Predicting Gestational Diabetes and other maternity-related conditions using machine learning

Machine Learning
Streamlit
Diabetes
Maternity
Women's Health
Author
Affiliation

Rochelle Francis-Reid

Epsom and St Helier University Hospitals NHS Trust

Maternity-related conditions, such as gestational diabetes, can have significant impacts on the health of both the mother and baby if not identified early. Current approaches often detect these conditions after symptoms appear, potentially delaying important interventions. This project aims to use machine learning to predict the likelihood of developing gestational diabetes and other related conditions early in pregnancy, allowing for timely interventions and personalised care.

The aim of this project is to develop a machine learning model that predicts the likelihood of gestational diabetes and other maternity-related conditions based on patient data. The model will serve as a decision support tool for clinicians to provide proactive and personalised care, improving health outcomes for mothers and babies.

The project will generate :