Liu Chunying, Peng Chengfei, Jia Xiaodong, Yan Chenghui, Liu Dan, Zhang Xiaolin, Song Haixu, Han Yaling
Beifang Hospital of China Medical University, Shenyang, 110016, China.
State Key Laboratory of Frigid Zone Cardiovascular Diseases (SKLFZCD), Cardiovascular Research Institute and Department of Cardiology, Shenyang, 110016, China.
Front Med. 2025 May 3. doi: 10.1007/s11684-025-1132-8.
Ankylosing spondylitis (AS) is linked to an increased prevalence of myocardial infarction (MI). However, research dedicated to elucidating the pathogenesis of AS-MI is lacking. In this study, we explored the biomarkers for enhancing the diagnostic and therapeutic efficiency of AS-MI. Datasets were obtained from the Gene Expression Omnibus database. We employed weighted gene co-expression network analysis and machine learning models to screen hub genes. A receiver operating characteristic curve and a nomogram were designed to assess diagnostic accuracy. Gene set enrichment analysis was conducted to reveal the potential function of hub genes. Immune infiltration analysis indicated the correlation between hub genes and the immune landscape. Subsequently, we performed single-cell analysis to identify the expression and subcellular localization of hub genes. We further constructed a transcription factor (TF)-microRNA (miRNA) regulatory network. Finally, drug prediction and molecular docking were performed. S100A12 and MCEMP1 were identified as hub genes, which were correlated with immune-related biological processes. They exhibited high diagnostic value and were predominantly expressed in myeloid cells. Furthermore, 24 TFs and 9 miRNA were associated with these hub genes. Enzastaurin, meglitinide, and nifedipine were predicted as potential therapeutic agents. Our study indicates that S100A12 and MCEMP1 exhibit significant potential as biomarkers and therapeutic targets for AS-MI, offering novel insights into the underlying etiology of this condition.
强直性脊柱炎(AS)与心肌梗死(MI)患病率增加有关。然而,致力于阐明AS-MI发病机制的研究尚缺。在本研究中,我们探索了可提高AS-MI诊断和治疗效率的生物标志物。数据集取自基因表达综合数据库。我们采用加权基因共表达网络分析和机器学习模型来筛选枢纽基因。设计了受试者工作特征曲线和列线图以评估诊断准确性。进行基因集富集分析以揭示枢纽基因的潜在功能。免疫浸润分析表明枢纽基因与免疫格局之间的相关性。随后,我们进行单细胞分析以确定枢纽基因的表达和亚细胞定位。我们进一步构建了转录因子(TF)-微小RNA(miRNA)调控网络。最后,进行了药物预测和分子对接。S100A12和MCEMP1被鉴定为枢纽基因,它们与免疫相关生物学过程相关。它们具有较高的诊断价值,且主要在髓样细胞中表达。此外,24个TF和9个miRNA与这些枢纽基因相关。恩扎妥林、瑞格列奈和硝苯地平被预测为潜在治疗药物。我们的研究表明,S100A12和MCEMP1作为AS-MI的生物标志物和治疗靶点具有显著潜力,为该病的潜在病因提供了新见解。