Laboratory of Foodomics, CIAL (CSIC), Nicolas Cabrera 9, 28049 Madrid, Spain.
Anal Chem. 2012 Oct 16;84(20):8532-40. doi: 10.1021/ac301243k. Epub 2012 Sep 25.
Alzheimer's disease (AD) is the most prevalent form of dementia with an estimated worldwide prevalence of over 30 million people, and its incidence is expected to increase dramatically with an increasing elderly population. Up until now, cerebrospinal fluid (CSF) has been the preferred sample to investigate central nervous system (CNS) disorders since its composition is directly related to metabolite production in the brain. In this work, a nontargeted metabolomic approach based on capillary electrophoresis-mass spectrometry (CE-MS) is developed to examine metabolic differences in CSF samples from subjects with different cognitive status related to AD progression. To do this, CSF samples from 85 subjects were obtained from patients with (i) subjective cognitive impairment (SCI, i.e. control group), (ii) mild cognitive impairment (MCI) which remained stable after a follow-up period of 2 years, (iii) MCI which progressed to AD within a 2-year time after the initial MCI diagnostic and, (iv) diagnosed AD. A prediction model for AD progression using multivariate statistical analysis based on CE-MS metabolomics of CSF samples was obtained using 73 CSF samples. Using our model, we were able to correctly classify 97-100% of the samples in the diagnostic groups. The prediction power was confirmed in a blind small test set of 12 CSF samples, reaching a 83% of diagnostic accuracy. The obtained predictive values were higher than those reported with classical CSF AD biomarkers (Aβ42 and tau) but need to be confirmed in larger samples cohorts. Choline, dimethylarginine, arginine, valine, proline, serine, histidine, creatine, carnitine, and suberylglycine were identified as possible disease progression biomarkers. Our results suggest that CE-MS metabolomics of CSF samples can be a useful tool to predict AD progression.
阿尔茨海默病(AD)是最常见的痴呆症形式,估计全球有超过 3000 万人患有这种疾病,随着老年人口的增加,其发病率预计将大幅上升。到目前为止,脑脊液(CSF)一直是研究中枢神经系统(CNS)疾病的首选样本,因为其成分与大脑中的代谢产物直接相关。在这项工作中,开发了一种基于毛细管电泳-质谱(CE-MS)的非靶向代谢组学方法,以检查与 AD 进展相关的不同认知状态受试者的 CSF 样本中的代谢差异。为此,从患有以下疾病的患者中获得了 85 名受试者的 CSF 样本:(i)主观认知障碍(SCI,即对照组),(ii)轻度认知障碍(MCI),在 2 年的随访期后保持稳定,(iii)在初始 MCI 诊断后的 2 年内进展为 AD 的 MCI,以及(iv)AD 诊断。使用基于 CSF 样本 CE-MS 代谢组学的多元统计分析获得了用于 AD 进展预测的模型,该模型使用了 73 个 CSF 样本。使用我们的模型,我们能够正确分类 97-100%的诊断组样本。在一个包含 12 个 CSF 样本的盲小测试集中,我们的模型的预测能力得到了证实,诊断准确率达到了 83%。所获得的预测值高于使用经典 CSF AD 生物标志物(Aβ42 和 tau)报告的值,但需要在更大的样本队列中得到证实。胆碱、二甲基精氨酸、精氨酸、缬氨酸、脯氨酸、丝氨酸、组氨酸、肌酸、肉碱和丁二酰基甘氨酸被鉴定为可能的疾病进展生物标志物。我们的研究结果表明,CSF 样本的 CE-MS 代谢组学可能是预测 AD 进展的有用工具。