» Articles » PMID: 33863296

A Hierarchical Procedure to Select Intrauterine and Extrauterine Factors for Methodological Validation of Preterm Birth Risk Estimation

Abstract

Background: Etiopathogenesis of preterm birth (PTB) is multifactorial, with a universe of risk factors interplaying between the mother and the environment. It is of utmost importance to identify the most informative factors in order to estimate the degree of PTB risk and trace an individualized profile. The aims of the present study were: 1) to identify all acknowledged risk factors for PTB and to select the most informative ones for defining an accurate model of risk prediction; 2) to verify predictive accuracy of the model and 3) to identify group profiles according to the degree of PTB risk based on the most informative factors.

Methods: The Maternal Frailty Inventory (MaFra) was created based on a systematic review of the literature including 174 identified intrauterine (IU) and extrauterine (EU) factors. A sample of 111 pregnant women previously categorized in low or high risk for PTB below 37 weeks, according to ACOG guidelines, underwent the MaFra Inventory. First, univariate logistic regression enabled p-value ordering and the Akaike Information Criterion (AIC) selected the model including the most informative MaFra factors. Second, random forest classifier verified the overall predictive accuracy of the model. Third, fuzzy c-means clustering assigned group membership based on the most informative MaFra factors.

Results: The most informative and parsimonious model selected through AIC included Placenta Previa, Pregnancy Induced Hypertension, Antibiotics, Cervix Length, Physical Exercise, Fetal Growth, Maternal Anxiety, Preeclampsia, Antihypertensives. The random forest classifier including only the most informative IU and EU factors achieved an overall accuracy of 81.08% and an AUC of 0.8122. The cluster analysis identified three groups of typical pregnant women, profiled on the basis of the most informative IU and EU risk factors from a lower to a higher degree of PTB risk, which paralleled time of birth delivery.

Conclusions: This study establishes a generalized methodology for building-up an evidence-based holistic risk assessment for PTB to be used in clinical practice. Relevant and essential factors were selected and were able to provide an accurate estimation of degree of PTB risk based on the most informative constellation of IU and EU factors.

Citing Articles

Development and validation of a spontaneous preterm birth risk prediction algorithm based on maternal bioinformatics: A single-center retrospective study.

Chen Y, Shi X, Wang Z, Zhang L BMC Pregnancy Childbirth. 2024; 24(1):763.

PMID: 39558279 PMC: 11571659. DOI: 10.1186/s12884-024-06933-x.


Placental Cannabinoid Receptor Expression in Preterm Birth.

Feduniw S, Krupa I, Lagowska K, Laudanski P, Tabarkiewicz J, Stawarz B J Pregnancy. 2024; 2024:6620156.

PMID: 38745869 PMC: 11093692. DOI: 10.1155/2024/6620156.


The maternal-fetal neurodevelopmental groundings of preterm birth risk.

Miglioli C, Canini M, Vignotto E, Pecco N, Pozzoni M, Victoria-Feser M Heliyon. 2024; 10(7):e28825.

PMID: 38596101 PMC: 11002256. DOI: 10.1016/j.heliyon.2024.e28825.


Development and external validation of a novel score for predicting postoperative 30‑day mortality in tumor craniotomy patients: A cross‑sectional diagnostic study.

Liu Y, Hu H, Han Y, Li Z, Yang J, Zhang X Oncol Lett. 2024; 27(5):205.

PMID: 38516688 PMC: 10956384. DOI: 10.3892/ol.2024.14338.


Association between interleukin-6 and preterm birth: a meta-analysis.

Chang Y, Li W, Shen Y, Li S, Chen X Ann Med. 2023; 55(2):2284384.

PMID: 38010798 PMC: 10836263. DOI: 10.1080/07853890.2023.2284384.


References
1.
Nykjaer C, Alwan N, Greenwood D, Simpson N, Hay A, White K . Maternal alcohol intake prior to and during pregnancy and risk of adverse birth outcomes: evidence from a British cohort. J Epidemiol Community Health. 2014; 68(6):542-9. PMC: 4033207. DOI: 10.1136/jech-2013-202934. View

2.
Barros-Silva J, Pedrosa A, Matias A . Sonographic measurement of cervical length as a predictor of preterm delivery: a systematic review. J Perinat Med. 2013; 42(3):281-93. DOI: 10.1515/jpm-2013-0115. View

3.
Col-Araz N . Evaluation of factors affecting birth weight and preterm birth in southern Turkey. J Pak Med Assoc. 2013; 63(4):459-62. View

4.
Zhang Y, Zhou J, Ma Y, Liu L, Xia Q, Fan D . Mode of delivery and preterm birth in subsequent births: A systematic review and meta-analysis. PLoS One. 2019; 14(3):e0213784. PMC: 6417656. DOI: 10.1371/journal.pone.0213784. View

5.
Liu L, Johnson H, Cousens S, Perin J, Scott S, Lawn J . Global, regional, and national causes of child mortality: an updated systematic analysis for 2010 with time trends since 2000. Lancet. 2012; 379(9832):2151-61. DOI: 10.1016/S0140-6736(12)60560-1. View