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Obesity, gestational weight gain, and birth weight in women with gestational diabetes: the LINDA-Brasil (2014–2017) and the EBDG (1991–1995) studies

ABSTRACT

Objective:

This study aimed to evaluate gestational weight gain and birth weight in women with gestational diabetes mellitus of two Brazilian cohorts enrolled three decades apart.

Methods:

The authors compared data of 2362 women from the Lifestyle INtervention for Diabetes Prevention After Pregnancy study (LINDA-Brasil, 2014–2017) to those of 359 women from the Estudo Brasileiro de Diabetes Gestacional study (EBDG, 1991–1995). Gestational weight gain was classified by the 2009 Institute of Medicine criteria; large and small for gestational age newborns, by the Intergrowth-21st chart. Differences in birth weight means between pregestational BMI and gestational weight gain categories were evaluated by ANOVA; the associations of gestational weight gain and birth weight, through multivariable Poisson regression.

Results:

In LINDA-Brasil, women presented higher pregestational body mass index (30.3 ± 6.5 vs. 24.6 ± 4.4 kg/m2) and were frequently obese (46.4 vs. 11.1%) compared to those of the EBDG. In the EBDG, gestational weight gain was larger (11.3 ± 6.1 vs. 9.2 ± 7.6 kg) and rates of small for gestational age higher (7.5 vs. 4.5%) compared to LINDA-Brasil. In LINDA-Brasil, excessive gestational weight gain was associated to macrosomia (adjusted relative risk [aRR]: 1.59, 95% CI 1.08–2.35) and large for gestational age (aRR: 1.40; 95% CI 1.05–1.86); less gain increased the risk of low birth weight (aRR: 1.66; 95% CI 1.05–2.62) and small for gestational age (aRR: 1.79; 95% CI 1.03–3.11). These associations were similar in the EBDG, although not statistically significant.

Conclusions:

Improvements in gestational weight gain and rates of small for gestational age occurred over time in gestational diabetes mellitus pregnancies, accompanied by a worsening in maternal weight profile. This highlights the nutritional transition during this period and the importance of avoiding excessive gestational weight gain as well as promoting adequate weight before conception.

KEYWORDS
Gestational diabetes mellitus; Gestational weight gain; Birth weight

Introduction

Low and middle-income countries have faced a rapid transformation due to nutrition transition, resulting from urbanization, change in technologies that led to a decrease in physical activity and consumption of high calorie foods, increasing noncommunicable diseases including obesity and type 2 diabetes.11 Popkin BM. Nutrition transition and the global diabetes epidemic. Curr Diab Rep. 2015;15:64. Brazil is among the countries with the highest prevalence of overweight, and had the third largest increase in the absolute number of obese people in the last 30 years (20 million).22 Stevens GA, Singh GM, Lu Y, Danaei G, Lin JK, Finucane MM, et al. National, regional, and global trends in adult overweight and obesity prevalences. Popul Health Metr. 2012;10:22. From 1974 to 2013, the prevalence of overweight among women rose from 10.9% to 59.8%; the prevalence of obesity rose from 2.9 to 25.2%, with high rates in childbearing ages.33 Estatística IBGE. Pesquisa de orçamentos familiares: antropometria e estado nutricional de crianças, adolescentes e adultos no Brasil. Rio de Janeiro. Brasil: Ministério do Planejamento, Orçamento e Gestão; 2010. Available from: https://biblioteca.ibge.gov.br/visualizacao/livros/liv45419.pdf [cited 10.10.19].
https://biblioteca.ibge.gov.br/visualiza...
,44 Estatística IBGE. Pesquisa nacional de saúde, 2013: ciclos de vida. Brasil e grandes regiões. Rio de Janeiro, Brasil: Ministério do Planejamento, Orçamento e Gestão; 2015. Available from: https://biblioteca.ibge.gov.br/visualizacao/livros/liv94522.pdf [cited 10.10.19].
https://biblioteca.ibge.gov.br/visualiza...

