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纵向双胎生长不一致模式与围产期不良结局。

Longitudinal twin growth discordance patterns and adverse perinatal outcomes.

作者信息

Prasad Smriti, Ayhan Işıl, Mohammed Doaa, Kalafat Erkan, Khalil Asma

机构信息

Fetal Medicine Unit, St George's University Hospitals NHS Foundation Trust, London, United Kingdom.

Department of Obstetrics and Gynecology, Koc University Hospital, Istanbul, Turkey.

出版信息

Am J Obstet Gynecol. 2025 Jul;233(1):73.e1-73.e14. doi: 10.1016/j.ajog.2024.12.029. Epub 2025 Jan 7.

Abstract

BACKGROUND

Growth discordance in twin pregnancies is associated with increased perinatal morbidity and mortality, yet the patterns of discordance progression and the utility of Doppler assessments remain underinvestigated.

OBJECTIVE

The objective of this study was to conduct a longitudinal assessment of intertwin growth and Doppler discordance to identify possible distinct patterns and to investigate the predictive value of longitudinal discordance patterns for adverse perinatal outcomes in twin pregnancies.

STUDY DESIGN

This retrospective cohort study included twin pregnancies followed and delivered at a tertiary hospital in London (United Kingdom) between 2010 and 2023. We included pregnancies with at least 3 ultrasound assessments after 18 weeks and delivery beyond 34 weeks' gestation. Monoamniotic twin pregnancies, pregnancies with twin-to-twin transfusion syndrome, genetic or structural abnormalities, or incomplete data were excluded. Data on chorionicity, biometry, Doppler indices, maternal characteristics and obstetrics, and neonatal outcomes were extracted from electronic records. Doppler assessment included velocimetry of the umbilical artery, middle cerebral artery, and cerebroplacental ratio. Intertwin growth discordance was calculated for each scan. The primary outcome was a composite of perinatal mortality and neonatal morbidity. Statistical analysis involved multilevel mixed effects regression models and unsupervised machine learning algorithms, specifically k-means clustering, to identify distinct patterns of intertwin discordance and their predictive value. Predictive models were compared using the area under the receiver operating characteristic curve, calibration intercept, and slope, validated with repeated cross-validation. Analyses were performed using R, with significance set at P<.05.

RESULTS

Data from 823 twin pregnancies (647 dichorionic, 176 monochorionic) were analyzed. Five distinct patterns of intertwin growth discordance were identified using an unsupervised learning algorithm that clustered twin pairs based on the progression and patterns of discordance over gestation: low-stable (n=204, 24.8%), mild-decreasing (n=171, 20.8%), low-increasing (n=173, 21.0%), mild-increasing (n=189, 23.0%), and high-stable (n=86, 10.4%). In the high-stable cluster, the rates of perinatal morbidity (46.5%, 40/86) and mortality (9.3%, 8/86) were significantly higher compared to the low-stable (reference) cluster (P<.001). High-stable growth pattern was also associated with a significantly higher risk of composite adverse perinatal outcomes (odds ratio: 70.19, 95% confidence interval: 24.18-299.03, P<.001; adjusted odds ratio: 76.44, 95% confidence interval: 25.39-333.02, P<.001). The model integrating discordance pattern with cerebroplacental ratio discordance at the last ultrasound before delivery demonstrated superior predictive accuracy, evidenced by the highest area under the receiver operating characteristic curve of 0.802 (95% confidence interval: 0.712-0.892, P<.001), compared to only discordance patterns (area under the receiver operating characteristic curve: 0.785, 95% confidence interval: 0.697-0.873), intertwin weight discordance at the last ultrasound prior to delivery (area under the receiver operating characteristic curve: 0.677, 95% confidence interval: 0.545-0.809), combination of single measurements of estimated fetal weight and cardiopulmonary resuscitation discordance at the last ultrasound prior to delivery (area under the receiver operating characteristic curve: 0.702, 95% confidence interval: 0.586-0.818), and single measurement of cardiopulmonary resuscitation discordance only at the last ultrasound (area under the receiver operating characteristic curve: 0.633, 95% confidence interval: 0.515-0.751).

CONCLUSION

Using an unsupervised machine learning algorithm, we identified 5 distinct trajectories of intertwin fetal growth discordance. Consistent high discordance is associated with increased rates of adverse perinatal outcomes, with a dose-response relationship. Moreover, a predictive model integrating discordance trajectory and cardiopulmonary resuscitation discordance at the last visit demonstrated superior predictive accuracy for the prediction of composite adverse perinatal outcomes, compared to either of these measurements alone or a single value of estimated fetal weight discordance at the last ultrasound prior to delivery.

摘要

背景

双胎妊娠中的生长不一致与围产期发病率和死亡率增加相关,但不一致进展模式和多普勒评估的效用仍未得到充分研究。

目的

本研究的目的是对双胎间生长和多普勒不一致进行纵向评估,以识别可能的不同模式,并研究双胎妊娠中纵向不一致模式对不良围产期结局的预测价值。

研究设计

这项回顾性队列研究纳入了2010年至2023年期间在英国伦敦一家三级医院接受随访并分娩的双胎妊娠。我们纳入了妊娠18周后至少有3次超声评估且妊娠34周后分娩的妊娠。单羊膜囊双胎妊娠、双胎输血综合征妊娠、遗传或结构异常妊娠或数据不完整的妊娠被排除。从电子记录中提取绒毛膜性、生物测量、多普勒指数、母亲特征和产科情况以及新生儿结局的数据。多普勒评估包括脐动脉、大脑中动脉和脑胎盘比率的血流速度测量。每次扫描计算双胎间生长不一致情况。主要结局是围产期死亡率和新生儿发病率的综合指标。统计分析涉及多级混合效应回归模型和无监督机器学习算法,特别是k均值聚类,以识别双胎间不一致的不同模式及其预测价值。使用受试者操作特征曲线下面积、校准截距和斜率比较预测模型,并通过重复交叉验证进行验证。使用R进行分析,显著性设定为P<0.05。

结果

分析了823例双胎妊娠(647例双绒毛膜性,176例单绒毛膜性)的数据。使用无监督学习算法根据妊娠期间不一致的进展和模式对双胎对进行聚类,识别出5种不同的双胎间生长不一致模式:低稳定型(n=204,24.8%)、轻度下降型(n=171,20.8%)、低增加型(n=173,21.0%)、轻度增加型(n=189,23.0%)和高稳定型(n=86,10.4%)。在高稳定组中,围产期发病率(46.5%,40/86)和死亡率(9.3%,8/86)显著高于低稳定(参照)组(P<0.001)。高稳定生长模式也与复合不良围产期结局的显著更高风险相关(比值比:70.19,95%置信区间:24.18 - 299.03,P<0.001;调整后比值比:76.44,95%置信区间:25.39 - 333.02,P<0.001)。将分娩前最后一次超声检查时的不一致模式与脑胎盘比率不一致相结合的模型显示出卓越的预测准确性,受试者操作特征曲线下面积最高为0.802(95%置信区间:0.712 - 0.892,P<0.001),相比之下,仅不一致模式(受试者操作特征曲线下面积:0.785,95%置信区间:0.697 - 0.873)、分娩前最后一次超声检查时的双胎体重不一致(受试者操作特征曲线下面积:0.677,95%置信区间:0.545 - 0.809)、分娩前最后一次超声检查时估计胎儿体重单次测量与心肺复苏不一致的组合(受试者操作特征曲线下面积:

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