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SYSTEMATIC REVIEW article

Front. Immunol., 04 December 2023
Sec. T Cell Biology
This article is part of the Research Topic T Cells in Pregnancy Adverse Outcomes View all 4 articles

Regulatory T cells in the peripheral blood of women with gestational diabetes: a systematic review and meta-analysis

Hania Arain&#x;Hania Arain1†Tina Patel&#x;Tina Patel1†Nicoleta Mureanu,Nicoleta Mureanu1,2Athina Efthymiou,Athina Efthymiou1,2Giovanna LombardiGiovanna Lombardi3Timothy TreeTimothy Tree3Kypros H. Nicolaides,Kypros H. Nicolaides1,2Panicos Shangaris,,*Panicos Shangaris1,2,3*
  • 1Department of Women and Children’s Health, School of Life Course and Population Sciences, Faculty of Life Sciences and Medicine King’s College London, London, United Kingdom
  • 2Harris Birthright Research Centre for Fetal Medicine, King’s College Hospital, London, United Kingdom
  • 3Peter Gorer Department of Immunobiology, School of Immunology & Microbial Sciences, Faculty of Life Sciences & Medicine, King’s College London, London, United Kingdom

Background: Gestational diabetes (GDM) affects approximately 14% of pregnancies globally and is associated with short- and long-term complications for both the mother and child. In addition, GDM has been linked to chronic low-grade inflammation with recent research indicating a potential immune dysregulation in pathophysiology and a disparity in regulatory T cells.

Objective: This systematic review and meta-analysis aimed to determine whether there is an association between GDM and the level of Tregs in the peripheral blood.

Methods: Literature searches were conducted in PubMed, Embase, and Ovid between the 7th and 14th of February 2022. The inclusion criteria were any original studies published in the English language, measuring differentiated Tregs in women with GDM compared with glucose-tolerant pregnant women. Meta-analysis was performed between comparable Treg markers. Statistical tests were used to quantify heterogeneity: τ2, χ2, and I2. Study quality was assessed using a modified version of the Newcastle-Ottawa scale.

Results: The search yielded 223 results: eight studies were included in the review and seven in the meta-analysis (GDM = 228, control = 286). Analysis of Tregs across all trimesters showed significantly lower Treg numbers in women with GDM (SMD, −0.76; 95% CI, −1.37, −0.15; I2 = 90%). This was reflected in the analysis by specific Treg markers (SMD −0.55; 95% CI, −1.04, −0.07; I2 = 83%; third trimester, five studies). Non-significant differences were found within subgroups (differentiated by CD4+FoxP3+, CD4+CD127, and CD4+CD127FoxP3) of both analyses.

Conclusion: GDM is associated with lower Treg numbers in the peripheral maternal blood. In early pregnancy, there is clinical potential to use Treg levels as a predictive tool for the subsequent development of GDM. There is also a potential therapeutic intervention to prevent the development of GDM by increasing Treg populations. However, the precise mechanism by which Tregs mediate GDM remains unclear.

Systematic review registration: https://www.crd.york.ac.uk/prospero, identifier CRD42022309796.

Introduction

Gestational diabetes mellitus (GDM), characterized by glucose intolerance with first onset during pregnancy, is a common obstetric disease affecting up to 14% of pregnancies globally, with incidence varying between and within countries (13). The condition is associated with both short- and long-term complications for the mother and child. Adverse perinatal and neonatal outcomes include increased risk of hypertensive disorders (including pre-eclampsia), stillbirth, preterm birth, cesarean and operative vaginal delivery, macrosomia, shoulder dystocia, neonatal hypoglycemia, and hyperbilirubinemia. Long-term complications include an increased risk of type 2 diabetes in both mother and child as well as metabolic syndrome and cardiovascular disease in women and obesity in children (itself a risk for a range of diseases) (46).

The mechanisms involved in the pathophysiology of GDM are complex and not fully understood. They include failure of pancreatic β cells, oxidative stress, and adipose expandability. Recent evidence also suggests an association with a maternal state of chronic low-grade inflammation where there is immune dysregulation through enhanced T-cell activation and increased circulating levels of proinflammatory cytokines (7, 8).

Underlying pathophysiology–immune implications: Tregs

Regulatory T cells (Tregs) are a specialized subset of CD4+ T cells responsible for moderating tolerance to self-antigens and play a part in regulating the T-cell-mediated inflammatory response (9). Tregs are defined by their cell surface markers CD4+, CD25+, CD127, and FoxP3, whose expression is understood to facilitate Treg development (10). The mechanisms of their immunosuppressive function include cell-to-cell contact, releasing anti-inflammatory cytokines such as IL-10 and TGF-β, directly inducing apoptosis in the antigen-presenting cell (APC) and consuming IL-2 to reduce T-cell proliferation (11). In pregnancy, the immune system is known to play a complex and dynamic role, switching from proinflammatory to anti-inflammatory to proinflammatory (12). Moreover, Tregs have been evidenced to increase during the first two trimesters, before a non-significant decrease in the third trimester (13).

Current research on Tregs in GDM and added value of this study

Dysregulation of Tregs, mostly lower levels, has been associated with several adverse obstetric conditions, including recurrent miscarriage, pre-eclampsia (1416), and diabetes mellitus (17, 18). Importantly, the loss of Treg function in immunodysregulation polyendocrinopathy X-linked syndrome (IPEX) leads to insulin-dependent diabetes mellitus (19).

