Hypomethylation of the Toll-like receptor-2 gene increases the risk of essential hypertension

  • Authors:
    • Shuqi Mao
    • Tianlun Gu
    • Fade Zhong
    • Rui Fan
    • Fubao Zhu
    • Peipei Ren
    • Fengying Yin
    • Lina Zhang
  • View Affiliations

  • Published online on: May 30, 2017     https://doi.org/10.3892/mmr.2017.6653
  • Pages: 964-970
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Abstract

Studies on the etiology of essential hypertension (EH) have demonstrated that chronic inflammation contributes to the onset and development of elevated blood pressure. Toll‑like receptors (TLRs), important immune receptors, serve a role in chronic inflammation and are associated with EH. In the present study, 96 patients with EH, and 96 age‑ and sex‑matched healthy controls were recruited, and eight cytosine‑phosphate‑guanine (CpG) dinucleotides (CpG1‑8) were analyzed using bisulfite pyrosequencing technology. It was observed that the methylation levels of all of the eight CpG dinucleotides were decreased in the EH group compared with the control group; however, only CpG1 (2.83±1.34 vs. 3.44±1.75; P=0.009), CpG6 (3.58±3.64 vs. 8.30±4.13; P<0.001) and CpG8 (8.91±5.32 vs. 11.33±3.87; P<0.001) were significantly different, as demonstrated by paired t‑test analysis. In addition, logistic regression analysis demonstrated that CpG6 hypomethylation was a risk factor of EH (odds ratio=1.10; adjusted P=0.009), and CpG6 methylation level was observed to be negatively correlated with systolic blood pressure (r=‑0.304; P<0.001) and diastolic blood pressure (r=‑0.329; P<0.001). Additionally, receiver operating characteristic curve analysis demonstrated that a methylation level of 7.5% for CpG6 (area under the curve, 0.834; P<0.001) was an appropriate threshold value to predict the risk of EH. With generalized multifactor dimensionality reduction, a potential gene‑gene interaction between CpG6 and CpG8 (P=0.001), and gene‑environment interactions between smoking, alcohol consumption, CpG6, CpG7 and CpG8 (P=0.011), were observed. In conclusion, the results of the present study demonstrated that hypomethylation of the TLR2 promoter, particularly CpG6, was associated with the risk of EH in this population. Additionally, a gene‑gene interaction between CpG6 and CpG8, and interactions between environmental factors, including smoking and alcohol consumption, and CpG6, CpG7 and CpG8, may be associated with the risk of EH.

Introduction

Essential hypertension (EH) is a risk factor for cardiovascular diseases and organ damage, which has become a major cause of morbidity and mortality worldwide (1). The World Health Organization (Geneva, Switzerland) has reported that 29.2% of the global population will develop hypertension by 2025, and the prevalence in China was observed to be 26.7% in 2010 (2). Although the etiology of EH remains unclear, previous studies have indicated that low-grade chronic inflammation is a hallmark of EH and contributes to target organ damage and the development of atherosclerosis, which is a process mediated by circulating immune cells, particularly leucocytes (35).

Toll-like receptors (TLRs), members of the interleukin (IL) 1R superfamily, are transmembrane receptors with extracellular leucine-rich repeats and an important intracellular signaling domain. TLRs are expressed in monocytes, macrophages and neutrophils, and recognize pathogen-associated molecular patterns to initiate an innate immune response. TLR2 serves a role in endothelial cell activation, macrophage recruitment and pro-inflammatory cytokine production. In TLR2 signaling, TLR2 dimerizes with TLR1 or TLR6. The heterodimers recruit and activate interleukin-1 receptor-associated kinase 4 via a myeloid differentiation primary response protein MyD88 (MyD88)/MyD88 adaptor-like (Mal)-dependent mechanism, and therefore facilitate the induction of cytokines (68). Previously, elevated circulating pro-inflammatory cytokine markers related to the TLR signaling pathway, including tumor necrosis factor (TNF)-α, C-reactive protein (CRP) and IL-6, were hypothesized to be important risk factors for EH (4,9). TLRs have been suggested to serve a role in the pathogenesis of EH (10,11) and atherosclerotic diseases (1214). However, the underlying mechanisms that regulate this response remain unclear.

