Wang Jian, Guo Ziming, Sun Fei, Xu Tian, Wang Jianlin, Yu Jingping
Department of Radiotherapy, Jiangyin People's Hospital, Jiangyin 214400, Jiangsu Province, China.
Department of Radiotherapy, The Affiliated Changzhou Second People's Hospital of Nanjing Medical University, Changzhou 213003, Jiangsu Province, China.
J Oncol. 2022 Jul 1;2022:7485435. doi: 10.1155/2022/7485435. eCollection 2022.
This study aimed to develop a novel ferroptosis-related gene-based prognostic signature for esophageal carcinoma (ESCA).
The TCGA-ESCA gene expression profiles and corresponding clinical data were downloaded from the TCGA database. Ferroptosis-related genes were identified from the literature and public databases, which were intersected with the differentially expressed genes between ESCA and normal samples. After univariate Cox regression and random forest analyses, several ferroptosis-related feature genes were identified and used to construct a prognostic signature. Then, the prognostic value of the complex value and the correlation of the complex value with immune cell infiltration were analyzed. Moreover, function analysis, mutation analysis, and molecular docking on the ferroptosis-related feature genes were performed.
Based on the TCGA dataset and ferroptosis pathway genes, 1929 ferroptosis-related genes were preliminarily selected. Following univariate Cox regression analysis and survival analysis, 14 genes were obtained. Then, random forest analysis identified 10 ferroptosis key genes. These 10 genes were used to construct a prognostic complex value. It was found that low complex value indicated better prognosis compared with high complex value. In different ESCA datasets, there were similar differences in the proportion of immune cell distribution between the high and low complex value groups. Furthermore, , , , and were significantly correlated with ESCA tumor location, lymph node metastasis, and age of patients. had the highest mutation frequency. had the strongest binding ability with small molecules DB12830, DB05812, and DB07307.
We constructed a novel ferroptosis-related gene signature, which has the potential to predict patient survival and tumor-infiltrating immune cells of ESCA.
本研究旨在开发一种基于铁死亡相关基因的食管癌(ESCA)预后标志物。
从TCGA数据库下载TCGA-ESCA基因表达谱及相应临床数据。从文献和公共数据库中鉴定铁死亡相关基因,并与ESCA和正常样本之间的差异表达基因进行交集分析。经过单变量Cox回归和随机森林分析,鉴定出几个铁死亡相关特征基因,并用于构建预后标志物。然后,分析该复合值的预后价值及其与免疫细胞浸润的相关性。此外,还对铁死亡相关特征基因进行了功能分析、突变分析和分子对接。
基于TCGA数据集和铁死亡通路基因,初步筛选出1929个铁死亡相关基因。经过单变量Cox回归分析和生存分析,得到14个基因。随后,随机森林分析鉴定出10个铁死亡关键基因。利用这10个基因构建预后复合值。发现与高复合值相比,低复合值提示预后较好。在不同的ESCA数据集中,高、低复合值组之间免疫细胞分布比例存在相似差异。此外, 、 、 、 和 与ESCA肿瘤位置、淋巴结转移及患者年龄显著相关。 突变频率最高。 与小分子DB12830、DB05812和DB07307的结合能力最强。
我们构建了一种新型的铁死亡相关基因标志物,其具有预测ESCA患者生存及肿瘤浸润免疫细胞的潜力。