Rationale

Despite much interest in Tregs, research focusing on Treg populations and activity in GDM is relatively limited with only a few studies conducted in this area (2027). Additionally, the synthesis of these findings related to Tregs in pregnancy, in the form of a systematic review and meta-analysis, has not previously been performed.

This systematic review and meta-analysis aims to determine whether there is an association between Treg numbers in the peripheral maternal blood and the development of GDM. The primary objective is therefore comparing the overall proportion of Tregs between patients with GDM and those with healthy pregnancies. This may indicate the future potential prognostic (the possibility of predicting later development of GDM based on Treg populations early in pregnancy) and therapeutic use of Tregs (potential to target said populations) when approaching GDM diagnosis and management in the future.

Methods

This systematic review and meta-analysis was registered on PROSPERO on the 10th of February 2022 following the completion of the protocol form (CRD42022309796) (available from https://www.crd.york.ac.uk/prospero/display_record.php?ID=CRD42022309796).

Broadly using the PICOS framework, the primary outcome was to determine whether there is an association between the overall proportion of Tregs in the peripheral blood of women with GDM when compared with glucose-tolerant pregnant women of a similar gestational age.

Inclusion/exclusion criteria

The inclusion criteria were original human studies (all study designs) measuring Treg levels in the peripheral blood of pregnant women with GDM, published in the English language. Unpublished literature, abstracts, and literature reviews were excluded as well as studies of participants with previous immune dysregulation (e.g., studies of women with HIV), samples taken from cord blood or decidua, and studies with ambiguity in the methodology of identifying Tregs.

Search

The search was electronically conducted by two reviewers, between the 7th and 14th of February 2022, using the following databases: Embase (using the Ovid search software), Medline, and PubMed. To ensure that all potentially relevant studies were included, the search strategy used a combination of keywords, appropriate variants, and all relevant terms. The authors remained vigilant for new publications. The exact search words used are listed in Appendix 1.

Contact was attempted but not established with the authors. Summary estimates were sought for the meta-analysis of the desired groups, while any relevant individual data were extracted for the review. Search results were compiled in a shared Google Drive. Duplicates were identified and highlighted using the “highlight duplicates” in the Google Sheets feature, and the remaining titles and abstracts were screened for relevance independently by each reviewer. A traffic light system was used to sort studies according to the eligibility criteria. Discrepancies were independently resolved by a third reviewer.

Data analysis

The Cochrane data extraction and assessment template was used as the basis to design review-specific data extraction categories (28). Data were collected for the following subcategories: study demographics (country, year, methodology, inclusion/exclusion criteria, Treg markers and methodology used, populations, follow-up, etc.), maternal data (gestational age at sample collection, age, weight/BMI, glucose levels, gestational age at delivery where applicable), child outcomes, and all data relevant to Tregs (including expression markers and T-cell populations where available). Data extraction for studies that presented data in a graphical format without access to a numerical summary was done using WebPlotDigitizer 4.5 (29). All extracted data were cross-checked to minimize error.

Meta-analysis was performed across studies that used comparable Treg cell markers to identify populations. This was defined as the Treg markers denoted by previous literature to be required in identifying Treg cells: CD25, CD127, and Foxp3 (30).

The measure of effect for quantitative analysis was the standardized mean difference (SMD) of Treg populations. For studies where data were presented as median and range/interquartile range, an online tool (“Mean-Variance Estimation”) was used to convert the data to mean and standard deviation. This tool is specifically designed for statistical conversion when performing meta-analysis using the methods of Luo et al. and Wan et al. (31, 32). Using the statistical formula, any study using mean and standard error of the mean (SEM) was also converted to mean and standard deviation. For studies where patients with GDM were grouped separately, the mean and standard deviation (SD) of the groups were combined using the formula (Appendix 2) in the Cochrane Handbook (33).

Statistical analyses were performed using RevMan software version 5.4.1 with data reported with 95% confidence intervals (CIs). Random-effects models were used to determine the summary effect estimate in studies with high heterogeneity as recommended by the Cochrane Handbook (Higgins et al., 2022). Graphical representation of analysis was also used to produce forest plots. Tau-squared (τ2), chi-squared (χ2), and inconsistency index (I2) tests were used to quantify heterogeneity between studies.

With consideration to Treg markers and Treg profiles dependent on gestational age, data from the studies were analyzed according to two main considerations: analysis by trimester for all studies and analysis by Treg markers for studies using samples in the third trimester to account for potential sources of heterogeneity due to gestational age. In studies that measured multiple markers (differentiated in data), analysis was done according to the most appropriate measure in comparison to other studies. Further sensitivity analysis was also performed excluding two studies with a population of only overweight women where populations were of a BMI greater than x as high BMI has been linked to dysregulation to explore reasons for heterogeneity (34).

Risk of bias

Quality assessment was done using a modified version of the Newcastle-Ottawa scale (NOS) as recommended by Cochrane (33). The full criteria is provided in Appendix 3.

Results

Search results and study selection

Three hundred and thirteen titles were assessed for eligibility including one study published after the main search was conducted (26). There were 91 duplicates, and 305 titles were excluded. Figure 1 summarizes the selection process with full reasons for exclusion defined in Appendix 4.

