Metabolites (May 2023)

Development of a Urine Metabolomics Biomarker-Based Prediction Model for Preeclampsia during Early Pregnancy

  • Yaqi Zhang,
  • Karl G. Sylvester,
  • Bo Jin,
  • Ronald J. Wong,
  • James Schilling,
  • C. James Chou,
  • Zhi Han,
  • Ruben Y. Luo,
  • Lu Tian,
  • Subhashini Ladella,
  • Lihong Mo,
  • Ivana Marić,
  • Yair J. Blumenfeld,
  • Gary L. Darmstadt,
  • Gary M. Shaw,
  • David K. Stevenson,
  • John C. Whitin,
  • Harvey J. Cohen,
  • Doff B. McElhinney,
  • Xuefeng B. Ling

DOI
https://doi.org/10.3390/metabo13060715
Journal volume & issue
Vol. 13, no. 6
p. 715

Abstract

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Preeclampsia (PE) is a condition that poses a significant risk of maternal mortality and multiple organ failure during pregnancy. Early prediction of PE can enable timely surveillance and interventions, such as low-dose aspirin administration. In this study, conducted at Stanford Health Care, we examined a cohort of 60 pregnant women and collected 478 urine samples between gestational weeks 8 and 20 for comprehensive metabolomic profiling. By employing liquid chromatography mass spectrometry (LCMS/MS), we identified the structures of seven out of 26 metabolomics biomarkers detected. Utilizing the XGBoost algorithm, we developed a predictive model based on these seven metabolomics biomarkers to identify individuals at risk of developing PE. The performance of the model was evaluated using 10-fold cross-validation, yielding an area under the receiver operating characteristic curve of 0.856. Our findings suggest that measuring urinary metabolomics biomarkers offers a noninvasive approach to assess the risk of PE prior to its onset.

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