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机器学习模型预测孕中期产前筛查唐氏综合征。

A machine learning model for the prediction of down syndrome in second trimester antenatal screening.

机构信息

Department of Obstetrics and Gynecology, Peking Union Medical College Hospital, Chinese Academy of Medical Science & Peking Union Medical College, Beijing, PR China; National Center for Clinical Laboratories, Beijing Hospital, National Center of Gerontology, Beijing Engineering Research Center of Laboratory Medicine, Beijing, PR China.

College of Computer Science and Technology, Zhejiang University, Hangzhou, PR China.

出版信息

Clin Chim Acta. 2021 Oct;521:206-211. doi: 10.1016/j.cca.2021.07.015. Epub 2021 Jul 15.

Abstract

BACKGROUND

Down syndrome (DS) is the most common human chromosomal abnormality. About 1200 laboratories carry out antenatal screening for DS in second trimester pregnancies in China. Their prenatal assessment of DS pregnancy risk is based on biometric calculations conducted on maternal serum biochemical markers and ultrasonic markers of fetal growth. However, the performance of this triple test for DS in second trimester pregnancies has a false positive rate of 5%, and a detection rate of about 60%∼65%.

METHOD

A total of 58,972 pregnant women, including 49 DS cases, who had undergone DS screening in the second trimester were retrospectively included and a machine learning (ML) model based on random forest was built to predict DS. In addition, the model was applied to another hospital data set of 27,170 pregnant women, including 27 DS cases, to verify the predictive efficiency of the model.

RESULTS

The ML model gave a DS detection rate of 66.7%, with a 5% false positive rate in the model data set. In the external verification data set, the ML model achieved a DS detection rate of 85.2%, with a 5% false positive rate . In comparison with the current laboratory risk model, the ML model improves the DS detection rate with the same false positive rate, while the difference has no significance.

CONCLUSIONS

The ML model for DS detection described here has a comparable detection rate with the same false positive rate as the DS risk screening software currently used in China. Our ML model exhibited robust performance and good extrapolation, and could function as an alternative tool for DS risk assessment in second trimester maternal serum.

摘要

背景

唐氏综合征(DS)是最常见的人类染色体异常。在中国,约有 1200 家实验室在孕中期对唐氏综合征进行产前筛查。他们对唐氏综合征妊娠风险的产前评估是基于对母体血清生化标志物和胎儿生长超声标志物的生物计量计算。然而,这种孕中期三联筛查唐氏综合征的方法,其假阳性率为 5%,检出率约为 60%~65%。

方法

共纳入 58972 例接受孕中期唐氏综合征筛查的孕妇,包括 49 例唐氏综合征病例,建立基于随机森林的机器学习(ML)模型预测唐氏综合征。此外,该模型还应用于另一家医院的 27170 例孕妇(包括 27 例唐氏综合征病例)数据进行验证。

结果

该 ML 模型的唐氏综合征检出率为 66.7%,模型数据集的假阳性率为 5%。在外部验证数据集,ML 模型的唐氏综合征检出率为 85.2%,假阳性率为 5%。与目前的实验室风险模型相比,该 ML 模型在相同的假阳性率下提高了唐氏综合征的检出率,且差异无统计学意义。

结论

本研究中描述的唐氏综合征检测 ML 模型具有与中国目前使用的唐氏综合征风险筛查软件相当的检出率和相同的假阳性率。我们的 ML 模型表现出稳健的性能和良好的外推性,可作为孕中期母血清唐氏综合征风险评估的替代工具。

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