Skip to main content
Lipids in Health and Disease logoLink to Lipids in Health and Disease
. 2014 Aug 3;13:123. doi: 10.1186/1476-511X-13-123

Association of the ST3GAL4 rs11220462 polymorphism and serum lipid levels in the Mulao and Han populations

Quan-Zhen Lin 1, Rui-Xing Yin 1,, Tao Guo 1, Jian Wu 1, Jia-Qi Sun 1, Shao-Wen Shen 1, Guang-Yuan Shi 1, Jin-Zhen Wu 1, Cheng-Wu Liu 2, Shang-Ling Pan 2
PMCID: PMC4237880  PMID: 25086711

Abstract

Background

A previous genome-wide association study has displayed the association of the ST3 beta-galactoside alpha-2,3-sialytransferase 4 (ST3GAL4) gene variant and lipid traits in the individuals of European ancestry, but the reproducibility of this association has not been detected in the Chinese population. The present study was undertaken to detect the association of ST3GAL4 rs11220462 single nucleotide polymorphism (SNP) and several environmental factors with serum lipid profiles in the Mulao and Han populations.

Methods

A total of 700 unrelated individuals of Mulao nationality and 694 subjects of Han nationality were randomly selected from our previous stratified randomized samples. Genotypes of the SNP were determined via polymerase chain reaction and restriction fragment length polymorphism in combination with gel electrophoresis, and then verified by direct sequencing.

Results

Serum apolipoprotein (Apo) B levels were higher and the ApoAI/ApoB ratio was lower in Mulao than in Han (P < 0.05-0.01). There were no significant differences in the genotypic and allelic frequencies of the ST3GAL4 rs11220462 SNP between the two ethnic groups or between males and females. The A allele carriers in both Mulao males and females had higher total cholesterol (TC), low-density lipoprotein cholesterol (LDL-C), and ApoB levels than the A allele non-carriers (P < 0.05-0.01). The subjects with AA genotype in Han males but not in females had higher TC and triglyceride (TG) levels than the subjects with AG or GG genotype (P < 0.01 for each). Multiple linear regression analyses showed that the levels of TC, LDL-C and ApoB in Mulao females; TC and LDL-C in Mulao males; and TC in Han males were correlated with the genotypes (P < 0.05-0.001). Serum lipid parameters were also associated with several environmental factors in both ethnic groups (P < 0.05 -0.001).

Conclusions

The association of ST3GAL4 rs11220462 SNP and serum lipid levels was different between the Mulao and Han populations, suggesting that there may be a racial/ethnic-specific association, and/or sex-specific association between the ST3GAL4 rs11220462 SNP and serum lipid parameters in some ethnic groups.

Keywords: Lipids; ST3 beta-galactoside alpha-2,3-sialytransferase 4; Single nucleotide polymorphism; Environmental factors

Background

It is well known that coronary artery disease (CAD) is the leading cause of morbidity and mortality globally [1,2]. Dyslipidemia, associated with elevating total cholesterol (TC) [3], triglyceride (TG) [4], low-density lipoprotein cholesterol (LDL-C) [5], and apolipoprotein (Apo) B [6], or low levels of high-density lipoprotein cholesterol (HDL-C) [7] and ApoAI [6], plays a significant role for CAD and is the main target for therapeutic intervention. The heritability estimates of the interindividual variations in serum lipid levels from both twin and family studies are in the range of 0.48-0.87 [8-11], suggesting a considerable genetic contribution. Therefore, the understanding of the association of genetic variants and serum lipid levels may provide new insights into target preventive intervention for CAD.

Over the years, candidate gene studies as well as genome-wide association studies (GWASs) have enabled the identification of thousands of single nucleotide polymorphisms (SNPs) associated with complex human diseases and traits. These studies based on large numbers of normolipidemic individuals indicated that considerable new SNPs had replicable modest associations with plasma concentrations of TC, TG, LDL-C, and HDL-C [12-18]. The ST3 beta-galactoside alpha-2,3-sialytransferase 4 (ST3GAL4, as known as SIAT4) rs11220462 (http://www.ncbi.nlm.nih.gov/gene/6484) is one of the identified SNPs in recent years. ST3GAL4 locates on chromosome 11q24.2 [15] and encodes a member of the glycosyltransferase 29 family, a group of enzymes involved in protein glycosylation. The products of ST3GAL4 were associated with increasing risk of cirrhosis, type 2 diabetes and cardiovascular disease by influencing liver enzyme concentrations [19]. Interestingly, ST3GAL4 has been correlated to endothelial dysfunction and the synthesis of E-selectin ligands, which were associated with metabolic syndrome and coronary artery calcification [20,21]. In a previous GWAS, the SNP of ST3GAL4 rs11220462 has been associated with TC and LDL-C concentrations in European population [15]. But the reproducibility and repeatability of this association have not been carried out in the Chinese population so far. Therefore, it would be attractive to characterize the association between the rs11220462 SNP and serum lipid levels in the Chinese population.

China is a multiethnic country. Han nationality is the largest one of 56 ethnic groups, and Mulao nationality is the twenty-ninth largest (with population of 207,352 in 2000) among the 55 minorities. Ninety percent of them live in the Luocheng Mulao Autonomous Country, Guangxi Zhuang Autonomous Region, People’s Republic of China. The history of this minority can be traced back to the Jin Dynasty (AD 265–420). It is well known that the people of Mulao are the descendants of the ancient Baiyue tribe in south China. In a previous study, Xu et al. [22] showed that the genetic relationship between Mulao nationality and other minorities in Guangxi was much closer than that between Mulao and Han or Uighur nationality. To the best of our knowledge, the association between ST3GAL4 rs11220462 SNP and serum lipid levels has not been previously explored in the Chinese population. Therefore, the aim of the present study was to detect the association of ST3GAL4 rs11220462 SNP and several environmental factors with serum lipid traits in the Guangxi Mulao and Han populations.

Results

General characteristics and serum lipid levels

The baseline characteristics and serum lipid levels of the Mulao and Han populations are presented in Table 1. The levels of weight, body mass index (BMI), the ratio of ApoAI to ApoB and the percentages of individuals who smoked cigarettes were lower in Mulao than in Han (P < 0.05-0.001), whereas the levels of ApoB were higher in Mulao than in Han (P < 0.05). There were no significant differences in the levels of age structure, body height, waist circumference, systolic blood pressure, diastolic blood pressure, pulse pressure, blood glucose, TC, TG, HDL-C, LDL-C, ApoAI; the percentages of subjects who consumed alcohol; and the ratio of male to female between the two ethnic groups (P > 0.05 for all).

Table 1.

Comparison of demography, lifestyle and serum lipid levels between the Mulao and Han populations

Parameter Han Mulao t ( χ 2 ) P
Number
694
700
 
 
Male/female
331/363
337/363
0.280
0.867
Age (years)
52.26 ± 15.02
52.56 ± 15.04
0.379
0.705
Height (cm)
154.93 ± 8.12
155.49 ± 8.07
1.291
0.197
Weight (kg)
54.02 ± 9.12
53.02 ± 9.40
−1.998
0.046
Body mass index (kg/m2)
22.48 ± 3.39
21.87 ± 3.08
−3.553
0.000
Waist circumference (cm)
75.62 ± 7.91
75.13 ± 8.67
−1.099
0.272
Cigarette smoking [n (%)]
 
 
 
 
 Nonsmoker
480 (69.2)
512 (73.1)
 
 
 ≤ 20 cigarettes/day
192 (27.6)
151 (21.6)
9.728
0.008
 > 20 cigarettes/day
22 (3.2)
37 (5.3)
 
 
Alcohol consumption [n (%)]
 
 
 
 
 Nondrinker
516 (74.3)
515 (73.6)
 
 
 ≤ 25g/day
81 (11.7)
70 (10.0)
2.305
0.316
 > 25g/day
97 (14.0)
115 (16.4)
 
 
Systolic blood pressure (mmHg)
130.51 ± 19.29
129.25 ± 21.52
−1.150
0.250
Diastolic blood pressure (mmHg)
82.14 ± 11.01
80.97 ± 11.89
1.912
0.056
Pulse pressure (mmHg)
48.37 ± 15.02
48.28 ± 15.82
−0.102
0.918
Blood glucose (mmol/L)
5.97 ± 1.58
5.97 ± 1.52
−0.034
0.973
Total cholesterol (mmol/L)
5.03 ± 0.94
4.98 ± 1.08
−0.931
0.352
Triglyceride (mmol/L)
1.08 (0.86)
1.07 (0.79)
−0.882
0.378
HDL-C (mmol/L)
1.75 ± 0.54
1.75 ± 0 .45
0.096
0.924
LDL-C (mmol/L)
2.90 ± 0.80
2.93 ± 0.83
0.088
0.930
Apolipoprotein (Apo) AI (g/L)
1.35 ± 0.60
1.32 ± 0.40
−1.815
0.070
ApoB (g/L)
0.85 ± 0.18
0.96 ± 0.54
5.196
0.000
ApoAI/ApoB 1.65 ± 0 .48 1.57 ± 0.74 −2.298 0.022

TC, total cholesterol; TG, triglyceride; HDL-C, high-density lipoprotein cholesterol; LDL-C, low-density lipoprotein cholesterol; ApoAI, apolipoprotein AI; ApoB, apolipoprotein B. The quantitative variables were presented as mean ± standard deviation and their difference between the groups was determined by the t-test. The values of triglyceride were presented as median (interquartile range), and their difference between the groups was determined by the Wilcoxon-Mann–Whitney test. The difference in Percentages of cigarette smoking and alcohol consumption between the groups was determined by Chi-square -test.

