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. 2024 Nov 21;14(11):e091258. doi: 10.1136/bmjopen-2024-091258

Association between gestational diabetes mellitus diagnostic criteria and adverse pregnancy outcomes—a systematic review and meta-analysis of adjusted effect sizes from studies using current diagnostic criteria

Elhassan Mahmoud 1, Abdalla Moustafa Elsayed 1, Basant Elsayed 1, Yasmin Elsalakawi 1, Aswathy Gopinath 1, Tawanda Chivese 1,
PMCID: PMC11590801  PMID: 39578035

Abstract

Abstract

Objectives

To quantify the association between Gestational Diabetes Mellitus (GDM) and adverse pregnancy outcomes and primarily compare the associations between diagnostic criteria following the International Association of Diabetes and Pregnancy Study Groups (IADPSG) recommendations and non-IADPSG criteria, which use higher blood glucose cut-offs.

Design

Systematic review and meta-analysis of observational studies using contemporary GDM diagnostic criteria.

Data sources

PubMed, Scopus, Google Scholar, Cochrane Database of Systematic Reviews and the Cumulative Index to Nursing and Allied Health Literature (CINAHL) were searched for articles published between 2010 and 2023. The search was carried out on 15 May 2023.

Eligibility criteria

Studies were included if they were observational studies that reported adjusted effect sizes for GDM-related adverse outcomes and compared outcomes between women with and without GDM, used contemporary diagnostic criteria and were conducted after 2010.

Data extraction and synthesis

Two reviewers independently extracted data and assessed study quality using the MethodologicAl STandards for Epidemiological Research (MASTER) scale. Bias-adjusted inverse variance heterogeneity meta-analysis models were used to synthesise adjusted effect sizes. The same meta-analytic models were used to synthesise the overall OR and their 95% CIs for comparisons of the criteria which followed the IADPSG recommendations to other criteria, mostly with higher blood glucose cut-offs (non-IADPSG).

Results

We included 30 studies involving 642 355 participants. GDM was associated with higher odds of maternal outcomes, namely; caesarean section (adjusted OR (aOR) 1.24, 95% CI 1.01 to 1.51) and pregnancy-induced hypertension (aOR 1.55, 95% CI 1.03 to 2.34). GDM was associated with higher odds of neonatal outcomes, specifically; macrosomia (aOR 1.38, 95% CI 1.13 to 1.69), large for gestational age (aOR 1.42, 95% CI 1.23 to 1.63), preterm birth (aOR 1.41, 95% CI 1.21 to 1.64), neonatal intensive care unit admission (aOR 1.42, 95% CI 1.12 to 1.78), neonatal hypoglycaemia (aOR 3.08, 95% CI 1.80 to 5.26) and jaundice (aOR 1.47, 95% CI 1.12 to 1.91). Further analyses showed no major differences in adverse pregnancy outcomes between IADPSG and non-IADPSG criteria.

Conclusions

GDM is consistently associated with adverse pregnancy, maternal and foetal outcomes, regardless of the diagnostic criteria used. These findings suggest no significant difference in risk between lower and higher blood glucose cut-offs used in GDM diagnosis.

Keywords: Pregnancy, Meta-Analysis, Diabetes in pregnancy, Fetal medicine, Maternal medicine


STRENGTHS AND LIMITATIONS OF THIS STUDY.

  • Utilised contemporary studies with modern Gestational Diabetes Mellitus (GDM) diagnosis criteria, relevant to current debate on screening and diagnosis of GDM.

  • Included only adjusted effect sizes, minimising the influence of confounding on the relationship between GDM and outcomes.

  • Limitations include the use of data from observational studies, where confounding factors could not be fully eliminated.

  • Had a limited number of studies using non-International Association of Diabetes and Pregnancy Study Group criteria, potentially affecting the conclusiveness of the analysis.

Introduction

Gestational diabetes mellitus (GDM) is defined as any degree of glucose intolerance with onset or first recognition during pregnancy and it affects 14% of pregnancies globally.1 2 After delivery, most women diagnosed with GDM revert to normal glycemic status, however, both the mother and their offspring are at a higher risk of developing type 2 diabetes and cardiovascular disease later in life.3 4 The hyperglycaemia and pregnancy outcomes (HAPO) study showed that there was a linear increase in the risk of adverse pregnancy outcomes with increasing blood glucose, but there are no known cut-offs at which the risk of these outcomes becomes significantly elevated, unlike diabetes outside of pregnancy.5 6 Although many guideline bodies have adopted the International Association of Diabetes and Pregnancy Study Groups (IADPSG) recommendations, debate is still ongoing about the appropriate GDM screening strategies, blood glucose cut-offs and timing of GDM testing.7,9 Given the variation of the diagnostic criteria for GDM and screening approaches internationally, the prevalence of GDM varies widely.10 It is still not clear how the heterogeneity in screening approaches and diagnostic criteria affects the association between GDM and adverse pregnancy outcomes.

