Wang Wenxu, Lu Jincheng, Pan Ningyun, Zhang Huiying, Dai Jingcen, Li Jie, Chi Cheng, Zhang Liumei, Wang Liang, Zhang Mengying
School of Medical Information and Engineering, Xuzhou Medical University, Xuzhou, Jiangsu, China.
College of Life Science, Xuzhou Medical University, Xuzhou, Jiangsu, China.
Front Immunol. 2024 Nov 22;15:1462003. doi: 10.3389/fimmu.2024.1462003. eCollection 2024.
Alzheimer's disease (AD) is one of the most prevalent forms of dementia globally and remains an incurable condition that often leads to death. PANoptosis represents an emerging paradigm in programmed cell death, integrating three critical processes: pyroptosis, apoptosis, and necroptosis. Studies have shown that apoptosis, necroptosis, and pyroptosis play important roles in AD development. Therefore, targeting PANoptosis genes might lead to novel therapeutic targets and clinically relevant therapeutic approaches. This study aims to identify different molecular subtypes of AD and potential drugs for treating AD based on PANoptosis.
Differentially expressed PANoptosis genes associated with AD were identified via Gene Expression Omnibus (GEO) dataset GSE48350, GSE5281, and GSE122063. Least Absolute Shrinkage and Selection Operator (LASSO) regression was employed to construct a risk model linked to these PANoptosis genes. Consensus clustering analysis was conducted to define AD subtypes based on these genes. We further performed gene set variation analysis (GSVA), functional enrichment analysis, and immune cell infiltration analysis to investigate differences between the identified AD subtypes. Additionally, a protein-protein interaction (PPI) network was established to identify hub genes, and the DGIdb database was consulted to identify potential therapeutic compounds targeting these hub genes. Single-cell RNA sequencing analysis was utilized to assess differences in gene expression at the cellular level across subtypes.
A total of 24 differentially expressed PANoptosis genes (APANRGs) were identified in AD, leading to the classification of two distinct AD subgroups. The results indicate that these subgroups exhibit varying disease progression states, with the early subtype primarily linked to dysfunctional synaptic signaling. Furthermore, we identified hub genes from the differentially expressed genes (DEGs) between the two clusters and predicted 38 candidate drugs and compounds for early AD treatment based on these hub genes. Single-cell RNA sequencing analysis revealed that key genes associated with the early subtype are predominantly expressed in neuronal cells, while the differential genes for the metabolic subtype are primarily found in endothelial cells and astrocytes.
In summary, we identified two subtypes, including the AD early synaptic abnormality subtype as well as the immune-metabolic subtype. Additionally, ten hub genes, SLC17A7, SNAP25, GAD1, SLC17A6, SLC32A1, PVALB, SYP, GRIN2A, SLC12A5, and SYN2, were identified as marker genes for the early subtype. These findings may provide valuable insights for the early diagnosis of AD and contribute to the development of innovative therapeutic strategies.
阿尔茨海默病(AD)是全球最常见的痴呆形式之一,仍然是一种无法治愈的疾病,常常导致死亡。全程序性坏死是程序性细胞死亡中的一种新兴模式,整合了三个关键过程:细胞焦亡、凋亡和坏死性凋亡。研究表明,凋亡、坏死性凋亡和细胞焦亡在AD的发展中起重要作用。因此,靶向全程序性坏死基因可能会带来新的治疗靶点和具有临床相关性的治疗方法。本研究旨在基于全程序性坏死识别AD的不同分子亚型以及治疗AD的潜在药物。
通过基因表达综合数据库(GEO)数据集GSE48350、GSE5281和GSE122063识别与AD相关的差异表达全程序性坏死基因。采用最小绝对收缩和选择算子(LASSO)回归构建与这些全程序性坏死基因相关的风险模型。进行共识聚类分析以基于这些基因定义AD亚型。我们进一步进行基因集变异分析(GSVA)、功能富集分析和免疫细胞浸润分析,以研究已识别的AD亚型之间的差异。此外,建立蛋白质 - 蛋白质相互作用(PPI)网络以识别枢纽基因,并查阅DGIdb数据库以识别靶向这些枢纽基因的潜在治疗化合物。利用单细胞RNA测序分析评估不同亚型在细胞水平上的基因表达差异。
在AD中总共识别出24个差异表达的全程序性坏死基因(APANRGs),从而将AD分为两个不同的亚组。结果表明,这些亚组表现出不同的疾病进展状态,早期亚型主要与功能失调的突触信号传导相关。此外,我们从两个聚类之间的差异表达基因(DEGs)中识别出枢纽基因,并基于这些枢纽基因预测了38种用于早期AD治疗的候选药物和化合物。单细胞RNA测序分析显示,与早期亚型相关的关键基因主要在神经元细胞中表达,而代谢亚型的差异基因主要在内皮细胞和星形胶质细胞中发现。
总之,我们识别出了两种亚型,包括AD早期突触异常亚型以及免疫代谢亚型。此外,十个枢纽基因,即溶质载体家族17成员7(SLC17A7)、突触小体相关蛋白25(SNAP25)、谷氨酸脱羧酶1(GAD1)、溶质载体家族17成员6(SLC17A6)、溶质载体家族32成员1(SLC32A1)、小白蛋白(PVALB)、突触蛋白(SYP)、谷氨酸受体离子型N - 甲基 - D - 天冬氨酸2A(GRIN2A)、溶质载体家族12成员5(SLC12A5)和突触结合蛋白2(SYN2),被识别为早期亚型的标记基因。这些发现可能为AD的早期诊断提供有价值的见解,并有助于开发创新的治疗策略。