Shandong University of Traditional Chinese Medicine, Jinan, Shandong Province, China.
Jinan Vocational College of Nursing, Jinan, Shandong Province, China.
Mediators Inflamm. 2023 Apr 27;2023:3220235. doi: 10.1155/2023/3220235. eCollection 2023.
The pathogenesis of ankylosing spondylitis (AS) is still not clear, and immune-related genes have not been systematically explored in AS. The purpose of this paper was to identify the potential early biomarkers most related to immunity in AS and develop a predictive disease risk model with bioinformatic methods and the Gene Expression Omnibus database (GEO) to improve diagnostic and therapeutic efficiency.
To identify differentially expressed genes and create a gene coexpression network between AS and healthy samples, we downloaded the AS-related datasets GSE25101 and GSE73754 from the GEO database and employed weighted gene coexpression network analysis (WGCNA). We used the GSVA, GSEABase, limma, ggpubr, and reshape2 packages to score immune data and investigated the links between immune cells and immunological functions by using single-sample gene set enrichment analysis (ssGSEA). The value of the core gene set and constructed model for early AS diagnosis was investigated by using receiver operating characteristic (ROC) curve analysis.
Biological function and immune score analyses identified central genes related to immunity, key immune cells, key related pathways, gene modules, and the coexpression network in AS. Granulysin (GNLY), Granulysin (GZMK), CX3CR1, IL2RB, dysferlin (DYSF), and S100A12 may participate in AS development through NK cells, CD8 T cells, Th1 cells, and other immune cells and represent potential biomarkers for the early diagnosis of AS occurrence and progression. Furthermore, the T cell coinhibitory pathway may be involved in AS pathogenesis.
The AS disease risk model constructed based on immune-related genes can guide clinical diagnosis and treatment and may help in the development of personalized immunotherapy.
强直性脊柱炎(AS)的发病机制尚不清楚,免疫相关基因在 AS 中也未得到系统的探索。本文旨在通过生物信息学方法和基因表达综合数据库(GEO)来识别与 AS 免疫相关的最具潜在的早期生物标志物,并建立预测疾病风险模型,以提高诊断和治疗效率。
为了鉴定 AS 与健康样本之间差异表达基因,并构建基因共表达网络,我们从 GEO 数据库中下载了 AS 相关数据集 GSE25101 和 GSE73754,采用加权基因共表达网络分析(WGCNA)方法。我们使用 GSVA、GSEABase、limma、ggpubr 和 reshape2 包对免疫数据进行评分,并通过单样本基因集富集分析(ssGSEA)来研究免疫细胞与免疫功能之间的关系。使用 ROC 曲线分析探讨核心基因集和构建的模型对早期 AS 诊断的价值。
生物功能和免疫评分分析鉴定了与免疫相关的核心基因、关键免疫细胞、关键相关通路、基因模块和 AS 中的共表达网络。颗粒溶素(GNLY)、颗粒溶素(GZMK)、CX3CR1、IL2RB、肌营养不良蛋白(DYSF)和 S100A12 可能通过 NK 细胞、CD8 T 细胞、Th1 细胞等免疫细胞参与 AS 的发生和发展,是 AS 早期诊断的潜在生物标志物。此外,T 细胞共抑制通路可能参与 AS 的发病机制。
基于免疫相关基因构建的 AS 疾病风险模型可指导临床诊断和治疗,可能有助于制定个性化免疫治疗方案。