| Literature DB >> 27578536 |
Hui-Ping Yuan1, Liang Sun1, Xing-Hui Li1, Fu-Gang Che1, Xiao-Quan Zhu1, Fan Yang1, Jing Han1, Chun-Yuan Jia1, Ze Yang1.
Abstract
Many previous studies have provided evidence that the ADIPOQ +45T>G polymorphism (rs2241766) might cause metabolic syndrome (MS). As a cardiovascular manifestation of MS, the incidence of stroke is associated with adiponectin; however, the results remain controversial and inconsistent. Systematic searches of relevant studies published up to Dec 2014 and Jan 2016 on the ADIPOQ +45T>G polymorphism and the risk of MS and adiponectin levels and the risk of stroke, respectively, were conducted in MEDLINE and EMBASE. The odds ratio (OR) or risk ratio (RR) and their 95% confidence interval (95% CI) were extracted. Sixteen studies containing 4,113 MS cases and 3,637 healthy controls indicated a weak positive association between ADIPOQ +45 T>G and MS in the dominant genetic model (OR = 1.30, 95% CI = 1.03-1.65), which was also validated by stratified subgroup analyses. Twelve studies including 26,213 participants and 4,246 stroke cases indicated that 5 μg/ml increments in adiponectin level were not relevant to stroke risk (RR = 1.05, 95% CI = 1.00-1.10, P = 0.069). This study suggested a weak positive association of ADIPOQ +45T>G with MS and a strong association with metabolic-related disease. Additionally, adiponectin level was not a causal factor of increasing stroke risk.Entities:
Mesh:
Substances:
Year: 2016 PMID: 27578536 PMCID: PMC5005996 DOI: 10.1038/srep31945
Source DB: PubMed Journal: Sci Rep ISSN: 2045-2322 Impact factor: 4.379
Characteristics of Identified Studies on ADIPOQ +45T>G and MS risk.
| Author | Year | Country/Ethnicity | Diagnostic Criteria | Genotyping Method | MS | Control | Language | QA | APN/(μg/ml) | |||||
|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
| TT | GT | GG | TT | GT | GG | MS | Control | |||||||
| YAO M | 2004 | Chinese/EA | WHO,1999 | PCR-RFLP | 91 | 79 | 18 | 87 | 77 | 22 | in Chinese | 8 | 4.93 ± 3.31 | 9.29 ± 4.83 |
| LIU DX | 2006 | Chinese/EA | IDF, 2005 | PCR-RFLP | 73 | 66 | 17 | 69 | 53 | 11 | in Chinese | 7 | NA | NA |
| LI YP | 2010 | Chinese/EA | IDF, 2006 | PCR-RFLP | 69 | 54 | 14 | 56 | 60 | 15 | in Chinese | 6 | NA | NA |
| ZHU XW | 2010 | Chinese/EA | CDS, 2004 | TaqMan | 72 | 91 | 20 | 74 | 62 | 8 | in Chinese | 7 | NA | NA |
| CAI Q | 2010 | Chinese/EA | IDF, 2005 | PCR-RFLP | 15 | 18 | 5 | 26 | 20 | 4 | in Chinese | 6 | NA | NA |
| Ranjith N | 2011 | NA/SA | NCEP ATP III | TaqMan | 208 | 81 | 6 | 134 | 50 | 6 | in English | 8 | NA | NA |
| Ranjith N | 2011 | NA/SA | IDF | TaqMan | 204 | 79 | 7 | 138 | 52 | 5 | in English | 8 | NA | NA |
| BU RF | 2011 | Chinese/EA | CDS, 2004 | TaqMan | 76 | 97 | 22 | 79 | 67 | 10 | in Chinese | 7 | 6.85 ± 2.97 | 12.1 ± 5.75 |
| Leu HB-1 | 2011 | Chinese/EA | ATP III | TaqMan | 170 | 156 | 31 | 307 | 251 | 47 | in English | 8 | NA | NA |
