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Gestational Diabetes, Subsequent Type 2 Diabetes, and Food Security Status: National Health and Nutrition Examination Survey, 2007–2018

Lihua Li, PhD1,2,3; Jiayi Ji, MS4; Yan Li, PhD1,5; Yuanhui (Jasmine) Huang, MD6; Jee-Young Moon, PhD7; Ryung S. Kim, PhD7 (View author affiliations)

Suggested citation for this article: Li L, Ji J, Li Y, Huang Y, Moon JY, Kim RS. Gestational Diabetes, Subsequent Type 2 Diabetes, and Food Security Status: National Health and Nutrition Examination Survey, 2007–2018. Prev Chronic Dis 2022;19:220052. DOI: http://dx.doi.org/10.5888/pcd19.220052.

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Summary

What is already known on this topic?

Gestational diabetes is strongly associated with subsequent type 2 diabetes.

What is added by this report?

The association between gestational diabetes and subsequent type 2 diabetes differs significantly by food security status.

What are the implications for public health practice?

Improving access to healthy food and reducing food insecurity may change the pathway between gestational diabetes and subsequent type 2 diabetes.

Abstract

Introduction

Despite many studies linking various risk factors to the association between gestational diabetes and subsequent type 2 diabetes, little is known about how food insecurity affects their association. We aimed to assess how the association between gestational diabetes and subsequent type 2 diabetes varies by food security status among women in the US.

Methods

This study is a secondary data analysis of 9,505 US women aged 20 years or older who had at least 1 live birth; we used cross-sectional data from the National Health and Nutrition Examination Survey (NHANES) from 2007 through 2018. The main outcome was a diagnosis of type 2 diabetes in the subsequent years after the first live birth. We used multivariable survey-weighted negative binomial regressions to examine whether the association between gestational diabetes and subsequent type 2 diabetes differed by food security status, with and without adjusting for health behavior factors.

Results

Gestational diabetes was significantly associated with subsequent type 2 diabetes (incidence rate ratio [IRR], 2.57; 95% CI, 2.45–2.69). The association between gestational diabetes and subsequent type 2 diabetes was significantly different by food security status (IRR, 2.34; 95% CI, 2.23–2.45 among food-secure women; IRR, 2.99; 95% CI, 2.70–3.28 among food-insecure women).

Conclusion

The association between gestational diabetes and subsequent type 2 diabetes differs significantly by food security status. Public health and health care practitioners should consider food security status when designing and implementing diabetes prevention interventions for women with a history of gestational diabetes.

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Introduction

Gestational diabetes, defined as glucose intolerance with onset or first recognition during pregnancy, is one of the most common pregnancy complications (1,2). It affects up to 10% of pregnancies in the US (3). Among women with gestational diabetes, about 20% to 50% eventually develop type 2 diabetes (4,5). Previous studies confirmed that gestational diabetes is associated with both insulin resistance and impaired insulin secretion, and it shares the same risk factors with type 2 diabetes, such as family history, age, and body mass index (BMI) (6,7). Shortly after delivery, most women usually return to normal glucose regulation. However, women with a history of gestational diabetes have an increased risk of developing type 2 diabetes later in life compared with women without a history of gestational diabetes (6,8).

Food insecurity is defined as a lack of physical and economic access to sufficient, safe, nutritious food that meets the dietary needs of a person for an active and healthy life (9). Previous studies suggest that food insecurity may act as a risk factor for type 2 diabetes (10,11). Nevertheless, in the literature that links gestational diabetes to subsequent type 2 diabetes while accounting for demographic factors, socioeconomic status, lifestyles, and biomarkers (12–14), no study has examined the role of food security in the association between gestational diabetes and subsequent type 2 diabetes.

A healthy diet is an important factor for preventing the development and further complications of diabetes (15,16). However, the impact of food security on diabetes and its consequences have not been fully explored, especially among women with a history of gestational diabetes. The knowledge gap may be due to several reasons, such as data availability, varying definitions of food security, and its inconsistent measurement.

In this study, we aimed to address this research gap by examining whether and how much food security affects the association between gestational diabetes and subsequent type 2 diabetes. We hypothesized that the relative risk of developing subsequent type 2 diabetes — comparing women with a history of gestational diabetes to their counterparts without a history of gestational diabetes — in the food-insecure population is higher than in the food-secure population.

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Methods

We used publicly available cross-sectional data from the National Health and Nutrition Examination Survey (NHANES) from 2007 through 2018. Of all NHANES surveys, the 2017–2018 cycle of NHANES had the most up-to-date data on food security at the time our study was conducted (17). NHANES is a national survey conducted in the civilian, noninstitutionalized US population with a stratified, multistage, probability sampling design (18). The survey examines a nationally representative sample of approximately 5,000 persons each year and assesses their health and nutritional status. It has a unique feature of combining home-based interviews for demographic, socioeconomic, dietary, and health-related information, with physical examinations for medical, dental, and physiological measurements, as well as laboratory tests (18). This study involved secondary analysis of nationally representative survey data, which are publicly available and do not contain personal identifiers; therefore, the study was exempt from institutional review.

