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Preconception risk of gestational diabetes: Development of a prediction model in nulliparous Australian women.

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AIM To develop a prediction model for preconception identification of women at risk of gestational diabetes mellitus (GDM). METHODS Data from a prospective cohort, the Australian Longitudinal Study on Women's… Click to show full abstract

AIM To develop a prediction model for preconception identification of women at risk of gestational diabetes mellitus (GDM). METHODS Data from a prospective cohort, the Australian Longitudinal Study on Women's Health, were used. Nulliparous women aged 18-23 who reported a pregnancy up to age 37-42 were included. Preconception predictors of GDM during a first pregnancy were selected using logistic regression. Regression coefficients were multiplied by a shrinkage factor estimated with bootstrapping to improve prediction in external populations. RESULTS Among 6504 women, 314 (4.8%) developed GDM during their first pregnancy. The final prediction model included age at menarche, proposed age at future first pregnancy, ethnicity, body mass index, diet, physical activity, polycystic ovary syndrome, and family histories of type 1 or 2 diabetes and GDM. The model showed good discriminative ability with a C-statistic of 0.79 (95% CI 0.76, 0.83) after internal validation. More than half of the women (58%) were classified to be at risk of GDM (>2% predicted risk), with corresponding sensitivity and specificity values of 91% and 43%. CONCLUSIONS Nulliparous women at risk of GDM in a future first pregnancy can be accurately identified based on preconception lifestyle and health-related characteristics. Further studies are needed to test our model in other populations.

Keywords: preconception; prediction model; model; risk gestational; prediction

Journal Title: Diabetes research and clinical practice
Year Published: 2018

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