Predicting vaginal delivery after labor induction using machine learning: Development of a multivariable prediction model
Iolanda Ferreira,
Joana Simões,
João Correia
et al.
Abstract:IntroductionInduction of labor, often used for pregnancy termination, has globally rising rates, especially in high‐income countries where pregnant women present with more comorbidities. Consequently, concerns on a potential rise in cesarean section (CS) rates after induction of labor (IOL) demand for improved counseling on delivery mode within this context.Material and MethodsWe aim to develop a prognostic model for predicting vaginal delivery after labor induction using computational learning. Secondary aims… Show more
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