首页> 外文期刊>Obstetrics and Gynecology: Journal of the American College of Obstetricians and Gynecologists >Antepartum and intrapartum prediction of cesarean need: risk scoring in singleton pregnancies.
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Antepartum and intrapartum prediction of cesarean need: risk scoring in singleton pregnancies.

机译:剖宫产的产前和产中预测:单胎妊娠的风险评分。

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OBJECTIVE: To demonstrate the use of generalized additive logistic regression in the development of a risk-scoring system to predict cesarean delivery. METHODS: Women who delivered in the Prince of Wales Hospital, Hong Kong, from 1994 to 1995 were the subjects of our study. Cases included were term singleton pregnancies with cephalic presentation, excluding those requiring cesarean delivery before labor. The cases were divided randomly into two sets. The prediction models were developed from set A and tested on set B, and vice versa. Maternal demographic and obstetric variables were used as potential predictors. Two models were formed, one before and one after the onset of labor. The generalized additive logistic regression was used to achieve optimal dichotomization of continuous measurements, and the predictive models were then developed. The validating results were pooled, represented, and compared as areas under receiver operating characteristic (ROC) curves. RESULTS: The first prediction model used maternal age, height, and weight at delivery as well as nulliparity, history of cesarean delivery, and the need for induction of labor. The second model had in addition the need for labor augmentation. The areas under the ROC curve for the models were 0.81 and 0.82, respectively, a statistically significant difference (z = 5.75, P < .001). CONCLUSION: The use of generalized additive logistic regression optimizes dichotomization of continuous measurements and facilitates the development of precise and reproducible prediction models. Generalized additive logistic regression appears to be a useful tool, and its use is commended.
机译:目的:证明在风险评分系统的开发中应用广义加法逻辑回归来预测剖宫产。方法:我们研究的对象是1994年至1995年在香港威尔斯亲王医院分娩的妇女。所包括的病例为足月单胎妊娠并有头颅表现,不包括那些需要在分娩前进行剖宫产的孕妇。将病例随机分为两组。预测模型是从集合A开发并在集合B上测试的,反之亦然。产妇人口和产科变量被用作潜在的预测指标。形成了两种模式,一种在分娩开始之前,一种在分娩开始之后。使用广义加法逻辑回归来实现连续测量的最佳二分法,然后建立预测模型。将验证结果汇总,表示并作为接收器工作特性(ROC)曲线下的面积进行比较。结果:第一个预测模型使用了产妇的年龄,身高和分娩时的体重,以及无产,剖腹产的历史以及引产的必要性。第二种模式还需要增加劳动力。模型的ROC曲线下面积分别为0.81和0.82,具有统计学意义的差异(z = 5.75,P <.001)。结论:广义加法逻辑回归的使用优化了连续测量的二分法,并促进了精确和可再现的预测模型的发展。广义加性逻辑回归似乎是一个有用的工具,值得推荐。

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