Literature DB >> 25266849

Association of gestational diabetes mellitus (GDM) with subclinical atherosclerosis: a systemic review and meta-analysis.

Jing-Wei Li, Si-Yi He, Peng Liu, Lin Luo, Liang Zhao, Ying-Bin Xiao1.   

Abstract

BACKGROUND: Gestational diabetes mellitus (GDM) is associated with an elevated risk of adverse health outcomes such as type 2 diabetes and cardiovascular diseases. Carotid intima-media thickness (cIMT) is increasingly used as a noninvasive marker for subclinical atherosclerosis. Whether there is a direct correlation between GDM and elevated cIMT is still controversial.
METHODS: PubMed, Embase and reference lists of relevant papers were reviewed. Studies assessing the relationship between GDM and cIMT were included. Weighted Mean Difference (WMD) of cIMT was calculated using random-effect models.
RESULTS: Fifteen studies with a total of 2247 subjects were included in our analysis, giving a pooled WMD of 0.05 (95% confidence interval [CI] 0.03 -0.07). Furthermore, meta regression and subgroup analysis found that the association between GDM and larger cIMT already existed during pregnancy, and this relation was stronger in obese GDM patients.
CONCLUSIONS: GDM in and after pregnancy is associated with subclinical atherosclerosis. Weight control may be helpful to prevent cardiovascular diseases for GDM patients.

Entities:  

Mesh:

Year:  2014        PMID: 25266849      PMCID: PMC4192280          DOI: 10.1186/1471-2261-14-132

Source DB:  PubMed          Journal:  BMC Cardiovasc Disord        ISSN: 1471-2261            Impact factor:   2.298


Background

Gestational diabetes mellitus (GDM) is one of the common complications during pregnancy, which incidence is approximately 5% (range from 1 to 14%) and this number is increasing due to increased prevalence of obesity [1]. GDM women have an increased risk for type 2 diabetes mellitus, cardiovascular disease and metabolic syndrome years after pregnancy, also offspring of GDM women have a higher risk for noncommunicable diseases and obesity rates [2]. Carotid intima-media thickness (cIMT) is measurement of the combined thickness of the intimal and medial layers of the carotid artery by B-mode ultrasound. cIMT is a noninvasive technique to dectect subclinical atherosclerosis [3], and is associated with multiple cardiovascular risk factors [4], cardiovascular events [5] and coronary artery diseases [6]. As GDM alone is independent predictors of obstructive coronary artery disease [7] and cardiovascular diseases. We suspect whether there is a direct correlation between GDM and elevated cIMT. However, studies focusing on this issue have been small and have reported conflicting results. Therefore, we conducted a meta-analysis to assess the correlation between GDM and cIMT.

Methods

Literature search

We searched the databases of EMBASE and PubMed and references lists of relevant papers to MAY 24, 2014. EMBASE search terms were ‘pregnancy diabetes mellitus’/exp and ‘arterial wall thickness’/exp. Similar search terms were used for PubMed. The search strategy (Additional file 1) has been put into the supplemental material. No language and time limitation was performed.

Study selection

We selected published trials that investigated the relationship between gestational diabetes and cIMT. Excluded were (1) studies published as conference articles; (2) cIMT was not measured in both gestational diabetes and control groups; and (3) reports having duplicate study population. All literature searches were independently reviewed by 2 authors (JW L and SY H) to identify relevant trials that met the inclusion criteria. Disparities were adjudicated by a third author (YB X). For each included article, study characteristics, including authors, publication year, country, ages, duration, BMI, mean and standard deviation of CIMT were extracted independently by two researchers (JW L and SY H). If the studies were studying the same population, we included the newer and completed ones in this meta-analysis.

