Department of Urology, The First Hospital of China Medical University, Shenyang, Liaoning, China.
Chinese Academy of Medical Sciences and Peking Union Medical College, Beijing, China.
Int Immunopharmacol. 2023 Mar;116:109735. doi: 10.1016/j.intimp.2023.109735. Epub 2023 Jan 28.
Three subtypes of samples were generated based on genes involved in fatty acid metabolism in The Cancer Genome Atlas (TCGA)-RCC patients using a non-negative matrix factorization (NMF) algorithm. 32 co-expressed modules were identified using WCGNA. We constructed a four-gene signature in our training set using least absolute shrinkage selection operator regression analysis and verified it in our testing and overall sets. A relevant study analysis in clinical trials was conducted, which showed the model had good stability and potential application value for predicting outcomes. We analyzed the immune microenvironment using MCPcounter, CIBERSORT, quanTIseq, TIMER and ESTIMATE algorithms, and the result indicated risk was positively related to T cells, B-lineage, and fibroblasts and negatively correlated with monocytic lineage, myeloid dendritic cells, neutrophils, and endothelial cells, and CPT1B was positively related to T cells, CD8 + T cells, Cytotoxic lymphocytes and NK cells, and negatively correlated with myeloid dendritic cells, fibroblasts, endothelial cells. Tumor mutation burden was positively related to risk score and the expression of CPT1B using the R packages corrplot, circlize. Through the R package pRRophetic, drug sensitivity tests showed that the low-risk score group would benefit more from sunitinib and less from pazopanib, sorafenib, temsirolimus, gemcitabine and doxorubicin than the high-risk score group. We performed the relevant basic assay validation for CPT1B, and the proliferation ability of RCC cells was inhibited after the knockdown of protein expression of CPT1B. In conclusion, we established a four-gene model that can predict outcomes of RCC with potential applications in diagnosis and treatment.
基于癌症基因组图谱(TCGA)-RCC 患者中涉及脂肪酸代谢的基因,使用非负矩阵分解(NMF)算法生成了三种亚型的样本。使用 WGCNA 鉴定了 32 个共表达模块。我们使用最小绝对收缩和选择算子回归分析在训练集中构建了一个四基因签名,并在测试集和总集中进行了验证。进行了一项相关的临床试验研究分析,结果表明该模型具有良好的稳定性和预测结果的潜在应用价值。我们使用 MCPcounter、CIBERSORT、quanTIseq、TIMER 和 ESTIMATE 算法分析了免疫微环境,结果表明风险与 T 细胞、B 细胞系和成纤维细胞呈正相关,与单核细胞系、髓样树突状细胞、中性粒细胞和内皮细胞呈负相关,CPT1B 与 T 细胞、CD8+T 细胞、细胞毒性淋巴细胞和 NK 细胞呈正相关,与髓样树突状细胞、成纤维细胞和内皮细胞呈负相关。肿瘤突变负担与风险评分和 CPT1B 的表达呈正相关,使用 R 包 corrplot、circlize 进行分析。通过 R 包 pRRophetic,药物敏感性测试表明,低风险评分组将从舒尼替尼中获益更多,从帕唑帕尼、索拉非尼、替西罗莫司、吉西他滨和阿霉素中获益更少。我们对 CPT1B 进行了相关的基础实验验证,敲低 CPT1B 蛋白表达后,RCC 细胞的增殖能力受到抑制。总之,我们建立了一个可以预测 RCC 结果的四基因模型,具有在诊断和治疗中的潜在应用价值。