Ningxia Medical University, Yinchuan, 750004, Ningxia, China.
Department of Cardiology, General Hospital of Ningxia Medical University, Yinchuan, 750004, Ningxia, China.
Sci Rep. 2023 Nov 23;13(1):20535. doi: 10.1038/s41598-023-47783-5.
A multi-class classification model for acute coronary syndrome (ACS) remains to be constructed based on multi-fluid metabolomics. Major confounders may exert spurious effects on the relationship between metabolism and ACS. The study aims to identify an independent biomarker panel for the multiclassification of HC, UA, and AMI by integrating serum and urinary metabolomics. We performed a liquid chromatography-tandem mass spectrometry (LC-MS/MS)-based metabolomics study on 300 serum and urine samples from 44 patients with unstable angina (UA), 77 with acute myocardial infarction (AMI), and 29 healthy controls (HC). Multinomial machine learning approaches, including multinomial adaptive least absolute shrinkage and selection operator (LASSO) regression and random forest (RF), and assessment of the confounders were applied to integrate a multi-class classification biomarker panel for HC, UA and AMI. Different metabolic landscapes were portrayed during the transition from HC to UA and then to AMI. Glycerophospholipid metabolism and arginine biosynthesis were predominant during the progression from HC to UA and then to AMI. The multiclass metabolic diagnostic model (MDM) dependent on ACS, including 2-ketobutyric acid, LysoPC(18:2(9Z,12Z)), argininosuccinic acid, and cyclic GMP, demarcated HC, UA, and AMI, providing a C-index of 0.84 (HC vs. UA), 0.98 (HC vs. AMI), and 0.89 (UA vs. AMI). The diagnostic value of MDM largely derives from the contribution of 2-ketobutyric acid, and LysoPC(18:2(9Z,12Z)) in serum. Higher 2-ketobutyric acid and cyclic GMP levels were positively correlated with ACS risk and atherosclerosis plaque burden, while LysoPC(18:2(9Z,12Z)) and argininosuccinic acid showed the reverse relationship. An independent multiclass biomarker panel for HC, UA, and AMI was constructed using the multinomial machine learning methods based on serum and urinary metabolite signatures.
基于多流体代谢组学构建急性冠状动脉综合征(ACS)的多类别分类模型。主要混杂因素可能对代谢与 ACS 之间的关系产生虚假影响。本研究旨在通过整合血清和尿液代谢组学,确定用于 HC、UA 和 AMI 多分类的独立生物标志物谱。我们对 44 例不稳定型心绞痛(UA)、77 例急性心肌梗死(AMI)和 29 例健康对照者(HC)的 300 例血清和尿液样本进行了基于液相色谱-串联质谱(LC-MS/MS)的代谢组学研究。采用多项自适应最小绝对收缩和选择算子(LASSO)回归和随机森林(RF)等多项机器学习方法,并评估混杂因素,整合了用于 HC、UA 和 AMI 的多类别分类生物标志物谱。在从 HC 到 UA 再到 AMI 的转变过程中描绘了不同的代谢景观。在从 HC 到 UA 再到 AMI 的进展过程中,甘油磷脂代谢和精氨酸生物合成占主导地位。依赖 ACS 的多类别代谢诊断模型(MDM)包括 2-酮丁酸、LysoPC(18:2(9Z,12Z))、精氨酸琥珀酸和环鸟苷酸,将 HC、UA 和 AMI 区分开来,提供了 0.84(HC 与 UA)、0.98(HC 与 AMI)和 0.89(UA 与 AMI)的 C 指数。MDM 的诊断价值主要来源于血清中 2-酮丁酸和 LysoPC(18:2(9Z,12Z))的贡献。较高的 2-酮丁酸和环鸟苷酸水平与 ACS 风险和动脉粥样硬化斑块负担呈正相关,而 LysoPC(18:2(9Z,12Z))和精氨酸琥珀酸则呈负相关。使用基于血清和尿液代谢物特征的多项机器学习方法构建了用于 HC、UA 和 AMI 的独立多类别生物标志物谱。