Study sample

We first extracted data on 10,504 women aged 20 years or older who had at least 1 live birth. After excluding 120 (1.2%) survey participants with unknown food security status, we excluded 175 (1.8%) participants who had diabetes or borderline diabetes before pregnancy by checking if their age at diagnosis was younger than their age at first live birth (Figure). We then excluded 243 (2.4%) participants who had borderline gestational diabetes, which was defined as having been told by a doctor or other health professional that she had borderline diabetes during pregnancy. Borderline diabetes is a condition in which blood glucose is high, but not high enough to be diabetes (fasting plasma glucose of 100–125 mg/dL and 2-hour postprandial glucose of 140–199 mg/dL) (19). In addition, we excluded 461 (4.1%) participants who had missing values on key covariates, including 20 participants with missing values for age at diagnosis of type 2 diabetes. Our final study sample included 9,505 participants.

Analytic sample from 2007–2018 National Health and Nutrition Examination Survey. Covariates were age at first live birth, education, race and ethnicity, nativity, parity, family history of diabetes, and diabetes-related health behavior variables measured at the time of interview: alcohol use, total sugar intake 24 hours before the interview, smoking status, having rigorous-intensity activity at work or at leisure, body mass index, health insurance, and having a routine place for health care.

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Figure.

Analytic sample from 2007–2018 National Health and Nutrition Examination Survey. Covariates were age at first live birth, education, race and ethnicity, nativity, parity, family history of diabetes, and diabetes-related health behavior variables measured at the time of interview: alcohol use, total sugar intake 24 hours before the interview, smoking status, having rigorous-intensity activity at work or at leisure, body mass index, health insurance, and having a routine place for health care. [A text description of this figure is available.]

Exposure variable

The exposure variable was gestational diabetes, which was categorized as a binary variable (yes/no). Participants who answered yes to the question “During pregnancy, were you ever told by a doctor or other health professional that you had diabetes, sugar diabetes or gestational diabetes? Please do not include diabetes that you may have known about before the pregnancy” were defined as having had gestational diabetes.

Outcome variable

The outcome of interest was the development of type 2 diabetes after pregnancy, defined as a woman having ever been told by a doctor or health professional that she has diabetes or sugar diabetes. The participant with a history of gestational diabetes was considered to have subsequent type 2 diabetes if she had ever been told by a doctor or health professional that she had diabetes or sugar diabetes, and the age at diagnosis of diabetes was greater than the age at diagnosis of gestational diabetes. A participant without gestational diabetes was considered to have type 2 diabetes if she had ever been told by a doctor or health professional that she had diabetes or sugar diabetes, and the age at diagnosis of type 2 diabetes was greater than the age of her first live birth.

Length of time at risk of subsequent type 2 diabetes

The duration of follow-up since first pregnancy was considered the length of time at risk of subsequent type 2 diabetes. For women who developed type 2 diabetes, it was calculated according to the participant’s age at first live birth, which was derived from their response to the question “How old were you at the time of your first live birth?” and age at diagnosis of type 2 diabetes, which was derived from their response to the question “How old were you when a doctor or other health professional first told you that you had diabetes or sugar diabetes?” We then calculated the difference in years between age at first live birth and age at diagnosis of type 2 diabetes. For women who did not develop type 2 diabetes, we calculated length of time at risk as the difference in years between age at first live birth and age at the NHANES interview.

Food security variable

Food security was determined by examining answers to the questions from the US Food Security Survey Module, which is a well-validated questionnaire developed by the US Department of Agriculture; the module assesses household food security during the 12 months before the NHANES interview (20). It includes 18 items, 10 of which refer to adults in the household and 8 of which refer to children younger than 18 years. Because the study sample included adults only, we used the 4-level adult food security variable to classify participants into 2 groups: we considered participants with full food security and marginal food security to be food secure, and low food security and very low food security to be food insecure (20).

Covariates

We included the following demographic and socioeconomic factors: age at first live birth, education (less than high school diploma, high school graduate, some college, and college graduate or higher), race and ethnicity (non-Hispanic White, non-Hispanic Black, Hispanic, and “other” [Mexican American, other Hispanic, and multiracial]), nativity (US born and non–US born), and parity (1 or 2, 3, and ≥4 children).

We also included family history of diabetes (yes/no) and diabetes-related health behavior variables measured at the time of interview: alcohol use (yes/no), total sugar intake 24 hours before the interview (mg), smoking status (current, ever, never), having rigorous-intensity activity at work or at leisure (yes/no), and BMI (normal weight, BMI <25.0; overweight, BMI 25.0–29.9; obese, BMI ≥30.0). In addition, we included health insurance (yes/no) and having a routine place for health care (yes/no).

