Literature DB >> 26252223

Genetic Variants Associated with Lipid Profiles in Chinese Patients with Type 2 Diabetes.

Xiaomu Kong1, Qi Zhao2, Xiaoyan Xing1, Bo Zhang1, Xuelian Zhang1, Jing Hong1, Wenying Yang1.   

Abstract

Dyslipidemia is a strong risk factor for cardiovascular disease among patients with type 2 diabetes (T2D). The aim of this study was to identify lipid-related genetic variants in T2D patients of Han Chinese ancestry. Among 4,908 Chinese T2D patients who were not taking lipid-lowering medications, single nucleotide polymorphisms (SNPs) in seven genes previously found to be associated with lipid traits in genome-wide association studies conducted in populations of European ancestry (ABCA1, GCKR, BAZ1B, TOMM40, DOCK7, HNF1A, and HNF4A) were genotyped. After adjusting for multiple covariates, SNPs in ABCA1, GCKR, BAZ1B, TOMM40, and HNF1A were identified as significantly associated with triglyceride levels in T2D patients (P < 0.05). The associations between the SNPs in ABCA1 (rs3890182), GCKR (rs780094), and BAZ1B (rs2240466) remained significant even after correction for multiple testing (P = 8.85×10(-3), 7.88×10(-7), and 2.03×10(-6), respectively). BAZ1B (rs2240466) also was associated with the total cholesterol level (P = 4.75×10(-2)). In addition, SNP rs157580 in TOMM40 was associated with the low-density lipoprotein cholesterol level (P = 6.94×10(-3)). Our findings confirm that lipid-related genetic loci are associated with lipid profiles in Chinese patients with type 2 diabetes.

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Year:  2015        PMID: 26252223      PMCID: PMC4529182          DOI: 10.1371/journal.pone.0135145

Source DB:  PubMed          Journal:  PLoS One        ISSN: 1932-6203            Impact factor:   3.240


Introduction

Dyslipidemia is a common comorbidity of type 2 diabetes (T2D) [1,2]. Substantial evidence has demonstrated that abnormal plasma lipids and lipoprotein concentrations, including elevated levels of total cholesterol (TC), triglycerides (TG), and low-density lipoprotein cholesterol (LDL-C), and decreased high-density lipoprotein cholesterol (HDL-C) contribute to the pathogenesis of atherosclerosis and related cardiovascular diseases, which are the leading causes of morbidity and mortality in T2D patients [2,3]. Although strongly influenced by smoking, diet, physical activity, and other life style factors, the lipid profile is a highly heritable trait. The heritability for the each lipid level has been found to range from 0.28 to 0.78 in twin and family studies [4]. Partly due to differences in genetic susceptibility, individuals with comparable exposure to high risk factors (including abnormal glucose levels, alcoholic consumption, and overweight status, etc.) have different lipid levels. Through genome-wide association studies (GWAS), multiple genomic loci have been reported be associated with lipid levels among general populations, mostly in Caucasians, including ABCA1 [5,6], GCKR [5,7,8,9,10,11], BAZ1B [7], TOMM40 [7], DOCK7 [7], HNF1A [12], and HNF4A [12,13,14]. However, their associations with lipid traits remained unclear among individuals with T2D. It is believed there should be greater emphasis of genetic studies in T2D patients, because the TG, TC, and LDL-C levels in these patients are much higher than average, and the HDL-C level is lower, which results in far greater than average risk of cardiovascular disease. Moreover, it is also speculated that lipid-related genetic loci may contribute to the pathogenesis of T2D and the maintenance of the glycemic homeostasis. For example, rs780094 in the intron region of GCKR was found to be related to both fasting glucose and TG in an opposing manner [9]. Therefore, it is important to examine the associations of established genetic loci with lipid profiles in T2D patients as well as to explore their contributions to glycemic-related traits. In the present study, we genotyped single nucleotide polymorphisms (SNPs) from established lipid-related genomic loci and examined for their association with fasting TG, TC, LDL-C, and HDL-C levels as well as glycemic traits, in a large sample of T2D patients who were not taking lipid-lowering medications from the Chinese National Diabetes and Metabolic Disorders Study (DMS) conducted in 2007–2008 [15].

Methods

Ethics statement

The study protocol was approved by the Ethics Committee of the China-Japan Friendship Hospital in Beijing and was conducted in accordance with the Helsinki Declaration II. Written informed consent was obtained from all participants before data collection.

Study participants

All of the study participants were included in the DMS [15]. T2D was defined using the 1999 World Health Organization (WHO) criteria, including fasting plasma glucose (FPG) ≥ 7.0 mmol/l, 2-h oral glucose tolerance test (OGTT) plasma glucose ≥ 11.1 mmol/l, or a self-reported history of T2D. A total of 4,908 T2D patients, who were not taking lipid-lowering medicine, including statins, fibrates, nicotinic acids, and traditional Chinese medicines, were included in the current analysis. Of these 4,908 T2D patients, 2,646 were newly diagnosed in the DMS study.

Clinical measurements and laboratory methods

Body weight, height, waist circumference (WC), and hip circumference (HC) were measured using standard methods, and body mass index (BMI) was calculated as weight/height2 (kg/m2). Each participant completed a standard 75-g OGTT after overnight fasting. Blood samples were drawn at 0 minute, 30 minutes, and 2 hours after OGTT for measurement of plasma glucose and serum insulin concentrations. Serum insulin was measured by a double-antibody radioimmunoassay. The homeostasis model assessment for β-cell function (HOMA-B) and insulinogenic indices were calculated to estimate β-cell function, and the homeostasis model assessment for insulin resistance (HOMA-IR) and Matsuda index (ISIm) were used to assess insulin resistance. The formulas were as follows:

Blood lipid measurements and definitions

Fasting plasma levels of TG, TC, HDL-C, and LDL-C were measured using an automatic biochemical analyzer (Olympus, Tokyo, Japan) according to standard methods. Abnormal lipid profiles were defined using the clinical criteria according to the Chinese Guidelines on Prevention and Treatment of Dyslipidemia in Adults (2007) [16]. The cut-off values for abnormal lipid profiles were: TG ≥ 150 mg/dl (1.70 mmol/l), HDL-C < 40 mg/dl (1.04 mmol/l), LDL-C ≥ 130 mg/dl (3.37 mmol/l), and TC ≥ 200mg/dl (5.18 mmol/l).

