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Delivery at an inadequate level of maternal care is associated with severe maternal morbidity - 03/04/24

Doi : 10.1016/j.ajog.2024.02.308 
Godwin K. Osei-Poku, MD, DrPH a, , Julia C. Prentice, PhD a, b, Sarah Rae Easter, MD c, Hafsatou Diop, MD, MPH d
a Division of Research and Analysis, Betsy Lehman Center for Patient Safety, Commonwealth of Massachusetts, Boston, MA 
b Department of Psychiatry, Chobanian & Avedisian School of Medicine, Boston University, Boston, MA 
c Division of Maternal-Fetal Medicine, Brigham and Women’s Hospital, Harvard Medical School, Boston, MA 
d Commissioners Office, Massachusetts Department of Public Health, Boston, MA 

Corresponding author: Godwin K. Osei-Poku, MD, DrPH.
Sous presse. Épreuves corrigées par l'auteur. Disponible en ligne depuis le Wednesday 03 April 2024

Abstract

Background

Implementing levels of maternal care is one strategy proposed to reduce maternal morbidity and mortality. The levels of maternal care framework outline individual medical and obstetrical comorbidities, along with hospital resources required for individuals with these different comorbidities to deliver safely. The overall goal is to match individuals to hospitals so that all birthing people get appropriate resources and personnel during delivery to reduce maternal morbidity.

Objective

This study examined the association between delivery in a hospital with an inappropriate level of maternal care and the risk of experiencing severe maternal morbidity.

Study Design

The 40 birthing hospitals in Massachusetts were surveyed using the Centers for Disease Control and Prevention’s Levels of Care Assessment Tool. We linked individual delivery hospitalizations from the Massachusetts Pregnancy to Early Life Longitudinal Data System to hospital-level data from the Levels of Care Assessment Tool surveys. Level of maternal care guidelines were used to outline 16 high-risk conditions warranting delivery at hospitals with resources beyond those considered basic (level I) obstetrical care. We then used the Levels of Care Assessment Tool assigned levels to determine if delivery occurred at a hospital that had the resources to meet an individual’s needs (ie, if a patient received risk-appropriate care). We conducted our analyses in 2 stages. First, multivariable logistic regression models predicted if an individual delivered in a hospital that did not have the resources for their risk condition. The main explanatory variable of interest was if the hospital self-assessed their level of maternal care to be higher than the Levels of Care Assessment Tool assigned level. We then used logistic regression to examine the association between delivery at an inappropriate level hospital and the presence of severe maternal morbidity at delivery.

Results

Among 64,441 deliveries in Massachusetts from January 1 to December 31, 2019, 33.2% (21,415/64,441) had 1 or more of the 16 high-risk conditions that require delivery at a center designated as a level I or higher. Of the 21,415 individuals with a high-risk condition, 13% (2793/21,415), equating to 4% (2793/64,441) of the entire sample, delivered at an inappropriate level of maternal care. Birthing individuals with high-risk conditions who delivered at a hospital with an inappropriate level had elevated odds (adjusted odds ratio, 3.34; 95% confidence interval, 2.24–4.96) of experiencing severe maternal morbidity after adjusting for patient comorbidities, demographics, average hospital severe maternal morbidity rate, hospital level of maternal care, and geographic region.

Conclusion

Birthing people who delivered in a hospital with risk-inappropriate resources were substantially more likely to experience severe maternal morbidity. Delivery in a hospital with a discrepancy in their self-assessment and the Levels of Care Assessment Tool assigned level substantially predicted delivery in a hospital with an inappropriate level of maternal care, suggesting inadequate knowledge of hospitals’ resources and capabilities. Our data demonstrate the potential for the levels of maternal care paradigm to decrease severe maternal morbidity while highlighting the need for robust implementation and education to ensure everyone receives risk-appropriate care.

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Key words : Severe maternal morbidity, inappropriate care, levels of maternal care


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 This study did not receive any funding.
 The authors report no conflict of interest.
 Cite this article as: Osei-Poku GK, Prentice GC, Easter SR, et al. Delivery at an inadequate level of maternal care is associated with severe maternal morbidity. Am J Obstet Gynecol 2024;XX:x.ex–x.ex.


© 2024  Publié par Elsevier Masson SAS.
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