Statistical analysis

We performed descriptive analyses to summarize characteristics of women with and without gestational diabetes by food security status. To compare the difference between women who had gestational diabetes and women who did not, we used survey design–based t tests for continuous variables and Rao–Scott χ2 tests for categorical variables.

Considering each woman’s length of time at risk of subsequent type 2 diabetes, we first used a multivariable survey-weighted negative binomial regression (21) to examine the association between gestational diabetes incidence and subsequent type 2 diabetes incidence, adjusting for all the aforementioned covariates, and tested whether this association differed by food security status by testing the interaction of gestational diabetes and food security status. We further conducted subgroup analyses to examine this association stratified by food insecurity and food security. In both overall and subgroup analyses, the regression modeled the incidence rate of subsequent type 2 diabetes with the log of follow-up time since the first pregnancy as an offset and adjusted for covariates including and excluding health behavior factors.

We performed all analyses by using R package survey in R version 4.0.2 (R Core Team). Multiple imputation was not considered because the proportion of survey participants with missing values was low (<5%). All tests were 2-sided, with P < .05 considered significant. All analyses accounted for the complex survey design, including survey strata, clusters, and weights (22). We tabulated the incidence rate of subsequent type 2 diabetes, the ratio of incidence rates, and their 95% CIs. All percentages were survey weighted to be generalizable to the noninstitutionalized population of women in the US (23).

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Results

Of the 9,505 women, 7,326 (77.3%) were food secure, among whom 597 (8.0%) had gestational diabetes. Correspondingly, 2,179 (22.7%) women were food insecure, among whom 212 (9.7%) had gestational diabetes. Among women who were food secure, those who had gestational diabetes were more likely than those who did not have gestational diabetes to be younger at the time of interview (mean age, 52 [SD, 7.2] y vs 56 [SD, 2.5] y; P < .001) and at the time of the subsequent type 2 diabetes diagnosis (mean age, 41.7 [SD, 5.1] y vs 54.6 [SD, 3.2] y; P < .001), to consume more sugar (mean, 99.2 [SD, 27.0] mg vs 98.0 [SD, 18.0] mg; P = .76), be obese (56.4% vs 38.5%; P < .001), and have a family history of diabetes (64.5% vs 39.0%; P < .001) (Table 1). Among women who were food insecure, the pattern was similar except for health insurance and health behavior: women who had gestational diabetes were more likely than those who did not have gestational diabetes to have insurance (77.2% vs 73.0%; P = .65) and have vigorous activity both at work (21.0% vs 19.0%; P = .62) and during leisure time (12.3% vs 9.7%; P = .16).

In the overall population, both gestational diabetes and food security status were significantly associated with type 2 diabetes. The ratio of incidence rates of type 2 diabetes, comparing those who had gestational diabetes with those who did not, was 2.57 (95% CI, 2.45–2.69) while adjusting for all the covariates including health behavior variables (Table 2). The ratio of incidence rates of type 2 diabetes, comparing those who had food security to those who did not, was 0.66 (95% CI, 0.56–0.77). The association of gestational diabetes and subsequent type 2 diabetes differed significantly by food security status (P value for interaction = .03). The analyses excluding 6 health behavior variables yielded similar results (Table 2).

Overall, the incidence rates of subsequent type 2 diabetes among women with and without gestational diabetes were 9.82 and 4.31 per 1,000 person-years (Table 3) with a median follow-up of 28 years (interquartile range [IQR], 24–32 y) and 33 years (IQR, 28–38 y), respectively. The incidence rates of subsequent type 2 diabetes among women with and without gestational diabetes were 9.91 and 4.38 per 1,000 person-years in the food-secure group, respectively, and 9.60 and 4.44 per 1,000 person-years in the food-insecure group, respectively. The adjusted incidence rate ratio of having subsequent type 2 diabetes (comparing women with gestational diabetes to those without gestational diabetes) was 2.34 (95% CI, 2.23–2.45, P < .001) in the food-secure group and 2.99 (95% CI, 2.70–3.28, P < .001) in the food-insecure group. The estimates were similar when we removed 6 health behavior variables. In the overall and subgroup analyses, we found that obesity, having no routine place for health care, and having a family history of diabetes were significantly associated with the incidence of subsequent type 2 diabetes (Table 4).

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Discussion

To our knowledge, our study is the first to assess how the association between gestational diabetes and subsequent type 2 diabetes varies by food security status among women in the US. We found that the incidence rate ratio of subsequent type 2 diabetes (gestational diabetes vs no gestational diabetes) among women who were food secure at the time of interview was about 20% lower (2.34 vs 2.99) than it was among women who were food insecure. This difference in the association of gestational diabetes and subsequent type 2 diabetes between the 2 food security groups was significant, regardless of adjustment for health behavior factors. These findings provide the first pieces of evidence that food insecurity may be an intervenable risk factor in the association between gestational diabetes and development of type 2 diabetes. Further studies are needed to examine whether the change in food security status can mitigate the development of type 2 diabetes.

