The Cardiomyopathy Research Group State Key Laboratory of Cardiovascular Disease Fuwai HospitalNational Center for Cardiovascular DiseasesChinese Academy of Medical Sciences and Peking Union Medical College Beijing China.
Department of Cardiovascular Surgery Fuwai HospitalNational Center for Cardiovascular DiseasesChinese Academy of Medical Sciences and Peking Union Medical College Beijing China.
J Am Heart Assoc. 2021 Nov 16;10(22):e021825. doi: 10.1161/JAHA.121.021825. Epub 2021 Oct 30.
Background Cardiac surgery-associated acute kidney injury (CSA-AKI) is a common postoperative complication following cardiac surgery. Currently, there are no reliable methods for the early prediction of CSA-AKI in hospitalized patients. This study developed and evaluated the diagnostic use of metabolomics-based biomarkers in patients with CSA-AKI. Methods and Results A total of 214 individuals (122 patients with acute kidney injury [AKI], 92 patients without AKI as controls) were enrolled in this study. Plasma samples were analyzed by liquid chromatography tandem mass spectrometry using untargeted and targeted metabolomic approaches. Time-dependent effects of selected metabolites were investigated in an AKI swine model. Multiple machine learning algorithms were used to identify plasma metabolites positively associated with CSA-AKI. Metabolomic analyses from plasma samples taken within 24 hours following cardiac surgery were useful for distinguishing patients with AKI from controls without AKI. Gluconic acid, fumaric acid, and pseudouridine were significantly upregulated in patients with AKI. A random forest model constructed with selected clinical parameters and metabolites exhibited excellent discriminative ability (area under curve, 0.939; 95% CI, 0.879-0.998). In the AKI swine model, plasma levels of the 3 discriminating metabolites increased in a time-dependent manner (, 0.480-0.945). Use of this AKI predictive model was then confirmed in the validation cohort (area under curve, 0.972; 95% CI, 0.947-0.996). The predictive model remained robust when tested in a subset of patients with early-stage AKI in the validation cohort (area under curve, 0.943; 95% CI, 0.883-1.000). Conclusions High-resolution metabolomics is sufficiently powerful for developing novel biomarkers. Plasma levels of 3 metabolites were useful for the early identification of CSA-AKI.
心脏手术后急性肾损伤(CSA-AKI)是心脏手术后常见的术后并发症。目前,尚没有可靠的方法可以对住院患者的 CSA-AKI 进行早期预测。本研究开发并评估了基于代谢组学的生物标志物在 CSA-AKI 患者中的诊断用途。
本研究共纳入 214 名个体(急性肾损伤 [AKI] 患者 122 例,无 AKI 患者 92 例作为对照)。采用液相色谱串联质谱法进行非靶向和靶向代谢组学分析。在 AKI 猪模型中研究了选定代谢物的时间依赖性作用。采用多种机器学习算法识别与 CSA-AKI 呈正相关的血浆代谢物。心脏手术后 24 小时内采集的血浆样本进行代谢组学分析有助于区分 AKI 患者和无 AKI 患者。AKI 患者的葡萄糖酸、延胡索酸和假尿嘧啶显著上调。使用选定的临床参数和代谢物构建的随机森林模型显示出优异的判别能力(曲线下面积,0.939;95%置信区间,0.879-0.998)。在 AKI 猪模型中,3 种鉴别代谢物的血浆水平呈时间依赖性增加(,0.480-0.945)。在验证队列中对该 AKI 预测模型进行了验证(曲线下面积,0.972;95%置信区间,0.947-0.996)。在验证队列中早期 AKI 患者亚组中进行测试时,预测模型仍然稳健(曲线下面积,0.943;95%置信区间,0.883-1.000)。
高分辨率代谢组学具有足够的能力开发新型生物标志物。3 种代谢物的血浆水平有助于早期识别 CSA-AKI。