Department of Radiation Oncology, Women's Hospital, School of Medicine, Zhejiang University, Zhejiang, China.
Zhejiang Provincial Key Laboratory of Precision Diagnosis and Therapy for Major Gynecological Diseases, Women's Hospital, Zhejiang University School of Medicine, Hangzhou, People's Republic of China.
Cancer Rep (Hoboken). 2024 Oct;7(10):e70000. doi: 10.1002/cnr2.70000.
In the era of immunotherapy, there is a critical need for effective biomarkers to improve outcome prediction and guide treatment decisions for patients with lung squamous cell carcinoma (LUSC). We hypothesized that the immune contexture of LUSC may be influenced by tumor intrinsic events, such as autophagy.
We aimed to develop an autophagy-related risk signature and assess its predictive value for immune phenotype.
Expression profiles of autophagy-related genes (ARGs) in LUSC samples were obtained from the TCGA and GEO databases. Survival analyses were conducted to identify survival-related ARGs and construct a risk signature using the Random Forest algorithm. Four ARGs (CFLAR, RGS19, PINK1, and CTSD) with the most significant prognostic value were selected to construct the risk signature. Patients in the high-risk group exhibited worse prognosis than those in the low-risk group (p < 0.0001 in TCGA; p < 0.01 in GEO) and the risk score was identified as an independent prognostic factor. We observed that the high-risk group displayed an immune-suppressive status and showed higher levels of infiltrating regulatory T cells and macrophages, which are associated with poorer outcomes. Additionally, the risk score exhibited a significantly positive correlation with the expression of PD-1 and CTLA4, as well as the estimate score and immune score.
This study provided an effective autophagy-related prognostic signature, which could also predict the immune phenotype.
在免疫治疗时代,迫切需要有效的生物标志物来改善肺鳞状细胞癌(LUSC)患者的预后预测和指导治疗决策。我们假设 LUSC 的免疫微环境可能受到肿瘤内在事件的影响,例如自噬。
我们旨在开发一种与自噬相关的风险特征,并评估其对免疫表型的预测价值。
从 TCGA 和 GEO 数据库中获取 LUSC 样本中的自噬相关基因(ARGs)表达谱。通过生存分析鉴定与生存相关的 ARGs,并使用随机森林算法构建风险特征。选择具有最显著预后价值的四个 ARGs(CFLAR、RGS19、PINK1 和 CTSD)来构建风险特征。高风险组的患者预后较低风险组差(TCGA 中 p<0.0001;GEO 中 p<0.01),且风险评分被确定为独立预后因素。我们观察到高风险组显示出免疫抑制状态,并且浸润的调节性 T 细胞和巨噬细胞水平更高,这与预后较差相关。此外,风险评分与 PD-1 和 CTLA4 的表达以及估计评分和免疫评分呈显著正相关。
本研究提供了一种有效的与自噬相关的预后特征,它还可以预测免疫表型。