An important mechanism of epigenetic regulation, DNA methylation is reversible and primarily occurs at cytosine residues in cytosine-phosphate-guanine (CpG) dinucleotides, in mammalian cells (15). Gene promoter hypermethylation silences gene expression, while promoter hypomethylation promotes active transcription (16). Previous studies into the etiology of EH have focused on DNA methylation. ADD1, AGTR1 and GCK gene methylation have been demonstrated to be associated with EH (1719). Alexeeff et al (9) reported that the aberrant methylation of TLR2, inducible nitric oxide synthase and interferon -γ was associated with blood pressure.

However, the association of TLR2 methylation with EH remains unclear. The present study aimed to investigate whether TLR2 promoter methylation was associated with EH and to assess the association of TLR2 promoter methylation with age, blood pressure and other risk factors of EH.

Materials and methods

Sample collection

A total of 192 individuals, including 96 healthy controls, and 96 newly-diagnosed patients with EH who had not received anti-hypertensive therapy, were recruited at Ningbo Seventh Hospital (Ningbo, China). Patients were defined as hypertensive according to the ‘gold standard’ diagnostic criteria, and exhibited ≥3 consecutive measurements of systolic blood pressure (SBP) >140 mmHg and/or diastolic blood pressure (DBP) >90 mmHg (20). Controls exhibited SBP <120 mmHg and DBP <80 mmHg, and reported no family history of hypertension in first degree relatives. All of the participants were from Han Chinese families who had been residing in Ningbo for ≥3 generations, with no history of secondary hypertension, diabetes mellitus, stroke, renal failure, myocardial infarction, drug abuse, or other serious diseases.

A calibrated mercury sphygmomanometer with an adult-sized cuff was used to measure blood pressure based on the standard protocols of the American Heart Association (21). Blood pressure was measured twice in the supine position, ≥10 min apart by trained technicians. Blood samples were drawn from the antecubital vein using vacutainer tubes containing EDTA, and stored at −80°C for DNA extraction. The protocol was approved by the ethics committee of Ningbo Seventh Hospital, and written informed consent was obtained.

Biochemical analyses

Plasma levels of triglyceride, total cholesterol, uric acid, high-density lipoprotein (HDL), low-density lipoprotein (LDL), alanine aminotransferase, serum creatinine and leucocytes were measured enzymatically using an AU2700 automatic analyzer (Olympus Corporation, Tokyo, Japan). A Lab-Aid 820 nucleic acid extraction analyzer (Xiamen Zeesan Biotech Co., Ltd., Xiamen, China) was used to extract genomic DNA from peripheral blood samples. DNA concentration was measured using a NanoDrop 2000 ultra-micro nucleic acid ultraviolet tester (Thermo Fisher Scientific, Inc., Wilmington, DE, USA).

The sequencing-by-synthesis technique of pyrosequencing was used to measure methylation levels. DNA sequences were reacted with sodium bisulfite (EpiTech Bisulfite kit; Qiagen GmbH, Hilden, Germany) to convert unmethylated cytosine residues to thymine, and subsequently amplified by polymerase chain reaction (PCR) prior to being ‘sequenced by synthesis’ (Pyromark Gold Q96, Qiagen GmbH) (22). The CpG sites of target gene sequences and PCR primers were chosen according to the scores automatically calculated by the PyroMark Assay Design (version 2.0.1.15; Qiagen GmbH) using previously established protocols for primer design (23). CpG island sequences were amplified using a Mastercycler Nexus Gradient (Eppendorf, Hamburg, Germany) in reactions containing 12 µl ZymoTaq Premix (Zymo Research Corporation, Irvine, CA, USA), 8 µl DNase/RNase-free H2O, 1.5 µl each of forward and reverse primer and 2 µl bisulfite-converted DNA. Reactions were first denatured at 95°C for 10 min; amplified over 40 cycles at 95°C for 30 sec, 54.1°C for 40 sec and 72°C for 50 sec; and extended at 72°C for 7 min. TLR2 CpG island sequences were amplified with the primers presented in Table I.

Table I.

Primers of the Toll-like receptor-2 cytosine-phosphate-guanine island sequence.

Table I.

Primers of the Toll-like receptor-2 cytosine-phosphate-guanine island sequence.