Genotypic and allelic frequencies

The genotypic and allelic frequencies of the rs11220462 SNP in the both ethnic groups are shown in Table 2. The frequencies of G and A alleles were 64.5% and 35.5% in Mulao; and 61.7% and 38.3% in Han (P > 0.05); respectively. The frequencies of GG, AG and AA genotypes were 40.7%, 48.1% and 11.2% in Mulao, and 36.4%, 50.6% and 13.0% in Han (P > 0.05); respectively. There was no significant difference in the genotypic and allelic frequencies between males and females in the both ethnic groups (P > 0.05 for all).

Table 2.

Comparison of the genotypic and allelic frequencies between the Mulao and Han populations [n (%)]

Group
n
Genotype
Allele
HWE
    GG AG AA G A ( P value)
Han
694
253 (36.4)
351 (50.6)
90 (13.0)
857 (61.7)
531 (38.3)
0.063
Mulao
700
281 (40.1)
341 (48.7)
78 (11.2)
903 (64.5)
497 (35.5)
0.092
χ 2
-
2.444
2.275
P
-
0.295
0.131
Han
 
 
 
 
 
 
 
Male
331
119 (36.0)
169 (51.0)
43 (13.0)
407 (61.5)
255 (38.5)
0.156
Female
363
134 (36.9)
182 (50.1)
47 (13.0)
450 (62.0)
276 (38.0)
0.224
χ 2
-
0.073
0.037
P
-
0.964
0.847
Mulao
 
 
 
 
 
 
 
Male
337
127 (37.6)
165 (49.0)
45 (13.4)
419 (62.2)
255 (37.8)
0.453
Female
363
154 (42.4)
176 (48.5)
33 (9.1)
484 (66.7)
242 (33.3)
0.083
χ 2
-
3.835
3.092
P - 0.147 0.079

HWE, Hardy–Weinberg equilibrium. Difference in genotype or allele distribution between the groups was tested by the Chi-square test; a standard goodness-of-fit test was used to test the Hardy–Weinberg equilibrium.

Genotypes and serum lipid levels

As shown in Table 3, the levels of TC and LDL-C in Mulao but not in Han were different among the AA, AG and GG genotypes after adjusting age, sex, height, BMI, blood pressure, cigarette smoking, alcohol consumption and blood glucose (P < 0.01 for each); the A allele carriers had higher levels of TC and LDL-C than the A allele non-carriers. In the subgroup analyses, the levels of TC and TG in Han males but not in females were different among the genotypes (P < 0.01 for each), the subjects with AA genotype had higher TC and TG levels than the subjects with AG or GG genotype. For the Mulao population, the levels of TC, LDL-C and ApoB in both males and females were also different among the genotypes (P < 0.05-0.01), the A allele carriers had higher serum TC, LDL-C and ApoB levels than the A allele non-carriers.

Table 3.

Comparison of serum lipid levels among the genotypes in the Mulao and Han populations

Genotype
n
TC
TG
HDL-C
LDL-C
ApoAI
ApoB
ApoAI/ApoB
    (mmol/L) (mmol/L) (mmol/L) (mmol/L) (g/L) (g/L)  
Han
 
 
 
 
 
 
 
 
GG
253
5.00 ± 0.96
1.08 (1.07)
1.71 ± 0.55
2.85 ± 0.78
1.36 ± 0.29
0.87 ± 0.19
1.64 ± 0.53
AG
351
5.05 ± 0.92
1.05 (0.74)
1.77 ± 0.60
2.95 ± 0.81
1.35 ± 0.23
0.85 ± 0.18
1.65 ± 0.44
AA
90
5.10 ± 0.99
1.08 (1.09)
1.73 ± 0.43
2.96 ± 0.81
1.36 ± 0.30
0.85 ± 0.19
1.68 ± 0.50
F
-
0.519
4.963
1.041
0.309
0.121
0.391
0.437
P
-
0.595
0.084
0.353
0.734
0.886
0.676
0.646
Mulao
 
 
 
 
 
 
 
 
GG
286
4.80 ± 1.18
1.04 (0.84)
1.73 ± 0.41
2.82 ± 0.82
1.31 ± 0.41
0.89 ± 0.25
1.57 ± 0.70
AG
344
5.09 ± 1.01
1.10 (0.73)
1.77 ± 0.49
2.98 ± 0.83
1.33 ± 0.39
0.90 ± 0.53
1.58 ± 0.79
AA
76
5.17 ± 0.89
1.15 (0.77)
1.74 ± 0.41
3.09 ± 0.80
1.30 ± 0.42
0.98 ± 0.61
1.53 ± 0.64
F
-
7.378
1.784
0.910
5.405
0.056
0.587
0.086
P
-
0.001
0.410
0.403
0.005
0.946
0.556
0.918
Han/male
 
 
 
 
 
 
 
 
GG
120
5.00 ± 0.97
1.32 (1.18)
1.65 ± 0.42
2.90 ± 0.73
1.36 ± 0.32
0.91 ± 0.19
1.57 ± 0.58
AG
182
5.20 ± 0.73
1.09 (0.72)
1.73 ± 0.35
3.02 ± 0.68
1.37 ± 0.23
0.90 ± 0.15
1.57 ± 0.35
AA
29
5.41 ± 0.95
1.36 (0.47)
1.70 ± 0.69
3.04 ± 0.86
1.41 ± 0.39
0.89 ± 0.17
1.66 ± 0.58
F
-
7.255
12.933
1.734
1.422
2.147
0.736
1.304
P
-
0.001
0.002
0.178
0.243
0.118
0.480
0.273
Han/female
 
 
 
 
 
 
 
 
GG
134
4.99 ± 0.96
0.96 (0.38)
1.80 ± 0.43
2.88 ± 0.83
1.35 ± 0.25
0.83 ± 0.17
1.70 ± 0.48
AG
182
4.90 ± 1.05
0.98 (0.79)
1.81 ± 0.76
2.88 ± 0.91
1.32 ± 0.23
0.81 ± 0.20
1.73 ± 0.51
AA
47
4.80 ± 0.94
1.07 (0.59)
1.71 ± 0.38
2.88 ± 0.77
1.32 ± 0.18
0.81 ± 0.20
1.70 ± 0.40
F
-
1.215
3.999
0.648
0.113
0.305
1.166
0.973
P
-
0.298
0.135
0.524
0.894
0.737
0.313
0.379
Mulao/male
 
 
 
 
 
 
 
 
GG
130
4.77 ± 1.17
1.04 (1.05)
1.75 ± 0.44
2.72 ± 0.82
1.31 ± 0.46
0.88 ± 0.17
1.59 ± 0.68
AG
167
5.04 ± 0.85
1.17 (1.05)
1.75 ± 0.57
2.96 ± 0.73
1.36 ± 0.39
0.90 ± 0.66
1.52 ± 0.69
AA
43
5.08 ± 0.84
1.15 (0.77)
1.66 ± 0.37
2.97 ± 0.81
1.23 ± 0.42
0.91 ± 0.47
1.42 ± 0.51
F
-
5.108
2.476
0.839
3.230
1.478
3.182
1.166
P
-
0.007
0.290
0.433
0.041
0.230
0.043
0.313
Mulao/female
 
 
 
 
 
 
 
 
GG
156
4.82 ± 1.18
1.04 (0.64)
1.72 ± 0.39
2.90 ± 0.82
1.32 ± 0.37
0.88 ± 0.35
1.56 ± 0.71
AG
177
5.03 ± 1.14
1.01 (0.66)
1.78 ± 0.41
3.00 ± 0.91
1.30 ± 0.38
0.93 ± 0.33
1.64 ± 0.87
AA
33
5.40 ± 0.92
1.04 (0.73)
1.84 ± 0.44
3.29 ± 0.89
1.39 ± 0.41
1.04 ± 0.70
1.68 ± 0.76
F
-
4.376
0.393
1.251
3.097
0.891
3.678
0.289
P - 0.023 0.822 0.287 0.049 0.411 0.026 0.749

TC, total cholesterol; TG, triglycerides; HDL-C, high-density lipoprotein cholesterol; LDL-C, low-density lipoprotein cholesterol; ApoAI, Apo lipoprotein AI; ApoB, Apo lipoprotein B. The association of genotypes and serum lipid parameters was tested by analysis of covariance (co-variables include sex, age, body mass index, blood pressure, alcohol consumption, cigarette smoking and blood glucose). The value of TG was presented as median (interquartile range), and their difference among the genotypes was determined the Wilcoxon-Mann–Whitney test.

