis of the hip, knee, and hand.

Authors:  Evangelos Evangelou; Kay Chapman; Ingrid Meulenbelt; Fotini B Karassa; John Loughlin; Andrew Carr; Michael Doherty; Sally Doherty; Juan J Gómez-Reino; Antonio Gonzalez; Bjarni V Halldorsson; Valdimar B Hauksson; Albert Hofman; Deborah J Hart; Shiro Ikegawa; Thorvaldur Ingvarsson; Qing Jiang; Ingileif Jonsdottir; Helgi Jonsson; Hanneke J M Kerkhof; Margreet Kloppenburg; Nancy E Lane; Jia Li; Rik J Lories; Joyce B J van Meurs; Annu Näkki; Michael C Nevitt; Julio Rodriguez-Lopez; Dongquan Shi; P Eline Slagboom; Kari Stefansson; Aspasia Tsezou; Gillian A Wallis; Christopher M Watson; Tim D Spector; Andre G Uitterlinden; Ana M Valdes; John P A Ioannidis
Journal:  Arthritis Rheum       Date:  2009-06

7.  Incidence of severe knee and hip osteoarthritis in relation to different measures of body mass: a population-based prospective cohort study.

Authors:  L S Lohmander; M Gerhardsson de Verdier; J Rollof; P M Nilsson; G Engström
Journal:  Ann Rheum Dis       Date:  2008-05-08       Impact factor: 19.103

8.  Genome-wide association scans identified CTNNBL1 as a novel gene for obesity.

Authors:  Yong-Jun Liu; Xiao-Gang Liu; Liang Wang; Christian Dina; Han Yan; Jian-Feng Liu; Shawn Levy; Christopher J Papasian; Betty M Drees; James J Hamilton; David Meyre; Jerome Delplanque; Yu-Fang Pei; Lei Zhang; Robert R Recker; Philippe Froguel; Hong-Wen Deng
Journal:  Hum Mol Genet       Date:  2008-03-05       Impact factor: 6.150

9.  The relationship of obesity, fat distribution and osteoarthritis in women in the general population: the Chingford Study.

Authors:  D J Hart; T D Spector
Journal:  J Rheumatol       Date:  1993-02       Impact factor: 4.666

10.  Genome-wide association scan shows genetic variants in the FTO gene are associated with obesity-related traits.

Authors:  Angelo Scuteri; Serena Sanna; Wei-Min Chen; Manuela Uda; Giuseppe Albai; James Strait; Samer Najjar; Ramaiah Nagaraja; Marco Orrú; Gianluca Usala; Mariano Dei; Sandra Lai; Andrea Maschio; Fabio Busonero; Antonella Mulas; Georg B Ehret; Ashley A Fink; Alan B Weder; Richard S Cooper; Pilar Galan; Aravinda Chakravarti; David Schlessinger; Antonio Cao; Edward Lakatta; Gonçalo R Abecasis
Journal:  PLoS Genet       Date:  2007-07       Impact factor: 5.917

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  19 in total

1.  Evaluation of a two-step iterative resampling procedure for internal validation of genome-wide association studies.

Authors:  Guolian Kang; Wei Liu; Cheng Cheng; Carmen L Wilson; Geoffrey Neale; Jun J Yang; Kirsten K Ness; Leslie L Robison; Melissa M Hudson; Deo Kumar Srivastava
Journal:  J Hum Genet       Date:  2015-09-17       Impact factor: 3.172

2.  A genetic link between osteoarthritis and obesity?

Authors: 
Journal:  Bonekey Rep       Date:  2013-12-11

3.  Genome-wide association and functional studies identify a role for IGFBP3 in hip osteoarthritis.

Authors:  Daniel S Evans; Frederic Cailotto; Neeta Parimi; Ana M Valdes; Martha C Castaño-Betancourt; Youfang Liu; Robert C Kaplan; Martin Bidlingmaier; Ramachandran S Vasan; Alexander Teumer; Gregory J Tranah; Michael C Nevitt; Steven R Cummings; Eric S Orwoll; Elizabeth Barrett-Connor; Jordan B Renner; Joanne M Jordan; Michael Doherty; Sally A Doherty; Andre G Uitterlinden; Joyce B J van Meurs; Tim D Spector; Rik J Lories; Nancy E Lane
Journal:  Ann Rheum Dis       Date:  2014-06-13       Impact factor: 19.103

Review 4.  Genetic epidemiology of osteoarthritis: recent developments and future directions.

Authors:  Marc C Hochberg; Laura Yerges-Armstrong; Michelle Yau; Braxton D Mitchell
Journal:  Curr Opin Rheumatol       Date:  2013-03       Impact factor: 5.006

Review 5.  Emerging genetic basis of osteochondritis dissecans.

Authors:  J Tyler Bates; John C Jacobs; Kevin G Shea; Julia Thom Oxford
Journal:  Clin Sports Med       Date:  2014-01-10       Impact factor: 2.182

6.  Role of SREBP2 gene polymorphism on knee osteoarthritis in the South Indian Hyderabad Population: A hospital based study with G595C variant.

Authors:  Subhadra Poornima; Krishna Subramanyam; Imran Ali Khan; Sumanlatha G; Qurratulain Hasan
Journal:  J Orthop       Date:  2019-05-07

Review 7.  Insights from human genetic studies into the pathways involved in osteoarthritis.

Authors:  Louise N Reynard; John Loughlin
Journal:  Nat Rev Rheumatol       Date:  2013-08-20       Impact factor: 20.543

Review 8.  The genetics and functional analysis of primary osteoarthritis susceptibility.

Authors:  Louise N Reynard; John Loughlin
Journal:  Expert Rev Mol Med       Date:  2013-02-18       Impact factor: 5.600

9.  A Bayesian Approach to the Overlap Analysis of Epidemiologically Linked Traits.

Authors:  Jennifer L Asimit; Kalliope Panoutsopoulou; Eleanor Wheeler; Sonja I Berndt; Heather J Cordell; Andrew P Morris; Eleftheria Zeggini; Inês Barroso
Journal:  Genet Epidemiol       Date:  2015-09-28       Impact factor: 2.135

Review 10.  Can We Identify Patients with High Risk of Osteoarthritis Progression Who Will Respond to Treatment? A Focus on Biomarkers and Frailty.

Authors:  Nigel Arden; Pascal Richette; Cyrus Cooper; Olivier Bruyère; Eric Abadie; Jaime Branco; Maria Luisa Brandi; Francis Berenbaum; Cécile Clerc; Elaine Dennison; Jean-Pierre Devogelaer; Marc Hochberg; Pieter D'Hooghe; Gabriel Herrero-Beaumont; John A Kanis; Andrea Laslop; Véronique Leblanc; Stefania Maggi; Giuseppe Mautone; Jean-Pierre Pelletier; Florence Petit-Dop; Susanne Reiter-Niesert; René Rizzoli; Lucio Rovati; Eleonora Tajana Messi; Yannis Tsouderos; Johanne Martel-Pelletier; Jean-Yves Reginster
Journal:  Drugs Aging       Date:  2015-07       Impact factor: 3.923

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