Statistical analysis

The cIMT in both gestational diabetes and control groups were induced to our meta-analysis. Statistical heterogeneity between studies was tested by Cochran’s test (P < 0.05). We used the random-effect model in this meta-analysis, which takes into account heterogeneity among studies, because the study design and measuring time were different across studies. The Cochrane Q test and I2 was used to evaluate the presence of heterogeneity. If heterogeneity exists, subgroup analyses were conducted to evaluate effect modification by study-level characteristics including publish year, number of patients, ages at pregnancy, measuring time (in pregnancy or after pregnancy), BMI and duration. Publication bias was assessed with Egger’s test. All statistical significance was set at a p value of 0.05, and CIs were calculated at the 95% level. Statistical analyses were performed with Stata software (version 11.0; Stata Corporation, College Station, TX).

Results

Search results and study characteristics

A total of 67 articles were identified in a combined search of PubMed and EMBASE. We also manually searched studies cited in previous reviews and of references list from retrieved articles. First 27 duplicates were removed, and then 18 articles were initially excluded through screening title and abstract. Among the 23 articles retrieved for further review of the full text, 6 were excluded for repeated reports, 1 for not reporting cIMT outcomes, and 1 study for conference reports. Akinci B and his colleagues investigated the association between GDM and CVD from different aspects and published five articles using the same population [1, 8–11]. Mehmet Vural and his colleagues [12] studied the same population with Mehmet Ali Eren [13]. Eventually, 15 studies with a total of 2247 subjects were included in our meta-analysis (Figure 1) [11, 13–26]. Study characteristics and exclusion criteria included in the analysis are shown in Table 1. Only the study of Gunderson [19] was evalauted at multivariate analysis (adjusted for age, race, parity, pre-pregnancy BMI, HOMA-IR, weight gain, year 20-HOMA-IR + DBP, incident diabetes and metabolic syndrome), other studies used unadjusted data. Other characteristics of included studies have been put into the supplemental material (Additional file 2).
Figure 1

Literature search and selection process.

