Literature DB >> 20167083

Fibrinogen beta variants confer protection against coronary artery disease in a Greek case-control study.

Eirini V Theodoraki1, Tiit Nikopensius, Julia Suhorutsenko, Vassileios Peppes, Panagiota Fili, Genovefa Kolovou, Vassileios Papamikos, Dimitrios Richter, Nikolaos Zakopoulos, Kaarel Krjutskov, Andres Metspalu, George V Dedoussis.   

Abstract

BACKGROUND: Although plasma fibrinogen levels are related to cardiovascular risk, data regarding the role of fibrinogen genetic variation in myocardial infarction (MI) or coronary artery disease (CAD) etiology remain inconsistent. The purpose of the present study was to investigate the effect of fibrinogen A (FGA), fibrinogen B (FGB) and fibrinogen G (FGG) gene SNPs and haplotypes on susceptibility to CAD in a homogeneous Greek population.
METHODS: We genotyped for rs2070022, rs2070016, rs2070006 in FGA gene, the rs7673587, rs1800789, rs1800790, rs1800788, rs1800787, rs4681 and rs4220 in FGB gene and for the rs1118823, rs1800792 and rs2066865 SNPs in FGG gene applying an arrayed primer extension-based genotyping method (APEX-2) in a sample of CAD patients (n = 305) and controls (n = 305). Logistic regression analysis was used to calculate odds ratios (ORs) and 95% confidence intervals (CIs), before and after adjustment for potential confounders.
RESULTS: None of the FGA and FGG SNPs and FGA, FGB, FGG and FGA-FGG haplotypes was associated with disease occurrence after adjustment. Nevertheless, rs1800787 and rs1800789 SNPs in FGB gene seem to decrease the risk of CAD, even after adjustment for potential confounders (OR = 0.42, 95%CI: 0.19-0.90, p = 0.026 and OR = 0.44, 95%CI:0.21-0.94, p = 0.039, respectively).
CONCLUSIONS: FGA and FGG SNPs as well as FGA, FGB, FGG and FGA-FGG haplotypes do not seem to be important contributors to CAD occurrence in our sample. On the contrary, FGB rs1800787 and rs1800789 SNPs seem to confer protection to disease onset lowering the risk by about 50% in homozygotes for the minor alleles.

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Year:  2010        PMID: 20167083      PMCID: PMC2834581          DOI: 10.1186/1471-2350-11-28

Source DB:  PubMed          Journal:  BMC Med Genet        ISSN: 1471-2350            Impact factor:   2.103


Background

Fibrinogen (Factor I) constitutes a water-soluble glycoprotein with a molecular weight of 340 kDa that is mainly synthesized in hepatocytes. It is a major factor of the coagulation system that participates in the process of hemostasis in two discrete pathways: Primarily, it is part of the final common pathway of the coagulation cascade. Secondarily, fibrinogen is bound to platelet GpIIb/IIIa membrane receptors and forms a web that provides stability to the newly-formed thrombus [1,2]. Apart from its role in coagulation reactions, fibrinogen participates in atherosclerosis development by promoting the adhesion of platelets and white blood cells to the endothelial surface [3-5] by promoting muscle cell proliferation and migration, as well as by modulating the binding of plasmin with its receptor [1]. Fibrinogen levels in plasma have been associated with coronary artery disease and myocardial infarction risk in prospective studies [6-9]. However, it is still unclear whether increased fibrinogen levels are causal to disease development or just a secondary phenomenon. Fibrinogen circulates in plasma as a dimer, composed of three pairs of polypeptide chains denoted Aa (alpha), Bb (beta) and γ (gamma) encoded by fibrinogen alpha (FGA), beta (FGB) and gamma (FGG) genes respectively that are clustered on chromosome 4q31[10]. A variant of γ chain, named γ' is derived by alternate splicing of the primary mRNA [11]. The genes are arranged in order FGG-FGA-FGB, within a 50 kb region, with the transcriptional direction of FGG and FGA opposite to that of FGB [10]. The study of SNPs and haplotypes of fibrinogen genes in relation to coronary artery disease (CAD) and myocardial infarction (MI) occurrence has yielded to date inconsistent results. Some investigators have reported associations between fibrinogen gene SNPs or haplotypes with MI or CAD occurrence [12-14], whereas other studies have not replicated these associations [15-18]. Although numerous studies have been performed, scarce data concerning the role of fibrinogen gene SNPs or haplotypes in the Greek population are available. Therefore, we performed a retrospective case-control study involving 305 patients presenting with either CAD or acute coronary syndrome (ACS) and 305 healthy control subjects in order to investigate the impact of FGA, FGB and FGG gene SNPs and haplotypes on disease occurrence.

Methods

Study participants were recruited from 3 hospitals found in the area of Athens. Cases were subjects presenting with either ACS or stable CAD defined as >50% stenosis in at least one of the three main coronary vessels assessed by coronary angiography. ACS was defined as acute MI or unstable angina corresponding to class III of the Braunwald classification [19]. ACS patients have also undergone coronary angiography examination that verified the presence of significant stenosis. Controls were subjects with negative coronary angiography findings, or negative stress test, or subjects without symptoms of disease that were admitted at the same hospitals as cases and were free of any cardiovascular disease, cancer, or inflammatory diseases. Moreover, we excluded subjects with renal or hepatic disease from both study groups. The bioethics committee of Harokopio University approved the study and all participants gave their informed consent. Regarding the clinical characteristics of study subjects, hypercholesterolemia was defined as total cholesterol levels greater than 200 mg/dl or use of hypolipidemic medication, while hypertension was defined as blood pressure levels greater than 140/90 mm Hg or use of antihypertensive medication. We classified as diabetics subjects with blood glucose levels greater than 126 mg/dl or subjects that were under special diet or treatment. Finally, positive family history of myocardial infarction was defined as the presence of myocardial infarction in first degree male relatives at age < 55 years or in first degree female relatives at age <65 years. Altogether 13 tag SNPs were genotyped for each individual in case-control samples. Carlson's algorithm was applied for SNP selection using Tagger implementation introduced in Haploview [20], where HapMap CEU was used as a reference population (with thresholds r2 ≥ 0.8 and minor allele frequency (MAF) ≥ 10%) [21]. SNPs were selected for each gene including 10 kb of both upstream and downstream sequences. A SNP rs1800787 in FGB gene was force-included to Tagger selection referring to the previously published data. Selected SNPs, as well as their location in the gene, are presented in Table 1.
Table 1

