Development of machine learning models to predict gestational diabetes risk in the first half of pregnancy.
Gabriel CubillosMax MonckebergAlejandra PlazaMaria MorganPablo A EstevezMahesh ChoolaniMatthew W KempSebastian Enrique IllanesClaudio A PerezPublished in: BMC pregnancy and childbirth (2023)
The principal findings of our study are: Early prediction of GDM within early stages of pregnancy using regular examinations/exams; the development and optimization of twelve different ML models and their hyperparameters to achieve the highest prediction performance; a novel data augmentation method is proposed to allow reaching excellent GDM prediction results with various models.