PrimersSequence
Forward 5′-Biotin-GGTAGTTGTAGGGGTAGGAT-3′
Reverse 5′-ACCCAAAAAAACTCTAAACCTC-3′
Sequence 5′-TTCCAAACAAATAACC-3′
Statistical analyses

Experimental data were analyzed using PASW statistics software (version 19.0; IBM SPSS, Armonk, NY, USA). Results are presented as the mean ± standard deviation or number (percentage) of patients. Continuous variables, including DNA methylation, age, body mass index (BMI), total cholesterol, triglycerides, uric acid, HDL, LDL, serum creatinine and leucocyte count, were compared by paired t-test or nonparametric test. The Pearson χ2 or Fisher's exact test was used to analyze the association between categorical variables (sex, smoking and alcohol consumption) and essential hypertension. Pearson's correlation analysis was used to investigate interactions among the eight CpG sites in the TLR2 promoter sequence. Receiver operating characteristic (ROC) curves were used to determine the sensitivity of TLR2 promoter methylation as a predictor of EH. Logistic regression was implemented to adjust for confounding factors. Generalized multifactor dimensionality reduction (GMDR) was applied to investigate underlying high-order interactions between TLR2 promoter methylation and risk factors of EH. P<0.05 was considered to indicate a statistically significant difference.

Results

Characteristics of the 96 healthy controls and 96 patients with EH are presented in Table II. The age (±3 years) and sex ratio was matched in the participants between the two groups. In addition, as presented in Table II, BMI (t=4.09; P=9.1×10−5), HDL (t=6.57; P=2.6×10−9), triglyceride (t=2.33; P=0.022) and uric acid (t=2.75; P=0.007) were significantly different between the two groups.

Table II.

Comparison of characteristics between controls and EH group.

Table II.

Comparison of characteristics between controls and EH group.

CharacteristicsControlsEHt(Z)/χ 2P-value
Age (mean ± SD)56.3±8.256.7±8.70.320.747
Sex, male/female38/5838/58n/an/a
Smoking, yes/no79/1769/272.950.086
Alcohol consumption, yes/no65/3156/401.810.178
BMI (mean ± SD)22.16±2.3023.6±3.094.09 9.1×10−5
HDL, mg/dl (mean ± SD)7.99±6.322.07±5.586.57 2.6×10−9
LDL, mg/dl (mean ± SD)3.21±0.873.31±0.680.900.370
ALT, IU/l (mean ± SD)26.41±16.128.27±120.890.370
Triglyceride, mmol/l (mean ± SD)1.21±0.681.43±0.722.330.022
Total cholesterol, mmol/l (mean ± SD)5.19±0.895.38±0.611.710.091
Urea, mmol/l (mean ± SD)4.96±1.075.03±1.110.520.607
Uric acid, µmol/l (mean ± SD)300.32±73.15325.75±82.632.750.007
Serum creatinine, µmol/l (mean ± SD)82.68±12.2883.46±11.040.530.600
WBC count (mean ± SD)5.59±0.936.17±0.984.84 1.30×10−6
Lymphocyte count (mean ± SD)1.98±0.612.1±0.552.050.040
Monocyte count (mean ± SD)0.30±0.180.31±0.170.490.622
Neutrophil granulocyte count (mean ± SD)3.05±0.973.35±0.922.550.011
Eosinophil granulocyte count (mean ± SD)0.13±0.130.129±0.100.750.451
Basophil granulocyte count (mean ± SD)0.15±0.640.02±0.020.660.508

[i] BMI, body mass index; HDL, high-density lipoprotein; LDL, low-density lipoprotein; ALT, alanine aminotransferase; EH, essential hypertension; SD, standard deviation; WBC, white blood cell; n/a, not applicable.

In the present study, eight CpG sites were selected to investigate the association between methylation and EH in the CpG island of the TLR2 gene promoter. Details of the eight CpG sites are presented in Fig. 1 and Table III. As presented in Table III and Fig. 2, eight CpG sites of the EH group exhibited decreased methylation levels compared with healthy controls; however, only CpG1 (2.83±1.34 vs. 3.44±1.75; P=0.009), CpG6 (3.58±3.64 vs. 8.30±4.13; P<0.001) and CpG8 (8.91±5.32 vs. 11.33±3.87; P<0.001) were significantly different.

Table III.

Logistic regression analysis of the methylation levels of the eight CpG sites.

Table III.

Logistic regression analysis of the methylation levels of the eight CpG sites.

