Rehabilitation Department, Shenzhen Bao'an Traditional Chinese Medicine Hospital, Guangzhou University of Chinese Medicine, Shenzhen, PR China.
Osteoporosis Department, Shenzhen Hospital of Integrated Traditional Chinese and Western Medicine, Shenzhen, PR China.
Medicine (Baltimore). 2024 May 10;103(19):e38042. doi: 10.1097/MD.0000000000038042.
Postmenopausal osteoporosis (PMOP) is a common metabolic inflammatory disease. In conditions of estrogen deficiency, chronic activation of the immune system leads to a hypo-inflammatory phenotype and alterations in its cytokine and immune cell profile, although immune cells play an important role in the pathology of osteoporosis, studies on this have been rare. Therefore, it is important to investigate the role of immune cell-related genes in PMOP. PMOP-related datasets were downloaded from the Gene Expression Omnibus database. Immune cells scores between high bone mineral density (BMD) and low BMD samples were assessed based on the single sample gene set enrichment analysis method. Subsequently, weighted gene co-expression network analysis was performed to identify modules highly associated with immune cells and obtain module genes. Differential analysis between high BMD and low BMD was also performed to obtain differentially expressed genes. Module genes are intersected with differentially expressed genes to obtain candidate genes, and functional enrichment analysis was performed. Machine learning methods were used to filter out the signature genes. The receiver operating characteristic (ROC) curves of the signature genes and the nomogram were plotted to determine whether the signature genes can be used as a molecular marker. Gene set enrichment analysis was also performed to explore the potential mechanism of the signature genes. Finally, RNA expression of signature genes was validated in blood samples from PMOP patients and normal control by real-time quantitative polymerase chain reaction. Our study of PMOP patients identified differences in immune cells (activated dendritic cell, CD56 bright natural killer cell, Central memory CD4 T cell, Effector memory CD4 T cell, Mast cell, Natural killer T cell, T follicular helper cell, Type 1 T-helper cell, and Type 17 T-helper cell) between high and low BMD patients. We obtained a total of 73 candidate genes based on modular genes and differential genes, and obtained 5 signature genes by least absolute shrinkage and selection operator and random forest model screening. ROC, principal component analysis, and t-distributed stochastic neighbor embedding down scaling analysis revealed that the 5 signature genes had good discriminatory ability between high and low BMD samples. A logistic regression model was constructed based on 5 signature genes, and both ROC and column line plots indicated that the model accuracy and applicability were good. Five signature genes were found to be associated with proteasome, mitochondria, and lysosome by gene set enrichment analysis. The real-time quantitative polymerase chain reaction results showed that the expression of the signature genes was significantly different between the 2 groups. HIST1H2AG, PYGM, NCKAP1, POMP, and LYPLA1 might play key roles in PMOP and be served as the biomarkers of PMOP.
绝经后骨质疏松症(PMOP)是一种常见的代谢性炎症性疾病。在雌激素缺乏的情况下,免疫系统的慢性激活会导致低炎症表型和细胞因子及免疫细胞谱的改变,尽管免疫细胞在骨质疏松症的发病机制中发挥着重要作用,但对此的研究却很少。因此,研究与免疫细胞相关的基因在 PMOP 中的作用非常重要。本研究从基因表达综合数据库中下载了 PMOP 相关数据集。基于单样本基因集富集分析方法,评估了高骨密度(BMD)和低 BMD 样本之间的免疫细胞评分。随后,进行加权基因共表达网络分析,以鉴定与免疫细胞高度相关的模块,并获得模块基因。对高 BMD 和低 BMD 之间的差异进行分析,以获得差异表达基因。将模块基因与差异表达基因进行交集,获得候选基因,并进行功能富集分析。使用机器学习方法筛选出特征基因。绘制特征基因和列线图的接收者操作特征(ROC)曲线,以确定特征基因是否可用作分子标记。还进行了基因集富集分析,以探讨特征基因的潜在机制。最后,通过实时定量聚合酶链反应(PCR)在 PMOP 患者和正常对照的血液样本中验证了特征基因的 RNA 表达。本研究对 PMOP 患者的研究发现,高和低 BMD 患者之间的免疫细胞(活化树突状细胞、CD56 明亮自然杀伤细胞、中央记忆 CD4 T 细胞、效应记忆 CD4 T 细胞、肥大细胞、自然杀伤 T 细胞、滤泡辅助 T 细胞、1 型辅助 T 细胞和 17 型辅助 T 细胞)存在差异。基于模块基因和差异基因,我们共获得了 73 个候选基因,并通过最小绝对收缩和选择算子(LASSO)和随机森林模型筛选获得了 5 个特征基因。ROC、主成分分析和 t 分布随机邻域嵌入降维分析表明,5 个特征基因在高和低 BMD 样本之间具有良好的区分能力。基于 5 个特征基因构建了逻辑回归模型,ROC 和柱状线图均表明模型的准确性和适用性良好。基因集富集分析发现,5 个特征基因与蛋白酶体、线粒体和溶酶体有关。实时定量 PCR 结果显示,两组间特征基因的表达差异有统计学意义。HIST1H2AG、PYGM、NCKAP1、POMP 和 LYPLA1 可能在 PMOP 中发挥关键作用,并可作为 PMOP 的生物标志物。