TagSNPs for the FGA, FGB and FGG genes.

GenetagSNPAllelesaSNP locationAA change
FGArs2070022C>T3' UTR-
rs2070016C>TIntron 2-
rs2070006A>G5' upstream-
FGBrs7673587C>T5' upstream-
rs1800789G>A5' upstream-
rs1800790G>A5' upstream-
rs1800788C>T5' upstream-
rs1800787C>T5' upstream-
rs4681C>TExon 7Y375Y
rs4220G>AExon 8R478K
FGGrs1118823T>A3' downstream-
rs2066865G>A3' downstream-
rs1800792T>C5' upstream-

aAlleles are depicted from the coding strand for all SNPs except of rs2070022, rs2070016, rs2070006, rs2066865 and rs1800792 that are depicted from the non-coding one.

TagSNPs for the FGA, FGB and FGG genes. aAlleles are depicted from the coding strand for all SNPs except of rs2070022, rs2070016, rs2070006, rs2066865 and rs1800792 that are depicted from the non-coding one. Genomic DNA was extracted from whole blood using the salting-out method [22]. Genotyping was performed using an arrayed primer extension-based genotyping method (APEX-2). This method allows multiplex DNA amplification and detection of SNPs on microarrays via four-color single-base primer extension [23]. The standard chi-square test was used to test for deviations from Hardy-Weinberg equilibrium and to evaluate the differences in genotype distributions between cases and controls. The odds ratios (ORs) were calculated using logistic regression under the assumption of the additive, dominant and recessive models. Logistic regression including age, sex, and the presence of diabetes, hypertension, hypercholesterolemia and smoking as covariates was used to calculate adjusted ORs. Analysis of single SNPs effects was performed using PLINK 1.05 [24]. Haplotypes were constructed for each gene separately and for FGG-FGA genes. We did not consider FGA-FGG-FGB haplotypes in the analysis due to weak LD (Linkage Disequilibrium) between FGA-FGG and FGB variants. THESIAS software [25] was used to calculate haplotype frequencies in cases and controls as well as ORs and respective 95% confidence intervals before and after adjustment for the aforementioned covariates using the most common haplotype as a reference. LD measures (r2 and D') between SNPs were calculated using Haploview [20]. D' values are given in Figure 1. All p-values are based on two-sided tests and compared to a significance level of 5%.
Figure 1

Linkage disequilibrium structure. D' values between SNPs in FGA, FGB and FGG genes.

Linkage disequilibrium structure. D' values between SNPs in FGA, FGB and FGG genes. Power analysis was performed using Quanto 1.2 software.

Results

Table 2 summarises the characteristics of 305 CAD and ACS cases and 305 control subjects. The two study groups differed in a predictable manner, i.e. cases exhibited a higher prevalence of risk factors such as hypercholesterolemia, hypertension, diabetes and smoking. Patients presenting ACS represented 62.6% of all cases. Mean age, as well as the percentage of male subjects was lower among controls than in cases. BMI did not present statistically significant differences between the two study groups. Although hypercholesterolemia was most common among cases, total cholesterol and LDL levels are higher in the control group, due to the less frequent use of hypolipidemic medication.
Table 2

General characteristics of patients and controls included in our study.

Subject characteristicsCases(n = 305)Controls(n = 305)P-value
Stable CAD (%)37.4-
ACS (%)62.6-
Age (years)63.14 ± 11.4160.37 ± 14.860.011
Male sex (%)81.670.20.001
BMI (kg/m2)27.9 ± 3.828.2 ± 4.60.403
Hypercholesterolemia (%)76.959.0<0.001
Diabetes (%)32.415.1<0.001
Hypertension (%)71.758.80.001
Family history of MI (%)28.016.70.001
Current or former smoking (%)74.261.0<0.001
Total cholesterol (mg/dl)197.7 ± 47.7214.4 ± 40.4<0.001
LDL cholesterol (mg/dl)126.6 ± 41.6141.2 ± 36.4<0.001
HDL cholesterol (mg/dl)50.6 ± 12.645.8 ± 14.3<0.001
Triglycerides (mg/dl)144.2 ± 66.8118.1 ± 65.6<0.001
General characteristics of patients and controls included in our study. All SNPs were in Hardy-Weinberg equilibrium except for FGB rs7673587 and rs1800788 SNPs (p < 0.05) that were excluded from subsequent analysis. Logistic regression analysis was performed for FGA, FGB and FGG gene SNPs separately, under the assumption of the additive, dominant and recessive models. ORs and 95% CIs were calculated before and after adjustment for age, sex and the presence of hypercholesterolemia, hypertension, diabetes and smoking. Four SNPs were nominally associated with disease in at least one model of inheritance (Table 3).
Table 3

Results from logistic regression analysis for SNPs with significant associations before adjustment.

