Yang Qiqi, Han Xinyu, Ye Min, Jiang Tianxin, Wang Baoguo, Zhang Zhenfeng, Li Fei
Second Affiliated Hospital of Anhui University of Chinese Medicine, Hefei, China.
The First Clinical Medical School, Anhui University of Chinese Medicine, Hefei, China.
Front Aging Neurosci. 2024 Apr 12;16:1372605. doi: 10.3389/fnagi.2024.1372605. eCollection 2024.
Studies have reported that metabolic disturbance exhibits in patients with Alzheimer's disease (AD). Still, the presence of definitive evidence concerning the genetic effect of metabolites on AD risk remains insufficient. A systematic exploration of the genetic association between blood metabolites and AD would contribute to the identification of new targets for AD screening and prevention.
We conducted an exploratory two-sample Mendelian randomization (MR) study aiming to preliminarily identify the potential metabolites involved in AD development. A genome-wide association study (GWAS) involving 7,824 participants provided information on 486 human blood metabolites. Outcome information was obtained from a large-scale GWAS meta-analysis of AD, encompassing 21,982 cases and 41,944 controls of Europeans. The primary two-sample MR analysis utilized the inverse variance weighted (IVW) model while supplementary analyses used Weighted median (WM), MR Egger, Simple mode, and Weighted mode, followed by sensitivity analyses such as the heterogeneity test, horizontal pleiotropy test, and leave-one-out analysis. For the further identification of metabolites, replication and meta-analysis with FinnGen data, steiger test, linkage disequilibrium score regression, confounding analysis, and were conducted for further evaluation. Multivariable MR was performed to assess the direct effect of metabolites on AD. Besides, an extra replication analysis with EADB data was conducted for final evaluation of the most promising findings.
After rigorous genetic variant selection, IVW, complementary analysis, sensitivity analysis, replication and meta-analysis with the FinnGen data, five metabolites (epiandrosterone sulfate, X-12680, pyruvate, docosapentaenoate, and 1-stearoylglycerophosphocholine) were identified as being genetically associated with AD. MVMR analysis disclosed that genetically predicted these four known metabolites can directly influence AD independently of other metabolites. Only epiandrosterone sulfate and X-12680 remained suggestive significant associations with AD after replication analysis with the EADB data.
By integrating genomics with metabonomics, this study furnishes evidence substantiating the genetic association of epiandrosterone sulfate and X-12680 with AD. These findings hold significance for the screening, prevention, and treatment strategies for AD.
研究报告称,阿尔茨海默病(AD)患者存在代谢紊乱。然而,关于代谢物对AD风险的遗传效应的确定性证据仍然不足。系统探索血液代谢物与AD之间的遗传关联将有助于确定AD筛查和预防的新靶点。
我们进行了一项探索性两样本孟德尔随机化(MR)研究,旨在初步确定参与AD发病的潜在代谢物。一项涉及7824名参与者的全基因组关联研究(GWAS)提供了486种人体血液代谢物的信息。结局信息来自一项AD的大规模GWAS荟萃分析,该分析涵盖了21982例欧洲AD病例和41944例对照。主要的两样本MR分析采用逆方差加权(IVW)模型,补充分析采用加权中位数(WM)、MR Egger、简单模式和加权模式,随后进行敏感性分析,如异质性检验、水平多效性检验和留一法分析。为了进一步鉴定代谢物,对FinnGen数据进行了重复和荟萃分析、斯泰格检验、连锁不平衡评分回归、混杂分析,并进行了进一步评估。进行多变量MR以评估代谢物对AD的直接影响。此外,对最有前景的发现进行了额外的EADB数据重复分析以进行最终评估。
经过严格的遗传变异选择、IVW、补充分析、敏感性分析、对FinnGen数据进行重复和荟萃分析后,鉴定出五种代谢物(硫酸表雄酮、X-1268-0、丙酮酸、二十二碳五烯酸和1-硬脂酰甘油磷酸胆碱)与AD存在遗传关联。多变量MR分析表明,对这四种已知代谢物的遗传预测可独立于其他代谢物直接影响AD。在用EADB数据进行重复分析后,只有硫酸表雄酮和X-1268-0与AD仍存在显著关联。
本研究通过整合基因组学和代谢组学,提供了证据证实硫酸表雄酮和X-1268-0与AD的遗传关联。这些发现对AD的筛查、预防和治疗策略具有重要意义。