Leveraging Machine Learning to Predict and Assess Disparities in Severe Maternal Morbidity in Maryland

被引:0
作者
Li, Qingfeng [1 ]
Alfonso, Y. Natalia [1 ]
Wolfson, Carrie [1 ]
Aziz, Khyzer B. [2 ]
Creanga, Andreea A. [1 ,3 ]
机构
[1] Johns Hopkins Bloomberg Sch Publ Hlth, Dept Int Hlth, Baltimore, MD 21205 USA
[2] Johns Hopkins Sch Med, Johns Hopkins Childrens Ctr, Baltimore, MD 21205 USA
[3] Johns Hopkins Sch Med, Dept Gynecol & Obstet, Baltimore, MD 21205 USA
基金
美国国家卫生研究院;
关键词
severe maternal morbidity; relative risks; machine learning; PREVENTABILITY; PREECLAMPSIA; HYPERTENSION; PREGNANCY; DELIVERY; OUTCOMES; DEATHS; WOMEN; MODEL;
D O I
10.3390/healthcare13030284
中图分类号
R19 [保健组织与事业(卫生事业管理)];
学科分类号
摘要
Background: Severe maternal morbidity (SMM) is increasing in the United States. The main objective of this study is to test the use of machine learning (ML) techniques to develop models for predicting SMM during delivery hospitalizations in Maryland. Secondarily, we examine disparities in SMM by key sociodemographic characteristics. Methods: We used the linked State Inpatient Database (SID) and the American Hospital Association (AHA) Annual Survey data from Maryland for 2016-2019 (N = 261,226 delivery hospitalizations). We first estimated relative risks for SMM across key sociodemographic factors (e.g., race, income, insurance, and primary language). Then, we fitted LASSO and, for comparison, Logit models with 75 and 18 features. The selection of SMM features was based on clinical expert opinion, a literature review, statistical significance, and computational resource constraints. Various model performance metrics, including the area under the receiver operating characteristic curve (AUC), accuracy, precision, and recall values were computed to compare predictive performance. Results: During 2016-2019, 76 per 10,000 deliveries (1976 of 261,226) were in patients who experienced an SMM event. The Logit model with a full list of 75 features achieved an AUC of 0.71 in the validation dataset, which marginally decreased to 0.69 in the reduced model with 18 features. The LASSO algorithm with the same 18 features demonstrated slightly superior predictive performance and an AUC of 0.80. We found significant disparities in SMM among patients living in low-income areas, with public insurance, and who were non-Hispanic Black or non-English speakers. Conclusion: Our results demonstrate the feasibility of utilizing ML and administrative hospital discharge data for SMM prediction. The low recall score is a limitation across all models we compared, signifying that the algorithms struggle with identifying all SMM cases. This study identified substantial disparities in SMM across various sociodemographic factors. Addressing these disparities requires multifaceted interventions that include improving access to quality care, enhancing cultural competence among healthcare providers, and implementing policies that help mitigate social determinants of health.
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页数:12
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  • [11] First trimester preeclampsia screening and prediction
    Chaemsaithong, Piya
    Sahota, Daljit Singh
    Poon, Liona C.
    [J]. AMERICAN JOURNAL OF OBSTETRICS AND GYNECOLOGY, 2022, 226 (02) : S1071 - +
  • [12] CLINICAL-SIGNIFICANCE OF ELEVATED MEAN ARTERIAL-PRESSURE IN THE 2ND TRIMESTER
    CHESLEY, LC
    SIBAI, BM
    [J]. AMERICAN JOURNAL OF OBSTETRICS AND GYNECOLOGY, 1988, 159 (02) : 275 - 279
  • [13] Comparison of Natural Language Processing of Clinical Notes With a Validated Risk-Stratification Tool to Predict Severe Maternal Morbidity
    Clapp, Mark A.
    Kim, Ellen
    James, Kaitlyn E.
    Perlis, Roy H.
    Kaimal, Anjali J.
    McCoy, Thomas H.
    Easter, Sarah Rae
    [J]. JAMA NETWORK OPEN, 2022, 5 (10) : E2234924
  • [14] Natural language processing of admission notes to predict severe maternal morbidity during the delivery encounter
    Clapp, Mark A.
    Kim, Ellen
    James, Kaitlyn E.
    Perlis, Roy H.
    Kaimal, Anjali J.
    McCoy, Thomas H., Jr.
    [J]. AMERICAN JOURNAL OF OBSTETRICS AND GYNECOLOGY, 2022, 227 (03)
  • [15] Derivation and external validation of risk stratification models for severe maternal morbidity using prenatal encounter diagnosis codes
    Clapp, Mark A.
    McCoy, Thomas H., Jr.
    James, Kaitlyn E.
    Kaimal, Anjali J.
    Perlis, Roy H.
    [J]. JOURNAL OF PERINATOLOGY, 2021, 41 (11) : 2590 - 2596
  • [16] Maternal death in the 21st century: causes, prevention, and relationship to cesarean delivery
    Clark, Steven L.
    Belfort, Michael A.
    Dildy, Gary A.
    Herbst, Melissa A.
    Meyers, Janet A.
    Hankins, Gary D.
    [J]. AMERICAN JOURNAL OF OBSTETRICS AND GYNECOLOGY, 2008, 199 (01) : 36.e1 - 36.e5
  • [17] Pregnancy-Related Acute Kidney Injury in Preeclampsia: Risk Factors and Renal Outcomes
    Conti-Ramsden, Frances, I
    Nathan, Hannah L.
    De Greeff, Annemarie
    Hall, David R.
    Seed, Paul T.
    Chappell, Lucy C.
    Shennan, Andrew H.
    Bramham, K.
    [J]. HYPERTENSION, 2019, 74 (05) : 1144 - 1151
  • [18] Predicting intensive care need in women with preeclampsia using machine learning - a pilot study
    Edvinsson, Camilla
    Bjornsson, Ola
    Erlandsson, Lena
    Hansson, Stefan R.
    [J]. HYPERTENSION IN PREGNANCY, 2024, 43 (01)
  • [19] Development and Validation of an Automated, Real-Time Predictive Model for Postpartum Hemorrhage
    Ende, Holly B.
    Domenico, Henry J.
    Polic, Aleksandra
    Wesoloski, Amber
    Zuckerwise, Lisa C.
    Mccoy, Allison B.
    Woytash, Annastacia R.
    Moore, Ryan P.
    Byrne, Daniel W.
    [J]. OBSTETRICS AND GYNECOLOGY, 2024, 144 (01) : 109 - 117
  • [20] Risk factors and effective management of preeclampsia
    English, Fred A.
    Kenny, Louise C.
    McCarthy, Fergus P.
    [J]. INTEGRATED BLOOD PRESSURE CONTROL, 2015, 8 : 7 - 12