Literature DB >> 26487440

Sex-specific association of rs4746172 of VCL gene with hypertension in two Han populations from Southern China.

Qin Yu1, Hong-Peng Sun2, Wan-Qun Chen3, Xiao-Qiong Chen1, Yong Xu2, Yong-Han He1, Qing-Peng Kong1.   

Abstract

Hypertension is the most common and lethal risk factor for cardiovascular disease (CVD). Numerous variants have been associated with hypertension, however, most of which failed to get replication due to ethnic differences. In this study, we analyzed associations of 10 newly reported single nucleotide polymorphisms (SNPs) in Europeans with hypertension in Chinese. A total of 1766 samples consisting of 880 subjects with hypertension and 886 controls were collected and the SNPs were genotyped using multiple assays based on the SNaPshot mini-sequencing approach. Our results revealed a significant genotypic association of rs4746172 of VCL with hypertension with a lower frequency of minor allele in male subjects (OR = 0.70, 95% CI: 0.54-0.92, p = 0.011) but not in females. To validate the result, we genotyped the SNPs in another Chinese population with 546 individuals, and got a consistent association for the rs4746172 (OR = 0.56, 95% CI: 0.38-0.82, p = 2.4 × 10(-3)) in males. The VCL-encoding protein was involved in cardiomyopathy that associated with hypertension, therefore our results suggest the rs4746172 of VCL may be a novel target for clinical interventions to reduce CVD risk by regulating blood pressure in male Chinese.

Entities:  

Mesh:

Substances:

Year:  2015        PMID: 26487440      PMCID: PMC4613695          DOI: 10.1038/srep15245

Source DB:  PubMed          Journal:  Sci Rep        ISSN: 2045-2322            Impact factor:   4.379


Hypertension (HT) is one of the most common diseases around the world with about 1 out of every 3 adults have HT in US1, and among Chinese adults, the prevalence of HT is 26.6% according to the 2007–2008 survey conducted by the China Diabetes and metabolic Disorders Study2. Moreover, HT is an important risk factor for cardiovascular diseases, such as heart failure (HF)3, stroke4 and myocardial infarction5. Much of the excess CVD risk led by HT can be ameliorated through blood pressure (BP)-lowering interventions. Accordingly, identifying novel genes and pathways involved in the regulation of BP may provide new ways of reducing BP and CVD risk. The causation of HT is complex, environmental (e.g. lifestyle) or genetic or combination of both could elevate BP6. Although unhealthy lifestyle, such as excess intake of salt and alcohol and lack of exercise, are shown to increase BP and the risk of developing HT7, a substantial contribution of genetic factors has been documented in many studies, in which numerous genes and single nucleotide polymorphisms (SNPs) have been shown involved in the regulation of BP or HT8910. With the development of the next generation sequence, the understanding of genetic component of BP or HT has made a big progress, especially in the genome-wide association studies (GWAS)1112. However, many studies failed to get replication association in independent populations, which may be accounted by ethnic differences among populations1314. Therefore, it’s a tendency and necessary to identify universal BP-associated loci using multiethnic samples15. Recently, novel associations between several SNPs and BP traits were identified in more than ten thousands of individuals of European ancestry1617. Zhang and his colleagues used novel strategies to discover some novel BP loci, one of which was proved to be a new hypertension-susceptibility locus18. However, these candidate BP-associated loci have not been investigated in Asia populations. Accordingly, the study is designed to replicate the reported gene SNPs in Chinese cohorts, aiming to find candidate gene loci involved in BP regulation. As a result, we found that the VCL rs4746172 had a lower frequency of minor allele and associated with HT in male Chinese. Importantly, the result was well replicated in another smaller Chinese population. Therefore, the VCL rs4746172 may serve as a novel target for clinical interventions to lower BP and CVD risk in male Chinese.

Methods

Subjects

A total of 1766 subjects were recruited from Jiangsu province, China (hereafter referred to as Jiangsu population). Among them, there were 880 subjects with HT defined as systolic blood pressure (SBP) ≥140 mmHg and/or diastolic blood pressure (DBP) ≥90 mmHg according to the HT criterion19. Normal BP was defined as SBP <140 mmHg and DBP <90 mmHg. Clinical characteristics, including age, sex, SBP, DBP, height, body weight, triglyceride (TG), total cholesterol (TC), high density lipoprotein cholesterol (HDL-c), low density lipoprotein cholesterol (LDL-c) and fasting blood glucose (GLU) were collected. Pulse pressure (PP) was calculated as SBP minus DBP, and median arterial pressure (MAP) was defined as 1/3 SBP plus 2/3 DBP. Another population containing 546 individuals with 269 HT patients and 277 controls from Guangdong province of China was collected for use of validation (hereafter referred to as Guangdong population). The study protocol was approved by the Ethics Committee at Kunming Institute of Zoology, Chinese Academy of Sciences. Written informed consent was obtained from each of the participants. All of the methods were carried out in “accordance” with the approved guidelines (http://www.nature.com/srep/policies/index.html#experimental-subjects).

SNP selection and genotyping

Ten recently reported SNPs associated with DBP, SBP, PP, MAP or HT in Europeans161718 were selected for genotyping (Supplemental Table S1). Total genomic DNA was extracted from the whole blood using the AxyPrepTM Blood Genomic DNA Miniprep Kit (Axygen, USA) according to the manufacturer’s protocol, and quantified spectrophotometrically by OD260/OD280 ratio and stored at 4 °C for short-term. Primers were optimally designed using a web-based software provided by Beckman Coulter (available at www.autoprimer.com) and were listed in Supplemental Table S2 and Table S3. Genotyping was performed based on the SNaPshot mini-sequencing approach which can detect multiple polymorphisms in a single assay2021. The resulting data were analyzed using GeneMarker (SoftGenetics, State College, PA).