Maternal overweight and obesity can lead to several complications, including gestational diabetes mellitus (GDM).55 Ma RC, Schmidt MI, Tam WH, McIntyre HD, Catalano PM. Clinical management of pregnancy in the obese mother: before conception, during pregnancy, and post partum. Lancet Diabetes Endocrinol. 2016;4:1037-49. GDM, defined as hyperglycemia detected during pregnancy, complicates 3% to 25% of pregnancies and is associated with adverse pregnancy outcomes,66 Trujillo J, Vigo A, Duncan BB, Falavigna M, Wendland EM, Campos MA, et al. Impact of the International Association of Diabetes and Pregnancy Study Groups criteria for gestational diabetes. Diabetes Res Clin Pract. 2015;108:288-95. and increased risk of future maternal type 2 diabetes mellitus.77 Gaillard R, Durmus B, Hofman A, Mackenbach JP, Steegers EA, Jaddoe VW. Risk factors and outcomes of maternal obesity and excessive weight gain during pregnancy. Obesity (Silver Spring). 2013;21:1046-55. Pregestational body mass index (BMI) is an important predictor of GDM.88 Torloni MR, Betran AP, Horta BL, Nakamura MU, Atallah AN, Moron AF, et al. Prepregnancy BMI and the risk of gestational diabetes: a systematic review of the literature with meta-analysis. Obes Rev. 2009;10:194-203.

Patterns of adequate gestational weight gain (GWG) in women with GDM are not established and inadequate weight gain, either more or less than those recommended by the Institute of Medicine (IOM), is commonly described.99 Viecceli C, Remonti LR, Hirakata VN, Mastella LS, Gnielka V, Oppermann ML, et al. Weight gain adequacy and pregnancy outcomes in gestational diabetes: a meta-analysis. Obes Rev. 2017;18:567-80. A major consequence of inadequate GWG, whether excessive or insufficient, is upon birth weight. Excessive GWG increases the risk of macrosomia (or large for gestational age), whereas insufficient GWG increases the risk of small for gestational age (or low birth weight). Besides the influences of pregestational BMI and GWG, the presence of gestational hyperglycemia may further influence birth weight adequacy,1010 Gao X, Yan Y, Xiang S, Zeng G, Liu S, Sha T, et al. The mutual effect of pre-pregnancy body mass index, waist circumference and gestational weight gain on obesity-related adverse pregnancy outcomes: a birth cohort study. PLoS One. 2017;12:e0177418. mainly as delivery of big newborns.

Given the ongoing obesity epidemic and the established relationship between obesity and gestational diabetes and its complications, it is remarkable that only a few studies have examined the evolution of the patterns of GWG in women with GDM over the last three decades, particularly in low- or middle-income countries, where most of the burden lies. Thus, the aim was to describe how maternal pregestational weight and GWG profiles influenced birth weight in two GDM cohorts in Brazil, one before and the other during the ongoing nutritional transition.

Methods

Study population

Two multicenter Brazilian cohorts of women with GDM were analyzed within a temporal interval of almost 30 years. Below, the two cohort studies are described.

Cohort 1: The recruitment cohort for the Lifestyle Intervention for Diabetes Prevention After Pregnancy-Brazil (LINDA-Brasil, 2014–2017).