Risk factors for serum lipid parameters

The risk factors for serum lipid parameters in Mulao and Han are shown in Table 4. The levels of TC and LDL-C in Mulao but not in Han were correlated with the genotypes (P < 0.05 for each). Serum TC and LDL-C levels in both Mulao males and females, ApoB levels in Mulao females, and TC levels in Han males were correlated with genotypes (P < 0.05 for all, Table 5); respectively. Serum lipid parameters were also correlated with several environmental factors such as age, gender, height, weight, BMI, waist circumference, alcohol consumption, cigarette smoking, blood pressure and blood glucose in both ethnic groups (P < 0.05-0.001; Tables 4 and 5).

Table 4.

Relative risk factors for serum lipid parameters in the Mulao and Han populations

Lipid parameter Risk factor Unstandardized coefficient Standard error Standardized coefficient t P
Han/Mulao
 
 
 
 
 
 
TC
Age
0.010
0.002
0.168
5.242
0.000
Genotype
−0.133
0.040
−0.087
−3.359
0.001
 
Alcohol consumption
0.080
0.036
0.058
2.232
0.026
 
Systolic blood pressure
0.004
0.001
0.083
2.867
0.004
Body mass index
0.046
0.008
0.147
5.530
0.000
TG
Waist circumference
0.029
0.006
0.196
4.695
0.000
Alcohol consumption
0.185
0.044
0.113
4.171
0.000
Blood glucose
0.068
0.020
0.086
3.375
0.001
Diastolic blood pressure
0.010
0.003
0.097
3.681
0.000
Weight
0.095
0.025
0.723
3.796
0.000
 
Height
−0.066
0.018
−0.442
−3.646
0.000
HDL-C
Waist circumference
−0.007
0.002
−0.109
−2.695
0.007
Alcohol consumption
0.104
0.019
0.154
5.586
0.000
Weight
−0.009
0.002
−0.175
−4.127
0.000
LDL-C
Body mass index
0.042
0.007
0.169
6.330
0.000
Age
0.008
0.002
0.152
5.350
0.000
Genotype
−0.083
0.032
−0.068
−2.611
0.009
Alcohol consumption
−0.081
0.029
−0.074
−2.804
0.005
Systolic blood pressure
0.002
0.001
0.059
2.044
0.041
ApoAI
Ethnic group
0.040
0.017
0.059
2.265
0.024
 
Gender
0.059
0.021
0.087
2.774
0.006
Age
0.001
0.001
0.052
2.007
0.045
 
Alcohol consumption
0.130
0.014
0.284
9.210
0.000
Waist circumference
−0.005
0.001
−0.125
−4.675
0.000
ApoB
Ethnic group
−0.122
0.021
−0.149
−5.772
0.000
Body mass index
0.010
0.005
0.079
2.168
0.030
Waist circumference
0.007
0.002
0.134
3.695
0.000
 
Pulse pressure
0.003
0.001
0.117
4.464
0.000
 
Blood glucose
0.019
0.007
0.07
2.657
0.008
ApoAI/ApoB
Ethnic group
0.103
0.032
0.083
3.256
0.001
 
Gender
0.202
0.044
0.162
4.553
0.000
 
Waist circumference
−0.013
0.003
−0.173
−4.086
0.000
 
Blood glucose
−0.031
0.011
−0.077
−2.957
0.003
Alcohol consumption
0.132
0.026
0.156
5.125
0.000
Height
0.014
0.003
0.178
4.929
0.000
Weight
−0.010
0.003
−0.145
−2.874
0.004
Han
 
 
 
 
 
 
TC
Age
0.009
0.003
0.150
3.613
0.000
Waist circumference
0.022
0.005
0.182
4.702
0.000
Systolic blood pressure
0.005
0.002
0.110
2.642
0.008
Alcohol consumption
0.136
0.051
0.104
2.653
0.008
Height
−0.011
0.005
−0.098
−2.401
0.017
TG
Waist circumference
0.056
0.006
0.329
9.030
0.000
Blood glucose
0.121
0.030
0.141
4.076
0.000
Alcohol consumption
0.240
0.065
0.129
3.697
0.001
Diastolic blood pressure
0.010
0.004
0.086
2.422
0.016
HDL-C
Alcohol consumption
0.118
0.033
0.158
3.583
0.000
Waist circumference
−0.013
0.003
−0.195
−5.094
0.000
 
Gender
0.222
0.055
0.206
4.067
0.000
 
Cigarette smoking
0.142
0.047
0.141
3.022
0.003
 
Age
0.003
0.001
0.080
2.178
0.030
LDL-C
Body mass index
0.044
0.009
0.185
5.085
0.000
Age
0.012
0.002
0.233
6.394
0.000
ApoAI
Gender
0.065
0.026
0.125
2.515
0.012
Alcohol consumption
0.142
0.015
0.394
9.480
0.000
 
Weight
−0.007
0.001
−0.250
−6.288
0.000
 
Cigarette smoking
0.092
0.021
0.189
4.308
0.000
ApoB
Waist circumference
0.006
0.001
0.254
4.621
0.000
 
Systolic blood pressure
0.001
0.000
0.136
3.800
0.000
Body mass index
0.007
0.003
0.120
2.207
0.028
Blood glucose
0.014
0.004
0.118
3.411
0.001
Gender
−0.060
0.016
−0.162
−3.712
0.000
 
Height
−0.002
0.001
−0.105
−2.146
0.032
ApoAI/ApoB
Body mass index
−0.030
0.007
−0.214
−4.592
0.000
Alcohol consumption
0.134
0.028
0.199
4.848
0.000
Waist circumference
−0.011
0.003
−0.183
−3.850
0.000
Gender
0.258
0.046
0.267
5.641
0.000
Cigarette smoking
0.170
0.039
0.189
4.322
0.000
Mulao
 
 
 
 
 
 
TC
Age
0.010
0.003
0.142
3.874
0.000
Body mass index
0.053
0.013
0.150
4.087
0.000
Genotype
−0.207
0.060
−0.126
−3.432
0.001
TG
Waist circumference
0.021
0.006
0.171
3.296
0.001
Alcohol consumption
0.136
0.051
0.095
2.669
0.008
Body mass index
0.055
0.018
0.158
3.059
0.002
 
Diastolic blood pressure
0.010
0.003
0.107
2.888
0.004
HDL-C
Body mass index
−0.041
0.005
−0.277
−7.641
0.000
Alcohol consumption
0.101
0.026
0.169
3.876
0.000
 
Gender
0.084
0.039
0.093
2.126
0.034
LDL-C
Body mass index
0.046
0.010
0.170
4.610
0.000
Age
0.007
0.002
0.127
3.467
0.001
Genotype
−0.142
0.046
−0.113
−3.060
0.002
 
Gender
0.149
0.061
0.090
2.440
0.015
ApoAI
Alcohol consumption
0.115
0.024
0.219
4.887
0.000
Waist circumference
−0.005
0.002
−0.100
−2.632
0.009
 
Gender
0.073
0.036
0.091
1.995
0.046
ApoB
Waist circumference
0.010
0.002
0.162
4.367
0.000
Pulse pressure
0.005
0.001
0.140
3.782
0.000
ApoAI/ApoB Waist circumference
−0.018
0.003
−0.217
−5.846
0.000
Blood glucose
−0.049
0.018
−0.102
−2.761
0.006
Alcohol consumption 0.083 0.036 0.085 2.301 0.022

TC, total cholesterol; TG, triglyceride; HDL-C, high-density lipoprotein cholesterol; LDL-C, low-density lipoprotein cholesterol; ApoAI, Apolipoprotein AI; ApoB, Apolipoprotein B. The correlative factors were determined by multivariable linear regression analysis with stepwise modeling.

Table 5.

