Pei Yihao, Yang Ziqi, Li Ben, Chen Xiping, Mao Yiming, Ding Yun
School of Stomatology, Medical College of Jinzhou Medical University, Jinzhou, 121000, China.
School of Medicine, Medical College of Jinzhou Medical University, Jinzhou, 121000, China.
Sci Rep. 2025 May 12;15(1):16445. doi: 10.1038/s41598-025-00658-3.
High-grade serous ovarian cancer (HGSOC) is the most common and aggressive subtype of epithelial ovarian cancer, often diagnosed at advanced stages with a poor prognosis. Paclitaxel (PTX), a standard chemotherapeutic agent for HGSOC, exerts cytotoxic effects on cancer cells and modulates the tumor microenvironment. This study aimed to elucidate the molecular mechanisms of PTX in HGSOC using bioinformatics, machine learning, network pharmacology, and molecular docking, to identify potential diagnostic biomarkers and therapeutic targets. We identified differentially expressed genes (DEGs) between HGSOC and normal ovarian tissues using the GSE54388 dataset from the Gene Expression Omnibus database. The intersection of these DEGs with PTX targets, identified from the Swiss Target Prediction database, yielded 15 overlapping genes. These genes were analyzed via protein-protein interaction (PPI) network analysis to identify significant interaction relationships. Kaplan-Meier survival analysis was then performed to assess the prognostic significance of these genes. Their protein expression patterns in HGSOC tissues were validated using the Human Protein Atlas (HPA) database. Functional enrichment analysis was conducted using Gene Ontology and the Kyoto Encyclopedia of Genes and Genomes. A combined diagnostic model was developed using LASSO regression and validated in two independent external datasets (GSE26712 and GSE12470). Molecular docking experiments were conducted to confirm the binding affinity of PTX to key proteins. Immune infiltration analysis was performed to assess the tumor microenvironment, revealing significant differences in immune cell composition between normal and tumor tissues. A total of 2267 DEGs were identified, with 15 overlapping genes related to PTX targets. After PPI network analysis, Kaplan-Meier survival analysis, and HPA validation, five key genes (AURKA, CBX7, CCNA2, HSP90AA1, and TUBB3) were identified as associated with HGSOC progression. The combined diagnostic model demonstrated high accuracy in distinguishing HGSOC from normal tissues, with AUC values of 0.9892 and 0.9465 in the GSE26712 and GSE12470 validation datasets, respectively. Molecular docking confirmed stable binding of PTX to these key proteins, suggesting their role in PTX's therapeutic effects. Immune infiltration analysis revealed significant differences in immune cell composition between normal and tumor tissues, highlighting the potential impact of these genes on the tumor microenvironment. In summary, our findings provide a theoretical basis for improving clinical diagnosis and elucidating the underlying mechanisms of HGSOC.
高级别浆液性卵巢癌(HGSOC)是上皮性卵巢癌中最常见且侵袭性最强的亚型,通常在晚期被诊断出来,预后较差。紫杉醇(PTX)是HGSOC的标准化疗药物,对癌细胞具有细胞毒性作用,并可调节肿瘤微环境。本研究旨在利用生物信息学、机器学习、网络药理学和分子对接技术阐明PTX在HGSOC中的分子机制,以识别潜在的诊断生物标志物和治疗靶点。我们使用来自基因表达综合数据库的GSE54388数据集,确定了HGSOC与正常卵巢组织之间的差异表达基因(DEG)。这些DEG与从瑞士靶点预测数据库中识别出的PTX靶点的交集产生了15个重叠基因。通过蛋白质-蛋白质相互作用(PPI)网络分析对这些基因进行分析,以识别显著的相互作用关系。然后进行Kaplan-Meier生存分析,以评估这些基因的预后意义。使用人类蛋白质图谱(HPA)数据库验证了它们在HGSOC组织中的蛋白质表达模式。使用基因本体论和京都基因与基因组百科全书进行功能富集分析。使用LASSO回归开发了一个联合诊断模型,并在两个独立的外部数据集(GSE26712和GSE12470)中进行了验证。进行分子对接实验以确认PTX与关键蛋白的结合亲和力。进行免疫浸润分析以评估肿瘤微环境,揭示正常组织和肿瘤组织之间免疫细胞组成的显著差异。共鉴定出2267个DEG,其中15个重叠基因与PTX靶点相关。经过PPI网络分析、Kaplan-Meier生存分析和HPA验证,确定了五个关键基因(AURKA、CBX7、CCNA2、HSP90AA1和TUBB3)与HGSOC进展相关。联合诊断模型在区分HGSOC与正常组织方面表现出高准确性,在GSE26712和GSE12470验证数据集中的AUC值分别为0.9892和0.9465。分子对接证实了PTX与这些关键蛋白的稳定结合,表明它们在PTX治疗效果中的作用。免疫浸润分析揭示了正常组织和肿瘤组织之间免疫细胞组成的显著差异,突出了这些基因对肿瘤微环境的潜在影响。总之,我们的研究结果为改善临床诊断和阐明HGSOC的潜在机制提供了理论基础。