Machine learning for maternal health: Predicting delivery location in a community health worker program in Zanzibar

BackgroundMaternal and neonatal health outcomes in low- and middle-income countries (LMICs) have improved over the last two decades. However, many pregnant women still deliver at home, which increases the health risks for both the mother and the child. Community health worker programs have been broa...

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Published in:Frontiers in Digital Health
Main Authors: Alma Fredriksson, Isabel R. Fulcher, Allyson L. Russell, Tracey Li, Yi-Ting Tsai, Samira S. Seif, Rose N. Mpembeni, Bethany Hedt-Gauthier
Format: Article
Language:English
Published: Frontiers Media S.A. 2022-08-01
Subjects:
Online Access:https://www.frontiersin.org/articles/10.3389/fdgth.2022.855236/full
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author Alma Fredriksson
Isabel R. Fulcher
Isabel R. Fulcher
Allyson L. Russell
Tracey Li
Yi-Ting Tsai
Samira S. Seif
Rose N. Mpembeni
Bethany Hedt-Gauthier
Bethany Hedt-Gauthier
author_facet Alma Fredriksson
Isabel R. Fulcher
Isabel R. Fulcher
Allyson L. Russell
Tracey Li
Yi-Ting Tsai
Samira S. Seif
Rose N. Mpembeni
Bethany Hedt-Gauthier
Bethany Hedt-Gauthier
author_sort Alma Fredriksson
collection DOAJ
container_title Frontiers in Digital Health
description BackgroundMaternal and neonatal health outcomes in low- and middle-income countries (LMICs) have improved over the last two decades. However, many pregnant women still deliver at home, which increases the health risks for both the mother and the child. Community health worker programs have been broadly employed in LMICs to connect women to antenatal care and delivery locations. More recently, employment of digital tools in maternal health programs have resulted in better care delivery and served as a routine mode of data collection. Despite the availability of rich, patient-level data within these digital tools, there has been limited utilization of this type of data to inform program delivery in LMICs.MethodsWe use program data from 38,787 women enrolled in Safer Deliveries, a community health worker program in Zanzibar, to build a generalizable prediction model that accurately predicts whether a newly enrolled pregnant woman will deliver in a health facility. We use information collected during the enrollment visit, including demographic data, health characteristics and current pregnancy information. We apply four machine learning methods: logistic regression, LASSO regularized logistic regression, random forest and an artificial neural network; and three sampling techniques to address the imbalanced data: undersampling of facility deliveries, oversampling of home deliveries and addition of synthetic home deliveries using SMOTE.ResultsOur models correctly predicted the delivery location for 68%–77% of the women in the test set, with slightly higher accuracy when predicting facility delivery versus home delivery. A random forest model with a balanced training set created using undersampling of existing facility deliveries accurately identified 74.4% of women delivering at home.ConclusionsThis model can provide a “real-time” prediction of the delivery location for new maternal health program enrollees and may enable early provision of extra support for individuals at risk of not delivering in a health facility, which has potential to improve health outcomes for both mothers and their newborns. The framework presented here is applicable in other contexts and the selection of input features can easily be adapted to match data availability and other outcomes, both within and beyond maternal health.
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spelling doaj-art-3edefdf430e448a5aa8ebc87ceee4fe62025-08-19T21:45:40ZengFrontiers Media S.A.Frontiers in Digital Health2673-253X2022-08-01410.3389/fdgth.2022.855236855236Machine learning for maternal health: Predicting delivery location in a community health worker program in ZanzibarAlma Fredriksson0Isabel R. Fulcher1Isabel R. Fulcher2Allyson L. Russell3Tracey Li4Yi-Ting Tsai5Samira S. Seif6Rose N. Mpembeni7Bethany Hedt-Gauthier8Bethany Hedt-Gauthier9Department of Biostatistics, Harvard T.H. Chan School of Public Health, Boston, MA, United StatesDepartment of Global Health and Social Medicine, Harvard Medical School, Boston, MA, United StatesHarvard Data Science Initiative, Cambridge, MA, United StatesD-tree International, Dar es Salaam, TanzaniaD-tree International, Dar es Salaam, TanzaniaDepartment of Biostatistics, Harvard T.H. Chan School of Public Health, Boston, MA, United StatesD-tree International, Dar es Salaam, TanzaniaDepartment of Epidemiology and Biostatistics, Muhimbili University of Health and Allied Sciences, Dar es Salaam, TanzaniaDepartment of Biostatistics, Harvard T.H. Chan School of Public Health, Boston, MA, United StatesDepartment of Global Health and Social Medicine, Harvard Medical School, Boston, MA, United StatesBackgroundMaternal and neonatal health outcomes in low- and middle-income countries (LMICs) have improved over the last two decades. However, many pregnant women still deliver at home, which increases the health risks for both the mother and the child. Community health worker programs have been broadly employed in LMICs to connect women to antenatal care and delivery locations. More recently, employment of digital tools in maternal health programs have resulted in better care delivery and served as a routine mode of data collection. Despite the availability of rich, patient-level data within these digital tools, there has been limited utilization of this type of data to inform program delivery in LMICs.MethodsWe use program data from 38,787 women enrolled in Safer Deliveries, a community health worker program in Zanzibar, to build a generalizable prediction model that accurately predicts whether a newly enrolled pregnant woman will deliver in a health facility. We use information collected during the enrollment visit, including demographic data, health characteristics and current pregnancy information. We apply four machine learning methods: logistic regression, LASSO regularized logistic regression, random forest and an artificial neural network; and three sampling techniques to address the imbalanced data: undersampling of facility deliveries, oversampling of home deliveries and addition of synthetic home deliveries using SMOTE.ResultsOur models correctly predicted the delivery location for 68%–77% of the women in the test set, with slightly higher accuracy when predicting facility delivery versus home delivery. A random forest model with a balanced training set created using undersampling of existing facility deliveries accurately identified 74.4% of women delivering at home.ConclusionsThis model can provide a “real-time” prediction of the delivery location for new maternal health program enrollees and may enable early provision of extra support for individuals at risk of not delivering in a health facility, which has potential to improve health outcomes for both mothers and their newborns. The framework presented here is applicable in other contexts and the selection of input features can easily be adapted to match data availability and other outcomes, both within and beyond maternal health.https://www.frontiersin.org/articles/10.3389/fdgth.2022.855236/fullmaternal healthmachine learningdigital healthglobal healthfacility deliverycommunity health worker intervention
spellingShingle Alma Fredriksson
Isabel R. Fulcher
Isabel R. Fulcher
Allyson L. Russell
Tracey Li
Yi-Ting Tsai
Samira S. Seif
Rose N. Mpembeni
Bethany Hedt-Gauthier
Bethany Hedt-Gauthier
Machine learning for maternal health: Predicting delivery location in a community health worker program in Zanzibar
maternal health
machine learning
digital health
global health
facility delivery
community health worker intervention
title Machine learning for maternal health: Predicting delivery location in a community health worker program in Zanzibar
title_full Machine learning for maternal health: Predicting delivery location in a community health worker program in Zanzibar
title_fullStr Machine learning for maternal health: Predicting delivery location in a community health worker program in Zanzibar
title_full_unstemmed Machine learning for maternal health: Predicting delivery location in a community health worker program in Zanzibar
title_short Machine learning for maternal health: Predicting delivery location in a community health worker program in Zanzibar
title_sort machine learning for maternal health predicting delivery location in a community health worker program in zanzibar
topic maternal health
machine learning
digital health
global health
facility delivery
community health worker intervention
url https://www.frontiersin.org/articles/10.3389/fdgth.2022.855236/full
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