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建立并验证用于预测单胎孕妇自发性早产的模型。

Establishment and validation of a predictive model for spontaneous preterm birth in singleton pregnant women.

机构信息

Department of Medical Ultrasound, Shandong Medicine and Health Key Laboratory of Abdominal Medical Imaging, The First Affiliated Hospital of Shandong First Medical University & Shandong Provincial Qianfoshan Hospital, Jinan, 250014, Shandong, China.

Shandong First Medical University (Shandong Academy of Medical Sciences), Jinan, 250017, Shandong, China.

出版信息

BMC Pregnancy Childbirth. 2024 Sep 11;24(1):595. doi: 10.1186/s12884-024-06772-w.

Abstract

INTRODUCTION

In the current study, we screened for highly sensitive and specific predictors of premature birth, with the aim to establish an sPTB prediction model that is suitable for women in China and easy to operate and popularize, as well as to establish a sPTB prediction scoring system for early, intuitive, and effective assessment of premature birth risk.

METHODS

A total of 685 pregnant women with a single pregnancy during the second trimester (16-26 weeks) were divided into premature and non-premature delivery groups based on their delivery outcomes. Clinical and ultrasound information were collected for both groups, and risk factors that could lead to sPTB in pregnant women were screened and analyzed using a cut-off value. A nomogram was developed to establish a prediction model and scoring system for sPTB. In addition, 119 pregnant women who met the inclusion criteria for the modeling cohort were included in the external validation of the model. The accuracy and consistency of the model were evaluated using the area under the receiver operating characteristic (ROC) and C-calibration curves.

RESULTS

Multivariate logistic regression analysis showed a significant correlation (P < 0.05) between the number of miscarriages in pregnant women, history of miscarriages in the first week of pregnancy, history of preterm birth, CL of pregnant women, open and continuous cervical opening, and the occurrence of sPTB in pregnant women. We drew a nomogram column chart based on the six risk factors mentioned above, obtained a predictive model for sPTB, and established a scoring system to divide premature birth into three risk groups: low, medium, and high. After validating the model, the Hosmer Lemeshow test indicated a good fit (p = 0.997). The modeling queue C calibration curve was close to diagonal (C index = 0.856), confirming that the queue C calibration curve was also close to diagonal (C index = 0.854). The AUCs of the modeling and validation queues were 0.850 and 0.881, respectively.

CONCLUSION

Our predictive model is consistent with China's national conditions, as well as being intuitive and easy to operate, with wide applicability, thus representing a helpful tool to assist with early detection of sPTB in clinical practice, as well as for clinical management in assessing low, medium, and high risks of sPTB.

摘要

简介

本研究旨在筛选出早产的高度敏感和特异预测因子,建立适合中国人群、易于操作和推广的 sPTB 预测模型,并建立 sPTB 预测评分系统,以早期、直观、有效地评估早产风险。

方法

本研究共纳入 685 例单胎妊娠孕妇,妊娠中期(16-26 周),根据分娩结局分为早产组和非早产组。收集两组孕妇的临床和超声资料,采用截断值筛选和分析可能导致 sPTB 的危险因素。建立预测模型和评分系统。此外,将符合建模队列纳入标准的 119 例孕妇纳入模型的外部验证。采用受试者工作特征(ROC)曲线下面积和 C 校准曲线评估模型的准确性和一致性。

结果

多因素 logistic 回归分析显示,孕妇流产次数、妊娠第 1 周流产史、早产史、孕妇 CL、宫颈口开大及连续性、早产史与孕妇 sPTB 的发生显著相关(P < 0.05)。基于上述 6 个危险因素绘制列线图,得出 sPTB 预测模型,并建立评分系统,将早产分为低危、中危、高危三组。模型验证后,Hosmer Lemeshow 检验表明拟合度良好(p = 0.997)。建模队列 C 校准曲线接近对角线(C 指数 = 0.856),验证队列 C 校准曲线也接近对角线(C 指数 = 0.854)。建模队列和验证队列的 AUC 分别为 0.850 和 0.881。

结论

本预测模型符合我国国情,直观易用,适用范围广,有助于临床实践中早期发现 sPTB,为临床管理中评估 sPTB 的低、中、高危风险提供帮助。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/176a/11389547/b78ad51cb365/12884_2024_6772_Fig1_HTML.jpg

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