FIGURE 1
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Figure 1 PRISMA flow diagram.

Data from eight studies were included in the systematic review (GDM = 254, control = 309), and data from seven studies were included in the meta-analysis (GDM = 228, control = 286); the study by Sifnaios et al., 2019 was excluded from quantitative analysis because the authors only measured Tregs based on staining of peripheral T cells for the expression of the specific intracellular cytokine IL-10 instead of the predefined Treg markers determined in the methods.

Study characteristics

All studies were observational with populations recruited from hospital settings: five were case–control studies (2124, 27) and three were cohort studies (20, 25, 26). Five studies included a defined inclusion criteria, while three studies did not have a defined exclusion criteria. Patients with systemic and autoimmune diseases were excluded in five studies (20, 2224, 27). Of these, three studies also excluded patients with infectious diseases at the time of sampling to confound for potential impact on Treg populations (22, 23, 27). One study also listed the withdrawal criteria for women with inflammation or infection at the time of sampling (24).

Immunophenotyping of Tregs in all studies was done using flow cytometry. The exact markers and methodology are listed in Table 1. Most studies took samples at one time point only, while two studies followed the women taking samples postpartum (23, 24). Only samples taken within pregnancy were included in the meta-analysis. Lobo was the only study to measure multiple Treg markers (22). The exact markers and individual study results can be seen in Tables 2.1 (Appendix 3) and 2.2 (Appendix 5). All studies were matched for gestational age. Two studies were age- and weight-matched with controls (24, 27).

TABLE 1
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Table 1 Study characteristics (includes setting, population, diagnostic criteria, number of participants in each group divided by management, inclusion and exclusion criteria, overall findings, and specified Treg markers) of the included studies.

Two studies were matched for weight only (20, 22). Ethnicity was documented in four studies (22, 23), which was controlled as a confounding factor between groups in two studies (20, 24). Tregs were measured in six studies in the third trimester (2125, 27) and in one study each in the first (20) and second (26) trimesters. There were two studies on overweight women with a BMI ≥25 kg/m2 (20, 22).

Table 1 shows the individual study characteristics in detail, including the diagnostic criteria and management. Table 2 highlights the maternal characteristics as published by the studies. Table 3 shows all data relevant to Tregs. This includes additional data on subpopulations and other immune markers. The measured child characteristics are listed in Appendix 6. The detailed criteria and management of GDM by individual studies are listed in Tables 1, 2 (21, 24, 25). Only three studies defined the management status of the patients. Of these, only one excluded patients managed with insulin (24), while the remaining two documented those diet-controlled and insulin-controlled but did not differentiate between them when sampling Treg populations. This is further expanded in Appendix 7.

TABLE 2
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Table 2 Maternal characteristics.

TABLE 3
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Table 3 Treg populations measured in women with GDM and pregnant controls against the individual Treg markers used in the studies (mean and standard deviation).

Overall, the study quality assessed, using the modified NOS scale, was considered fair with a medium/low risk of bias. The full assessment and the scores awarded are available in Appendix 5.

Analysis

The third-trimester data from Wang et al. (26) were excluded from the quantitative analysis due to the high probability that these data were already published by Yang et al. (25). The second-trimester data were included.

Figure 2 shows the summary forest plot of the analysis of the seven studies across all three trimesters (GDM = 228, control = 286). These were subgrouped by trimester: one study in trimester 1, one study in trimester 2, and five studies in trimester 3. Results show that Treg populations are significantly lower in women with GDM with an SMD of −0.76 (95% CI −1.37, −0.15 and I2 = 90%; p = 0.01). A large heterogeneity between the studies as highlighted by the I2 values was unexplained by the sensitivity analysis.

FIGURE 2
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Figure 2 Forest plot of the SMD of women with GDM vs. control subgrouped by trimesters. The figure shows that overall Treg populations are found to be lower in women with GDM. Individually by trimester, significant differences were shown in the studies of women in the first (p = 0.004; SDM = −0.83; CI: −1.40, −0.26) and second trimesters (p = 0.004; SDM = −2.50; CI: −3.23, −1.78) reflective of the published individual study findings. However, when comparing studies in the third trimester only, the overall SDM was −0.43 (95% CI: −0.99, 0.14; I2 = 84%). As the CI crosses the null value, there is no overall significance. In the third trimester, only one study reported a significantly lower number of Tregs in women with GDM with the other four reporting and showing a non-significant difference.

Additional analysis, subgrouped by Treg markers, was done on the five studies measuring Tregs in the third trimester only (Figure 3). The groups of markers were as follows: CD4+FoxP3+ (22) (women with GDM = 31, control = 27), CD4+CD127 (23, 25, 26) (GDM = 83, control = 93), and CD4+CD127FoxP3+ (21, 22, 27) (women with GDM = 107, control = 116). Lobo et al. measured the populations of both CD4+FoxP3+ and CD4+CD127FoxP3+, and therefore, the published results of both populations were included in the subgroup analysis.

FIGURE 3
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Figure 3 Forest plot of GDM vs. control subgrouped by the Treg markers Foxp3+, CD127, and CD127Foxp3+. The figure shows that overall Treg populations are found to be lower in women with GDM.

