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Predicting resource-dependent maternal health outcomes at a referral hospital in Zanzibar using patient trajectories and mathematical modeling

Poor intra-facility maternity care is a major contributor to maternal mortality in low- and middle-income countries. Close to 830 women die each day due to preventable maternal complications, partly due to the increasing number of women giving birth in health facilities that are not adequately resou...

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Autores principales: Nadkarni, Devika, Minocha, Avijit, Harpaldas, Harshit, Kim, Grace, Gopaluni, Anuraag, Gravelyn, Sara, Rashid, Sarem, Helfrich, Anna, Clifford, Katie, Herklots, Tanneke, Meguid, Tarek, Jacod, Benoit, Desai, Darash, Zaman, Muhammad H.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2019
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6400335/
https://www.ncbi.nlm.nih.gov/pubmed/30835755
http://dx.doi.org/10.1371/journal.pone.0212753
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author Nadkarni, Devika
Minocha, Avijit
Harpaldas, Harshit
Kim, Grace
Gopaluni, Anuraag
Gravelyn, Sara
Rashid, Sarem
Helfrich, Anna
Clifford, Katie
Herklots, Tanneke
Meguid, Tarek
Jacod, Benoit
Desai, Darash
Zaman, Muhammad H.
author_facet Nadkarni, Devika
Minocha, Avijit
Harpaldas, Harshit
Kim, Grace
Gopaluni, Anuraag
Gravelyn, Sara
Rashid, Sarem
Helfrich, Anna
Clifford, Katie
Herklots, Tanneke
Meguid, Tarek
Jacod, Benoit
Desai, Darash
Zaman, Muhammad H.
author_sort Nadkarni, Devika
collection PubMed
description Poor intra-facility maternity care is a major contributor to maternal mortality in low- and middle-income countries. Close to 830 women die each day due to preventable maternal complications, partly due to the increasing number of women giving birth in health facilities that are not adequately resourced to manage growing patient populations. Barriers to adequate care during the ‘last mile’ of healthcare delivery are attributable to deficiencies at multiple levels: education, staff, medication, facilities, and delays in receiving care. Moreover, the scope and multi-scale interdependence of these factors make individual contributions of each challenging to analyze, particularly in settings where basic data registration is often lacking. To address this need, we have designed and implemented a novel systems-level and dynamic mathematical model that simulates the impact of hospital resource allocations on maternal mortality rates at Mnazi Mmoja Hospital (MMH), a referral hospital in Zanzibar, Tanzania. The purpose of this model is to provide a rigorous and flexible tool that enables hospital administrators and public health officials to quantitatively analyze the impact of resource constraints on patient outcomes within the maternity ward, and prioritize key areas for further human or capital investment. Currently, no such tool exists to assist administrators and policy makers with effective resource allocation and planning. This paper describes the structure and construct of the model, provides validation of the assumptions made with anonymized patient data and discusses the predictive capacity of our model. Application of the model to specific resource allocations, maternal treatment plans, and hospital loads at MMH indicates through quantitative results that medicine stocking schedules and staff allocations are key areas that can be addressed to reduce mortality by up to 5-fold. With data-driven evidence provided by the model, hospital staff, administration, and the local ministries of health can enact policy changes and implement targeted interventions to improve maternal health outcomes at MMH. While our model is able to determine specific gaps in resources and health care delivery specifically at MMH, the model should be viewed as an additional tool that may be used by other facilities seeking to analyze and improve maternal health outcomes in resource constrained environments.
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spelling pubmed-64003352019-03-17 Predicting resource-dependent maternal health outcomes at a referral hospital in Zanzibar using patient trajectories and mathematical modeling Nadkarni, Devika Minocha, Avijit Harpaldas, Harshit Kim, Grace Gopaluni, Anuraag Gravelyn, Sara Rashid, Sarem Helfrich, Anna Clifford, Katie Herklots, Tanneke Meguid, Tarek Jacod, Benoit Desai, Darash Zaman, Muhammad H. PLoS One Research Article Poor intra-facility maternity care is a major contributor to maternal mortality in low- and middle-income countries. Close to 830 women die each day due to preventable maternal complications, partly due to the increasing number of women giving birth in health facilities that are not adequately resourced to manage growing patient populations. Barriers to adequate care during the ‘last mile’ of healthcare delivery are attributable to deficiencies at multiple levels: education, staff, medication, facilities, and delays in receiving care. Moreover, the scope and multi-scale interdependence of these factors make individual contributions of each challenging to analyze, particularly in settings where basic data registration is often lacking. To address this need, we have designed and implemented a novel systems-level and dynamic mathematical model that simulates the impact of hospital resource allocations on maternal mortality rates at Mnazi Mmoja Hospital (MMH), a referral hospital in Zanzibar, Tanzania. The purpose of this model is to provide a rigorous and flexible tool that enables hospital administrators and public health officials to quantitatively analyze the impact of resource constraints on patient outcomes within the maternity ward, and prioritize key areas for further human or capital investment. Currently, no such tool exists to assist administrators and policy makers with effective resource allocation and planning. This paper describes the structure and construct of the model, provides validation of the assumptions made with anonymized patient data and discusses the predictive capacity of our model. Application of the model to specific resource allocations, maternal treatment plans, and hospital loads at MMH indicates through quantitative results that medicine stocking schedules and staff allocations are key areas that can be addressed to reduce mortality by up to 5-fold. With data-driven evidence provided by the model, hospital staff, administration, and the local ministries of health can enact policy changes and implement targeted interventions to improve maternal health outcomes at MMH. While our model is able to determine specific gaps in resources and health care delivery specifically at MMH, the model should be viewed as an additional tool that may be used by other facilities seeking to analyze and improve maternal health outcomes in resource constrained environments. Public Library of Science 2019-03-05 /pmc/articles/PMC6400335/ /pubmed/30835755 http://dx.doi.org/10.1371/journal.pone.0212753 Text en © 2019 Nadkarni et al http://creativecommons.org/licenses/by/4.0/ This is an open access article distributed under the terms of the Creative Commons Attribution License (http://creativecommons.org/licenses/by/4.0/) , which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
spellingShingle Research Article
Nadkarni, Devika
Minocha, Avijit
Harpaldas, Harshit
Kim, Grace
Gopaluni, Anuraag
Gravelyn, Sara
Rashid, Sarem
Helfrich, Anna
Clifford, Katie
Herklots, Tanneke
Meguid, Tarek
Jacod, Benoit
Desai, Darash
Zaman, Muhammad H.
Predicting resource-dependent maternal health outcomes at a referral hospital in Zanzibar using patient trajectories and mathematical modeling
title Predicting resource-dependent maternal health outcomes at a referral hospital in Zanzibar using patient trajectories and mathematical modeling
title_full Predicting resource-dependent maternal health outcomes at a referral hospital in Zanzibar using patient trajectories and mathematical modeling
title_fullStr Predicting resource-dependent maternal health outcomes at a referral hospital in Zanzibar using patient trajectories and mathematical modeling
title_full_unstemmed Predicting resource-dependent maternal health outcomes at a referral hospital in Zanzibar using patient trajectories and mathematical modeling
title_short Predicting resource-dependent maternal health outcomes at a referral hospital in Zanzibar using patient trajectories and mathematical modeling
title_sort predicting resource-dependent maternal health outcomes at a referral hospital in zanzibar using patient trajectories and mathematical modeling
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6400335/
https://www.ncbi.nlm.nih.gov/pubmed/30835755
http://dx.doi.org/10.1371/journal.pone.0212753
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