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鉴定免疫相关基因作为尿毒症的生物标志物

Identification of Immune-Related Genes as Biomarkers for Uremia.

作者信息

Lyu Dongning, He Guangyu, Zhou Kan, Xu Jin, Zeng Haifei, Li Tongyu, Tang Ningbo

机构信息

Department of Nephrology Clinic, Guangxi International Zhuang Medicine Hospital Affiliated to Guangxi University of Chinese Medicine, Nanning, Guangxi, People's Republic of China.

出版信息

Int J Gen Med. 2023 Nov 29;16:5633-5649. doi: 10.2147/IJGM.S435732. eCollection 2023.

Abstract

PURPOSE

Uremia, which is characterized by immunodeficiency, is associated with the deterioration of kidney function. Immune-related genes (IRGs) are crucial for uremia progression.

METHODS

The co-expression network was constructed to identify key modular genes associated with uremia. IRGs were intersected with differentially expressed genes (DEGs) between uremia and control groups and key modular genes to obtain differentially expressed IRGs (DEIRGs). DEIRGs were subjected to functional enrichment analysis. The protein-protein interaction (PPI) network was constructed. The candidate genes were identified using the cytoHubba tool. The biomarkers were identified using various machine learning algorithms. The diagnostic value of the biomarkers was evaluated using receiver operating characteristic (ROC) analysis. The immune infiltration analysis was implemented. The biological pathways of biomarkers were identified using gene set enrichment analysis and ingenuity pathway analysis. The mRNA expression of biomarkers was validated using blood samples of patients with uremia and healthy subjects with quantitative real-time polymerase chain reaction (qRT-PCR).

RESULTS

In total, four biomarkers (, and ) were identified by machine learning methods. ROC analysis demonstrated that the area under the curve values of individual biomarkers were > 0.9, indicating good diagnostic power. The nomogram model of biomarkers exhibited good predictive power. The proportions of six immune cells significantly varied between the uremia and control groups. expression was positively correlated with the proportions of resting natural killer (NK) cells, naïve B cells, and regulatory T cells. Functional enrichment analysis revealed that the biomarkers were mainly associated with translational function and neuroactive ligand-receptor interaction. regulated NK cell signaling. The and expression levels determined using qRT-PCR were consistent with those determined using bioinformatics analysis.

CONCLUSION

, and were identified as biomarkers for uremia, providing a theoretical foundation for uremia diagnosis.

摘要

目的

以免疫缺陷为特征的尿毒症与肾功能恶化有关。免疫相关基因(IRGs)对尿毒症进展至关重要。

方法

构建共表达网络以鉴定与尿毒症相关的关键模块基因。将IRGs与尿毒症组和对照组之间的差异表达基因(DEGs)以及关键模块基因进行交集分析,以获得差异表达的IRGs(DEIRGs)。对DEIRGs进行功能富集分析。构建蛋白质-蛋白质相互作用(PPI)网络。使用cytoHubba工具鉴定候选基因。使用各种机器学习算法鉴定生物标志物。使用受试者工作特征(ROC)分析评估生物标志物的诊断价值。进行免疫浸润分析。使用基因集富集分析和 Ingenuity 通路分析鉴定生物标志物的生物学途径。使用尿毒症患者和健康受试者的血样通过定量实时聚合酶链反应(qRT-PCR)验证生物标志物的mRNA表达。

结果

通过机器学习方法共鉴定出四个生物标志物(、和)。ROC分析表明,各个生物标志物的曲线下面积值均>0.9,表明具有良好的诊断能力。生物标志物的列线图模型显示出良好的预测能力。尿毒症组和对照组之间六种免疫细胞的比例存在显著差异。的表达与静息自然杀伤(NK)细胞、幼稚B细胞和调节性T细胞的比例呈正相关。功能富集分析表明,生物标志物主要与翻译功能和神经活性配体-受体相互作用有关。调节NK细胞信号传导。使用qRT-PCR测定的和表达水平与使用生物信息学分析测定的结果一致。

结论

、和被鉴定为尿毒症的生物标志物,为尿毒症诊断提供了理论基础。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/2261/10693762/b852bb04f074/IJGM-16-5633-g0001.jpg

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