Statistical analysis

Continuous variables were displayed as mean ± SD and differences between groups were assessed by student’s t-test or ANOVA analysis. The difference of categorical variables was assessed by the Chi-square test. Odds ratios (ORs) and 95% confidence intervals (CIs) of alleles were calculated by the R software using Fisher’s exact test (2-side). Odds ratios (ORs) and 95% confidence intervals (CIs) of genotypes were calculated using SNPStats adjusted by age and sex, under co-dominant, dominant, recessive, over-dominant and log-additive models22. For sex subgroup analysis, age was adjusted for the association of SNPs with HT.

Results

Clinical characteristics

Clinical characteristics of two populations used in this study were shown in Table 1. All subjects were the Han nationality. Age and sex distribution in Jiangsu population and age distribution in Guangdong population were different between the control and HT groups (p < 0.05). In Jiangsu population, SBP, DBP, PP, MAP, body weight, TG, TC, LDL-c and GLU were significantly higher in the HT group than that in control group (p < 0.05), however, there were not any differences in height and HDL-c between groups (p > 0.05). For Guangdong population, SBP, SBP, DBP, PP, MAP, weight, HDL-c and GLU were higher in the HT group in contrast to the controls (p < 0.05), with an increasing trend but no significance for height, TG, TC and LDL-c (p > 0.05).
Table 1

Clinical characteristics of control and HT groups in two Chinese populations.

VariablesJiangsu population (n = 1766)
Guangdong population (n = 546)
Control (n = 886)HT (n = 880)pControl (n = 277)HT (n = 269)p
Age, years70.46 ± 6.5071.11 ± 6.060.03042.60 ± 10.1647.64 ± 11.751.34 × 10−7
Sex (M/F)479/407419/4617.74× 10−3237/40234/350.718
SBP, mmHg126.78 ± 9.15163.18 ± 16.15<2.20 × 10−16117.12 ± 10.57141.07 ± 18.11<2.20 × 10−16
DBP, mmHg76.80 ± 8.1698.46 ± 7.82<2.20 ×  × 10−1676.44 ± 6.9793.88 ± 8.84<2.20 × 10−16
PP, mmHg49.98 ± 9.7364.72 ± 15.11<2.20 × 10−1640.68 ± 8.2347.19 ± 16.876.32 × 10-6
MAP, mmHg93.46 ± 7.16120.03 ± 8.78<2.20 × 10−1690.00 ± 7.38109.61 ± 9.91<2.20 × 10−16
Height, cm158.89 ± 8.62158.33 ± 8.700.197166.53 ± 6.61167.08 ± 6.970.349
Weight, kg56.70 ± 9.4359.30 ± 10.412.37 × 10−768.11 ± 9.2773.87 ± 12.512.48 × 10−9
TG, mmol/L1.32 ± 0.681.46 ± 0.798.58 × 10−52.24 ± 1.282.36 ± 1.800.113
TC, mmol/L5.05 ± 0.865.29 ± 0.972.78 × 10−85.58 ± 1.235.59 ± 0.990.908
HDL-c, mmol/L1.55 ± 0.421.59 ± 0.420.1071.21 ± 0.281.30 ± 0.304.08 × 10−4
LDL-c, mmol/L2.75 ± 0.702.91 ± 0.786.34 × 10−63.24 ± 0.853.32 ± 0.700.264
GLU, mmol/L5.77 ± 0.996.16 ± 1.237.87 × 10−165.40 ± 1.605.79 ± 1.817.05 × 10−4

M, male; F, female; SBP, systolic blood pressure; DBP, diastolic blood pressure; PP, pulse pressure; MAP, median arterial pressure; TG, triglyceride; TC, total cholesterol; HDL-c, high density lipoprotein cholesterol; LDL-c, low density lipoprotein cholesterol; GLU, fasting blood glucose; HT, hypertensive patient. PP was calculated as SBP minus DBP, and MAP was calculated as 1/3 SBP plus 2/3 DBP. All quantitative data were presented as mean ± SD. P values < 0.05 were marked in bold.

Allelic distributions and associations with HT

After genotyping, we compared the minor allele frequencies (MAFs) of the SNPs in Jiangsu and Guangdong populations to that of the Southern Han Chinese (CHS) from the 1000 Genomes Project. MAFs among 3 populations were quite similar (Supplemental Table S1). We then analyzed the association of the minor alleles of all SNPs with HT but found no significant associations in total Jiangsu population (p > 0.05, Table 2). However, the minor allele T of rs4746172 had a significant association with HT in male subjects of Jiangsu subjects (OR = 0.80, 95% CI = 0.65–0.97, p = 0.020) with a lower frequency (0.36) in HT group than that in the controls (0.41), however, no association was observed in females (OR = 1.11, 95% CI = 0.91–1.36, p = 0.298).
Table 2

Allelic ORs and 95% CI for HT in Jiangsu population.

