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ORIGINAL RESEARCH article

Front. Public Health, 31 May 2021
Sec. Clinical Diabetes

Normal Gestational Weight Gain Protects From Large-for-Gestational-Age Birth Among Women With Obesity and Gestational Diabetes

\nSanna Mustaniemi,
Sanna Mustaniemi1,2*Hilkka Nikkinen,Hilkka Nikkinen1,2Aini BloiguAini Bloigu1Anneli Pouta,Anneli Pouta1,3Risto KaajaRisto Kaaja4Johan G. Eriksson,,Johan G. Eriksson5,6,7Hannele Laivuori,,Hannele Laivuori8,9,10Mika Gissler,Mika Gissler11,12Eero Kajantie,,,Eero Kajantie1,2,13,14Marja Vrsmki,Marja Vääräsmäki1,2
  • 1PEDEGO Research Unit, Medical Research Center Oulu, Oulu University Hospital, University of Oulu, Oulu, Finland
  • 2Department of Public Health and Welfare, Population Health Unit, Finnish Institute for Health and Welfare, Oulu, Finland
  • 3Department of Government Services, Finnish Institute for Health and Welfare, Helsinki, Finland
  • 4Turku University Hospital, Turku University, Turku, Finland
  • 5Department of General Practice and Primary Health Care, Helsinki University Hospital, University of Helsinki, Helsinki, Finland
  • 6Folkhälsan Research Center, Helsinki, Finland
  • 7Department of Obstetrics and Gynecology, Human Potential Translational Research Programme, Yong Loo Lin School of Medicine, National University of Singapore, Singapore, Singapore
  • 8Department of Obstetrics and Gynecology, Faculty of Medicine and Health Technology, Tampere University Hospital, Tampere University, Tampere, Finland
  • 9Medical and Clinical Genetics, Helsinki University Hospital, University of Helsinki, Helsinki, Finland
  • 10Institute for Molecular Medicine Finland, Helsinki Institute of Life Science, University of Helsinki, Helsinki, Finland
  • 11Information Services Department, Finnish Institute for Health and Welfare, Helsinki, Finland
  • 12Department of Neurobiology, Care Sciences and Society, Karolinska Institute, Stockholm, Sweden
  • 13Children's Hospital, Helsinki University Hospital, University of Helsinki, Helsinki, Finland
  • 14Department of Clinical and Molecular Medicine, Norwegian University of Science and Technology, Trondheim, Norway

Background: Pre-pregnancy obesity, excess gestational weight gain (GWG), and gestational diabetes (GDM) increase fetal growth. Our aim was to assess whether normal GWG is associated with lower risk for a large-for-gestational-age (LGA; over the 90th percentile of birth weight for sex and gestational age) infant and lower birth weight standard deviation (SD) score in the presence of GDM and maternal obesity.

Methods: This multicenter case-control study is part of the Finnish Gestational Diabetes (FinnGeDi) Study and includes singleton pregnancies of 1,055 women with GDM and 1,032 non-diabetic controls. Women were divided into 12 subgroups according to their GDM status, pre-pregnancy body mass index (BMI; kg/m2), and GWG. Non-diabetic women with normal BMI and normal GWG (according to Institute of Medicine recommendations) served as a reference group.

Results: The prevalence of LGA birth was 12.2% among women with GDM and 6.2% among non-diabetic women (p < 0.001). Among all women, normal GWG was associated with lower odds of LGA [odds ratio (OR) 0.57, 95% CI: 0.41–0.78]. Among women with both obesity and GDM, the odds for giving birth to a LGA infant was 2.25-fold (95% CI: 1.04–4.85) among those with normal GWG and 7.63-fold (95% CI: 4.25–13.7) among those with excess GWG compared with the reference group. Compared with excess GWG, normal GWG was associated with 0.71 SD (95% CI: 0.47–0.97) lower birth weight SD score among women with GDM and obesity. Newborns of normal weight women with GDM and normal GWG had 0.28 SD (95% CI: 0.05–0.51) lower birth weight SD scores compared with their counterparts with excess GWG. In addition, in the group of normal weight non-diabetic women, normal GWG was associated with 0.46 SD (95% CI: 0.30–0.61) lower birth weight SD scores compared with excess GWG.