| Leu HB-2 | 2011 | Chinese/EA | ATP III | TaqMan | 264 | 224 | 42 | 446 | 398 | 69 | in English | 8 | NA | NA |
| HUANG FZ | 2012 | Chinese/EA | IDF, 2005 | PCR-RFLP | 118 | 92 | 14 | 108 | 80 | 12 | in Chinese | 7 | NA | NA |
| WANG SJ | 2012 | Chinese/EA | WHO, 1999 | PCR-RFLP | 90 | 74 | 16 | 31 | 16 | 3 | in Chinese | 7 | 9.81 ± 0.55 | 13.32 ± 1.07 |
| LI XT | 2012 | Chinese/EA | CDS, 2004 | PCR-RFLP | 71 | 40 | 5 | 76 | 28 | 4 | in English | 7 | NA | NA |
| CHEN F-1 | 2012 | Chinese/EA | CDS, 2004 | PCR-RFLP | 53 | 49 | 5 | 59 | 35 | 8 | in Chinese | 7 | 8.46 ± 5.96 | 10.87 ± 3.61 |
| CHEN F-2 | 2012 | Chinese/EA | NA | PCR-RFLP | 68 | 19 | 6 | 59 | 35 | 8 | in Chinese | 7 | 10.04 ± 6.39 | NA |
| GAO M | 2013 | Chinese/EA | IDF | PCR-RFLP | 147 | 158 | 17 | 93 | 61 | 7 | in English | 8 | NA | NA |
| SHEN J* | 2013 | Chinese/EA Chinese | CDS, 2004 | PCR-RFLP | 48 | 93 | 66 | 78 | 15 | 5 | in Chinese | 7 | 9.70 ± 1.46 | 11.85 ± 1.46 |
| XU J | 2013 | Chinese/EA | IDF, 2005 | TaqMan | 368 | 274 | 59 | 97 | 93 | 16 | in Chinese | 8 | 9.85 (9.35–10.38) | 15.46 (14.13–16.90) |
| Suriyaprom K | 2014 | Thailand/SEA | NCEP/ATP III | NA | 84 | NA | NA | 102 | NA | NA | in English | 6 | 7.9 (7.0–9.2) | 14.5 (12.7–16.2) |
Note: MS = Metabolic Syndrome; APN = adiponectin; NA = Not Available; EA = East Asians; SA = South Asians; SEA = Southeast Asians; QA = Quality Assessment; *the HUI nationality. Leu HB-1and Leu HB-2 represent two separate populations. CHEN F-1: metabolic syndrome; CHEN F-2: metabolic syndrome with coronary heart disease.
Characteristics of the Identified Studies (N = 12) on Adiponectin and Risk of Stroke.
| First author | Year | Cohort designation | Country | Follow-up (years) | Age, (Mean) (years) | % Men | Number of participantsa | Number of cases | Cohort design |
|---|---|---|---|---|---|---|---|---|---|
| Söderberg S | 2004 | MONICA | Sweden | 4.9 | 25–74 (54.9) | 57 | 828 | 276 | Nested case–control |
| Matsumoto M | 2008 | JMSCS | Japan | 9.7 | 19–93 (66) | 49 | 809 | 179 | Nested case–control |
| David J Stott | 2009 | PROSPER | UK | 3.2 | 70–82 (75.9) | 51 | 798 | 266 | Nested case–control |
| Ogorodnikova AD | 2010 | HaBPS | U.S. | 50–59 | 0 | 1701 | 855 | Nested case–control | |
| P. Khalili | 2010 | MPP | Sweden | 27 | (47) | 100 | 3512 | 373 | Prospective |
| Rajpathak SN | 2011 | WHI-OS | U.S. | 15–20 | 50–79 (68.7) | 0 | 1944 | 972 | Nested case–control |
| Prugger C | 2012 | PRIME | Northern Ireland and France | 10 | 50–59 (55.5) | 100 | 285 | 95 | Nested case–control |
| Wannamethee SG | 2013 | BRHS | UK | 9 | 60–79 (68.4) | 100 | 3411 | 192 | Prospective |
| Gardener H | 2013 | NOMAS | U.S. | 10 | (69) | 37 | 2900 | 269 | Prospective |
| Bidulescu A | 2013 | JHS | U.S. | 6.2 | 21–94 (54 ± 13) | 36 | 4571 | 87 | Prospective |
| Men | 100 | 31 | |||||||
| Women | 0 | 56 | |||||||
| Kizer JR | 2013 | CHS | U.S. | 10.5 | (74.4) | 37 | 3290 | 492 | Prospective |
| Arregui M | 2014 | EPIC | Germany | 8.2 | (50.1) | 37 | 2155 | 190 | Nested case–control |