SNPAlleleHWEAll
Female
Male
Control n (freq)HT n (freq)OR (95% CI)pControl n (freq)HT n (freq)OR (95% CI)pControl n (freq)HT n (freq)OR (95% CI)p
rs16823124G1.001015 (0.57)1008 (0.57)1.00 (0.87–1.15)1.000470 (0.58)536 (0.58)0.98 (0.81–1.20)0.884545 (0.57)472 (0.56)1.02 (0.84–1.24)0.812
A 757 (0.43)752 (0.43)344 (0.42)386 (0.42)413 (0.43)366 (0.44)
rs4245739A0.491723 (0.97)1720 (0.98)0.82 (0.52–1.28)0.391790 (0.97)905 (0.98)0.62 (0.31–1.21)0.154933 (0.97)815 (0.97)1.05 (0.57–1.95)0.884
C 49 (0.03)40 (0.02)24 (0.03)17 (0.02)25 (0.03)23 (0.03)
rs2158394C0.061156 (0.65)1128 (0.64)1.05 (0.92–1.21)0.459518 (0.64)577 (0.63)1.05 (0.86–1.29)0.617638 (0.67)551 (0.66)1.04 (0.85–1.27)0.726
G 612 (0.35)630 (0.36)292 (0.36)343 (0.37)320 (0.33)287 (0.34)
rs1570105A0.731001 (0.56)1011 (0.57)0.96 (0.84–1.10)0.587458 (0.56)532 (0.58)0.94 (0.78–1.15)0.560543 (0.57)479 (0.57)0.98 (0.81–1.19)0.849
G 771 (0.44)749 (0.43)356 (0.44)390 (0.42)415 (0.43)359 (0.43)
rs2014408C0.631256 (0.71)1270 (0.72)0.94 (0.81–1.09)0.412585 (0.72)676 (0.73)0.93 (0.75–1.16)0.518671 (0.70)594 (0.71)0.96 (0.78–1.18)0.717
T 516 (0.29)490 (0.28)229 (0.28)246 (0.27)287 (0.30)244 (0.29)
rs33063G0.171657 (0.94)1653 (0.94)0.93 (0.70–1.24)0.628756 (0.93)870 (0.94)0.78 (0.52–1.17)0.236901 (0.94)783 (0.93)1.11 (0.74–1.66)0.625
A 115 (0.06)107 (0.06)58 (0.07)52 (0.06)57 (0.06)55 (0.07)
rs7297416C0.081091 (0.62)1071 (0.61)1.03 (0.9–1.18)0.679503 (0.62)559 (0.61)1.05 (0.86–1.28)0.622588 (0.61)512 (0.61)1.01 (0.83–1.23)0.923
A 681 (0.38)689 (0.39)311 (0.38)363 (0.39)370 (0.39)326 (0.39)
rs59251428G0.401279 (0.72)1265 (0.72)1.02 (0.87–1.18)0.851582 (0.71)673 (0.73)0.93 (0.75–1.15)0.519697 (0.73)592 (0.71)1.11 (0.90–1.37)0.344
T 493 (0.28)495 (0.28)232 (0.29)249 (0.27)261 (0.27)246 (0.29)
rs3858313A0.521100 (0.62)1124 (0.64)0.93 (0.81–1.06)0.280514 (0.63)586 (0.64)0.98 (0.80–1.20)0.881586 (0.61)538 (0.64)0.88 (0.72–1.07)0.187
G 672 (0.38)636 (0.36)300 (0.37)336 (0.36)372 (0.39)300 (0.36)
rs4746172C0.441077 (0.61)1097 (0.62)0.94 (0.82–1.08)0.350515 (0.63)560 (0.61)1.11 (0.91–1.36)0.298562 (0.59)537 (0.64)0.80 (0.65–0.97)0.020
T 695 (0.39)663 (0.38)299 (0.37)362 (0.39)396 (0.41)301 (0.36)

HWE, Hardy–Weinberg Equilibrium, p wwvalue for HWE in control was shown; HT, hypertensive patient; OR, Odds ratio; 95% CI, 95% confidence interval; freq means the frequencies of allele. P values < 0.05 were marked in bold.

Genotypic distributions and associations with HT

We next investigated the genotypic associations of all selected SNPs with HT in Jiangsu population. Genotypic distributions of all SNPs in the controls of Jiangsu population were in agreement with the Hardy–Weinberg Equilibrium (HWE) (all p > 0.05, Table 2). Odds ratios (ORs) were calculated using five genetic models (co-dominant, dominant, recessive, over-dominant and log-additive) adjusted by sex and age. As shown in Table 3, there were not any significant associations between the selected SNPs and HT in total Jiangsu samples (p > 0.05). Due to the known effect of sex on BP23, we divided the samples into male and female subgroups and then analyzed the associations of the SNPs with HT. Interestingly, we observed the rs59251428 was significantly associated with HT in the co-dominant and over-dominant models in males (OR = 1.37, 95% CI: 1.04–1.80, p = 0.035 and OR = 1.40, 95% CI: 1.08–1.83, p = 0.012, respectively). In addition, the rs4746172 were also found to associate with HT in either of co-dominant, dominant and additive models in males (OR = 0.71, 95% CI: 0.53–0.95, p = 0.039; OR = 0.70, 95% CI: 0.54–0.92, p = 0.011; and OR = 0.80, 95% CI: 0.66–0.97, p = 0.020, respectively), being consistent with its allelic associations described above.
Table 3

Genotypic associations of SNPs with HT in Jiangsu population.

