Cargando…

Prediction of postpartum hemorrhage (PPH) using machine learning algorithms in a Kenyan population

INTRODUCTION: Postpartum hemorrhage (PPH) is a significant cause of maternal mortality worldwide, particularly in low- and middle-income countries. It is essential to develop effective prediction models to identify women at risk of PPH and implement appropriate interventions to reduce maternal morbi...

Descripción completa

Detalles Bibliográficos
Autores principales: Shah, Santosh Yogendra, Saxena, Sumant, Rani, Satya Pavitra, Nelaturi, Naresh, Gill, Sheena, Tippett Barr, Beth, Were, Joyce, Khagayi, Sammy, Ouma, Gregory, Akelo, Victor, Norwitz, Errol R., Ramakrishnan, Rama, Onyango, Dickens, Teltumbade, Manoj
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10419202/
https://www.ncbi.nlm.nih.gov/pubmed/37575959
http://dx.doi.org/10.3389/fgwh.2023.1161157
_version_ 1785088459568840704
author Shah, Santosh Yogendra
Saxena, Sumant
Rani, Satya Pavitra
Nelaturi, Naresh
Gill, Sheena
Tippett Barr, Beth
Were, Joyce
Khagayi, Sammy
Ouma, Gregory
Akelo, Victor
Norwitz, Errol R.
Ramakrishnan, Rama
Onyango, Dickens
Teltumbade, Manoj
author_facet Shah, Santosh Yogendra
Saxena, Sumant
Rani, Satya Pavitra
Nelaturi, Naresh
Gill, Sheena
Tippett Barr, Beth
Were, Joyce
Khagayi, Sammy
Ouma, Gregory
Akelo, Victor
Norwitz, Errol R.
Ramakrishnan, Rama
Onyango, Dickens
Teltumbade, Manoj
author_sort Shah, Santosh Yogendra
collection PubMed
description INTRODUCTION: Postpartum hemorrhage (PPH) is a significant cause of maternal mortality worldwide, particularly in low- and middle-income countries. It is essential to develop effective prediction models to identify women at risk of PPH and implement appropriate interventions to reduce maternal morbidity and mortality. This study aims to predict the occurrence of postpartum hemorrhage using machine learning models based on antenatal, intrapartum, and postnatal visit data obtained from the Kenya Antenatal and Postnatal Care Research Collective cohort. METHOD: Four machine learning models – logistic regression, naïve Bayes, decision tree, and random forest – were constructed using 67% training data (1,056/1,576). The training data was further split into 67% for model building and 33% cross validation. Once the models are built, the remaining 33% (520/1,576) independent test data was used for external validation to confirm the models' performance. Models were fine-tuned using feature selection through extra tree classifier technique. Model performance was assessed using accuracy, sensitivity, and area under the curve (AUC) of the receiver operating characteristics (ROC) curve. RESULT: The naïve Bayes model performed best with 0.95 accuracy, 0.97 specificity, and 0.76 AUC. Seven factors (anemia, limited prenatal care, hemoglobin concentrations, signs of pallor at intrapartum, intrapartum systolic blood pressure, intrapartum diastolic blood pressure, and intrapartum respiratory rate) were associated with PPH prediction in Kenyan population. DISCUSSION: This study demonstrates the potential of machine learning models in predicting PPH in the Kenyan population. Future studies with larger datasets and more PPH cases should be conducted to improve prediction performance of machine learning model. Such prediction algorithms would immensely help to construct a personalized obstetric path for each pregnant patient, improve resource allocation, and reduce maternal mortality and morbidity.
format Online
Article
Text
id pubmed-10419202
institution National Center for Biotechnology Information
language English
publishDate 2023
publisher Frontiers Media S.A.
record_format MEDLINE/PubMed
spelling pubmed-104192022023-08-12 Prediction of postpartum hemorrhage (PPH) using machine learning algorithms in a Kenyan population Shah, Santosh Yogendra Saxena, Sumant Rani, Satya Pavitra Nelaturi, Naresh Gill, Sheena Tippett Barr, Beth Were, Joyce Khagayi, Sammy Ouma, Gregory Akelo, Victor Norwitz, Errol R. Ramakrishnan, Rama Onyango, Dickens Teltumbade, Manoj Front Glob Womens Health Global Women's Health INTRODUCTION: Postpartum hemorrhage (PPH) is a significant cause of maternal mortality worldwide, particularly in low- and middle-income countries. It is essential to develop effective prediction models to identify women at risk of PPH and implement appropriate interventions to reduce maternal morbidity and mortality. This study aims to predict the occurrence of postpartum hemorrhage using machine learning models based on antenatal, intrapartum, and postnatal visit data obtained from the Kenya Antenatal