This is an ongoing randomized clinical trial aiming to investigate the effectiveness of a lifestyle intervention program implemented after a pregnancy complicated by GDM in delaying or preventing the development of type 2 diabetes.1111 Schmidt MI, Duncan BB, Castilhos C, Wendland EM, Hallal PC, Schaan BD, et al. Lifestyle intervention for diabetes prevention after pregnancy (LINDA-Brasil): study protocol for a multicenter randomized controlled trial. BMC Pregnancy Childbirth. 2016;16:68. The recruitment cohort is enrolling women with prior GDM in high-risk prenatal care services of the Brazilian public health service, the Sistema Único de Saúde (SUS), in three Brazilian cities (Porto Alegre, State of Rio Grande do Sul; Curitiba, State of Paraná; Fortaleza, State of Ceará). At enrollment, women answered a structured questionnaire including demographic and socioeconomic data such as age, self-reported skin color, years of schooling, smoking, parity, prepregnancy weight, and height. Postpartum follow-up was performed through telephone interviews, and included retrieving information on pregnancy outcomes (such as maternal weight at each prenatal appointment, pregnancy complications) and delivery (maternal weight, mode of delivery – vaginal or cesarean section –, maternal complications), as well as data on the newborns (weight, gestational age at birth, gender, Apgar scores, and complications). The detailed methodology is described elsewhere1111 Schmidt MI, Duncan BB, Castilhos C, Wendland EM, Hallal PC, Schaan BD, et al. Lifestyle intervention for diabetes prevention after pregnancy (LINDA-Brasil): study protocol for a multicenter randomized controlled trial. BMC Pregnancy Childbirth. 2016;16:68.; the study protocol was registered on December 23, 2014 in the ClinicalTrials.gov site, identifier NCT02327286.

Cohort 2: The Estudo Brasileiro de Diabetes Gestacional (EBDG, 1991–1995).

The EBDG was a study conducted between May 1991 and August 1995, aiming to estimate the prevalence of GDM, according to common diagnostic criteria used at that time, in women of the public health system; another aim was to define diagnostic glycemic thresholds for GDM in the Brazilian pregnant population. It was conducted in capitals of six States in Brazil (Porto Alegre, State of Rio Grande do Sul; São Paulo, State of São Paulo; Rio de Janeiro, State of Rio de Janeiro; Salvador, State of Bahia; Fortaleza, State of Ceará; Manaus, State of Amazonas). All pregnant women attended in those clinics were included; they answered a standardized questionnaire. Demographic characteristics included age, self-reported skin color, years of schooling, smoking, parity, prepregnancy weight; height and weight were measured in duplicate during the interview. Data about pregnancy evolution (such as maternal weight gain and pregnancy complications), delivery (mode of delivery – vaginal or cesarean section –, maternal weight at delivery) and immediate postpartum (such as weight, gestational age, gender, Apgar scores, as well as maternal and newborn complications) were collected from the medical records.1212 Schmidt MI, Matos MC, Reichelt AJ, Forti AC, de Lima L, Duncan BB. Prevalence of gestational diabetes mellitus – do the new WHO criteria make a difference?. Brazilian Gestational Diabetes Study Group. Diabet Med. 2000;17:376-80.

Definition of outcomes

Pregestational BMI was defined as the weight in kg divided by the square of the height in meters. In the LINDA-Brasil study, BMI was calculated using the self-reported pregestational weight in kg and the height in meters recorded in the chart or the self-reported height. In the EBDG study, BMI was calculated using the self-reported pregestational weight in kg and the mean of two height measurements, in meters. Pregestational nutritional status was classified as underweight (<18.5 kg/m2), normal (≥18.5 and <25 kg/m2), overweight (≥25 and <30 kg/m2), or obesity (≥30 kg/m2).1313 Institute of Medicine (US) and National Research Council (US) Committee to Reexamine IOM Pregnancy Weight Guidelines, Rasmussen KM, Yaktine AL, editors. Weight gain during pregnancy: reexamining the guidelines. Washington (DC): National Academies Press (US); 2009.

Total GWG was calculated by subtracting pregestational weight from the last measured weight, which was self-reported or collected from the prenatal chart in the LINDA-Brasil study; and obtained from the prenatal chart, in EBDG. Adequate total GWG was classified according to the IOM recommendation: 12.5–18 kg for underweight women; 11.5–16 kg for normal BMI women; 7–11.5 kg for overweight women, and 5–9 kg for obese women.1313 Institute of Medicine (US) and National Research Council (US) Committee to Reexamine IOM Pregnancy Weight Guidelines, Rasmussen KM, Yaktine AL, editors. Weight gain during pregnancy: reexamining the guidelines. Washington (DC): National Academies Press (US); 2009.

