胎儿医学基金会用于子痫前期预测的首胎竞争风险模型的性能:巴西外部验证研究

Karina Bilda de Castro Rezende MD, PhD , Rita G. Bornia MD, PhD , Daniel L. Rolnik MD, PhD, MPH , Joffre Amim Jr. MD, PhD , Luiza P. Ladeira MD , Valentina M.G. Teixeira MS , Antonio Jose L.A. da Cunha MD, PhD, MPH
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引用次数: 0

摘要

目的本研究旨在(1)验证胎儿医学基金会用于预测巴西人群先兆子痫的综合算法;(2)描述胎儿医学基金会算法在根据临床标准考虑预防性使用阿司匹林时的准确性和校准性。研究设计这是一项队列研究,包括2010年10月至2018年12月期间在巴西一所大学医院接受子痫前期筛查的连续单胎妊娠,检查孕产妇特征、病史和生物物理标记物。使用胎儿医学基金会网站上提供的2018年版算法计算风险,并以1/100为分界线将病例分为低风险和高风险,以评估预测性能。根据胎儿医学基金会估计的风险范围(≥1/10;1/11 至 1/50;1/51 至 1/100;1/101 至 1/150;<1/150),对预期和观察到的子痫前期病例进行比较。在确定使用阿司匹林的高危孕妇后,利用 "联合多标志物筛查和阿司匹林随机患者治疗用于循证子痫前期预防试验 "中确定的子痫前期减少 62% 的治疗效果来评估根据阿司匹林的效果进行调整后的预测性能。结果在 2749 例妊娠中,84 例(3.1%)发生了先兆子痫。风险临界值为 1/100,筛查阳性率为 25.8%。检出率为 71.4%,假阳性率为 24.4%。曲线下面积为 0.818(95% 置信区间,0.773-0.863)。在风险范围≥1/10 时,预期病例数与观察病例数一致,而在其他范围内,预测风险低于观察率。考虑到阿司匹林的影响,检出率和阳性预测值均有所提高,假阳性率略有下降。在未使用阿司匹林的高风险组中有 27 例先兆子痫病例,我们估计,如果该组接受了预防性治疗,其中 16 例先兆子痫病例就可以避免。如果不考虑阿司匹林的影响,则会低估筛查效果。
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Performance of the first-trimester Fetal Medicine Foundation competing risks model for preeclampsia prediction: an external validation study in Brazil

BACKGROUND

The current version of the Fetal Medicine Foundation competing risks model for preeclampsia prediction has not been previously validated in Brazil.

OBJECTIVE

This study aimed (1) to validate the Fetal Medicine Foundation combined algorithm for the prediction of preterm preeclampsia in the Brazilian population and (2) to describe the accuracy and calibration of the Fetal Medicine Foundation algorithm when considering the prophylactic use of aspirin by clinical criteria.

STUDY DESIGN

This was a cohort study, including consecutive singleton pregnancies undergoing preeclampsia screening at 11 to 14 weeks of gestation, examining maternal characteristics, medical history, and biophysical markers between October 2010 and December 2018 in a university hospital in Brazil. Risks were calculated using the 2018 version of the algorithm available on the Fetal Medicine Foundation website, and cases were classified as low or high risk using a cutoff of 1/100 to evaluate predictive performance. Expected and observed cases with preeclampsia according to the Fetal Medicine Foundation–estimated risk range (≥1 in 10; 1 in 11 to 1 in 50; 1 in 51 to 1 in 100; 1 in 101 to 1 in 150; and <1 in 150) were compared. After identifying high-risk pregnant women who used aspirin, the treatment effect of 62% reduction in preterm preeclampsia identified in the Combined Multimarker Screening and Randomized Patient Treatment with Aspirin for Evidence-Based Preeclampsia Prevention trial was used to evaluate the predictive performance adjusted for the effect of aspirin. The number of potentially unpreventable cases in the group without aspirin use was estimated.

RESULTS

Among 2749 pregnancies, preterm preeclampsia occurred in 84 (3.1%). With a risk cutoff of 1/100, the screen-positive rate was 25.8%. The detection rate was 71.4%, with a false positive rate of 24.4%. The area under the curve was 0.818 (95% confidence interval, 0.773–0.863). In the risk range ≥1/10, there is an agreement between the number of expected cases and the number of observed cases, and in the other ranges, the predicted risk was lower than the observed rates. Accounting for the effect of aspirin resulted in an increase in detection rate and positive predictive values and a slight decrease in the false positive rate. With 27 cases of preterm preeclampsia in the high-risk group without aspirin use, we estimated that 16 of these cases of preterm preeclampsia would have been avoided if this group had received prophylaxis.

CONCLUSION

In a high-prevalence setting, the Fetal Medicine Foundation algorithm can identify women who are more likely to develop preterm preeclampsia. Not accounting for the effect of aspirin underestimates the screening performance.

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来源期刊
AJOG global reports
AJOG global reports Endocrinology, Diabetes and Metabolism, Obstetrics, Gynecology and Women's Health, Perinatology, Pediatrics and Child Health, Urology
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1.20
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