Shen Yahui, Yang Peihan, Lu Yanping
Department of Obstetrics and Gynecology, The First Medical Center of PLA General Hospital, 28 Fuxing Road, Haidian District, 100191, Beijing, China.
Westa College, Southwest University, Chongqing, 400712, China.
Discov Oncol. 2025 Mar 20;16(1):370. doi: 10.1007/s12672-025-02086-1.
Uterine corpus endometrial carcinoma (UCEC), a prevalent malignancy in the female reproductive system, has witnessed a 30% increase in recent year. Recognizing the significance of early treatment in reducing patient mortality, the identification of potential biomarkers for UCEC plays a crucial role in early diagnosis. This study was to identify key genes associated with UCEC utilizing the Gene Expression Omnibus database, followed by validating their prognostic value across multiple databases. Analysis of four UCEC databases (GSE17025, GSE36389, GSE63678, GSE115810) yielded 72 co-expressed genes. KEGG and GO enrichment analyses revealed their involvement in physiological processes such as transcriptional misregulation in cancer. Constructing a protein-protein interaction network for these 72 genes, the top 10 genes with significant interactions were identified. Survival regression analysis highlighted NR3C1 as the gene with a substantial impact on UCEC prognostic outcomes. Differential expression analysis indicated lower expression of NR3C1 in UCEC compared to normal endometrial tissue. Cox regression analysis, performed on clinical datasets of UCEC patients, identified clinical stage III, clinical stage IV, age, and NR3C1 as independent prognostic factors influencing UCEC outcomes. The LinkedOmics online database revealed the top 50 positively and negatively correlated genes with NR3C1 in UCEC. Subsequent investigations into the relationship between NR3C1 and tumor-infiltrating immune cells were conducted using R software. Gene set enrichment analysis provided insights into NR3C1-related genes, showing enrichment in processes such as Ribosome, Oxidative phosphorylation in UCEC. Collectively, these comprehensive analyses suggest that NR3C1 may serve as a potential biomarker indicating the prognosis of UCEC.
子宫体子宫内膜癌(UCEC)是女性生殖系统中一种常见的恶性肿瘤,近年来其发病率增长了30%。认识到早期治疗对降低患者死亡率的重要性,识别UCEC的潜在生物标志物在早期诊断中起着关键作用。本研究旨在利用基因表达综合数据库识别与UCEC相关的关键基因,随后在多个数据库中验证它们的预后价值。对四个UCEC数据库(GSE17025、GSE36389、GSE63678、GSE115810)的分析产生了72个共表达基因。KEGG和GO富集分析显示它们参与了诸如癌症中的转录失调等生理过程。为这72个基因构建蛋白质-蛋白质相互作用网络,确定了具有显著相互作用的前10个基因。生存回归分析强调NR3C1是对UCEC预后结果有重大影响的基因。差异表达分析表明,与正常子宫内膜组织相比,UCEC中NR3C1的表达较低。对UCEC患者临床数据集进行的Cox回归分析确定临床III期、临床IV期、年龄和NR3C1是影响UCEC预后的独立预后因素。LinkedOmics在线数据库揭示了UCEC中与NR3C1正相关和负相关的前50个基因。随后使用R软件对NR3C1与肿瘤浸润免疫细胞之间的关系进行了研究。基因集富集分析提供了对NR3C1相关基因的见解,显示在UCEC中核糖体、氧化磷酸化等过程中富集。总体而言,这些综合分析表明NR3C1可能作为指示UCEC预后的潜在生物标志物。