Department of cardiology, The Second Hospital of Jilin University, No.218 Ziqiang Street, Changchun, 130000, China.
Department of cardiology, China-Japan Union Hospital of Jilin University, No.126, Xiantan Street, Changchun, 130033, China.
Sci Rep. 2024 Oct 25;14(1):25283. doi: 10.1038/s41598-024-76514-7.
Pulmonary arterial hypertension (PAH) is a life-threatening disease with a poor prognosis, and metabolic abnormalities play a critical role in its development. This study used metabolomics, machine learning algorithms and bioinformatics to screen for potential metabolic biomarkers associated with the diagnosis of PAH. In this study, plasma samples were collected from 17 patients diagnosed with idiopathic pulmonary arterial hypertension (IPAH) and 20 healthy controls. Plasma metabolomic profiling was performed by high-performance liquid chromatography-mass spectrometry. Gene profiles of PAH patients were obtained from the GEO database. Key differentially expressed metabolites (DEMs) and metabolism-related genes were subsequently identified using machine learning algorithms. Twenty differential plasma metabolites associated with IPAH were identified (VIP score > 1 and p < 0 0.05), and enrichment analysis revealed the arginine biosynthesis pathway as the most altered pathway. Using machine learning models, including least absolute shrinkage and selection operator (LASSO), random forest (RF) and support vector machine (SVM), we extracted key metabolites that correlated with clinical phenotypes. Our results suggested that five metabolites, kynurenine, homoserine, tryptophan, AMP, and spermine, are potential biomarkers for IPAH. Bioinformatics analysis also identified 3 metabolism-related genes, MAPK6, SLC7A11 and CDC42BPA, that are strongly correlated with pulmonary hypertension, demonstrating strong predictive power and clinical relevance. Our findings revealed some key genes associated with metabolism in PH, and provided crucial information about complex metabolic reprogramming signals and may lead to the identification of useful metabolic biomarkers for the diagnosis of PAH.
肺动脉高压(PAH)是一种预后不良的危及生命的疾病,代谢异常在其发生发展中起着关键作用。本研究运用代谢组学、机器学习算法和生物信息学筛选与 PAH 诊断相关的潜在代谢生物标志物。本研究收集了 17 例特发性肺动脉高压(IPAH)患者和 20 例健康对照者的血浆样本。采用高效液相色谱-质谱联用技术进行血浆代谢组学分析。从 GEO 数据库中获取 PAH 患者的基因谱。随后,利用机器学习算法识别关键差异表达代谢物(DEMs)和与代谢相关的基因。鉴定出 20 种与 IPAH 相关的差异血浆代谢物(VIP 评分>1,p<0.05),并通过富集分析发现精氨酸生物合成途径是最受影响的途径。利用机器学习模型,包括最小绝对收缩和选择算子(LASSO)、随机森林(RF)和支持向量机(SVM),我们提取了与临床表型相关的关键代谢物。结果表明,5 种代谢物,犬尿氨酸、高丝氨酸、色氨酸、AMP 和亚精胺,可能是 IPAH 的潜在生物标志物。生物信息学分析还鉴定了 3 个与代谢相关的基因,MAPK6、SLC7A11 和 CDC42BPA,它们与肺动脉高压密切相关,具有很强的预测能力和临床相关性。本研究揭示了 PH 中与代谢相关的一些关键基因,为复杂代谢重编程信号提供了重要信息,可能有助于识别用于诊断 PAH 的有用代谢生物标志物。