The Doppler Project: Machine learning for high-risk pregnancies in Pakistan
Title: Fetal Doppler for Antenatal Risk Stratification (Doppler project)
Team:
Zahra Hoodbhoy (AKU), Babar Hasan (SIUT), Shazia Mohsin (SIUT), Devyani Chowdhury (Cardiology Care for Children, USA), Sergio Sanchez (
Universitat Pompeu Fabra), Josa Pratz (UPF), Bart Bijnens (UPF)
Objectives: Globally, Pakistan has the highest rate of stillbirths and early neonatal mortality (death within 1 week of life). Flow changes in several major arteries of the feto-placental circulation, as detected by Doppler echocardiography, may provide important information regarding fetal compromise which may lead to perinatal morbidity and mortality.
The objective of this project is to build a machine learning algorithm on maternal and fetal characteristics along with Doppler waveforms to predict an adverse perinatal outcome.
Sites: Rehri Goth and Ibrahim Hyderi, Karachi
Timeline: Work is ongoing; anticipated completion, October 2024
Sponsor: Bill and Melinda Gates Foundation $2,525,000