SNP selection and genotyping

We initially searched the GWAS-validated lipid-related genomic loci in the general populations of European ancestry published in and before 2010. Among them, we eventually picked nine novel genomic loci. The associations of these loci with lipid levels and glycemic traits in the Chinese population, especially in patients with T2D, were still unclear. These genomic loci either showed associations with T2D or cardiovascular diseases in Caucasians, or had critical biological function in lipid metabolism or pancreatic β-cells. Therefore, we speculated that these genomic loci could have larger effect on lipid level and cardiovascular complications in T2D patients. Index SNP of each lipid-related genomic loci were selected and genotyped, including rs3890182 in ABCA1, rs10889353 in DOCK7, rs157580 in TOMM40, rs780094 in GCKR, rs2650000 near HNF1A, rs1800961 in HNF4A, rs2228671 in LDLR, rs2240466 in BAZ1B, and rs28927680 in BUD13 [5,6,7,8,9,10,11,12,13,14,17]. Genomic DNA samples were isolated from the peripheral blood using a DNA extraction kit. Genotyping was conducted using Illumina GoldenGate Indexing assays (Illumina Inc., San Diego, CA, USA) according to the manufacturer’s instructions. SNPs with a minor allele frequency (MAF) < 1% (rs2228671 in LDLR and rs28927680 in BUD13) were excluded from the analysis. The average call rate for the remaining seven SNPs was 98.19%. The concordance rate based on 229 genotyping duplicates was 100%. Relevant information for the seven SNPs is listed in S1 Table.

Statistical analyses

The Hardy—Weinberg equilibrium test was performed for each SNP using a χ2 test in the study population. Non-Gaussian distributed quantitative traits were natural logarithmically transformed to normal distributions. An additive genetic model was assumed. A linear regression model was used to test the associations between SNPs and quantitative lipid traits (TG, TC, HDL-C, and LDL-C levels). Two multivariable models were tested: in model 1, age and sex were adjusted as co-variables; and in model 2, age, sex, and BMI were adjusted. To eliminate the potential influence of hypoglycemic treatments on lipid levels, we then conducted a sensitivity analysis by only including the newly diagnosed T2D patients from the present population. Further, participants were divided into groups using the cut-off criteria for abnormal lipid levels reported by the Chinese Guidelines on Prevention and Treatment of Dyslipidemia in Adults (2007) [16]. A logistic regression model was used to test the contribution of the risk allele of SNPs to abnormal lipid levels. In addition to the single SNP test, we also examined the joint effects of TG-associated SNPs on the risk of an abnormal TG level (TG ≥ 150 mg/dl). A genetic risk score for TG-associated SNPs was constructed using the sum of the risk alleles for elevated TG in the single marker analyses in each individual without missing data. The risk for an abnormal TG level was compared among quartiles of the genetic risk score. The Bonferroni method was used to correct for multiple testing. Statistical analyses were performed using SAS (version 9.3; SAS Institute, Cary, NC, USA) and PLINK software (v1.05; http://pngu.mgh.harvard.edu/purcell/plink/).

Results

The clinical characteristics of the T2D patients, including newly diagnosed patients, who were not taking a lipid-lowering medication, are shown in Table 1. All of the seven analyzed SNPs adhered to Hardy—Weinberg equilibrium in the study population (S1 Table). The MAFs of the genotyped SNPs in the present study were close to those reported for a Han Chinese population from Beijing in the HapMap project (S1 Table).
Table 1

Clinical characteristics of the study population.

TraitType 2 diabetes patientsNewly diagnosed type 2 diabetes patients
N 4,9082,646
Male, % 2,144, 43.68%1,160, 43.84%
Age, years 55.00 [47.00, 64.00]56.00 [47.00, 64.00]
Weight, kg 66.00 [59.00, 75.00]66.50 [59.00, 75.00]
BMI, kg/m 2 25.56 [23.37, 28.08]25.78 [23.53, 28.31]
WC, cm 88.00 [81.00, 95.00]88.00 [82.00, 95.00]
Fasting plasma glucose, mmol/l 7.35 [6.23, 9.00]7.32 [6.20, 8.95]
30-min OGTT glucose, mmol/l 11.96 [9.90, 14.32]12.01 [9.91, 14.38]
2-h OGTT glucose, mmol/l 13.40 [11.24, 17.02]13.21 [11.25, 16.80]
Fasting serum insulin, mU/l 8.64 [6.03, 12.47]8.66 [6.02, 12.50]
30-min OGTT insulin, mU/l 20.07 [11.48, 36.53]20.81 [11.84, 37.01]
2-h OGTT insulin, mU/l 31.56 [18.30, 59.01]32.54 [18.46, 59.07]
HOMA-B (%) 46.41 [27.66, 76.57]46.66 [28.57, 76.95]
Insulinogenic index 2.30 [0.71, 5.50]2.38 [0.81, 5.62]
HOMA-IR 2.97 [1.92, 4.54]2.96 [1.89, 4.51]
ISIm 4.27 [2.87, 6.29]4.27 [2.85, 6.39]
Triglycerides, mg/dl 142.56 [100.94,210.74]143.44 [100.94,211.62]
Total cholesterol, mg/dl 195.65 [169.75,221.95]196.43 [170.52,222.33]
HDL-C, mg/dl 47.56 [40.60, 56.45]47.95 [40.99, 56.45]
LDL-C, mg/dl 117.55 [96.67,139.20]117.93 [96.67,139.20]

Abbreviations: BMI, body mass index; HDL-C, high-density lipoprotein cholesterol; HOMA-B, the homeostasis model assessment for β-cell function; HOMA-IR, the homeostasis model assessment for insulin resistance; LDL-C, low-density lipoprotein cholesterol; OGTT, oral glucose tolerance test; ISIm, Matsuda index; WC, waist circumference. Data are shown as median (interquartile range) or %.

Abbreviations: BMI, body mass index; HDL-C, high-density lipoprotein cholesterol; HOMA-B, the homeostasis model assessment for β-cell function; HOMA-IR, the homeostasis model assessment for insulin resistance; LDL-C, low-density lipoprotein cholesterol; OGTT, oral glucose tolerance test; ISIm, Matsuda index; WC, waist circumference. Data are shown as median (interquartile range) or %.

Associations of SNPs with lipid profiles in T2D patients of Chinese ancestry

As shown in Table 2, we identified the G allele of rs3890182 in ABCA1, the A allele of rs157580 in TOMM40, the A allele of rs780094 in GCKR, the T allele of rs2650000 near HNF1A, and the C allele of rs2240466 in BAZ1B as significantly associated with elevated TG levels independent of BMI (P = 7.88×10−7 to 4.23×10−2). The associations of ABCA1, GCKR, and BAZ1B with the TG level were significant even after correction for multiple testing using the Bonferroni method (P < 7.14×10−3). We also found that the A allele of rs780094 in GCKR was associated with an elevated TC level (P = 3.50×10−2). The C allele of rs2240466 in BAZ1B showed nominal association with an elevated TC level after adjustment for BMI (P = 4.75×10−2). The G allele of rs157580 in TOMM40 was associated with the LDL-C level (P = 7.53×10−3), and the association retained significance after adjustment for BMI (P = 6.93×10−3). No significant effects of these SNPs on the HDL-C level were observed in the current study. When we examined the associations of SNPs and lipid levels in newly diagnosed T2D patients to eliminate the effect of glucose-lowering treatment, the associations of ABCA1, TOMM40, GCKR, and BAZ1B with TG levels were confirmed (S2 Table).
Table 2

Associations between SNPs and lipid levels among Chinese T2D patients not taking a lipid-lowering medication.

