First-Trimester Gestational Diabetes Mellitus Risk Prediction with Machine Learning Techniques: Results from the BORN2020 Cohort Study
Nikolaos Pazaras, Antonios Siargkas, Antigoni Tranidou, Aikaterini Apostolopoulou, Ioannis Tsakiridis, Panagiotis D. Bamidis, Sofoklis Stavros, Anastasios Potiris, Michail Chourdakis, Themistoklis Dagklis

TL;DR
Researchers used machine learning on first-trimester data to predict gestational diabetes risk, finding that basic clinical factors perform as well as detailed dietary data.
Contribution
This study is one of the first to explore early gestational diabetes prediction using machine learning with first-trimester clinical and dietary data.
Findings
The best model achieved an AUC-ROC of 0.664 using first-trimester data.
Routine clinical variables performed as well as detailed dietary data in predicting GDM.
Maternal age and pre-pregnancy BMI were the strongest predictors.
Abstract
Background: Gestational diabetes mellitus (GDM) affects many pregnancies worldwide and is associated with adverse maternal and fetal outcomes. Current screening at 24–28 weeks limits opportunities for early intervention. We evaluated whether machine learning (ML) models using first-trimester clinical and dietary data can predict GDM risk before the standard oral glucose tolerance test. Methods: We analyzed data from 797 pregnant women enrolled in the BORN2020 prospective cohort study (Thessaloniki, Greece). Ten ML algorithms were evaluated across five class-imbalance handling strategies using stratified 5-fold cross-validation, with final evaluation on an independent 20% held-out test set. Features included maternal demographics, obstetric history, lifestyle factors, and 22 dietary micronutrient intakes from the pre-pregnancy period assessed by Food Frequency Questionnaire. Results: The…
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Taxonomy
TopicsGestational Diabetes Research and Management · Pregnancy and preeclampsia studies · Preterm Birth and Chorioamnionitis
