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首页> 外文期刊>Ultrasound in obstetrics & gynecology: the official journal of the International Society of Ultrasound in Obstetrics and Gynecology >Development and validation of predictive models for QUiPP App v.2: tool for predicting preterm birth in asymptomatic high‐risk women
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Development and validation of predictive models for QUiPP App v.2: tool for predicting preterm birth in asymptomatic high‐risk women

机译:开发和验证预测模型QUiPP应用2:预测早产的工具出生在无症状的高危险的女人

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摘要

ABSTRACT Objectives Accurate mid‐pregnancy prediction of spontaneous preterm birth (sPTB) is essential to ensure appropriate surveillance of high‐risk women. Advancing the QUiPP App prototype, QUiPP App v.2 aimed to provide individualized risk of delivery based on cervical length (CL), quantitative fetal fibronectin (qfFN) or both tests combined, taking into account further risk factors, such as multiple pregnancy. Here we report development of the QUiPP App v.2 predictive models for use in asymptomatic high‐risk women, and validation using a distinct dataset in order to confirm the accuracy and transportability of the QUiPP App, overall and within specific clinically relevant time frames. Methods This was a prospective secondary analysis of data of asymptomatic women at high risk of sPTB recruited in 13 UK preterm birth clinics. Women were offered longitudinal qfFN testing every 2–4?weeks and/or transvaginal ultrasound CL measurement between 18?+?0 and 36?+?6?weeks' gestation. A total of 1803 women (3878 visits) were included in the training set and 904 women (1400 visits) in the validation set. Prediction models were created based on the training set for use in three groups: patients with risk factors for sPTB and CL measurement alone, with risk factors for sPTB and qfFN measurement alone, and those with risk factors for sPTB and both CL and qfFN measurements. Survival analysis was used to identify the significant predictors of sPTB, and parametric structures for survival models were compared and the best selected. The estimated overall probability of delivery before six clinically important time points (?30, ?34 and ?37?weeks' gestation and within 1, 2 and 4?weeks after testing) was calculated for each woman and analyzed as a predictive test for the actual occurrence of each event. This allowed receiver‐operating‐characteristics curves to be plotted, and areas under the curve (AUC) to be calculated. Calibration was performed to measure the agreement between expected and observed outcomes. Results All three algorithms demonstrated high accuracy for the prediction of sPTB at ?30, ?34 and ?37?weeks' gestation and within 1, 2 and 4?weeks of testing, with AUCs between 0.75 and 0.90 for the use of qfFN and CL combined, between 0.68 and 0.90 for qfFN alone, and between 0.71 and 0.87 for CL alone. The differences between the three algorithms were not statistically significant. Calibration confirmed no significant differences between expected and observed rates of sPTB within 4?weeks and a slight overestimation of risk with the use of CL measurement between 22?+?0 and 25?+?6?weeks' gestation. Conclusions The QUiPP App v.2 is a highly accurate prediction tool for sPTB that is based on a unique combination of biomarkers, symptoms and statistical algorithms. It can be used reliably in the context of communicating to patients the risk of sPTB. Whilst further work is required to determine its role in identifying women requiring prophylactic interventions, it is a reliable and convenient screening tool for planning follow‐up or hospitalization for high‐risk women. Copyright ? 2019 ISUOG. Published by John Wiley & Sons Ltd.
机译:摘要怀孕中期目标的准确检测预测自发早产(sPTB)确保适当的监测至关重要高危险的女人。原型,QUiPP应用2旨在提供个性化的基于颈交付的风险长度(CL)、胎儿纤连蛋白定量(qfFN)或两个测试结合,考虑进一步的风险因素,如多个怀孕。2预测模型用于QUiPP应用无症状的高危险女人,和验证使用一个不同的数据集来确认准确性和QUiPP应用程序的可移植性,整体和在特定的临床相关时间框架。二次分析数据的无症状的女性在高sPTB招募了13个英国早产的风险生育诊所。每2 - 4 qfFN测试?超声波CL之间测量18 + ?36 + ? 6 ?(3878人次)包含在训练集和904名女性(1400次)的验证集。训练集用于三组:病人sPTB风险因素和CL测量独自一人,sPTB和qfFN的危险因素单独测量,和危险因素对于sPTB CL和qfFN测量。生存分析是用来识别sPTB的重要预测因子和参数结构模型比较和生存最好的选择。六个临床前交货的概率重要的时间点(& ?37 & ? ?4?女人作为预测测试和分析每个事件的实际发生。接收器的操作量特征曲线策划和区域曲线下(AUC)计算。预期,观察之间的协议结果。证明了高精度的预测sPTB & ?怀孕,在1、2和4 ?与auc的使用在0.75和0.90之间qfFN和CL的总和,在0.68和0.90之间qfFN孤独,并为CL在0.71和0.87之间一个人。算法未达到统计上的显著水平。校准确认无显著差异预期和观察sPTB率之间的关系在4 ?使用CL测量之间的风险22 + ?QUiPP应用2是一个高度精确的预测sPTB是基于一个独特的工具结合地运用生物学标志物、症状和统计算法。在病人的沟通sPTB的风险。在确定女性要求确定其作用预防性干预措施,这是一个可靠的和方便的筛查工具规划遵循量或住院治疗风险高的女性。吗?有限公司

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