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利用生物信息学策略开发一种新型的阿尔茨海默病免疫浸润相关诊断模型。

Development of a novel immune infiltration-related diagnostic model for Alzheimer's disease using bioinformatic strategies.

机构信息

Department of Neurology, Liaocheng People's Hospital and Liaocheng Hospital Affiliated to Shandong First Medical University, Liaocheng, China.

Clinical Laboratory, Liaocheng Veterans Hospital, Liaocheng, China.

出版信息

Front Immunol. 2023 Jul 20;14:1147501. doi: 10.3389/fimmu.2023.1147501. eCollection 2023.

Abstract

BACKGROUND

The pathogenesis of Alzheimer's disease (AD) is complex and multi-factorial. Increasing evidence has shown the important role of immune infiltration in AD. Thus the current study was designed to identify immune infiltration-related genes and to explore their diagnostic value in AD.

METHODS

The expression data of AD patients were downloaded from the GEO database. The limma R package identified differentially expressed genes (DEGs) between AD and controls. The CIBERSORT algorithm identified differentially infiltrated immune cells (DIICs) between AD and controls. DIIC-correlated DEGs were obtained by Pearson correlation analysis. WGCNA was employed to identify DIIC-related modules. Next, LASSO, RFE, and RF machine learning methods were applied to screen robust DIIC-related gene signatures in AD, followed by the construction and validation of a diagnostic nomogram. Detection of the expression of related genes in the peripheral blood of Alzheimer's disease and healthy volunteers by RT-PCR. In addition, the CTD database predicted chemicals targeting DIIC-related gene signatures in the treatment of AD.

RESULTS

NK cells, M0 macrophages, activated myeloid dendritic cells, resting mast cells, CD8+ T cells, resting memory CD4+ T cells, gamma delta T cells, and M2 macrophages were differentially infiltrated between AD and controls. Pearson analysis identified a total of 277 DIIC-correlated DEGs between AD and controls. Thereafter, 177 DIIC-related genes were further obtained by WGCNA analysis. By LASSO, RFE and RF algorithms, CMTM2, DDIT4, LDHB, NDUFA1, NDUFB2, NDUFS5, RPL17, RPL21, RPL26 and NDUFAF2 were identified as robust gene signature in AD. The results of RT-PCR detection of peripheral blood samples from Alzheimer's disease and healthy volunteers showed that the expression trend of ten genes screened was consistent with the detection results; among them, the expression levels of CMTM2, DDIT4, LDHB, NDUFS5, and RPL21 are significantly different among groups. Thus, a diagnostic nomogram based on a DIIC-related signature was constructed and validated. Moreover, candidate chemicals targeting those biomarkers in the treatment of AD, such as 4-hydroxy-2-nonenal, rosiglitazone, and resveratrol, were identified in the CTD database.

CONCLUSION

For the first time, we identified 10 immune infiltration-related biomarkers in AD, which may be helpful for the diagnosis of AD and provide guidance in the treatment of AD.

摘要

背景

阿尔茨海默病(AD)的发病机制复杂且多因素。越来越多的证据表明免疫浸润在 AD 中起着重要作用。因此,本研究旨在鉴定免疫浸润相关基因,并探讨其在 AD 中的诊断价值。

方法

从 GEO 数据库下载 AD 患者的表达数据。limma R 包鉴定 AD 患者与对照组之间的差异表达基因(DEGs)。CIBERSORT 算法鉴定 AD 患者与对照组之间差异浸润的免疫细胞(DIICs)。通过 Pearson 相关分析获得与 DIIC 相关的 DEGs。采用 WGCNA 鉴定 DIIC 相关模块。接下来,应用 LASSO、RFE 和 RF 机器学习方法筛选 AD 中稳健的 DIIC 相关基因特征,构建并验证诊断列线图。通过 RT-PCR 检测 AD 患者和健康志愿者外周血中相关基因的表达。此外,CTD 数据库预测了针对 DIIC 相关基因特征治疗 AD 的化学物质。

结果

AD 患者与对照组之间差异浸润的免疫细胞包括 NK 细胞、M0 巨噬细胞、活化的髓样树突状细胞、静止肥大细胞、CD8+T 细胞、静止记忆 CD4+T 细胞、γδT 细胞和 M2 巨噬细胞。Pearson 分析鉴定了 AD 患者与对照组之间共 277 个与 DIIC 相关的 DEGs。此后,通过 WGCNA 分析进一步获得 177 个 DIIC 相关基因。通过 LASSO、RFE 和 RF 算法,鉴定出 CMTM2、DDIT4、LDHB、NDUFA1、NDUFB2、NDUFS5、RPL17、RPL21、RPL26 和 NDUFAF2 为 AD 中稳健的基因特征。AD 患者和健康志愿者外周血样本的 RT-PCR 检测结果表明,筛选出的十个基因的表达趋势与检测结果一致;其中,CMTM2、DDIT4、LDHB、NDUFS5 和 RPL21 的表达水平在各组间存在显著差异。因此,构建并验证了基于 DIIC 相关特征的诊断列线图。此外,在 CTD 数据库中鉴定出针对这些生物标志物治疗 AD 的候选化学物质,如 4-羟基-2-壬烯醛、罗格列酮和白藜芦醇。

结论

本研究首次鉴定出 AD 中的 10 个免疫浸润相关生物标志物,可能有助于 AD 的诊断,并为 AD 的治疗提供指导。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/c41f/10400274/b7b6ff1a7157/fimmu-14-1147501-g001.jpg

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