Controls vs. EH

VariablesControls (mean ± SD)EH (mean ± SD)tP-valueOR (95% CI) P-valuea
CpG1   3.44±1.752.83±1.342.690.0090.99 (0.838~1.173)0.921
CpG2   1.93±1.841.71±1.570.970.3360.91 (0.715~1.146)0.408
CpG3   0.69±1.600.58±1.800.430.6650.96 (0.743~1.248)0.776
CpG4   1.65±2.081.65±2.060.001.0001.07 (0.883~1.305)0.478
CpG5   0.68±1.530.66±1.800.090.9261.03 (0.805~1.327)0.798
CpG6   8.30±4.133.58±3.648.31 6.5×10−131.10 (1.021~1.161)0.009
CpG7   3.51±3.903.25±3.510.510.6130.99 (0.893~1.103)0.889
CpG811.33±3.878.91±5.323.82 2.4×10−40.98 (0.939~1.025)0.389

a Adjusted for age, gender, smoking, alcohol consumption, uric acid, serum creatinine, triglyceride, HDL (mg/dl) and BMI. CpG, cytosine-phosphate-guanine; EH, essential hypertension; SD, standard deviation; OR, odds ratio; CI, confidence interval.

In order to adjust for confounding factors, logistic regression was applied to obtain the odds ratio (OR) of CpG1-8. As presented in Table III, when adjusted for age, gender, smoking, alcohol consumption, uric acid, serum creatinine, triglyceride, HDL and BMI, the results indicated that the methylation level of CpG6 was an important risk factor for EH (OR=1.10; adjusted P=0.009). Pearson correlation analysis demonstrated that the methylation level of CpG6 was negatively correlated with SBP (r=−0.304; P<0.001) and DBP (r=−0.329; P<0.001) (Fig. 3).

ROC curve analysis was used to analyze the diagnostic value of CpG6 methylation to EH. The results presented in Fig. 4 indicated that a methylation level of 7.5% for CpG6 (area under the curve, 0.834; P<0.001) was an appropriate threshold value to predict the risk of EH.

GMDR was used to investigate high-order interactions between the methylation of CpG sites of the TLR2 promoter and other risk factors. The best models at various orders are summarized in Table IV. The two-order model between CpG6 and CpG8 is the best model of gene-gene interaction (testing balanced accuracy, 0.874; cross-validation consistency, 10/10; P=0.01), and the five-order model among smoking, alcohol consumption, CpG6, CpG7 and CpG8 is the best model of gene-environment interaction (testing balanced accuracy, 0.985; cross-validation consistency, 8/10; P=0.01).

Table IV.

Generalized multifactor dimensionality reduction models of essential hypertension and high-order interactions among CpG sites in the Toll-like receptor-2 promoter.

Table IV.

Generalized multifactor dimensionality reduction models of essential hypertension and high-order interactions among CpG sites in the Toll-like receptor-2 promoter.

ModelTesting balanced accuracyCross-validation consistencySign test (P-value)
CpG80.76210/1010 (0.001)
CpG6-CpG80.87410/1010 (0.001)
CpG1-CpG6-CpG80.9178/1010 (0.001)
Alcohol consumption-CpG6-CpG7-CpG80.9457/10  9 (0.011)
Smoking-alcohol consumption-CpG6-CpG7-CpG80.9858/10  9 (0.011)

[i] CpG, cytosine-phosphate-guanine.

Discussion

Previous studies have demonstrated that TLR2 activation may induce nicotinamide-adenine dinucleotide phosphate oxidase to produce reactive oxygen species in monocytes and macrophages (2426), and endothelial TLR2 signaling may result in inhibition of endothelial NO bioavailability (27). TLR2 dimers with TLR1 or TLR6 may lead to the upregulation of cytokines by a MyD88/Mal and nuclear factor (NF)-κB pathway-dependent mechanism. One such control may be at the level of TLR expression itself. However, the underlying molecular mechanisms remain unknown.