SNPSexOR (95% CI)
Co-dominantpDominantpRecessivepOver-dominantpLog-additivep
rs16823124all0.97 (0.79–1.20) 1.02 (0.77–1.33)0.9400.98 (0.81–1.20)0.8801.03 (0.81–1.31)0.8000.97 (0.80–1.17)0.7301.00 (0.88–1.15)0.970
female0.85 (0.63–1.15) 1.01 (0.68–1.51)0.4900.89 (0.67–1.18)0.4201.11 (0.78–1.59)0.5600.85 (0.65–1.11)0.2300.98 (0.80–1.19)0.810
male1.10 (0.82–1.48) 1.03 (0.71–1.49)0.8101.08 (0.81–1.42)0.6100.97 (0.70–1.35)0.8601.09 (0.84–1.42)0.5301.02 (0.85–1.23)0.810
rs4245739all0.85 (0.55–1.31) 0.00 (0.00–NA)0.4100.83 (0.54–1.28)0.4000.00 (0.00–NA)0.2700.85 (0.55–1.31)0.4600.82 (0.54–1.25)0.360
female0.61 (0.32–1.16) NA0.130        
male1.15 (0.63–2.08) 0.00 (0.00–NA)0.4801.10 (0.61–1.98)0.7500.00 (0.00–NA)0.2601.15 (0.63–2.08)0.6401.05 (0.59–1.86)0.860
rs2158394all1.08 (0.88-1.31) 1.08 (0.79–1.50)0.7501.08 (0.89–1.30)0.4401.04 (0.77–1.41)0.7901.06 (0.88–1.28)0.5601.05 (0.91–1.22)0.480
female1.12 (0.84–1.49) 1.11 (0.71–1.73)0.7501.11 (0.84–1.47)0.4501.04 (0.69–1.58)0.8501.09 (0.83–1.42)0.5301.07 (0.87–1.31)0.510
male1.05 (0.79–1.38) 1.08 (0.68–1.71)0.9201.05 (0.81–1.37)0.7001.05 (0.68–1.63)0.8301.03 (0.80–1.34)0.8001.04 (0.85–1.28)0.700
rs1570105all0.87 (0.71–1.08) 0.93 (0.71–1.23)0.4500.89 (0.73–1.09)0.2501.01 (0.80–1.29)0.9100.89 (0.74–1.08)0.2500.95 (0.83–1.09)0.480
female0.92 (0.68–1.25) 0.86 (0.59–1.28)0.7500.91 (0.68–1.21)0.5100.91 (0.64–1.28)0.5800.97 (0.75–1.27)0.8500.93 (0.77–1.12)0.450
male0.83 (0.62–1.12) 1.01 (0.69–1.47)0.3600.88 (0.66–1.16)0.3601.13 (0.81–1.58)0.4800.83 (0.64–1.08)0.1600.98 (0.81–1.18)0.830
rs2014408all1.04 (0.85–1.26) 0.76 (0.53–1.10)0.2700.99 (0.82–1.19)0.8900.75 (0.53–1.07)0.1101.07 (0.89–1.30)0.4700.94 (0.81–1.09)0.430
female1.03 (0.78–1.36) 0.74 (0.44–1.24)0.4600.98 (0.75–1.28)0.8600.73 (0.44–1.21)0.2201.07 (0.81–1.41)0.6300.93 (0.75–1.15)0.520
male1.05 (0.80–1.38) 0.80 (0.48–1.32)0.5701.00 (0.77–1.31)0.9700.78 (0.48–1.27)0.3201.08 (0.83–1.41)0.5600.96 (0.78–1.18)0.690
rs33063all0.89 (0.67–1.19) 2.16 (0.19–23.92)0.6000.91 (0.68–1.20)0.4902.19 (0.20–24.24)0.5100.89 (0.67–1.19)0.4400.92 (0.70–1.21)0.550
female0.74 (0.49–1.10) NA0.140        
male1.07 (0.71–1.61) 2.30 (0.21–25.47)0.7401.09 (0.73–1.63)0.6602.28 (0.21–25.25)0.4901.07 (0.71–1.60)0.7501.11 (0.76–1.63)0.590
rs7297416all1.07 (0.88–1.32) 1.04 (0.77–1.40)0.7901.07 (0.88–1.30)0.5200.99 (0.76–1.31)0.9701.06 (0.88–1.28)0.5201.03 (0.90–1.19)0.660
female1.12 (0.83–1.49) 1.07 (0.70–1.61)0.7701.10 (0.84–1.46)0.4901.00 (0.68–1.46)0.9901.10 (0.84–1.43)0.5001.05 (0.86–1.28)0.620
male1.04 (0.78-1.38) 1.01 (0.65–1.56)0.9701.03 (0.78–1.36)0.8300.99 (0.66–1.47)0.9501.03 (0.80–1.35)0.8001.01 (0.83–1.24)0.900
rs59251428all1.06 (0.87–1.29) 0.98 (0.67–1.43)0.8001.05 (0.87–1.27)0.6000.95 (0.66–1.38)0.8001.07 (0.88–1.29)0.5101.02 (0.88–1.19)0.750
female0.81 (0.61–1.08) 1.15 (0.67–1.95)0.2400.86 (0.65–1.12)0.2601.26 (0.75–2.11)0.3800.80 (0.61–1.05)0.1100.94 (0.76–1.17)0.590
male1.37 (1.041.80) 0.83 (0.48–1.44)0.0351.28 (0.99–1.67)0.0610.71 (0.42–1.23)0.2201.40 (1.081.83)0.0121.12 (0.90–1.38)0.300
rs3858313all0.92 (0.75–1.13) 0.86 (0.64–1.15)0.5400.91 (0.75–1.10)0.3200.90 (0.69–1.17)0.4300.96 (0.80–1.16)0.6700.93 (0.81–1.06)0.270
female1.04 (0.78–1.39) 0.92 (0.61–1.39)0.8201.01 (0.77–1.33)0.9300.90 (0.61–1.32)0.5801.07 (0.82–1.40)0.6400.98 (0.81–1.19)0.830
male0.82 (0.61–1.08) 0.81 (0.54–1.22)0.3300.82 (0.62–1.07)0.1400.91 (0.62–1.32)0.6100.86 (0.66–1.12)0.2700.88 (0.73–1.06)0.190
rs4746172all0.96 (0.79–1.18) 0.86 (0.65–1.15)0.5900.94 (0.77–1.14)0.5100.88 (0.68–1.14)0.3401.00 (0.83–1.21)0.9600.94 (0.82–1.07)0.340
female1.31 (0.98–1.75) 1.11 (0.74–1.67)0.1901.26 (0.95–1.65)0.1000.96 (0.66–1.40)0.8301.27 (0.97–1.66)0.0811.11 (0.91–1.35)0.300
male0.71 (0.530.95) 0.68 (0.46–1.01)0.0390.70 (0.540.92)0.0110.82 (0.57–1.18)0.2800.80 (0.61–1.04)0.0910.80 (0.660.97)0.020