Gestational age at delivery was estimated by the first echography before the 20th gestational week or by the reported date of the last menstrual period. In cases with relevant discrepancies of gestational age (more than 2 weeks), individualized analyses were performed.

In LINDA-Brasil, GDM was defined as having a label of GDM in the prenatal chart, irrespective of the diagnostic criteria employed to define hyperglycemia (most were IADPSG/2013 World Health Organization [WHO] criteria).1414 WHO. Diagnostic criteria and classification of hyperglycaemia first detected in pregnancy. Geneva: World Health Organization; 2013. In EBDG, GDM was defined as fasting plasma glycemia ≥ 110 mg/dL and/or 2-h post 75-g glucose oral load ≥ 140 mg/dL (1999 WHO criteria).1515 WHO consultation: definition, diagnosis and classification of diabetes mellitus and its complications: report of a WHO consultation. Part 1: diagnosis and classification of diabetes mellitus. Geneva: World Health Organization; 1999 (WHO/NCD/NCS/99.2).

Newborn weight adequacy was classified according to the Intergrowth-21st chart,1616 Villar J, Cheikh Ismail L, Victora CG, Ohuma EO, Bertino E, Altman DG, et al. International standards for newborn weight, length, and head circumference by gestational age and sex: the Newborn Cross-Sectional Study of the INTERGROWTH-21st Project. Lancet. 2014;384:857-68. which adjusts birth weight to gestational age and newborn gender. Newborns with birth weight below the 10th percentile were considered as small for gestational age (SGA); and above the 90th percentile, as large for gestational age (LGA). Macrosomia was defined as birth weight ≥ 4000 g; low weight, as weight ≤ 2500 g.1717 Feig DS, Corcoy R, Jensen DM, Kautzky-Willer A, Nolan CJ, Oats JJ, et al. Diabetes in pregnancy outcomes: a systematic review and proposed codification of definitions. Diabetes Metab Res Rev. 2015;31:680-90.

Ethical aspects

LINDA-Brasil was approved by the ethic committee of the three centers (Plataforma Brasil No. 12-0097), and all participants signed informed consents. The EBDG study was approved by the ethics committees of the six centers (Project No. 90-058), and patients gave their oral informed consent to participate.

Statistic analysis

Absolute and relative frequencies or mean and standard deviation of main variables were calculated. Differences in means of birth weight between pregestational BMI groups and GWG categories were evaluated using the ANOVA test. The relative risk was calculated for macrosomia, low birth weight, SGA, and LGA. All variables with p < 0.25 in univariable analyses were included in multivariable models, performed with Poisson regression with robust estimates. Models were adjusted for the following covariates: age, self-declared race/color group, schooling, smoking, parity, pregestational BMI, fasting and 2-h glycemia, total gestational weight gain, and gestational age at delivery. Multicollinearity among variables was explored through correlation matrix; variance inflation factor values >5 indicated multicollinearity. When not specified, the significance level of 0.05 was considered. Estimated confidence intervals were set at 95%. Analyses were performed with SPSS software, v.18.

Results

This study included women of LINDA-Brasil with data collected between January 2014 and July 2017 (n = 2362); and women of EBDG reaching diagnosis of gestational diabetes (n = 359). As shown in Table 1, maternal age and schooling were higher, and parity and smoking rates, lower, in participants of the LINDA-Brasil (2014–2017) study, compared to the EBDG (1991–1995) cohort. In LINDA-Brasil, women presented higher pregestational BMI (30.3 ± 6.5 kg/m2 vs. 24.6 ± 4.4 kg/m2) and were frequently obese (46.4% vs. 11.1%) compared to those of EBDG. In EBDG, higher GWG (11.3 ± 6.1 vs. 9.2 ± 7.6 kg) was found, but women in the LINDA-Brasil cohort had excessive GWG more frequently than women in the earlier cohort. Mean gestational age at delivery and birth weight were similar between the two cohorts, but SGA rates were higher in EBDG.

