Design, construction, and validation of obstetric risk classification systems to predict intensive care unit admission

Author:

Soares Fabiano Miguel1ORCID,da Rocha Carvalho Rosa Lívia Ohana2ORCID,Cecatti José Guilherme1ORCID,Luz Adriana Gomes1ORCID,Awe Oluwafunmilola Deborah1ORCID,Laureano Estevão Esmi2ORCID,de Carvalho Pacagnella Rodolfo1ORCID

Affiliation:

1. Department of Obstetrics and Gynecology, Faculty of Medical Sciences State University of Campinas Campinas SP Brazil

2. Department of Applied and Computational Mathematics, Institute of Mathematics, Statistics and Scientific Computing State University of Campinas Campinas SP Brazil

Abstract

AbstractIntroductionTo develop and validate a support tool for healthcare providers, enabling them to make precise and critical decisions regarding intensive care unit (ICU) admissions for high‐risk pregnant women, thus enhancing maternal outcomes.MethodsThis retrospective study involves secondary data analysis of information gathered from 9550 pregnant women, who had severe maternal morbidity (any unexpected complication during labor and delivery that leads to substantial short‐term or long‐term health issues for the mother), collected between 2009 and 2010 from the Brazilian Network for Surveillance of Severe Maternal Morbidity, encompassing 27 obstetric reference centers in Brazil. Machine‐learning models, including decision trees, Random Forest, Gradient Boosting Machine (GBM), and Extreme Gradient Boosting (XGBoost), were employed to create a risk prediction tool for ICU admission. Subsequently, sensitivity analysis was conducted to compare the accuracy, predictive power, sensitivity, and specificity of these models, with differences analyzed using the Wilcoxon test.ResultsThe XGBoost algorithm demonstrated superior efficiency, achieving an accuracy rate of 85%, sensitivity of 42%, specificity of 97%, and an area under the receiver operating characteristic curve of 86.7%. Notably, the estimated prevalence of ICU utilization by the model (11.6%) differed from the prevalence of ICU use from the study (21.52%).ConclusionThe developed risk engine yielded positive results, emphasizing the need to optimize intensive care bed utilization and objectively identify high‐risk pregnant women requiring these services. This approach promises to enhance the effective and efficient management of pregnant women, particularly in resource‐constrained regions worldwide. By streamlining ICU admissions for high‐risk cases, healthcare providers can better allocate critical resources, ultimately contributing to improved maternal health outcomes.

Publisher

Wiley

Reference75 articles.

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