Relative risk factors for serum lipid parameters in males and females of the Mulao and Han populations

Lipid parameter Risk factor Unstandardized coefficient Standard error Standardized coefficient t P
Han/male
 
 
 
 
 
 
TC
Diastolic blood pressure
0.019
0.004
0.241
4.461
0.000
Genotype
−0.292
0.072
−0.219
−4.049
0.000
 
Alcohol consumption
0.113
0.056
0.109
2.024
0.044
TG
Waist circumference
0.074
0.010
0.387
7.655
0.000
Blood glucose
0.131
0.045
0.148
2.924
0.004
Alcohol consumption
0.278
0.092
0.152
3.017
0.003
HDL-C
Waist circumference
−0.018
0.003
−0.335
−6.398
0.000
Alcohol consumption
0.119
0.027
0.227
4.398
0.000
Cigarette smoking
0.142
0.039
0.192
3.681
0.000
Diastolic blood pressure
0.006
0.002
0.167
3.164
0.002
LDL-C
Body mass index
0.031
0.010
0.163
2.967
0.003
Cigarette smoking
−0.187
0.068
−0.152
−2.763
0.006
 
Age
0.005
0.003
0.113
2.063
0.040
ApoAI
Alcohol consumption
0.157
0.017
0.453
9.328
0.000
Weight
−0.009
0.002
−0.290
−5.951
0.000
Cigarette smoking
0.090
0.024
0.183
3.783
0.000
Diastolic blood pressure
0.003
0.001
0.128
2.644
0.009
ApoB
Body mass index
0.013
0.003
0.292
4.625
0.000
Waist circumference
0.004
0.001
0.190
2.986
0.003
Blood glucose
0.013
0.005
0.136
2.691
0.008
ApoAI/ApoB
Alcohol consumption
0.143
0.028
0.253
5.140
0.000
Weight
−0.055
0.013
−1.045
−4.357
0.000
Cigarette smoking
0.130
0.039
0.162
3.360
0.001
Height
0.040
0.012
0.645
3.442
0.001
Systolic blood pressure
0.004
0.001
0.142
2.862
0.004
Han/female
 
 
 
 
 
 
TC
Age
0.019
0.004
0.272
5.099
0.000
 
Waist circumference
0.026
0.007
0.186
3.716
0.000
 
Height
−0.025
0.009
−0.151
−2.862
0.004
TG
Waist circumference
0.042
0.008
0.268
5.104
0.000
Blood glucose
0.098
0.040
0.123
2.427
0.016
 
Diastolic blood pressure
0.013
0.005
0.121
2.312
0.021
HDL-C
Waist circumference
−0.010
0.005
−0.118
−2.208
0.028
LDL-C
Age
0.017
0.003
0.285
5.288
0.000
 
Waist circumference
0.026
0.006
0.217
4.374
0.000
 
Height
−0.018
0.007
−0.129
−2.447
0.015
Alcohol consumption
−0.409
0.179
−0.113
−2.279
0.023
ApoAI
Body mass index
−0.011
0.004
−0.141
−2.628
0.009
Cigarette smoking
0.187
0.068
0.145
2.760
0.006
 
Diastolic blood pressure
−0.003
0.001
−0.131
−2.431
0.016
ApoB
Waist circumference
0.009
0.001
0.336
7.006
0.000
 
Pulse pressure
0.003
0.001
0.194
3.746
0.000
 
Height
−0.005
0.002
−0.150
−3.021
0.003
Blood glucose
0.015
0.007
0.112
2.265
0.024
ApoAI/ApoB
Waist circumference
−0.018
0.003
−0.277
−5.576
0.000
 
Systolic blood pressure
−0.006
0.001
−0.239
−4.698
0.000
 
Cigarette smoking
0.399
0.125
0.154
3.194
0.002
 
Height
0.009
0.004
0.118
2.371
0.018
Mulao/male
 
 
 
 
 
 
TC
Body mass index
0.043
0.018
0.133
2.442
0.015
 
Genotype
−0.161
0.081
−0.108
−1.976
0.049
TG
Waist circumference
0.025
0.011
0.171
2.280
0.023
Diastolic blood pressure
0.015
0.006
0.139
2.588
0.010
 
Body mass index
0.085
0.032
0.200
2.626
0.009
HDL-C
Body mass index
−0.050
0.008
−0.309
−5.993
0.000
Alcohol consumption
0.110
0.029
0.195
3.775
0.000
LDL-C
Genotype
−0.153
0.063
−0.133
−2.435
0.015
ApoAI
Alcohol consumption
0.121
0.025
0.253
4.786
0.000
Waist circumference
−0.006
0.002
−0.134
−2.526
0.012
ApoB
Pulse pressure
0.008
0.002
0.219
3.986
0.000
Age
−0.004
0.002
−0.117
−2.145
0.033
 
Body mass index
0.022
0.010
0.124
2.323
0.021
ApoAI/ApoB
Waist circumference
−0.017
0.004
−0.230
−4.361
0.000
 
Alcohol consumption
0.136
0.040
0.180
3.411
0.001
Mulao/female
 
 
 
 
 
 
TC
Age
0.014
0.004
0.185
3.652
0.000
Genotype
−0.261
0.091
−0.145
−2.862
0.004
Body mass index
0.060
0.019
0.160
3.168
0.002
TG
Waist circumference
0.024
0.005
0.232
4.529
0.000
HDL-C
Body mass index
−0.033
0.007
−0.248
−4.861
0.000
LDL-C
Age
0.012
0.003
0.213
4.285
0.000
 
Body mass index
0.068
0.014
0.236
4.747
0.000
 
Genotype
−0.261
0.091
−0.145
−2.862
0.004
ApoB
Age
0.004
0.002
0.127
2.470
0.014
 
Waist circumference
0.013
0.003
0.189
3.740
0.000
 
Blood glucose
0.056
0.020
0.143
2.769
0.006
Genotype
0.098
0.042
0.117
2.339
0.020
ApoAI/ApoB
Waist circumference
−0.019
0.005
−0.191
−3.733
0.000
  Age −0.008 0.003 −0.159 −3.114 0.002

TC, total cholesterol; TG, triglyceride; HDL-C, high-density lipoprotein cholesterol; LDL-C, low-density lipoprotein cholesterol; ApoAI, Apolipoprotein AI; ApoB, Apolipoprotein B. The correlative factors were determined by multivariable linear regression analysis with stepwise modeling.

Discussion

In the current study, we showed that the levels of ApoB were higher whereas the ratio of ApoAI to ApoB was lower in Mulao than in Han (P < 0.05 for each). There were no significant differences in the levels of TC, TG, HDL-C, LDL-C and ApoAI between the two ethnic groups (P > 0.05 for all). In contrast with developed countries, China has experienced a considerable increase in the prevalence of CAD over the past several decades [23]. Evidence of the relationship between dyslipidemia and CAD has been established worldwide. It is well recognized that dyslipidemia is a multifactorial and complicated origin which combined by genetic factors with environmental factors including demographics, diet, alcohol consumption, cigarette smoking, obesity, exercise, hypertension [24]. Thus, prediction of the risk for dyslipidemia on the basis of genetic variants would be beneficial for the personalized prevention of CAD. Recent GWASs and meta-analysis on European population have identified many genes previously implicated in lipid regulation. However, validation of these loci on different global populations is still unclear.

Mulao nationality is one of the 11 minorities in Guangxi Zhuang Autonomous Region, which is a genetic feature distinctive nationality. Strict intra-ethnic marriages have been performed in this population and they have unique lifestyle as well as diet from time immemorial. Therefore, we surmised that the hereditary characteristic and some lipid-related gene polymorphisms in the Mulao population may be different from those in Han nationality.

The genotypic and allelic frequencies of ST3GAL4 rs11220462 SNP in diverse racial/ethnic groups have not been reported. The data in the International HapMap Project’s data-base have showed that the frequencies of A allele and AA, AG genotypes were 42.0%, 15.9% and 52.3% in Han Chinese in Beijing; 30.7%, 9.1% and 43.2% in Japanese; and 15.8%, 1.7% and 0% in Yoruba; respectively. In the present study, we showed that the frequencies of A allele and AA, AG genotypes were 35.5%, 11.2% and 48.7% in Mulao; and 38.3%, 13.0% and 50.6% in Han; respectively. There were no conspicuous differences in the genotypic and allelic frequencies of the rs11220462 SNP between the Mulao and Han populations, or between males and females in the both ethnic groups. As compared with the data in the International HapMap Project’s data-base, we found that the frequencies of the A allele and AA, AG genotypes in our study populations were lower than those in Han Chinese from Beijing, which may be caused by different sample sizes and regions.