GENESNPGenotype frequencyMinor allele frequencyModelOR;95% CIP-valueadjusted OR; 95% CIaadjusted P-valuea
CasesControlsCasesControls
AA0.360.46Additive1.26;1.00-1.590.0551.26;0.97-1.630.081
FGArs2070006AG0.510.410.390.34Dominant1.51;1.09-2.090.0131.39;0.97-1.990.077
GG0.130.13Recessive1.07;0.67-1.700.7881.28;0.77-2.140.336
GG0.560.58Additive0.92; 0.71-1.190.5140.88;0.66-1.170.376
FGBrs1800789GA0.390.330.240.26Dominant1.06; 0.77-1.460.7331.00;0.70-1.440.990
AA0.050.09Recessive0.47; 0.24-0.920.0260.42;0.19-0.900.026
CC0.580.55Additive0.83; 0.64-1.070.1530.77;0.58-1.030.076
FGBrs1800787CT0.370.360.240.27Dominant0.89; 0.65-1.230.4730.81;0.57-1.160.254
TT0.050.09Recessive0.50; 0.26-0.960.0390.44;0.21-0.940.034
GG0.610.70Additive1.31;0.99-1.750.0621.32;0.97-1.800.077
FGGrs2066865GA0.340.260.210.17Dominant1.40;1.00-1.970.0511.42;0.98-2.070.066
AA0.050.04Recessive1.31;0.59-2.930.5131.35;0.58-3.120.486

Results from logistic regression analysis for FGA, FGB and FGG gene SNPs that were significantly associated with disease, before adjustment for confounding variables.

a adjustment for age, sex and the presence of hypercholesterolemia, hypertension, diabetes and smoking

Results from logistic regression analysis for SNPs with significant associations before adjustment. Results from logistic regression analysis for FGA, FGB and FGG gene SNPs that were significantly associated with disease, before adjustment for confounding variables. a adjustment for age, sex and the presence of hypercholesterolemia, hypertension, diabetes and smoking Thus, carriers of one minor allele of rs2070006 in FGA gene exhibited an OR of 1.26 (95% CI:0.99-1.59, p = 0.055), that after adjustment was 1.26 (95% CI:0.98-1.63, p = 0.081). When carriers of the minor allele were grouped together, i.e. when modeled dominantly, the unadjusted OR was 1.51 (95% CI: 1.09-2.09, p = 0.013), while after adjustment OR was 1.39 (95% CI:0.97-1.99, p = 0.077). In the case of FGB gene two SNPs, rs1800787 and rs1800789, were associated with disease occurrence in the recessive model, and the association remained significant after adjustment for the confounding variables (OR = 0.47, 95% CI:0.24-0.92, p = 0.026 and OR = 0.50, 95% CI:0.27-0.96, p = 0.039, respectively). The association of those SNPs with disease was significant even after further adjustment for obesity (BMI > 27) (OR = 0.40, 95% CI:0.18-0.18, p = 0.023 and OR = 0.38, 95% CI:0.17-0.85, p = 0.019, respectively). Rs2066865 in FGG gene showed borderline association with CAD. For carriers of one minor allele, the unadjusted OR was 1.31 (95% CI:0.99-1.75, p = 0.062), while after adjustment it was 1.32 (95% CI:0.97-1.80, p = 0.077). Results did not differ much when the dominant model was considered. No other SNP in FGA, FGB and FGG genes was associated with disease occurrence. In Table 4 the inferred haplotypes for FGA, FGB, FGG and FGA-FGG SNPs with frequency >5% are presented. In Table 5 the ORs and 95% CIs are presented for each haplotype before and after adjustment for the same confounding variables as in the case of single SNPs. We used the most common haplotype as a reference category. FGA-FGG H3 haplotype TGATTA bearing the 2 minor alleles of rs2070006 and rs2066865 was associated with CAD in the unadjusted analysis (OR = 1.42, 95% CI:1.02-1.98, p = 0.040), but after adjustment for confounding factors the statistical significance was lost (OR = 1.38, 95% CI: 0.94-2.02, p = 0.098).
Table 4

Haplotypes for FGA, FGB, FGG and FGA-FGG gene SNPs with frequencies >5%.

SNPs
Haplotypesrs2070006rs2070022rs2070016rs1800792rs1118823rs2066865rs1800787rs1800789rs1800790rs4681rs4220
FGA-H1TGA
FGA-H2CGA
FGA-H3CGG
FGA-H4CAA
FGG-H1CTG
FGG-H2TAG
FGG-H3TTA
FGB-H1CGGCG
FGB-H2TAATA
FGA-FGG-H1CGACTG
FGA-FGG-H2CGGCTG
FGA-FGG-H3TGATTA
FGA-FGG-H4CAATAG
FGA-FGG-H5TAGTAG

Bold and underlined letters indicate SNP minor alleles.

Table 5

Frequencies, ORs and 95% CIs for CAD in relation to the most frequent haplotypes.

