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11-13 孕周的生化和生物物理标志物预测死胎。

Prediction of stillbirth from biochemical and biophysical markers at 11-13 weeks.

机构信息

Harris Birthright Research Centre for Fetal Medicine, King's College Hospital, London, UK.

Department of Fetal Medicine, Medway Maritime Hospital, Gillingham, UK.

出版信息

Ultrasound Obstet Gynecol. 2016 Nov;48(5):613-617. doi: 10.1002/uog.17289.

Abstract

OBJECTIVES

To develop a model for the prediction of stillbirth that is based on a combination of maternal characteristics and medical history with first-trimester biochemical and biophysical markers and to evaluate the performance of screening with this model for all stillbirths and those due to impaired placentation and unexplained causes.

METHODS

This was a prospective screening study of 76 897 singleton pregnancies, including 76 629 live births and 268 (0.35%) antepartum stillbirths; 157 (59%) were secondary to impaired placentation and 111 (41%) were due to other or unexplained causes. Multivariable logistic regression analysis was used to determine if there was a significant contribution to prediction of stillbirth from the maternal factor-derived a-priori risk, fetal nuchal translucency thickness, ductus venosus pulsatility index for veins (DV-PIV), uterine artery pulsatility index (UtA-PI) and maternal serum free β-human chorionic gonadotropin and pregnancy-associated plasma protein-A (PAPP-A). The significant contributors were used to derive a model for first-trimester prediction of stillbirth.

RESULTS

Significant contribution to prediction of stillbirth was provided by maternal factors, PAPP-A, UtA-PI and DV-PIV. A model combining these variables predicted 40% of all stillbirths and 55% of those due to impaired placentation, at a false-positive rate of 10%. Within the impaired-placentation group, the detection rate of stillbirth < 32 weeks' gestation was higher than that of stillbirth ≥ 37 weeks (64% vs 42%).

CONCLUSIONS

A model based on maternal factors and first-trimester biomarkers can potentially predict more than half of subsequent stillbirths that occur due to impaired placentation. The extent to which such stillbirths could be prevented remains to be determined. Copyright © 2016 ISUOG. Published by John Wiley & Sons Ltd.

摘要

目的

建立一种基于产妇特征和病史,联合早孕期生化和生物物理标志物的预测胎儿死产模型,并评估该模型筛查所有胎儿死产、胎盘功能不良所致胎儿死产和不明原因胎儿死产的效能。

方法

这是一项对 76897 例单胎妊娠的前瞻性筛查研究,包括 76629 例活产和 268 例(0.35%)产前胎儿死产;其中 157 例(59%)因胎盘功能不良所致,111 例(41%)因其他或不明原因所致。多变量逻辑回归分析用于确定产妇特征衍生的产前风险、胎儿颈项透明层厚度、静脉导管搏动指数(DV-PIV)、子宫动脉搏动指数(UtA-PI)、母体血清游离β-人绒毛膜促性腺激素和妊娠相关血浆蛋白-A(PAPP-A)对胎儿死产预测是否有显著贡献。显著贡献的因素被用于建立早孕期胎儿死产预测模型。

结果

产妇特征、PAPP-A、UtA-PI 和 DV-PIV 对胎儿死产的预测有显著贡献。联合这些变量的模型预测所有胎儿死产的 40%,预测胎盘功能不良所致胎儿死产的 55%,假阳性率为 10%。在胎盘功能不良组中,胎儿死产<32 孕周的检出率高于胎儿死产≥37 孕周的检出率(64%比 42%)。

结论

基于产妇特征和早孕期生物标志物的模型可能能够预测超过一半的因胎盘功能不良所致的后续胎儿死产。但这些胎儿死产能否被预防仍有待确定。版权所有 © 2016 ISUOG。由 John Wiley & Sons Ltd 出版。

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