Table 1

Study characteristics of included studies

AuthorAgeNo. patientCountryDuration(year)BMIWaistExclusion:
GDMCGGDMCG
Baris Akinci [11]35.1190Turkey3.3926.82 ± 4.2526.5 ± 2.6690.31 ± 11.6887.45 ± 8.93known cardiovascular disorders, type 1 or type 2 diabetes (diagnosed before the index pregnancy), familial hyperlipidemia, hypertension, acute infection, chronic inflammatory disease, coagulation disorders and other systemic diseases, on peri- or postmenopausal period at the time of sampling
A.E. Atay [14]27.975Turkey2.2932.2 ± 4.827.3 ± 4.2receiving any medication during the last 3 months, with liver or renal dysfunction, hyperprolactinemia, or thyroid disease and smokers, with GDM and healthy pregnant women with a history of GDM in their previous pregnancies or glucose tolerance before the present pregnancy, healthy pregnant women with a family history of DM
S. Bo [15]41.1195Italy6.5Group 1: 20.2 ± 2.2 Group 2: 23.6 ± 5.222.1 ± 3.1Group 1: 73.6 ± 5.7 Group 2: 86.4 ± 13.579.9 ± 9.9known pre-pregnancy conditions, such as diabetes mellitus, diseases affecting glucose metabolism, hypertension, chronic illness, and medical treatments (including hormonal preparations), presence of a positive OGCT, but an OGTT not diagnostic for GDM.
Mustafa Caliskan [16]33.495Turkey626.9 ± 3.926.1 ± 2.785.0 ± 5.984.4 ± 4.9presence of a valvular or congenital heart disease; cardiac rhythm other than sinus; previous myocardial infarction; hypo- or hyperthyroidism; chronic obstructive pulmonary disease or corulmonale; systemic diseases (etc. hemolologic ,hepatic, and renal diseases) or any disease that could impair coronaryflow reserve; hypertrophic cardiomyopathy; family history of coronary artery disease; excessive alcohol consumption (>120 g/day); previous lipid metabolism disorders; history of dyslipidemia; smoking; and diabetes mellitus.those with ST segment or T-wave changes specific for myocardial ischemia, Q-waves, and incidental left bundle branch block on ECG
Mehmet Ali Eren [13]3164Turkey031.8 ± 5.529.4 ± 5.4smoking, alcohol abuse, preeclampsia, multiple pregnancies, pregestational diabetes for all study participants, and a family history of diabetes mellitus (for the control group only), pregnancies with GDM who had overt diabetes with 75-g standard OGTT in the 6-week after delivery
Hossein Fakhrzadeh [17]3340Iran427.63 ± 3.5227.33 ± 5.64current or previous smokers, patients who had pre-existing HTN, diabetes mellitus (DM), and women with symptomatic CVD
Claudia Maria Vilas Freire [18]35.7139Brazil2.729.01 ± 0.6622.46 ± 0.4292.09 ± 1.6374.08 ± 1.14any past condition afflicting them at previous pregnancies, other than GDM, was considered an exclusion criteria, especially those requiring hospital admission such as preeclampsia. alcoholism, drug addiction, uremia as well as those with liver, psychiatric, rheumatologic, and thyroid diseases or in use of corticosteroids
Erica P. Gunderson [19]44.2898USA2024.8 (5.6)23.3 (4.3)74.4 (11.1)71.7 (8.8)heart disease or diabetes before pregnancies andthose without any post-baseline births,missing ccIMT measurements, and with history of heart disease,recently or currently pregnant, and with previous hysterectomy at baseline, with clinically relevant diabetes at baseline and those who developed diabetes before the first post-baseline birth
H Ijas [20]52.2116Finland1927.1 ± 5.324.5 ± 4.294.4 ± 14.994.4 ± 14.2GDM diagnosed in their subsequent pregnancy
Ufuk Ozuguz [22]30.1101Turkey029.95 ± 4.2126.34 ± 4.08previously knowndiagnosis of diabetes mellitus; the presence of an additional cardiovascular risk factor such as hypertension, hyperlipidemia or coronary artery disease; presence of other factors that may affect serum lipid profile and/or hsCRP level (acetylsalicylic acid, smoking, impaired liver and kidney functions, history of trauma, an acute infection within one month prior to presentation or a chronic infection); presence of an underlying chronic inflammatory condition such as collagen tissue and inflammatory bowel diseases.
E. TARIM [23]29.470Turkey028.65 ± 4.7527.17 ± 2.90smokers, patients who had folic acid and vitamin B12 deficiency, hypertension, multiple pregnancy, fetal abnormalities, pre-existing hypertension and diabetes, thyroid disease or a history of significant severe diseases, family history of coronary heart disease and stroke
I Vastagh [24]32.242Hungary028 ± 427 ± 4have a history of diabetes mellitus or a previous GDM.
Gholamreza Yousefzadeh [26]24.850Iran028.7 ± 4.526.5 ± 4.5family history of cardiovascular disorders; history of hypertension; anti-hypertensive and cholesterol medication use; hyperlipidemia; overt diabetes or fasting plasma glucose (FPG) > 125 mg/dl;chronic renal or hepatic diseases; malignancies; recent hormonal medications; cigarette smoking; severe obesity (body mass index [BMI] >35 kg/m2); and history of infertility or polycystic ovarian disease, with the status of plaques/shadowing ( > 1.0 mm) at any carotid site
Volpe, L. [25]36.352Italy225.7 ± 8.923 ± 3.486.9 ± 9.779.6 ± 9.7not mentioned
Yun Hyi Ku [21]32.3120Korea122.3 (20.4-24.2)20.4 (19.5-23.1)80.3 ± 7.774.5 ± 7.7females who were diagnosed with gestational diabetes between the 24th and 28th week of pregnancy
Literature search and selection process. Study characteristics of included studies