Table 1
Characteristics and outcomes of pregnancy in women with gestational diabetes mellitus in two cohorts: LINDA-Brasil and EBDG.

Table 2 presents outcomes of birth weight in relation to maternal total GWG according to pregestational BMI categories. In normal BMI women, gaining weight less than recommended (less than 11.5 kg) was frequent, ∼45% in both cohorts. In the overweight group, gaining more than recommended was frequent, ∼42%, while in obese women, it almost doubled in the contemporary cohort (34.8% vs. 20.0%). Birth weight was, in general, higher as GWG increased, across all BMI categories. In normal BMI women, those who lost weight in the LINDA-Brasil study (1.8%) delivered newborns with the lowest birth weight among all women. In both cohorts, normal BMI women who lost, gained less than recommended, or even gained adequate weight, delivered neonates with a significantly lower birth weight, compared to those gaining weight more than recommended. In the LINDA-Brasil cohort, the same was observed in pregnancies of overweight or obese women, whereas in the EBDG cohort, these differences were not significant.

Table 2
Birth weight according to adequacy of the total gestational weight gain in two cohorts of gestational diabetes women: LINDA-Brasil and EBDG.

In Fig. 1, birth weight according to GWG and prepregnancy BMI is illustrated. In both cohorts, in mothers who had insufficient GWG, newborns had a lower median birth weight when their mothers had normal BMI, compared to those with overweight or obesity. In the LINDA-Brasil study, a higher birth weight median was observed with increased pregestational BMI in the excessive GWG category. Conversely, in the EBDG study, those with pregestational overweight had lower median birth weight in the excessive GWG category.

Figure 1
Birth weight according to weight gain by the Institute of Medicine categories in two cohorts of gestational diabetes: LINDA-Brasil (2014–2017) and EBDG (1991–1995).

The authors analyzed underweight and normal pregnancy BMI together, as there were only 18 (0.8%) participants in LINDA-Brasil with underweight and nine (2.5%) in EBDG.


In Table 3, number and percent of cases of macrosomia, low birth weight, LGA and SGA in each cohort, and the relative risk of each outcome adjusted for the variables significant in the univariable analysis (Supplementary Table) are presented. In LINDA-Brasil, GWG more than recommended raised the risk of macrosomia in 63% and of LGA infants in 38%, whereas lower weight gain increased the risk of newborns with low birth weight in 59% and of SGA in 76%. In EBDG, these associations were similar, but not statistically significant.

Table 3
Risks of birth weight deviations according to gestational weight gain in two Brazilian cohorts of women with gestational diabetes: LINDA-Brasil and EBDG.

Discussion

The present study discloses a marked increase in pregestational BMI in women with gestational diabetes, leading to a distinct BMI profile: higher rates of adequate BMI in the 1990s and higher rates of obesity in the 2010s, with current obesity rates almost four times higher. Despite this, the results show that women in the contemporary cohort (LINDA-Brasil, 2014–2017) had lower weight gain during pregnancy. Women with less than recommended GWG were at increased risk of delivering low birth weight and SGA newborns, while those with excessive gain delivered macrosomic and LGA newborns.

