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建立逻辑回归模型,以预测初始妊娠登记时的产妇社会人口学和产科史自发性早产。

Developing a logistic regression model to predict spontaneous preterm birth from maternal socio-demographic and obstetric history at initial pregnancy registration.

机构信息

School of Medicine and Population Health, The University of Sheffield, Sheffield, UK.

Department of Automatic Control and System Engineering, The University of Sheffield, Sheffield, UK.

出版信息

BMC Pregnancy Childbirth. 2024 Oct 21;24(1):688. doi: 10.1186/s12884-024-06892-3.

Abstract

BACKGROUND

Current predictive machine learning techniques for spontaneous preterm birth heavily rely on a history of previous preterm birth and/or costly techniques such as fetal fibronectin and ultrasound measurement of cervical length to the disadvantage of those considered at low risk and/or those who have no access to more expensive screening tools.

AIMS AND OBJECTIVES

We aimed to develop a predictive model for spontaneous preterm delivery < 37 weeks using socio-demographic and clinical data readily available at booking -an approach which could be suitable for all women regardless of their previous obstetric history.

METHODS

We developed a logistic regression model using seven feature variables derived from maternal socio-demographic and obstetric history from a preterm birth (n = 917) and a matched full-term (n = 100) cohort in 2018 and 2020 at a tertiary obstetric unit in the UK. A three-fold cross-validation technique was applied with subsets for data training and testing in Python® (version 3.8) using the most predictive factors. The model performance was then compared to the previously published predictive algorithms.

RESULTS

The retrospective model showed good predictive accuracy with an AUC of 0.76 (95% CI: 0.71-0.83) for spontaneous preterm birth, with a sensitivity and specificity of 0.71 (95% CI: 0.66-0.76) and 0.78 (95% CI: 0.63-0.88) respectively based on seven variables: maternal age, BMI, ethnicity, smoking, gestational type, substance misuse and parity/obstetric history.

CONCLUSION

Pending further validation, our observations suggest that key maternal demographic features, incorporated into a traditional mathematical model, have promising predictive utility for spontaneous preterm birth in pregnant women in our region without the need for cervical length and/or fetal fibronectin.

摘要

背景

目前,预测自发性早产的机器学习技术主要依赖于既往早产史和/或昂贵的技术,如胎儿纤连蛋白和超声测量宫颈长度,这对那些被认为低风险的人和/或无法获得更昂贵筛查工具的人不利。

目的和目标

我们旨在使用在预约时即可获得的社会人口统计学和临床数据开发一种预测自发性早产<37 周的模型——这种方法适用于所有女性,无论其既往产科史如何。

方法

我们使用来自英国一家三级产科单位 2018 年和 2020 年早产(n=917)和足月(n=100)队列的产妇社会人口统计学和产科史中的七个特征变量开发了一个逻辑回归模型。采用三折交叉验证技术,使用 Python®(版本 3.8)中的最具预测性的因素对数据进行训练和测试。然后将模型性能与之前发表的预测算法进行比较。

结果

回顾性模型显示出良好的预测准确性,自发性早产的 AUC 为 0.76(95%CI:0.71-0.83),基于七个变量(母亲年龄、BMI、种族、吸烟、妊娠类型、物质滥用和产次/产科史)的敏感性和特异性分别为 0.71(95%CI:0.66-0.76)和 0.78(95%CI:0.63-0.88)。

结论

在进一步验证之前,我们的观察结果表明,关键的产妇人口统计学特征纳入传统的数学模型,对于我们地区的孕妇自发性早产具有有前景的预测效用,而无需测量宫颈长度和/或胎儿纤连蛋白。

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