There is now abundant evidence that GDM not only causes adverse pregnancy outcomes and future type 2 diabetes and cardiovascular disease, but also has impact on a woman’s mental health and is associated with higher costs to the health system.34 11,14 The landmark HAPO study findings showed that milder levels of hyperglycaemia can adversely affect pregnancy outcomes.5 These findings resulted in changes and revisions to many international GDM diagnosis guidelines, based on the recommendations of the IADPSG published in 2010.6 The WHO in 2013,15 the American Diabetes Association (ADA),16 the Australasian Diabetes in Pregnancy Society (ADIPS)17 and the Society for Endocrinology, Metabolism and Diabetes of South Africa (SEMDSA)18 are examples of guideline bodies which adapted their GDM diagnostic guidelines to align with the IADPSG recommendations. The IADPSG recommends universal screening for GDM of all pregnant women without pre-existing diabetes, between 24 and 28 weeks of gestation using a one-step 2 hour 75 g oral glucose tolerance test (OGTT) and to diagnose GDM if a woman has one abnormal test result based on the following cut-offs: fasting plasma glucose (FPG)≥5.1 mmol/L, 1 hour OGTT plasma glucose≥10.0 mmol/L or 2 hour OGTT plasma glucose≥8.5 mmol/L.6

Despite the consensus on the adverse effects of hyperglycaemia on pregnancy outcomes, there is still a lack of agreement on GDM screening, testing and diagnosis, evidenced by the existence of more than 30 different GDM dianostic guidelines in use in many regions and countries worldwide.19 The differences in these criteria are not only in diagnostic maternal blood glucose levels, but also in the screening approaches, glucose testing methods and timing of GDM screening. Some of the heterogeneity also stems from differences in resource allocation for GDM care, while others arise from uncertainty in the evidence about the appropriate GDM screening and testing approaches. Some notable guideline bodies that have not adopted the IADPSG recommendations are the National Institute for Health and Care Excellence (NICE) which recommends risk factor-based GDM screening and has maintained a higher fasting glucose of ≥5.6 mmol/L for GDM diagnosis.20 Another example is the Diabetes in Pregnancy Study Group India (DIPSI) which recommends testing in a non-fasting state and diagnosis of GDM only if the 2 hour plasma glucose is ≥7.8 mmol/L.21 The heterogeneity in GDM screening and diagnostic criteria is likely one reason why there is variability in the observed effect magnitudes of the association between GDM and adverse pregnancy outcomes.

Findings on the estimates of the effect of GDM on adverse pregnancy outcomes are still not conclusive. A recent meta-analysis22 evaluated the association between GDM and adverse pregnancy outcomes. However, this meta-analysis included studies based on older diagnostic criteria that are no longer in practice, potentially encompassing cohorts which include overt diabetes and pre-existing diabetes. This limitation may have led to overestimation of the impact of GDM by including undiagnosed pre-existing diabetes in the analysis. Further, some meta-analyses used unadjusted odds ratios (ORs), thereby reported associations that could be confounded.23 To address these limitations, the current meta-analysis investigated the effect of GDM, diagnosed using contemporary criteria, on adverse pregnancy outcomes, and compared the effect sizes between criteria that conformed to the IADPSG recommendations and non-IADPSG criteria that generally used higher blood glucose cut-offs. By restricting our analysis to studies that report adjusted effect sizes, we aim to minimise the influence of confounders and provide a more accurate estimate of the true association between GDM and adverse pregnancy outcomes under current diagnostic practices.

Research questions

What is the effect of GDM, diagnosed using contemporary criteria, on each adverse pregnancy outcome? Does the effect of GDM on adverse pregnancy outcomes differ between different GDM diagnostic criteria?

Methods

Study design

A systematic review and meta-analysis of relevant studies was conducted. The study protocol is registered on the International Prospective Register of Systematic Reviews (PROSPERO) (CRD42020155061) and it follows the Preferred Reporting Items for Systematic Reviews and Meta-Analyses protocol extension (PRISMA-P).24

Search strategy for identification of studies

Data sources and electronic searches

PubMed, Scopus, Google Scholar, Cochrane Central Register of Controlled Trials (CENTRAL), the Cumulative Index to Nursing and Allied Health Literature (CINAHL) were searched for articles published between 2010 and 2023. The search was carried out on 15 May 2023. Medical subject headings (MeSH words) and keyword searches for GDM and pregnancy outcomes were used in the search. Supplementary Tables 1-3 contains the search strategy. Further, the reference lists of included papers were also searched. EndNote was used to remove duplicate, and studies were screened for inclusion using the Rayyan systematic review management website (www.rayyan.ai)). Two reviewers (EM, AE) independently screened the studies for inclusion within Rayyan. Following the initial screening, four reviewers (EM, AE, BE, YE) evaluated the papers for inclusion using full text, according to the specified inclusion criteria.