TraitSNPGeneChr.Major/minor alleleModel 1Model 2
β (SE) P β (SE) P
TG rs3890182 ABCA1 9G/A-0.029 (0.011) 5.57×10 −3 -0.027 (0.010) 8.85×10 −3
rs10889353 DOCK7 1A/C-0.008 (0.007)2.42×10−1 -0.007 (0.007)3.06×10−1
rs157580 TOMM40 19G/A0.013 (0.005) 1.38×10 −2 0.013 (0.005) 1.07×10 −2
rs780094 GCKR 2A/G-0.025 (0.005) 1.15×10 −6 -0.025 (0.005) 7.88×10 −7
rs2650000 HNF1A 12G/T0.010 (0.005) 4.23×10 −2 0.010 (0.005) 3.85×10 −2
rs1800961 HNF4A 20C/T0.004 (0.019)8.32×10−1 0.004 (0.018)8.21×10−1
rs2240466 BAZ1B 7C/T-0.031 (0.008) 4.19×10 −5 -0.035 (0.007) 2.03×10 −6
TC rs3890182 ABCA1 9G/A-0.005 (0.004)2.04×10−1 -0.004 (0.004)2.31×10−1
rs10889353 DOCK7 1A/C-0.000 (0.003)9.56×10−1 0.000 (0.002)9.50×10−1
rs157580 TOMM40 19G/A-0.004 (0.002)5.48×10−2 -0.004 (0.002)5.80×10−2
rs780094 GCKR 2A/G-0.004 (0.002) 3.50×10 −2 -0.003 (0.002)6.15×10−2
rs2650000 HNF1A 12G/T0.001 (0.002)5.38×10−1 0.001 (0.002)6.52×10−1
rs1800961 HNF4A 20C/T-0.009 (0.007)1.88×10−1 -0.009 (0.007)1.81×10−1
rs2240466 BAZ1B 7C/T-0.005 (0.003)9.22×10−2 -0.005 (0.003) 4.75×10 −2
HDL-C rs3890182 ABCA1 9G/A-0.001 (0.005)8.01×10−1 -0.002 (0.005)7.23×10−1
rs10889353 DOCK7 1A/C-0.005 (0.003)1.26×10−1 -0.005 (0.003)1.01×10−1
rs157580 TOMM40 19G/A0.000 (0.002)9.25×10−1 0.000 (0.002)9.31×10−1
rs780094 GCKR 2A/G-0.002 (0.002)4.62×10−1 -0.002 (0.002)4.64×10−1
rs2650000 HNF1A 12G/T-0.002 (0.002)4.63×10−1 -0.002 (0.002)4.68×10−1
rs1800961 HNF4A 20C/T-0.015 (0.009)7.39×10−2 -0.015 (0.008)7.13×10−2
rs2240466 BAZ1B 7C/T-0.000 (0.003)9.15×10−1 0.001 (0.003)8.14×10−1
LDL-C rs3890182 ABCA1 9G/A-0.008 (0.007)2.53×10−1 -0.007 (0.007)2.98×10−1
rs10889353 DOCK7 1A/C0.005 (0.004)2.78×10−1 0.005 (0.004)2.40×10−1
rs157580 TOMM40 19G/A-0.009 (0.003) 7.53×10 −3 -0.009 (0.003) 6.94×10 −3
rs780094 GCKR 2A/G-0.001 (0.003)8.15×10−1 -0.001 (0.003)7.97×10−1
rs2650000 HNF1A 12G/T-0.000 (0.003)9.97×10−1 -0.000 (0.003)9.98×10−1
rs1800961 HNF4A 20C/T-0.019 (0.012)9.62×10−2 -0.019 (0.012)9.44×10−2
rs2240466 BAZ1B 7C/T0.001 (0.005)8.54×10−1 -0.000 (0.005)9.66×10−1

Abbreviations: BMI, body mass index; Chr, chromosome; HDL-C, high-density lipoprotein cholesterol; LDL-C, low-density lipoprotein cholesterol; SE, standard error; SNP, single nucleotide polymorphism; TC, total cholesterol; TG, triglycerides. All non-Gaussian distributed quantitative traits were natural logarithmically transformed to normalize distributions. β value and SE are reported for the minor allele of each SNP using linear regression under an additive assumption using the following models: model 1, adjusted for age and sex; model 2, adjusted for age, sex, and BMI. P values <0.05 are shown in bold.

Abbreviations: BMI, body mass index; Chr, chromosome; HDL-C, high-density lipoprotein cholesterol; LDL-C, low-density lipoprotein cholesterol; SE, standard error; SNP, single nucleotide polymorphism; TC, total cholesterol; TG, triglycerides. All non-Gaussian distributed quantitative traits were natural logarithmically transformed to normalize distributions. β value and SE are reported for the minor allele of each SNP using linear regression under an additive assumption using the following models: model 1, adjusted for age and sex; model 2, adjusted for age, sex, and BMI. P values <0.05 are shown in bold. We further defined abnormal lipid levels using the cut-off criteria reported by the Chinese Guidelines on Prevention and Treatment of Dyslipidemia in Adults (2007). As shown in Table 3, SNPs in ABCA1, TOMM40, GCKR, and BAZ1B were significantly associated with an abnormal TG level (defined as TG ≥ 150 mg/dl [16]). SNPs in GCKR and BAZ1B were found to be significantly associated with an abnormal TC level (defined as TC ≥ 200 mg/dl [16]).
Table 3

Associations between SNPs and hyperlipidemia among Chinese T2D patients not taking a lipid-lowering medication.

Type of hyperlipidemiaSNPGeneChr.Major/minor alleleModel 1Model 2
OR (95%CI) P OR (95%CI) P
TG ≥ 150 mg/dl rs3890182 ABCA1 9G/A0.80 (0.68, 0.95) 1.13×10 −2 0.81 (0.68, 0.96) 1.57×10 −2
TG ≥ 150 mg/dl rs157580 TOMM40 19G/A1.12 (1.03, 1.21) 7.56×10 −3 1.13 (1.04, 1.23) 3.58×10 −3
TG ≥ 150 mg/dl rs780094 GCKR 2A/G0.85 (0.79, 0.93) 1.28×10 −4 0.86 (0.79, 0.93) 3.04×10 −4
TG ≥ 150 mg/dl rs2240466 BAZ1B 7C/T0.81 (0.72, 0.92) 6.84×10 −4 0.78 (0.69, 0.88) 7.97×10 −5
TC ≥ 200 mg/dl rs780094 GCKR 2A/G0.92 (0.85, 1.00) 4.76×10 −2 0.93 (0.85, 1.00)6.38×10−2
TC ≥ 200 mg/dl rs2240466 BAZ1B 7C/T0.85 (0.75, 0.96) 7.00×10 −3 0.84 (0.74, 0.94) 3.85×10 −3

Abbreviations: BMI, body mass index; Chr, chromosome; CI, confidence interval; OR, odds ratio; SNP, single nucleotide polymorphism; TC, total cholesterol; TG, triglycerides. ORs and 95% CIs were determined for the minor allele of each SNP using logistic regression under an additive assumption using the following models: model 1, adjusted for age and sex; model 2, adjusted for age, sex, and BMI. Associations with P values <0.05 are shown in the table and denoted in bold.