HaplotypeControls (%)Cases (%)OR;95%CIP-valueadjusted OR;95%CIaadjusted P-valuea
FGA-H133.0038.13referentreferent
FGA-H228.8826.250.80;0.60-1.050.1040.81;0.59-1.110.186
FGA-H321.1020.270.84;0.62-1.140.2560.75;0.53-1.070.111
FGA-H416.2014.650.78;0.55-1.110.1640.84;0.56-1.260.396
FGG-H148.8445.16referentreferent
FGG-H232.7832.811.06;0.83-1.360.6381.13;0.86-1.500.387
FGG-H316.5520.781.31;0.97-1.770.0781.31;0.93-1.870.122
FGB-H172.3475.37referentreferent
FGB-H221.8420.770.92;0.71-1.200.5470.89;0.65-1.210.463
FGA-FGG-H126.0023.97referentreferent
FGA-FGG-H219.5018.311.05;0.76-1.450.7710.94;0.65-1.370.755
FGA-FGG-H315.7120.081.42;1.02-1.980.0401.38;0.94-2.020.098
FGA-FGG-H415.8514.601.03;0.71-1.480.8931.09;0.72-1.660.665
FGA-FGG-H514.0315.281.22;0.86-1.750.2641.21;0.79-1.840.381

a adjustment for age, sex and the presence of hypercholesterolemia, hypertension, diabetes and smoking

Haplotypes for FGA, FGB, FGG and FGA-FGG gene SNPs with frequencies >5%. Bold and underlined letters indicate SNP minor alleles. Frequencies, ORs and 95% CIs for CAD in relation to the most frequent haplotypes. a adjustment for age, sex and the presence of hypercholesterolemia, hypertension, diabetes and smoking Further adjustment for lipid levels, i.e. total cholesterol, LDL cholesterol and HDL cholesterol, did not significantly affect our results concerning both single SNP and haplotype effects.

Discussion

Evidence from epidemiologic studies and meta-analyses suggests that increased plasma fibrinogen levels are related to increased coronary artery disease risk [6]. Despite the existence of numerous studies that support an association between plasma fibrinogen levels and certain SNPs or haplotypes [13,15,26-28], data linking the latter with CAD occurrence still remain controversial. In the present study we used a tagSNP approach to evaluate the role of genetic variation across FGA, FGB and FGG genes in the occurrence of coronary artery disease in a homogeneous Greek population sample of 305 patients and 305 controls. CAD was defined as either presence of angiographically proven significant stenosis in coronary vessels or ACS. The allele frequencies in controls, observed in our study, were similar to the ones reported for HapMap CEU reference population. Rs2070006 and rs2066865 SNPs in FGA and FGG genes respectively were nominally associated with increased risk of CAD both in the additive and dominant models of inheritance, but statistical significance was lost after adjustment. On the other hand, homozygotes for the minor alleles of rs1800787 and rs1800789 SNPs in FGB gene exhibited a decreased risk of CAD remaining statistically significant after adjustment for confounding factors. Haplotype analysis showed that when FGA and FGG gene SNPs were considered together, FGA-FGG-H3 haplotype TGATTA bearing the minor alleles of both rs2070006 and rs2066865 SNPs was associated with an increase in disease risk in the unadjusted analysis, but after adjustment this association disappeared. Therefore, our results do not reveal an important role of FGA and FGG gene SNPs and FGA, FGB, FGG and FGA-FGG haplotypes in CAD occurrence and are in accordance with previously published data. The initial associations published by Mannila et al. [12-14] supporting a role of FGG-FGA and FGG-FGB haplotypes in myocardial infarction risk have not been replicated by other investigators that studied single SNPs and haplotypes in FGA, FGB and FGG genes in MI or CAD phenotypes [15-18]. Rs1800790 SNP in FGB gene was shown to be associated with decreased MI risk applying the recessive model in a meta-analysis [29]. Recently, the same SNP was found to exert protective effect against premature myocardial infarction in a Greek population [30]. In our study we could not replicate these findings. Interestingly, we found rs1800787 and rs1800789 variants, that are highly correlated with rs1800790 (r2 = 0.943 and r2 = 0.928, respectively), to decrease disease risk by about 50%, when modeled recessively. One could hypothesize that the effect of rs1800790, found in the previous studies, is attributed to the strong LD with SNPs rs1800787 and/or rs1800789 - these two tightly linked SNPs most likely are representing the same signal of association with the disease and either of these SNPs might be the functional one. Previous studies that included these SNPs, or others that are in strong LD with them, resulted in negative findings, but in those studies the effect of the SNPs in the recessive model was not considered [15,16]. Our study is limited by the small sample size. A posterior analysis revealed that the power of our sample to detect an odds ratio from 0.4-0.5 was 0.5-0.8, depending on minor allele frequency, with significance level alpha 0.05. We cannot exclude the possibility of a modest effect of SNPs or haplotypes in disease predisposition that would possibly be apparent in a larger sample. Nevertheless, our sample size is similar to that of Mannila et al. that studied eight fibrinogen SNPs in 377 post-infarction patients and 387 healthy individuals and found that fibrinogen haplotypes, and not SNPs, were associated with the risk of MI [14]. Another important limitation of our study is the lack of information concerning the effect of SNPs or haplotypes on fibrinogen levels. Moreover, we have not taken into account the effect of proinflammatory markers, such as IL-6, that have been shown to modify the effect of SNPs on fibrinogen levels [26], and possibly the effect of SNPs in disease risk. Nevertheless, in the multivariate analysis we have adjusted our models for the presence of obesity, hypertension, hypercholesterolemia and diabetes that represent in a way the proinflammatory status and may partially compensate for the lack of information for the levels of specific inflammatory markers. The results of our study should be interpreted with caution, taking into account the multiple tests performed. If we applied the conservative Bonferroni's correction then the level of statistical significance should be 0.001 and none of our associations would remain significant. Nevertheless, the fact that rs1800787 and rs1800789 are highly correlated with rs1800790 that has been previously associated with disease increases our confidence for our results. Futhermore, we cannot exclude the possibility of misclassification of subjects with silent CAD in the control group among subjects that were not subjected to coronary angiography or stress test and who reported absence of symptoms of disease. Finally, cases with fatal MI were not included. Thus, we cannot rule out the possibility that this polymorphism may predispose for more severe disease phenotypes.