Studies inclusion criteria

Inclusion criteria

Studies were included if they were observational cohort, cross-sectional and case–control comparing adverse pregnancy outcomes between women with and those without GDM. The studies were included if they were conducted between 2010, when the IADPSG recommendations were published, to the year 2023 and if they reported adjusted ORs for the association between GDM and adverse pregnancy outcomes. Experimental studies were included only if they compared GDM diagnostic criteria as intervention and comparators.

Exclusion criteria

Studies were excluded if they were conducted prior to 2010, review articles, included animal studies, did not report an effect size or any outcomes related to this study, did not report adjusted effect sizes or included participants with pre-existing diabetes.

Outcomes of interest

Maternal outcomes

Maternal outcomes included caesarean section, pregnancy-induced hypertension (PIH) and pre-eclampsia. Caesarean sections included both elective and emergency. PIH was defined as a systolic blood pressure≥140 mm Hg or diastolic blood pressure≥90 mm Hg diagnosed at ≥20 weeks gestation. Pre-eclampsia was defined as hypertension (≥140/90 mm Hg) and proteinuria.

Foetal outcomes

Foetal outcomes included large-for-gestational-age (LGA), small-for-gestational-age (SGA), macrosomia, preterm birth, shoulder dystocia, neonatal hypoglycaemia, neonatal intensive care unit admission (NICU), jaundice and respiratory distress syndrome (RDS). Macrosomia was defined as birth weight greater than 4000 g. LGA was defined as birth weight above the 90th percentile for gestational age. SGA was defined as birth weight of less than 10th percentile for gestational age. Preterm birth was defined as birth before 37 completed weeks of gestation.

Data extraction and management

For duplicate publications, we only included the article that contains the most information, and all others were excluded. The following data were extracted from the articles: study characteristics such as the publication year, duration of the study, region, country, study design, sample size, GDM diagnostic criteria used, numbers of participants with the outcomes of interest and the effect size with their corresponding CIs. Data were extracted into a predesigned and piloted Microsoft Office Excel spreadsheet. For each study, two reviewers independently extracted the data and compared thereafter. Disparity in data extracted was resolved via discussion between all the reviewers.

Assessment of risk of bias

The risk of bias and external validity of the included studies was assessed using the MethodologicAl STandards for Epidemiological Research (MASTER) scale.25 Two reviewers independently assessed each study, and differences were resolved by discussion. If no consensus was reached, a third reviewer was consulted to resolve the conflict.

Data synthesis

Study characteristics and other data were narratively described and were presented as tables. Because the included studies were observational, of varying quality, a bias-adjusted inverse variance heterogeneity (quality effects) model was used as to synthesise overall effect sizes for the meta-analysis, with quality weights derived from the MASTER scale. Estimates from the random-effects model were also computed for comparison purposes, since this is the most widely used model in literature. The I2 statistic and the Cochrane’s Q p-values were both used to assess the heterogeneity. Doi plots and funnel plots were used for the assessment of publication bias. To explore the association between GDM diagnostic criteria and the odds of adverse outcomes, further analyses were carried out by comparing IADPSG to non-IADPSG. Non-IADPSG criteria in this study were Carpenter-Coustan (CC) (two studies26 27), 2008 Canadian Diabetes Association (CDA) (one study28), ADA 2014 (one study29), WHO 1999 (one study30) and the ADIPS (one study31). The studies using CC criteria employed universal OGTT screening. The cut-offs used in these studies varied. For CC and ADA 2014 criteria, fasting glucose≥5.3 mmol/L, 1-hour≥10.0 mmol/L and 2-hour≥8.6 mmol/L were used (n=7612). The WHO 1999 cut-offs included fasting glucose≥7.0 mmol/L or 2 hour glucose≥7.8 mmol/L (n=42 656). The 2008 CDA criteria used fasting glucose≥5.3 mmol/L, 1-hour≥10.6 mmol/L and 2-hour≥8.9 mmol/L (n=2 70 843). The ADIPS cut-offs used included fasting glucose≥5.5 mmol/L and 2-hour≥8.0 mmol/L (n=32 013). For analysis purposes, the non-IADPSG criteria were grouped together, since they used a higher FPG and are therefore expected to result in stronger associations with adverse pregnancy outcomes. The analysis was carried out using Stata V.17 software.