By investigating TLR2 gene promoter methylation, the present study demonstrated that TLR2 gene promoter methylation levels were decreased in patients with EH compared with healthy controls, particularly the CpG1, CpG6 and CpG8 sites. The hypomethylation of CpG6 hypomethylation was demonstrated to be a risk factor of EH. Previous studies have demonstrated that the methylation of gene promoters silences the transcription of the genes (2830), and that an alteration in CpG methylation may influence gene expression via directly interfering with transcription factor-binding complexes or by histone modifications mediated by methyl-CpG-binding proteins (31,32). Therefore, the results of the present study suggest that hypomethylation of the TLR2 gene promoter is likely to increase the expression of the TLR2 gene and enhance pro-inflammatory responses in EH. Shuto et al (33) have reported that promoter hypomethylation of the TLR2 gene is associated with an increased pro-inflammatory response and that TLR2 expression is epigenetically upregulated in cystic fibrosis bronchial epithelial cells. In a study of periodontitis, Benakanakere et al (34) observed that hypermethylation of the TLR2 promoter was able to diminish TLR2 and pro-inflammatory cytokine expression in response to infection with Porphyromonas gingivalis. Previous results from DNA methylation profiles of patients with Keshan disease compared with normal individuals demonstrated that selenium deficiency led to decreased methylation of CpG islands in the promoter region of TLR2, and upregulated mRNA and protein levels of TLR2 (35). These previous results demonstrated that hypomethylation of TLR2 promoter CpG islands was able to increase the expression of TLR2 mRNA and protein. The expression of the TLR2 gene will impair vascular endothelial cell repair and release pro-inflammatory cytokines via MyD88/Mal and NF-κB pathways, including CRP, IL6 and TNF-α; these pro-inflammatory cytokines have been reported to be associated with blood pressure (3639). Therefore, the hypomethylation of the TLR2 promoter may serve a role in the development of EH by activating pro-inflammatory responses.

In addition, Pearson correlation analysis in the present study suggested that blood pressure was negatively correlated with the methylation level of CpG6. The present results further indicate that TLR2 gene promoter methylation serves a role in the development of EH. However, the present results were in contrast to those from a previous study (9), which reported a positive association between TLR2 gene methylation and DBP. The disparity may be due to different CpG sites being analyzed in the different studies. In addition, different age ranges, race and inclusion criteria of the samples may have led to the above discrepancy. DNA methylation has been demonstrated to be a possible biomarker of cancer (40,41), and the present study observed that CpG6 methylation exhibited an appropriate threshold value to predict the risk of EH according to the results of ROC curve analysis. Therefore, the results of the present study may aid the clinical diagnosis and prediction of EH.

EH is a multifactorial chronic disease; gene-gene and gene-environment interactions contribute to its onset and progression. GMDR is a nonparametric and genetic model-free alternative to linear or logistic regression for detecting and characterizing nonlinear interactions among discrete genetic and environmental factors. GMDR is able to accommodate qualitative and quantitative phenotypes, enhance prediction accuracy, and adjust for discrete and continuous covariates (42); this increases the accuracy of the analysis and means that a more meaningful conclusion may be drawn. In the present study, a significant two-order gene-gene interaction between CpG6 and CpG8 was observed, in addition to a significant five-order gene-environment interaction among smoking, alcohol consumption, CpG6, CpG7 and CpG8, which may contribute to the risk of EH. However, the biological roles of these interactions are unclear, and further investigation is required in future studies.

There are certain limitations to the present study. mRNA and protein expression were not investigated, therefore transcriptomic regulation was not able to be demonstrated. In addition, the analysis of eight CpG sites may not be representative of the whole gene.

In conclusion, hypomethylation of the TLR2 gene promoter, particularly CpG6, is associated with the risk of EH. In addition, the CpG6 site of TLR2 gene promoter exhibits utility in the diagnosis of EH. The two-order interaction between CpG6 and CpG8, and the five-order interaction among smoking, drinking, CpG6, CpG7 and CpG8, may be associated with EH risk. The present study may provide novel insights into the pathogenesis of EH from an epigenetic aspect.

Acknowledgements

The present study was supported by the Zhejiang Province Social Development Research Project (grant no. 2016C33178), the K.C. Wong Magna Fund in Ningbo University, Ningbo Social Development Research Project (grant no. 2014C50051), the Ningbo Scientific Innovation Team for Environment Hazardous Factor Control and Prevention (grant no. 2016C51001), the Ningbo Medical Science and Technology Plan Project (grant no. 2013A39), the Outstanding (Postgraduate) Dissertation Growth Foundation of Ningbo University (grant no. py2014015), and the Scientific Research Innovation Foundation of Ningbo University (grant nos. G16097 and G15070).

