Hu Jun, Yang Jingyan, Hu Na, Shi Zongting, Hu Tiemin, Mi Baohong, Wang Hong, Chen Weiheng
The Third Affiliated Hospital of Beijing University of Chinese Medicine, Beijing, China.
The Third Clinical School of Beijing University of Chinese Medicine, Beijing, China.
Iran J Biotechnol. 2024 Oct 1;22(4):e3892. doi: 10.30498/ijb.2024.448826.3892. eCollection 2024 Oct.
Glioblastoma (GBM) is the most aggressive form of brain cancer, with poor prognosis despite treatments like temozolomide (TMZ). Resistance to TMZ is a significant clinical challenge, and understanding the genes involved is crucial for developing new therapies and prognostic markers. This study aims to identify key genes associated with TMZ resistance in GBM, which could serve as valuable biomarkers for predicting patient outcomes and potential targets for treatment.
This study aimed to identify genes involved in TMZ resistance in GBM and to assess the value of these genes in GBM treatment and prognosis evaluation.
Bioinformatics analysis of Gene Expression Omnibus (GEO) datasets (GSE113510 and GSE199689) and The Chinese Glioblastoma Genome Atlas (CGGA) database was performed to identify differentially expressed genes (DEGs) between GBM cell lines with and without TMZ resistance. Subsequently, the key modules associated with GBM patient prognosis were identified by weighted gene coexpression network analysis (WGCNA). Furthermore, hub genes related to TMZ resistance were accurately screened and confirmed using three machine learning algorithms. In addition, immune cell infiltration analysis, TF-miRNA coregulatory network analysis, drug sensitivity prediction, and gene set enrichment analysis (GSEA) were also performed for temozolomide resistance-specific genes. Finally, the expression levels of key genes were validated in our constructed TMZ-resistant cell lines by real-time quantitative polymerase chain reaction (RT-qPCR) and Western blotting (WB).
Integrated analysis of the GEO and CGGA datasets revealed 769 differentially expressed genes (DEGs), comprising 350 downregulated and 419 upregulated genes, between GBM patients and normal controls. Among these DEGs, three key genes, namely, PITX1, TNFRSF11B, and IGFBP2, exhibited significant differences in expression between groups and were prioritized via machine learning algorithms. The expression levels of these genes were found to be closely related to adverse clinical features and immune cell infiltration levels in GBM patients. These genes were also found to participate in several biological pathways and processes. RT‒qPCR and WB confirmed the differential expression of these genes in vitro, indicating that they play vital roles in GBM patients with TMZ resistance.
PITX1, TNFRSF11B, and IGFBP2 are key genes associated with the prognosis of GBM patients with TMZ resistance. The differential expression of these genes correlates with adverse outcomes in GBM patients, suggesting that they are valuable biomarkers for predicting patient prognosis and that they could serve as diagnostic biomarkers or treatment targets.
胶质母细胞瘤(GBM)是最具侵袭性的脑癌形式,尽管有替莫唑胺(TMZ)等治疗方法,但预后仍很差。对TMZ的耐药性是一个重大的临床挑战,了解涉及的基因对于开发新疗法和预后标志物至关重要。本研究旨在确定与GBM中TMZ耐药相关的关键基因,这些基因可作为预测患者预后的有价值生物标志物和潜在治疗靶点。
本研究旨在确定参与GBM中TMZ耐药的基因,并评估这些基因在GBM治疗和预后评估中的价值。
对基因表达综合数据库(GEO)数据集(GSE113510和GSE199689)和中国胶质母细胞瘤基因组图谱(CGGA)数据库进行生物信息学分析,以鉴定有和没有TMZ耐药性的GBM细胞系之间的差异表达基因(DEG)。随后,通过加权基因共表达网络分析(WGCNA)确定与GBM患者预后相关的关键模块。此外,使用三种机器学习算法准确筛选并确认了与TMZ耐药相关的枢纽基因。另外,还对替莫唑胺耐药特异性基因进行了免疫细胞浸润分析、转录因子-微小RNA共调控网络分析、药物敏感性预测和基因集富集分析(GSEA)。最后,通过实时定量聚合酶链反应(RT-qPCR)和蛋白质免疫印迹法(WB)在我们构建的TMZ耐药细胞系中验证了关键基因的表达水平。
对GEO和CGGA数据集的综合分析显示,GBM患者与正常对照之间有769个差异表达基因(DEG),包括350个下调基因和419个上调基因。在这些DEG中,三个关键基因,即PITX1、TNFRSF11B和IGFBP2,在各组之间表现出显著的表达差异,并通过机器学习算法进行了优先排序。发现这些基因的表达水平与GBM患者的不良临床特征和免疫细胞浸润水平密切相关。还发现这些基因参与了几个生物学途径和过程。RT-qPCR和WB在体外证实了这些基因的差异表达,表明它们在对TMZ耐药的GBM患者中发挥着重要作用。
PITX1、TNFRSF11B和IGFBP2是与对TMZ耐药的GBM患者预后相关的关键基因。这些基因的差异表达与GBM患者的不良结局相关,表明它们是预测患者预后的有价值生物标志物,并且可作为诊断生物标志物或治疗靶点。