| Men | 804 | 90 | |||||||
| Women | 1351 | 80 |
MONICA = Monitoring of Trends and Determinants in Cardiovascular Diseases; JMSCS = Jichi Medical School Cohort Study; PROSPER = Prospective Study of Pravastatin in the Elderly; HaBPS = Hormones and Biomarkers Predicting Stroke (HaBPS) ancillary study; MPP = Malmo Preventive Project; WHI-OS = Women’s Health Initiative Observational Study; PRIME = Prospective Epidemiological Study on Myocardial Infarction; BRHS = The British Regional Heart Study; NOMAS = the Northern Manhattan Study; JHS = Jackson Heart Study; CHS = Cardiovascular Health Study; EPIC = European Prospective Investigation into Cancer.
Figure 1Forest plots of the two meta-analyses.
(A) The relationship between ADIPOQ +45T>G and the risk of metabolic syndrome in the dominant model. The odds ratio (OR) and 95% confidence intervals (CIs) are presented graphically by a square box and horizontal line, respectively. Box sizes are proportional to inverse-variance weights. The diamond represents the overall OR with its 95%CI using a random effects model. Leu HB-1 and Leu HB-2 represent two separate populations. CHEN F-1: MS; CHEN F-2: MS with CHD. (B) The relationship between adiponectin level and the risk of stroke under a random effects model. The risk ratio (RR) and 95% CIs are presented graphically by a square box and horizontal line, respectively. Box sizes are proportional to inverse-variance weights.
Relative Risks of Stroke According to Serum Adiponectin Levels in the 12 Identified Studies.
| First author | Year | Comparison | RR (95% CI) | Adjustment for Covariates |
|---|---|---|---|---|
| Söderberg S | 2004 | Sex, age, date/type of health survey, region, BMI, smoking, hypertension, cholesterol, and diabetes mellitus | ||
| Men | Q4 (≥17.3) vs. Q1 (<8.3) | 1.08 (0.56–2.08) | ||
| Per 5 μg/ml | 1.03 (0.89–1.21) | |||
| Women | Q4 (≥27.6) vs. Q1 (<14.5) | 0.85 (0.44–1.63) | ||
| Per 5 μg/ml | 0.97 (0.88–1.07) | |||
| Matsumoto M | 2008 | Q4 (>12.4; median, 14.35) | 0.87 (0.49–1.54) | Age, sex, HDL cholesterol, triglyceride, BMI, current smoking, systolic blood pressure, and high-sensitivity CRP. |
| Per standard-deviation increase in log μg/ml | 1.06 (0.86–1.31) | |||
| Per 5 μg/ml | 0.95 (0.69–1.31) | |||
| David J Stott | 2009 | |||
| Per standard-deviation increase (4.89 μg/ml) | 0.86 (0.72–1.03) | |||
| Per standard-deviation increase (4.89 μg/ml) | 0.78 (0.62–0.97) | |||
| Ogorodnikova AD | 2010 | Q4 (>18.8; median, 22.65) | 1.25 (0.88–1.79) | Age, race/ethnicity, BMI groups, type 2 diabetes, smoking, hypertension, LDL-C, HDL-C, METs, CRP, and aspirin use. |
| Per 5 μg/ml | 1.08 (0.99–1.17) | |||
| P. Khalili | 2010 | Q5 (median, 16.57) | 0.98 (0.65–1.47) | |
| Per 5 μg/ml | 1.04 (0.95–1.13) | |||
| Rajpathak SN | 2011 | Q4 (median, 46) | 1.16 (0.82–1.63) | Age, ethnicity, BMI, current smoking, physical activity, NSAIDs use, hypertension medication use, systolic blood pressure, history of coronary and artery diseases, HDL cholesterol, triglyceride, diabetes, and waist circumference. |