References

1 

Oliveras A and de la Sierra A: Resistant hypertension: Patient characteristics, risk factors, co-morbidities and outcomes. J Human hypertens. 28:213–217. 2014. View Article : Google Scholar

2 

Li D, Lv J, Liu F, Liu P, Yang X, Feng Y, Chen G and Hao M: Hypertension burden and control in mainland China: Analysis of nationwide data 2003–2012. Int J Cardiol. 184:637–644. 2015. View Article : Google Scholar : PubMed/NCBI

3 

Virdis A, Dell'Agnello U and Taddei S: Impact of inflammation on vascular disease in hypertension. Maturitas. 78:179–183. 2014. View Article : Google Scholar : PubMed/NCBI

4 

Dinh QN, Drummond GR, Sobey CG and Chrissobolis S: Roles of inflammation, oxidative stress, and vascular dysfunction in hypertension. Biomed Res Int. 2014:4069602014. View Article : Google Scholar : PubMed/NCBI

5 

Bautista LE, Vera LM, Arenas IA and Gamarra G: Independent association between inflammatory markers (C-reactive protein, interleukin-6, and TNF-alpha) and essential hypertension. J Hum Hypertens. 19:149–154. 2005. View Article : Google Scholar : PubMed/NCBI

6 

Aliprantis AO, Yang RB, Weiss DS, Godowski P and Zychlinsky A: The apoptotic signaling pathway activated by Toll-like receptor-2. EMBO J. 19:3325–3336. 2000. View Article : Google Scholar : PubMed/NCBI

7 

Medzhitov R, Preston-Hurlburt P, Kopp E, Stadlen A, Chen C, Ghosh S and Janeway CA Jr: MyD88 is an adaptor protein in the hToll/IL-1 receptor family signaling pathways. Mol Cell. 2:253–258. 1998. View Article : Google Scholar : PubMed/NCBI

8 

O'Neill LA and Greene C: Signal transduction pathways activated by the IL-1 receptor family: Ancient signaling machinery in mammals, insects, and plants. J Leukoc Biol. 63:650–657. 1998.PubMed/NCBI

9 

Alexeeff SE, Baccarelli AA, Halonen J, Coull BA, Wright RO, Tarantini L, Bollati V, Sparrow D, Vokonas P and Schwartz J: Association between blood pressure and DNA methylation of retrotransposons and pro-inflammatory genes. Int J Epidemiol. 42:270–280. 2013. View Article : Google Scholar : PubMed/NCBI

10 

Marketou ME, Kontaraki JE, Zacharis EA, Kochiadakis GE, Giaouzaki A, Chlouverakis G and Vardas PE: TLR2 and TLR4 gene expression in peripheral monocytes in nondiabetic hypertensive patients: The effect of intensive blood pressure-lowering. J Clin Hypertens (Greenwich). 14:330–335. 2012. View Article : Google Scholar : PubMed/NCBI

11 

Dange RB, Agarwal D, Teruyama R and Francis J: Toll-like receptor 4 inhibition within the paraventricular nucleus attenuates blood pressure and inflammatory response in a genetic model of hypertension. J Neuroinflammation. 12:312015. View Article : Google Scholar : PubMed/NCBI

12 

Favre J, Musette P, Douin-Echinard V, Laude K, Henry JP, Arnal JF, Thuillez C and Richard V: Toll-like receptors 2-deficient mice are protected against postischemic coronary endothelial dysfunction. Arterioscler Thromb Vasc Biol. 27:1064–1071. 2007. View Article : Google Scholar : PubMed/NCBI

13 

Mullick AE, Soldau K, Kiosses WB, Bell TA III, Tobias PS and Curtiss LK: Increased endothelial expression of Toll-like receptor 2 at sites of disturbed blood flow exacerbates early atherogenic events. J Exp Med. 205:373–383. 2008. View Article : Google Scholar : PubMed/NCBI

14 

Edfeldt K, Swedenborg J, Hansson GK and Yan ZQ: Expression of toll-like receptors in human atherosclerotic lesions: A possible pathway for plaque activation. Circulation. 105:1158–1161. 2002.PubMed/NCBI

15 

Razin A, Webb C, Szyf M, Yisraeli J, Rosenthal A, Naveh-Many T, Sciaky-Gallili N and Cedar H: Variations in DNA methylation during mouse cell differentiation in vivo and in vitro. Proc Natl Acad Sci USA. 81:2275–2279. 1984. View Article : Google Scholar : PubMed/NCBI

16 

Deaton AM and Bird A: CpG islands and the regulation of transcription. Genes Dev. 25:1010–1022. 2011. View Article : Google Scholar : PubMed/NCBI

17 

Zhang LN, Liu PP, Wang L, Yuan F, Xu L, Xin Y, Fei LJ, Zhong QL, Huang Y, Xu L, et al: Lower ADD1 gene promoter DNA methylation increases the risk of essential hypertension. PLoS One. 8:e634552013. View Article : Google Scholar : PubMed/NCBI

