Objective: To establish suggested gestational weight gain (GWG) using several distinct methods in a Chinese population. Methods: This study analyzed data from the medical records of singleton pregnancy women during 2011-2017 in Beijing, China. Suggested GWG was calculated using four distinct methods. In method 1, suggested GWG was identified by the interquartile method. Subsequently, risk models for small for gestational age (SGA) and large for gestational age (LGA) with respect to GWG were constructed. GWG was treated as a continuous variable in method 2, and as a categorized variable in methods 3 and 4. Results: An average GWG of 15.78 kg with a prevalence of LGA at 19.34% and SGA at 2.12% was observed among the 34,470 participants. Methods 1 and 2 did not yield clinically applicable results. The suggested GWGs were 11-17/11-16 kg, 9-19/9-15 kg, 4-12/4-10 kg, and 0-12/0-6 kg by method 3/method 4 for underweight, normal-weight, overweight, and obese women, respectively. The GWG range suggested by method 3 resulted in a larger proportion of participants (62.03%) within range, while the suggested GWG range by method 4 was associated with a lower risk of LGA compared to that conferred by the Institute of Medicine (IOM) criteria. Conclusion: This study suggests a modest GWG goal compared to IOM recommendations based on a large Chinese cohort.
|Original language||English (US)|
|Number of pages||9|
|State||Published - Mar 2021|
- Gestational weight gain
- Institute of Medicine
- Large for gestational age
- Pregnancy outcome
- Small for gestation age
ASJC Scopus subject areas
- Health(social science)
- Physiology (medical)
FingerprintDive into the research topics of 'Suggested Gestational Weight Gain for Chinese Women and Comparison with Institute of Medicine Criteria: A Large Population-Based Study'. Together they form a unique fingerprint.
Supplementary Material for: Suggested Gestational Weight Gain for Chinese Women and Comparison with Institute of Medicine Criteria: A Large Population-Based Study
Zheng, W. (Creator), Huang, W. (Creator), Zhang, L. (Creator), Tian, Z. (Creator), Yan, Q. (Creator), Wang, T. (Creator), Li, G. (Creator) & Zhang, W. (Creator), Karger Publishers, 2021
DOI: 10.6084/m9.figshare.13700425.v1, https://doi.org/10.6084%2Fm9.figshare.13700425.v1