Wei Bowen, Wang Siwei, Li Suiran, Gu Qingxiang, Yue Qingyun, Tang Zhuo, Zhang Jiamin, Liu Wei
Department of Rheumatism and Immunity, First Teaching Hospital of Tianjin University of Traditional Chinese Medicine, Tianjin, People's Republic of China.
National Clinical Research Center for Chinese Medicine Acupuncture and Moxibustion, Tianjin, People's Republic of China.
J Inflamm Res. 2025 Jan 20;18:863-882. doi: 10.2147/JIR.S502520. eCollection 2025.
Ankylosing spondylitis (AS) is a chronic autoimmune disease characterized by inflammation of the sacroiliac joints and spine. Cuproptosis is a newly recognized copper-induced cell death mechanism. Our study explored the novel role of cuproptosis-related genes (CRGs) in AS, focusing on immune cell infiltration and molecular clustering.
By analyzing the peripheral blood gene expression datasets obtained from GSE73754, GSE25101, and GSE11886, we identified the expression patterns of cellular factors and immune infiltration cell related to cuproptosis. Subsequently, we employed weighted gene co-expression network analysis (WGCNA) to identify differentially expressed genes (DEGs) within each cluster and utilized the "GSVA" and "GSEABase" software packages to examine variations in gene sets enriched across various CRG clusters. Finally, we selected the best-performing machine learning model to predict genes associated with AS. Datasets (GSE25101 and GSE73754) and ELISA to assess the expression levels of the five genes and their corresponding proteins.
Seven cuproptosis-related DEGs and four immune cell types were identified, revealing significant immune heterogeneity in the immune cell infiltration between the two cuproptosis-related molecular clusters in AS. The eXtreme Gradient Boosting (XGB) model showed the highest predictive accuracy, achieving an area under the receiver operating characteristic curve (AUC) of 0.725, and 5-gene prediction models were established. It showed satisfactory performance in the GSE25101 dataset (AUC = 0.812). According to the blood serum samples of AS patients and controls, PELI1 had a higher expression level (AUC = 0.703, = 0.07), while ICAM2 and RANGAP1 had lower expression levels (AUC = 0.724, 0.745, and = 0.011, 0.000, respectively) in AS patients.
We explored the correlation of cuproptosis in AS, and developed the optimal machine learning model to identify high-risk genes associated with AS. We also explored the pathogenesis and treatment strategies of AS, targeting , and .
强直性脊柱炎(AS)是一种慢性自身免疫性疾病,其特征为骶髂关节和脊柱炎症。铜死亡是一种新发现的铜诱导的细胞死亡机制。我们的研究探讨了铜死亡相关基因(CRGs)在AS中的新作用,重点关注免疫细胞浸润和分子聚类。
通过分析从GSE73754、GSE25101和GSE11886获得的外周血基因表达数据集,我们确定了与铜死亡相关的细胞因子和免疫浸润细胞的表达模式。随后,我们采用加权基因共表达网络分析(WGCNA)来识别每个聚类中的差异表达基因(DEGs),并利用“GSVA”和“GSEABase”软件包来检查跨各种CRG聚类富集的基因集的变化。最后,我们选择性能最佳的机器学习模型来预测与AS相关的基因。使用数据集(GSE25101和GSE73754)和酶联免疫吸附测定(ELISA)来评估五个基因及其相应蛋白质的表达水平。
鉴定出7个与铜死亡相关的DEGs和4种免疫细胞类型,揭示了AS中两个与铜死亡相关的分子聚类之间免疫细胞浸润存在显著的免疫异质性。极端梯度提升(XGB)模型显示出最高的预测准确性,受试者操作特征曲线(AUC)下面积达到0.725,并建立了5基因预测模型。它在GSE25101数据集中表现出令人满意的性能(AUC = 0.812)。根据AS患者和对照组的血清样本,PELI1表达水平较高(AUC = 0.703,P = 0.07),而ICAM2和RANGAP1在AS患者中的表达水平较低(AUC分别为0.724、0.745,P分别为0.011、0.000)。
我们探讨了AS中铜死亡的相关性,并开发了最佳机器学习模型来识别与AS相关的高危基因。我们还探讨了AS的发病机制和治疗策略,靶点为[此处原文缺失具体靶点内容]、[此处原文缺失具体靶点内容]和[此处原文缺失具体靶点内容]。