18 

Fan R, Mao S, Zhong F, Gong M, Yin F, Hao L and Zhang L: Association of AGTR1 promoter methylation levels with essential hypertension risk: A Matched Case-Control Study. Cytogenet Genome Res. 147:95–102. 2015. View Article : Google Scholar : PubMed/NCBI

19 

Fan R, Wang WJ, Zhong QL, Duan SW, Xu XT, Hao LM, Zhao J and Zhang LN: Aberrant methylation of the GCK gene body is associated with the risk of essential hypertension. Mol Med Rep. 12:2390–2394. 2015.PubMed/NCBI

20 

European Society of Hypertension-European Society of Cardiology Guidelines Committee: 2003 European Society of Hypertension-European Society of Cardiology guidelines for the management of arterial hypertension. J Hypertens. 21:1011–1053. 2003. View Article : Google Scholar : PubMed/NCBI

21 

Perloff D, Grim C, Flack J, Frohlich ED, Hill M, McDonald M and Morgenstern BZ: Human blood pressure determination by sphygmomanometry. Circulation. 88:2460–2470. 1993. View Article : Google Scholar : PubMed/NCBI

22 

Bassil CF, Huang Z and Murphy SK: Bisulfite pyrosequencing. Methods Mol Biol. 1049:95–107. 2013. View Article : Google Scholar : PubMed/NCBI

23 

Mikeska T, Felsberg J, Hewitt CA and Dobrovic A: Analysing DNA methylation using bisulphite pyrosequencing. Methods Mol Biol. 791:33–53. 2011. View Article : Google Scholar : PubMed/NCBI

24 

Beaulieu LM, Lin E, Morin KM, Tanriverdi K and Freedman JE: Regulatory effects of TLR2 on megakaryocytic cell function. Blood. 117:5963–5974. 2011. View Article : Google Scholar : PubMed/NCBI

25 

West XZ, Malinin NL, Merkulova AA, Tischenko M, Kerr BA, Borden EC, Podrez EA, Salomon RG and Byzova TV: Oxidative stress induces angiogenesis by activating TLR2 with novel endogenous ligands. Nature. 467:972–976. 2010. View Article : Google Scholar : PubMed/NCBI

26 

West AP, Brodsky IE, Rahner C, Woo DK, Erdjument-Bromage H, Tempst P, Walsh MC, Choi Y, Shadel GS and Ghosh S: TLR signalling augments macrophage bactericidal activity through mitochondrial ROS. Nature. 472:476–480. 2011. View Article : Google Scholar : PubMed/NCBI

27 

Speer T, Rohrer L, Blyszczuk P, Shroff R, Kuschnerus K, Kränkel N, Kania G, Zewinger S, Akhmedov A, Shi Y, et al: Abnormal high-density lipoprotein induces endothelial dysfunction via activation of Toll-like receptor-2. Immunity. 38:754–768. 2013. View Article : Google Scholar : PubMed/NCBI

28 

Jones PL, Veenstra GJ, Wade PA, Vermaak D, Kass SU, Landsberger N, Strouboulis J and Wolffe AP: Methylated DNA and MeCP2 recruit histone deacetylase to repress transcription. Nat Genet. 19:187–191. 1998. View Article : Google Scholar : PubMed/NCBI

29 

Morita S, Takahashi RU, Yamashita R, Toyoda A, Horii T, Kimura M, Fujiyama A, Nakai K, Tajima S, Matoba R, et al: Genome-wide analysis of DNA methylation and expression of microRNAs in breast cancer cells. Int J Mol Sci. 13:8259–8272. 2012. View Article : Google Scholar : PubMed/NCBI

30 

Jones PA and Baylin SB: The fundamental role of epigenetic events in cancer. Nat Rev Genet. 3:415–428. 2002.PubMed/NCBI

31 

Liu Y, Liu P, Yang C, Cowley AW Jr and Liang M: Base-resolution maps of 5-methylcytosine and 5-hydroxymethylcytosine in Dahl S rats: Effect of salt and genomic sequence. Hypertension. 63:827–838. 2014. View Article : Google Scholar : PubMed/NCBI

32 

Jones PA and Takai D: The role of DNA methylation in mammalian epigenetics. Science. 293:1068–1070. 2001. View Article : Google Scholar : PubMed/NCBI

