Leveraging digital health and machine learning models to forecast adverse maternal outcome in low resource settings, Geita Tanzania
October 01, 2024
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Project Summary
Tanzania’s maternal mortality ratio remains alarmingly high at 238 deaths per 100,000 live births. To address this, PHIT, with support from the Bill & Melinda Gates Foundation, launched a two‑year project using digital health and machine learning to predict adverse maternal outcomes. A tablet‑based system streamlined ANC data collection, and over 187,000 client records were used to train an XGBoost model. The model achieved 99% accuracy and 43% precision in detecting gestational hypertension risk, showing the power of AI to ease provider workload and improve early detection in low‑resource settings.
Key Highlights
187,438
client records used to train the model
99%
model accuracy for gestational hypertension risk
Tablet‑based
digital data entry streamlines ANC screening