Université de Paris, INSERM UMRS 1124, Paris, France.
Department of Natural Sciences, School of Arts and Sciences, Lebanese American University, Beirut, Lebanon.
PLoS One. 2020 Nov 25;15(11):e0242019. doi: 10.1371/journal.pone.0242019. eCollection 2020.
Aortic valve stenosis (AVS) is a prevalent condition among the elderly population that eventually requires aortic valve replacement. The lack of reliable biomarkers for AVS poses a challenge for its early diagnosis and the application of preventive measures. Untargeted gas chromatography mass spectrometry (GC-MS) metabolomics was applied in 46 AVS cases and 46 controls to identify plasma and urine metabolites underlying AVS risk. Multivariate data analyses were performed on pre-processed data (e.g. spectral peak alignment), in order to detect changes in metabolite levels in AVS patients and to evaluate their performance in group separation and sensitivity of AVS prediction, followed by regression analyses to test for their association with AVS. Through untargeted analysis of 190 urine and 130 plasma features that could be detected and quantified in the GC-MS spectra, we identified contrasting levels of 22 urine and 21 plasma features between AVS patients and control subjects. Following metabolite assignment, we observed significant changes in the concentration of known metabolites in urine (n = 14) and plasma (n = 15) that distinguish the metabolomic profiles of AVS patients from healthy controls. Associations with AVS were replicated in both plasma and urine for about half of these metabolites. Among these, 2-Oxovaleric acid, elaidic acid, myristic acid, palmitic acid, estrone, myo-inositol showed contrasting trends of regulation in the two biofluids. Only trans-Aconitic acid and 2,4-Di-tert-butylphenol showed consistent patterns of regulation in both plasma and urine. These results illustrate the power of metabolomics in identifying potential disease-associated biomarkers and provide a foundation for further studies towards early diagnostic applications in severe heart conditions that may prevent surgery in the elderly.
主动脉瓣狭窄(AVS)是老年人群中常见的病症,最终需要进行主动脉瓣置换。缺乏可靠的 AVS 生物标志物给其早期诊断和预防措施的应用带来了挑战。本研究应用非靶向气相色谱-质谱联用(GC-MS)代谢组学方法,在 46 例 AVS 患者和 46 例对照者中鉴定了与 AVS 风险相关的血浆和尿液代谢物。对预处理数据(如光谱峰对齐)进行多变量数据分析,以检测 AVS 患者代谢物水平的变化,并评估其在组间分离和 AVS 预测敏感性方面的性能,然后进行回归分析以检测其与 AVS 的相关性。通过对 GC-MS 谱图中可检测和定量的 190 种尿液和 130 种血浆特征进行非靶向分析,我们在 AVS 患者和对照者之间鉴定出 22 种尿液和 21 种血浆特征的差异水平。在代谢物归属后,我们观察到尿液(n = 14)和血浆(n = 15)中已知代谢物浓度的显著变化,这些变化区分了 AVS 患者和健康对照者的代谢组学特征。这些代谢物中约有一半在血浆和尿液中与 AVS 存在关联。在这些代谢物中,2-氧代戊酸、反油酸、肉豆蔻酸、棕榈酸、雌酮、肌醇呈现出两种生物流体中不同的调节趋势。只有反乌头酸和 2,4-二叔丁基苯酚在血浆和尿液中均呈现出一致的调节模式。这些结果说明了代谢组学在识别潜在疾病相关生物标志物方面的强大功能,并为进一步研究提供了基础,以期在严重心脏疾病中实现早期诊断应用,从而可能避免老年人进行手术。