Abbreviations: BMI, body mass index; Chr, chromosome; CI, confidence interval; OR, odds ratio; SNP, single nucleotide polymorphism; TC, total cholesterol; TG, triglycerides. ORs and 95% CIs were determined for the minor allele of each SNP using logistic regression under an additive assumption using the following models: model 1, adjusted for age and sex; model 2, adjusted for age, sex, and BMI. Associations with P values <0.05 are shown in the table and denoted in bold.

Joint analysis of TG-associated SNPs on TG levels in T2D patients of Chinese ancestry

Joint effect analysis showed that the genetic risk scores for TG-associated SNPs were significantly associated with the TG level, as well as the risk of an abnormal TG level (TG ≥ 150 mg/dl; Table 4). Individuals with more risk alleles had an elevated TG level (Q1~Q4: 129.27 (92.09, 186.83) mg/dl, 142.56 (99.17, 204.54) mg/dl, 149.64 (107.14, 221.36) mg/dl, and 147.87 (103.60, 223.13) mg/dl). Compared to the lowest quartile of the genetic risk score, the ORs (95% CIs) for greater risk of an abnormal TG were 1.27 (1.08, 1.49), 1.49 (1.27, 1.75), and 1.45 (1.22, 1.73) for the other three quartiles (P for trend = 5.17×10−8). The association remained significant after additional adjustment for BMI (P for trend = 3.48×10−8).
Table 4

Joint effects of TG-related risk alleles on TG level and the risk for a high TG level (≥ 150 mg/dl) in T2D patients.

QuartileTG, mg/dlTG ≥ 150 mg/dl
OR (95% CI) c OR (95% CI) d
Q1 129.27 (92.09, 186.83)11
Q2 142.56 (99.17, 204.54)1.27 (1.08,1.49)1.30 (1.10,1.54)
P = 4.34×10 −3 P = 1.89×10 −3
Q3 149.64 (107.14, 221.36)1.49 (1.27,1.75)1.51 (1.28,1.78)
P = 1.36×10 −6 P = 1.08×10 −6
Q4 147.87 (103.60, 223.13)1.45 (1.22,1.73)1.49 (1.25,1.77)
P = 2.10×10 −5 P = 1.03×10 −5
P a = 1.39×10 −12 P trend = 5.17×10 −8 P trend = 3.48×10 −8
P b = 1.71×10 −13

Abbreviations: BMI, body mass index; CI, confidence interval; OR, odds ratio; Q, quartile; TG, triglycerides. All non-Gaussian distributed quantitative traits were natural logarithmically transformed to normalize distributions.

a, P value calculated for genotype risk score for TG level using linear regression adjusted for age and sex.

b, P value calculated for genotype risk score for TG level using linear regression adjusted for age, sex, and BMI.

c, OR and 95% CI are reported for genotype risk score quartiles for a high TG level (≥ 150 mg/dl) using logistic regression adjusted for age and sex.

d, OR and 95% CI are reported for genotype risk score quartiles for a high TG level (≥ 150 mg/dl) using logistic regression adjusted for age, sex, and BMI.

P values <0.05 are shown in bold.

Abbreviations: BMI, body mass index; CI, confidence interval; OR, odds ratio; Q, quartile; TG, triglycerides. All non-Gaussian distributed quantitative traits were natural logarithmically transformed to normalize distributions. a, P value calculated for genotype risk score for TG level using linear regression adjusted for age and sex. b, P value calculated for genotype risk score for TG level using linear regression adjusted for age, sex, and BMI. c, OR and 95% CI are reported for genotype risk score quartiles for a high TG level (≥ 150 mg/dl) using logistic regression adjusted for age and sex. d, OR and 95% CI are reported for genotype risk score quartiles for a high TG level (≥ 150 mg/dl) using logistic regression adjusted for age, sex, and BMI. P values <0.05 are shown in bold.

Association of SNPs and glycemic-related traits in T2D patients of Chinese ancestry

As shown in Table 5, the T allele of rs2240466 in BAZ1B was associated with increased body weight and BMI in T2D patients. The G allele of rs780094 in GCKR was associated with increased fasting plasma glucose and HOMA-IR (assessment for insulin resistance). The T allele of rs1800961 in HNF4A was associated with increased FPG and 2-h OGTT glucose and decreased 30-min OGTT insulin and HOMA-B (assessment for β-cell function). When tested in newly diagnosed T2D patients, the association of FPG and GCKR as well as the association of HOMA-B and HNF4A were confirmed (S3 Table).
Table 5

Association between SNPs and obesity and glycemic-related traits among Chinese T2D patients not taking a lipid-lowering medication.

TraitsSNPGeneChr.Minor alleleModel 1Model 2
β (SE) P β (SE) P
Body weight rs2240466 BAZ1B 7T0.005 (0.002) 2.22×10 −2 / /
BMI rs2240466 BAZ1B 7T0.005 (0.002) 6.31×10 −3 / /
FPG rs780094 GCKR 2G0.006 (0.003) 2.89×10 −2 0.006 (0.003) 2.88×10 −2
FPG rs1800961 HNF4A 20T0.026 (0.010) 8.89×10 −3 0.026 (0.010) 8.86×10 −3
2-h OGTT glucose rs1800961 HNF4A 20T0.027 (0.012) 2.99×10 −2 0.027 (0.012) 2.97×10 −2
30-min OGTT insulin rs1800961 HNF4A 20T-0.059 (0.030)5.06×10−2 -0.061 (0.029) 3.90×10 −2
HOMA-B rs1800961 HNF4A 20T-0.070 (0.029) 1.43×10 −2 -0.073 (0.028) 1.00×10 −2
HOMA-IR rs780094 GCKR 2G0.012 (0.006)5.73×10−2 0.014 (0.006) 2.93×10 −2

Abbreviations: BMI, body mass index; Chr, chromosome; FPG, fasting plasma glucose; HOMA-B, the homeostasis model assessment for β-cell function; HOMA-IR, the homeostasis model assessment for insulin resistance; OGTT, oral glucose tolerance test; SE, standard error; SNP, single nucleotide polymorphism. All non-Gaussian distributed quantitative traits were natural logarithmically transformed to normalize distributions. β values were calculated for the minor allele using linear regression under an additive assumption using the following models: model 1, adjusted for age and sex; model 2, adjusted for age, sex, and BMI. Associations with P value <0.05 are shown in the table and denoted in bold.