Conclusion: GDM, obesity, and excess GWG are associated with higher risk for LGA infants. Interventions aiming at normal GWG have the potential to lower LGA rate and birth weight SD scores even when GDM and obesity are present.

Introduction

Gestational diabetes (GDM) affects 10–25% of all pregnancies depending on diagnostic criteria, screening strategies, and study populations (1, 2). Along with GDM, pre-pregnancy obesity and excess gestational weight gain (GWG) are major pregnancy-related health problems. During pregnancy, GWG is an important modifiable factor. Nearly half of all pregnant women exceed the Institute of Medicine (IOM) recommendations for GWG (3, 4).

GDM, pre-pregnancy obesity, and excess GWG are all independent risk factors for having a large-for-gestational-age (LGA) infant (47). Previous studies assessing the association of GWG with LGA in relation to GDM and pre-pregnancy obesity are inconsistent. One register-based study reported that higher GWG was associated with higher risk for LGA among both women with untreated GDM and among those without GDM (8). Previous retrospective studies in a general population of full-term singleton births reported that excess GWG was associated with LGA, but the prevalence of GDM in these studies was low ranging from 4.5 to 4.9% (5, 7). Other studies including only women with GDM reported an increased risk for LGA in women with excess GWG (6, 911).

Therefore, we studied whether GWG is associated with LGA infants in women with and without GDM as categorized by pre-pregnancy BMI. We hypothesized that normal GWG decreases the risk of LGA in all BMI categories regardless of GDM status.

Materials and Methods

The present multicenter case-control study is based on the clinical-genetic arm of the Finnish Gestational Diabetes Study (FinnGeDi), which has been described in detail (12, 13). Briefly, 1,146 women with singleton pregnancies diagnosed with GDM were recruited in delivery units before delivery, and the next consenting non-diabetic mother (n = 1,066) giving birth in the same hospital was recruited as a control. Women were recruited between February 2009 and December 2012 in seven Finnish delivery hospitals. Comprehensive data on participants, pregnancy, delivery, and newborns were obtained from hospital and maternal welfare clinic records, from a detailed self-filled questionnaire, and from the Finnish Medical Birth Register.

According to the national Finnish Current Care guidelines introduced in 2008, an oral glucose tolerance test (OGTT) is recommended to screen for GDM in every pregnant woman, except those with very low-risk: (1) <25 year-old primiparous women with BMI <25 kg/m2 and without a family history of diabetes; and (2) <40 year-old multiparous women with BMI <25 kg/m2 and without a history of GDM or a macrosomic newborn (birth weight > 4,500 g) (14). GDM was diagnosed using a 2-hour, 75 g OGTT that was primarily performed between 24 and 28 weeks of gestation. For high-risk groups (prior GDM, BMI ≥ 35 kg/m2, glucosuria, family history of diabetes, or polycystic ovary syndrome), OGTT was performed for the first time between 12 and 16 weeks of gestation and, if normal, repeated between 24 and 28 weeks of gestation. The diagnostic criteria for the plasma glucose concentrations were ≥ 5.3 mmol/l after overnight fasting, ≥ 10.0 mmol/l at 1 h, or ≥ 8.6 mmol/l at 2 h after the glucose load. The diagnosis of GDM was based on one or more abnormal values in the OGTT. Additionally, GDM diagnosis was based on glucose self-monitoring for 24 participants (12).