Patient and public involvement

No patients or members of the public were involved in this study.

Results

Search results

A total of 17 513 records were identified. There were 80 duplicate records that were removed. Figure 1 shows the PRISMA flow chart for the search process. Out of 305 study records selected at the initial title and abstract screening, 273 were excluded as they did not meet the inclusion criteria. The reasons for the exclusions were as follows: studies conducted before 2010 (n=83), letters/recommendations/reviews (n=17), studies where full texts were not available (n=16), studies where the criteria used were not clear (n=28), studies with no outcomes of interest (n=29) and studies excluded for other reasons (n=100). The list of excluded studies and reasons for exclusion are in online supplemental table 4. A total of 30 studies26,55 with 642 355 participants were finally included.

Figure 1. PRISMA flow chart showing the search. *Other reasons—did not exclude pre-existing diabetes, did not report relevant effect sizes (adjusted OR/RR). PRISMA, Preferred Reporting Items for Systematic reviews and Meta-Analyses.

Figure 1

Characteristics of included studies

Table 1 shows the characteristics of the included studies. Of the 30 included studies, most (n=17) were from Asia,2627 29 37,39 41 four were from Europe,30 34 36 49 three were from the Middle East,32 33 50 two were from Australia,31 40 two were from Africa,45 46 one was from South America35 and one was from North America28 (table 1). The studies were from these countries: Australia,31 40 Brazil,35 Croatia,30 36 India,48 Iran,26 Saudi Arabia,32 50 Qatar,33 Italy,34 49 Canada,28 Vietnam,29 38 53 South Korea,27 China3741,44 47 51 52 54 55 and Ethiopia.45 46 All the studies employed either cross-sectional or cohort designs. Four of these studies contained two independent populations that were analysed separately in the meta-analysis. In table 1, these populations are labelled as ‘Author, Year A’ for the first population and ‘Author, Year B’ for the second population. While the total number of studies is 30, the inclusion of these separate populations increased the total number of assessed populations in the meta-analysis to 34. The years of data collection were from 2010 to 2023. All studies have employed universal screening.

Table 1. Characteristics of included studies.

Study Study duration Country Sample size Region Study design Criteria Screening
Alfadhli et al, 201532 2011–2014 Saudi Arabia 954 Middle East Cohort IADPSG Universal
Bashir et al, 202033 2015–2016 Qatar 2221 Middle East Cohort IADPSG Universal
Capula et al, 201334 2010–2012 Italy 2448 Europe Cohort IADPSG Universal
Carvalho et al, 202335 2020–2020 Brazil 1618 South America Cross-sectional IADPSG Universal
Darbandi et al, 202226 2018–2018 Iran 3675 Asia Cross-sectional Non-IADPSG (CC) Universal
Djelmis et al, 201636 2012–2014 Croatia 4646 Europe Cohort IADPSG Universal
Erjavec et al, 201630 2010–2010 Croatia 42 656 Europe Cross-sectional Non-IADPSG (WHO-1999) Universal
Erjavec et al, 201630 2014–2014 Croatia 39 092 Europe Cross-sectional IADPSG Universal
He et al, 202337 2012–2021 China 115 097 Asia Cohort IADPSG Universal
Hiersch et al, 201928 2012–2016 Canada 266 942 North America Cohort Non-IADPSG (CDA) Universal
Hiersch et al, 201928 2012–2016 Canada 3901 North America Cohort Non-IADPSG (CDA) Universal
Hirst et al, 201238 2010–2011 Vietnam 2772 Asia Cohort IADPSG Universal
Kawasaki et al, 202339 2015–2019 Japan 1807 Asia Cohort IADPSG Universal
Kim et al, 201927 2014–2016 Korea 1907 Asia Cohort Non-IADPSG (CC) Universal
Kim et al, 201927 2014–2016 Korea 1969 Asia Cohort IADPSG Universal
Laafira et al, 201640 2011–2014 Australia 3105 Australia Cohort IADPSG Universal
Li et al, 201441 2011–2011 China 54 275 Asia Cross-sectional IADPSG Universal
Lin et al, 202242 2012–2020 China 2151 Asia Cohort IADPSG Universal
Mak et al, 201943 2015–2015 China 1901 Asia Cohort IADPSG Universal
Mei et al, 202144 2016–2018 China 333 Asia Cohort IADPSG Universal
Muche et al, 202045 2018–2019 Ethiopia 694 Africa Cohort IADPSG Universal
Muche et al, 202046 2018–2019 Ethiopia 684 Africa Cohort IADPSG Universal
Nguyen et al, 202029 2015–2016 Vietnam 2030 Asia Cohort Non-IADPSG (ADA-2014) Universal
Pan et al, 201547 2010–2012 China 17 808 Asia Cohort IADPSG Universal
Punnose et al, 202248 2011–2017 India 2638 Asia Cohort IADPSG Universal
Ronco et al, 202349 2010–2020 Italy 2364 Europe Cohort IADPSG Universal
Wahabi et al, 201750 2013–2015 Saudi Arabia 9723 Middle East Cohort IADPSG Universal
Wan et al, 2019A31 2010–2013 Australia 3419 Australia Cohort Non-IADPSG (ADIPS) Universal
Wan et al, 2019B31 2010–2013 Australia 28 594 Australia Cohort Non-IADPSG (ADIPS) Universal
Wang et al, 202152 2012–2013 China 8844 Asia Cohort IADPSG Universal
Wang et al, 202351 2018–2020 China 2031 Asia Cohort IADPSG Universal
Yang et al, 201855 2011–2015 China 1232 Asia Cohort IADPSG Universal
Yue et al, 202253 2016–2018 Vietnam 4703 Asia Cohort IADPSG Universal
Zou et al, 202254 2016–2018 China 4121 Asia Cohort IADPSG Universal