Abbreviations: BMI, body mass index; Chr, chromosome; FPG, fasting plasma glucose; HOMA-B, the homeostasis model assessment for β-cell function; HOMA-IR, the homeostasis model assessment for insulin resistance; OGTT, oral glucose tolerance test; SE, standard error; SNP, single nucleotide polymorphism. All non-Gaussian distributed quantitative traits were natural logarithmically transformed to normalize distributions. β values were calculated for the minor allele using linear regression under an additive assumption using the following models: model 1, adjusted for age and sex; model 2, adjusted for age, sex, and BMI. Associations with P value <0.05 are shown in the table and denoted in bold.

Discussion

The present study examined the associations of seven SNPs in previously GWAS-identified lipid-related genomic loci in general populations with plasma lipid levels in Chinese T2D patients. Our results showed that five SNPs from GCKR, BAZ1B, ABCA1, TOMM40, and HNF1A were significantly associated with the fasting TG level individually and jointly. In addition, SNPs in GCKR and BAZ1B showed nominal associations with the fasting TC level and the SNP in TOMM40 was associated with the fasting LDL-C level in T2D patients. Dyslipidemia is a particularly common phenotype in diabetes patients that is characterized by hypertriglyceridemia, reduced HDL-C, and increased LDL-C [1,2]. In addition, epidemic findings have showed that the spectrum of dyslipidemia in diabetes patients can include all of the various types of dyslipidemia identified in general populations. However, compared to the general population, patients with diabetes have significantly elevated TG, TC, and LDL-C levels and a reduced HDL-C level. The greater risk for diabetes complications can be induced by lipid disorders under hyperglycemic condition. Therefore, it is worthwhile to study the mechanism underlying the pathogenesis of dyslipidemia in T2D. Genetic studies have demonstrated that both diabetes and lipid levels are highly heritable phenotypes. In recent decades, a multitude of susceptible genetic loci have been shown to be associated with lipid levels in the general population [5,6,7,8,9,10,11,12,13,14,17]. However, these findings need to be replicated in T2D patients. Moreover, due to ethnic discrepancies and limited sample sizes in previous studies, these findings need to be replicated in larger populations of different ethnicities. The DMS is a large multi-center nation survey of diabetes and metabolic disorders conducted in mainland China, and the T2D patients included in the present study represent well the Chinese Han population [15]. GCKR, which encodes the glucokinase regulator, showed the strongest association with the TG level. The glucokinase regulator acts as inhibitor of glucokinase in both liver and pancreatic islet cells [18]. Rs780094 in the intron of GCKR has been established to contribute to various metabolic traits by GWAS conducted in Caucasians, including levels of TG [5,7,8,11], LDL-C [10], fasting glucose and insulin [17,19], uric acid [20], etc. Moreover, it was shown to be associated with TG levels in a GWAS conducted in African Americans [8]. Previous studies including one by our group [21] have established its association with FPG levels in Chinese individuals without diabetes. The current study successfully confirmed that the A allele of rs780094 was associated with an elevated fasting TG level and lower FPG level in a Chinese population of diabetes patients, which is consistent with the findings of previous studies [22,23,24,25,26]. Moreover, the A allele showed a marginal association with an elevated TC level and better insulin sensitivity. These results confirm that GCKR plays a critical role in both glucose and lipid metabolism. The second strongest association was found between rs2240466 in BAZ1B and the TG level. BAZ1B, which is also known as Williams Syndrome Transcription Factor (WSTF), is deleted in WilliamsBeuren syndrome [27]. It encodes a member of the bromodomain protein family, which has functions including chromatin assembly, transcription, and repair [27]. Several variants in this gene region have been shown to be related to the TG level, including the C allele of rs2240466, which contributes to an elevated TG level in Caucasians [7]. The current study confirmed the association between the C allele of rs2240466 and an elevated TG level in our Chinese population, and this association was in the same direction as that observed in Caucasians. Moreover, the present study also showed that C allele carriers exhibited a higher TC level and a lower BMI. These findings suggest the involvement of BAZ1B in lipid metabolism. However, the biological function of BAZ1B in lipid metabolism remains unclear and requires further elucidation. ABCA1 is the coding gene for ATP-binding cassette transporter A1, which functions as a cholesterol transporter and has been suggested to mediate the efflux of cholesterol from cells in the presence of HDL and apolipoprotein A-1 [28]. Homozygous mutations in ABCA1 cause Tangier disease, a rare HDL-deficiency syndrome [29]. Rs3890182, a common variant located in the intron of ABCA1, has been shown to be associated with HDL-C levels in Caucasians using a GWAS approach [5,6]. In our study, A allele carriers of rs3890182 had lower TG levels, but no significant association between HDL-C and rs3890182 was identified. Rs157580 is located in the intron of the TOMM40-APOE genetic loci. TOMM40 encodes the channel-forming subunit of the transclocase of the mitochondrial outer membrane complex, which is essential for protein import into mitochondria [30]. APOE encodes apolipoprotein E (apoE), which mediates the clearance of different lipoproteins from the circulation [31]. ApoE deficiency has been reported to cause significant lipid disorders and cardiovascular disease [31]. Previous GWASs have revealed that rs157580 is associated with Alzheimer’s disease [32] as well as HDL-C and LDL-C levels in Caucasians [7]. In the current study, we observed that the A allele of rs157580 was significantly associated with decreased LDL-C levels, which is consistent with the direction of the association observed in Caucasians. We also found that this SNP was significantly associated with TG and TC levels, consistent with the findings of a previous study conducted in a Chinese population [33]. However, we did not observe any association between this SNP and HDL-C in our study population. Rs2650000 was mapped to the intergenic region of RPL12P33-HNF1A-AS1 and was found to be related to LDL-C levels in Caucasians [12]. In this genetic locus, HNF1A encodes the hepatocyte nuclear factor-1A, which is crucial for pancreatic β cell function [34,35]. Mutations in HNF1A were shown to lead to maturity onset diabetes of the young (MODY), which is known as MODY3 [34,35]. In the present study, the A allele of rs2650000 showed a marginal association with elevated TG levels, but no association between this SNP and the LDL-C level was observed. Another study conducted in a Chinese population reported similar results [33]. These findings need to be further confirmed. In addition, considering that dyslipidemia is a common phenotype in diabetes patients and that the baseline TG level is an independent predictive risk factor for the incidence of T2D in Chinese individuals [1], we speculated that diabetes and dyslipidemia could share common genetic factors. For example, the G allele of rs780094 in GCKR was found to be related to an elevated FPG level and a reduced TG level at the genome-wide level, and these results have been well replicated in various populations, including in the control population of the DMS [21]. Therefore, we examined the association of these SNPs and the risk for T2D in the DMS population [36,37], which consisted of 5,338 T2D cases and 4,663 controls, but no significant association was identified (S4 Table). However, we did confirm the association between GCKR and the FPG level in T2D patients. We also identified the association between HNF4A and the β-cell function index HOMA-B. These associations retained significance in the sensitivity analysis of only the newly diagnosed T2D patients. The HNF4A coding product, hepatocyte nuclear factor-4, is a nuclear transcription factor that plays essential roles in the development of the liver, kidney, and intestines [34,35]. It is also expressed in pancreatic β-cells and is crucial for the development and function of β-cells [34,35]. Mutations in HNF4A were found to lead to MODY1 [34,35]. Rs1800961 is a missense variation located in the coding region of HNF4A, which was previously identified to be related to TC and HDL-C levels [12,13,14]. In addition to the findings described above, BAZ1B, GCKR, HNF4A, and DOCK7 were associated with some glycemic-related traits including BMI and glucose and insulin levels. The above findings suggest that lipid-related genetic variants can contribute to glycemic regulation. The present study has several strengths. First, the study population was a genetically homogeneous Chinese Han population with a large sample size. Second, the study examined the association between lipid-related SNPs and lipid profiles in T2D patients who were not taking a lipid-lowering medication. Moreover, a sensitive analysis was conducted in newly diagnosed patients to exclude the effects of glucose-lowering therapy. Therefore, the results could provide good replication in Chinese patients, and good estimates of the effects of genetic loci on lipid levels in T2D patients. Third, we explored whether lipid-related SNPs could contribute to glycemic traits or the risk for T2D. However, our study had some limitations. First, only seven index SNPs in GWAS-validated genomic loci were investigated. Thus, the association between the other genomic loci and lipid levels in this population should be examined in the future study. Second, only one SNP from each genetic locus was analyzed, which might lead to false-negative findings due to the lack of coverage of genomic regions of interest. Third, further studies may be still necessary to replicate our study findings in Chinese T2D patients. In addition, although we identified genetic variants significantly associated with the lipid profile in T2D patients, the mechanisms of these genetic variants in the regulation of lipid levels are not clear. Further studies investigating the functions of these genetic variants significantly associated with lipid profiles are warranted in the future. In conclusion, the present study investigated the associations between several lipid-related genetic variants and lipid profiles in a Chinese population of T2D patients. Among the tested SNPs, genetic variants in GCKR, BAZ1B, ABCA1, TOMM40, and nearby HNF1A were associated with the TG level. Genetic variants in GCKR and BAZ1B showed a nominal association with the TC level, and a genetic variant in TOMM40 contributed to the LDL-C level. The present study improves our understanding of lipid regulation in T2D in Chinese patients. In addition, it provides evidence that lipid-related genetic loci may affect glycemic metabolism.