Our findings imply that public health and health care practitioners need to consider food security status in designing and implementing diabetes prevention interventions (24). In addition, existing government programs such as the Supplemental Nutrition Assistance Program (SNAP) and the Special Supplemental Nutrition Program for Women, Infants, and Children (WIC) should be expanded to reduce food insecurity (25). More efforts should be made to support enrollment in SNAP and WIC among women living in communities that are socially and economically marginalized. These efforts may include funding community-based organizations that focus on food insecurity; increasing acceptance of SNAP and WIC at online food retailers; and partnering with local communities to gain trust and improve food systems. During the COVID-19 pandemic, when food insecurity increased, the need for expanding and improving SNAP and WIC was magnified (26,27).

Our results demonstrate an opportunity for federal, state, and local officials to reduce the incidence of type 2 diabetes through appropriately addressing the issue of food insecurity, especially among women with a history of gestational diabetes. A recent study found that people who were food insecure were responsible for an additional $77.5 billion in health care expenditures annually compared with those who were food secure (28). This evidence provides additional incentives for stakeholders to take immediate action against food insecurity because of the potential savings to the health care system.

Limitations

This study has several limitations. First, gestational diabetes and other variables were self-reported and were not verified by medical records, and thus may be subject to recall and response biases. The counts of gestational diabetes and type 2 diabetes may be underestimated because of undiagnosed cases. However, a study showed reasonable agreement (ie, 93.8%) between self-reported gestational diabetes and verification from birth certificates (29). Second, because food security status may not necessarily stay the same from the pregnancy to the time of interview, we were not able to establish temporality or causality in the relationship between food security and the progression of type 2 diabetes from gestational diabetes. Because our assumption was that current food security status is a proxy for past status, our results should be interpreted with caution. The limitation of assuming food security status stays the same from pregnancy to the time of interview also calls for future studies, particularly large longitudinal studies, to validate our findings. Also, data on BMI and health behavior factors, such as work and leisure-time activity, were collected either during the survey or when physical examinations were done. Their values do not concomitantly reflect participants’ health behavior between pregnancy and subsequent type 2 diabetes, and reverse causality may occur (ie, instead of the health behavior contributing to subsequent type 2 diabetes, type 2 diabetes changes one’s reported health behavior). Therefore, we performed analyses with and without adjusting for these variables as a bias analysis strategy for validating our findings.

Conclusion

Gestational diabetes is strongly associated with subsequent type 2 diabetes, and this association may vary by food security status. Our findings suggest that improving access to healthy food and reducing food insecurity may change the pathway between gestational diabetes and subsequent type 2 diabetes. Interventions tailored to food-insecure women with a history of gestational diabetes are warranted.

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Acknowledgments

Research reported in this publication was supported in part by the National Cancer Institute Cancer Center Support Grant P30CA196521-01 awarded to the Tisch Cancer Institute of the Icahn School of Medicine at Mount Sinai. The authors declared no potential conflicts of interest with respect to the research, authorship, or publication of this article. No copyrighted materials were used in this article.

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Author Information

Corresponding Author: Lihua Li, PhD, Assistant Professor, Department of Population Health Science and Policy, Icahn School of Medicine at Mount Sinai, One Gustave L. Levy Place, Box 1077, New York, NY 10029. Telephone: 212-659-9663. Email: Lihua.li@mountsinai.org.

Author Affiliations: 1Department of Population Health Science and Policy, Icahn School of Medicine at Mount Sinai, New York, New York. 2Institute for Healthcare Delivery Science, Icahn School of Medicine at Mount Sinai, New York, New York. 3Tisch Cancer Institute, New York, New York. 4Department of Biostatistics & Epidemiology, Rutgers School of Public Health, Piscataway, New Jersey. 5Department of Obstetrics, Gynecology and Reproductive Science, Icahn School of Medicine at Mount Sinai, New York, New York. 6Division of Hematology and Medical Oncology, Icahn School of Medicine at Mount Sinai, New York, New York. 7Department of Epidemiology and Population Health, Albert Einstein College of Medicine, Bronx, New York.

