Li Jia, Li Xin, Zhang Chenyue, Zhang Chenxing, Wang Haiyong
Department of Oncology, Longhua Hospital, Shanghai University of Traditional Chinese Medicine, Shanghai 200032, P.R. China.
Department of Integrative Oncology, Fudan University Shanghai Cancer Center, Shanghai 200032, P.R. China.
Oncol Rep. 2020 Mar;43(3):795-806. doi: 10.3892/or.2020.7464. Epub 2020 Jan 14.
Establishing a prognostic genetic signature closely related to the tumor immune microenvironment (TIME) to predict clinical outcomes is necessary. Using the Gene Expression Omnibus (GEO) database of a non‑small cell lung cancer (NSCLC) cohort and the immune score derived from the Estimation of Stromal and Immune cells in Malignant Tumours using Expression data (ESTIMATE) algorithm, we applied the least absolute shrinkage and selection operator (LASSO) Cox regression model to screen a 10‑gene signature among the 448 differentially expressed genes and found that the risk prediction models constructed by 10 genes could be more sensitive to prognosis than TNM (Tumor, Lymph node and Metastasis) stage (P=0.006). The CIBERSORT method was applied to quantify the relative levels of different immune cell types. It was found that the ratio of eosinophils, mast cells (MCs) resting and CD4 T cells memory activated in the low‑risk group was higher than that in the high‑risk group, and the difference was statistically significant (P=0.003, P=0.014 and P=0.018, respectively). Inconsistently, the ratio of resting natural killer (NK) cells and activated plasma cells in the low‑risk group was significantly lower than that in the high‑risk group (P=0.05 and P=0.009, respectively). Kaplan‑Meier survival results showed that patients of the high‑risk group had significantly shorter overall survival (OS) than those of the low‑risk group in the training set (P<0.001). Furthermore, Kaplan‑Meier survival showed that patients of the high‑risk group had significantly shorter OS than those of the low‑risk group (P=0.0025 and P=0.0157, respectively) in the validation set [GSE31210 and TCGA (The Cancer Genome Atlas)]. The 10‑gene signature was found to be an independent risk factor for prognosis in univariate and multivariate Cox proportional hazard regression analyses (P<0.001). In addition, it was found that the risk model constructed by the 10‑gene signature was related to the clinical related factors in logistic regression analysis. The genetic signature closely related to the immune microenvironment was found to be able to predict differences in the proportion of immune cells (eosinophils, resting MCs, memory activated CD4 T cells, resting NK cells and plasma cells) in the risk model. Our findings suggest that the genetic signature closely related to TIME could predict the prognosis of NSCLC patients, and provide some reference for immunotherapy.
建立与肿瘤免疫微环境(TIME)密切相关的预后基因特征以预测临床结果是必要的。利用非小细胞肺癌(NSCLC)队列的基因表达综合数据库(GEO)以及从利用表达数据估计恶性肿瘤中的基质和免疫细胞(ESTIMATE)算法得出的免疫评分,我们应用最小绝对收缩和选择算子(LASSO)Cox回归模型在448个差异表达基因中筛选出一个10基因特征,并发现由这10个基因构建的风险预测模型对预后的敏感性可能高于TNM(肿瘤、淋巴结和转移)分期(P = 0.006)。应用CIBERSORT方法量化不同免疫细胞类型的相对水平。发现低风险组中嗜酸性粒细胞、静息肥大细胞(MCs)和记忆性活化CD4 T细胞的比例高于高风险组,差异具有统计学意义(分别为P = 0.003、P = 0.014和P = 0.018)。不一致的是,低风险组中静息自然杀伤(NK)细胞和活化浆细胞的比例显著低于高风险组(分别为P = 0.05和P = 0.009)。Kaplan-Meier生存结果显示,在训练集中,高风险组患者的总生存期(OS)显著短于低风险组患者(P < 0.001)。此外,Kaplan-Meier生存分析显示,在验证集[GSE31210和癌症基因组图谱(TCGA)]中,高风险组患者的OS也显著短于低风险组患者(分别为P = 0.0025和P = 0.0157)。在单变量和多变量Cox比例风险回归分析中,发现该10基因特征是预后的独立危险因素(P < 0.001)。此外,在逻辑回归分析中发现由该10基因特征构建的风险模型与临床相关因素有关。发现与免疫微环境密切相关的基因特征能够预测风险模型中免疫细胞(嗜酸性粒细胞、静息MCs、记忆性活化CD4 T细胞、静息NK细胞和浆细胞)比例的差异。我们的研究结果表明,与TIME密切相关的基因特征可以预测NSCLC患者的预后,并为免疫治疗提供一些参考。