33 

Shuto T, Furuta T, Oba M, Xu H, Li JD, Cheung J, Gruenert DC, Uehara A, Suico MA, Okiyoneda T and Kai H: Promoter hypomethylation of Toll-like receptor-2 gene is associated with increased proinflammatory response toward bacterial peptidoglycan in cystic fibrosis bronchial epithelial cells. FASEB J. 20:782–784. 2006.PubMed/NCBI

34 

Benakanakere M, Abdolhosseini M, Hosur K, Finoti LS and Kinane DF: TLR2 promoter hypermethylation creates innate immune dysbiosis. J Dent Res. 94:183–191. 2015. View Article : Google Scholar : PubMed/NCBI

35 

Yang G, Zhu Y, Dong X, Duan Z, Niu X and Wei J: TLR2-ICAM1-Gadd45α axis mediates the epigenetic effect of selenium on DNA methylation and gene expression in Keshan disease. Biol Trace Elem Res. 159:69–80. 2014. View Article : Google Scholar : PubMed/NCBI

36 

Sung KC, Suh JY, Kim BS, Kang JH, Kim H, Lee MH, Park JR and Kim SW: High sensitivity C-reactive protein as an independent risk factor for essential hypertension. Am J Hypertens. 16:429–433. 2003. View Article : Google Scholar : PubMed/NCBI

37 

Bautista LE, López-Jaramillo P, Vera LM, Casas JP, Otero AP and Guaracao AI: Is C-reactive protein an independent risk factor for essential hypertension? J Hypertens. 19:857–861. 2001. View Article : Google Scholar : PubMed/NCBI

38 

Chae CU, Lee RT, Rifai N and Ridker PM: Blood pressure and inflammation in apparently healthy men. Hypertension. 38:399–403. 2001. View Article : Google Scholar : PubMed/NCBI

39 

Ito H, Ohshima A, Tsuzuki M, Ohto N, Takao K, Hijii C, Yanagawa M, Ogasawara M and Nishioka K: Association of serum tumour necrosis factor-alpha with serum low-density lipoprotein-cholesterol and blood pressure in apparently healthy Japanese women. Clin Exp Pharmacol Physiol. 28:188–192. 2001. View Article : Google Scholar : PubMed/NCBI

40 

Dou CY, Fan YC, Cao CJ, Yang Y and Wang K: Sera DNA Methylation of CDH1, DNMT3b and ESR1 Promoters as Biomarker for the Early Diagnosis of Hepatitis B Virus-Related Hepatocellular Carcinoma. Dig Dis Sci. 61:1130–1138. 2016. View Article : Google Scholar : PubMed/NCBI

41 

Konecny M, Markus J, Waczulikova I, Dolesova L, Kozlova R, Repiska V, Novosadova H and Majer I: The value of SHOX2 methylation test in peripheral blood samples used for the differential diagnosis of lung cancer and other lung disorders. Neoplasma. 63:246–253. 2016.PubMed/NCBI

42 

Lou XY, Chen GB, Yan L, Ma JZ, Zhu J, Elston RC and Li MD: A generalized combinatorial approach for detecting gene-by-gene and gene-by-environment interactions with application to nicotine dependence. Am J Hum Genet. 80:1125–1137. 2007. View Article : Google Scholar : PubMed/NCBI

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July-2017
Volume 16 Issue 1

Print ISSN: 1791-2997
Online ISSN:1791-3004

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Spandidos Publications style
Mao S, Gu T, Zhong F, Fan R, Zhu F, Ren P, Yin F and Zhang L: Hypomethylation of the Toll-like receptor-2 gene increases the risk of essential hypertension. Mol Med Rep 16: 964-970, 2017
APA
Mao, S., Gu, T., Zhong, F., Fan, R., Zhu, F., Ren, P. ... Zhang, L. (2017). Hypomethylation of the Toll-like receptor-2 gene increases the risk of essential hypertension. Molecular Medicine Reports, 16, 964-970. https://doi.org/10.3892/mmr.2017.6653
MLA
Mao, S., Gu, T., Zhong, F., Fan, R., Zhu, F., Ren, P., Yin, F., Zhang, L."Hypomethylation of the Toll-like receptor-2 gene increases the risk of essential hypertension". Molecular Medicine Reports 16.1 (2017): 964-970.
Chicago
Mao, S., Gu, T., Zhong, F., Fan, R., Zhu, F., Ren, P., Yin, F., Zhang, L."Hypomethylation of the Toll-like receptor-2 gene increases the risk of essential hypertension". Molecular Medicine Reports 16, no. 1 (2017): 964-970. https://doi.org/10.3892/mmr.2017.6653