Hardy—Weinberg equilibrium and information for genotyped SNPs.

Abbreviations: BMI, body mass index; Chr, chromosome; EU, European; HB, Han Chinese; HDL-C, high-density lipoprotein cholesterol; LDL-C, low-density lipoprotein cholesterol; MAF, minor allele frequency; SNP, single nucleotide polymorphism; TC, total cholesterol; TG, triglycerides. Genotype distributions are shown as the counts of three genotypes (bb, Bb, BB). b, minor allele; B, major allele. (DOCX) Click here for additional data file.

Associations between SNPs and lipid levels among newly diagnosed Chinese T2D patients not taking a lipid-lowering medication.

Abbreviations: BMI, body mass index; Chr, chromosome; HDL-C, high-density lipoprotein cholesterol; LDL-C, low-density lipoprotein cholesterol; SE, standard error; SNP, single nucleotide polymorphism; TC, total cholesterol; TG, triglycerides. All non-Gaussian distributed quantitative traits were natural logarithmically transformed to normalize distributions. β value and SE were determined for the minor allele of each SNP using linear regression under an additive assumption using the following models: model 1, adjusted for age and sex; model 2, adjusted for age, sex, and BMI. P values <0.05 are shown in bold. (DOCX) Click here for additional data file.

Associations between SNPs and glycemic-related traits among newly diagnosed Chinese T2D patients not taking a lipid-lowering medication.

Abbreviations: BMI, body mass index; Chr, chromosome; HOMA-B, the homeostasis model assessment for β-cell function; HOMA-IR, the homeostasis model assessment for insulin resistance; OGTT, oral glucose tolerance test; SE, standard error; SNP, single nucleotide polymorphism. All non-Gaussian distributed quantitative traits were natural logarithmically transformed to normalize distributions. β values were calculated for the minor allele using linear regression under an additive assumption using the following models: model 1, adjusted for age and sex; model 2, adjusted for age, sex, and BMI. Associations with a P value <0.05 are shown in the table and denoted in bold. (DOCX) Click here for additional data file.

Associations between lipid-related SNPs and T2D in DMS patients.

Abbreviations: BMI, body mass index; Chr, chromosome; DMS, Chinese National Diabetes and Metabolic Disorders Study; CI, confidence interval; OR, odds ratio; SNP, single nucleotide polymorphism. The DMS population consisted of 5,338 T2D patients and 4,663 controls as previously described [36,37]. ORs and 95% CIs were calculated for the minor allele of each SNP using logistic regression under an additive assumption using the following models: model 1, adjusted for age and sex; model 2, adjusted for age, sex, and BMI. (DOCX) Click here for additional data file.
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Review 1.  Mutations in the human genes encoding the transcription factors of the hepatocyte nuclear factor (HNF)1 and HNF4 families: functional and pathological consequences.

Authors:  G U Ryffel
Journal:  J Mol Endocrinol       Date:  2001-08       Impact factor: 5.098

2.  Prevalence of cardiovascular disease risk factor in the Chinese population: the 2007-2008 China National Diabetes and Metabolic Disorders Study.

Authors:  Zhao-Jun Yang; Jie Liu; Jia-Pu Ge; Li Chen; Zhi-Gang Zhao; Wen-Ying Yang
Journal:  Eur Heart J       Date:  2011-06-30       Impact factor: 29.983

3.  Genome-wide association analysis identifies loci for type 2 diabetes and triglyceride levels.

Authors:  Richa Saxena; Benjamin F Voight; Valeriya Lyssenko; Noël P Burtt; Paul I W de Bakker; Hong Chen; Jeffrey J Roix; Sekar Kathiresan; Joel N Hirschhorn; Mark J Daly; Thomas E Hughes; Leif Groop; David Altshuler; Peter Almgren; Jose C Florez; Joanne Meyer; Kristin Ardlie; Kristina Bengtsson Boström; Bo Isomaa; Guillaume Lettre; Ulf Lindblad; Helen N Lyon; Olle Melander; Christopher Newton-Cheh; Peter Nilsson; Marju Orho-Melander; Lennart Råstam; Elizabeth K Speliotes; Marja-Riitta Taskinen; Tiinamaija Tuomi; Candace Guiducci; Anna Berglund; Joyce Carlson; Lauren Gianniny; Rachel Hackett; Liselotte Hall; Johan Holmkvist; Esa Laurila; Marketa Sjögren; Maria Sterner; Aarti Surti; Margareta Svensson; Malin Svensson; Ryan Tewhey; Brendan Blumenstiel; Melissa Parkin; Matthew Defelice; Rachel Barry; Wendy Brodeur; Jody Camarata; Nancy Chia; Mary Fava; John Gibbons; Bob Handsaker; Claire Healy; Kieu Nguyen; Casey Gates; Carrie Sougnez; Diane Gage; Marcia Nizzari; Stacey B Gabriel; Gung-Wei Chirn; Qicheng Ma; Hemang Parikh; Delwood Richardson; Darrell Ricke; Shaun Purcell
Journal:  Science       Date:  2007-04-26       Impact factor: 47.728

4.  Six new loci associated with blood low-density lipoprotein cholesterol, high-density lipoprotein cholesterol or triglycerides in humans.

