Abstract

Peroxisome proliferator-activated receptor γ (PPARγ) is essential for placental development, whose SNPs have shown increased susceptibility to pregnancy-related diseases, such as preeclampsia. Our aim was to investigate the association between preeclampsia and three PPARγ SNPs (Pro12Ala, C1431T, and C681G), which together with nine clinical factors were used to build a pragmatic model for preeclampsia prediction. Data were collected from 1648 women from the EDEN cohort, of which 35 women had preeclamptic pregnancies, and the remaining 1613 women had normal pregnancies. Univariate analysis comparing preeclamptic patients to the control resulted in the SNP C1431T being the only factor significantly associated with preeclampsia (p < 0.05), with a confidence interval of 95% and odds ratio ranging from 4.90 to 8.75. On the other hand, three methods of multivariate feature selection highlighted seven features that could be potential predictors of preeclampsia: maternal C1431T and C681G variants, obesity, body mass index, number of pregnancies, primiparity, cigarette use, and education. These seven features were further used as input into eight different machine-learning algorithms to create predictive models, whose performances were evaluated based on metrics of accuracy and the area under the receiver operating characteristic curve (AUC). The boost tree-based model performed the best, with respective accuracy and AUC values of 0.971 ± 0.002 and 0.991 ± 0.001 in the training set and 0.951 and 0.701 in the testing set. A flowchart based on the boost tree model was constructed to depict the procedure for preeclampsia prediction. This final decision tree showed that the C1431T variant of PPARγ is significantly associated with susceptibility to preeclampsia. We believe that this final decision tree could be applied in the clinical prediction of preeclampsia in the very early stages of pregnancy.

Highlights

  • Preeclampsia, which is characterized by high blood pressure and concurrent proteinuria, is a complication of pregnancy that usually manifests after 20–25 weeks of pregnancy [1]

  • We aimed to investigate the association between the risk of preeclampsia and the Pro12Ala, C1431T, and C681G single nucleotide polymorphism (SNP) of Peroxisome proliferator-activated receptor γ (PPARγ)

  • We present a decision tree based on a boost tree model that represents a possible diagnostic procedure for pragmatic preeclampsia prediction, 3

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Summary

Introduction

Preeclampsia, which is characterized by high blood pressure and concurrent proteinuria, is a complication of pregnancy that usually manifests after 20–25 weeks of pregnancy [1]. This disease is highly associated with morbidity and mortality for both the mother and the fetus because of its serious risks to fetal maturity and the maternal cardiovascular system [2]. A newly proposed method for the diagnosis of preeclampsia relies on combined detection of biomarkers such as sFLT1, sEng, and PlGF and performs well around 34 weeks of gestation [8,9,10]. Our goal was to develop a tool that could be used for earlier diagnosis of preeclampsia

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