A Comprehensive and Bias-Free Machine Learning Approach for Risk Prediction of Preeclampsia with Severe Features in a Nulliparous Study Cohort

Author:

Lin Yun1ORCID,MALLIA Daniel2,CLARK-SEVILLA Andrea1,CATTO Adam2,LESHCHENKO Alisa2,YAN Qi1,Haas David3ORCID,WAPNER Ronald1,PE'ER Itsik1,RAJA Anita2,SALLEB-AOUISSI Ansaf1

Affiliation:

1. Columbia University

2. CUNY Hunter College

3. Indiana University School of Medicine

Abstract

Abstract Objective Preeclampsia is one of the leading causes of maternal morbidity, with consequences during and after pregnancy. Because of its diverse clinical presentation, preeclampsia is an adverse pregnancy outcome that is uniquely challenging to predict and manage. In this paper, we developed machine learning models that predict the onset of preeclampsia with severe features or eclampsia at discrete time points in a nulliparous pregnant study cohort. Materials and Methods The prospective study cohort to which we applied machine learning is the Nulliparous Pregnancy Outcomes Study: Monitoring Mothers-to-be (nuMoM2b) study, which contains information from eight clinical sites across the US. Maternal serum samples were collected for 1,857 individuals between the first and second trimesters. These patients with serum samples collected are selected as the final cohort. Results Our prediction models achieved an AUROC of 0.72 (95% CI, 0.69–0.76), 0.75 (95% CI, 0.71–0.79), and 0.77 (95% CI, 0.74–0.80), respectively, for the three visits. Our initial models were biased toward non-Hispanic black participants with a high predictive equality ratio of 1.31. We corrected this bias and reduced this ratio to 1.14. The top features stress the importance of using several tests, particularly for biomarkers and ultrasound measurements. Placental analytes were strong predictors for screening for the early onset of preeclampsia with severe features in the first two trimesters. Conclusion Experiments suggest that it is possible to create racial bias-free early screening models to predict the patients at risk of developing preeclampsia with severe features or eclampsia nulliparous pregnant study cohort.

Publisher

Research Square Platform LLC

Reference45 articles.

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2. Poon LC, Nicolaides KH. Early prediction of preeclampsia. Obstetrics and Gynecology International. 2014;2014.

3. Early- and Late-Onset Preeclampsia: A Comprehensive Cohort Study of Laboratory and Clinical Findings according to the New ISHHP Criteria;Wójtowicz A;International Journal of Hypertension,2019

4. Sroka D, Verlohren S. Short Term Prediction of Preeclampsia, 2021.

5. Preeclampsia and sleep-disordered breathing: A case-control study;Facco FL;Pregnancy Hypertension: An International Journal of Women's Cardiovascular Health. April,2013

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