| Per 5 μg/ml | 1.01 (0.97–1.06) | |||
| Prugger C | 2012 | Systolic blood pressure, antihypertensive treatment, cigarette smoking, alcohol consumption, total cholesterol, high-density lipoprotein cholesterol, waist circumference, diabetes mellitus, and high-sensitivity C-reactive protein. | ||
| Per standard-deviation increase | 1.53 (1.01–2.34) | |||
| Per 5 μg/ml | 1.40 (1.14–1.71) | |||
| Wannamethee SG | 2013 | Q4 (>10.839, median, 12.775) | 0.73 (0.48–1.10) | Age, BMI, diabetes mellitus, angina, atrial fibrillation, smoking, social class, alcohol intake, physical activity, lung function, systolic blood pressure, and use of antihypertensive drugs. |
| Per 5 μg/ml | 0.94 (0.75–1.19) | |||
| Gardener H | 2013 | Q4 (13.8–53.3, median, 33.55) | 1.64 (1.01–2.63) | Age, sex, race/ethnicity, smoking, hypertension, diabetes, low density lipoprotein cholesterol, high density lipoprotein cholesterol, triglycerides, waist circumference, moderate alcohol use, moderate-heavy physical activity, previous cardiac disease history, and hs-CRP. |
| Per 5 μg/ml | 1.16 (1.03–1.31) | |||
| Bidulescu A | 2013 | Age, body mass index, systolic blood pressure, blood pressure medication, HDL-cholesterol, triglycerides, C-reactive protein, insulin resistance by HOMA-IR, smoking, and physical activity. | ||
| Men | Per standard-deviation increase in log μg/ml | 1.18 (0.79–1.74) | ||
| Women | Per standard-deviation increase in log μg/ml | 1.41 (1.04–1.91) | ||
| Kizer JR | 2013 | Per standard-deviation increase (7.9 μg/ml) | <20 μg/ml, 1.10 (0.89–1.35) | Age, sex, race, BMI, income, education, centre, smoking status, alcohol use, systolic blood pressure, antihypertensive medication, oestrogen replacement therapy, eGFR, aspirin use, health status, albumin, subclinical CVD, pre/diabetes mellitus, LDL-cholesterol, HDL cholesterol, triglycerides, and hs-CRP. |
| Per standard-deviation increase (7.9 μg/ml) | ≥20 μg/ml, 1.16 (0.97–1.38) | |||
| Per 5 μg/ml | 1.07 (0.98–1.16) | |||
| Arregui M | 2014 | Q3 (median, 9.4) | 1.94 (1.22–3.06) | Age, waist circumference, smoking status (never smoker, former smoker, current smoker <20 cigarettes per day, current smoker ≥20 cigarettes per day), sports activity (<2 h/week, ≥2 h/week), education (vocational school or less, technical school, university), alcohol consumption (men: 0, >0–12, >12–24, >24; women: 0, >0–6, >6–12, >12 g/day), prevalent hypertension, fasting status (yes/no), prevalent diabetes, HDL-cholesterol, triglycerides, and hs-CRP. |
| Men | Per 5 μg/ml | 1.15 (0.76–1.73) | ||
| Women | Per 5 μg/ml | 1.30 (1.02–1.67) |
*Estimates specific to ischemic stroke; Q = quintiles or quartiles.
Figure 2Summary of meta-analysis on the role of ADIPOQ +45T>G in potential metabolic-related disease reported to date.
The odds ratio (OR) and 95% confidence intervals (CIs) are presented graphically by a square box and horizontal line, respectively. acancer; bcolorectal cancer.