Conclusions

The results of the present study suggest that FGA and FGG variants as well as FGA, FGB, FGG and FGA-FGG haplotypes do not seem to be important contributors to CAD occurence in our Greek population. Nevertheless, FGB rs1800787 and rs1800789 variants, in the recessive model, seem to confer protection to disease onset lowering the risk by about 50%.

Competing interests

The authors declare that they have no competing interests.

Authors' contributions

EVT participated in study design, sample recruitment, DNA isolation, statistical analysis, interpretation of data and drafted the manuscript. TN participated in SNP selection, genotyping and manuscript revision. JS participated in genotyping. VP participated in sample recruitment and helped to draft the manuscript. PF participated in sample recruitment and DNA isolation. GK participated in sample recruitment and manuscript revision. VP participated in sample recruitment and DNA isolation. DR and NZ participated in sample recruitment. AM coordinated SNP selection and genotyping. GVD was the general coordinator of the study. All authors read and approved the final manuscript.

Pre-publication history

The pre-publication history for this paper can be accessed here: http://www.biomedcentral.com/1471-2350/11/28/prepub
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Journal:  Eur J Epidemiol       Date:  2012-03-03       Impact factor: 8.082

5.  Novel loci for adiponectin levels and their influence on type 2 diabetes and metabolic traits: a multi-ethnic meta-analysis of 45,891 individuals.

