Health Technology Assessment (Sep 2021)

A prognostic model, including quantitative fetal fibronectin, to predict preterm labour: the QUIDS meta-analysis and prospective cohort study

  • Sarah J Stock,
  • Margaret Horne,
  • Merel Bruijn,
  • Helen White,
  • Robert Heggie,
  • Lisa Wotherspoon,
  • Kathleen Boyd,
  • Lorna Aucott,
  • Rachel K Morris,
  • Jon Dorling,
  • Lesley Jackson,
  • Manju Chandiramani,
  • Anna David,
  • Asma Khalil,
  • Andrew Shennan,
  • Gert-Jan van Baaren,
  • Victoria Hodgetts-Morton,
  • Tina Lavender,
  • Ewoud Schuit,
  • Susan Harper-Clarke,
  • Ben Mol,
  • Richard D Riley,
  • Jane Norman,
  • John Norrie

DOI
https://doi.org/10.3310/hta25520
Journal volume & issue
Vol. 25, no. 52

Abstract

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Background: The diagnosis of preterm labour is challenging. False-positive diagnoses are common and result in unnecessary, potentially harmful treatments (e.g. tocolytics, antenatal corticosteroids and magnesium sulphate) and costly hospital admissions. Measurement of fetal fibronectin in vaginal fluid is a biochemical test that can indicate impending preterm birth. Objectives: To develop an externally validated prognostic model using quantitative fetal fibronectin concentration, in combination with clinical risk factors, for the prediction of spontaneous preterm birth and to assess its cost-effectiveness. Design: The study comprised (1) a qualitative study to establish the decisional needs of pregnant women and their caregivers, (2) an individual participant data meta-analysis of existing studies to develop a prognostic model for spontaneous preterm birth within 7 days in women with symptoms of preterm labour based on quantitative fetal fibronectin and clinical risk factors, (3) external validation of the prognostic model in a prospective cohort study across 26 UK centres, (4) a model-based economic evaluation comparing the prognostic model with qualitative fetal fibronectin, and quantitative fetal fibronectin with cervical length measurement, in terms of cost per QALY gained and (5) a qualitative assessment of the acceptability of quantitative fetal fibronectin. Data sources/setting: The model was developed using data from five European prospective cohort studies of quantitative fetal fibronectin. The UK prospective cohort study was carried out across 26 UK centres. Participants: Pregnant women at 22+0–34+6 weeks’ gestation with signs and symptoms of preterm labour. Health technology being assessed: Quantitative fetal fibronectin. Main outcome measures: Spontaneous preterm birth within 7 days. Results: The individual participant data meta-analysis included 1783 women and 139 events of spontaneous preterm birth within 7 days (event rate 7.8%). The prognostic model that was developed included quantitative fetal fibronectin, smoking, ethnicity, nulliparity and multiple pregnancy. The model was externally validated in a cohort of 2837 women, with 83 events of spontaneous preterm birth within 7 days (event rate 2.93%), an area under the curve of 0.89 (95% confidence interval 0.84 to 0.93), a calibration slope of 1.22 and a Nagelkerke R2 of 0.34. The economic analysis found that the prognostic model was cost-effective compared with using qualitative fetal fibronectin at a threshold for hospital admission and treatment of ≥ 2% risk of preterm birth within 7 days. Limitations: The outcome proportion (spontaneous preterm birth within 7 days of test) was 2.9% in the validation study. This is in line with other studies, but having slightly fewer than 100 events is a limitation in model validation. Conclusions: A prognostic model that included quantitative fetal fibronectin and clinical risk factors showed excellent performance in the prediction of spontaneous preterm birth within 7 days of test, was cost-effective and can be used to inform a decision support tool to help guide management decisions for women with threatened preterm labour. Future work: The prognostic model will be embedded in electronic maternity records and a mobile telephone application, enabling ongoing data collection for further refinement and validation of the model. Study registration: This study is registered as PROSPERO CRD42015027590 and Current Controlled Trials ISRCTN41598423. Funding: This project was funded by the National Institute for Health Research (NIHR) Health Technology Assessment programme and will be published in full in Health Technology Assessment; Vol. 25, No. 52. See the NIHR Journals Library website for further project information.

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