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Digital Health Intervention for Early Identification and Prevention of Gestational Diabetes Mellitus

P

Peking University

Status

Not yet enrolling

Conditions

Gestational Diabetes Mellitus (GDM)

Treatments

Behavioral: Digital Health Lifestyle Intervention

Study type

Interventional

Funder types

Other

Identifiers

NCT07499622
PKUGDM-2026

Details and patient eligibility

About

This study aims to develop and evaluate an early risk identification and digital health intervention strategy for gestational diabetes mellitus (GDM) among pregnant women in China. Gestational diabetes mellitus is a common pregnancy complication associated with adverse maternal and neonatal outcomes, including excessive gestational weight gain, macrosomia, cesarean delivery, and increased long-term risk of metabolic disorders in both mothers and offspring.

The study includes two components. First, retrospective multi-source clinical data from maternal health records will be used to develop and validate a risk prediction model for early identification of pregnant women at high risk of GDM. Second, pregnant women identified as high risk in early pregnancy will be enrolled in a multicenter randomized controlled trial and assigned to either a digital health intervention group or a usual care group. The intervention includes online health education, individualized lifestyle guidance, behavioral self-management tools, and interactive consultation through a digital platform. The primary outcome is the incidence of GDM diagnosed during pregnancy. Secondary outcomes include gestational weight gain, cesarean delivery, macrosomia, and other maternal and neonatal outcomes.

This study is expected to provide evidence for improving early risk assessment, intelligent warning, and prevention strategies for GDM in the context of maternal health management in China.

Full description

Gestational diabetes mellitus (GDM) has become an increasingly important public health problem among pregnant women in China. GDM is associated with short-term adverse pregnancy outcomes and long-term health risks for both mothers and their offspring. Current routine screening for GDM is mainly based on oral glucose tolerance testing performed at 24 to 28 weeks of gestation, which may miss the optimal window for earlier risk identification and preventive intervention.

This study is designed to improve early identification and prevention of GDM through multi-source data integration and digital health intervention. The study is conducted in the context of maternal health management in China and includes a retrospective model development phase and a prospective randomized controlled trial phase.

In the model development phase, retrospective clinical data from maternal health information systems, including demographic characteristics, obstetric history, physical examination records, laboratory indicators, and pregnancy follow-up data, will be used to identify predictors of GDM and to construct an early risk prediction model. Statistical and machine learning methods, including random forest and other predictive modeling approaches, will be used to evaluate model performance and optimize discrimination, calibration, robustness, and interpretability.

In the intervention phase, pregnant women in early pregnancy who are identified as being at high risk for GDM will be recruited from participating maternal and child health hospitals and randomly assigned in a 1:1 ratio to either a digital health intervention group or a usual care group. Participants in the intervention group will receive additional support through a digital platform, including structured health education, individualized recommendations on diet, physical activity, gestational weight management, and sleep, as well as online consultation and self-management tools. Participants in the control group will receive routine antenatal care and standard health education materials.

Follow-up will be conducted during pregnancy and at delivery. The primary outcome is the incidence of GDM diagnosed according to routine clinical criteria during pregnancy. Secondary outcomes include gestational weight gain, cesarean delivery, macrosomia, and selected maternal and neonatal outcomes. Safety monitoring will focus on possible adverse events related to lifestyle intervention, such as hypoglycemic symptoms or other discomforts.

The findings of this study may help optimize strategies for early risk assessment, intelligent warning, and intervention for GDM, and may contribute to maternal and child health policy and practice in China.

Enrollment

1,200 estimated patients

Sex

Female

Ages

18+ years old

Volunteers

No Healthy Volunteers

Inclusion criteria

  • Pregnant women in early pregnancy (within 13 weeks and 6 days of gestation)
  • Planned delivery at a participating study hospital
  • Age 18 years or older
  • Singleton pregnancy
  • Identified as high risk for gestational diabetes mellitus by the study risk assessment model
  • Willing and able to provide informed consent

Exclusion criteria

  • • Pre-pregnancy diabetes mellitus or overt diabetes diagnosed at the first antenatal visit (fasting blood glucose greater than or equal to 7.0 mmol/L)

    • Pre-existing hypertension, autoimmune disease, major infection, or severe liver or kidney disease
    • Use of medications that affect glucose metabolism, such as corticosteroids or metformin
    • Severe psychiatric disorders
    • Inability or unwillingness to comply with study procedures

Trial design

Primary purpose

Prevention

Allocation

Randomized

Interventional model

Parallel Assignment

Masking

None (Open label)

1,200 participants in 2 patient groups

Digital Health Intervention
Experimental group
Description:
Participants in this arm will receive a digital health intervention in addition to routine antenatal care. The intervention includes online health education, individualized lifestyle guidance, self-management tools, health information delivery, and interactive consultation through a digital platform. The intervention focuses on gestational weight management, diet, physical activity, sleep, and prevention of gestational diabetes mellitus.
Treatment:
Behavioral: Digital Health Lifestyle Intervention
Usual Care
No Intervention group
Description:
Participants in this arm will receive routine antenatal care and standard pregnancy health education provided by the hospital, without additional digital health intervention.

Trial contacts and locations

2

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Central trial contact

Jue Liu, PhD

Data sourced from clinicaltrials.gov

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