Authors:  Zari Dastani; Marie-France Hivert; Nicholas Timpson; John R B Perry; Xin Yuan; Robert A Scott; Peter Henneman; Iris M Heid; Jorge R Kizer; Leo-Pekka Lyytikäinen; Christian Fuchsberger; Toshiko Tanaka; Andrew P Morris; Kerrin Small; Aaron Isaacs; Marian Beekman; Stefan Coassin; Kurt Lohman; Lu Qi; Stavroula Kanoni; James S Pankow; Hae-Won Uh; Ying Wu; Aurelian Bidulescu; Laura J Rasmussen-Torvik; Celia M T Greenwood; Martin Ladouceur; Jonna Grimsby; Alisa K Manning; Ching-Ti Liu; Jaspal Kooner; Vincent E Mooser; Peter Vollenweider; Karen A Kapur; John Chambers; Nicholas J Wareham; Claudia Langenberg; Rune Frants; Ko Willems-Vandijk; Ben A Oostra; Sara M Willems; Claudia Lamina; Thomas W Winkler; Bruce M Psaty; Russell P Tracy; Jennifer Brody; Ida Chen; Jorma Viikari; Mika Kähönen; Peter P Pramstaller; David M Evans; Beate St Pourcain; Naveed Sattar; Andrew R Wood; Stefania Bandinelli; Olga D Carlson; Josephine M Egan; Stefan Böhringer; Diana van Heemst; Lyudmyla Kedenko; Kati Kristiansson; Marja-Liisa Nuotio; Britt-Marie Loo; Tamara Harris; Melissa Garcia; Alka Kanaya; Margot Haun; Norman Klopp; H-Erich Wichmann; Panos Deloukas; Efi Katsareli; David J Couper; Bruce B Duncan; Margreet Kloppenburg; Linda S Adair; Judith B Borja; James G Wilson; Solomon Musani; Xiuqing Guo; Toby Johnson; Robert Semple; Tanya M Teslovich; Matthew A Allison; Susan Redline; Sarah G Buxbaum; Karen L Mohlke; Ingrid Meulenbelt; Christie M Ballantyne; George V Dedoussis; Frank B Hu; Yongmei Liu; Bernhard Paulweber; Timothy D Spector; P Eline Slagboom; Luigi Ferrucci; Antti Jula; Markus Perola; Olli Raitakari; Jose C Florez; Veikko Salomaa; Johan G Eriksson; Timothy M Frayling; Andrew A Hicks; Terho Lehtimäki; George Davey Smith; David S Siscovick; Florian Kronenberg; Cornelia van Duijn; Ruth J F Loos; Dawn M Waterworth; James B Meigs; Josee Dupuis; J Brent Richards; Benjamin F Voight; Laura J Scott; Valgerdur Steinthorsdottir; Christian Dina; Ryan P Welch; Eleftheria Zeggini; Cornelia Huth; Yurii S Aulchenko; Gudmar Thorleifsson; Laura J McCulloch; Teresa Ferreira; Harald Grallert; Najaf Amin; Guanming Wu; Cristen J Willer; Soumya Raychaudhuri; Steve A McCarroll; Oliver M Hofmann; Ayellet V Segrè; Mandy van Hoek; Pau Navarro; Kristin Ardlie; Beverley Balkau; Rafn Benediktsson; Amanda J Bennett; Roza Blagieva; Eric Boerwinkle; Lori L Bonnycastle; Kristina Bengtsson Boström; Bert Bravenboer; Suzannah Bumpstead; Noël P Burtt; Guillaume Charpentier; Peter S Chines; Marilyn Cornelis; Gabe Crawford; Alex S F Doney; Katherine S Elliott; Amanda L Elliott; Michael R Erdos; Caroline S Fox; Christopher S Franklin; Martha Ganser; Christian Gieger; Niels Grarup; Todd Green; Simon Griffin; Christopher J Groves; Candace Guiducci; Samy Hadjadj; Neelam Hassanali; Christian Herder; Bo Isomaa; Anne U Jackson; Paul R V Johnson; Torben Jørgensen; Wen H L Kao; Augustine Kong; Peter Kraft; Johanna Kuusisto; Torsten Lauritzen; Man Li; Aloysius Lieverse; Cecilia M Lindgren; Valeriya Lyssenko; Michel Marre; Thomas Meitinger; Kristian Midthjell; Mario A Morken; Narisu Narisu; Peter Nilsson; Katharine R Owen; Felicity Payne; Ann-Kristin Petersen; Carl Platou; Christine Proença; Inga Prokopenko; Wolfgang Rathmann; N William Rayner; Neil R Robertson; Ghislain Rocheleau; Michael Roden; Michael J Sampson; Richa Saxena; Beverley M Shields; Peter Shrader; Gunnar Sigurdsson; Thomas Sparsø; Klaus Strassburger; Heather M Stringham; Qi Sun; Amy J Swift; Barbara Thorand; Jean Tichet; Tiinamaija Tuomi; Rob M van Dam; Timon W van Haeften; Thijs van Herpt; Jana V van Vliet-Ostaptchouk; G Bragi Walters; Michael N Weedon; Cisca Wijmenga; Jacqueline Witteman; Richard N Bergman; Stephane Cauchi; Francis S Collins; Anna L Gloyn; Ulf Gyllensten; Torben Hansen; Winston A Hide; Graham A Hitman; Albert Hofman; David J Hunter; Kristian Hveem; Markku Laakso; Andrew D Morris; Colin N A Palmer; Igor Rudan; Eric Sijbrands; Lincoln D Stein; Jaakko Tuomilehto; Andre Uitterlinden; Mark Walker; Richard M Watanabe; Goncalo R Abecasis; Bernhard O Boehm; Harry Campbell; Mark J Daly; Andrew T Hattersley; Oluf Pedersen; Inês Barroso; Leif Groop; Rob Sladek; Unnur Thorsteinsdottir; James F Wilson; Thomas Illig; Philippe Froguel; Cornelia M van Duijn; Kari Stefansson; David Altshuler; Michael Boehnke; Mark I McCarthy; Nicole Soranzo; Eleanor Wheeler; Nicole L Glazer; Nabila Bouatia-Naji; Reedik Mägi; Joshua Randall; Paul Elliott; Denis Rybin; Abbas Dehghan; Jouke Jan Hottenga; Kijoung Song; Anuj Goel; Taina Lajunen; Alex Doney; Christine Cavalcanti-Proença; Meena Kumari; Nicholas J Timpson; Carina Zabena; Erik Ingelsson; Ping An; Jeffrey O'Connell; Jian'an Luan; Amanda Elliott; Steven A McCarroll; Rosa Maria Roccasecca; François Pattou; Praveen