The potential association between the rs11220462 SNP and serum lipid levels in humans has been detected in a previous GWAS. Teslovich et al. [15] showed that the rs11220462 SNP was significant associated with LDL-C concentration (P = 1.20 × 10−15) in population of European descent. In our present study, we found that the levels of TC and LDL-C were different among the AA, AG and GG genotypes of the rs11220462 SNP in Mulao, the A allele carriers had higher serum TC, LDL-C and ApoB levels than the A allele non-carriers in the both males and females. For Han nationality, the levels of TC and TG were also different among the three genotypes in males but not in females, the subjects with AA genotype had higher TC and TG levels than the subjects with AG or GG genotype. These findings suggest that the association of rs11220462 SNP and serum lipid levels is different between the two ethnic groups, and there may be a sex-specific association of rs11220462 SNP and serum lipid parameters in the Han population. These differences may also be related to the variations in examined populations, including physical condition, environmental factors such as diet or under medication. Therefore, the association of the ST3GAL4 rs11220462 SNP and serum lipid levels needs to be further studied with larger sample size.

There was no previous study to report the direct effect of ST3GAL4 rs11220462 SNP on serum lipid levels. We suspected that there may be several potential mechanisms to explain the association between the rs11220462 SNP and serum lipid levels. Firstly, ST3GAL4 encodes a member of the glycosyltransferase 29 family which was associated with increasing risk of type 2 diabetes and cardiovascular disease [19]. Secondly, Adamska et al.[21] reported that the ST3GAL4 plays a key role in the synthesis of E-selectin ligands which is associated with metabolic syndrome and coronary artery calcification. Thirdly, a recent GWAS has identified several intronic SNPs including rs11220462 associated with lipid levels [15]. About 5-10% of genomic variants found in familial hypercholesterolemia are located in the introns of the candidate genes and are classified as splicing mutations [25]. More and more researcher found that intron is involved in mRNA transcription and translation regulation. Finally, microRNAs (miRNAs), a family of small non-coding RNA molecules, appear to regulate animal lipid metabolism and preadipocyte conversion to form lipid-assimilating adipocytes [26]. Recently, genetic model of beef cattle was used to analyze the association between genomic context characteristics of miRNAs (38.7% located in intron) with their function in adipose tissue [27]. The findings suggested that miRNAs play a role in the regulation of bovine adipogenesis and fat metabolism. Taken together, the rs11220462 SNP may act in an intronic variation to influence the ST3GAL4-associated regulatory network or specific miRNAs regulating adipogenesis. However, the biological function and detailed role of ST3GAL4 rs11220462 SNP in lipid metabolism remain unclear and need to be further explored.

It is well realized that environmental factors such as dietary patterns, lifestyle and physical inactivity are all strongly related with serum lipid levels [24]. In the present study, multivariate linear regression analysis also showed that age, sex, BMI, alcohol consumption, cigarette smoking, and blood pressure were involved in determining serum lipid parameters in both ethnic groups. These data suggest that the environmental factors also play an important role in determining serum lipid levels in our study populations. Differences in serum lipid levels between the two ethnic groups could be related to factors such as differences in the genetic background, dietary patterns and lifestyle and their interactions. Although rice and corn are the staple food in the both ethnic groups, the people of Mulao nationality prefer cold foods along with acidic and spicy dishes. Therefore bean soy sauce and pickle vegetables become members of their most popular dishes. Meanwhile, they enjoy eating animal offals which contain abundant saturated fatty acid. For nearly 50 years it has been widely accepted that high-fat diets, particularly those contain rich saturated fatty acids, can raise the serum cholesterol concentrations as well as the risk of suffering cardiovascular disease [28]. Diet alone could be responsible for up to 2.5% of the variability on serum lipid levels [29,30]. A meta-analysis stated that diet modification is a key strategy for prevention and regression of CAD, and for every 1% decrease in energy consumed as dietary saturated fatty acid, TC decreased by 0.056 mmol/L and LDL-C by 0.05 mmol/L [31]. In addition, we also found that the percentages of smokers were higher in Mulao than in Han nationalities (P <0.05). Over the years, the relationship between cigarette smoking and dyslipidemia has been gotten in focus by more and more investigators. A recent study in smoking males (ages from 25 to 35 years old) has found that a significant increase in TC and LDL-C in tobacco users [32,33]. Another recent meta-analysis also reported that smoking increased TG by 0.15 mmol/L, and decreased HDL-C by 0.09 mmol/L with every 20 cigarettes smoked [34]. Therefore, the results of exposure to different lifestyle and environmental factors probably further modify the association of genetic variations and serum lipid levels in our study populations.

There are several major strengths in our study. First, the study is an investigation of a representative random sample of the Mulao population, which retains its regional and special customs in China and may be a useful subgroup for population genetic studies. Second, the sample size of the study is moderate with 700 subjects of Mulao and 694 subjects of Han Chinese. Third, a recent GWAS has reported the association between the rs11220462 SNP and serum lipid levels and our present study is the first replication of GWAS signals in the Chinese population to provide significant evidence for the association of the rs11220462 SNP with lipid traits. To interpret the findings, however, several potential limitations in our study should be acknowledged. First, all of the lifestyle, diet pattern and physical activities are the important factors for lipid regulation and prevalence of CAD, however, the cross-sectional study design limits the ability to determine the effects of them during the statistical analysis since they were self-reported and difficult to classify. Second, although we have explored the association of ST3GAL4 rs11220462 SNP and serum lipid levels, there are still many unmeasured environmental and genetic factors such as other ST3GAL4 SNPs and the interactions of gene-gene and/or gene-environment. Finally, the ST3GAL4 rs11220462 SNP is an intronic variation which does not lead to a change in the amino acid sequence of the ST3GAL4. Thus, the effect of the rs11220462 SNP on lipid metabolism may be limited. To confirm our findings, further in-depth studies on the biological actions of ST3GAL4 rs11220462 variation and the interactions of gene-environment are necessary.

Conclusions

The present study showed that the genotypic and allelic frequencies of ST3GAL4 rs11220462 SNP were not different between the Mulao and Han populations, or between males and females in the both ethnic groups. But the association of the rs11220462 SNP and serum lipid levels is different between the two ethnic groups. The A allele carriers in the both Mulao males and females had higher TC, LDL-C and ApoB levels than the A allele non-carriers. The subjects with AA genotype in Han males but not in females had higher TC and TG levels than the subjects with AG or GG genotype. These findings suggest that there may be a racial/ethnic-specific association, and/or sex-specific association between the ST3GAL4 rs11220462 SNP and serum lipid parameters in some ethnic groups.

Methods and materials

Participants

Participants in the present study included 700 individuals of Mulao nationality who live in Luocheng Mulao Autonomous County, Guangxi Zhuang Autonomous Region, People’s Republic of China. There were 337 males (48.1%) and 363 females (51.9%). All of them were randomly selected from our previous stratified randomized samples [35]. The ages of the participants ranged from 15 to 93 years, with an average age of 52.56 ± 15.04 years. All of them were rural agricultural workers. In the meantime, a total of 694 Han nationality who reside in the same villages were also randomly selected from our previous stratified randomized samples. The average age of the subjects was 52.26 ± 15.02 years, which ranged from 15 to 84 years. There were 331 men (47.7%) and 363 women (52.3%). All of them were also rural agricultural workers. The whole study subjects were essentially healthy and had no evidence of any chronic illness, including hepatic, renal, or thyroid. The participants with a history of heart attack of myocardial infarction, stroke, congestive heart failure, diabetes or fasting blood glucose ≥ 7.0 mmol/L determined by glucose meter were excluded from the analyses. The participants did not take medications known to affect serum lipid levels (lipid-lowering drugs such as statins or fibrates, beta-blockers, diuretics, or hormones). Ethical approval for this study was obtained from the Ethics Committee of the First Affiliated Hospital, Guangxi Medical University. Written informed consent was provided by all participants.

Epidemiological survey

The survey was carried out using internationally standardized methods [36]. All participants underwent a complete history, physical examination, and laboratory assessment of cardiovascular risk factors. Information on demographics, socioeconomic status, and lifestyle factors was collected with standardized questionnaires. Smoking status was categorized into groups of cigarettes per day: ≤ 20 and >20. The alcohol information included questions about the number of liang (about 50 g) of rice wine, corn wine, rum, beer, or liquor consumed during the preceding 12 months. Alcohol consumption was categorized into groups of grams of alcohol per day: ≤ 25 and > 25. Sitting blood pressure was measured three times with the use of a mercury sphygmomanometer after the subjects had a 5-minute rest, and the average of the three measurements was used for the level of blood pressure. Systolic blood pressure was determined by the first Korotkoff sound, and diastolic blood pressure was determined by the fifth Korotkoff sound. Body weight, to the nearest 50 grams, was measured by using a portable balance scale. Subjects were weighed without shoes and minimum of clothing. Height was measured, to the nearest 0.5 cm, using a portable measuring device. From these two measurements, BMI (kg/m2) was calculated.

