Bahado-Singh Ray O, Syngelaki Argyro, Akolekar Ranjit, Mandal Rupsari, Bjondahl Trent C, Han Beomsoo, Dong Edison, Bauer Samuel, Alpay-Savasan Zeynep, Graham Stewart, Turkoglu Onur, Wishart David S, Nicolaides Kypros H
Department of Obstetrics and Gynecology, William Beaumont Health, Royal Oak, MI.
Department of Obstetrics and Gynecology, King's College Hospital, London, United Kingdom.
Am J Obstet Gynecol. 2015 Oct;213(4):530.e1-530.e10. doi: 10.1016/j.ajog.2015.06.044. Epub 2015 Jun 23.
We sought to perform validation studies of previously published and newly derived first-trimester metabolomic algorithms for prediction of early preeclampsia (PE).
Nuclear magnetic resonance-based metabolomic analysis was performed on first-trimester serum in 50 women who subsequently developed early PE and in 108 first-trimester controls. Random stratification and allocation was used to divide cases into a discovery group (30 early PE and 65 controls) for generation of the biomarker model(s) and a validation group (20 early PE and 43 controls) to ensure an unbiased assessment of the predictive algorithms. Cross-validation testing on the different algorithms was performed to confirm their robustness before use. Metabolites, demographic features, clinical characteristics, and uterine Doppler pulsatility index data were evaluated. Area under the receiver operator characteristic curve (AUC), 95% confidence interval (CI), sensitivity, and specificity of the biomarker models were derived.
Validation testing found that the metabolite-only model had an AUC of 0.835 (95% CI, 0.769-0.941) with a 75% sensitivity and 74.4% specificity and for the metabolites plus uterine Doppler pulsatility index model it was 0.916 (95% CI, 0.836-0.996), 90%, and 88.4%, respectively. Predictive metabolites included arginine and 2-hydroxybutyrate, which are known to be involved in vascular dilation, and insulin resistance and impaired glucose regulation, respectively.
We found confirmatory evidence that first-trimester metabolomic biomarkers can predict future development of early PE.
我们试图对先前发表的以及新推导的用于预测早发型子痫前期(PE)的孕早期代谢组学算法进行验证研究。
对50例随后发生早发型PE的孕妇及108例孕早期对照者的孕早期血清进行基于核磁共振的代谢组学分析。采用随机分层和分配的方法将病例分为用于生成生物标志物模型的发现组(30例早发型PE患者和65例对照者)和用于确保对预测算法进行无偏倚评估的验证组(20例早发型PE患者和43例对照者)。在使用前对不同算法进行交叉验证测试以确认其稳健性。对代谢物、人口统计学特征、临床特征及子宫多普勒搏动指数数据进行评估。得出生物标志物模型的受试者工作特征曲线下面积(AUC)、95%置信区间(CI)、敏感性和特异性。
验证测试发现,仅代谢物模型的AUC为0.835(95%CI,0.769 - 0.941),敏感性为75%,特异性为74.4%;代谢物加子宫多普勒搏动指数模型的AUC为0.916(95%CI,0.836 - 0.996),敏感性为90%,特异性为88.4%。预测性代谢物包括精氨酸和2 - 羟基丁酸,已知它们分别参与血管舒张、胰岛素抵抗及葡萄糖调节受损过程。
我们发现确证性证据表明孕早期代谢组学生物标志物可预测早发型PE的未来发生情况。