Information on maternal age at delivery, parity, and smoking during pregnancy were obtained from the Finnish Medical Birth Register, educational attainment from a questionnaire, and use of insulin or metformin from the mother's medical records. Self-reported maternal height and weight before pregnancy, and weight measured in the first and last antenatal visit were obtained from maternity welfare clinic records. Pre-pregnancy BMI <25.0 kg/m2 was classified as normal, 25.0–29.9 kg/m2 as overweight, and ≥ 30.0 kg/m2 as obese (15). Underweight women (BMI <18.5 kg/m2) (n = 58, 2.8%) were categorized as normal in the analysis. GWG was calculated as the difference between pre-pregnancy weight and weight at the last antenatal visit. The 2009 IOM recommendations were used to classify normal and excess weight gain during pregnancy in different pre-pregnancy BMI categories (normal: 11.5–16.0 kg; overweight: 7.0–11.5 kg; obese: 5.0–9.0 kg)11. Those women with GWG below the IOM recommendations (n = 434, 20.8%) were classified as having normal GWG in the final analysis.

Data on birth weight (kg), birth length (cm), head circumference (cm), and sex of the newborn were obtained from the Finnish Medical Birth Register. The birth weight standard deviation (SD) score is a sex- and parity-specific parameter estimating birth weight and length in singletons born at 23–43 gestational weeks, according to Finnish standards (16). LGA was defined as birth weight over the 90th percentile and small-for-gestational-age (SGA) was defined as under the 10th percentile for sex and gestational age.

Of all the 2,212 participants, 47 (2.1%) women with missing GWG data and 78 (3.5%) women whose last antenatal weight was measured before 35 weeks were excluded from the analysis. In total, 1,055 women with GDM and 1,032 non-diabetic controls were included in the analysis (Table 1). The characteristics of women and their newborns were compared in six groups categorized by GDM status (case or control) and pre-pregnancy BMI (normal, overweight, obese) (Tables 2, 3). Further, participants were divided into 12 subgroups according to their GDM status, pre-pregnancy BMI, and GWG (normal or excess) (Figure 1). The group of non-diabetic controls with normal pre-pregnancy BMI and with normal GWG was used as a reference group. The study was approved by the Ethics Committee in Northern Ostrobothnia Hospital District in 2008. Each participant provided written informed consent.

TABLE 1
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Table 1. Characteristics of mothers and newborns (n = 2,087).

TABLE 2
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Table 2. Characteristics of mothers and newborns in six groups categorized by GDM status and pre-pregnancy BMI (n = 2,087).

TABLE 3
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Table 3. Adjusteda odds ratios (ORs) and mean differences (95% CI) of mother's and newborn's characteristics as divided into five subgroups (2–6) compared with normal weight non-diabetic women (subgroup 1).

FIGURE 1
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Figure 1. Odds ratios (ORs) for large-for-gestational age (LGA) and mean differences for birthweight standard deviation (SD) scores in 12 subgroups categorized by GDM status, pre-pregnancy BMI, and GWG (normal or excess); the group of non-diabetic women with normal pre-pregnancy BMI and with normal GWG was used as a reference group. GDM, gestational diabetes; BMI, body mass index (kg/m2); GWG, gestational weight gain. Linear regression for continuous variables and logistic regression for categorical variables adjusted for participant's age at delivery, parity, smoking during pregnancy, and delivery hospital.

Statistical Analysis

Numbers and frequencies (%) are reported for categorical variables and means (SD) for continuous variables. Linear regression [difference in means with 95% confidence interval (CI)] was used for continuous outcomes, and logistic regression [odds ratios (ORs) with 95% CI] was used for categorical outcomes. In the regression analyses, 11 subgroups categorized by GDM status, BMI, and GWG (normal/excess) were compared with the reference group (normal weight non-diabetic women with normal GWG). The results were adjusted for age at delivery, parity, smoking during pregnancy, and delivery hospital. Educational attainment, which is a potential confounding variable, was missing for 11.1% (n = 231) of the women; thus, we performed a sub-analysis that included only the women with valid education data. Since adjustment for educational attainment did not essentially alter the associations, it was excluded from the final analysis.