OR, Odds ratio; 95% CI, 95% confidence interval. For total samples, p values were adjusted by sex and age, and for sex subgroup analyses, p values were adjusted by age. P values < 0.05 were marked in bold.

Association validation of SNPs with HT in another independent population

To confirm above associations of SNPs with HT in Jiangsu population, we further genotyped the SNPs in Guangdong samples (Supplemental Table S4). As shown in Table 4, we did not found any associations for the rs59251428 with HT in any of the five models. However, we did observe that the rs4746172 was associated with HT in Guangdong population (co-dominant, OR = 0.58, 95% CI: 0.40–0.84, p = 2.9 × 10−3; dominant, OR = 0.67, 95% CI: 0.47–0.95, p = 0.024; and over-dominant, OR = 0.55, 95% CI: 0.39–0.79, p = 9.0 × 10−4). Consistently, subgroup analysis by sex revealed the association of rs4746172 with HT were only in male subjects (co-dominant, OR = 0.58, 95% CI: 0.39–0.86, p = 8.6 × 10−3; dominant, OR = 0.66, 95% CI: 0.45–0.96, p = 0.028; and over-dominant, OR = 0.56, 95% CI: 0.38–0.82, p = 2.4 × 10−3, Table 4), but not in the females (co-dominant, OR = 0.63, 95% CI: 0.21–1.87, p = 0.290; dominant, OR = 0.83, 95% CI: 0.30–2.28, p = 0.720; and over-dominant, OR = 0.54, 95% CI: 0.19–1.53, p = 0.240, Table 4). In this population, a marginally significant association of rs2014408 with HT was observed (over-dominant, OR = 0.68, 95% CI: 0.48–0.98, p = 0.036, Table 4). However, the association disappeared in stratification analysis by sex (Table 4). There were not any associations for the rest SNPs with HT in Guangdong population.
Table 4

Genotypic association of SNPs with HT in Guangdong population.