ADAAmerican Diabetes AssociationADIPSAustralasian Diabetes in Pregnancy SocietyCCCarpenter-CoustanCDACanadian Diabetes AssociationIADPSGInternational Association of Diabetes and Pregnancy Study Groups

Quality of included studies

Overall, most of the studies had relatively high scores in the quality assessment using the MASTER scale56 (online supplemental figure 1). Four studies33,3555 scored 28/36, four studies29 38 40 48 had a score of 27/36 and four studies27 42 49 52 had a score of 26/36. The scores of the remaining studies ranged from 22/36 to 25/36. The main deficiencies were in equal retention, equal ascertainment, equal prognosis and sufficient analysis domains (online supplemental figure 1).

Maternal outcomes

Table 2 shows the results of the overall syntheses for the association between GDM and adverse pregnancy outcomes. A total of 18 studies26,2830 reported data on total C-sections, with adjusted ORs (aORs) between 0.831 42 and 2.3.36 The overall aOR of total C-section was 1.24 (95% CI 1.01 to 1.51) with high heterogeneity (I2=85.9%) (online supplemental figure 2). GDM was associated with a 25% increase in the odds of pre-eclampsia, in overall synthesis (aOR 1.25, 95% CI 1.00 to 1.56, I2=31.8%, n=8 studies2728 31 33,35 38 49) (online supplemental figure 3). Finally, in overall synthesis of seven studies,2728 31 33,35 38 45 47 GDM showed an estimated 55% increase in the odds of PIH (aOR 1.55, 95% CI 1.03 to 2.34, I2=69.4%; online supplemental figure 4). The analyses suggested minor evidence of publication bias for all maternal outcomes, except for PIH which showed major evidence (online supplemental figures 5–7). In further analyses, compared with the IADPSG, non-IADPSG criteria showed similar odds of pre-eclampsia, PIH and total C-section (table 3).

Table 2. Results of overall syntheses for the association between GDM and each adverse pregnancy outcome.

Outcome Overall aOR (95% CI) I2 (%) LFK* Number of studies
Maternal outcomes
 Total C section 1.24 (1.01, 1.51) 85.9 1.7 18
 Pre-eclampsia 1.25 (1.00, 1.56) 31.8 1.6 8
 PIH 1.55 (1.03, 2.34) 69.4 −2.8 7
Birth size-related neonatal outcomes
 Macrosomia 1.38 (1.13, 1.69) 75.0 4.2 19
 LGA 1.42 (1.23, 1.63) 60.1 2.8 19
 SGA 0.91 (0.80, 1.04) 40.1 0.8 14
 Shoulder dystocia 1.20 (0.86, 1.66) 0.0 −1.0 4
Other neonatal outcomes
 Preterm birth 1.41 (1.21, 1.64) 62.3 0.0 17
 NICU admission 1.42 (1.12, 1.78) 78.7 0.0 14
 Neonatal hypoglycaemia 3.08 (1.80, 5.26) 86.3 1.1 7
 Jaundice 1.47 (1.12, 1.91) 65.0 −5.0 6
 RDS 1.22 (1.01, 1.47) 40.1 2.7 6
*

The LFK is a measure of symmetry of publication bias plots and reflects major asymmetry when its absolute value is greater than 2 (or −2).

aORadjsuted ORGDMGestational Diabetes MellitusLGAlarge-for-gestational-ageNICUneonatal intensive care unit admissionPIHpregnancy-induced hypertensionSGAsmall-for-gestational-age

Table 3. Results of analyses by criteria for the association between GDM and each adverse pregnancy outcome.

