A machine learning algorithm for predicting maternal readmission for hypertensive disorders of pregnancy

被引:26
|
作者
Hoffman, Matthew K. [1 ]
Ma, Nicholas [2 ]
Roberts, Andrew [2 ]
机构
[1] Christiana Care Hlth Syst, Dept Obstet & Gynecol, Newark, DE 19713 USA
[2] Cerner Corp, Cerner Intelligence, Kansas City, MO USA
关键词
machine learning; preeclampsia; readmission; MORTALITY;
D O I
10.1016/j.ajogmf.2020.100250
中图分类号
R71 [妇产科学];
学科分类号
100211 ;
摘要
BACKGROUND: Maternal postpartum hypertensive emergency is a major cause of maternal mortality and maternal readmission, yet prediction of women who require readmission is limited with false negatives and false positives. OBJECTIVE: This study aimed to develop and validate a predictive algorithm for maternal postpartum readmission from complications of hypertensive disorders of pregnancy using machine learning. STUDY DESIGN: We performed a cohort study of pregnant women delivering at a single institution using prospectively collected clinical information available from the electronic medical record at the time of discharge. Our primary outcome was readmission within 42 days of delivery for complications of hypertensive disorders of pregnancy. The data set was divided into a derivation and a separate validation cohort. In the derivation cohort, 10 independent data sets were created by randomly suppressing 10% of the population, and then clinical features predictive of complications of hypertensive disorders of pregnancy were analyzed using machine learning to optimize the area under the curve. Once an optimal model was determined, this model was then validated using a second independent validation cohort. RESULTS: A total of 20,032 delivering women with 238 readmissions for complications of hypertensive disorders of pregnancy (1.2%) were included in the derivation cohort. The validation cohort consisted of 5823 women with 82 readmissions for complications of hypertensive disorders of pregnancy (1.4%). The demographics were similar between the 2 populations as was the test performance characteristics (area under the curve, 0.85 in the derivation cohort vs 0.81 in the validation cohort). Both the derivation and validation algorithms used 31 clinical features that were found to be comparably predictive in both models. CONCLUSION: In this evaluation of a machine learning algorithm, readmission for complications of hypertensive disorders of pregnancy can be predicted with reasonable accuracy using clinical data at the time of discharge. Validation of this model in other care settings is necessary to validate its utility.
引用
收藏
页数:7
相关论文
共 50 条
  • [1] Hypertensive Disorders Of Pregnancy And Postpartum Readmission
    Tvina, Alina
    Ahrens, Alexandra
    Palatnik, Anna
    HYPERTENSION, 2023, 80
  • [2] Predicting readmission after bariatric surgery using machine learning
    Butler, Logan R.
    Chen, Kevin A.
    Hsu, Justin
    Kapadia, Muneera R.
    Gomez, Shawn M.
    Farrell, Timothy M.
    SURGERY FOR OBESITY AND RELATED DISEASES, 2023, 19 (11) : 1236 - 1244
  • [3] Predicting hospital readmission in patients with mental or substance use disorders: A machine learning approach
    Morel, Didier
    Yu, Kalvin C.
    Liu-Ferrara, Ann
    Caceres-Suriel, Ambiorix J.
    Kurtz, Stephan G.
    Tabak, Ying P.
    INTERNATIONAL JOURNAL OF MEDICAL INFORMATICS, 2020, 139
  • [4] Predictive models of hypertensive disorders in pregnancy based on support vector machine algorithm
    Yang, Lin
    Sun, Ge
    Wang, Anran
    Jiang, Hongqing
    Zhang, Song
    Yang, Yimin
    Li, Xuwen
    Hao, Dongmei
    Xu, Mingzhou
    Shao, Jing
    TECHNOLOGY AND HEALTH CARE, 2020, 28 : S181 - S186
  • [5] Machine learning-based protein signatures for differentiating hypertensive disorders of pregnancy
    Bincy Varghese
    Chippy Anna Joy
    Jhansi Venkata Nagamani Josyula
    Shraddha Jangili
    R. K. Talukdar
    Srinivas Rao Mutheneni
    Ramu Adela
    Hypertension Research, 2023, 46 : 2513 - 2526
  • [6] Machine learning-based protein signatures for differentiating hypertensive disorders of pregnancy
    Varghese, Bincy
    Joy, Chippy Anna
    Josyula, Jhansi Venkata Nagamani
    Jangili, Shraddha
    Talukdar, R. K.
    Mutheneni, Srinivas Rao
    Adela, Ramu
    HYPERTENSION RESEARCH, 2023, 46 (11) : 2513 - 2526
  • [7] Maternal Hypertensive Pregnancy Disorders and Mental Disorders in Children
    Lahti-Pulkkinen, Marius
    Girchenko, Polina
    Tuovinen, Soile
    Sammallahti, Sara
    Reynolds, Rebecca M.
    Lahti, Jari
    Heinonen, Kati
    Lipsanen, Jari
    Hamalainen, Esa
    Villa, Pia M.
    Kajantie, Eero
    Laivuori, Hannele
    Raikkonen, Katri
    HYPERTENSION, 2020, 75 (06) : 1429 - 1438
  • [8] Integrated metabolomics and machine learning approach to predict hypertensive disorders of pregnancy
    Varghese, Bincy
    Jala, Aishwarya
    Meka, Soumya
    Adla, Deepthi
    Jangili, Shraddha
    Talukdar, R. K.
    Mutheneni, Srinivasa Rao
    Borkar, Roshan M.
    Adela, Ramu
    AMERICAN JOURNAL OF OBSTETRICS & GYNECOLOGY MFM, 2023, 5 (02)
  • [9] Maternal-fetal outcomes of women with hypertensive disorders of pregnancy
    Xavier, Ivete Matias
    Zimmermann Simoes, Ana Carolina
    de Oliveira, Ronnier
    Barros, Yasha Emerenciano
    Alves Sarmento, Ayane Cristine
    de Medeiros, Kleyton Santos
    Ferreira Costa, Ana Paula
    Korkes, Henri
    Goncalves, Ana Katherine
    REVISTA DA ASSOCIACAO MEDICA BRASILEIRA, 2023, 69 (06):
  • [10] Maternal height and risk of hypertensive disorders in pregnancy
    Lao, Terence T.
    Hui, Annie S. Y.
    Sahota, Daljit S.
    Leung, Tak-Yeung
    JOURNAL OF MATERNAL-FETAL & NEONATAL MEDICINE, 2019, 32 (09) : 1420 - 1425