Overall, the SDM of the Treg populations specific to Treg markers was −0.55 (95% CI = −1.04, −0.07; I2 = 83%). This shows lower proportions of Tregs across all markers in the third trimester. Individually, all three markers cross the null value: Foxp3+ SDM = −0.21 (95% CI = −0.73, 0.31), CD127 SMD = −1.08 (95% CI = −2.68, 0.51; I2 = 95%), and CD127Foxp3+ SDM = −0.35 (95% CI = −0.92, 0.22; I2 = 74%).

Figure 4 shows the sensitivity analysis excluding studies (20, 22) that only included overweight/obese women, as obesity has previously been linked to a dysregulation in Treg populations in the “adipose tissue.” The results remain statistically significant (p = 0.03) of the Treg populations of women with GDM compared with healthy pregnant controls with an SMD of −0.92 (95% CI: −1.75, −0.09; I2 = 93%).

FIGURE 4
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Figure 4 Forest plot of women with GDM vs. control done for sensitivity analysis excluding studies that included overweight/obese women only. The figure shows that overall Treg populations remain lower in women with GDM with CI below the null value.

Additional findings from individual studies that measured additional parameters related to Treg populations and expressive activity as well as other immune markers are listed in Appendix 8. A concise overview is listed in Table 3.

Discussion

The results of the meta-analysis suggest that GDM is associated with lower levels of Tregs circulating in the peripheral blood of affected mothers when compared with healthy pregnant controls. Likewise, the pooled analysis of only third-trimester samples, by specific Treg cell markers Foxp3+, CD127, and CD127Foxp3+, reflected the main findings (Figure 2). These findings reflect previous evidence of dysregulation of Tregs in obstetric and non-obstetric insulin-dependent complications (14, 16, 35).

However, subgroup analysis of the third-trimester studies (when using only the main Treg marker) was non-significant. This needs to be further investigated due to limited sample sizes, and possible explanations for this result may be attributed to the dynamic nature of the immune response during normal pregnancy and the differences in Treg markers and subpopulations.

This suggests that specific Treg subpopulations may be implicated in GDM even if the overall number of Treg cells does not reflect the complex nature of studying Tregs. This theory is further implied by the findings in some of the individual studies. Despite no significant differences being found in overall Treg cell populations, significant differences were found in the suppressive ability of Tregs through expression of specific markers such as IL-10 or in gating for naive and memory Treg subsets (23, 24).

Treg cell subpopulations and the expression of specific markers relative to their suppressive ability are complex subjects that require further research, especially in the context of GDM; thus, these cannot be expanded in this paper.

With regard to pregnancy, early studies into immune regulation embraced pregnancy as a “Th-2” or anti-inflammatory state, postulating that a shift in cytokine production would result in abortion or significant pregnancy complications. However, this theory was argued against, and subsequent research paints a complex picture whereby the immune response is seen to alter throughout pregnancy (36). The initial studies evaluated pregnancy as a single event, where in reality, every stage has different requirements on the maternal system. Broadly speaking, it is understood that the first, early second, and late third trimesters require a proinflammatory environment for implantation and later delivery, while the second trimester, a period of rapid fetal growth and development, is an anti-inflammatory stage (37).

It has also been established that Tregs increase during normal pregnancy and seem to play a pivotal role in the mechanism of successful pregnancy. However, Treg numbers and subpopulations vary across women and within individuals throughout pregnancy, with a decline typically observed in the third trimester (13, 38, 39).

The pattern of changes in the percentage of circulating Tregs is suggested to follow this trajectory: an increase in the first trimester as opposed to non-pregnant individuals, peaking in the second trimester, and subsequently declining in the third trimester (39). Furthermore, a significant decrease in Treg levels has been observed by several studies at the time of delivery (3840), which may also account for the non-significant differences between the affected and healthy groups shown in the analysis in the third trimester.

Thus, we must consider the potential impact of possible fluctuations in Treg populations as pregnancy progresses and the association these may have with diseases such as GDM.

Both the dynamic nature of the immune response in normal pregnancy and GDM and the complexity in understanding and measuring Treg populations, function, and expression reiterate the requirement for further research in this area.

Strengths

This review fills a critical gap in the literature by being the first to gather all the evidence in this area. Our findings can therefore be used to aid future research regarding disease pathophysiology with a potential impact on clinical practice. We used the Cochrane Handbook as a guide when planning and conducting this review and adhered to a clear definition of search strategy and inclusion and exclusion criteria.

Limitations

This study is subject to several limitations primarily stemming from the scarcity of published studies with small cohort sizes and high heterogeneity among the trials. Additionally, the included studies have examined different Treg cell markers. This is a valid current practice with results being deemed comparable for analysis; however, to further increase understanding, there is a necessity to have a consensus on the adoption of universal markers (30).

Likewise, recent evidence shows that Tregs have subpopulations based on the expression of cytokines and they can also be classified into naive and effector Tregs (30, 41, 42), but most studies did not differentiate between these. The role of Treg plasticity is also of interest. Tregs are suggested to have functional plasticity whereby they maintain the expression of Foxp3 and the required chemokine receptors yet have the capacity to acquire a different phenotype (e.g., Th1, Th2, and Th17 Tregs) in response to environmental cues and anatomical location (11).

