Li Songsheng, Ma Lige, Cui Ruikai
Orthopaedics Department III (Joint), The Fifth Clinical Medical College of Henan University of Chinese Medicine, Zhengzhou, China.
Inflammation. 2023 Dec;46(6):2193-2208. doi: 10.1007/s10753-023-01871-w. Epub 2023 Jul 18.
Osteoarthritis (OA) is a prevalent joint disease globally. TNFA is recognized as a crucial inflammatory cytokine that plays a significant role in the pathophysiological mechanisms that occur during the progression of OA. However, the TNFA_SIGNALING_VIA_NFKB (TSVN)-related genes (TRGs) during the progression of OA remain unclear. By conducting a combinatory analysis of OA transcriptome data from three datasets, various differentially expressed TRGs were identified. The logistic regression model was used to mine hub TRGs for OA, and a nomogram prediction model was subsequently constructed using these TRGs. To identify new molecular subgroups, we performed consensus clustering. We then conducted functional analyses, including GO, KEGG, GSVA, and GSEA, to elucidate the underlying mechanisms. To determine the immune microenvironment, we applied xCell. The logistic regression analysis identified three hub TRGs (BHLHE40, BTG2, and CCNL1) as potential biomarkers for OA. Based on these TRGs, we constructed an OA predictive model. This model has demonstrated promising results in enhancing the accuracy of OA diagnosis, as evident from the ROC analysis (AUC merged dataset = 0.937, AUC validating dataset = 0.924). We identified two molecular subtypes, C1 and C2, and found that the C1 subtype showed activation of immune- and inflammation-related pathways. The involvement of TSVN in the development and progression of OA has been established. We identified several hub genes, such as BHLHE40, BTG2, and CCNL1, that may have a significant association with the progression of OA. Furthermore, our logistic regression model based on these genes has shown promising results in accurately diagnosing OA patients.
骨关节炎(OA)是全球一种普遍存在的关节疾病。肿瘤坏死因子α(TNFA)被认为是一种关键的炎症细胞因子,在OA进展过程中发生的病理生理机制中起重要作用。然而,OA进展过程中与TNFA通过核因子κB信号通路(TSVN)相关的基因(TRGs)仍不清楚。通过对来自三个数据集的OA转录组数据进行联合分析,鉴定出了各种差异表达的TRGs。使用逻辑回归模型挖掘OA的核心TRGs,随后使用这些TRGs构建了列线图预测模型。为了识别新的分子亚组,我们进行了一致性聚类。然后,我们进行了功能分析,包括基因本体论(GO)、京都基因与基因组百科全书(KEGG)、基因集变异分析(GSVA)和基因集富集分析(GSEA),以阐明潜在机制。为了确定免疫微环境,我们应用了xCell。逻辑回归分析确定了三个核心TRGs(BHLHE40、BTG2和CCNL1)作为OA的潜在生物标志物。基于这些TRGs,我们构建了一个OA预测模型。从受试者工作特征(ROC)分析可以明显看出,该模型在提高OA诊断准确性方面显示出了有前景的结果(合并数据集的AUC = 0.937,验证数据集的AUC = 0.924)。我们确定了两种分子亚型,C1和C2,并发现C1亚型显示出免疫和炎症相关通路的激活。已经证实TSVN参与了OA的发生和发展。我们确定了几个核心基因,如BHLHE40、BTG2和CCNL1,它们可能与OA的进展有显著关联。此外,我们基于这些基因的逻辑回归模型在准确诊断OA患者方面显示出了有前景的结果。