Sethupathy; Yavuz Ariyurek; Philip Barter; John P Beilby; Yoav Ben-Shlomo; Sven Bergmann; Murielle Bochud; Amélie Bonnefond; Knut Borch-Johnsen; Yvonne Böttcher; Eric Brunner; Suzannah J Bumpstead; Yii-Der Ida Chen; Peter Chines; Robert Clarke; Lachlan J M Coin; Matthew N Cooper; Laura Crisponi; Ian N M Day; Eco J C de Geus; Jerome Delplanque; Annette C Fedson; Antje Fischer-Rosinsky; Nita G Forouhi; Maria Grazia Franzosi; Pilar Galan; Mark O Goodarzi; Jürgen Graessler; Scott Grundy; Rhian Gwilliam; Göran Hallmans; Naomi Hammond; Xijing Han; Anna-Liisa Hartikainen; Caroline Hayward; Simon C Heath; Serge Hercberg; David R Hillman; Aroon D Hingorani; Jennie Hui; Joe Hung; Marika Kaakinen; Jaakko Kaprio; Y Antero Kesaniemi; Mika Kivimaki; Beatrice Knight; Seppo Koskinen; Peter Kovacs; Kirsten Ohm Kyvik; G Mark Lathrop; Debbie A Lawlor; Olivier Le Bacquer; Cécile Lecoeur; Yun Li; Robert Mahley; Massimo Mangino; María Teresa Martínez-Larrad; Jarred B McAteer; Ruth McPherson; Christa Meisinger; David Melzer; David Meyre; Braxton D Mitchell; Sutapa Mukherjee; Silvia Naitza; Matthew J Neville; Marco Orrù; Ruth Pakyz; Giuseppe Paolisso; Cristian Pattaro; Daniel Pearson; John F Peden; Nancy L Pedersen; Andreas F H Pfeiffer; Irene Pichler; Ozren Polasek; Danielle Posthuma; Simon C Potter; Anneli Pouta; Michael A Province; Nigel W Rayner; Kenneth Rice; Samuli Ripatti; Fernando Rivadeneira; Olov Rolandsson; Annelli Sandbaek; Manjinder Sandhu; Serena Sanna; Avan Aihie Sayer; Paul Scheet; Udo Seedorf; Stephen J Sharp; Beverley Shields; Gunnar Sigurðsson; Eric J G Sijbrands; Angela Silveira; Laila Simpson; Andrew Singleton; Nicholas L Smith; Ulla Sovio; Amy Swift; Holly Syddall; Ann-Christine Syvänen; Anke Tönjes; André G Uitterlinden; Ko Willems van Dijk; Dhiraj Varma; Sophie Visvikis-Siest; Veronique Vitart; Nicole Vogelzangs; Gérard Waeber; Peter J Wagner; Andrew Walley; Kim L Ward; Hugh Watkins; Sarah H Wild; Gonneke Willemsen; Jaqueline C M Witteman; John W G Yarnell; Diana Zelenika; Björn Zethelius; Guangju Zhai; Jing Hua Zhao; M Carola Zillikens; Ingrid B Borecki; Pierre Meneton; Patrik K E Magnusson; David M Nathan; Gordon H Williams; Kaisa Silander; Stefan R Bornstein; Peter Schwarz; Joachim Spranger; Fredrik Karpe; Alan R Shuldiner; Cyrus Cooper; Manuel Serrano-Ríos; Lars Lind; Lyle J Palmer; Frank B Hu; Paul W Franks; Shah Ebrahim; Michael Marmot; W H Linda Kao; Peter Paul Pramstaller; Alan F Wright; Michael Stumvoll; Anders Hamsten; Thomas A Buchanan; Timo T Valle; Jerome I Rotter; Brenda W J H Penninx; Dorret I Boomsma; Antonio Cao; Angelo Scuteri; David Schlessinger; Manuela Uda; Aimo Ruokonen; Marjo-Riitta Jarvelin; Leena Peltonen; Vincent Mooser; Robert Sladek; Kiran Musunuru; Albert V Smith; Andrew C Edmondson; Ioannis M Stylianou; Masahiro Koseki; James P Pirruccello; Daniel I Chasman; Christopher T Johansen; Sigrid W Fouchier; Gina M Peloso; Maja Barbalic; Sally L Ricketts; Joshua C Bis; Mary F Feitosa; Marju Orho-Melander; Olle Melander; Xiaohui Li; Mingyao Li; Yoon Shin Cho; Min Jin Go; Young Jin Kim; Jong-Young Lee; Taesung Park; Kyunga Kim; Xueling Sim; Rick Twee-Hee Ong; Damien C Croteau-Chonka; Leslie A Lange; Joshua D Smith; Andreas Ziegler; Weihua Zhang; Robert Y L Zee; John B Whitfield; John R Thompson; Ida Surakka; Tim D Spector; Johannes H Smit; Juha Sinisalo; James Scott; Juha Saharinen; Chiara Sabatti; Lynda M Rose; Robert Roberts; Mark Rieder; Alex N Parker; Guillaume Pare; Christopher J O'Donnell; Markku S Nieminen; Deborah A Nickerson; Grant W Montgomery; Wendy McArdle; David Masson; Nicholas G Martin; Fabio Marroni; Gavin Lucas; Robert Luben; Marja-Liisa Lokki; Guillaume Lettre; Lenore J Launer; Edward G Lakatta; Reijo Laaksonen; Kirsten O Kyvik; Inke R König; Kay-Tee Khaw; Lee M Kaplan; Åsa Johansson; A Cecile J W Janssens; Wilmar Igl; G Kees Hovingh; Christian Hengstenberg; Aki S Havulinna; Nicholas D Hastie; Tamara B Harris; Talin Haritunians; Alistair S Hall; Leif C Groop; Elena Gonzalez; Nelson B Freimer; Jeanette Erdmann; Kenechi G Ejebe; Angela Döring; Anna F Dominiczak; Serkalem Demissie; Panagiotis Deloukas; Ulf de Faire; Gabriel Crawford; Yii-der I Chen; Mark J Caulfield; S Matthijs Boekholdt; Themistocles L Assimes; Thomas Quertermous; Mark Seielstad; Tien Y Wong; E-Shyong Tai; Alan B Feranil; Christopher W Kuzawa; Herman A Taylor; Stacey B Gabriel; Hilma Holm; Vilmundur Gudnason; Ronald M Krauss; Jose M Ordovas; Patricia B Munroe; Jaspal S Kooner; Alan R Tall; Robert A Hegele; John J P Kastelein; Eric E Schadt; David P Strachan; Muredach P Reilly; Nilesh J Samani; Heribert Schunkert; L Adrienne Cupples; Manjinder S Sandhu; Paul M Ridker; Daniel J Rader; Sekar Kathiresan
Journal:  PLoS Genet       Date:  2012-03-29       Impact factor: 5.917

