燕红梅, 吴舒婷, 巫燕琴, 董光富. 原发性干燥综合征中铁死亡相关生物标志物的生物信息学挖掘与诊断模型构建[J]. 实用临床医药杂志, 2023, 27(10): 12-20. DOI: 10.7619/jcmp.20230960
引用本文: 燕红梅, 吴舒婷, 巫燕琴, 董光富. 原发性干燥综合征中铁死亡相关生物标志物的生物信息学挖掘与诊断模型构建[J]. 实用临床医药杂志, 2023, 27(10): 12-20. DOI: 10.7619/jcmp.20230960
YAN Hongmei, WU Shuting, WU Yanqin, DONG Guangfu. Bioinformatics mining of ferroptosis-related biomarkers and development of a diagnostic model in primary Sjögren's syndrome[J]. Journal of Clinical Medicine in Practice, 2023, 27(10): 12-20. DOI: 10.7619/jcmp.20230960
Citation: YAN Hongmei, WU Shuting, WU Yanqin, DONG Guangfu. Bioinformatics mining of ferroptosis-related biomarkers and development of a diagnostic model in primary Sjögren's syndrome[J]. Journal of Clinical Medicine in Practice, 2023, 27(10): 12-20. DOI: 10.7619/jcmp.20230960

原发性干燥综合征中铁死亡相关生物标志物的生物信息学挖掘与诊断模型构建

Bioinformatics mining of ferroptosis-related biomarkers and development of a diagnostic model in primary Sjögren's syndrome

  • 摘要:
    目的 基于多种生物信息学手段识别原发性干燥综合征(pSS)中与铁死亡相关的基因并构建诊断模型, 为pSS的诊断和治疗提供潜在靶点。
    方法 从GEO数据库中获得pSS的基因表达矩阵,应用R软件limma包识别出差异表达基因(DEGs)。通过加权基因共表达网络分析(WGCNA)识别pSS中最相关的模块化基因,从FerrDb数据库获得铁死亡相关基因集,将pSS中最相关的模块基因与DEGs和铁死亡相关基因取交集识别出关键基因。通过2种机器学习算法去除冗余基因并构建由关键基因组成的诊断模型,在3个独立数据集中验证诊断模型的准确性,基于免疫浸润分析揭示关键基因与免疫细胞的关联,应用Seurat软件包分析单细胞数据集。
    结果 差异基因分析共获得265个DEGs, WGCNA获得1个与pSS最为相关的模块(r=0.44, P < 0.01), 从中识别8个铁死亡相关基因,去除冗余基因后,最终获得3个与铁死亡相关的关键基因(PARP9PARP12PARP14)。基于3个关键基因建立诊断模型,该模型在3个独立数据集中均表现出优秀的诊断效能(受试者工作特征曲线中,曲线下面积分别为0.848、0.853、1.000)。免疫浸润分析和单细胞数据集分析结果提示, 3个关键基因与树突状细胞、巨噬细胞和T细胞或B细胞存在显著关联。
    结论 本研究基于生物信息学手段识别出pSS中与铁死亡相关的3个关键基因(PARP9PARP12PARP14)并构建pSS诊断模型,为pSS的诊断提供了新的潜在工具。

     

    Abstract:
    Objective To identify iron death-related genes in primary Sjögren's syndrome (pSS) through various bioinformatics methods, providing potential targets for the diagnosis and treatment of pSS.
    Methods Gene expression matrix of pSS was obtained from the GEO database, and differentially expressed genes (DEGs) were identified using the "limma" package by R software. Weighted gene co-expression network analysis (WGCNA) was used to identify the most relevant modular genes in pSS. Iron death-related gene sets were obtained from the FerrDb database, and key genes were identified by intersecting the most relevant module genes with DEGs and iron death-related genes. Two machine learning algorithms were used to remove redundant genes and construct a diagnostic model consisting of key genes. The accuracy of the diagnostic model was validated in three independent datasets, and the association between key genes and immune cells was revealed by immune infiltration analysis and single-cell data analysis using the Seurat package.
    Results A total of 265 DEGs were obtained by differential gene analysis, and the WGCNA algorithm identified a module that was most strongly correlated with pSS (r=0.44, P < 0.01), from which eight iron death-related genes were identified. After removing redundant genes, three key genes related to iron death (PARP9, PARP12, and PARP14) were finally obtained, and a diagnostic model was established based on the three genes. The model exhibited excellent diagnostic performance in three independent datasets (the areas under the receiver operating characteristic curve were 0.848, 0.853 and 1.000, respectively). Immune infiltration analysis and single-cell data analysis revealed significant associations of the three key genes with dendritic cells, macrophages and T/B cells.
    Conclusion In this study, three key genes related to iron death in pSS (PARP9, PARP12, PARP14) are identified based on bioinformatics methods and a diagnostic model of pSS is constructed, providing a new potential tool for the diagnosis of pSS.

     

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