Laboratory methods

A venous blood sample of 5 mL was drawn from all individuals after an overnight (at least 12 hours) fast. The sample was divided into two parts. One part of the sample (2 mL) was collected into glass tube and allowed to clot at room temperature and used to measure serum lipid levels. Another part of the sample (3 mL) was collected into glass tube with anticoagulate solution (4.80 g/L citric acid, 14.70 g/L glucose, and 13.20 g/L tri-sodium citrate) and used to extract DNA. The levels of serum TC, TG, HDL-C, and LDL-C in the samples were determined by enzymatic methods with commercially available kits (RANDOX Laboratories Ltd., Ardmore, Diamond Road, Crumlin Co. Antrim, United Kingdom, BT29 4QY; Daiichi Pure Chemicals Co., Ltd., Tokyo, Japan). Serum ApoAI and ApoB levels were detected by the immunoturbidimetric immunoassay using a commercial kit (RANDOX Laboratories Ltd.). All determinations were performed with an autoanalyzer (Type 7170A; Hitachi Ltd., Tokyo, Japan) in the Clinical Science Experiment Center of the First Affiliated Hospital, Guangxi Medical University [24].

DNA preparation and genotyping

Genomic DNA was isolated from peripheral blood leukocytes using the phenol-chloroform method [35]. The extracted DNA was stored at −20°C until analysis. Genotyping of the rs11220462 SNP was performed by polymerase chain reaction and restriction fragment length polymorphism (PCR-RFLP). PCR amplification was performed using 5′-CGATGCTATCCGATGAAC-3′ and 5′-TCACTGTAACCTCCACCTC-3′ (Sangon, Shanghai, People’s Republic of China) as the forward and reverse primer pairs; respectively. Each amplification reaction was performed in a total volume of 25 mL reaction mixture, including 100 ng (2 μL) of genomic DNA, 0.75 μL of each primer (10 μmol/L), 12.5 μL 2 × Taq PCR MasterMix (constituent: 0.1 U Taq polymerase/μL, 500 μM dNTP each, 20 mM Tris–HCl, pH 8.3, 100 mM KCL, 3 mM MgCl2, and stabilizers), and 9.0 μL nuclease-free water. After initial denaturizing at 94°C for 5 min, the reaction mixture was subjected to 32 cycles of denaturation at 94°C at 45 s, annealing at 57°C for 35 s and extension 35 s at 72°C, followed by a final 8 min extension at 72°C. After electrophoresis on a 2% agarose gel with 0.5 μg/mL ethidium-bromide, the amplification products were visualized under ultraviolet light. Then the SatI restriction enzyme of 2.0 U was added directly to the reaction system consisting of PCR products (5 μL), 9 μL of nuclease-free water and 1 μL of 10 × buffer solution and digested at 37°C for 8 hours. After restriction enzyme digestion of the amplified DNA, genotypes were identified by electrophoresis on 2.0% agarose gel and visualized with ethidium-bromide staining ultraviolet illumination. The PCR produced a 437-bp fragment including one SatI recognition site for the G allele (Additional file 1: Figure S1). The G allele can be cleaved whereas the A allele cannot be digested (Additional file 2: Figure S2). Therefore, the GG genotype is homozygote for the presence of the site (band at 340- and 97-bp), AG genotype is heterozygote for the absence and resence of the site (bands at 437-, 340- and 97-bp), and AA genotype is homozygote for the absence of the site (bands at 437-bp). Genotypes were scored by an experienced reader blinded to epidemiological data and serum lipid levels. The genotypes detected by PCR-RFLP were also confirmed randomly by direct sequencing (Additional file 3: Figure S3, Sangon Biotech Co., Ltd., Shanghai, People’s Republic of China).

Diagnostic criteria

The normal values of serum TC, TG, HDL-C, LDL-C, ApoAI, ApoB levels and the ratio of ApoAI to ApoB in our Clinical Science Experiment Center were 3.10-5.17, 0.56-1.70, 1.16-1.42, 2.70-3.10 mmol/L, 1.20-1.60, 0.80-1.05 g/L, and 1.00-2.50; respectively [37]. The individuals with TC > 5.17 mmol/L, and/or TG > 1.70 mmol/L were defined as hyperlipidemic [35]. Hypertension was diagnosed according to the criteria of 1999 World Health Organization-International Society of Hypertension Guidelines for the management of hypertension. Hypertension was defined as an average systolic blood pressure (SBP) ≥ 140 mmHg, and/or an average diastolic blood pressure (DBP) ≥ 90 mmHg, and/or self-reported current treatment for hypertension with antihypertensive medication [37]. The diagnostic criteria of overweight and obesity were according to the Cooperative Meta-analysis Group of China Obesity Task Force. Normal weight, overweight and obesity were defined as a BMI < 24, 24–28, > 28 kg/m2; respectively [38].

Statistical analysis

The statistical analyses were done with the statistical software package SPSS16.0 (SPSS Inc., Chicago, Illinois). Quantitative variables were expressed as mean ± standard deviation (serum TG levels were presented as medians and interquartile ranges). Qualitative variables were expressed as percentages.The difference in general characteristics between two ethnic groups was tested by the Student’s unpaired t-test. Allele frequency was determined via direct counting, and the standard goodness-of-fit test was used to test the Handy-Weinberg equilibrium. Difference in genotype distribution between the groups was obtained using the chi-square test. The association of genotypes and serum lipid parameters was tested by analysis of covariance (ANOVA). Age, sex, BMI, blood pressure, alcohol consumption, cigarette smoking and blood glucose were included in the statistical models as covariates. Multiple linear regression analyses adjusted for age, sex, BMI, blood pressure, alcohol consumption, cigarette smoking and blood glucose were also performed to assess the association of serum lipid levels with genotypes (AA = 0, AG = 1, GG = 2) and several environment factors. A P value of less than 0.05 was considered statistically significant.

Competing interests

The authors declare that they have no competing interests.

Authors’ contributions

QZL participated in the design, undertook genotyping, performed the statistical analyses, and drafted the manuscript. RXY conceived the study, participated in the design, carried out the epidemiological survey, collected the samples, and helped to draft the manuscript. TG, JW, JQS, SWS and GYS collaborated to the genotyping. JZW, CWL and SLP carried out the epidemiological survey and collected the samples. All authors read and approved the final manuscript.

Supplementary Material

Additional file 1: Figure S1

Electrophoresis of PCR products of the samples. Lane M, 100 bp marker ladder; lanes 1–5, samples. The 437 bp bands are the target genes.

Click here for file (921KB, tiff)
Additional file 2: Figure S2

Genotyping of the rs11220462 SNP. Lane M, 100 bp marker ladder; lane 1 and 2, AA genotype (437 bp); lanes 3 and 4, AG genotype (437- ,340- and 97-bp); and lanes 5 and 6, GG genotype (340-bp). The 97 bp fragment was invisible in the gel owing to its fast migration speed.

Click here for file (1.8MB, tiff)
Additional file 3: Figure S3

A part of the nucleotide sequence of the 11220462 SNP A > G polymorphism. (A) AA genotype, (B) AG genotype and (C) GG genotype.

Click here for file (1.4MB, tiff)

Contributor Information

Quan-Zhen Lin, Email: linquanzhen2012@163.com.

Rui-Xing Yin, Email: yinruixing@163.com.

Tao Guo, Email: guotaohappiness@126.com.

Jian Wu, Email: wujian.work@outlook.com.

Jia-Qi Sun, Email: yqtouqiqi@sina.com.

Shao-Wen Shen, Email: shaowenshen@163.com.

Guang-Yuan Shi, Email: janeausten2000@126.com.

Jin-Zhen Wu, Email: wujinzhengx@sohu.com.

Cheng-Wu Liu, Email: gxmulchw@126.com.

Shang-Ling Pan, Email: shanglingpan@hotmail.com.

Acknowledgment

This study was supported by the National Natural Science Foundation of China (no. 30960130).