SNPSexOR (95% CI)
Co-dominantpDominantpRecessivepOver-dominantpLog-additivep
rs16823124all0.71 (0.48–1.04) 0.66 (0.39–1.11)0.1400.69 (0.48–1.00)0.0480.81 (0.51–1.29)0.3700.80 (0.57–1.14)0.2200.79 (0.62–1.02)0.066
female0.54 (0.17–1.66) 0.31 (0.06–1.68)0.3300.48 (0.16–1.43)0.1800.46 (0.10–2.11)0.3100.75 (0.27–2.08)0.5900.55 (0.25–1.22)0.140
male0.74 (0.49–1.11) 0.72 (0.42–1.24)0.2900.73 (0.50–1.08)0.1200.86 (0.53–1.40)0.5400.82 (0.57–1.19)0.3000.83 (0.64–1.08)0.160
rs2158394all1.08 (0.74–1.57) 1.49 (0.87–2.56)0.3501.17 (0.82–1.66)0.4001.43 (0.86–2.37)0.1600.98 (0.69–1.38)0.8901.18 (0.92–1.52)0.190
female1.57 (0.49–5.07) 4.10 (0.81–20.83)0.2201.98 (0.66–5.97)0.2203.15 (0.72–13.70)0.1100.99 (0.35–2.79)0.9901.93 (0.89–4.18)0.091
male1.02 (0.68–1.52) 1.29 (0.73–2.31)0.6601.08 (0.74–1.57)0.7001.28 (0.75–2.20)0.3600.95 (0.66–1.39)0.8101.11 (0.85–1.45)0.460
rs1570105all0.91 (0.61–1.35) 1.36 (0.82–2.26)0.2401.01 (0.70–1.47)0.9401.44 (0.93–2.25)0.1000.81 (0.57–1.14)0.2301.13 (0.88–1.45)0.340
female0.42 (0.13–1.42) 0.55 (0.12–2.53)0.3600.46 (0.15–1.42)0.1700.90 (0.24–3.40)0.8700.52 (0.18–1.54)0.2300.68 (0.32–1.44)0.310
male0.97 (0.64–1.48) 1.52 (0.88–2.61)0.2001.10 (0.74–1.64)0.6401.54 (0.96–2.48)0.0720.83 (0.57–1.20)0.3301.20 (0.92–1.56)0.190
rs2014408all0.70 (0.49–1.01) 1.38 (0.64–3.02)0.0780.77 (0.54–1.09)0.1301.60 (0.75–3.44)0.2200.68 (0.48–0.98)0.0360.89 (0.67–1.19)0.440
female0.73 (0.26–2.06) NA (0.00–NA)0.2000.85 (0.31–2.34)0.760NA (0.00–NA)0.0890.65 (0.23–1.80)0.4101.09 (0.44–2.68)0.850
male0.71 (0.48–1.04) 1.22 (0.55–2.70)0.1500.76 (0.52–1.10)0.1501.40 (0.64–3.06)0.3900.69 (0.47–1.02)0.0590.88 (0.65–1.19)0.400
rs33063all0.66 (0.38–1.13) 0.22 (0.02–2.18)0.1200.62 (0.36–1.05)0.0730.23 (0.02–2.30)0.1700.67 (0.39–1.15)0.1400.62 (0.38–1.00)0.049
female1.20 (0.27–5.36) 0.00 (0.00–NA)0.4200.91 (0.22–3.77)0.9000.00 (0.00–NA)0.1901.25 (0.28–5.56)0.7700.75 (0.22–2.56)0.640
male0.60 (0.34–1.08) 0.32 (0.03–3.77)0.1600.58 (0.33–1.03)0.0620.35 (0.03–4.02)0.3800.61 (0.34–1.09)0.0910.60 (0.35–1.02)0.054
rs7297416all1.10 (0.75–1.61) 1.18 (0.69–2.03)0.8101.12 (0.78–1.60)0.5601.12 (0.68–1.83)0.6501.04 (0.74–1.48)0.8101.09 (0.84–1.41)0.520
female0.89 (0.30–2.63) 0.81 (0.16–4.06)0.9600.87 (0.32–2.42)0.8000.86 (0.19–3.91)0.8500.94 (0.34–2.59)0.9000.90 (0.43–1.88)0.780
male1.14 (0.76–1.72) 1.24 (0.70–2.21)0.7201.16 (0.79–1.72)0.4501.15 (0.68–1.93)0.6101.07 (0.74–1.55)0.7201.12 (0.85–1.47)0.420
rs59251428all0.95 (0.66–1.37) 1.13 (0.63–2.01)0.8400.98 (0.70–1.39)0.9301.16 (0.67–2.01)0.6000.93 (0.65–1.32)0.6801.02 (0.79–1.32)0.860
female0.45 (0.15–1.40) 0.26 (0.05–1.37)0.1800.40 (0.14–1.16)0.0850.39 (0.08–1.82)0.2300.63 (0.22–1.75)0.3700.49 (0.23–1.07)0.066
male1.04 (0.71–1.54) 1.36 (0.73–2.55)0.6201.10 (0.76–1.60)0.8101.33 (0.73–2.43)0.3400.99 (0.68–1.43)0.9401.12 (0.85–1.48)0.410
rs3858313all1.29 (0.88–1.89) 1.06 (0.64–1.77)0.4001.22 (0.86–1.74)0.2600.93 (0.58–1.49)0.7601.27 (0.89–1.80)0.1801.08 (0.85–1.38)0.540
female1.34 (0.45–3.99) 1.36 (0.26–7.13)0.8501.35 (0.48–3.75)0.5701.18 (0.24–5.69)0.8401.26 (0.45–3.55)0.6601.22 (0.58–2.57)0.610
male1.29 (0.86–1.94) 1.05 (0.61–1.79)0.4401.22 (0.83–1.77)0.3100.92 (0.56–1.50)0.7301.27 (0.88–1.85)0.2101.07 (0.83–1.38)0.610
rs4746172all0.58 (0.40–0.84) 1.30 (0.70–2.43)2.9 × 1030.67 (0.470.95)0.0241.72 (0.95–3.12)0.0700.55 (0.390.79)9.0 × 10−40.89 (0.68–1.16)0.380
female0.63 (0.21–1.87) 2.70 (0.41–17.73)0.2900.83 (0.30–2.28)0.7203.34 (0.54–20.70)0.1800.54 (0.19–1.53)0.2401.14 (0.53–2.46)0.740
male0.58 (0.390.86) 1.19 (0.61–2.33)8.6 × 1030.66 (0.450.96)0.0281.59 (0.85–3.00)0.1500.56 (0.380.82)2.4 × 10−30.86 (0.65–1.15)0.310

OR, Odds ratio; 95% CI, 95% confidence interval. For total samples, p values were adjusted by sex and age, and for sex subgroup analyses, p values were adjusted by age. P values < 0.05 were marked in bold.

Association of SNPs with blood pressure parameters

Since there was an association between some of the selected SNPs and HT, we next wondered whether they were associated with BP parameters, including SBP, DBP, PP and MAP. For the rs4746172, we did see a decreased trend for SBP, DBP and MAP in CT or TT carriers compared to the CC subjects in male subject despite of no significance in Jiangsu samples (Supplemental Fig. S1). There were not any associations for the rest SNPs with BP parameters (Supplemental Table S5 and supplemental Table S6). In Guangdong samples, the association of rs4746172 with DBP were significant among 3 genotype carriers (p = 0.020, Supplemental Table S7). The results further supported the association of the rs4746172 with HT in male Chinese, which may be mediated by its association with DBP.

