Journal of Clinical Medicine (Jul 2018)

Predictions of Preterm Birth from Early Pregnancy Characteristics: Born in Guangzhou Cohort Study

  • Jian-Rong He,
  • Rema Ramakrishnan,
  • Yu-Mian Lai,
  • Wei-Dong Li,
  • Xuan Zhao,
  • Yan Hu,
  • Nian-Nian Chen,
  • Fang Hu,
  • Jin-Hua Lu,
  • Xue-Ling Wei,
  • Ming-Yang Yuan,
  • Song-Ying Shen,
  • Lan Qiu,
  • Qiao-Zhu Chen,
  • Cui-Yue Hu,
  • Kar Keung Cheng,
  • Ben Willem J. Mol,
  • Hui-Min Xia,
  • Xiu Qiu

DOI
https://doi.org/10.3390/jcm7080185
Journal volume & issue
Vol. 7, no. 8
p. 185

Abstract

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Preterm birth (PTB, <37 weeks) is the leading cause of death in children <5 years of age. Early risk prediction for PTB would enable early monitoring and intervention. However, such prediction models have been rarely reported, especially in low- and middle-income areas. We used data on a number of easily accessible predictors during early pregnancy from 9044 women in Born in Guangzhou Cohort Study, China to generate prediction models for overall PTB and spontaneous, iatrogenic, late (34–36 weeks), and early (<34 weeks) PTB. Models were constructed using the Cox proportional hazard model, and their performance was evaluated by Harrell’s c and D statistics and calibration plot. We further performed a systematic review to identify published models and validated them in our population. Our new prediction models had moderate discrimination, with Harrell’s c statistics ranging from 0.60–0.66 for overall and subtypes of PTB. Significant predictors included maternal age, height, history of preterm delivery, amount of vaginal bleeding, folic acid intake before pregnancy, and passive smoking during pregnancy. Calibration plots showed good fit for all models except for early PTB. We validated three published models, all of which were from studies conducted in high-income countries; the area under receiver operating characteristic for these models ranged from 0.50 to 0.56. Based on early pregnancy characteristics, our models have moderate predictive ability for PTB. Future studies should consider inclusion of laboratory markers for the prediction of PTB.

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