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Data-Driven Risk Stratification for Preterm Birth in Brazil: Development of a Machine Learning-Based Innovation for Health Care

Identifying the preventable causes and performing early risk stratification of pregnant women are instrumental to develop strategies to prevent and reduce preterm birth (PTB). The ability to identify at-risk pregnancies and to enroll women in prevention strategies has been difficult due to complexity of associated risk factors. The study aims to combine different national level data sources to understand the main predictors of PTB and develop a machine-learning-based predictive model to conduct automated risk stratification at the point of care level, integrated with advanced data visualization for clinical decision support.

Grant ID
DataScience 12
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On
Show on Spoke
On
Follow-on Funding
Off
Lead Funding Organization
Principal Investigator
Individual Funder Information
Funding Organization
Funding Amount (in original currency)
184000.00
Funding Currency
BRL
Exchange Rate (at time of payment)
0.2700000000
Funding Amount (in USD)
49680.00
Project Type
Funding Date Range
-
Funding Total (In US dollars)
49680.00
Co-Funded
False