Discussion

In this study, we investigated the associations of 10 newly reported BP-associated SNPs in Europeans with BP or HT in Chinese populations, and finally identified a lower allelic frequency of rs4746172 in HT subjects in male Chinese. This result was well replicated in another independent Chinese population. To our knowledge, this the first report on the male-specific association of rs4746172 with HT in two Chinese populations. In Jiangsu samples, we just found two male-specific hypertension-related loci, rs59251428 and rs4746172, were associated with HT, while the remaining 8 loci were not. The failed replication of association for the rest 8 SNPs with HT compared to the European population was most likely due to the ethnic differences between both populations. For the rs59251428, we failed to replicate its association with HT between two Chinese populations, which may result from several reasons. Firstly, the sample size in the validation population might be relatively small to test the significance. Secondly, geographic and social difference may affect the results of replication. The third is the average age between two populations. Guangdong subjects are younger than Jiangsu population consisting of old subjects which are prone to develop HT as documented in other study24. Even though, the association of rs4746172 with HT in Jiangsu samples was validated in Guangdong population with smaller sample size. Of notice is that the minor allelic frequency was lower in HT subjects than in the controls. Although it was reported to be a risk locus for BP, its lower allelic frequency and OR value indicate a likely protective role in developing HT. The strong association with BP in Europeans and association with HT in Chinese suggest its great potential of being a influential factor for HT in both populations. The rs4746172 is located in the gene VCL (vinculin) encoding a cytoskeletal protein that is associated with the maintenance of cell-to-cell and cell to matric junctions and plays a crucial role in normal embryonic development and cardiac function25. Mutation, altered expression and location of VCL have been associated with cardiomyopathy26272829, which emphasize the importance of VCL in human heart. Moreover, it has been suggested that the subjects harbored mutations of usually suffer from increased heart workload25, which may promote the development of HT30. Indeed, several studies have reported that the patients with dilated cardiomyopathy had a higher prevalence of HT than the general population31. So it was plausible that the rs4746172 led to increased heart workload, and indirectly caused HT. Until now, there has been no direct evidence on the relationship between VCL gene and HT. Consistent with the case that the SNP rs4746172 was associated with DBP in Europeans17, we also observed its association with DBP in Guangdong individuals. That the decreased trend for BP parameters in CT or TT carriers than the wild genotype (CC) carriers but with no significance is most likely due to the protective role of lower allelic frequency in HT patients, which, however, did not affect the association of rs4746172 with HT. It was worthy pointing out that the rs4746172-HT association was sex-specific, existed only in male but not in female Chinese. In fact, the sex differences in the regulation of BP had been well studied in the past decades. Epidemiological studies indicate that men have higher BP than age-matched, premenopausal women2332. There were also some studies reporting sex differences in association between genetic factors and HT3334. However, the mechanism of sex on BP is not fully understood. One possible mechanism may be the role of sex hormones. Solid evidence has demonstrated that increases in androgens or losses of estrogens, or even increased ratio of androgens/estrogens can promote higher BP35. In addition, the sex-specific difference in genotype-phenotype associations may be due to sex-specific genetic architecture. The autosomal genome is shared by both the male and female, but the gene expression is sexually dimorphic3637. Furthermore, sex is considered as an “environmental” variable and gene expression may be different via interaction with sex, and the genotype-sex interaction effects on many human diseases and traits are common, such as HT and BP38. The association of rs4746172 with HT in this study was convincingly supported by the replication in two independent populations as well as the reported result in Europeans. However, several limitations should be acknowledged. One is that the sample sizes of both populations are not equivalent, especially for Guangdong population. Another is the population characteristics with bias, such as the ratio of the male and female, and age of samples. Third, despite its association with blood pressure in Caucasians and Chinese, the rs4746172 is a tag SNP and therefore its roles in the regulation of blood pressure deserve further studies in the future. In addition, the causation of HT is the complex multifactorial interplay of genetic and environmental factor, but here we focused on genetic factors without taking much account into some environmental factors associated with HT except for sex, such as salt and alcohol intake, and physical activities. In conclusion, our results suggest the rs4746172 of VCL was associated with HT in male subjects with a lower frequency of risk allele, which was validated in another Chinese population. The lower frequency of rs4746172 may be a male-specific protective factor for cardiovascular diseases, which may serve as a novel target and provide strategies for clinical interventions to reduce CVD risk in male Chinese.

Additional Information

How to cite this article: Yu, Q. et al. Sex-specific association of rs4746172 of VCL gene with hypertension in two Han populations from Southern China. Sci. Rep. 5, 15245; doi: 10.1038/srep15245 (2015).
  38 in total

Review 1.  Genetic basis of blood pressure and hypertension.

Authors:  Sandosh Padmanabhan; Christopher Newton-Cheh; Anna F Dominiczak
Journal:  Trends Genet       Date:  2012-05-21       Impact factor: 11.639

2.  SNPStats: a web tool for the analysis of association studies.

Authors:  Xavier Solé; Elisabet Guinó; Joan Valls; Raquel Iniesta; Víctor Moreno
Journal:  Bioinformatics       Date:  2006-05-23       Impact factor: 6.937

3.  Haplotype analysis of PPARγ C681G and intron CT variants. Positive association with essential hypertension.

Authors:  Q Zhu; Z Guo; X Hu; M Wu; Q Chen; W Luo; J Liu
Journal:  Herz       Date:  2013-05-09       Impact factor: 1.443

4.  Genetic implication of a novel thiamine transporter in human hypertension.

Authors:  Kuixing Zhang; Matthew J Huentelman; Fangwen Rao; Eric I Sun; Jason J Corneveaux; Andrew J Schork; Zhiyun Wei; Jill Waalen; Jose Pablo Miramontes-Gonzalez; C Makena Hightower; Adam X Maihofer; Manjula Mahata; Tomi Pastinen; Georg B Ehret; Nicholas J Schork; Eleazar Eskin; Caroline M Nievergelt; Milton H Saier; Daniel T O'Connor
Journal:  J Am Coll Cardiol       Date:  2014-02-05       Impact factor: 24.094

5.  Tissue-specific expression and regulation of sexually dimorphic genes in mice.

Authors:  Xia Yang; Eric E Schadt; Susanna Wang; Hui Wang; Arthur P Arnold; Leslie Ingram-Drake; Thomas A Drake; Aldons J Lusis
Journal:  Genome Res       Date:  2006-07-06       Impact factor: 9.043