Outcome Criteria Overall aOR (95% CI) P for interaction
Maternal outcomes
Total C-section IADPSG 1.34 (1.12, 1.60) 0.398
Non-IADPSG 1.20 (1.02, 1.43)
Pre-eclampsia IADPSG 1.08 (0.60, 1.94) 0.565
Non-IADPSG 1.29 (1.11, 1.49)
PIH IADPSG 1.34 (0.82, 2.16) 0.636
Non-IADPSG 1.57 (0.98, 2.54)
Birth size-related neonatal outcomes
Macrosomia IADPSG 1.42 (1.24, 1.63) 0.577
Non-IADPSG 1.04 (0.34, 3.13)
LGA IADPSG 1.41 (1.20, 1.66) 0.759
Non-IADPSG 1.48 (1.14, 1.94)
SGA IADPSG 0.94 (0.80, 1.10) 0.298
Non-IADPSG 0.81 (0.65, 1.01)
Shoulder dystocia IADPSG 1.36 (0.63, 2.95) 0.761
Non-IADPSG 1.16 (0.60, 2.26)
Other neonatal outcomes
Preterm birth IADPSG 1.44 (1.21, 1.71) 0.797
Non-IADPSG 1.39 (1.15, 1.86)
NICU admission IADPSG 1.32 (1.11, 1.58) 0.723
Non-IADPSG 1.41 (1.04, 1.92)
Neonatal hypoglycaemia IADPSG 3.09 (1.52, 6.29) 0.956
Non-IADPSG 3.01 (1.64, 5.51)
Jaundice IADPSG 1.54 (1.24, 1.92) 0.816
Non-IADPSG 1.46 (0.96, 2.22)
RDS IADPSG 1.32 (1.01, 1.74) 0.574
Non-IADPSG 1.19 (0.92, 1.54)

aORadjusted ORGDMGestational Diabetes MellitusLGAlarge-for-gestational-ageNICUneonatal intensive care unit admissionPIHpregnancy-induced hypertensionRDSrespiratory distress syndromeSGAsmall-for-gestational-age

Birth size-related neonatal outcomes

Data from 19 studies were included in the analysis of macrosomia.2627 29 31,33 36 37 40 41 43 46 The overall aOR for macrosomia was 1.38 (95% CI 1.13 to 1.69) with moderate heterogeneity (I2=75.0%) (online supplemental figure 8). Overall, GDM was associated with 1.42-fold higher odds of LGA (aOR 1.42, 95% CI 1.23 to 1.63, I2=60.1%, n=192729 31 33,38 42) (online supplemental figure 9). However, the synthesis suggested no significant associations between GDM and the odds of SGA (aOR 0.91, 95% CI 0.80 to 1.04, I2=40.1%, n=14;2731 33 34 38 39 42,44 46 49 52online supplemental figure 10) or shoulder dystocia (aOR 1.20, 95% CI 0.86 to 1.66, I2=0.0%, n=4;27 31 32 50 online supplemental figure 11). The analyses suggested evidence of publication bias for macrosomia and LGA, minor evidence for shoulder dystocia and no evidence of publication bias for SGA (online supplemental figures 12–15). In further analyses, compared with the non-IADPSG, the IADPSG criteria showed similar odds of macrosomia, LGA and SGA (table 3).

Other neonatal outcomes

In an analysis of 17 studies,26,2831 GDM was associated with increased odds of preterm birth (online supplemental figure 16), with an overall aOR of 1.41 (95% CI 1.21 to 1.64) and moderate heterogeneity (I2=62.3%). For NICU admission, data from 14 studies2728 31,35 38 39 42 43 48 50 53 showed that GDM was associated with a 1.42-fold increased odds (aOR 1.42, 95% CI 1.12 to 1.78) with high heterogeneity (I2=78.7%) (online supplemental figure 17). The overall aOR for neonatal hypoglycaemia was 3.08 (95% CI 1.80 to 5.26, I2=86.3%, n=72728 31,33 38 42) (online supplemental figure 18). GDM was associated with 1.47-fold higher odds of neonatal jaundice (aOR 1.47, 95% CI 1.12 to 1.91, I2=65.0%, n=6;2728 31,34 online supplemental figure 19). Moreover, GDM was associated with a 1.22-fold increased odds of neonatal RDS (aOR 1.22, 95% CI 1.01 to 1.47, I2=40.1%, n=6;2831,34 42 online supplemental figure 20). The analyses suggested evidence of publication bias for jaundice and RDS, minor evidence for neonatal hypoglycaemia and no evidence of publication bias for preterm birth and NICU admission (online supplemental figures 21–25). Analyses by diagnostic criteria showed that, compared with non-IADPSG, IADPSG criteria showed similar odds of jaundice, RDS, neonatal hypoglycaemia, preterm birth and NICU admission (table 3).

