Hu Jichang, Luo Yong, Wang Xiaochuan
Department of Pathophysiology School of Basic Medicine Key Laboratory of Education Ministry/Hubei Province of China for Neurological Disorders Tongji Medical College, Huazhong University of Science and Technology, Wuhan, China.
Department of Pathophysiology School of Basic Medicine Key Laboratory of Education Ministry/Hubei Province of China for Neurological Disorders Tongji Medical College, Huazhong University of Science and Technology, Wuhan, China.
J Prev Alzheimers Dis. 2025 Jun;12(6):100128. doi: 10.1016/j.tjpad.2025.100128. Epub 2025 Mar 11.
The swift rise in the prevalence of Alzheimer's disease (AD) alongside its significant societal and economic impact has created a pressing demand for effective interventions and treatments. However, there are no available treatments that can modify the progression of the disease.
Eight AD brain tissues datasets and three blood datasets were obtained. Consensus clustering was utilized as a method to discern the various subtypes of AD. Then, module genes were screened using weighted correlation network analysis (WGCNA). Furthermore, screening hub genes was conducted through machine-learning analyses. Finally, A comprehensive analysis using a systematic approach to druggable genome-wide Mendelian randomization (MR) was conducted.
Two AD subclasses were identified, namely cluster.A and cluster.B. The levels of gamma secretase activity, beta secretase activity, and amyloid-beta 42 were found to be significantly elevated in patients classified within cluster A when compared to those in cluster B. Furthermore, by utilizing the differentially expressed genes shared among these clusters, along with identifying druggable genes and applying WGCNA to these subtypes, we were able to develop a scoring system referred to as DG.score. This scoring system has demonstrated remarkable predictive capability for AD when evaluated against multiple datasets. Besides, A total of 30 distinct genes that may serve as potential drug targets for AD were identified across at least one of the datasets investigated, whether derived from brain samples or blood analyses. Among the identified genes, three specific candidates that are considered druggable (LIMK2, MAPK8, and NDUFV2) demonstrated significant expression levels in both blood and brain tissues. Furthermore, our research also revealed a potential association between the levels of LIMK2 and concentrations of CSF Aβ (OR 1.526 (1.155-2.018)), CSF p-tau (OR 1.106 (1.024-01.196)), and hippocampal size (OR 0.831 (0.702-0.948)).
This study provides a notable advancement to the existing literature by offering genetic evidence that underscores the potential therapeutic advantages of focusing on the druggable gene LIMK2 in the treatment of AD. This insight not only contributes to our understanding of AD but also guides future drug discovery efforts.
阿尔茨海默病(AD)患病率迅速上升,同时带来了重大的社会和经济影响,这使得对有效干预措施和治疗方法产生了迫切需求。然而,目前尚无能够改变该疾病进展的治疗方法。
获取了八个AD脑组织数据集和三个血液数据集。采用共识聚类法来识别AD的不同亚型。然后,使用加权基因共表达网络分析(WGCNA)筛选模块基因。此外,通过机器学习分析筛选枢纽基因。最后,采用全基因组孟德尔随机化(MR)的系统方法进行综合分析。
识别出两个AD亚类,即A簇和B簇。与B簇患者相比,发现A簇患者的γ-分泌酶活性、β-分泌酶活性和淀粉样β蛋白42水平显著升高。此外,通过利用这些簇之间共享的差异表达基因,识别可药物化基因并将WGCNA应用于这些亚型,我们能够开发一种称为DG.score的评分系统。在针对多个数据集进行评估时,该评分系统对AD显示出显著的预测能力。此外,在至少一个研究数据集中,无论来自脑样本还是血液分析,总共识别出30个可能作为AD潜在药物靶点的不同基因。在识别出的基因中,三个被认为可药物化的特定候选基因(LIMK2、MAPK8和NDUFV2)在血液和脑组织中均表现出显著的表达水平。此外,我们的研究还揭示了LIMK2水平与脑脊液Aβ浓度(OR 1.526(1.155 - 2.018))、脑脊液p-tau浓度(OR 1.106(1.024 - 01.196))和海马体积(OR 0.831(0.702 - 0.948))之间的潜在关联。
本研究为现有文献提供了显著进展,通过提供遗传证据强调了在AD治疗中关注可药物化基因LIMK2的潜在治疗优势。这一见解不仅有助于我们对AD的理解,还指导未来的药物发现工作。