从基因到药物:利用昼夜节律洞察来靶向治疗阿尔茨海默病

From genes to drugs: targeting Alzheimer's with circadian insights.

作者信息

Li Zekun, Li Xiaohan, Su Lei, Zhang Zibo, Guo Hongmin, Ge Yihao, Dong Fang, Zhang Feng

机构信息

Department of Rehabilitation Medicine, The Third Hospital of Hebei Medical University, Shijiazhuang, China.

Department of Radiotherapy, Affiliated Hospital of Hebei University, Baoding, China.

出版信息

Front Aging Neurosci. 2025 Mar 26;17:1527636. doi: 10.3389/fnagi.2025.1527636. eCollection 2025.

Abstract

BACKGROUND

Alzheimer's disease (AD) is a typical neurodegenerative disease that presents challenges due to the lack of biomarkers to identify AD. A growing body of evidence highlights the critical role of circadian rhythms in AD.

METHODS

The differentially expressed clock genes (DECGs) were identified between AD and ND groups (non-demented controls). Functional enrichment analysis was executed on the DECGs. Candidate diagnostic biomarkers for AD were screened by machine learning. ROC and nomograms were constructed to evaluate candidate biomarkers. In addition, therapeutics targeting predictive biomarkers were screened through the DGIdb website. Finally, the mRNA-miRNA network was constructed.

RESULTS

Nine genes were identified through the DECG analysis between the AD and ND groups. Enrichment analysis of nine genes indicated that the pathways were enriched in long-term potentiation and circadian entrainment. Four clock genes (GSTM3, ERC2, PRKCG, and HLA-DMA) of AD were screened using Lasso regression, random forest, SVM, and GMM. The diagnostic performance of four genes was evaluated by the ROC curve. Furthermore, the nomogram indicated that ERC2, PRKCG, and HLA-DMA are good biomarkers in diagnosing AD. Single-gene GSEA indicated that the main enrichment pathways were oxidative phosphorylation, pathways of neurodegeneration-multiple diseases, etc. The results of immune cell infiltration analysis indicated that there were significant differences in 15 immune cell subsets between AD and ND groups. Moreover, 23 drugs targeting HLA-DMA and 8 drugs targeting PRKCG were identified through the DGIdb website.

CONCLUSION

We identified three predictive biomarkers for AD associated with clock genes, thus providing promising therapeutic targets for AD.

摘要

背景

阿尔茨海默病(AD)是一种典型的神经退行性疾病,由于缺乏用于识别AD的生物标志物而面临挑战。越来越多的证据强调了昼夜节律在AD中的关键作用。

方法

在AD组和ND组(非痴呆对照)之间鉴定差异表达的时钟基因(DECGs)。对DECGs进行功能富集分析。通过机器学习筛选AD的候选诊断生物标志物。构建ROC曲线和列线图以评估候选生物标志物。此外,通过DGIdb网站筛选靶向预测性生物标志物的治疗药物。最后,构建mRNA-miRNA网络。

结果

通过AD组和ND组之间的DECG分析鉴定出9个基因。对这9个基因的富集分析表明,这些通路在长时程增强和昼夜节律夹带中富集。使用套索回归、随机森林、支持向量机和高斯混合模型筛选出AD的4个时钟基因(GSTM3、ERC2、PRKCG和HLA-DMA)。通过ROC曲线评估这4个基因的诊断性能。此外,列线图表明ERC2、PRKCG和HLA-DMA是诊断AD的良好生物标志物。单基因基因集富集分析表明主要富集通路为氧化磷酸化、神经退行性变-多种疾病通路等。免疫细胞浸润分析结果表明,AD组和ND组之间15个免疫细胞亚群存在显著差异。此外,通过DGIdb网站鉴定出23种靶向HLA-DMA的药物和8种靶向PRKCG的药物。

结论

我们鉴定出3个与时钟基因相关的AD预测生物标志物,从而为AD提供了有前景的治疗靶点。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/9cdc/11979290/c8296177d3af/fnagi-17-1527636-g001.jpg

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