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Machine Learning Models for Prediction of Maternal Hemorrhage and Transfusion: Model Development Study.

Publication ,  Journal Article
Ahmadzia, HK; Dzienny, AC; Bopf, M; Phillips, JM; Federspiel, JJ; Amdur, R; Rice, MM; Rodriguez, L
Published in: JMIR Bioinform Biotechnol
February 5, 2024

BACKGROUND: Current postpartum hemorrhage (PPH) risk stratification is based on traditional statistical models or expert opinion. Machine learning could optimize PPH prediction by allowing for more complex modeling. OBJECTIVE: We sought to improve PPH prediction and compare machine learning and traditional statistical methods. METHODS: We developed models using the Consortium for Safe Labor data set (2002-2008) from 12 US hospitals. The primary outcome was a transfusion of blood products or PPH (estimated blood loss of ≥1000 mL). The secondary outcome was a transfusion of any blood product. Fifty antepartum and intrapartum characteristics and hospital characteristics were included. Logistic regression, support vector machines, multilayer perceptron, random forest, and gradient boosting (GB) were used to generate prediction models. The area under the receiver operating characteristic curve (ROC-AUC) and area under the precision/recall curve (PR-AUC) were used to compare performance. RESULTS: Among 228,438 births, 5760 (3.1%) women had a postpartum hemorrhage, 5170 (2.8%) had a transfusion, and 10,344 (5.6%) met the criteria for the transfusion-PPH composite. Models predicting the transfusion-PPH composite using antepartum and intrapartum features had the best positive predictive values, with the GB machine learning model performing best overall (ROC-AUC=0.833, 95% CI 0.828-0.838; PR-AUC=0.210, 95% CI 0.201-0.220). The most predictive features in the GB model predicting the transfusion-PPH composite were the mode of delivery, oxytocin incremental dose for labor (mU/minute), intrapartum tocolytic use, presence of anesthesia nurse, and hospital type. CONCLUSIONS: Machine learning offers higher discriminability than logistic regression in predicting PPH. The Consortium for Safe Labor data set may not be optimal for analyzing risk due to strong subgroup effects, which decreases accuracy and limits generalizability.

Duke Scholars

Published In

JMIR Bioinform Biotechnol

DOI

EISSN

2563-3570

Publication Date

February 5, 2024

Volume

5

Start / End Page

e52059

Location

Canada
 

Citation

APA
Chicago
ICMJE
MLA
NLM
Ahmadzia, H. K., Dzienny, A. C., Bopf, M., Phillips, J. M., Federspiel, J. J., Amdur, R., … Rodriguez, L. (2024). Machine Learning Models for Prediction of Maternal Hemorrhage and Transfusion: Model Development Study. JMIR Bioinform Biotechnol, 5, e52059. https://doi.org/10.2196/52059
Ahmadzia, Homa Khorrami, Alexa C. Dzienny, Mike Bopf, Jaclyn M. Phillips, Jerome Jeffrey Federspiel, Richard Amdur, Madeline Murguia Rice, and Laritza Rodriguez. “Machine Learning Models for Prediction of Maternal Hemorrhage and Transfusion: Model Development Study.JMIR Bioinform Biotechnol 5 (February 5, 2024): e52059. https://doi.org/10.2196/52059.
Ahmadzia HK, Dzienny AC, Bopf M, Phillips JM, Federspiel JJ, Amdur R, et al. Machine Learning Models for Prediction of Maternal Hemorrhage and Transfusion: Model Development Study. JMIR Bioinform Biotechnol. 2024 Feb 5;5:e52059.
Ahmadzia, Homa Khorrami, et al. “Machine Learning Models for Prediction of Maternal Hemorrhage and Transfusion: Model Development Study.JMIR Bioinform Biotechnol, vol. 5, Feb. 2024, p. e52059. Pubmed, doi:10.2196/52059.
Ahmadzia HK, Dzienny AC, Bopf M, Phillips JM, Federspiel JJ, Amdur R, Rice MM, Rodriguez L. Machine Learning Models for Prediction of Maternal Hemorrhage and Transfusion: Model Development Study. JMIR Bioinform Biotechnol. 2024 Feb 5;5:e52059.

Published In

JMIR Bioinform Biotechnol

DOI

EISSN

2563-3570

Publication Date

February 5, 2024

Volume

5

Start / End Page

e52059

Location

Canada