Liu Nan, Zhao Mingyue, Cui Yeting, Zhao Jiaxuan, Tu Yanyang, Zhang Tongcun, Hu Xiaofei
College of Life Sciences and Health, Wuhan University of Science and Technology, Wuhan, 430065, China.
Provincial Science and Technology Expert Workstation, Huizhou Central People's Hospital, Huizhou, 516001, China.
Eur J Med Res. 2025 Nov 27;30(1):1299. doi: 10.1186/s40001-025-03528-w.
This study identified fibroblast-specific genes to develop a RiskScore model to improve prognostic accuracy and guide personalized treatment in glioblastoma (GBM).
We analyzed fibroblast-specific signatures in the GSE273274 cohort using "Seurat" R package for scRNA-seq data processing. Fibroblast-related gene modules were identified via WGCNA, and functional enrichment was assessed with "clusterProfiler" package. A RiskScore model was established using univariate, Lasso Cox regression analysis, and "survival" package, validated by "timeROC" for receiver operator characteristic (ROC) curve. Finally, immune infiltration and drug sensitivity was evaluated applying "ESTIMATE," "TIMER," "MCPcounter," and "pRRophetic" packages. Experimental validation included qPCR for gene expression detection, and CCK-8, wound healing, and Transwell assays for functional measurement.
The scRNA-seq analysis identified nine cell types of cells, with fibroblasts elevated in the GBM group. Fibroblast signatures were linked to tumorigenesis, cytoskeleton remodeling, and regulation of neuronal development process that affected GBM invasion. A 6-gene RiskScore divided GBM patients into high- and low-risk groups in training and validation sets, with high-risk patients exhibiting poorer survival, elevated StromalScore, and negative correlations with the infiltration of neutrophils and B_cells. Moreover, high-risk patients demonstrated heightened sensitivity to Cisplatin, MG-132, AZ628, Dasatinib, CGP-60474, A-770041, TGX221, and Bortezomib. Finally, qPCR showed that the VWA1 was upregulated in GBM cells, while knock-down of VWA1 inhibited the cell proliferation, migration, and invasion activity.
We constructed a RiskScore model for predicting the survival outcomes based on fibroblasts-related genes. These findings highlighted the role of fibroblasts in GBM development and offered six potential therapeutic targets (VWA1, DUSP6, LOXL1, IGFBP4, CYGB, and ZIC3) for GBM treatment. Additionally, immune infiltration analysis and drug sensitivity prediction further supported the model's utility in guiding personalized treatment of GBM.
本研究鉴定成纤维细胞特异性基因,以开发风险评分模型,提高胶质母细胞瘤(GBM)预后准确性并指导个性化治疗。
我们使用“Seurat”R包对scRNA-seq数据进行处理,分析GSE273274队列中的成纤维细胞特异性特征。通过WGCNA鉴定成纤维细胞相关基因模块,并用“clusterProfiler”包评估功能富集。使用单变量、Lasso Cox回归分析和“survival”包建立风险评分模型,通过“timeROC”验证受试者工作特征(ROC)曲线。最后,应用“ESTIMATE”、“TIMER”、“MCPcounter”和“pRRophetic”包评估免疫浸润和药物敏感性。实验验证包括用于基因表达检测的qPCR,以及用于功能测量的CCK-8、伤口愈合和Transwell测定。
scRNA-seq分析鉴定出9种细胞类型,GBM组中成纤维细胞升高。成纤维细胞特征与肿瘤发生、细胞骨架重塑以及影响GBM侵袭的神经元发育过程调控有关。一个6基因风险评分将GBM患者在训练集和验证集中分为高风险和低风险组,高风险患者生存较差,基质评分升高,且与中性粒细胞和B细胞浸润呈负相关。此外,高风险患者对顺铂、MG-132、AZ628、达沙替尼、CGP-60474、A-770041、TGX221和硼替佐米表现出更高的敏感性。最后,qPCR显示VWA1在GBM细胞中上调,而敲低VWA1可抑制细胞增殖、迁移和侵袭活性。
我们构建了一个基于成纤维细胞相关基因预测生存结果的风险评分模型。这些发现突出了成纤维细胞在GBM发展中的作用,并为GBM治疗提供了六个潜在治疗靶点(VWA1、DUSP6、LOXL1、IGFBP4、CYGB和ZIC3)。此外,免疫浸润分析和药物敏感性预测进一步支持了该模型在指导GBM个性化治疗中的实用性。