Authors:  Sekar Kathiresan; Olle Melander; Candace Guiducci; Aarti Surti; Noël P Burtt; Mark J Rieder; Gregory M Cooper; Charlotta Roos; Benjamin F Voight; Aki S Havulinna; Björn Wahlstrand; Thomas Hedner; Dolores Corella; E Shyong Tai; Jose M Ordovas; Göran Berglund; Erkki Vartiainen; Pekka Jousilahti; Bo Hedblad; Marja-Riitta Taskinen; Christopher Newton-Cheh; Veikko Salomaa; Leena Peltonen; Leif Groop; David M Altshuler; Marju Orho-Melander
Journal:  Nat Genet       Date:  2008-01-13       Impact factor: 38.330

5.  Genome-wide characterization of shared and distinct genetic components that influence blood lipid levels in ethnically diverse human populations.

Authors:  Marc A Coram; Qing Duan; Thomas J Hoffmann; Timothy Thornton; Joshua W Knowles; Nicholas A Johnson; Heather M Ochs-Balcom; Timothy A Donlon; Lisa W Martin; Charles B Eaton; Jennifer G Robinson; Neil J Risch; Xiaofeng Zhu; Charles Kooperberg; Yun Li; Alex P Reiner; Hua Tang
Journal:  Am J Hum Genet       Date:  2013-05-30       Impact factor: 11.025

6.  Genetic variants influencing circulating lipid levels and risk of coronary artery disease.

Authors:  Dawn M Waterworth; Sally L Ricketts; Kijoung Song; Li Chen; Jing Hua Zhao; Samuli Ripatti; Yurii S Aulchenko; Weihua Zhang; Xin Yuan; Noha Lim; Jian'an Luan; Sofie Ashford; Eleanor Wheeler; Elizabeth H Young; David Hadley; John R Thompson; Peter S Braund; Toby Johnson; Maksim Struchalin; Ida Surakka; Robert Luben; Kay-Tee Khaw; Sheila A Rodwell; Ruth J F Loos; S Matthijs Boekholdt; Michael Inouye; Panagiotis Deloukas; Paul Elliott; David Schlessinger; Serena Sanna; Angelo Scuteri; Anne Jackson; Karen L Mohlke; Jaako Tuomilehto; Robert Roberts; Alexandre Stewart; Y Antero Kesäniemi; Robert W Mahley; Scott M Grundy; Wendy McArdle; Lon Cardon; Gérard Waeber; Peter Vollenweider; John C Chambers; Michael Boehnke; Gonçalo R Abecasis; Veikko Salomaa; Marjo-Riitta Järvelin; Aimo Ruokonen; Inês Barroso; Stephen E Epstein; Hakon H Hakonarson; Daniel J Rader; Muredach P Reilly; Jacqueline C M Witteman; Alistair S Hall; Nilesh J Samani; David P Strachan; Philip Barter; Cornelia M van Duijn; Jaspal S Kooner; Leena Peltonen; Nicholas J Wareham; Ruth McPherson; Vincent Mooser; Manjinder S Sandhu
Journal:  Arterioscler Thromb Vasc Biol       Date:  2010-09-23       Impact factor: 8.311

7.  Interaction effect of genetic polymorphisms in glucokinase (GCK) and glucokinase regulatory protein (GCKR) on metabolic traits in healthy Chinese adults and adolescents.

Authors:  Claudia H T Tam; Ronald C W Ma; Wing Yee So; Ying Wang; Vincent K L Lam; Soren Germer; Mitchell Martin; Juliana C N Chan; Maggie C Y Ng
Journal:  Diabetes       Date:  2008-12-10       Impact factor: 9.461

8.  Newly identified loci that influence lipid concentrations and risk of coronary artery disease.

Authors:  Cristen J Willer; Serena Sanna; Anne U Jackson; Angelo Scuteri; Lori L Bonnycastle; Robert Clarke; Simon C Heath; Nicholas J Timpson; Samer S Najjar; Heather M Stringham; James Strait; William L Duren; Andrea Maschio; Fabio Busonero; Antonella Mulas; Giuseppe Albai; Amy J Swift; Mario A Morken; Narisu Narisu; Derrick Bennett; Sarah Parish; Haiqing Shen; Pilar Galan; Pierre Meneton; Serge Hercberg; Diana Zelenika; Wei-Min Chen; Yun Li; Laura J Scott; Paul A Scheet; Jouko Sundvall; Richard M Watanabe; Ramaiah Nagaraja; Shah Ebrahim; Debbie A Lawlor; Yoav Ben-Shlomo; George Davey-Smith; Alan R Shuldiner; Rory Collins; Richard N Bergman; Manuela Uda; Jaakko Tuomilehto; Antonio Cao; Francis S Collins; Edward Lakatta; G Mark Lathrop; Michael Boehnke; David Schlessinger; Karen L Mohlke; Gonçalo R Abecasis
Journal:  Nat Genet       Date:  2008-01-13       Impact factor: 38.330

