Apoptosis-associated genetic mechanisms in the transition from rheumatoid arthritis to osteoporosis: A bioinformatics and functional analysis approach.
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引用次数: 0
Abstract
This study explores the mechanisms of glucocorticoid-induced osteoporosis (OP) and Rheumatoid arthritis (RA), focusing on apoptosis and its role in the progression from RA to OP. Using microarray data from the GEO database, differential gene expression analysis was conducted with the limma package, identifying significant genes in RA and OP. Weighted Gene Co-expression Network Analysis (WGCNA) further examined gene relationships with the disease status, identifying co-expression patterns. Key genes were pinpointed by intersecting differentially expressed genes from RA and OP datasets with WGCNA module genes. Functional enrichment analysis using the "clusterProfiler" package focused on Gene Ontology and Kyoto Encyclopedia of Genes and Genomes pathways. Machine learning methods, including Lasso and Random Forest, refined the selection of key genes related to apoptosis. Immune infiltration analysis using CIBERSORT assessed immune cell differences between disease and normal samples. The study highlighted two crucial genes: ATXN2L and MMP14. These genes were identified through various analyses and found to be significantly associated with the progression of RA and OP. Gene Set Enrichment Analysis of ATXN2L and MMP14 revealed their involvement in specific biological processes and pathways. Correlation analysis between these key genes and immune cell infiltration showed significant associations. The ROC analysis evaluated the diagnostic performance of ATXN2L and MMP14, with miRNA regulatory networks related to these genes also predicted. In summary, this research provides valuable insights into the molecular mechanisms of RA and OP, emphasizing the importance of apoptosis and immune processes.
本研究探讨了糖皮质激素诱导骨质疏松症(OP)和类风湿性关节炎(RA)的机制,重点关注细胞凋亡及其在 RA 向 OP 进展过程中的作用。利用 GEO 数据库中的微阵列数据,使用 limma 软件包进行了差异基因表达分析,确定了 RA 和 OP 中的重要基因。加权基因共表达网络分析(WGCNA)进一步研究了基因与疾病状态的关系,确定了共表达模式。通过将 RA 和 OP 数据集中的差异表达基因与 WGCNA 模块基因交叉,确定了关键基因。使用 "clusterProfiler "软件包进行的功能富集分析侧重于基因本体和京都基因组百科全书的通路。包括 Lasso 和随机森林在内的机器学习方法完善了与细胞凋亡相关的关键基因的选择。利用 CIBERSORT 进行的免疫浸润分析评估了疾病样本和正常样本之间的免疫细胞差异。研究强调了两个关键基因:ATXN2L 和 MMP14。通过各种分析确定了这些基因,并发现它们与 RA 和 OP 的进展显著相关。对 ATXN2L 和 MMP14 的基因组富集分析显示,它们参与了特定的生物过程和途径。这些关键基因与免疫细胞浸润之间的相关性分析表明两者之间存在明显关联。ROC分析评估了ATXN2L和MMP14的诊断性能,还预测了与这些基因相关的miRNA调控网络。总之,这项研究为研究RA和OP的分子机制提供了有价值的见解,强调了细胞凋亡和免疫过程的重要性。
期刊介绍:
APL Bioengineering is devoted to research at the intersection of biology, physics, and engineering. The journal publishes high-impact manuscripts specific to the understanding and advancement of physics and engineering of biological systems. APL Bioengineering is the new home for the bioengineering and biomedical research communities.
APL Bioengineering publishes original research articles, reviews, and perspectives. Topical coverage includes:
-Biofabrication and Bioprinting
-Biomedical Materials, Sensors, and Imaging
-Engineered Living Systems
-Cell and Tissue Engineering
-Regenerative Medicine
-Molecular, Cell, and Tissue Biomechanics
-Systems Biology and Computational Biology