Yang Jiayue, Yang Heng, Wang Fumin, Dai Yao, Deng Yuxuan, Shi Kaiyun, Zhu Zehua, Liu Xinkun, Ma Xiao, Gao Yongxiang
School of Clinical Medicine, Chengdu University of Traditional Chinese Medicine, Chengdu 610075, China; Hospital of Chengdu University of Traditional Chinese Medicine, Chengdu 610072, China.
School of Clinical Medicine, Chengdu University of Traditional Chinese Medicine, Chengdu 610075, China.
Phytomedicine. 2025 Jan;136:156332. doi: 10.1016/j.phymed.2024.156332. Epub 2024 Dec 19.
Rheumatoid arthritis (RA) is a prevalent and currently incurable autoimmune disease. Existing conventional medical treatments are limited in their efficacy, prolonged disease may lead to bone destruction, joint deformity, and loss of related functions, which places a huge burden on RA patients and their families. For millennia, the use of traditional Chinese medicine (TCM), exemplified by the Gui-Zhi-Shao-Yao-Zhi-Mu decoction (GZSYZM), has been demonstrated to offer distinct therapeutic advantages in the management of RA. Exploring the potential mechanism of GZSYZM in the treatment of RA is a hot topic in the field of TCM.
High-throughput sequencing data of RA at bulk level and single cell level and Chinese Materia Medica target-related databases were used as data sources. Ultra-high-performance liquid chromatography coupled with high-resolution mass spectrometry was employed for the identification of the most relevant compounds to the active ingredients present in the GZSYZM granules. Potential disease genes were identified using a combination of differential expression analysis and weighted gene co-expression network analysis, and the "Chinese Materia Medica-Ingredient-Target" network was constructed to obtain candidate drug target genes. The GZSYZM-RA hub genes were then identified based on Molecular Complex Detection algorithm. To explore the associations and potential mechanisms between the GZSYZM-RA hub gene set and RA, Mendelian randomization (MR) analysis and Bayesian co-localization analysis were used to further identify the GZSYZM-RA core genes that were causally associated with RA. A nomogram was constructed based on a multifactorial logistic regression model using the GZSYZM-RA core genes as predictors of RA. To evaluate its diagnostic value, receiver operating characteristic (ROC) curves, calibration curves, and decision curves were plotted. The potential downstream regulatory mechanisms of the gene of interest in GZSYZM in RA therapy were finally investigated using single- gene set enrichment analysis and molecular docking. The aim was to model the optimal conformation of its target protein receptor binding to the small molecule ligand in GZSYZM to identify the key constituents.
Functional enrichment analysis revealed that the GZSYZM-RA hub gene set is enriched in several autoimmune-related mechanistic pathways, with a particular emphasis on the phosphoinositide 3 kinase (PI3K)‑serine/threonine kinase (AKT) signaling pathway. AUCell scores demonstrated active expression of the GZSYZM-RA hub gene set with the PI3K-AKT signaling pathway on monocytes, especially non-classical monocytes. Immunol infiltration analysis based on the CIBERSORT algorithm also showed a strong correlation between several genes in the GZSYZM-RA hub gene set and monocytes by calculating Spearman's rank correlation coefficients. MR analysis with co-localization analysis further identified seven core genes (CASP8, PPARG, IKBKB, PPARA, IFNG, MYC, and STAT3) causally associated with RA. Diagnostic value for clinical decision making was demonstrated by a multivariable logistic regression model constructed with GZSYZM-RA core genes. Molecular docking analysis indicates that CASP8 and GZSYZM have high docking scores, with three key constituents (quercetin, kaempferol, and diosmetin) exhibiting strong binding affinities.
GZSYZM may regulate the abnormal over-proliferation and apoptotic imbalance of fibroblast-like synoviocytes in RA patients by inhibiting signaling of the PI3K-AKT signaling pathway while activating CASP8-mediated pro-apoptotic effects. And it may be effective in directly or indirectly inhibiting monocyte-to-osteoclast differentiation, ultimately improving the poor prognosis of joint destruction in RA patients.
类风湿关节炎(RA)是一种常见且目前无法治愈的自身免疫性疾病。现有的传统医学治疗方法疗效有限,疾病迁延可能导致骨质破坏、关节畸形及相关功能丧失,给RA患者及其家庭带来巨大负担。数千年来,以桂枝芍药知母汤(GZSYZM)为代表的传统中药在RA的治疗中已显示出独特的治疗优势。探索GZSYZM治疗RA的潜在机制是中医领域的研究热点。
以RA的批量水平和单细胞水平的高通量测序数据以及中药靶点相关数据库作为数据源。采用超高效液相色谱联用高分辨率质谱法鉴定与GZSYZM颗粒中活性成分最相关的化合物。通过差异表达分析和加权基因共表达网络分析相结合的方法鉴定潜在的疾病基因,并构建“中药-成分-靶点”网络以获得候选药物靶基因。然后基于分子复合物检测算法鉴定GZSYZM-RA枢纽基因。为探究GZSYZM-RA枢纽基因集与RA之间的关联及潜在机制,采用孟德尔随机化(MR)分析和贝叶斯共定位分析进一步鉴定与RA存在因果关联的GZSYZM-RA核心基因。基于多因素逻辑回归模型,以GZSYZM-RA核心基因为RA的预测指标构建列线图。为评估其诊断价值,绘制了受试者工作特征(ROC)曲线、校准曲线和决策曲线。最后,采用单基因集富集分析和分子对接研究GZSYZM中感兴趣基因在RA治疗中的潜在下游调控机制。目的是模拟其靶蛋白受体与GZSYZM中小分子配体结合的最佳构象,以确定关键成分。
功能富集分析显示,GZSYZM-RA枢纽基因集在多个自身免疫相关的机制途径中富集,尤其侧重于磷酸肌醇3激酶(PI3K)-丝氨酸/苏氨酸激酶(AKT)信号通路。AUCell评分显示GZSYZM-RA枢纽基因集在单核细胞上有活性表达,尤其是非经典单核细胞上与PI3K-AKT信号通路相关。基于CIBERSORT算法的免疫浸润分析通过计算斯皮尔曼等级相关系数也显示,GZSYZM-RA枢纽基因集中的几个基因与单核细胞之间存在强相关性。MR分析与共定位分析进一步鉴定出7个与RA存在因果关联的核心基因(CASP8、PPARG、IKBKB、PPARA、IFNG、MYC和STAT3)。由GZSYZM-RA核心基因构建的多变量逻辑回归模型证明了其对临床决策的诊断价值。分子对接分析表明,CASP8与GZSYZM具有较高的对接分数,其中3种关键成分(槲皮素、山奈酚和香叶木素)表现出较强的结合亲和力。
GZSYZM可能通过抑制PI3K-AKT信号通路的信号传导,同时激活CASP8介导的促凋亡作用,调节RA患者成纤维样滑膜细胞异常过度增殖和凋亡失衡。并且它可能有效直接或间接抑制单核细胞向破骨细胞分化,最终改善RA患者关节破坏的不良预后。