Arizona Metabolomics Laboratory, College of Health Solutions, Arizona State University, 850 N 5th Street, Phoenix, Arizona 85004, United States.
Systems Biology Institute, Cellular and Molecular Physiology, Yale School of Medicine, West Haven, Connecticut 06516, United States.
J Proteome Res. 2021 Sep 3;20(9):4303-4317. doi: 10.1021/acs.jproteome.1c00290. Epub 2021 Aug 6.
Alzheimer's disease (AD) is the most common cause of dementia, accounting for an estimated 60-80% of cases, and is the sixth-leading cause of death in the United States. While considerable advancements have been made in the clinical care of AD, it remains a complicated disorder that can be difficult to identify definitively in its earliest stages. Recently, mass spectrometry (MS)-based metabolomics has shown significant potential for elucidation of disease mechanisms and identification of therapeutic targets as well diagnostic and prognostic markers that may be useful in resolving some of the difficulties affecting clinical AD studies, such as effective stratification. In this study, complementary gas chromatography- and liquid chromatography-MS platforms were used to detect and monitor 2080 metabolites and features in 48 postmortem tissue samples harvested from the superior frontal gyrus of male and female subjects. Samples were taken from four groups: 12 normal control (NC) patients, 12 cognitively normal subjects characterized as high pathology controls (HPC), 12 subjects with nonspecific mild cognitive impairment (MCI), and 12 subjects with AD. Multivariate statistics informed the construction and cross-validation ( < 0.01) of partial least squares-discriminant analysis (PLS-DA) models defined by a nine-metabolite panel of disease markers (lauric acid, stearic acid, myristic acid, palmitic acid, palmitoleic acid, and four unidentified mass spectral features). Receiver operating characteristic analysis showed high predictive accuracy of the resulting PLS-DA models for discrimination of NC (97%), HPC (92%), MCI (∼96%), and AD (∼96%) groups. Pathway analysis revealed significant disturbances in lysine degradation, fatty acid metabolism, and the degradation of branched-chain amino acids. Network analysis showed significant enrichment of 11 enzymes, predominantly within the mitochondria. The results expand basic knowledge of the metabolome related to AD and reveal pathways that can be targeted therapeutically. This study also provides a promising basis for the development of larger multisite projects to validate these candidate markers in readily available biospecimens such as blood to enable the effective screening, rapid diagnosis, accurate surveillance, and therapeutic monitoring of AD. All raw mass spectrometry data have been deposited to MassIVE (data set identifier MSV000087165).
阿尔茨海默病(AD)是痴呆症最常见的病因,估计占病例的 60-80%,是美国第六大死因。尽管在 AD 的临床护理方面取得了相当大的进展,但它仍然是一种复杂的疾病,在其早期阶段很难明确诊断。最近,基于质谱(MS)的代谢组学在阐明疾病机制以及鉴定治疗靶点以及诊断和预后标志物方面显示出了巨大的潜力,这些标志物可能有助于解决影响 AD 临床研究的一些困难,例如有效分层。在这项研究中,互补的气相色谱和液相色谱-MS 平台用于检测和监测 48 个死后组织样本中 2080 种代谢物和特征,这些样本取自男性和女性受试者的额上回。样本取自四个组:12 名正常对照(NC)患者、12 名认知正常的高病理对照(HPC)患者、12 名非特异性轻度认知障碍(MCI)患者和 12 名 AD 患者。多元统计信息用于构建和交叉验证(<0.01)由疾病标志物(月桂酸、硬脂酸、肉豆蔻酸、棕榈酸、棕榈油酸和四个未识别的质谱特征)组成的九个代谢物谱面板定义的偏最小二乘判别分析(PLS-DA)模型。接收者操作特性分析显示,由此产生的 PLS-DA 模型对 NC(97%)、HPC(92%)、MCI(∼96%)和 AD(∼96%)组的区分具有很高的预测准确性。途径分析显示赖氨酸降解、脂肪酸代谢和支链氨基酸降解的显著紊乱。网络分析显示 11 种酶显著富集,主要在线粒体中。研究结果扩展了与 AD 相关的代谢组学的基本知识,并揭示了可以进行治疗靶向的途径。这项研究还为开发更大的多站点项目提供了有希望的基础,以在易于获得的生物样本(如血液)中验证这些候选标志物,从而实现 AD 的有效筛选、快速诊断、准确监测和治疗监测。所有原始质谱数据都已存入 MassIVE(数据集标识符 MSV000087165)。