Ding Xiao-Sheng, Hua Yi-Chun, Han Bing-Xuan, An Juan, Zhou Li-Li, Xu Wei-Ran, Shi Hui, Zheng Xi-Xi, Shi Wei-Wei, Li Xiao-Yan
Department of Oncology, Beijing Tiantan Hospital, Capital Medical University Beijing 100070, China.
Department of Physical Education, Shanxi Medical University Taiyuan 030001, Shanxi, China.
Am J Transl Res. 2023 Aug 15;15(8):5145-5158. eCollection 2023.
Clear cell renal cell carcinoma (ccRCC) is a highly prevalent subtype of malignant renal tumor, but unfortunately, the survival rate remains unsatisfactory. The aim of the present study is to explore genomic features that are correlated with cancer stage, allowing for the identification of subgroups of ccRCC patients with high risk of unfavorable outcomes and enabling prompt intervention and treatment.
We compared the gene expression levels across ccRCC patients with diverse cancer stages from The Cancer Genome Atlas (TCGA) database, which revealed characteristic genes associated with tumor stage. We then extracted prognostic genes and used least absolute shrinkage selection operator (LASSO) regression to select four genes for feature extraction and the construction of a prognostic risk model.
We have identified a total of 171 differentially expressed genes (DEGs) that are closely linked to the tumor stage of ccRCC through difference analysis. A prognostic risk model constructed based on the expression levels of ZIC2, TFAP2A-AS1, ITPKA, and SLC16A12 holds significant prognostic value in ccRCC. The results of the functional enrichment analysis imply that the DEGs are mainly involved in the regulation of immune-related signaling pathways, and therefore may have a significant function in immune system regulation of ccRCC.
Our study has successfully identified significant DEGs between high- and low-staging groups of ccRCC using bioinformatics methods. The construction of a prognostic risk model based on the expression levels of ZIC2, TFAP2A-AS1, ITPKA, and SLC16A12 has displayed promising prognostic significance, indicating its valuable potential for clinical application.
透明细胞肾细胞癌(ccRCC)是一种高度常见的恶性肾肿瘤亚型,但遗憾的是,其生存率仍不尽人意。本研究的目的是探索与癌症分期相关的基因组特征,以便识别具有不良预后高风险的ccRCC患者亚组,并实现及时干预和治疗。
我们比较了来自癌症基因组图谱(TCGA)数据库的不同癌症分期的ccRCC患者的基因表达水平,这揭示了与肿瘤分期相关的特征基因。然后我们提取了预后基因,并使用最小绝对收缩选择算子(LASSO)回归来选择四个基因进行特征提取并构建预后风险模型。
通过差异分析,我们共鉴定出171个与ccRCC肿瘤分期密切相关的差异表达基因(DEG)。基于ZIC2、TFAP2A-AS1、ITPKA和SLC16A12表达水平构建的预后风险模型在ccRCC中具有显著的预后价值。功能富集分析结果表明,DEG主要参与免疫相关信号通路的调控,因此可能在ccRCC的免疫系统调控中具有重要作用。
我们的研究使用生物信息学方法成功鉴定出ccRCC高分期和低分期组之间的显著DEG。基于ZIC2、TFAP2A-AS1、ITPKA和SLC16A12表达水平构建的预后风险模型显示出有前景的预后意义,表明其在临床应用中的宝贵潜力。