Greenberg Nicola, Grassano Antonio, Thambisetty Madhav, Lovestone Simon, Legido-Quigley Cristina
Pharmaceutical Sciences Research Division, King's College London, London, UK.
Electrophoresis. 2009 Apr;30(7):1235-9. doi: 10.1002/elps.200800589.
A specific, sensitive and essentially non-invasive assay to diagnose and monitor Alzheimer's disease (AD) would be valuable to both clinicians and medical researchers. The aim of this study was to perform a metabonomic statistical analysis on plasma fingerprints. Objectives were to investigate novel biomarkers indicative of AD, to consider the role of bile acids as AD biomarkers and to consider whether mild cognitive impairment (MCI) is a separate disease from AD. Samples were analysed by ultraperformance liquid chromatography-MS and resulting data sets were interpreted using soft-independent modelling of class analogy statistical analysis methods. PCA models did not show any grouping of subjects by disease state. Partial least-squares discriminant analysis (PLS-DS) models yielded class separation for AD. However, as with earlier studies, model validation revealed a predictive power of Q(2)<0.5 and indicating their unsuitability for predicting disease state. Three bile acids were extracted from the data and quantified, up-regulation was observed for MCI and AD patients. PLS-DA did not support MCI being considered as a separate disease from AD with MCI patient metabolic profiles being significantly closer to AD patients than controls. This study suggested that further investigation into the lipid fraction of the metabolome may yield useful biomarkers for AD and metabolomic profiles could be used to predict disease state in a clinical setting.
一种用于诊断和监测阿尔茨海默病(AD)的特异性、灵敏且基本无创的检测方法,对临床医生和医学研究人员都将具有重要价值。本研究的目的是对血浆指纹图谱进行代谢组学统计分析。目标包括研究指示AD的新型生物标志物,探讨胆汁酸作为AD生物标志物的作用,以及考虑轻度认知障碍(MCI)是否为一种与AD不同的疾病。通过超高效液相色谱-质谱对样本进行分析,并使用类相关软独立建模统计分析方法对所得数据集进行解读。主成分分析(PCA)模型未显示出按疾病状态对受试者进行分组的情况。偏最小二乘判别分析(PLS-DS)模型实现了AD的类别分离。然而,与早期研究一样,模型验证显示预测能力Q(2)<0.5,表明其不适用于预测疾病状态。从数据中提取并定量了三种胆汁酸,观察到MCI和AD患者中其上调。PLS-DA不支持将MCI视为一种与AD不同的疾病,MCI患者的代谢谱与AD患者比与对照组更为接近。本研究表明,对代谢组脂质部分的进一步研究可能会产生用于AD的有用生物标志物,并且代谢组学谱可用于在临床环境中预测疾病状态。