2024
DOI: 10.3389/fdata.2024.1291196
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Predicting risk of preterm birth in singleton pregnancies using machine learning algorithms

Qiu-Yan Yu,
Ying Lin,
Yu-Run Zhou
et al.

Abstract: We aimed to develop, train, and validate machine learning models for predicting preterm birth (<37 weeks' gestation) in singleton pregnancies at different gestational intervals. Models were developed based on complete data from 22,603 singleton pregnancies from a prospective population-based cohort study that was conducted in 51 midwifery clinics and hospitals in Wenzhou City of China between 2014 and 2016. We applied Catboost, Random Forest, Stacked Model, Deep Neural Networks (DNN), and Support Vector… Show more

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