Due to data limitations, we were unable to perform subgroup analysis by severity of disease (judged by glycemic status or management strategy: diet-controlled vs. medication). Previous studies have found a significantly lower proportion of Tregs in insulin-controlled TD2M compared with diet-controlled (43); therefore, a future comparison between Tregs depending on the severity of GDM is desired.

Additionally, the data for women in their first and second trimesters were notably scarce, most likely due to the limitations of current diagnostic methods. The ethnicity of participants was also overlooked in many studies. As it is established that some ethnic groups are at a higher risk of GDM than others (2), pathophysiology may also differ. Consequently, this demographic information may be critical in translating research findings into clinical practice. We hope our study highlights and encourages the need for further research in these areas.

Clinical and research implications

This review suggests that Treg populations may be significantly lower in women with GDM; however, the mechanism of this association or causal relationship is undetermined. Likewise, literature specific to studying Tregs in GDM is also limited. Thus, we need a better understanding of the role of Tregs in the pathophysiology of GDM as well as considerations of the impact of factors associated with GDM such as obesity, gestational age, and maternal ethnicity on Treg populations. We also need to consider the impact of Treg activity and the role of Treg plasticity in these diseases (11).

Figure 5 illustrates the factors that are common between GDM and low Treg levels.

FIGURE 5
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Figure 5 A visual aid of the factors showing a link between GDM and low Treg levels. This shows that though there may be an association between low Treg levels and GDM, current evidence does not allow a conclusion on the causal relationship between the two.

The use of Tregs as a diagnostic marker for GDM is unlikely due to lack of disease specificity as highlighted by the range of diseases associated with Treg pathology. However, there may be future potential for the use of Tregs as an early prognostic marker for obstetric complications in comparison to current diagnostic measures in later pregnancy, leading to better diagnosis and management, if we can determine appropriate threshold levels.

Figure 6 shows a diagram of the implications of the results for future work.

FIGURE 6
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Figure 6 A visual aid constructed to explore some of the potential future work and clinical applications based on our research.

Conclusion

The study has demonstrated that GDM is associated with lower maternal blood Treg numbers (4447). However, this finding does not imply causation, and the precise mechanisms by which Tregs may mediate GDM remain unclear. Furthermore, although the authors of individual studies included in the meta-analysis acknowledged and accounted for some factors, there is a possibility that these findings are related to other/unknown underlying mechanisms and associated risk factors which may lead to lower Tregs in GDM (e.g., obesity) or physiological mechanisms associated with the disease such as the associated state of chronic low-grade inflammation (35, 43). Nevertheless, our findings add to the evidence base implicating a dysregulation of Treg cell number in disease pathology further incentivizing research into Tregs in GDM.

Data availability statement

The original contributions presented in the study are included in the article/supplementary material. Further inquiries can be directed to the corresponding author.

Author contributions

PS, HA, and TP conceptualized the topic and structure of the systematic review. PS, HA, and TP drafted and revised the manuscript. NM, AE, GL, TT, KHN, and PS provided expert opinions and edited and approved the final manuscript. All authors contributed to the article and approved the submitted version.

Funding

The author(s) declare financial support was received for the research, authorship, and/or publication of this article. PS is funded by an NIHR Clinical Lectureship (CL-2018-17-002). This study was funded by the Fetal Medicine Foundation (KN, AE, and NM) (registered charity 1037116), and the National Institute for Health Research (NIHR) Biomedical Research Centre at Guy’s and St Thomas’ National Health Service Foundation Trust and King’s College London (IS-BRC-1215–20006). The views expressed in this article are those of the authors and not necessarily those of the National Health Service, the NIHR, or the Department of Health.

Conflict of interest

The authors declare that the research was conducted in the absence of any commercial or financial relationships that could be construed as a potential conflict of interest.

Publisher’s note

All claims expressed in this article are solely those of the authors and do not necessarily represent those of their affiliated organizations, or those of the publisher, the editors and the reviewers. Any product that may be evaluated in this article, or claim that may be made by its manufacturer, is not guaranteed or endorsed by the publisher.

Supplementary material

The Supplementary Material for this article can be found online at: https://www.frontiersin.org/articles/10.3389/fimmu.2023.1226617/full#supplementary-material

References

1. Fisher SA, Rahimzadeh M, Brierley C, Gration B, Doree C, Kimber CE, et al. The role of Vitamin D in increasing circulating T regulatory cell numbers and modulating T regulatory cell phenotypes in patients with inflammatory disease or in healthy volunteers: A systematic review. PLoS One (2019) 14(9):e0222313. doi: 10.1371/journal.pone.0222313

PubMed Abstract | CrossRef Full Text | Google Scholar

2. Behboudi-Gandevani S, Amiri M, Bidhendi Yarandi R, Ramezani Tehrani F. The impact of diagnostic criteria for gestational diabetes on its prevalence: a systematic review and meta-analysis. Diabetol Metab Syndr (2019) 11:11. doi: 10.1186/s13098-019-0406-1

PubMed Abstract | CrossRef Full Text | Google Scholar

3. Wang H, Li N, Chivese T, Werfalli M, Sun H, Yuen L, et al. IDF diabetes atlas: estimation of global and regional gestational diabetes mellitus prevalence for 2021 by international association of diabetes in pregnancy study group’s criteria. Diabetes Res Clin Pract (2022) 183:109050. doi: 10.1016/j.diabres.2021.109050