6.  A sex-specific effect of the CYP17A1 SNP rs11191548 on blood pressure in Chinese children.

Authors:  L Wu; B Xi; M Zhang; Y Shen; X Zhao; T Wang; H Cheng; D Hou; G Liu; X Wang; J Mi
Journal:  J Hum Hypertens       Date:  2011-11-03       Impact factor: 3.012

7.  Heterozygous inactivation of the vinculin gene predisposes to stress-induced cardiomyopathy.

Authors:  Alice E Zemljic-Harpf; Sornya Ponrartana; Roy T Avalos; Maria C Jordan; Kenneth P Roos; Nancy D Dalton; Vinh Q Phan; Eileen D Adamson; Robert S Ross
Journal:  Am J Pathol       Date:  2004-09       Impact factor: 4.307

8.  Seventh report of the Joint National Committee on Prevention, Detection, Evaluation, and Treatment of High Blood Pressure.

Authors:  Aram V Chobanian; George L Bakris; Henry R Black; William C Cushman; Lee A Green; Joseph L Izzo; Daniel W Jones; Barry J Materson; Suzanne Oparil; Jackson T Wright; Edward J Roccella
Journal:  Hypertension       Date:  2003-12-01       Impact factor: 10.190

9.  Gene-age interactions in blood pressure regulation: a large-scale investigation with the CHARGE, Global BPgen, and ICBP Consortia.

Authors:  Jeannette Simino; Gang Shi; Joshua C Bis; Daniel I Chasman; Georg B Ehret; Xiangjun Gu; Xiuqing Guo; Shih-Jen Hwang; Eric Sijbrands; Albert V Smith; Germaine C Verwoert; Jennifer L Bragg-Gresham; Gemma Cadby; Peng Chen; Ching-Yu Cheng; Tanguy Corre; Rudolf A de Boer; Anuj Goel; Toby Johnson; Chiea-Chuen Khor; Carla Lluís-Ganella; Jian'an Luan; Leo-Pekka Lyytikäinen; Ilja M Nolte; Xueling Sim; Siim Sõber; Peter J van der Most; Niek Verweij; Jing Hua Zhao; Najaf Amin; Eric Boerwinkle; Claude Bouchard; Abbas Dehghan; Gudny Eiriksdottir; Roberto Elosua; Oscar H Franco; Christian Gieger; Tamara B Harris; Serge Hercberg; Albert Hofman; Alan L James; Andrew D Johnson; Mika Kähönen; Kay-Tee Khaw; Zoltan Kutalik; Martin G Larson; Lenore J Launer; Guo Li; Jianjun Liu; Kiang Liu; Alanna C Morrison; Gerjan Navis; Rick Twee-Hee Ong; George J Papanicolau; Brenda W Penninx; Bruce M Psaty; Leslie J Raffel; Olli T Raitakari; Kenneth Rice; Fernando Rivadeneira; Lynda M Rose; Serena Sanna; Robert A Scott; David S Siscovick; Ronald P Stolk; Andre G Uitterlinden; Dhananjay Vaidya; Melanie M van der Klauw; Ramachandran S Vasan; Eranga Nishanthie Vithana; Uwe Völker; Henry Völzke; Hugh Watkins; Terri L Young; Tin Aung; Murielle Bochud; Martin Farrall; Catharina A Hartman; Maris Laan; Edward G Lakatta; Terho Lehtimäki; Ruth J F Loos; Gavin Lucas; Pierre Meneton; Lyle J Palmer; Rainer Rettig; Harold Snieder; E Shyong Tai; Yik-Ying Teo; Pim van der Harst; Nicholas J Wareham; Cisca Wijmenga; Tien Yin Wong; Myriam Fornage; Vilmundur Gudnason; Daniel Levy; Walter Palmas; Paul M Ridker; Jerome I Rotter; Cornelia M van Duijn; Jacqueline C M Witteman; Aravinda Chakravarti; Dabeeru C Rao
Journal:  Am J Hum Genet       Date:  2014-06-19       Impact factor: 11.025

10.  Gender specific association of RAS gene polymorphism with essential hypertension: a case-control study.

Authors:  Kh Dhanachandra Singh; Ajay Jajodia; Harpreet Kaur; Ritushree Kukreti; Muthusamy Karthikeyan
Journal:  Biomed Res Int       Date:  2014-04-17       Impact factor: 3.411

View more
  2 in total

1.  Regional gender differences in an autosomal disease result in corresponding diversity differences.

Authors:  Shenmin Guan; Yingying Zhao; Xiao Zhuo; Wenhui Song; Xiaorui Geng; Huanming Yang; Jian Wang; Xinhua Wu; Jinlong Yang; Xin Song; Le Cheng
Journal:  Sci Rep       Date:  2019-04-02       Impact factor: 4.379

2.  Associations of the MCM6-rs3754686 proxy for milk intake in Mediterranean and American populations with cardiovascular biomarkers, disease and mortality: Mendelian randomization.

Authors:  Caren E Smith; Oscar Coltell; Jose V Sorlí; Ramón Estruch; Miguel Ángel Martínez-González; Jordi Salas-Salvadó; Montserrat Fitó; Fernando Arós; Hassan S Dashti; Chao Q Lai; Leticia Miró; Lluís Serra-Majem; Enrique Gómez-Gracia; Miquel Fiol; Emilio Ros; Stella Aslibekyan; Bertha Hidalgo; Marian L Neuhouser; Chongzhi Di; Katherine L Tucker; Donna K Arnett; José M Ordovás; Dolores Corella
Journal:  Sci Rep       Date:  2016-09-14       Impact factor: 4.379

  2 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.