School of Stomatology, Southwest Medical University, Luzhou, China.
Clinical Medical College, Southwest Medical University, Luzhou, China.
Curr Alzheimer Res. 2024;21(2):120-140. doi: 10.2174/0115672050314171240527064514.
Alzheimer's disease (AD) is a recognized complex and severe neurodegenerative disorder, presenting a significant challenge to global health. Its hallmark pathological features include the deposition of β-amyloid plaques and the formation of neurofibrillary tangles. Given this context, it becomes imperative to develop an early and accurate biomarker model for AD diagnosis, employing machine learning and bioinformatics analysis.
In this study, single-cell data analysis was employed to identify cellular subtypes that exhibited significant differences between the diseased and control groups. Following the identification of NK cells, hdWGCNA analysis and cellular communication analysis were conducted to pinpoint NK cell subset with the most robust communication effects. Subsequently, three machine learning algorithms-LASSO, Random Forest, and SVM-RFE-were employed to jointly screen for NK cell subset modular genes highly associated with AD. A logistic regression diagnostic model was then designed based on these characterized genes. Additionally, a protein-protein interaction (PPI) networks of model genes was established. Furthermore, unsupervised cluster analysis was conducted to classify AD subtypes based on the model genes, followed by the analysis of immune infiltration in the different subtypes. Finally, Spearman correlation coefficient analysis was utilized to explore the correlation between model genes and immune cells, as well as inflammatory factors.
We have successfully identified three genes (RPLP2, RPSA, and RPL18A) that exhibit a high association with AD. The nomogram based on these genes provides practical assistance in diagnosing and predicting patients' outcomes. The interconnected genes screened through PPI are intricately linked to ribosome metabolism and the COVID-19 pathway. Utilizing the expression of modular genes, unsupervised cluster analysis unveiled three distinct AD subtypes. Particularly noteworthy is subtype C3, characterized by high expression, which correlates with immune cell infiltration and elevated levels of inflammatory factors. Hence, it can be inferred that the establishment of an immune environment in AD patients is closely intertwined with the heightened expression of model genes.
This study has not only established a valuable diagnostic model for AD patients but has also delved deeply into the pivotal role of model genes in shaping the immune environment of individuals with AD. These findings offer crucial insights into early AD diagnosis and patient management strategies.
阿尔茨海默病(AD)是一种公认的复杂且严重的神经退行性疾病,对全球健康构成重大挑战。其标志性的病理特征包括β-淀粉样斑块的沉积和神经原纤维缠结的形成。鉴于此,开发用于 AD 诊断的早期和准确的生物标志物模型变得至关重要,采用机器学习和生物信息学分析。
在这项研究中,使用单细胞数据分析来识别在疾病组和对照组之间表现出显著差异的细胞亚型。在鉴定出 NK 细胞后,进行 hdWGCNA 分析和细胞通讯分析,以确定具有最强通讯效果的 NK 细胞亚群。随后,使用三种机器学习算法(LASSO、随机森林和 SVM-RFE)联合筛选与 AD 高度相关的 NK 细胞亚群模块基因。然后基于这些特征基因设计逻辑回归诊断模型。此外,建立了模型基因的蛋白质-蛋白质相互作用(PPI)网络。此外,根据模型基因对 AD 亚型进行无监督聚类分析,然后分析不同亚型中的免疫浸润。最后,利用 Spearman 相关系数分析探讨模型基因与免疫细胞以及炎症因子之间的相关性。
我们成功鉴定出三个与 AD 高度相关的基因(RPLP2、RPSA 和 RPL18A)。基于这些基因的列线图为诊断和预测患者预后提供了实际帮助。通过 PPI 筛选出的相互关联基因与核糖体代谢和 COVID-19 途径密切相关。利用模块基因的表达,无监督聚类分析揭示了三种不同的 AD 亚型。特别值得注意的是,C3 亚型的特征是高表达,与免疫细胞浸润和炎症因子水平升高相关。因此,可以推断在 AD 患者中建立免疫环境与模型基因的高表达密切相关。
本研究不仅建立了 AD 患者有价值的诊断模型,还深入探讨了模型基因在塑造 AD 患者免疫环境中的关键作用。这些发现为早期 AD 诊断和患者管理策略提供了重要的见解。