Center for Clinical Research on Neurological Diseases, The First Affiliated Hospital, Dalian Medical University, 193 Lianhe Road, Dalian, China.
Liaoning Provincial Key Laboratory for Research on the Pathogenic Mechanisms of Neurological Diseases, The First Affiliated Hospital, Dalian Medical University, 193 Lianhe Road, Dalian, China.
Mol Neurodegener. 2021 Jan 23;16(1):4. doi: 10.1186/s13024-021-00425-8.
Parkinson's disease (PD) is a prevalent neurological disease in the elderly with increasing morbidity and mortality. Despite enormous efforts, rapid and accurate diagnosis of PD is still compromised. Metabolomics defines the final readout of genome-environment interactions through the analysis of the entire metabolic profile in biological matrices. Recently, unbiased metabolic profiling of human sample has been initiated to identify novel PD metabolic biomarkers and dysfunctional metabolic pathways, however, it remains a challenge to define reliable biomarker(s) for clinical use.
We presented a comprehensive metabolic evaluation for identifying crucial metabolic disturbances in PD using liquid chromatography-high resolution mass spectrometry-based metabolomics approach. Plasma samples from 3 independent cohorts (n = 460, 223 PD, 169 healthy controls (HCs) and 68 PD-unrelated neurological disease controls) were collected for the characterization of metabolic changes resulted from PD, antiparkinsonian treatment and potential interferences of other diseases. Unbiased multivariate and univariate analyses were performed to determine the most promising metabolic signatures from all metabolomic datasets. Multiple linear regressions were applied to investigate the associations of metabolites with age, duration time and stage of PD. The combinational biomarker model established by binary logistic regression analysis was validated by 3 cohorts.
A list of metabolites including amino acids, acylcarnitines, organic acids, steroids, amides, and lipids from human plasma of 3 cohorts were identified. Compared with HC, we observed significant reductions of fatty acids (FFAs) and caffeine metabolites, elevations of bile acids and microbiota-derived deleterious metabolites, and alterations in steroid hormones in drug-naïve PD. Additionally, we found that L-dopa treatment could affect plasma metabolome involved in phenylalanine and tyrosine metabolism and alleviate the elevations of bile acids in PD. Finally, a metabolite panel of 4 biomarker candidates, including FFA 10:0, FFA 12:0, indolelactic acid and phenylacetyl-glutamine was identified based on comprehensive discovery and validation workflow. This panel showed favorable discriminating power for PD.
This study may help improve our understanding of PD etiopathogenesis and facilitate target screening for therapeutic intervention. The metabolite panel identified in this study may provide novel approach for the clinical diagnosis of PD in the future.
帕金森病(PD)是一种常见的老年神经退行性疾病,发病率和死亡率不断上升。尽管付出了巨大努力,但 PD 的快速准确诊断仍受到影响。代谢组学通过分析生物基质中的整个代谢谱来定义基因组-环境相互作用的最终结果。最近,已经开始对人体样本进行无偏代谢组学分析,以鉴定新的 PD 代谢生物标志物和功能失调的代谢途径,但仍难以定义可靠的生物标志物用于临床应用。
我们使用基于液相色谱-高分辨质谱的代谢组学方法,对 PD 患者进行了全面的代谢评估,以确定关键的代谢紊乱。收集了来自 3 个独立队列(n=460,223 例 PD、169 例健康对照(HC)和 68 例与 PD 无关的神经疾病对照)的血浆样本,用于描述 PD、抗帕金森病治疗和其他疾病潜在干扰导致的代谢变化。进行了无偏多维和单变量分析,以确定所有代谢组学数据集中最有前途的代谢特征。多元线性回归用于研究代谢物与年龄、发病时间和 PD 分期的相关性。通过二元逻辑回归分析建立的组合生物标志物模型,通过 3 个队列进行了验证。
在来自 3 个队列的人血浆中,确定了包括氨基酸、酰基肉碱、有机酸、甾体、酰胺和脂类在内的一组代谢物。与 HC 相比,我们观察到未接受药物治疗的 PD 患者的脂肪酸(FFAs)和咖啡因代谢物显著降低,胆汁酸和微生物群衍生的有害代谢物升高,类固醇激素水平改变。此外,我们发现 L-多巴治疗可影响涉及苯丙氨酸和酪氨酸代谢的血浆代谢组,并减轻 PD 中胆汁酸的升高。最后,基于全面的发现和验证工作流程,确定了由 4 个生物标志物候选物(包括 FFA 10:0、FFA 12:0、吲哚乳酸和苯乙酰谷氨酰胺)组成的代谢物谱。该谱对 PD 具有良好的鉴别能力。
这项研究可能有助于提高我们对 PD 发病机制的认识,并促进治疗靶点的筛选。本研究中鉴定的代谢物谱可能为 PD 的临床诊断提供新方法。