Abstract

Steroidal hormone interaction in pregnancy is crucial for adequate fetal evolution and preparation for childbirth and extrauterine life. Estrone sulphate, estriol, progesterone and cortisol play important roles in the initiation of labour mechanism at the start of contractions and cervical effacement. However, their interaction remains uncertain. Although several studies regarding the hormonal mechanism of labour have been reported, the prediction of date of birth remains a challenge. In this study, we present for the first time machine learning algorithms for the prediction of whether spontaneous labour will occur from week 37 onwards. Estrone sulphate, estriol, progesterone and cortisol were analysed in saliva samples collected from 106 pregnant women since week 34 by enzyme-immunoassay (EIA) techniques. We compared a random forest model with a traditional logistic regression over a dataset constructed with the values observed of these measures. We observed that the results, evaluated in terms of accuracy and area under the curve (AUC) metrics, are sensibly better in the random forest model. For this reason, we consider that machine learning methods contribute in an important way to the obstetric practice.

Highlights

  • Steroidal hormone interaction in pregnancy is crucial for adequate fetal evolution and preparation for childbirth and extrauterine life

  • The accuracy of the EIA was tested by determining the recovery rates of known amounts of P4, C, E3 and E1SO4 spiked into saliva samples

  • Precision of P4, C, E3 and E1SO4 was determined by calculating the intra- and inter-assay coefficients of variation (CV%)

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Summary

Introduction

Steroidal hormone interaction in pregnancy is crucial for adequate fetal evolution and preparation for childbirth and extrauterine life. Estriol, progesterone and cortisol play important roles in the initiation of labour mechanism at the start of contractions and cervical effacement We observed that the results, evaluated in terms of accuracy and area under the curve (AUC) metrics, are sensibly better in the random forest model For this reason, we consider that machine learning methods contribute in an important way to the obstetric practice. Childbirth involves the complex relationship between mother, fetus and placenta that implies a complex interaction of biomolecular, immunological and endocrine mechanisms, modulated by aetiology, ethnicity and gestational a­ ge[6] It is a perfect coordination of events that include progressive effacement and dilation of the cervix, rupture of the amniotic membranes, and initiation and maintenance of effective uterine contractions, culminating in ­labour[7]. Estrogens are involved in the activation of the labour ­mechanism[8]

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