Discussion

In this meta-analysis of 30 studies, we found strong associations between GDM diagnosed using contemporary criteria and adverse pregnancy outcomes. The highest associations were observed for neonatal hypoglycaemia, PIH, jaundice, NICU admission, macrosomia, LGA and preterm birth. We found no major differences in the effect of GDM between IADPSG-based criteria and criteria that used higher glucose cut-offs.

We found no major differences between IADPSG and non-IADPSG criteria on the effect of GDM on adverse pregnancy, maternal and foetal outcomes. When comparing IADPSG to stricter GDM criteria, this meta-analysis showed that no outcome differed by criteria. Our findings are similar to those of older meta-analyses which have also found that the risk of adverse pregnancy outcomes was not largely different across the different diagnostic criteria.2357,59 A key difference between our synthesis and the older previously publishes studies is that we included contemporary studies, with adjusted effect magnitudes, that were conducted after 2010 when the IADPSG recommendations were published. Our findings and those of previously published studies raise the question about the benefits of using lower glucose cut-offs for the diagnosis GDM. It has been argued that the use of criteria with lower fasting glucose cut-offs combined with universal screening, like the IADPSG, leads to an increase in GDM prevalence, without a concurrent increase in benefit (ie, reduced pregnancy outcomes and postpartum type 2 diabetes).10

Our findings have several implications. For healthcare systems, adopting the IADSPG criteria, that is, universal screening and lower glycaemic thresholds compared with targeted screening and generally higher glycaemic diagnostic thresholds, may strain resources, as more women would require screening, monitoring and interventions. This could lead to an increase in healthcare costs,60 61 which will lead to an increased burden, especially in settings where resources are already constrained. On the other hand, selective or targeted screening may result in some proportions of women progressing with undiagnosed hyperglycaemia in pregnancy, and the consequent higher risk of adverse pregnancy outcomes. The NICE, for example, has opted to keep their guidelines which use risk factor-based screening and higher glycaemic thresholds. It is crucial to balance the costs and benefits of adopting either the IADPSG recommendations or selective screening, higher glycaemic threshold approaches such as that used by the NICE. These considerations may be different for different health systems, depending on affordability and healthcare system capacity. For clinicians, these findings highlight the need for careful consideration when diagnosing and managing GDM, as they should be mindful of the potential for overdiagnosis and overtreatment, and they should tailor management strategies based on each patient’s individual risk factors, ensuring that interventions are justified and beneficial. For women, the increased likelihood of a GDM diagnosis that comes with universal screening and lower glycaemic thresholds may result in increased anxiety and an increased likelihood of medical interventions, without a clear improvement of outcomes. GDM diagnosis has been associated with a higher occurrence of mental health problems in pregnant women.62 63 It is therefore critical to provide women with clear and balanced information along with the implications, and to promote shared decision-making. More research is needed to identify appropriate blood glucose cut-offs where the benefit of GDM diagnosis outweighs the unintended negative consequences.

GDM was associated with around a 25% increase in the odds of pre-eclampsia and total C-section and 56% increase in the odds of PIH. A previous meta-analysis showed a 50% increase in pre-eclampsia and a 40% increase in C-sections in women with than in those without gestational diabetes mellitus.22 The HAPO study found that the occurrence of pre-eclampsia was positively associated with blood glucose level even after adjusting for clinical centre, age, Body Mass Index, height, smoking status, alcohol consumption, family history of diabetes, gestational age at OGTT and urinary tract infection.13 64 GDM causes increase in the insulin secretion by the foetal pancreas which itself is an anabolic hormone and leads to increase in the foetal weight. Fetuses with high birth size are usually delivered by caesarean sections as vaginal deliveries carry high risks to both mothers and babies.65 The pathophysiology of pre-eclampsia is not well understood, and the association observed in these studies may be bidirectional. Irrespective of direction of association, the findings of this meta-analysis confirm the need to screen and monitor women with GDM for pre-eclampsia and PIH. Notably, pre-eclampsia and PIH are all associated with higher rates of both emergency and elective C-sections, and therefore may partly explain the higher risk of C-section in women with GDM.