GDM is associated with cIMT

The cIMT from both GDM and control groups was pooled. The WMD was 0.05 (95% CI: 0.03–0.07, P < 0.001). The statistic value I2 was 92.5%, P < 0.001 (Figure 2). No significant publication bias was found for WMD by Begg’s test (P = 0.621) (Figure 3). We performed meta-regression analyses on cIMT to investigate the cause of heterogeneity, and found the BMI may be one of the main causes (P = 0.048, Table 2). Subgroup analysis was performed to distinguish the heterogeneity among these studies. Results showed that study object with higher BMI got larger cIMT (WMD: 0.07, 95% CI: 0.03–0.12 for those with BMI > 27.6 and WMD: 0.04, 95% CI: 0.02–0.06 for those with BMI < 27.6). Diagnostic criteria of GDM might influence the results (WMD: 0.08, 95% CI: 0.05–0.11 for Carpenter and Coustan criteria, WMD: 0.03, 95% CI: −0.01–0.07 for NDDG criteria, WMD: 0.04, 95% CI: −0.01–0.09 for WHO criteria and WMD: 0.01, 95% CI: −0.06–0.07 for ADA 75 g criteria). There seemed no difference as to measuring time of cIMT with GDM (WMD: 0.07, 95% CI: 0.03–0.10 when measured in pregnancy and WMD: 0.05, 95% CI: 0.03–0.07 when measured years after pregnancy) and ages at pregnancy (WMD: 0.07, 95% CI: 0.03–0.11 for those with age < 31 and WMD: 0.04, 95% CI: 0.02–0.07 for those with age > =31). The GDM did not significantly increase cIMT as to publish year (WMD: 0.07, 95% CI: 0.03–0.10 for those published after 2013 and WMD: 0.05, 95% CI: 0.02–0.08 for those before 2013), number of patients (WMD: 0.06, 95% CI: 0.03–0.08 for number of patients above 90 and WMD: 0.05, 95% CI: 0.02–0.07 for number of patients below 90) and duration between the time of GDM diagnosed and cIMT measured (WMD: 0.05, 95% CI: 0.01–0.09 for duration > 4 and WMD: 0.05, 95% CI: 0.01–0.09 for duration between 0 and 4) (Table 3).
Figure 2

Forest plots showing effects of GDM on cIMT.

Figure 3

Begg’s funnel plot showing publication bias.

Table 2

Results of meta regression of GDM on cIMT

ItemCoefP95% CI
Publish year.00052840.930-.0121875.0132443
Age at pregnancy-.00171710.704-.0112528.0078185
No. Patients-.00005970.372-.0001991.0000797
BMI of GDM.01007150.048.0001263.0200168
Measuring time.0130570.676-.0529943.0791082
Duration-.00054140.823-.0056708.0045881
GDM Criteria-.02349640.062-.0484176.0014249

Coef = regression coefficients.

CIs = confidence intervals.

Table 3

Stratified analyses of GDM on cIMT

ItemSubgroupNoWMD95% CIP. HetI 2 P. test
Publish year> = 201350.070.030.10<0.00192.20.001
<2013100.050.020.08<0.00188.8<0.001
No. pat> = 9080.050.020.07<0.00194.3<0.001
<9070.070.030.10<0.00179.9<0.001
Ages at pregnancy> = 3180.040.020.07<0.00185.40.001
<3170.070.030.11<0.00194.9<0.001
Measuring timeIn pregnancy50.070.030.10<0.00191.7<0.001
After pregnancy100.050.030.07<0.00185.20.001
Duration (years)>440.050.010.09<0.00192.10.007
>0, <460.050.010.09<0.00191.60.010
BMI> = 27.670.070.030.12<0.00195.10.001
<27.680.040.020.06<0.00183.80.001
GDM CriteriaCarpenter70.080.050.11<0.00190.5<0.001
NDDG30.03<−0.010.070.00185.20.072
WHO20.04−0.010.090.10262.60.114
ADA-75 g40.01−0.060.07<0.00193.50.816
Forest plots showing effects of GDM on cIMT. Begg’s funnel plot showing publication bias. Results of meta regression of GDM on cIMT Coef = regression coefficients. CIs = confidence intervals. Stratified analyses of GDM on cIMT

