Marie Tremblay-Franco, Cécile Canlet, Audrey Carriere, Jean Nakhle, Anne Galinier, Jean-Charles Portais, Armelle Yart, Cédric Dray, Wan-Hsuan Lu, Justine Bertrand Michel, Sophie Guyonnet, Yves Rolland, Bruno Vellas, Julien Delrieu, Philippe de Souto Barreto, Luc Pénicaud, Louis Casteilla, Isabelle Ader
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引用次数: 0
摘要
阿尔茨海默病与代谢异常密切相关。我们的目的是区分认知能力下降的淀粉样蛋白阳性患者和认知能力保持完好的患者。我们对淀粉样蛋白阳性者在出现任何认知功能衰退迹象之前的血液样本进行了非靶向代谢组学研究,以区分认知功能衰退者和认知功能保持完好者。通过超临界流体色谱-高分辨质谱联用技术(SFC-HRMS)和核磁共振(NMR)代谢组学技术开发出了血浆代谢物特征。这两个代谢组学数据集由数据整合分析(Data Integration Analysis for Biomarker discovery using Latent approaches for Omics studies, DIABLO)进行分析,以确定能够描述认知功能衰退状况的最低代谢物集。仅凭 NMR 或 SFC-HRMS 数据无法预测认知功能衰退。然而,在已确定的 320 个代谢物中,一种整合了两个数据集的统计方法能够确定由 9 个代谢物(3-羟基丁酸、柠檬酸、琥珀酸、丙酮、蛋氨酸、葡萄糖、丝氨酸、鞘磷脂 d18:1/C26:0 和甘油三酯 C48:3)组成的最小特征,这些代谢物在统计学意义上能够在认知能力衰退前 3 年以上预测认知能力衰退。这项探索性研究中获得的代谢指纹可能有助于预测淀粉样蛋白阳性者会出现认知功能衰退。由于大脑淀粉样蛋白阳性在老年人中的高发率,识别出将出现认知功能衰退的成年人将有助于制定个性化的早期干预措施。
Integrative Multimodal Metabolomics to Early Predict Cognitive Decline Among Amyloid Positive Community-Dwelling Older Adults.
Alzheimer's disease is strongly linked to metabolic abnormalities. We aimed to distinguish amyloid-positive people who progressed to cognitive decline from those who remained cognitively intact. We performed untargeted metabolomics of blood samples from amyloid-positive individuals, before any sign of cognitive decline, to distinguish individuals who progressed to cognitive decline from those who remained cognitively intact. A plasma-derived metabolite signature was developed from Supercritical Fluid chromatography coupled with high-resolution mass spectrometry (SFC-HRMS) and nuclear magnetic resonance (NMR) metabolomics. The 2 metabolomics data sets were analyzed by Data Integration Analysis for Biomarker discovery using Latent approaches for Omics studies (DIABLO), to identify a minimum set of metabolites that could describe cognitive decline status. NMR or SFC-HRMS data alone cannot predict cognitive decline. However, among the 320 metabolites identified, a statistical method that integrated the 2 data sets enabled the identification of a minimal signature of 9 metabolites (3-hydroxybutyrate, citrate, succinate, acetone, methionine, glucose, serine, sphingomyelin d18:1/C26:0 and triglyceride C48:3) with a statistically significant ability to predict cognitive decline more than 3 years before decline. This metabolic fingerprint obtained during this exploratory study may help to predict amyloid-positive individuals who will develop cognitive decline. Due to the high prevalence of brain amyloid-positivity in older adults, identifying adults who will have cognitive decline will enable the development of personalized and early interventions.