PubMed Abstract | CrossRef Full Text | Google Scholar

4. Murray SR, Reynolds RM. Short- and long-term outcomes of gestational diabetes and its treatment on fetal development. Prenat Diagn (2020) 40:1085–91. doi: 10.1002/PD.5768

PubMed Abstract | CrossRef Full Text | Google Scholar

5. Leybovitz-Haleluya N, Wainstock T, Landau D, Sheiner E. Maternal gestational diabetes mellitus and the risk of subsequent pediatric cardiovascular diseases of the offspring: a population-based cohort study with up to 18 years of follow up. Acta Diabetol (2018) 55:1037–42. doi: 10.1007/S00592-018-1176-1/TABLES/3

PubMed Abstract | CrossRef Full Text | Google Scholar

6. Kampmann U. Gestational diabetes: A clinical update. World J Diabetes (2015) 6:1065. doi: 10.4239/wjd.v6.i8.1065

PubMed Abstract | CrossRef Full Text | Google Scholar

7. Plows J, Stanley J, Baker P, Reynolds C, Vickers M. The pathophysiology of gestational diabetes mellitus. Int J Mol Sci (2018) 19(11):3342. doi: 10.3390/IJMS19113342

PubMed Abstract | CrossRef Full Text | Google Scholar

8. Lekva T, Norwitz ER, Aukrust P, Ueland T. Impact of systemic inflammation on the progression of gestational diabetes mellitus. Curr Diabetes Rep (2016) 16:1–11. doi: 10.1007/S11892-016-0715-9/FIGURES/1

CrossRef Full Text | Google Scholar

9. Kondělková K, Vokurková D, Krejsek J, Borská L, Fiala Z, Ctirad A. Regulatory T cells (Treg) and their roles in immune system with respect to immunopathological disorders. Acta Med (Hradec Kralove Czech Republic) (2016) 53:73–7. doi: 10.14712/18059694.2016.63

CrossRef Full Text | Google Scholar

10. Hori S, Nomura T, Sakaguchi S. Control of regulatory T cell development by the transcription factor Foxp3. J Immunol (2017) 198:981–5. doi: 10.1126/SCIENCE.1079490/SUPPL_FILE/HORI.SOM.PDF

PubMed Abstract | CrossRef Full Text | Google Scholar

11. Kitz A, Dominguez-Villar M. Molecular mechanisms underlying Th1-like Treg generation and function. Cell Mol Life Sci (2017) 74:4059. doi: 10.1007/S00018-017-2569-Y

PubMed Abstract | CrossRef Full Text | Google Scholar

12. Morelli S, Mandal M, Goldsmith LT, Kashani BN, Ponzio NM. The maternal immune system during pregnancy and its influence on fetal development. Res Rep Biol (2015) 6:171–89. doi: 10.2147/RRB.S80652

CrossRef Full Text | Google Scholar

13. Somerset DA, Zheng Y, Kilby MD, Sansom DM, Drayson MT. Normal human pregnancy is associated with an elevation in the immune suppressive CD25+ CD4+ regulatory T-cell subset. Immunology (2004) 112:38–43. doi: 10.1111/J.1365-2567.2004.01869.X

PubMed Abstract | CrossRef Full Text | Google Scholar

14. Green S, Politis M, Rallis KS, Saenz de Villaverde Cortabarria A, Efthymiou A, Mureanu N, et al. Regulatory T cells in pregnancy adverse outcomes: A systematic review and meta-analysis. Front Immunol (2021) 12:737862/BIBTEX. doi: 10.3389/FIMMU.2021.737862/BIBTEX

CrossRef Full Text | Google Scholar

15. Keller CC, Eikmans M, van der Hoorn MLP, Lashley LEELO. Recurrent miscarriages and the association with regulatory T cells; A systematic review. J Reprod Immunol (2020) 139:103105. doi: 10.1016/J.JRI.2020.103105

PubMed Abstract | CrossRef Full Text | Google Scholar

16. Robertson SA, Care AS, Moldenhauer LM. Regulatory T cells in embryo implantation and the immune response to pregnancy. J Clin Invest (2018) 128:4224. doi: 10.1172/JCI122182

PubMed Abstract | CrossRef Full Text | Google Scholar

17. Qiao Y, Shen J, He L, Hong X, Tian F, Pan Y, et al. Changes of regulatory T cells and of proinflammatory and immunosuppressive cytokines in patients with type 2 diabetes mellitus: A systematic review and meta-analysis. J Diabetes Res (2016) 2016:1–19. doi: 10.1155/2016/3694957

CrossRef Full Text | Google Scholar

18. Qiao Yc, Shen J, Hong Xz, Liang L, Bo Cs, Sui Y, et al. Changes of regulatory T cells, transforming growth factor-beta and interleukin-10 in patients with type 1 diabetes mellitus: A systematic review and meta-analysis. Clin Immunol (2016) 170:61–9. doi: 10.1016/J.CLIM.2016.08.004

PubMed Abstract | CrossRef Full Text | Google Scholar

19. Shangaris P, Ho A, Marnerides A, George S, AlAdnani M, Yau S, et al. A hemizygous mutation in the FOXP3 gene (IPEX syndrome) resulting in recurrent X-linked fetal hydrops: a case report. BMC Med Genomics (2021) 14:1–5. doi: 10.1186/S12920-021-00901-6/FIGURES/1