Discussion

During pregnancy, insulin resistance increases. In healthy women compensatory insulin secretion counteracts this demand, while in GDM patients, not enough insulin is secreted to overcome the insulin demand. Compared with healthy ones, GDM patients are more likely to have type 2 diabetes and endothelial dysfunction, known conditions that leads to higher risk for cardiovascular diseases [27]. The results from our systematic review and meta-analyses indicate GDM was significantly associated with elevated cIMT, and this association already exists at the time of pregnancy. Fatty women with GDM seem to have larger cIMT. Most of our included studies have found GDM is associated with larger cIMT. The study by A.E. Atay et al. [14] was the one finding the most significant difference of cIMT between GDM patients and control. The study population included in this study was fatter (BMI: 32.2 ± 4.8 for the GDM group vs 27.3 ± 4.2 for the control). Earlier study has found that obese patients with GDM had higher prevalence of chronic hypertension [28] and cardiovascular disease [29]. Our meta-regression and subgroup analyses confirms that the association between GDM and cIMT is influenced by BMI. The study of H Ijas et al. [20] showed that GDM patients with BMI > 25 had larger cIMT compared with those with BMI < 25 and controls. Also Gunderson and his colleagues [19] has found the association between GDM and cIMT changed from significance to insignificance after adjusting BMI. The study by Yun Hyi Ku [21] found there was no association between GDM and cIMT. As this study was conducted in Korea, the author compared their results with western ones and inferred it may be caused by culturally-based obesity. The author explained that as obesity was one of the major factor influencing cIMT, obesity is much less common in their country than in western ones ( BMI of study objects were in normal range), which may lead to insignificance of their results. Contrary to these findings, the study of S. Bo et al. [15] found that GDM patients with BMI ≥ 25 had smaller cIMT that those with BMI < 25. This study regarded both BMI and metabolic syndrome as grouping criteria and BMI < 25 group also had no components of the metabolic syndrome. Metabolic syndrome may abolish this connection in this study. We find that the diagnostic criteria of GDM may influence the impact of GDM on cIMT. Diagnosis of gestational diabetes significantly changed on the basis of the diagnostic criteria used, and influenced clinical outcomes [30, 31]. However, too few studies included in NDDG, WHO, ADA 75 g subgroups. In fact the NDDG criteria indicate more severe GDM than Carpenter-Coustan one. But we got no statistically different result in NDDG subgroup analysis, while a statistically different one in Carpenter-Coustan subgroup. The heterogeneity among different studies is relatively large, which may also cause this phenomenon. The American Heart Association recommend to prevent heart disease in women with gestational diabetes, which was based on a higher risk of type 2 diabetes mellitus in these persons [32]. It is reported that cIMT adds predictive value to the Framingham risk score for cardiovascular events [5], is a level IIa recommendation for cardiovascular risk evaluation [33], cIMT has been confirmed to be able to predict incident coronary heart diseases [34]. Our finding that GDM is associated with early atherosclerosis even during pregnancy is important, because we can establish prevention strategy, such as weight control for GDM patients earlier in life. Our research also finds increase of cIMT already exists at the time pregnancy. Another question raises our interests is that whether cIMT can predict GDM, as it’s demonstrated that cIMT is elevated before the onset of clinical diabetes [35]. However, cIMT measured prior to the pregnancy fails to predict pregnancy outcome such as gestational diabetes [36]. Thus subclinical atherosclerosis may appear along with GDM, but is not a predictor of GDM. We find cIMT does not increase years after GDM has been diagnosed. A possible explanation is that these patients take certain drugs to delay the process of atherosclerotic formation, it’s been reported that even subclinical atherosclerosis may be reduced by drugs [37]. As the medications of these patients were not fully reported in included studies, future researches are needed to study this issue. The number of population in each study is limited; there was no study with number of GDM patients beyond 200. Prospective study of large samples is needed in the future.

Conclusion

In this meta-analysis we observed GDM is related to larger cIMT, the relation is stronger in obese GDM patients, and the association already exists at the time of pregnancy and remained significant years after pregnancy. Weight control may be helpful to prevent cardiovascular diseases for GDM patients. Additional file 1: Search strategy. (DOCX 15 KB) Additional file 2: Table S1: Supplemental characteristics of included studies. (DOC 50 KB)
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