BMC Pregnancy and Childbirth (Aug 2023)

Building a predictive model of low birth weight in low- and middle-income countries: a prospective cohort study

  • Jackie K. Patterson,
  • Vanessa R. Thorsten,
  • Barry Eggleston,
  • Tracy Nolen,
  • Adrien Lokangaka,
  • Antoinette Tshefu,
  • Shivaprasad S. Goudar,
  • Richard J. Derman,
  • Elwyn Chomba,
  • Waldemar A. Carlo,
  • Manolo Mazariegos,
  • Nancy F. Krebs,
  • Sarah Saleem,
  • Robert L. Goldenberg,
  • Archana Patel,
  • Patricia L. Hibberd,
  • Fabian Esamai,
  • Edward A. Liechty,
  • Rashidul Haque,
  • Bill Petri,
  • Marion Koso-Thomas,
  • Elizabeth M. McClure,
  • Carl L. Bose,
  • Melissa Bauserman

DOI
https://doi.org/10.1186/s12884-023-05866-1
Journal volume & issue
Vol. 23, no. 1
pp. 1 – 13

Abstract

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Abstract Background Low birth weight (LBW, < 2500 g) infants are at significant risk for death and disability. Improving outcomes for LBW infants requires access to advanced neonatal care, which is a limited resource in low- and middle-income countries (LMICs). Predictive modeling might be useful in LMICs to identify mothers at high-risk of delivering a LBW infant to facilitate referral to centers capable of treating these infants. Methods We developed predictive models for LBW using the NICHD Global Network for Women’s and Children’s Health Research Maternal and Newborn Health Registry. This registry enrolled pregnant women from research sites in the Democratic Republic of the Congo, Zambia, Kenya, Guatemala, India (2 sites: Belagavi, Nagpur), Pakistan, and Bangladesh between January 2017 – December 2020. We tested five predictive models: decision tree, random forest, logistic regression, K-nearest neighbor and support vector machine. Results We report a rate of LBW of 13.8% among the eight Global Network sites from 2017–2020, with a range of 3.8% (Kenya) and approximately 20% (in each Asian site). Of the five models tested, the logistic regression model performed best with an area under the curve of 0.72, an accuracy of 61% and a recall of 72%. All of the top performing models identified clinical site, maternal weight, hypertensive disorders, severe antepartum hemorrhage and antenatal care as key variables in predicting LBW. Conclusions Predictive modeling can identify women at high risk for delivering a LBW infant with good sensitivity using clinical variables available prior to delivery in LMICs. Such modeling is the first step in the development of a clinical decision support tool to assist providers in decision-making regarding referral of these women prior to delivery. Consistent referral of women at high-risk for delivering a LBW infant could have extensive public health consequences in LMICs by directing limited resources for advanced neonatal care to the infants at highest risk.

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