Results

Characteristics of Women With and Without GDM

Women with GDM tended to be older, shorter, and had higher BMI than the non-diabetic women (Table 1). Eighty-two percent (n = 865) of them were treated with diet, and 18% (n = 190) with additional insulin and/or metformin. Of all GDM women, 65.0% were overweight or obese, the corresponding rate being 28.2% among non-diabetic women.

GDM women gained less weight during pregnancy than non-diabetic women (Table 1). Among women with overweight, the difference was 1.8 kg (p < 0.001), and among women with obesity, the difference was 3.4 kg (p < 0.001) (Table 3). Still, GWG was normal in 50.6% of the women in the GDM group and in 54.4% of the women in the non-diabetic group (Table 1). Of women with overweight or obesity, 60.5% in the GDM group and 75.0% in the non-diabetic group exceeded IOM recommendations for GWG (Table 2). In women with overweight or obesity, GWG below the IOM guidelines was more common in the GDM group, 16.0 vs. 7.2%, respectively (p < 0.001). Of the women with GDM, the prevalence of excess GWG was 51.0% in the diet-treated women and 42.1% among women who received additional medical treatment (p = 0.027).

Gestational Weight Gain and Fetal Growth

Large-for-Gestational Age

The prevalence of LGA was 12.2% among GDM women and 6.2% among non-diabetic women (p < 0.001) (Table 1). Among women with GDM, the prevalence of LGA was 10.8% in the diet-treated group and 18.9% among women who received additional medical treatment (p < 0.001). Among all women, pre-pregnancy obesity increased the risk of LGA 1.75-fold (Table 4). In addition to GDM and pre-pregnancy obesity, other independent risk factors for LGA were a previous macrosomic newborn and excess GWG.

TABLE 4
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Table 4. Crude and adjusted odds ratios (ORs) for risk factors of large-for-gestational-age (LGA) (n = 2,087).

Among all women, those with excess GWG had a 1.77-fold odds for a LGA infant compared with women with normal GWG (Table 4). Of the women with both GDM and obesity, the odds for a LGA infant was 2.25-fold among those with normal GWG and 7.63-fold among those with excess GWG compared with the reference group (p < 0.001) (Figure 1).

Among normal weight and overweight GDM women, GWG (normal/excess) was unrelated to the prevalence of LGA (Figure 1). Among non-diabetic women, those with normal pre-pregnancy BMI and normal GWG showed lower risk for LGA than women with normal pre-pregnancy BMI and excess GWG (p = 0.006). The results remained similar regardless of whether the women with GWG below IOM recommendations were included in the normal GWG group or observed separately.

Birth Weight SD Scores

We assessed birth weight SD scores as continuous variables. In general, they were lower when GWG was within the normal range compared with excess GWG (Figure 1). Newborns of women with GDM, obesity, and normal GWG had 0.71 SD (95% CI: 0.47–0.97) lower birth weight SD score than newborns of women with GDM, obesity, and excess GWG. Newborns of normal weight women with GDM and normal GWG had 0.28 SD (95% CI: 0.05–0.51) lower birth weight SD score than newborns of normal weight women with GDM and excess GWG. In addition, newborns of normal weight non-diabetic women with normal GWG had 0.46 SD (95% CI: 0.30–0.61) lower birth weight SD score compared with their counterparts with excess GWG. Among women with GDM and overweight and among non-diabetic women with overweight or obesity, these differences were not statistically significant.

Small-for-Gestational Age

Among all women, GWG below the IOM recommendations increased the odds for SGA 1.62-fold (95% CI: 1.14–2.31) compared with women with normal GWG. The prevalence of SGA was highest (12.8%) in the normal weight non-diabetic women (Table 2). If their GWG was below the IOM recommendation, the risk for SGA was 2.26-fold (95% CI: 1.37–3.75) compared with their counterparts with normal GWG. In the other groups, the increased risk for SGA was not seen in women whose GWG was under the IOM recommendations (data not shown).