The current meta-analysis showed that GDM was associated with higher the odds of neonatal hypoglycaemia, LGA, macrosomia, preterm birth, jaundice, NICU admission, RDS and shoulder dystocia. The higher odds of birth-size-related complications, LGA, macrosomia and shoulder dystocia, are likely because of maternal hyperglycaemia, which leads to a high glucose intrauterine environment which promotes foetal hyperglycaemia and hyperinsulinemia, which in turn induce excess fat deposition in the fetus.66 67 Notably, the highest OR was observed for neonatal hypoglycaemia, with threefold higher odds for GDM exposed neonates compared with the non-GDM exposed neonates. However, it is important to consider that this risk could be exaggerated due to the possibility of allocation bias for this outcome. Neonates born to mothers with GDM are more likely to be routinely tested for blood glucose levels shortly after birth due to the known risks of hypoglycaemia, whereas neonates of non-GDM pregnancies do not typically undergo such testing unless clinically indicated. This difference in clinical practice likely increases the detection rate of hypoglycaemia in the GDM group, which could lead to an overestimation of the association between GDM and neonatal hypoglycaemia. Previous meta-analyses have generally found that GDM was associated with adverse pregnancy outcomes.21 22 However, our findings differ from those of many of these previous meta-analyses in that our aORs, although still suggesting a higher risk of adverse pregnancy outcomes with GDM, are generally lower than those reported by the other meta-analyses.23 This discrepancy is mostly due to the other meta-analyses having used unadjusted effect sizes. GDM is thought to cause RDS by interfering with the production of surfactant lipids and proteins.68 Notably, some previous meta-analyses have reported contrasting findings in terms of the associations observed. Ye et al, using a meta-analysis of unadjusted ORs and studies with criteria that are no longer in use, found no association between shoulder dystocia and GDM was not significant.22 Tehrani et al used a meta-analysis of unadjusted ORs and reported a 20% decrease in the odds SGA, contrary to our finding.23

A strength of this study is the use of contemporary studies using contemporary GDM diagnosis criteria, therefore contributing to the current debate about the appropriate screening tests and testing strategy for GDM. We only included adjusted effect sizes, thus minimising the effect of confounding on the relationship between GDM and the outcomes, which is the main limitation of existing meta-analyses. However, this study has some limitations. Since this study uses data from observational studies, the role of confounding cannot be fully eliminated. Our findings require confirmation by experimental randomised controlled trials which compare these criteria. Additionally, most of the included studies were conducted in Asia (54%), and relatively fewer studies from the other regions. This may limit the generalisability of our findings to non-Asian populations. Finally, the small number of studies using non-IADPSG criteria, most of which employed cut-offs relatively close to those recommended by IADPSG, limits the strength of the comparison between IADPSG and non-IADPSG criteria, as the non-IADPSG group may not fully represent the diversity of diagnostic approaches in use.

Conclusion

GDM showed consistent associations with pregnancy, maternal and foetal outcomes, with no major differences in the effects when different contemporary criteria were used.

supplementary material

online supplemental file 1
bmjopen-14-11-s001.pdf (2.3MB, pdf)
DOI: 10.1136/bmjopen-2024-091258

Footnotes

Funding: The authors have not declared a specific grant for this research from any funding agency in the public, commercial or not-for-profit sectors.

Prepublication history and additional supplemental material for this paper are available online. To view these files, please visit the journal online (https://doi.org/10.1136/bmjopen-2024-091258).

Provenance and peer review: Not commissioned; externally peer reviewed.

Patient consent for publication: Not applicable.

Ethics approval: This study involves human participants but ethical approval is not required as the review utilises published data. Exempted this study. Participants gave informed consent to participate in the study before taking part.

Patient and public involvement: Patients and/or the public were not involved in the design, or conduct, or reporting or dissemination plans of this research.

Contributor Information

Elhassan Mahmoud, Email: em1902107@qu.edu.qa.

Abdalla Moustafa Elsayed, Email: ae1901998@qu.edu.qa.

Basant Elsayed, Email: be1802020@qu.edu.qa.

Yasmin Elsalakawi, Email: ye1804388@qu.edu.qa.

Aswathy Gopinath, Email: agopinath@qu.edu.qa.

Tawanda Chivese, Email: tchivese@qu.edu.qa.

Data availability statement

Data are available upon reasonable request. All data relevant to the study are included in the article or uploaded as supplementary information.

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Associated Data

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

    Supplementary Materials

    online supplemental file 1
    bmjopen-14-11-s001.pdf (2.3MB, pdf)
    DOI: 10.1136/bmjopen-2024-091258

    Data Availability Statement

    Data are available upon reasonable request. All data relevant to the study are included in the article or uploaded as supplementary information.


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