and Postnatal Care Research Collective cohort. METHOD: Four machine learning models – logistic regression, naïve Bayes, decision tree, and random forest – were constructed using 67% training data (1,056/1,576). The training data was further split into 67% for model building and 33% cross validation. Once the models are built, the remaining 33% (520/1,576) independent test data was used for external validation to confirm the models' performance. Models were fine-tuned using feature selection through extra tree classifier technique. Model performance was assessed using accuracy, sensitivity, and area under the curve (AUC) of the receiver operating characteristics (ROC) curve. RESULT: The naïve Bayes model performed best with 0.95 accuracy, 0.97 specificity, and 0.76 AUC. Seven factors (anemia, limited prenatal care, hemoglobin concentrations, signs of pallor at intrapartum, intrapartum systolic blood pressure, intrapartum diastolic blood pressure, and intrapartum respiratory rate) were associated with PPH prediction in Kenyan population. DISCUSSION: This study demonstrates the potential of machine learning models in predicting PPH in the Kenyan population. Future studies with larger datasets and more PPH cases should be conducted to improve prediction performance of machine learning model. Such prediction algorithms would immensely help to construct a personalized obstetric path for each pregnant patient, improve resource allocation, and reduce maternal mortality and morbidity. Frontiers Media S.A. 2023-07-28 /pmc/articles/PMC10419202/ /pubmed/37575959 http://dx.doi.org/10.3389/fgwh.2023.1161157 Text en © 2023 Shah, Saxena, Rani, Nelaturi, Gill, Tippett Barr, Were, Khagayi, Ouma, Akelo, Norwitz, Ramakrishnan, Onyango and Teltumbade. https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY) (https://creativecommons.org/licenses/by/4.0/) . The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.
spellingShingle Global Women's Health
Shah, Santosh Yogendra
Saxena, Sumant
Rani, Satya Pavitra
Nelaturi, Naresh
Gill, Sheena
Tippett Barr, Beth
Were, Joyce
Khagayi, Sammy
Ouma, Gregory
Akelo, Victor
Norwitz, Errol R.
Ramakrishnan, Rama
Onyango, Dickens
Teltumbade, Manoj
Prediction of postpartum hemorrhage (PPH) using machine learning algorithms in a Kenyan population
title Prediction of postpartum hemorrhage (PPH) using machine learning algorithms in a Kenyan population
title_full Prediction of postpartum hemorrhage (PPH) using machine learning algorithms in a Kenyan population
title_fullStr Prediction of postpartum hemorrhage (PPH) using machine learning algorithms in a Kenyan population
title_full_unstemmed Prediction of postpartum hemorrhage (PPH) using machine learning algorithms in a Kenyan population
title_short Prediction of postpartum hemorrhage (PPH) using machine learning algorithms in a Kenyan population
title_sort prediction of postpartum hemorrhage (pph) using machine learning algorithms in a kenyan population
topic Global Women's Health
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10419202/
https://www.ncbi.nlm.nih.gov/pubmed/37575959
http://dx.doi.org/10.3389/fgwh.2023.1161157
work_keys_str_mv AT shahsantoshyogendra predictionofpostpartumhemorrhagepphusingmachinelearningalgorithmsinakenyanpopulation
AT saxenasumant predictionofpostpartumhemorrhagepphusingmachinelearningalgorithmsinakenyanpopulation
AT ranisatyapavitra predictionofpostpartumhemorrhagepphusingmachinelearningalgorithmsinakenyanpopulation
AT nelaturinaresh predictionofpostpartumhemorrhagepphusingmachinelearningalgorithmsinakenyanpopulation
AT gillsheena predictionofpostpartumhemorrhagepphusingmachinelearningalgorithmsinakenyanpopulation
AT tippettbarrbeth predictionofpostpartumhemorrhagepphusingmachinelearningalgorithmsinakenyanpopulation
AT werejoyce predictionofpostpartumhemorrhagepphusingmachinelearningalgorithmsinakenyanpopulation
AT khagayisammy predictionofpostpartumhemorrhagepphusingmachinelearningalgorithmsinakenyanpopulation
AT oumagregory predictionofpostpartumhemorrhagepphusingmachinelearningalgorithmsinakenyanpopulation
AT akelovictor predictionofpostpartumhemorrhagepphusingmachinelearningalgorithmsinakenyanpopulation
AT norwitzerrolr predictionofpostpartumhemorrhagepphusingmachinelearningalgorithmsinakenyanpopulation
AT ramakrishnanrama predictionofpostpartumhemorrhagepphusingmachinelearningalgorithmsinakenyanpopulation
AT onyangodickens predictionofpostpartumhemorrhagepphusingmachinelearningalgorithmsinakenyanpopulation
AT teltumbademanoj predictionofpostpartumhemorrhagepphusingmachinelearningalgorithmsinakenyanpopulation