Discussion

We found that normal GWG seems to protect from LGA and lowers birth weight SD scores especially among the high-risk women with GDM and pre-pregnancy obesity, but also among non-diabetic women with normal weight. Excess GWG, GDM, pre-pregnancy obesity, and a previous macrosomic newborn were all independent risk factors for LGA.

The protective effect of normal GWG that we observed was substantial. Among women with GDM and obesity, the prevalence of LGA was more than halved when GWG was normal compared with excess GWG (23.0 vs. 8.5%). All women in the study cohort received lifestyle counseling after GDM diagnosis. The lower GWG among GDM women with overweight/obesity compared with their non-diabetic counterparts could reflect the efficacy of diet counseling.

The optimal weight gain during pregnancy in women diagnosed with GDM is unknown. A previous study among women with GDM reported that modified, slightly restricted GWG targets did not decrease the rate of LGA (11). That study reported that almost half of the women with obesity had already exceeded their IOM total GWG target by the time of GDM diagnosis. In Finland, the national Current Care Guidelines recommend that among women with obesity, weight should not increase much more after GDM diagnosis (14). Still, excess GWG was very common in women with overweight/obesity regardless of their GDM status. These findings suggest that early recognition of these high-risk women and interventions aiming at maintaining normal GWG may decrease the risk of pregnancy complications as macrosomia. Also, excess GWG often leads to postpartum weight retention, which increases risk for complications in the woman's subsequent pregnancies and her long-term morbidity (3).

We found that insufficient GWG doubled the risk for SGA in normal weight non-diabetic women, which is consistent with a recent meta-analysis (17). However, GWG below the recommendations did not increase the risk for SGA in normal weight women with GDM or women with overweight/obesity regardless of GDM status (data not shown), thus being in line with a previous study (11). However, due to a relatively small group of women with overweight/obesity and GWG below the IOM recommendations, our results must be interpreted with caution.

The main strengths of this study include a large, well-defined clinical and homogenous study cohort (99.3% of women with the Finnish ancestry). The GDM status of all participants was confirmed from their medical records, and several potential confounders were considered. We were also able to stratify our analyses by pre-pregnancy BMI. The study provides high-quality reference data of GWG in a relation with GDM status and fetal overgrowth. There were also some limitations in this study. Due to the low number of underweight women (n = 59, 2.8%), they were categorized within the normal weight group. Thus, the additional analysis was made after excluding underweight women and findings did not change. Also, the number of women with GWG below the recommendations was limited especially those with overweight or obesity. Therefore, these women were classified as having normal GWG in the final analysis. However, the results were congruent regardless of whether the women with GWG below recommendations were included in the normal GWG group or observed separately. Another limitation was the small number of non-diabetic women with obesity, and especially, with normal GWG. Probably therefore, in this group, the effect of normal GWG remained statistically non-significant. In addition, pre-pregnancy weight was self-reported during the first antenatal visit. This is common in similar studies, and as mothers are measured at the first antenatal visit, substantial reporting error is unlikely. Also the timing of GWG has been reported relevant to fetal growth (1820). Though excessive GWG early in pregnancy has been reported to have the strongest effect on fetal overgrowth (18, 19), also controversial results has been presented (20). Thus, another limitation of the study is that we were able to study only the total GWG during pregnancy, not weight gain in different trimesters of pregnancy or after GDM diagnosis. Although ethnically homogenous study population is the strength of the study, the results may not be universally applicable to other ethnic groups.