6.  Evaluating the glucose raising effect of established loci via a genetic risk score.

Authors:  Eirini Marouli; Stavroula Kanoni; Vasiliki Mamakou; Sophie Hackinger; Lorraine Southam; Bram Prins; Angela Rentari; Maria Dimitriou; Eleni Zengini; Fragiskos Gonidakis; Genovefa Kolovou; Vassilis Kontaxakis; Loukianos Rallidis; Nikolaos Tentolouris; Anastasia Thanopoulou; Klea Lamnissou; George Dedoussis; Eleftheria Zeggini; Panagiotis Deloukas
Journal:  PLoS One       Date:  2017-11-10       Impact factor: 3.240

7.  GWAS of 126,559 individuals identifies genetic variants associated with educational attainment.

Authors:  Cornelius A Rietveld; Sarah E Medland; Jaime Derringer; Jian Yang; Tõnu Esko; Nicolas W Martin; Harm-Jan Westra; Konstantin Shakhbazov; Abdel Abdellaoui; Arpana Agrawal; Eva Albrecht; Behrooz Z Alizadeh; Najaf Amin; John Barnard; Sebastian E Baumeister; Kelly S Benke; Lawrence F Bielak; Jeffrey A Boatman; Patricia A Boyle; Gail Davies; Christiaan de Leeuw; Niina Eklund; Daniel S Evans; Rudolf Ferhmann; Krista Fischer; Christian Gieger; Håkon K Gjessing; Sara Hägg; Jennifer R Harris; Caroline Hayward; Christina Holzapfel; Carla A Ibrahim-Verbaas; Erik Ingelsson; Bo Jacobsson; Peter K Joshi; Astanand Jugessur; Marika Kaakinen; Stavroula Kanoni; Juha Karjalainen; Ivana Kolcic; Kati Kristiansson; Zoltán Kutalik; Jari Lahti; Sang H Lee; Peng Lin; Penelope A Lind; Yongmei Liu; Kurt Lohman; Marisa Loitfelder; George McMahon; Pedro Marques Vidal; Osorio Meirelles; Lili Milani; Ronny Myhre; Marja-Liisa Nuotio; Christopher J Oldmeadow; Katja E Petrovic; Wouter J Peyrot; Ozren Polasek; Lydia Quaye; Eva Reinmaa; John P Rice; Thais S Rizzi; Helena Schmidt; Reinhold Schmidt; Albert V Smith; Jennifer A Smith; Toshiko Tanaka; Antonio Terracciano; Matthijs J H M van der Loos; Veronique Vitart; Henry Völzke; Jürgen Wellmann; Lei Yu; Wei Zhao; Jüri Allik; John R Attia; Stefania Bandinelli; François Bastardot; Jonathan Beauchamp; David A Bennett; Klaus Berger; Laura J Bierut; Dorret I Boomsma; Ute Bültmann; Harry Campbell; Christopher F Chabris; Lynn Cherkas; Mina K Chung; Francesco Cucca; Mariza de Andrade; Philip L De Jager; Jan-Emmanuel De Neve; Ian J Deary; George V Dedoussis; Panos Deloukas; Maria Dimitriou; Guðny Eiríksdóttir; Martin F Elderson; Johan G Eriksson; David M Evans; Jessica D Faul; Luigi Ferrucci; Melissa E Garcia; Henrik Grönberg; Vilmundur Guðnason; Per Hall; Juliette M Harris; Tamara B Harris; Nicholas D Hastie; Andrew C Heath; Dena G Hernandez; Wolfgang Hoffmann; Adriaan Hofman; Rolf Holle; Elizabeth G Holliday; Jouke-Jan Hottenga; William G Iacono; Thomas Illig; Marjo-Riitta Järvelin; Mika Kähönen; Jaakko Kaprio; Robert M Kirkpatrick; Matthew Kowgier; Antti Latvala; Lenore J Launer; Debbie A Lawlor; Terho Lehtimäki; Jingmei Li; Paul Lichtenstein; Peter Lichtner; David C Liewald; Pamela A Madden; Patrik K E Magnusson; Tomi E Mäkinen; Marco Masala; Matt McGue; Andres Metspalu; Andreas Mielck; Michael B Miller; Grant W Montgomery; Sutapa Mukherjee; Dale R Nyholt; Ben A Oostra; Lyle J Palmer; Aarno Palotie; Brenda W J H Penninx; Markus Perola; Patricia A Peyser; Martin Preisig; Katri Räikkönen; Olli T Raitakari; Anu Realo; Susan M Ring; Samuli Ripatti; Fernando Rivadeneira; Igor Rudan; Aldo Rustichini; Veikko Salomaa; Antti-Pekka Sarin; David Schlessinger; Rodney J Scott; Harold Snieder; Beate St Pourcain; John M Starr; Jae Hoon Sul; Ida Surakka; Rauli Svento; Alexander Teumer; Henning Tiemeier; Frank J A van Rooij; David R Van Wagoner; Erkki Vartiainen; Jorma Viikari; Peter Vollenweider; Judith M Vonk; Gérard Waeber; David R Weir; H-Erich Wichmann; Elisabeth Widen; Gonneke Willemsen; James F Wilson; Alan F Wright; Dalton Conley; George Davey-Smith; Lude Franke; Patrick J F Groenen; Albert Hofman; Magnus Johannesson; Sharon L R Kardia; Robert F Krueger; David Laibson; Nicholas G Martin; Michelle N Meyer; Danielle Posthuma; A Roy Thurik; Nicholas J Timpson; André G Uitterlinden; Cornelia M van Duijn; Peter M Visscher; Daniel J Benjamin; David Cesarini; Philipp D Koellinger
Journal:  Science       Date:  2013-05-30       Impact factor: 47.728

8.  Association of fibrinogen with severity of stable coronary artery disease in patients with type 2 diabetic mellitus.

Authors:  Li-Feng Hong; Xiao-Lin Li; Song-Hui Luo; Yuan-Lin Guo; Cheng-Gang Zhu; Ping Qing; Na-Qiong Wu; Jian-Jun Li
Journal:  Dis Markers       Date:  2014-04-06       Impact factor: 3.434

9.  Zinc Finger 259 Gene Polymorphism rs964184 is Associated with Serum Triglyceride Levels and Metabolic Syndrome.

Authors:  Seyed Reza Mirhafez; Amir Avan; Alireza Pasdar; Sara Khatamianfar; Leila Hosseinzadeh; Shiva Ganjali; Ali Movahedi; Maryam Pirhoushiaran; Valentina Gómez Mellado; Domenico Rosace; Anne van Krieken; Mahdi Nohtani; Gordon A Ferns; Majid Ghayour-Mobarhan
Journal:  Int J Mol Cell Med       Date:  2016

10.  Potential Interplay between Dietary Saturated Fats and Genetic Variants of the NLRP3 Inflammasome to Modulate Insulin Resistance and Diabetes Risk: Insights from a Meta-Analysis of 19 005 Individuals.

Authors:  Aoife M Murphy; Caren E Smith; Leanne M Murphy; Jack L Follis; Toshiko Tanaka; Kris Richardson; Raymond Noordam; Rozenn N Lemaitre; Mika Kähönen; Josée Dupuis; Trudy Voortman; Eirini Marouli; Dennis O Mook-Kanamori; Olli T Raitakari; Jaeyoung Hong; Abbas Dehghan; George Dedoussis; Renée de Mutsert; Terho Lehtimäki; Ching-Ti Liu; Fernando Rivadeneira; Panagiotis Deloukas; Vera Mikkilä; James B Meigs; Andre Uitterlinden; Mohammad A Ikram; Oscar H Franco; Maria Hughes; Peadar O' Gaora; José M Ordovás; Helen M Roche
Journal:  Mol Nutr Food Res       Date:  2019-09-12       Impact factor: 5.914

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