A relevant change in pregestational nutritional profile of women of childbearing age, leading to increased rates of overweight and obesity at the beginning of pregnancy, has been documented in Brazil across time.33 Estatística IBGE. Pesquisa de orçamentos familiares: antropometria e estado nutricional de crianças, adolescentes e adultos no Brasil. Rio de Janeiro. Brasil: Ministério do Planejamento, Orçamento e Gestão; 2010. Available from: https://biblioteca.ibge.gov.br/visualizacao/livros/liv45419.pdf [cited 10.10.19].
https://biblioteca.ibge.gov.br/visualiza...
,44 Estatística IBGE. Pesquisa nacional de saúde, 2013: ciclos de vida. Brasil e grandes regiões. Rio de Janeiro, Brasil: Ministério do Planejamento, Orçamento e Gestão; 2015. Available from: https://biblioteca.ibge.gov.br/visualizacao/livros/liv94522.pdf [cited 10.10.19].
https://biblioteca.ibge.gov.br/visualiza...
This is also prominently reflected in women with GDM: in the earlier cohort, EBDG (1991–1995), only 11.1% of the women started pregnancy in obesity category, whereas this number quadrupled (to 41.3%) in the current cohort (LINDA-Brasil). Overweight was found in around 32% of women in both cohorts. These rates largely reflect the nutritional transition that occurred in Brazil, with even higher rates of pregestational obesity in GDM women. This is consistent with the well-known association of GDM with higher pregestational BMI, mainly with obesity.88 Torloni MR, Betran AP, Horta BL, Nakamura MU, Atallah AN, Moron AF, et al. Prepregnancy BMI and the risk of gestational diabetes: a systematic review of the literature with meta-analysis. Obes Rev. 2009;10:194-203.

Taking into account the 2009 IOM recommendations for adequacy of GWG, the authors observed high frequencies of inadequate GWG, either excessive or insufficient, in both cohorts. In LINDA-Brasil, GWG more than recommended was verified in 34.8% of obese women, compared to only 20.0% in EBDG. Kase et al.188 Torloni MR, Betran AP, Horta BL, Nakamura MU, Atallah AN, Moron AF, et al. Prepregnancy BMI and the risk of gestational diabetes: a systematic review of the literature with meta-analysis. Obes Rev. 2009;10:194-203. reported that, among pregnant women with GDM, 71% were obese, and excessive weight gain was frequent (40%), even higher than the frequencies found in LINDA-Brasil (35.6%). Conversely, in obese Polish GDM women, 21% gained excessive weight,1919 Horosz E, Bomba-Opon DA, Szymanska M, Wielgos M. Maternal weight gain in women with gestational diabetes mellitus. J Perinat Med. 2013;41:523-8. a frequency similar to the one found in EBDG (1991–1995), 27.3%. Excessive GWG was also common in Irish GDM women: 35% in overweight and 48% in obese women.2020 Egan AM, Dennedy MC, Al-Ramli W, Heerey A, Avalos G, Dunne F. ATLANTIC-DIP: excessive gestational weight gain and pregnancy outcomes in women with gestational or pregestational diabetes mellitus. J Clin Endocrinol Metab. 2014;99:212-9. Although few studies reported weight gain across BMI categories, excessive GWG was common in overweight and obese women (∼44% in each stratum).99 Viecceli C, Remonti LR, Hirakata VN, Mastella LS, Gnielka V, Oppermann ML, et al. Weight gain adequacy and pregnancy outcomes in gestational diabetes: a meta-analysis. Obes Rev. 2017;18:567-80.

Although a large proportion of the LINDA-Brasil cohort began pregnancy with obesity, total GWG was lower than in the 1990s cohort (EBDG). The results also showed a high frequency of GWG below that recommended (loss or less than recommended) among women with normal pre-gestational BMI: 45.3% in LINDA-Brasil and 46.6% in EBDG, figures similar to those previously reported, ∼40%.99 Viecceli C, Remonti LR, Hirakata VN, Mastella LS, Gnielka V, Oppermann ML, et al. Weight gain adequacy and pregnancy outcomes in gestational diabetes: a meta-analysis. Obes Rev. 2017;18:567-80. In an Australian cohort, it was reported that more than 45% of women with normal or low pre-gestational BMI did not reach the target weight recommended by IOM in 2009.2121 Wong VW, Russell H. Weight gain during pregnancy in women with gestational diabetes: how little is too little?. Diabetes Res Clin Pract. 2013;102:e32-4. Less than recommended GWG was close to 20% in overweight GDM women, and close to 28% in those with obesity.99 Viecceli C, Remonti LR, Hirakata VN, Mastella LS, Gnielka V, Oppermann ML, et al. Weight gain adequacy and pregnancy outcomes in gestational diabetes: a meta-analysis. Obes Rev. 2017;18:567-80.