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References

  1. Ferrara A. Increasing prevalence of gestational diabetes mellitus: a public health perspective. Diabetes Care 2007;30(Suppl 2):S141–6. CrossRef PubMed
  2. Ornoy A, Becker M, Weinstein-Fudim L, Ergaz Z. Diabetes during pregnancy: a maternal disease complicating the course of pregnancy with long-term deleterious effects on the offspring. a clinical review. Int J Mol Sci 2021;22(6):2965. CrossRef PubMed
  3. Centers for Disease Control and Prevention. Gestational diabetes. Accessed February 8, 2021. https://www.cdc.gov/diabetes/basics/gestational.html
  4. Casagrande SS, Linder B, Cowie CC. Prevalence of gestational diabetes and subsequent type 2 diabetes among US women. Diabetes Res Clin Pract 2018;141:200–8. CrossRef PubMed
  5. Auvinen A-M, Luiro K, Jokelainen J, Järvelä I, Knip M, Auvinen J, et al. Type 1 and type 2 diabetes after gestational diabetes: a 23 year cohort study. Diabetologia 2020;63(10):2123–8. CrossRef PubMed
  6. Bellamy L, Casas JP, Hingorani AD, Williams D. Type 2 diabetes mellitus after gestational diabetes: a systematic review and meta-analysis. Lancet 2009;373(9677):1773–9. CrossRef PubMed
  7. Bentley-Lewis R. Gestational diabetes mellitus: an opportunity of a lifetime. Lancet 2009;373(9677):1738–40. CrossRef PubMed
  8. Song C, Lyu Y, Li C, Liu P, Li J, Ma RC, et al. Long-term risk of diabetes in women at varying durations after gestational diabetes: a systematic review and meta-analysis with more than 2 million women. Obes Rev 2018;19(3):421–9. CrossRef PubMed
  9. Food and Agriculture Organization of the United Nations. Rome declaration on world food security and world food summit plan of action. Rome; 1996.
  10. Fitzgerald N, Hromi-Fiedler A, Segura-Pérez S, Pérez-Escamilla R. Food insecurity is related to increased risk of type 2 diabetes among Latinas. Ethn Dis 2011;21(3):328–34. PubMed
  11. Lee AM, Scharf RJ, DeBoer MD. Food insecurity is associated with prediabetes and dietary differences in US adults aged 20–39. Prev Med 2018;116:180–5. CrossRef PubMed
  12. Feig DS, Zinman B, Wang X, Hux JE. Risk of development of diabetes mellitus after diagnosis of gestational diabetes. CMAJ 2008;179(3):229–34. CrossRef PubMed
  13. Baptiste-Roberts K, Barone BB, Gary TL, Golden SH, Wilson LM, Bass EB, et al. Risk factors for type 2 diabetes among women with gestational diabetes: a systematic review. Am J Med 2009;122(3):207–214.e4. CrossRef PubMed
  14. Casagrande SS, Linder B, Cowie CC. Prevalence of gestational diabetes and subsequent type 2 diabetes among US women. Diabetes Res Clin Pract 2018;141:200–8. CrossRef PubMed
  15. Henry OA, Beischer NA. Long-term implications of gestational diabetes for the mother. Baillieres Clin Obstet Gynaecol 1991;5(2):461–83. CrossRef PubMed
  16. Willett WC, Koplan JP, Nugent R, Dusenbury C, Puska P, Gaziano TA. Prevention of chronic disease by means of diet and lifestyle changes. In: Jamison DT, Breman JG, Measham AR, et al, editors. Disease control priorities in developing countries. 2nd ed. The International Bank for Reconstruction and Development/The World Bank; 2006: p.833–50.
  17. Centers for Disease Control and Prevention. NHANES 2017–2018 questionnaire data. Food security. Updated February 2022. Accessed November 21, 2021. https://wwwn.cdc.gov/Nchs/Nhanes/Search/DataPage.aspx?Component=Questionnaire&CycleBeginYear=2017
  18. Centers for Disease Control and Prevention. National Health and Nutrition Examination Survey: plan and operations, 1999–2010. Accessed November 21, 2021. https://www.cdc.gov/nchs/data/series/sr_01/sr01_056.pdf
  19. American Diabetes Association. Standards of medical care in diabetes — 2018 abridged for primary care providers. Clin Diabetes 2018;36(1):14–37. CrossRef PubMed
  20. Bickel G, Nord M, Price C, Hamilton W, Cook J. Guide to measuring household food security. US Department of Agriculture, Food and Nutrition Service. Accessed November 21, 2021. https://naldc.nal.usda.gov/download/38369/PDF
  21. Hilbe JM. Negative binomial regression. 2nd ed. Cambridge University Press; 2011.
  22. An AB. Performing logistic regression on survey data with the new SURVEYLOGISTIC procedure. Paper 258-27. Paper presented at: SAS Users Group International 27 conference; April 14–17, 2002; Orlando, FL. Accessed November 23, 2021. https://support.sas.com/resources/papers/proceedings/proceedings/sugi27/p258-27.pdf
  23. National Center for Health Statistics. National Health and Nutrition Examination Survey tutorial module 3: weighting. Accessed November 23, 2021. https://wwwn.cdc.gov/nchs/nhanes/tutorials/module3.aspx
  24. Blitstein JL, Lazar D, Gregory K, McLoughlin C, Rosul L, Rains C, et al. Foods for health: an integrated social medical approach to food insecurity among patients with diabetes. Am J Health Promot 2021;35(3):369–76. CrossRef PubMed
  25. Poblacion A, Cook J, Ettinger de Cuba S, Bovell A, Sheward R, Pasquariello J, et al. Can food insecurity be reduced in the United States by improving SNAP, WIC, and the community eligibility provision? World Med Health Policy 2017;9(4):435–55. CrossRef
  26. Wolfson JA, Leung CW. Food insecurity and COVID-19: disparities in early effects for US adults. Nutrients 2020;12(6):1648. CrossRef PubMed
  27. Pereira M, Oliveira AM. Poverty and food insecurity may increase as the threat of COVID-19 spreads. Public Health Nutr 2020;23(17):3236–40. CrossRef PubMed
  28. Berkowitz SA, Basu S, Meigs JB, Seligman HK. Food insecurity and health care expenditures in the United States, 2011–2013. Health Serv Res 2018;53(3):1600–20. CrossRef PubMed
  29. Hosler AS, Nayak SG, Radigan AM. Agreement between self-report and birth certificate for gestational diabetes mellitus: New York State PRAMS. Matern Child Health J 2010;14(5):786–9. CrossRef PubMed