PubMed Abstract | CrossRef Full Text | Google Scholar

20. Yang Y, Liu L, Liu B, Li Q, Wang Z, Fan S, et al. Functional defects of regulatory T cell through interleukin 10 mediated mechanism in the induction of gestational diabetes mellitus. DNA Cell Biol (2018) 37:278–85. doi: 10.1089/dna.2017.4005

PubMed Abstract | CrossRef Full Text | Google Scholar

21. Schober L, Radnai D, Spratte J, Kisielewicz A, Schmitt E, Mahnke K, et al. The role of regulatory T cell (Treg) subsets in gestational diabetes mellitus. Clin Exp Immunol (2014) 177:76–85. doi: 10.1111/CEI.12300

PubMed Abstract | CrossRef Full Text | Google Scholar

22. Lobo TF, Borges C de M, Mattar R, Gomes CP, de Angelo AGS, Pendeloski KPT, et al. Impaired Treg and NK cells profile in overweight women with gestational diabetes mellitus. Am J Reprod Immunol (2018) 79:e12810. doi: 10.1111/AJI.12810

CrossRef Full Text | Google Scholar

23. Sheu A, Chan Y, Ferguson A, Bakhtyari MB, Hawke W, White C, et al. A proinflammatory CD4+ T cell phenotype in gestational diabetes mellitus. Diabetologia (2018) 61:1633–43. doi: 10.1007/S00125-018-4615-1/FIGURES/2

PubMed Abstract | CrossRef Full Text | Google Scholar

24. Sifnaios E, Mastorakos G, Psarra K, Panagopoulos ND, Panoulis K, Vitoratos N, et al. Gestational diabetes and T-cell (Th1/th2/th17/treg) immune profile. In Vivo (Brooklyn) (2019) 33:31–40. doi: 10.21873/INVIVO.11435

CrossRef Full Text | Google Scholar

25. Zhao Y, Zhang X, Du N, sun H, Chen L, Bao H, et al. Immune checkpoint molecules on T cell subsets of pregnancies with preeclampsia and gestational diabetes mellitus. J Reprod Immunol (2020) 142:103208. doi: 10.1016/J.JRI.2020.103208

PubMed Abstract | CrossRef Full Text | Google Scholar

26. Wang W, Zhao Y, Zhou X, Sung N, Chen L, Zhang X, et al. Dynamic changes in regulatory T cells during normal pregnancy, recurrent pregnancy loss, and gestational diabetes. J Reprod Immunol (2022) 150:103492. doi: 10.1016/J.JRI.2022.103492

PubMed Abstract | CrossRef Full Text | Google Scholar

27. Fagninou A, Nekoua MP, Sossou D, Moutairou K, Fievet N, Yessoufou A. Th2-immune polarizing and anti-inflammatory properties of insulin are not effective in type 2 diabetic pregnancy. J Immunol Res (2020) 2020:1–12. doi: 10.1155/2020/2038746

CrossRef Full Text | Google Scholar

28. Li T, Higgins JP, Deeks JJ. Chapter 5: Collecting data, in: Cochrane Handbook for Systematic Reviews of Interventions (2022). Cochrane Training. Available at: https://training.cochrane.org/handbook/current/chapter-05#section-5-4 (Accessed 2, 2022).

Google Scholar

29. Rohatgi A. WebPlotDigitizer - Extract data from plots, images, and maps (2021). Available at: https://automeris.io/WebPlotDigitizer/citation.html (Accessed 2, 2022).

Google Scholar

30. Santegoets SJAM, Dijkgraaf EM, Battaglia A, Beckhove P, Britten CM, Gallimore A, et al. Monitoring regulatory T cells in clinical samples: consensus on an essential marker set and gating strategy for regulatory T cell analysis by flow cytometry. Cancer Immunol Immunother (2015) 64:1271–86. doi: 10.1007/S00262-015-1729-X

PubMed Abstract | CrossRef Full Text | Google Scholar

31. Wan X, Wang W, Liu J, Tong T. Estimating the sample mean and standard deviation from the sample size, median, range and/or interquartile range. BMC Med Res Methodol (2014) 14:135. doi: 10.1186/1471-2288-14-135

PubMed Abstract | CrossRef Full Text | Google Scholar

32. Luo D, Wan X, Liu J, Tong T. Optimally estimating the sample mean from the sample size, median, mid-range, and/or mid-quartile range. Stat Methods Med Res (2018) 27:1785–805. doi: 10.1177/0962280216669183

PubMed Abstract | CrossRef Full Text | Google Scholar

33. Higgins JPT, Thomas J, Chandler J, Cumpston M, Li T, Page MJ, et al. (editors). Cochrane handbook for systematic reviews of interventions version 6.4 (updated August 2023). Cochrane. (2023). Available at: https://www.training.cochrane.org/handbook.

