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基于母体血清代谢组学特征的先天性缺陷筛查试验方案。

A screening test proposal for congenital defects based on maternal serum metabolomics profile.

机构信息

Department of Medicine, Surgery, and Dentistry, Scuola Medica Salernitana, University of Salerno, Baronissi, Salerno, Italy; Theoreo srl, Montecorvino Pugliano, Salerno, Italy; Department of Chemistry and Biology, "A. Zambelli," University of Salerno, Fisciano, Salerno, Italy.

Theoreo srl, Montecorvino Pugliano, Salerno, Italy; Department of Chemistry and Biology, "A. Zambelli," University of Salerno, Fisciano, Salerno, Italy.

出版信息

Am J Obstet Gynecol. 2023 Mar;228(3):342.e1-342.e12. doi: 10.1016/j.ajog.2022.08.050. Epub 2022 Sep 6.

Abstract

BACKGROUND

Historically, noninvasive techniques are only able to identify chromosomal anomalies that accounted for <50% of all congenital defects; the other congenital defects are diagnosed via ultrasound evaluations in the later stages of pregnancy. Metabolomic analysis may provide an important improvement, potentially addressing the need for novel noninvasive and multicomprehensive early prenatal screening tools. A growing body of evidence outlines notable metabolic alterations in different biofluids derived from pregnant women carrying fetuses with malformations, suggesting that such an approach may allow the discovery of biomarkers common to most fetal malformations. In addition, metabolomic investigations are inexpensive, fast, and risk-free and often generate high performance screening tests that may allow early detection of a given pathology.

OBJECTIVE

This study aimed to evaluate the diagnostic accuracy of an ensemble machine learning model based on maternal serum metabolomic signatures for detecting fetal malformations, including both chromosomal anomalies and structural defects.

STUDY DESIGN

This was a multicenter observational retrospective study that included 2 different arms. In the first arm, a total of 654 Italian pregnant women (334 cases with fetuses with malformations and 320 controls with normal developing fetuses) were enrolled and used to train an ensemble machine learning classification model based on serum metabolomics profiles. In the second arm, serum samples obtained from 1935 participants of the New Zealand Screening for Pregnancy Endpoints study were blindly analyzed and used as a validation cohort. Untargeted metabolomics analysis was performed via gas chromatography-mass spectrometry. Of note, 9 individual machine learning classification models were built and optimized via cross-validation (partial least squares-discriminant analysis, linear discriminant analysis, naïve Bayes, decision tree, random forest, k-nearest neighbor, artificial neural network, support vector machine, and logistic regression). An ensemble of the models was developed according to a voting scheme statistically weighted by the cross-validation accuracy and classification confidence of the individual models. This ensemble machine learning system was used to screen the validation cohort.

RESULTS

Significant metabolic differences were detected in women carrying fetuses with malformations, who exhibited lower amounts of palmitic, myristic, and stearic acids; N-α-acetyllysine; glucose; L-acetylcarnitine; fructose; para-cresol; and xylose and higher levels of serine, alanine, urea, progesterone, and valine (P<.05), compared with controls. When applied to the validation cohort, the screening test showed a 99.4%±0.6% accuracy (specificity of 99.9%±0.1% [1892 of 1894 controls correctly identified] with a sensitivity of 78%±6% [32 of 41 fetal malformations correctly identified]).

CONCLUSION

This study provided clinical validation of a metabolomics-based prenatal screening test to detect the presence of congenital defects. Further investigations are needed to enable the identification of the type of malformation and to confirm these findings on even larger study populations.

摘要

背景

传统上,非侵入性技术只能识别占所有先天缺陷<50%的染色体异常;其他先天缺陷是通过妊娠后期的超声评估来诊断的。代谢组学分析可能提供重要的改进,有可能解决对新型非侵入性和多综合早期产前筛查工具的需求。越来越多的证据表明,来自患有畸形胎儿的孕妇的不同生物流体中存在显著的代谢改变,这表明这种方法可能允许发现大多数胎儿畸形共有的生物标志物。此外,代谢组学研究成本低、速度快、风险小,且通常生成高性能的筛查测试,可能允许早期发现特定的病理。

目的

本研究旨在评估基于母体血清代谢组特征的集成机器学习模型在检测胎儿畸形(包括染色体异常和结构缺陷)方面的诊断准确性。

研究设计

这是一项多中心观察性回顾性研究,包括 2 个不同的臂。在第一臂中,共纳入了 654 名意大利孕妇(334 例胎儿畸形和 320 例正常发育胎儿的对照组),并使用基于血清代谢组谱的集成机器学习分类模型进行训练。在第二臂中,1935 名新西兰妊娠终点筛查研究参与者的血清样本被盲法分析,并作为验证队列使用。通过气相色谱-质谱法进行非靶向代谢组学分析。值得注意的是,通过交叉验证(偏最小二乘判别分析、线性判别分析、朴素贝叶斯、决策树、随机森林、k-最近邻、人工神经网络、支持向量机和逻辑回归)构建并优化了 9 个单独的机器学习分类模型。根据个体模型的交叉验证准确性和分类置信度进行统计加权的投票方案开发了模型集成。该集成机器学习系统用于筛选验证队列。

结果

与对照组相比,患有胎儿畸形的孕妇表现出较低的棕榈酸、肉豆蔻酸、硬脂酸、N-α-乙酰赖氨酸、葡萄糖、L-乙酰肉碱、果糖、对甲酚和木糖水平,以及较高的丝氨酸、丙氨酸、尿素、孕酮和缬氨酸水平(P<.05)。当应用于验证队列时,该筛查测试的准确率为 99.4%±0.6%(特异性为 99.9%±0.1%[1894 名对照者中有 1892 名正确识别],灵敏度为 78%±6%[41 例胎儿畸形中有 32 例正确识别])。

结论

本研究为基于代谢组学的产前筛查试验检测先天缺陷的存在提供了临床验证。需要进一步的研究来识别畸形的类型,并在更大的研究人群中确认这些发现。

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