References

  1. Moran A, Forouzanfar M, Sampson U, Chugh S, Feigin V, Mensah G. The epidemiology of cardiovascular diseases in sub-Saharan Africa: the Global Burden of Diseases, Injuries and Risk Factors 2010 Study. Prog Cardiovasc Dis. 2013;56:234–239. doi: 10.1016/j.pcad.2013.09.019. [DOI] [PMC free article] [PubMed] [Google Scholar]
  2. Padmanabhan S, Hastie C, Prabhakaran D, Dominczak AF. Genomic approaches to coronary artery disease. Indian J Med Res. 2010;132:567–578. [PMC free article] [PubMed] [Google Scholar]
  3. Borzyszkowska J, Stanislawska-Sachadyn A, Wirtwein M, Sobiczewski W, Ciecwierz D, Targonski R, Gruchala M, Rynkiewicz A, Limon J. Angiotensin converting enzyme gene polymorphism is associated with severity of coronary artery disease in men with high total cholesterol levels. J Appl Genet. 2012;53:175–182. doi: 10.1007/s13353-012-0083-3. [DOI] [PMC free article] [PubMed] [Google Scholar]
  4. Do R, Willer CJ, Schmidt EM, Sengupta S, Gao C, Peloso GM, Gustafsson S, Kanoni S, Ganna A, Chen J, Buchkovich ML, Mora S, Beckmann JS, Bragg-Gresham JL, Chang HY, Demirkan A, Den Hertog HM, Donnelly LA, Ehret GB, Esko T, Feitosa MF, Ferreira T, Fischer K, Fontanillas P, Fraser RM, Freitag DF, Gurdasani D, Heikkila K, Hypponen E, Isaacs A. et al. Common variants associated with plasma triglycerides and risk for coronary artery disease. Nat Genet. 2013;45:1345–1352. doi: 10.1038/ng.2795. [DOI] [PMC free article] [PubMed] [Google Scholar]
  5. Boekholdt SM, Arsenault BJ, Mora S, Pedersen TR, LaRosa JC, Nestel PJ, Simes RJ, Durrington P, Hitman GA, Welch KM, DeMicco DA, Zwinderman AH, Clearfield MB, Downs JR, Tonkin AM, Colhoun HM, Gotto AM Jr, Ridker PM, Kastelein JJ. Association of LDL cholesterol, non-HDL cholesterol, and apolipoprotein B levels with risk of cardiovascular events among patients treated with statins: a meta-analysis. JAMA. 2012;307:1302–1309. doi: 10.1001/jama.2012.366. [DOI] [PubMed] [Google Scholar]
  6. Kwiterovich PO Jr, Coresh J, Smith HH, Bachorik PS, Derby CA, Pearson TA. Comparison of the plasma levels of apolipoproteins B and A-1, and other risk factors in men and women with premature coronary artery disease. Am J Cardiol. 1992;69:1015–1021. doi: 10.1016/0002-9149(92)90856-t. [DOI] [PubMed] [Google Scholar]
  7. Annema W, von Eckardstein A. High-density lipoproteins. Circ J. 2013;77:2432–2448. doi: 10.1253/circj.cj-13-1025. [DOI] [PubMed] [Google Scholar]
  8. Perusse L, Rice T, Despres JP, Rao DC, Bouchard C. Cross-trait familial resemblance for body fat and blood lipids: familial correlations in the Quebec Family Study. Arterioscler Thromb Vasc Biol. 1997;17:3270–3277. doi: 10.1161/01.atv.17.11.3270. [DOI] [PubMed] [Google Scholar]
  9. Evans A, Van Baal GC, McCarron P, DeLange M, Soerensen TI, De Geus EJ, Kyvik K, Pedersen NL, Spector TD, Andrew T, Patterson C, Whitfield JB, Zhu G, Martin NG, Kaprio J, Boomsma DI. The genetics of coronary heart disease: the contribution of twin studies. Twin Res. 2003;6:432–441. doi: 10.1375/136905203770326439. [DOI] [PubMed] [Google Scholar]
  10. Middelberg RP, Martin NG, Whitfield JB. Longitudinal genetic analysis of plasma lipids. Twin Res Hum Genet. 2006;9:550–557. doi: 10.1375/183242706778024946. [DOI] [PubMed] [Google Scholar]
  11. Draisma HH, Reijmers TH, Meulman JJ, van der Greef J, Hankemeier T, Boomsma DI. Hierarchical clustering analysis of blood plasma lipidomics profiles from mono- and dizygotic twin families. Eur J Hum Genet. 2013;21:95–101. doi: 10.1038/ejhg.2012.110. [DOI] [PMC free article] [PubMed] [Google Scholar]
  12. Waterworth DM, Ricketts SL, Song K, Chen L, Zhao JH, Ripatti S, Aulchenko YS, Zhang W, Yuan X, Lim N, Luan J, Ashford S, Wheeler E, Young EH, Hadley D, Thompson JR, Braund PS, Johnson T, Struchalin M, Surakka I, Luben R, Khaw KT, Rodwell SA, Loos RJ, Boekholdt SM, Inouye M, Deloukas P, Elliott P, Schlessinger D, Sanna S. et al. Genetic variants influencing circulating lipid levels and risk of coronary artery disease. Arterioscler Thromb Vasc Biol. 2010;30:2264–2276. doi: 10.1161/ATVBAHA.109.201020. [DOI] [PMC free article] [PubMed] [Google Scholar]
  13. Chen X, Li S, Yang Y, Yang X, Liu Y, Hu W, Jin L, Wang X. Genome-wide association study validation identifies novel loci for atherosclerotic cardiovascular disease. J Thromb Haemost. 2012;10:1508–1514. doi: 10.1111/j.1538-7836.2012.04815.x. [DOI] [PubMed] [Google Scholar]
  14. Bryant EK, Dressen AS, Bunker CH, Hokanson JE, Hamman RF, Kamboh MI, Demirci FY. A multiethnic replication study of plasma lipoprotein levels-associated SNPs identified in recent GWAS. PLoS One. 2013;8:e63469. doi: 10.1371/journal.pone.0063469. [DOI] [PMC free article] [PubMed] [Google Scholar]
  15. Teslovich TM, Musunuru K, Smith AV, Edmondson AC, Stylianou IM, Koseki M, Pirruccello JP, Ripatti S, Chasman DI, Willer CJ, Johansen CT, Fouchier SW, Isaacs A, Peloso GM, Barbalic M, Ricketts SL, Bis JC, Aulchenko YS, Thorleifsson G, Feitosa MF, Chambers J, Orho-Melander M, Melander O, Johnson T, Li X, Guo X, Li M, Shin Cho Y, Jin Go M, Jin Kim Y. et al. Biological, clinical and population relevance of 95 loci for blood lipids. Nature. 2010;466:707–713. doi: 10.1038/nature09270. [DOI] [PMC free article] [PubMed] [Google Scholar]
  16. Keebler ME, Deo RC, Surti A, Konieczkowski D, Guiducci C, Burtt N, Buxbaum SG, Sarpong DF, Steffes MW, Wilson JG, Taylor HA, Kathiresan S. Fine-mapping in African Americans of 8 recently discovered genetic loci for plasma lipids: the Jackson Heart Study. Circ Cardiovasc Genet. 2010;3:358–364. doi: 10.1161/CIRCGENETICS.109.914267. [DOI] [PMC free article] [PubMed] [Google Scholar]
  17. Dumitrescu L, Carty CL, Franceschini N, Hindorff LA, Cole SA, Buzkova P, Schumacher FR, Eaton CB, Goodloe RJ, Duggan DJ, Haessler J, Cochran B, Henderson BE, Cheng I, Johnson KC, Carlson CS, Love SA, Brown-Gentry K, Nato AQ Jr, Quibrera M, Anderson G, Shohet RV, Ambite JL, Wilkens LR, Marchand LL, Haiman CA, Buyske S, Kooperberg C, North KE, Fornage M. et al. Post-genome-wide association study challenges for lipid traits: describing age as a modifier of gene-lipid associations in the Population Architecture using Genomics and Epidemiology (PAGE) study. Ann Hum Genet. 2013;77:416–425. doi: 10.1111/ahg.12027. [DOI] [PMC free article] [PubMed] [Google Scholar]
  18. Willer CJ, Schmidt EM, Sengupta S, Peloso GM, Gustafsson S, Kanoni S, Ganna A, Chen J, Buchkovich ML, Mora S, Beckmann JS, Bragg-Gresham JL, Chang HY, Demirkan A, Den Hertog HM, Do R, Donnelly LA, Ehret GB, Esko T, Feitosa MF, Ferreira T, Fischer K, Fontanillas P, Fraser RM, Freitag DF, Gurdasani D, Heikkila K, Hypponen E, Isaacs A, Jackson AU. et al. Discovery and refinement of loci associated with lipid levels. Nat Genet. 2013;45:1274–1283. doi: 10.1038/ng.2797. [DOI] [PMC free article] [PubMed] [Google Scholar]
