Wang Qi, Chen Yaokun, Gao Wen, Feng Hui, Zhang Biyuan, Wang Haiji, Lu Haijun, Tan Ye, Dong Yinying, Xu Mingjin
Department of Radiation Oncology, The Affiliated Hospital of Qingdao University, Qingdao, China.
Breast Disease Diagnosis and Treatment Center, Qingdao Center Medical Group, Qingdao, China.
Front Oncol. 2022 Jul 7;12:933925. doi: 10.3389/fonc.2022.933925. eCollection 2022.
Lung squamous cell carcinoma (LUSC) represents 30% of all non-small cell lung carcinoma. Targeted therapy is not sufficient for LUSC patients because of the low frequency of targeted-effective mutation in LUSC whereas immunotherapy offers more options for patients with LUSC. We explored a ferroptosis-related prognostic signature that can potentially assess the prognosis and immunotherapy efficacy of LUSC patients.
A total of 502 LUSC patients were downloaded from The Cancer Genome Atlas (TCGA). The external validation data were obtained from the Gene Expression Omnibus (GEO): GSE73403. Then, we identified the candidate genes and constructed the prognostic signature through the Cox survival regression analyses and least absolute shrinkage and selection operator (LASSO). Risk score plot, Kaplan-Meier curve, and ROC curve were used to assess the prognostic power and performance of the model. The CIBERSORT algorithm estimated the fraction of immune cell types. TIDE was utilized to predict the response to immunotherapy. IMvigor210 was used to explore the association between the risk scores and immunotherapy outcomes. A nomogram combined selected clinical characteristics, and the risk scores were constructed.
We screened 132 differentially expressed ferroptosis-related genes. According to KEGG and GO pathway analyses, these genes were mainly engaged in the positive regulation of cytokine production, cytokine metabolic process, and oxidoreductase activity. We then constructed a prognostic model LASSO regression. The proportions of CD8 T cells, CD4 activated T cells, and follicular helper T cells were significantly different between low-risk and high-risk groups. TIDE algorithm indicated that low-risk LUSC patients might profit more from immune checkpoint inhibitors. The predictive value of the ferroptosis gene model in immunotherapy response was further confirmed in IMvigor210. Finally, we combined the clinical characteristics with a LASSO regression model to construct a nomogram that could be easily applied in clinical practice.
We identified a prognostic model that provides an accurate and objective basis for guiding individualized treatment decisions for LUSC.
肺鳞状细胞癌(LUSC)占所有非小细胞肺癌的30%。由于LUSC中靶向有效突变的频率较低,靶向治疗对LUSC患者并不充分,而免疫疗法为LUSC患者提供了更多选择。我们探索了一种与铁死亡相关的预后特征,其可能评估LUSC患者的预后和免疫治疗疗效。
从癌症基因组图谱(TCGA)下载了总共502例LUSC患者的数据。外部验证数据来自基因表达综合数据库(GEO):GSE73403。然后,我们通过Cox生存回归分析和最小绝对收缩和选择算子(LASSO)确定候选基因并构建预后特征。使用风险评分图、Kaplan-Meier曲线和ROC曲线评估模型的预后能力和性能。CIBERSORT算法估计免疫细胞类型的比例。利用TIDE预测免疫治疗反应。使用IMvigor210探索风险评分与免疫治疗结果之间的关联。构建了一个结合选定临床特征和风险评分的列线图。
我们筛选出132个差异表达的铁死亡相关基因。根据KEGG和GO通路分析,这些基因主要参与细胞因子产生的正调控、细胞因子代谢过程和氧化还原酶活性。然后,我们通过LASSO回归构建了一个预后模型。低风险组和高风险组之间的CD8 T细胞、CD4活化T细胞和滤泡辅助性T细胞的比例存在显著差异。TIDE算法表明,低风险LUSC患者可能从免疫检查点抑制剂中获益更多。铁死亡基因模型在免疫治疗反应中的预测价值在IMvigor210中得到进一步证实。最后,我们将临床特征与LASSO回归模型相结合,构建了一个可轻松应用于临床实践的列线图。
我们确定了一个预后模型,为指导LUSC的个体化治疗决策提供了准确和客观的依据。