It is well known that not only prepregnancy BMI but also GWG have impact on birth weight. In a meta-analyses including individual data on 265,270 births born to women without hyperglycemia, obesity posed a risk factor of 2.15 of delivering an LGA newborn, with a population-attributable risk fraction (PARF) of 6.6%, while excessive weight gain posed a risk of 2.11, with a PARF of 31.6%.2222 Santos S, Voerman E, Amiano P, Barros H, Beilin LJ, Bergström A, et al. Impact of maternal body mass index and gestational weight gain on pregnancy complications: an individual participant data meta-analysis of European, North American, and Australian cohorts. BJOG. 2019;126:984-95. Weight gain and prepregnancy BMI affect birth weight in such a way that GWG is relevant in lower BMI categories and less important in women with higher BMI.2323 Catalano P. Gestational weight gain: an ounce of prevention is still worth a pound of cure. Diabetologia. 2018;61:2507-11. Low GWG is generally associated with both low birth weight and SGA, even in obese women,2424 Kapadia MZ, Park CK, Beyene J, Giglia L, Maxwell C, McDonald SD. Weight loss instead of weight gain within the guidelines in obese women during pregnancy: a systematic review and meta-analyses of maternal and infant outcomes. PLoS One. 2015;10:e0132650. whilst excessive GWG is linked to increased rates of macrosomia and LGA. In GDM, this modifiable factor has been frequently evaluated but it is still not well established how much weight women must gain to prevent birth weight deviations. For example, it was only possible to disclose that weight loss impacted birth weight in women with normal BMI in the contemporary cohort, in which mean birth weight was close to what is considered low birth weight. In other studies, women with GDM who gained below the 2009 IOM recommendations had a greater chance of having SGA and low birth weight infants.2525 Cheng YW, Chung JH, Kurbisch-Block I, Inturrisi M, Shafer S, Caughey AB. Gestational weight gain and gestational diabetes mellitus: perinatal outcomes. Obstet Gynecol. 2008;112:1015-22. Weight loss or insufficient gain in overweight or obese pregnant women is associated with an increased risk of SGA and low birth weight infants2626 Catalano PM, Mele L, Landon MB, Ramin SM, Reddy UM, Casey B, et al. Inadequate weight gain in overweight and obese pregnant women: what is the effect on fetal growth? Am J Obstet Gynecol. 2014;211:137.e1-7.; the present data add to these findings in GDM women.

Concerning weight gain more than recommended and its consequences for the fetus, high frequencies of macrosomia and LGA were associated with excessive GWG in Irish women.2020 Egan AM, Dennedy MC, Al-Ramli W, Heerey A, Avalos G, Dunne F. ATLANTIC-DIP: excessive gestational weight gain and pregnancy outcomes in women with gestational or pregestational diabetes mellitus. J Clin Endocrinol Metab. 2014;99:212-9. The results are similar herein, although in general, women in the contemporary cohort gained less weight than those in the past. It is of note that high rates of weight gain above current recommendations also occurred in overweight women (in both cohorts), emphasizing the need to slow GWG in this group. Although birth weight was not importantly affected, these mothers have increased risk of future obesity and diabetes.2727 Abdullah A, Peeters A, de Courten M, Stoelwinder J. The magnitude of association between overweight and obesity and the risk of diabetes: a meta-analysis of prospective cohort studies. Diabetes Res Clin Pract. 2010;89:309-19.

