Lu Jianglong, Xu Fanjie, Rao Changjun, Shen Chaodong, Jin Jinghao, Zhu Zhangzhang, Wang Chengde, Li Qun
Department of Neurosurgery First Affiliated Hospital of Wenzhou Medical University, Wenzhou, China.
Front Pharmacol. 2022 Nov 21;13:1076958. doi: 10.3389/fphar.2022.1076958. eCollection 2022.
Paclitaxel is an herbal active ingredient used in clinical practice that shows anti-tumor effects. However, its biological activity, mechanism, and cancer cell-killing effects remain unknown. Information on the chemical gene interactions of paclitaxel was obtained from the Comparative Toxicogenomics Database, SwishTargetPrediction, Binding DB, and TargetNet databases. Gene expression data were obtained from the GSE4290 dataset. Differential gene analysis, Kyoto Encyclopedia of Genes and Genomes, and Gene Ontology analyses were performed. Gene set enrichment analysis was performed to evaluate disease pathway activation; weighted gene co-expression network analysis with diff analysis was used to identify disease-associated genes, analyze differential genes, and identify drug targets protein-protein interactions. The Molecular Complex Detection (MCODE) analysis of critical subgroup networks was conducted to identify essential genes affected by paclitaxel, assess crucial cluster gene expression differences in glioma standard samples, and perform receiver operator characteristic mapping. To evaluate the pharmacological targets and signaling pathways of paclitaxel in glioblastoma, the single-cell GSE148196 dataset was acquired from the Gene Expression Omnibus database and preprocessed using Seurat software. Based on the single-cell RNA-sequencing dataset, 24 cell clusters were identified, along with marker genes for the two different cell types in each cluster. Correlation analysis revealed that the mechanism of paclitaxel treatment involves effects on neurons. Paclitaxel may affect glioblastoma by improving glucose metabolism and processes involved in modulating immune function in the body.
紫杉醇是一种用于临床实践的具有抗肿瘤作用的草药活性成分。然而,其生物活性、作用机制和癌细胞杀伤作用仍不清楚。从比较毒理基因组学数据库、SwishTargetPrediction、Binding DB和TargetNet数据库中获取了紫杉醇的化学基因相互作用信息。基因表达数据来自GSE4290数据集。进行了差异基因分析、京都基因与基因组百科全书分析和基因本体分析。进行基因集富集分析以评估疾病通路激活;使用加权基因共表达网络分析和差异分析来识别疾病相关基因、分析差异基因并识别药物靶点的蛋白质-蛋白质相互作用。对关键亚组网络进行分子复合物检测(MCODE)分析,以识别受紫杉醇影响的关键基因,评估胶质瘤标准样本中关键簇基因表达差异,并进行受试者操作特征映射。为了评估紫杉醇在胶质母细胞瘤中的药理靶点和信号通路,从基因表达综合数据库中获取单细胞GSE148196数据集,并使用Seurat软件进行预处理。基于单细胞RNA测序数据集,识别出24个细胞簇,以及每个簇中两种不同细胞类型的标记基因。相关性分析表明,紫杉醇治疗机制涉及对神经元的影响。紫杉醇可能通过改善葡萄糖代谢和调节体内免疫功能的过程来影响胶质母细胞瘤。