The diagnostic criteria still vary across the globe. In the FinnGeDi study, the diagnosis of GDM was based on Finnish Current Care Guidelines published in 2008 and revised in 2013 (14). This recommendation was primarily launched before currently widely used the International Association of Diabetes and Pregnancy Study Group (IADPSG) criteria were published in 2010 (21). Based on Hyperglycaemia and Adverse Pregnancy Outcome study (HAPO), the cut-offs for fasting glucose (≥ 5.1 mmol/l) and 2 h glucose (≥ 8.5 mmol/l) are slightly lower according to the IADPSG criteria. Thus, the prevalence of GDM is slightly lower according to the Finnish criteria. In this study population 62 women with fasting glucose 5.1–5.2 mmol/l would have been diagnosed with GDM according to the IADPSG criteria. No additional cases of GDM would have been found based on 2 h value of 8.5 mmol/l. Thus, according to the Finnish guidelines, only a small group of women was not diagnosed with GDM and hence was not treated. The diagnostic criteria used in this study, were and still are generally applied in the whole Finland.

Normal GWG seems to decrease the risk for LGA especially in GDM women with pre-pregnancy obesity and in non-diabetic women with normal weight. Among both GDM and non-diabetic women with normal weight, birth weight SD scores of the newborns were lower when GWG was in the normal range. Regardless of maternal glycemic status, effective prevention of excess GWG, especially in women with obesity, is essential to reduce fetal overgrowth.

Data Availability Statement

The datasets presented in this article are not readily available because data cannot be shared for both legal and ethical reasons. Data from the Finnish Institute for Health and Welfare can only be used for the purpose stated in the license granted, scientific research on society by the license applicant, and can therefore not be shared with third parties. Researchers can apply for data through the authorization application process at Finnish Institute for Health and Welfare. Requests to access the datasets should be directed to Sanna Mustaniemi, sanna.mustaniemi@oulu.fi.

Ethics Statement

The studies involving human participants were reviewed and approved by the Ethics Committee in Northern Ostrobothnia Hospital District, Oulu, Finland. Number 2008/43, date of approval 19 June 2008. The participants provided their written informed consent to participate in this study.

Author Contributions

MV, AP, HL, JE, MG, RK, and EK initiated and designed the FinnGeDi study. MV, HN, EK, and SM designed the present study. SM and AB performed data analysis. SM wrote the first draft of the manuscript, and HN, EK, and MV reviewed, completed, and supervised the manuscript writing. All authors contributed to its interpretation and contributed to the article and approved the submitted version.

Funding

This study was supported by the Academy of Finland (grant numbers 127437, 128929, 129306, 130326, 134791, and 274794), the Foundation for Pediatric Research, the Diabetes Research Foundation, the Juho Vainio Foundation, the Novo Nordisk Foundation, the Signe and Ane Gyllenberg Foundation, the Sigrid Jusélius Foundation, the Yrjö Jahnsson Foundation, and Medical Research Center Oulu.

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.

Acknowledgments

The authors thank all the participants of the study and research staff of the FinnGeDi project.

Abbreviations

GWG, gestational weight gain; GDM, gestational diabetes; LGA, large-for-gestational age; IOM, Institute of Medicine; OGTT, oral glucose tolerance test.

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Keywords: gestational diabetes, gestational weight gain, obesity, birthweight, birth weight SD, large-for-gestational age

Citation: Mustaniemi S, Nikkinen H, Bloigu A, Pouta A, Kaaja R, Eriksson JG, Laivuori H, Gissler M, Kajantie E and Vääräsmäki M (2021) Normal Gestational Weight Gain Protects From Large-for-Gestational-Age Birth Among Women With Obesity and Gestational Diabetes. Front. Public Health 9:550860. doi: 10.3389/fpubh.2021.550860

Received: 10 April 2020; Accepted: 07 May 2021;
Published: 31 May 2021.

Edited by:

Charumathi Sabanayagam, Singapore Eye Research Institute (SERI), Singapore

Reviewed by:

Louise Fritsche, Deutsches Zentrum für Diabetesforschung (DZD), Germany
Kathryn Dalrymple, King's College London, United Kingdom

Copyright © 2021 Mustaniemi, Nikkinen, Bloigu, Pouta, Kaaja, Eriksson, Laivuori, Gissler, Kajantie and Vääräsmäki. 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: Sanna Mustaniemi, sanna.mustaniemi@oulu.fi

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