9.  Discovery and refinement of loci associated with lipid levels.

Authors:  Cristen J Willer; Ellen M Schmidt; Sebanti Sengupta; Michael Boehnke; Panos Deloukas; Sekar Kathiresan; Karen L Mohlke; Erik Ingelsson; Gonçalo R Abecasis; Gina M Peloso; Stefan Gustafsson; Stavroula Kanoni; Andrea Ganna; Jin Chen; Martin L Buchkovich; Samia Mora; Jacques S Beckmann; Jennifer L Bragg-Gresham; Hsing-Yi Chang; Ayşe Demirkan; Heleen M Den Hertog; Ron Do; Louise A Donnelly; Georg B Ehret; Tõnu Esko; Mary F Feitosa; Teresa Ferreira; Krista Fischer; Pierre Fontanillas; Ross M Fraser; Daniel F Freitag; Deepti Gurdasani; Kauko Heikkilä; Elina Hyppönen; Aaron Isaacs; Anne U Jackson; Åsa Johansson; Toby Johnson; Marika Kaakinen; Johannes Kettunen; Marcus E Kleber; Xiaohui Li; Jian'an Luan; Leo-Pekka Lyytikäinen; Patrik K E Magnusson; Massimo Mangino; Evelin Mihailov; May E Montasser; Martina Müller-Nurasyid; Ilja M Nolte; Jeffrey R O'Connell; Cameron D Palmer; Markus Perola; Ann-Kristin Petersen; Serena Sanna; Richa Saxena; Susan K Service; Sonia Shah; Dmitry Shungin; Carlo Sidore; Ci Song; Rona J Strawbridge; Ida Surakka; Toshiko Tanaka; Tanya M Teslovich; Gudmar Thorleifsson; Evita G Van den Herik; Benjamin F Voight; Kelly A Volcik; Lindsay L Waite; Andrew Wong; Ying Wu; Weihua Zhang; Devin Absher; Gershim Asiki; Inês Barroso; Latonya F Been; Jennifer L Bolton; Lori L Bonnycastle; Paolo Brambilla; Mary S Burnett; Giancarlo Cesana; Maria Dimitriou; Alex S F Doney; Angela Döring; Paul Elliott; Stephen E Epstein; Gudmundur Ingi Eyjolfsson; Bruna Gigante; Mark O Goodarzi; Harald Grallert; Martha L Gravito; Christopher J Groves; Göran Hallmans; Anna-Liisa Hartikainen; Caroline Hayward; Dena Hernandez; Andrew A Hicks; Hilma Holm; Yi-Jen Hung; Thomas Illig; Michelle R Jones; Pontiano Kaleebu; John J P Kastelein; Kay-Tee Khaw; Eric Kim; Norman Klopp; Pirjo Komulainen; Meena Kumari; Claudia Langenberg; Terho Lehtimäki; Shih-Yi Lin; Jaana Lindström; Ruth J F Loos; François Mach; Wendy L McArdle; Christa Meisinger; Braxton D Mitchell; Gabrielle Müller; Ramaiah Nagaraja; Narisu Narisu; Tuomo V M Nieminen; Rebecca N Nsubuga; Isleifur Olafsson; Ken K Ong; Aarno Palotie; Theodore Papamarkou; Cristina Pomilla; Anneli Pouta; Daniel J Rader; Muredach P Reilly; Paul M Ridker; Fernando Rivadeneira; Igor Rudan; Aimo Ruokonen; Nilesh Samani; Hubert Scharnagl; Janet Seeley; Kaisa Silander; Alena Stančáková; Kathleen Stirrups; Amy J Swift; Laurence Tiret; Andre G Uitterlinden; L Joost van Pelt; Sailaja Vedantam; Nicholas Wainwright; Cisca Wijmenga; Sarah H Wild; Gonneke Willemsen; Tom Wilsgaard; James F Wilson; Elizabeth H Young; Jing Hua Zhao; Linda S Adair; Dominique Arveiler; Themistocles L Assimes; Stefania Bandinelli; Franklyn Bennett; Murielle Bochud; Bernhard O Boehm; Dorret I Boomsma; Ingrid B Borecki; Stefan R Bornstein; Pascal Bovet; Michel Burnier; Harry Campbell; Aravinda Chakravarti; John C Chambers; Yii-Der Ida Chen; Francis S Collins; Richard S Cooper; John Danesh; George Dedoussis; Ulf de Faire; Alan B Feranil; Jean Ferrières; Luigi Ferrucci; Nelson B Freimer; Christian Gieger; Leif C Groop; Vilmundur Gudnason; Ulf Gyllensten; Anders Hamsten; Tamara B Harris; Aroon Hingorani; Joel N Hirschhorn; Albert Hofman; G Kees Hovingh; Chao Agnes Hsiung; Steve E Humphries; Steven C Hunt; Kristian Hveem; Carlos Iribarren; Marjo-Riitta Järvelin; Antti Jula; Mika Kähönen; Jaakko Kaprio; Antero Kesäniemi; Mika Kivimaki; Jaspal S Kooner; Peter J Koudstaal; Ronald M Krauss; Diana Kuh; Johanna Kuusisto; Kirsten O Kyvik; Markku Laakso; Timo A Lakka; Lars Lind; Cecilia M Lindgren; Nicholas G Martin; Winfried März; Mark I McCarthy; Colin A McKenzie; Pierre Meneton; Andres Metspalu; Leena Moilanen; Andrew D Morris; Patricia B Munroe; Inger Njølstad; Nancy L Pedersen; Chris Power; Peter P Pramstaller; Jackie F Price; Bruce M Psaty; Thomas Quertermous; Rainer Rauramaa; Danish Saleheen; Veikko Salomaa; Dharambir K Sanghera; Jouko Saramies; Peter E H Schwarz; Wayne H-H Sheu; Alan R Shuldiner; Agneta Siegbahn; Tim D Spector; Kari Stefansson; David P Strachan; Bamidele O Tayo; Elena Tremoli; Jaakko Tuomilehto; Matti Uusitupa; Cornelia M van Duijn; Peter Vollenweider; Lars Wallentin; Nicholas J Wareham; John B Whitfield; Bruce H R Wolffenbuttel; Jose M Ordovas; Eric Boerwinkle; Colin N A Palmer; Unnur Thorsteinsdottir; Daniel I Chasman; Jerome I Rotter; Paul W Franks; Samuli Ripatti; L Adrienne Cupples; Manjinder S Sandhu; Stephen S Rich
Journal:  Nat Genet       Date:  2013-10-06       Impact factor: 38.330

10.  Obesity-related genomic loci are associated with type 2 diabetes in a Han Chinese population.

Authors:  Xiaomu Kong; Xuelian Zhang; Qi Zhao; Jiang He; Li Chen; Zhigang Zhao; Qiang Li; Jiapu Ge; Gang Chen; Xiaohui Guo; Juming Lu; Jianping Weng; Weiping Jia; Linong Ji; Jianzhong Xiao; Zhongyan Shan; Jie Liu; Haoming Tian; Qiuhe Ji; Dalong Zhu; Zhiguang Zhou; Guangliang Shan; Wenying Yang
Journal:  PLoS One       Date:  2014-08-05       Impact factor: 3.240

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  4 in total

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Authors:  Sunmin Park; Suna Kang
Journal:  Lipids Health Dis       Date:  2020-07-29       Impact factor: 3.876

2.  A Birth Cohort Study on the Genetic Modification of the Association of Prenatal Methylmercury With Child Cognitive Development.

Authors:  Jordi Julvez; George Davey Smith; Susan Ring; Philippe Grandjean
Journal:  Am J Epidemiol       Date:  2019-10-01       Impact factor: 4.897

3.  Genome-Wide Identification of Rare and Common Variants Driving Triglyceride Levels in a Nevada Population.

Authors:  Robert W Read; Karen A Schlauch; Vincent C Lombardi; Elizabeth T Cirulli; Nicole L Washington; James T Lu; Joseph J Grzymski
Journal:  Front Genet       Date:  2021-03-02       Impact factor: 4.772

4.  An Ancestry Informative Marker Set Which Recapitulates the Known Fine Structure of Populations in South Asia.

Authors:  Ranajit Das; Priyanka Upadhyai
Journal:  Genome Biol Evol       Date:  2018-09-01       Impact factor: 3.416

  4 in total

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