Borges Manna Luiza, Syngelaki Argyro, Würtz Peter, Koivu Aki, Sairanen Mikko, Pölönen Tuukka, Nicolaides Kypros H
Harris Birthright Research Centre for Fetal Medicine, Fetal Medicine Research Institute, King's College Hospital, London, United Kingdom.
Nightingale Health, Helsinki, Finland.
Am J Obstet Gynecol. 2025 Jul;233(1):71.e1-71.e14. doi: 10.1016/j.ajog.2024.12.019. Epub 2024 Dec 16.
Current strategies for predicting gestational diabetes mellitus demonstrate suboptimal performance.
To investigate whether nuclear magnetic resonance-based metabolomic profiling of maternal blood can be used for first-trimester prediction of gestational diabetes mellitus.
This was a prospective study of 20,000 women attending routine pregnancy care visits at 11 to 13 weeks' gestation. Metabolic profiles were assessed using a high-throughput nuclear magnetic resonance metabolomics platform. To inform translational applications, we focused on a panel of 34 clinically validated biomarkers for detailed analysis and risk modeling. All biomarkers were used to generate a multivariable logistic regression model to predict gestational diabetes mellitus. Data were split using a random seed into a 70% training set and a 30% validation set. Performance of the multivariable models was measured by receiver operating characteristic curve analysis and detection rates at fixed 10% and 20% false positive rates. Calibration for the combined risk model for all gestational diabetes mellitus was assessed visually through a figure showing the observed incidence against the predicted risk for gestational diabetes mellitus. A sensitivity analysis was conducted excluding the 64 women in our cohort who were diagnosed with gestational diabetes mellitus before 20 weeks' gestation.
The concentrations of several metabolomic biomarkers, including cholesterol, triglycerides, fatty acids, and amino acids, differed between women who developed gestational diabetes mellitus and those who did not. Addition of biomarker profile improved the prediction of gestational diabetes mellitus provided by maternal demographic characteristics and elements of medical history alone (before addition: area under the receiver operating characteristic curve, 0.790; detection rate, 50% [95% confidence interval, 44.3%-55.7%] at 10% false positive rate; and detection rate, 63% [95% confidence interval, 57.4%-68.3%] at 20% false positive rate; after addition: 0.840; 56% [50.3%-61.6%]; and 73% [67.7%-77.8%]; respectively). The performance of combined testing was better for gestational diabetes mellitus treated by insulin (area under the receiver operating characteristic curve, 0.905; detection rate, 76% [95% confidence interval, 67.5%-83.2%] at 10% false positive rate; and detection rate, 85% [95% confidence interval, 77.4%-90.9%] at 20% false positive rate) than gestational diabetes mellitus treated by diet alone (area under the receiver operating characteristic curve, 0.762; detection rate, 47% [95% confidence interval, 37.7%-56.5%] at 10% false positive rate; and detection rate, 64% [95% confidence interval, 54.5%-72.7%] at 20% false positive rate). The calibration plot showed good agreement between the observed incidence of gestational diabetes mellitus and the incidence predicted by the combined risk model. In the sensitivity analysis excluding the women diagnosed with gestational diabetes mellitus before 20 weeks' gestation, there was a negligible difference in the area under the receiver operating characteristic curve compared with the results from the entire cohort combined.
Addition of nuclear magnetic resonance-based metabolomic profiling to risk factors can provide first-trimester prediction of gestational diabetes mellitus.
目前预测妊娠期糖尿病的策略表现欠佳。
探讨基于核磁共振的孕妇血液代谢组学分析能否用于孕早期预测妊娠期糖尿病。
这是一项对20000名在妊娠11至13周进行常规孕期检查的女性的前瞻性研究。使用高通量核磁共振代谢组学平台评估代谢谱。为指导转化应用,我们重点关注一组34种经过临床验证的生物标志物进行详细分析和风险建模。所有生物标志物用于生成多变量逻辑回归模型以预测妊娠期糖尿病。数据使用随机种子分为70%的训练集和30%的验证集。多变量模型的性能通过受试者工作特征曲线分析以及在固定10%和20%假阳性率下的检测率来衡量。通过显示妊娠期糖尿病的观察发病率与预测风险的图表直观评估所有妊娠期糖尿病联合风险模型的校准情况。进行敏感性分析,排除我们队列中在妊娠20周前被诊断为妊娠期糖尿病的64名女性。
包括胆固醇、甘油三酯、脂肪酸和氨基酸在内的几种代谢组学生物标志物的浓度在发生妊娠期糖尿病的女性和未发生妊娠期糖尿病的女性之间存在差异。添加生物标志物谱改善了仅由孕妇人口统计学特征和病史因素提供的妊娠期糖尿病预测(添加前:受试者工作特征曲线下面积,0.790;在10%假阳性率下的检测率,50%[95%置信区间,44.3%-55.7%];在20%假阳性率下的检测率,63%[95%置信区间,57.4%-68.3%];添加后:0.840;56%[50.---61.6%];和73%[67.7%-77.8%];分别)。联合检测对胰岛素治疗的妊娠期糖尿病的性能更好(受试者工作特征曲线下面积,0.905;在10%假阳性率下的检测率,76%[95%置信区间,67.5%-83.2%];在20%假阳性率下的检测率,85%[95%置信区间,77.4%-90.9%]),优于仅饮食治疗的妊娠期糖尿病(受试者工作特征曲线下面积,0.762;在10%假阳性率下的检测率,47%[95%置信区间,37.7%-56.5%];在20%假阳性率下的检测率,64%[95%置信区间,54.5%-72.7%])。校准图显示妊娠期糖尿病的观察发病率与联合风险模型预测的发病率之间具有良好的一致性。在排除妊娠20周前被诊断为妊娠期糖尿病的女性的敏感性分析中,与整个队列合并的结果相比,受试者工作特征曲线下面积的差异可忽略不计。
在风险因素中添加基于核磁共振的代谢组学分析可提供孕早期妊娠期糖尿病预测。