Besides wider access to treatment nowadays, other factors, such as continuous and early glucose monitoring, seemed to impact GWG: the rate of women with excessive gain was lower in the monitored group and women who started early monitoring gained less weight.2828 Wei Q, Sun Z, Yang Y, Yu H, Ding H, Wang S. Effect of a CGMS and SMBG on maternal and neonatal outcomes in gestational diabetes mellitus: a randomized controlled trial. Scient Rep. 2016;6:9920. It can be speculated that better management of GDM associated with routine follow-up at high-risk prenatal care clinics in the 2017 cohort of LINDA-Brasil occurred more commonly than in the earlier cohort, and despite the higher rates of pregestational obesity being more common now, adequate or lower weight gains, and, perhaps, more strict glycemic targets, may have contributed to the results herein. These improvements in the delivery of pregnancy care were seen almost nationwide, since 2002.2929 Paim J, Travassos C, Almeida C, Bahia L, Macinko J. The Brazilian health system: history, advances, and challenges. Lancet. 2011;377:1778-97. Free distribution of medications and better care of diabetes may also have contributed, since self-monitoring of capillary glycemia is considered an important tool for the adequate control of GDM.2828 Wei Q, Sun Z, Yang Y, Yu H, Ding H, Wang S. Effect of a CGMS and SMBG on maternal and neonatal outcomes in gestational diabetes mellitus: a randomized controlled trial. Scient Rep. 2016;6:9920. There were also improvements in other social and health indicators, such as higher schooling and a decrease in smoking rates.2929 Paim J, Travassos C, Almeida C, Bahia L, Macinko J. The Brazilian health system: history, advances, and challenges. Lancet. 2011;377:1778-97. The findings of the present study reflect these improvements: increased mean educational level, from 2.5 ± 1.5 in the 1990s cohort to 4.1 ± 1.4 in the 2010s, while smoking decreased from 16.7% to 7.3%.

The strengths of this study merit mention: as far as we know, EBDG is the largest Brazilian study on GDM and LINDA-Brasil is the largest cohort including postpartum follow-up in Brazilian women with previous GDM. The comparison permitted evaluation of the nutritional transition from the 1990s to the 2010s, disclosing an important increase in maternal obesity rates, favoring the delivery of heavier newborns.

Limitations also have to be pointed out. Prepregnancy weight was reported by women in both cohorts, but high agreement between reported and measured weight is described in pregnant women.3030 Han E, Abrams B, Sridhar S, Xu F, Hedderson M. Validity of self-reported pre-pregnancy weight and body mass index classification in an integrated health care delivery system. Paediatr Perinat Epidemiol. 2016;30:314-9. Height was reported in LINDA-Brasil; the weight of the newborn was collected from the mother's information in the immediate postpartum in LINDA-Brasil, but women were requested to have the newborn's card in hands at the time of the interview. GDM definition varied overtime. It is possible that current definition includes milder cases diagnosed solely on having altered fasting plasma glucose or one altered cutpoint on the OGTT. In the EBDG cohort, cases of GDM occurred in less than 10% of the sample, precluding subgroup analyses.

The present study illustrates a large increase in maternal obesity from the 1990s to the 2010s, and contributes to a better understanding of GWG and birth weight imbrications in women with GDM. The alarming rate of maternal obesity found in the 2014–2017 cohort and the high frequencies of inadequate weight gain found in the two cohorts, with their effects on birth weight, impose the need to prepare women even before pregnancy, through prepregnancy counseling to avoid overweight/obesity at conception, as well as careful follow-up of their pregnancies regarding weight gain.

  • Funding
    The authors would like to thank the National Council for Scientific and Technological Development (CNPq) and Lilly for the financial assistance and support to carry out the original studies.
  • Appendix A. Supplementary data
    Supplementary data associated with this article can be found, in the online version, at doi:10.1016/j.jped.2020.02.004.

Acknowledgements

Vânia Naomi Hirakata, for helping with the statistical analysis.

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Publication Dates

  • Publication in this collection
    19 Apr 2021
  • Date of issue
    Mar-Apr 2021

History

  • Received
    24 Oct 2019
  • Accepted
    12 Mar 2020
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