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Tables

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Table 1. Characteristics of Survey Participants Included in Analysis (N = 9,505), by Food Security Status, National Health and Nutrition Examination Survey, 2007–2018a
Characteristic Food security Food insecurity
Gestational diabetes (n = 597) No gestational diabetes (n = 6,729) P valueb Gestational diabetes (n = 212) No gestational diabetes (n = 1,967) P valueb
Age at first live birth, mean (SD), y 24 (1.5) 23 (0.9) <.001 22 (2.5) 21 (0.9) <.001
Age at interview, mean (SD), y 52 (7.2) 56 (2.5) <.001 49 (12.1) 52 (5.2) <.001
Follow-up time, median (IQR), y 28 (23–33) 33 (27–39) <.001 27 (19–35) 31 (23–39) <.001
Race and ethnicity
Black, non-Hispanic 103 (7.9) 1,356 (10.2) .005 44 (15.5) 493 (18.5) .25
Hispanic 169 (12.5) 1,663 (11.3) 78 (28.2) 770 (25.4)
Otherc 81 (9.3) 689 (6.6) 14 (7.2) 118 (6.7)
White, non-Hispanic 244 (70.3) 3,021 (71.9) 76 (49.1) 586 (49.5)
Education
Less than high school diploma 133 (15.0) 1,684 (15.1) .003 76 (30.3) 820 (34.0) .11
High school diploma/GED 115 (16.2) 1,631 (25.2) 48 (25.4) 464 (25.8)
Some college or associate degree 202 (32.2) 1,982 (32.0) 76 (35.2) 551 (31.6)
College degree or above 147 (36.6) 1,432 (27.7) 12 (9.1) 132 (8.6)
US born
No 153 (15.2) 1,832 (15.1) .43 68 (24.1) 667 (22.2) .64
Yes 444 (84.8) 4,897 (84.9) 144 (75.9) 1,300 (77.8)
Parityd
1 or 2 288 (54.1) 3,144 (52.4) .36 84 (46.1) 765 (45.3) .37
3 172 (25.9) 1,862 (27.8) 53 (24.2) 576 (29.6)
≥4 137 (20.0) 1,723 (19.8) 75 (29.7) 626 (25.1)
Health insurance
No 122 (14.1) 1,040 (11.4) .002 56 (22.8) 554 (27.0) .65
Yes 475 (85.9) 5,689 (88.6) 156 (77.2) 1,413 (73.0)
Routine place for health care
No 68 (10.4) 577 (6.9) .02 39 (22.6) 298 (16.0) .25
Yes 529 (89.6) 6,152 (93.1) 173 (77.4) 1,669 (84.0)
Family history of diabetes
No 199 (35.5) 3,869 (61.0) <.001 78 (31.8) 935 (46.6) .004
Yes 398 (64.5) 2,860 (39.0) 134 (68.2) 1,032 (53.4)
BMI
Normal weight (BMI <25.0) 125 (20.5) 1,941 (32.1) <.001 28 (11.2) 376 (21.9) .006
Overweight (BMI 25.0–29.9) 141 (23.1) 2,059 (29.4) 44 (15.4) 514 (25.8)
Obese (BMI ≥30.0) 331 (56.4) 2,729 (38.5) 140 (73.5) 1,077 (52.4)
Having rigorous activity at worke
No 520 (88.3) 5,985 (86.7) .19 172 (79.0) 1,636 (81.0) .62
Yes 77 (11.7) 744 (13.3) 40 (21.0) 331 (19.0)
Having rigorous activity at leisuref
No 516 (81.9) 5,755 (81.3) .59 186 (87.7) 1,789 (90.3) .16
Yes 81 (18.1) 974 (18.7) 26 (12.3) 178 (9.7)
Alcohol use
No 169 (23.8) 2,525 (29.0) <.001 75 (28.7) 730 (29.5) .67
Yes 428 (76.2) 4,204 (71.0) 137 (71.3) 1,237 (70.5)
Tobacco use
No 212 (35.8) 2,057 (32.8) <.001 77 (38.9) 572 (33.7) .002
Former 253 (47.4) 3,318 (52.5) 104 (45.9) 1,104 (51.2)
Current 132 (16.5) 1,354 (14.7) 31 (15.2) 291 (15.1)
24-h Sugar intake, mean (SD), mg 99.2 (27.0) 98.0 (18.0) .76 118.2 (27.2) 107.2 (27.3) .48
Subsequent type 2 diabetes
Yes 148 (21.9) 679 (9.7) <.001 51 (27.6) 271 (12.8) <.001
No 449 (78.1) 6,050 (90.3) 161 (72.4) 1,696 (87.2)
Age at subsequent diagnosis of type 2 diabetes, mean (SD), y 41.7 (5.1) 54.6 (3.2) <.001 36.3 (6.9) 50.4 (4.5) <.001

