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Abstract

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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IDM Symposium, October 2024

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

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187,438

client records used to train the model

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99%

model accuracy for gestational hypertension risk

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Tablet‑based

digital data entry streamlines ANC screening

AI‑powered early warning systems can transform maternal health by enabling timely interventions and reducing preventable deaths.