Skip to main content
Journal cover image

External Validation of Postpartum Hemorrhage Prediction Models Using Electronic Health Record Data.

Publication ,  Journal Article
Meyer, SR; Carver, A; Joo, H; Venkatesh, KK; Jelovsek, JE; Klumpner, TT; Singh, K
Published in: Am J Perinatol
April 2024

OBJECTIVE: A recent study leveraging machine learning methods found that postpartum hemorrhage (PPH) can be predicted accurately at the time of labor admission in the U.S. Consortium for Safe Labor (CSL) dataset, with a C-statistic as high as 0.93. These CSL models were developed in older data (2002-2008) and used an estimated blood loss (EBL) of ≥1,000 mL to define PPH. We sought to externally validate these models using a more recent cohort of births where blood loss was measured using quantitative blood loss (QBL) methods. STUDY DESIGN: Using data from 5,261 deliveries between February 1, 2019 and May 11, 2020 at a single tertiary hospital, we mapped our electronic health record (EHR) data to the 55 predictors described in previously published CSL models. PPH was defined as QBL ≥1,000 mL within 24 hours after delivery. Model discrimination and calibration of the four CSL models were measured using our cohort. In a secondary analysis, we fit new models in our study cohort using the same predictors and algorithms as the original CSL models. RESULTS: The original study cohort had a substantially lower rate of PPH, 4.8% (7,279/228,438) versus 25% (1,321/5,261), possibly due to differences in measurement. The CSL models had lower discrimination in our study cohort, with a C-statistic as high as 0.57 (logistic regression). Models refit in our study cohort achieved better discrimination, with a C-statistic as high as 0.64 (random forest). Calibration improved in the refit models as compared with the original models. CONCLUSION: The CSL models' accuracy was lower in a contemporary EHR where PPH is assessed using QBL. As institutions continue to adopt QBL methods, further data are needed to understand the differences between EBL and QBL to enable accurate prediction of PPH. KEY POINTS: · Machine learning methods may help predict PPH.. · EBL models do not generalize when QBL is used.. · Blood loss estimation alters model accuracy..

Duke Scholars

Published In

Am J Perinatol

DOI

EISSN

1098-8785

Publication Date

April 2024

Volume

41

Issue

5

Start / End Page

598 / 605

Location

United States

Related Subject Headings

  • Pregnancy
  • Postpartum Hemorrhage
  • Obstetrics & Reproductive Medicine
  • Labor, Obstetric
  • Humans
  • Female
  • Electronic Health Records
  • Aged
  • 4204 Midwifery
  • 3215 Reproductive medicine
 

Citation

APA
Chicago
ICMJE
MLA
NLM
Meyer, S. R., Carver, A., Joo, H., Venkatesh, K. K., Jelovsek, J. E., Klumpner, T. T., & Singh, K. (2024). External Validation of Postpartum Hemorrhage Prediction Models Using Electronic Health Record Data. Am J Perinatol, 41(5), 598–605. https://doi.org/10.1055/a-1745-1348
Meyer, Sean R., Alissa Carver, Hyeon Joo, Kartik K. Venkatesh, J Eric Jelovsek, Thomas T. Klumpner, and Karandeep Singh. “External Validation of Postpartum Hemorrhage Prediction Models Using Electronic Health Record Data.Am J Perinatol 41, no. 5 (April 2024): 598–605. https://doi.org/10.1055/a-1745-1348.
Meyer SR, Carver A, Joo H, Venkatesh KK, Jelovsek JE, Klumpner TT, et al. External Validation of Postpartum Hemorrhage Prediction Models Using Electronic Health Record Data. Am J Perinatol. 2024 Apr;41(5):598–605.
Meyer, Sean R., et al. “External Validation of Postpartum Hemorrhage Prediction Models Using Electronic Health Record Data.Am J Perinatol, vol. 41, no. 5, Apr. 2024, pp. 598–605. Pubmed, doi:10.1055/a-1745-1348.
Meyer SR, Carver A, Joo H, Venkatesh KK, Jelovsek JE, Klumpner TT, Singh K. External Validation of Postpartum Hemorrhage Prediction Models Using Electronic Health Record Data. Am J Perinatol. 2024 Apr;41(5):598–605.
Journal cover image

Published In

Am J Perinatol

DOI

EISSN

1098-8785

Publication Date

April 2024

Volume

41

Issue

5

Start / End Page

598 / 605

Location

United States

Related Subject Headings

  • Pregnancy
  • Postpartum Hemorrhage
  • Obstetrics & Reproductive Medicine
  • Labor, Obstetric
  • Humans
  • Female
  • Electronic Health Records
  • Aged
  • 4204 Midwifery
  • 3215 Reproductive medicine