Isono Wataru, Nagamatsu Takeshi, Uemura Yukari, Fujii Tomoyuki, Hyodo Hironobu, Yamashita Takahiro, Kamei Yoshimasa, Kozuma Shiro, Taketani Yuji
Department of Obstetrics and Gynecology, Faculty of Medicine Department of Biostatistics, School of Public Health Science, University of Tokyo, Bunkyo-ku, Tokyo, Japan.
J Obstet Gynaecol Res. 2011 Dec;37(12):1784-91. doi: 10.1111/j.1447-0756.2011.01607.x. Epub 2011 Jul 27.
This study aimed to clarify the factors affecting the outcome of induction of labor (IOL) in a Japanese population and to develop a prediction model to assess the probability of emergent cesarean section (CS).
By reviewing the medical records of 1029 women who underwent IOL, we compared the emergent CS rate during IOL among subgroups divided by parity and pre-labor risk, such as fetal anomaly and maternal complication. We created a prediction model to predict the CS rate during IOL focusing on 392 cases of nulliparous women with premature rupture of membrane (PROM). Six factors, including Bishop score (BS), gestational age, maternal body mass index (BMI), maternal height (MH) and birth weight (BW) were extracted and multivariable logistic regression analysis followed by cross-validation test were performed.
The emergent CS rate was remarkably higher in the nulliparous group than in the multiparous group (17.6% vs 2.0%). In the nulliparous group, the high-risk group demonstrated a higher CS rate than the low-risk group (33.8% vs 15.6%). Multivariate analysis on nulliparous low-risk cases with PROM demonstrated significant odds ratios for emergent CS in BS, MH and BW. Cross-validation test selected these three factors as the best combination of parameters. The prediction formula was determined as follows: probability of CS (%) = (odds/1 + odds) ∗ 100, odds = e(X) and X = 8.18 + 1.23 ∗ BW (kg)- 7.74 ∗ MH (m)- 0.253 ∗ BS.
This study is the first to provide a prediction formula targeting an Asian population. Our model, which is specialized for nulliparous low-risk women could enable obstetricians to inform patients of the precise prospect of IOL outcome.
本研究旨在阐明影响日本人群引产结局的因素,并建立一个预测模型来评估急诊剖宫产的概率。
通过回顾1029例行引产的女性的病历,我们比较了按产次和分娩前风险(如胎儿异常和母体并发症)划分的亚组中引产期间的急诊剖宫产率。我们建立了一个预测模型,以392例胎膜早破(PROM)的初产妇为重点预测引产期间的剖宫产率。提取了包括 Bishop 评分(BS)、孕周、母体体重指数(BMI)、母体身高(MH)和出生体重(BW)在内的六个因素,并进行了多变量逻辑回归分析,随后进行交叉验证测试。
初产妇组的急诊剖宫产率显著高于经产妇组(17.6% 对 2.0%)。在初产妇组中,高危组的剖宫产率高于低危组(33.8% 对 15.6%)。对初产妇低危PROM病例的多变量分析显示,BS、MH和BW对急诊剖宫产有显著的优势比。交叉验证测试选择这三个因素作为最佳参数组合。预测公式确定如下:剖宫产概率(%)=(优势比/1 + 优势比)×100,优势比 = e(X) 且 X = 8.18 + 1.23×BW(kg)- 7.74×MH(m)- 0.253×BS。
本研究首次提供了针对亚洲人群的预测公式。我们专门针对初产妇低危女性的模型可以使产科医生向患者告知引产结局的准确前景。