Abbreviations: BMI, body mass index; GED, General Educational Development.
a All data are shown as number (percentage) unless otherwise noted.
b P values calculated by using survey design–based t tests for continuous variables and Rao–Scott χ2 tests for categorical variables.
c “Other” includes Mexican American, other Hispanic, and multiracial.
d Number of children.
e Having rigorous-intensity activity that causes large increases in breathing or heart rate for at least 10 minutes continuously at work.
f Having rigorous-intensity activity that causes large increases in breathing or heart rate for at least 10 minutes continuously at sports, fitness, or recreational activity.

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Table 2. Incidence Rate Ratio (IRR) of Type 2 Diabetes Subsequent to Pregnancy That Compares Women With Gestational Diabetes With Those Without Gestational Diabetes in the Overall Sample, National Health and Nutrition Examination Survey, 2007–2018
Main covariates IRR (95% CI) [P valuea]
With adjustment of health behavior variablesb Without adjustment of health behavior variablesc
Model with main effect Model with interaction term Model with main effect Model with interaction term
Gestational diabetes
No 1 [Reference] 1 [Reference] 1 [Reference] 1 [Reference]
Yes 2.57 (2.45–2.69) [<.001] 2.34 (2.23–2.45) [<.001] 2.59 (2.51–2.67) [<.001] 2.38 (2.30–2.46) [<.001]
Food security status
Food insecurity 1 [Reference] 1 [Reference] 1 [Reference] 1 [Reference]
Food security 0.66 (0.56–0.77) [.008] 0.62 (0.56–0.90) [.01] 0.68 (0.61–0.76) [<.001] 0.62 (0.47–0.76) [<.001]
Food security × gestational diabetes 0.82 (0.68–0.90) [.03] 0.81 (0.74–0.87) [.004]

Abbreviation: — , does not apply.
a Determined by likelihood ratio test; P < .05 considered significant.
b Adjusted for age at first live birth, education, race and ethnicity, nativity, parity (number of children), family history of diabetes, health insurance, having a routine place for health care, and health behavior variables, which include body mass index, having rigorous-intensity activity at work, having rigorous-intensity activity at leisure, 24-hour sugar intake, alcohol use, and tobacco use.
c Adjusted for age at first live birth, education, race and ethnicity, nativity, parity (number of children), family history of diabetes, health insurance, and having a routine place for health care.

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Table 3. Incidence Rate Ratio (IRR) of Type 2 Diabetes Subsequent to Pregnancy, by Food Security Status, National Health and Nutrition Examination Survey, 2007–2018
Food security status Weighted % Type 2 diabetes events/total (weighted %) Weighted incidence rate per 1,000 person-years With adjustment of health behavior variablesa Without adjustment of health behavior variablesb
IRR (95% CI) P for interaction of gestational diabetes and food securityc IRR (95% CI) P for interaction of gestational diabetes and food securityc
Overall (N = 9,505)
No gestational diabetes 91.8 950/8,696 (10.4) 4.31 1 [Reference] 1 [Reference]
Gestational diabetes 8.2 199/809 (23.8) 9.82 2.57 (2.45–2.69) 2.58 (2.50–2.66)
Food security (n = 7,326)
No gestational diabetes 92.2 679/6,729 (9.7) 4.38 1 [Reference] .03 1 [Reference] .004
Gestational diabetes 7.8 148/597 (21.9) 9.91 2.34 (2.23–2.45) 2.38 (2.30–2.46)
Food insecurity (n = 2,179)
No gestational diabetes 91.0 271/1,967 (12.8) 4.44 1 [Reference] 1 [Reference]
Gestational diabetes 9.0 51/212 (27.6) 9.60 2.99 (2.70–3.28) 2.98 (2.77–3.19)