Google Scholar

34. Jakobsen JC, Wetterslev J, Winkel P, Lange T, Gluud C. Thresholds for statistical and clinical significance in systematic reviews with meta-analytic methods. BMC Med Res Methodol (2014) 14:120. doi: 10.1186/1471-2288-14-120

PubMed Abstract | CrossRef Full Text | Google Scholar

35. Sharma A, Rudra D. Emerging functions of regulatory T cells in tissue homeostasis. Front Immunol (2018) 9:883/BIBTEX. doi: 10.3389/FIMMU.2018.00883/BIBTEX

CrossRef Full Text | Google Scholar

36. Mor G, Cardenas I. The immune system in pregnancy: A unique complexity. Am J Reprod Immunol (2010) 63:425. doi: 10.1111/J.1600-0897.2010.00836.X

PubMed Abstract | CrossRef Full Text | Google Scholar

37. McElwain C, McCarthy F, McCarthy C. Gestational diabetes mellitus and maternal immune dysregulation: what we know so far. Int J Mol Sci (2021) 22(8):461. doi: 10.3390/IJMS22084261

PubMed Abstract | CrossRef Full Text | Google Scholar

38. Wegienka G, Havstad S, Bobbitt KR, Woodcroft KJ, Zoratti EM, Ownby DR, et al. Within-woman change in regulatory T cells from pregnancy to the postpartum period. J Reprod Immunol (2011) 88:58–65. doi: 10.1016/J.JRI.2010.06.157

PubMed Abstract | CrossRef Full Text | Google Scholar

39. Xiong H, Zhou C, Qi G. Proportional changes of CD4+CD25+Foxp3+ regulatory T cells in maternal peripheral blood during pregnancy and labor at term and preterm. Clin Invest Med (2010) 33(6):422. doi: 10.25011/CIM.V33I6.14594

CrossRef Full Text | Google Scholar

40. Lima J, Martins C, Nunes G, Sousa MJ, Branco JC, Borrego LM. Regulatory T cells show dynamic behavior during late pregnancy, delivery, and the postpartum period. Reprod Sci (2017) 24:1025–32. doi: 10.1177/1933719116676395

PubMed Abstract | CrossRef Full Text | Google Scholar

41. Angelosanto JM, Blackburn SD, Crawford A, Wherry EJ. Progressive loss of memory T cell potential and commitment to exhaustion during chronic viral infection. J Virol (2012) 86:8161–70. doi: 10.1128/JVI.00889-12

PubMed Abstract | CrossRef Full Text | Google Scholar

42. van der Veeken J, Gonzalez AJ, Cho H, Arvey A, Hemmers S, Leslie CS, et al. Memory of inflammation in regulatory T cells. Cell (2016) 166:977–90. doi: 10.1016/J.CELL.2016.07.006/ATTACHMENT/F044B724-FAEE-4F8F-A296-B8C0E3344E85/MMC8.XLSX

PubMed Abstract | CrossRef Full Text | Google Scholar

43. Jalilvand A, Blaszczak A, Bradley D, Liu J, Wright V, Needleman B, et al. Low visceral adipose tissue regulatory T cells are associated with higher comorbidity severity in patients undergoing bariatric surgery. Surg Endosc (2021) 35:3131–8. doi: 10.1007/S00464-020-07751-W

PubMed Abstract | CrossRef Full Text | Google Scholar

44. Stacey T, Tennant PWG, McCowan LME, Mitchell EA, Budd J, Li M, et al. Gestational diabetes and the risk of late stillbirth: a case–control study from England, UK. BJOG (2019) 126:973–82. doi: 10.1111/1471-0528.15659

PubMed Abstract | CrossRef Full Text | Google Scholar

45. Coustan DR, Lowe LP, Metzger BE, Dyer AR. The HAPO study: paving the way for new diagnostic criteria for GDM. Am J Obstet Gynecol (2010) 202:654.e1. doi: 10.1016/J.AJOG.2010.04.006

PubMed Abstract | CrossRef Full Text | Google Scholar

46. Abell SK, de Courten B, Boyle JA, Teede HJ. Inflammatory and other biomarkers: role in pathophysiology and prediction of gestational diabetes mellitus. Int J Mol Sci (2015) 16:13442. doi: 10.3390/IJMS160613442

PubMed Abstract | CrossRef Full Text | Google Scholar

47. Kane SC, da Silva Costa F, Brennecke S. First trimester biomarkers in the prediction of later pregnancy complications. BioMed Res Int (2014) 2014:1–6. doi: 10.1155/2014/807196

CrossRef Full Text | Google Scholar

Keywords: gestational diabetes mellitus (GDM), regulatory T-cells (Tregs), immune dysregulation, chronic low-grade inflammation, treg markers, systematic review & meta-analysis

Citation: Arain H, Patel T, Mureanu N, Efthymiou A, Lombardi G, Tree T, Nicolaides KH and Shangaris P (2023) Regulatory T cells in the peripheral blood of women with gestational diabetes: a systematic review and meta-analysis. Front. Immunol. 14:1226617. doi: 10.3389/fimmu.2023.1226617

Received: 21 May 2023; Accepted: 08 November 2023;
Published: 04 December 2023.

Edited by:

Paola Contini, University of Genoa, Italy

Reviewed by:

Surendra Sharma, Women & Infants Hospital of Rhode Island, United States
Vincenzo Carafa, University of Campania Luigi Vanvitelli, Italy

Copyright © 2023 Arain, Patel, Mureanu, Efthymiou, Lombardi, Tree, Nicolaides and Shangaris. This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.

*Correspondence: Panicos Shangaris, cGFuaWNvcy5zaGFuZ2FyaXNAa2NsLmFjLnVr

These authors share first authorship

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