Journal of Clinical Medicine (Jan 2023)

Predictive Model for Preeclampsia Combining sFlt-1, PlGF, NT-proBNP, and Uric Acid as Biomarkers

  • Carmen Garrido-Giménez,
  • Mónica Cruz-Lemini,
  • Francisco V. Álvarez,
  • Madalina Nicoleta Nan,
  • Francisco Carretero,
  • Antonio Fernández-Oliva,
  • Josefina Mora,
  • Olga Sánchez-García,
  • Álvaro García-Osuna,
  • Jaume Alijotas-Reig,
  • Elisa Llurba,
  • on behalf of the EuroPE Working Group

DOI
https://doi.org/10.3390/jcm12020431
Journal volume & issue
Vol. 12, no. 2
p. 431

Abstract

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N-terminal pro-brain natriuretic peptide (NT-proBNP) and uric acid are elevated in pregnancies with preeclampsia (PE). Short-term prediction of PE using angiogenic factors has many false-positive results. Our objective was to validate a machine-learning model (MLM) to predict PE in patients with clinical suspicion, and evaluate if the model performed better than the sFlt-1/PlGF ratio alone. A multicentric cohort study of pregnancies with suspected PE between 24+0 and 36+6 weeks was used. The MLM included six predictors: gestational age, chronic hypertension, sFlt-1, PlGF, NT-proBNP, and uric acid. A total of 936 serum samples from 597 women were included. The PPV of the MLM for PE following 6 weeks was 83.1% (95% CI 78.5–88.2) compared to 72.8% (95% CI 67.4–78.4) for the sFlt-1/PlGF ratio. The specificity of the model was better; 94.9% vs. 91%, respectively. The AUC was significantly improved compared to the ratio alone [0.941 (95% CI 0.926–0.956) vs. 0.901 (95% CI 0.880–0.921), p p < 0.01]. To conclude, an MLM combining the sFlt-1/PlGF ratio, NT-proBNP, and uric acid performs better to predict preterm PE compared to the sFlt-1/PlGF ratio alone, potentially increasing clinical precision.

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