  19. Chambers JC, Zhang W, Sehmi J, Li X, Wass MN, Van der Harst P, Holm H, Sanna S, Kavousi M, Baumeister SE, Coin LJ, Deng G, Gieger C, Heard-Costa NL, Hottenga JJ, Kuhnel B, Kumar V, Lagou V, Liang L, Luan J, Vidal PM, Mateo Leach I, O’Reilly PF, Peden JF, Rahmioglu N, Soininen P, Speliotes EK, Yuan X, Thorleifsson G, Alizadeh BZ. et al. Genome-wide association study identifies loci influencing concentrations of liver enzymes in plasma. Nat Genet. 2011;43:1131–1138. doi: 10.1038/ng.970. [DOI] [PMC free article] [PubMed] [Google Scholar]
  20. Zhang M, Wang G, Wang A, Tong W, Zhang Y. Association of hypertension with coexistence of abnormal metabolism and inflammation and endothelial dysfunction. Blood Press. 2013;22:151–157. doi: 10.3109/08037051.2012.745226. [DOI] [PubMed] [Google Scholar]
  21. Adamska A, Karczewska-Kupczewska M, Nikolajuk A, Otziomek E, Gorska M, Kowalska I, Straczkowski M. Relationships of serum soluble E-selectin concentration with insulin sensitivity and metabolic flexibility in lean and obese women. Endocrine. 2014;45:422–429. doi: 10.1007/s12020-013-0025-9. [DOI] [PMC free article] [PubMed] [Google Scholar]
  22. Xu L, Deng QY, Li SF, Zhou LN, Gong JC, Wei BY. Genetic analysis of Mulao nationality using 15 short tandem repeats. Zhonghua Yi Xue Yi Chuan Xue Za Zhi. 2008;25:96–100. [PubMed] [Google Scholar]
  23. Foody J, Huo Y, Ji L, Zhao D, Boyd D, Meng HJ, Shiff S, Hu D. Unique and Varied Contributions of Traditional CVD Risk Factors: A Systematic Literature Review of CAD Risk Factors in China. Clin Med Insights Cardiol. 2013;7:59–86. doi: 10.4137/CMC.S10225. [DOI] [PMC free article] [PubMed] [Google Scholar]
  24. Ruixing Y, Qiming F, Dezhai Y, Shuquan L, Weixiong L, Shangling P, Hai W, Yongzhong Y, Feng H, Shuming Q. Comparison of demography, diet, lifestyle, and serum lipid levels between the Guangxi Bai Ku Yao and Han populations. J Lipid Res. 2007;48:2673–2681. doi: 10.1194/jlr.M700335-JLR200. [DOI] [PubMed] [Google Scholar]
  25. Calandra S, Tarugi P, Bertolini S. Altered mRNA splicing in lipoprotein disorders. Curr Opin Lipidol. 2011;22:93–99. doi: 10.1097/MOL.0b013e3283426ebc. [DOI] [PubMed] [Google Scholar]
  26. Jin W, Dodson MV, Moore SS, Basarab JA, Guan LL. Characterization of microRNA expression in bovine adipose tissues: a potential regulatory mechanism of subcutaneous adipose tissue development. BMC Mol Biol. 2010;11:29. doi: 10.1186/1471-2199-11-29. [DOI] [PMC free article] [PubMed] [Google Scholar]
  27. Romao JM, Jin W, He M, McAllister T, Guan le L. MicroRNAs in bovine adipogenesis: genomic context, expression and function. BMC Genomics. 2014;15:137. doi: 10.1186/1471-2164-15-137. [DOI] [PMC free article] [PubMed] [Google Scholar]
  28. Persaud N, Maguire JL, Lebovic G, Carsley S, Khovratovich M, Randall Simpson JA, McCrindle BW, Parkin PC, Birken C. Association between serum cholesterol and eating behaviours during early childhood: a cross-sectional study. CMAJ. 2013;185:E531–E536. doi: 10.1503/cmaj.121834. [DOI] [PMC free article] [PubMed] [Google Scholar]
  29. Valente EA, Sheehy ME, Avila JJ, Gutierres JA, Delmonico MJ, Lofgren IE. The effect of the addition of resistance training to a dietary education intervention on apolipoproteins and diet quality in overweight and obese older adults. Clin Interv Aging. 2011;6:235–241. doi: 10.2147/CIA.S23583. [DOI] [PMC free article] [PubMed] [Google Scholar]
  30. Sola R, Fito M, Estruch R, Salas-Salvado J, Corella D, de La Torre R, Munoz MA, Lopez-Sabater Mdel C, Martinez-Gonzalez MA, Aros F, Ruiz-Gutierrez V, Fiol M, Casals E, Warnberg J, Buil-Cosiales P, Ros E, Konstantinidou V, Lapetra J, Serra-Majem L, Covas MI. Effect of a traditional Mediterranean diet on apolipoproteins B, A-I, and their ratio: a randomized, controlled trial. Atherosclerosis. 2011;218:174–180. doi: 10.1016/j.atherosclerosis.2011.04.026. [DOI] [PubMed] [Google Scholar]
  31. Howell WH, McNamara DJ, Tosca MA, Smith BT, Gaines JA. Plasma lipid and lipoprotein responses to dietary fat and cholesterol: a meta-analysis. Am J Clin Nutr. 1997;65:1747–1764. doi: 10.1093/ajcn/65.6.1747. [DOI] [PubMed] [Google Scholar]
  32. Rao Ch S, Subash YE. The effect of chronic tobacco smoking and chewing on the lipid profile. J Clin Diagn Res. 2013;7:31–34. doi: 10.7860/JCDR/2012/5086.2663. [DOI] [PMC free article] [PubMed] [Google Scholar]
  33. Gossett LK, Johnson HM, Piper ME, Fiore MC, Baker TB, Stein JH. Smoking intensity and lipoprotein abnormalities in active smokers. J Clin Lipidol. 2009;3:372–378. doi: 10.1016/j.jacl.2009.10.008. [DOI] [PMC free article] [PubMed] [Google Scholar]
  34. Hata Y, Nakajima K. Life-style and serum lipids and lipoproteins. J Atheroscler Thromb. 2000;7:177–197. doi: 10.5551/jat1994.7.177. [DOI] [PubMed] [Google Scholar]
  35. Aung LH, Yin RX, Wu DF, Li Q, Yan TT, Wang YM, Li H, Wei DX, Shi YL, Yang DZ. Association of the TRIB1 tribbles homolog 1 gene rs17321515 A > G polymorphism and serum lipid levels in the Mulao and Han populations. Lipids Health Dis. 2011;10:230. doi: 10.1186/1476-511X-10-230. [DOI] [PMC free article] [PubMed] [Google Scholar]
  36. People's Republic of China--United States Cardiovascular and Cardiopulmonary Epidemiology Research Group. An epidemiological study of cardiovascular and cardiopulmonary disease risk factors in four populations in the People's Republic of China. Baseline report from the P.R.C.-U.S.A. Collaborative Study. Circulation. 1992;85:1083–1096. doi: 10.1161/01.cir.85.3.1083. [DOI] [PubMed] [Google Scholar]
  37. Li Q, Yin RX, Yan TT, Miao L, Cao XL, Hu XJ, Aung LH, Wu DF, Wu JZ, Lin WX. Association of the GALNT2 gene polymorphisms and several environmental factors with serum lipid levels in the Mulao and Han populations. Lipids Health Dis. 2011;10:160. doi: 10.1186/1476-511X-10-160. [DOI] [PMC free article] [PubMed] [Google Scholar]
  38. Zhou BF. Predictive values of body mass index and waist circumference for risk factors of certain related diseases in Chinese adults–study on optimal cut-off points of body mass index and waist circumference in Chinese adults. Biomed Environ Sci. 2002;15:83–96. [PubMed] [Google Scholar]

Associated Data

This section collects any data citations, data availability statements, or supplementary materials included in this article.

Supplementary Materials

Additional file 1: Figure S1

Electrophoresis of PCR products of the samples. Lane M, 100 bp marker ladder; lanes 1–5, samples. The 437 bp bands are the target genes.

Click here for file (921KB, tiff)
Additional file 2: Figure S2

Genotyping of the rs11220462 SNP. Lane M, 100 bp marker ladder; lane 1 and 2, AA genotype (437 bp); lanes 3 and 4, AG genotype (437- ,340- and 97-bp); and lanes 5 and 6, GG genotype (340-bp). The 97 bp fragment was invisible in the gel owing to its fast migration speed.

Click here for file (1.8MB, tiff)
Additional file 3: Figure S3

A part of the nucleotide sequence of the 11220462 SNP A > G polymorphism. (A) AA genotype, (B) AG genotype and (C) GG genotype.

Click here for file (1.4MB, tiff)

Articles from Lipids in Health and Disease are provided here courtesy of BMC

RESOURCES