Abbreviation: —, not applicable.
a Adjusted for age at first live birth, education, race and ethnicity, nativity, parity (number of children), family history of diabetes, health insurance, having a routine place for health care and health behavior variables, which include body mass index, having rigorous-intensity activity at work, having rigorous-intensity activity at leisure, 24-hour sugar intake, alcohol use, and tobacco use.
b Adjusted for age at first live birth, education, race and ethnicity, nativity, parity (number of children), family history of diabetes, health insurance, and having a routine place for health care.
c Determined by likelihood ratio test; P < .05 considered significant.

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Table 4. Incidence Rate Ratio (IRR) of Type 2 Diabetes Subsequent to Pregnancy That Compares Women With Gestational Diabetes With Those Without Gestational Diabetes, by Food Security Status, National Health and Nutrition Examination Survey, 2007–2018
Covariates Food security Food insecurity
IRR (95% CI) P valuea IRR (95% CI) P valuea
Gestational diabetes
No 1 [Reference] 1 [Reference]
Yes 2.34 (2.23–2.45) <.001 2.99 (2.70–3.28) <.001
BMI
Normal weight (BMI <25.0) 1 [Reference] 1 [Reference]
Overweight (BMI 25.0–29.9) 1.94 (1.30–2.91) .002 2.07 (1.05–2.98) .03
Obese (BMI ≥30.0) 5.27 (3.37–8.29) <.001 5.78 (1.39–9.50) .01
Having rigorous activity at workb
No 1 [Reference] 1 [Reference]
Yes 0.82 (0.54–1.25) .22 0.99 (0.63–1.55) .61
Having rigorous activity at leisurec
No 1 [Reference] 1 [Reference]
Yes 0.67 (0.46–1.01) .06 0.82 (0.71–1.15) .18
24-h Sugar intake, mg 0.97 (0.90–1.04) .32 0.96 (0.88–1.04) .46
Alcohol use
No 1 [Reference] 1 [Reference]
Yes 0.76 (0.64–0.96) .04 0.98 (0.81–1.19) .11
Tobacco use
Never 1 [Reference] 1 [Reference]
Former 0.94 (0.75–1.16) .27 1.11 (0.92–1.40) .40
Current 1.03 (0.94–1.12) .22 1.24 (0.99–1.36) .32
Parityd
1 or 2 1 [Reference] 1 [Reference]
3 0.92 (0.75–1.17) .52 0.98 (0.86–1.24) .50
≥4 1.04 (0.84–1.33) .66 1.21 (0.99–1.44) .30
Health insurance
No 1 [Reference] 1 [Reference]
Yes 1.11 (0.83–1.57) .50 1.30 (0.98–1.54) .40
Routine place for health care
No 1 [Reference] 1 [Reference]
Yes 2.09 (1.31–3.40) .003 2.52 (1.37–3.86) .02
US born
No 1 [Reference] 1 [Reference]
Yes 1.10 (0.84–1.50) .50 1.36 (0.98–1.62) .56
Race and ethnicity
Black, non-Hispanic 1.41 (1.12–1.79) .01 1.78 (1.38–2.20) .02
Hispanic 1.44 (1.09–1.90) .01 1.55 (1.04–2.00) .04
Othere 2.23 (1.48–3.40) <.001 2.66 (1.74–3.67) .01
White, non-Hispanic 1 [Reference] 1 [Reference]
Education
Less than high school diploma 1 [Reference] 1 [Reference]
High school diploma/GED 0.51 (0.39–0.67) <.001 0.70 (0.54–0.77) .01
Some college or associate degree 0.72 (0.52–1.01) .08 0.94 (0.76–1.12) .15
College degree or above 0.45 (0.33–0.68) <.001 0.67 (0.53–0.71) .005
Age at first live birth, y 0.97 (0.96–0.98) <.001 1.01 (1.00–1.03) .04
Family history of diabetes
No 1 [Reference] 1 [Reference]
Yes 3.54 (2.88–4.44) <.001 4.02 (2.86–5.11) <.001

Abbreviations: BMI, body mass index; GED, General Educational Development.
a Determined by likelihood ratio test; P < .05 considered significant.
b Having rigorous-intensity activity that causes large increases in breathing or heart rate for at least 10 minutes continuously at work.
c Having rigorous-intensity activity that causes large increases in breathing or heart rate for at least 10 minutes continuously at sports, fitness, or recreational activity.
d Number of children.
e “Other” includes Mexican American, other Hispanic, and multiracial.

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