Li Na, Li Biao, Zhan Xianquan
Science and Technology Innovation Center, Shandong First Medical University, Jinan, China.
Key Laboratory of Cancer Proteomics of Chinese Ministry of Health, Xiangya Hospital, Central South University, Changsha, China.
Front Genet. 2021 Feb 10;12:616073. doi: 10.3389/fgene.2021.616073. eCollection 2021.
Accumulating evidence demonstrated that tumor microenvironmental cells played important roles in predicting clinical outcomes and therapeutic efficacy. We aimed to develop a reliable immune-related gene signature for predicting the prognosis of ovarian cancer (OC).
Single sample gene-set enrichment analysis (ssGSEA) of immune gene-sets was used to quantify the relative abundance of immune cell infiltration and develop high- and low-abundance immune subtypes of 308 OC samples. The presence of infiltrating stromal/immune cells in OC tissues was calculated as an estimate score. We estimated the correlation coefficients among the immune subtype, clinicopathological feature, immune score, distribution of immune cells, and tumor mutation burden (TMB). The differentially expressed immune-related genes between high- and low-abundance immune subtypes were further used to construct a gene signature of a prognostic model in OC with lasso regression analysis.
The ssGSEA analysis divided OC samples into high- and low-abundance immune subtypes based on the abundance of immune cell infiltration, which was significantly related to the estimate score and clinical characteristics. The distribution of immune cells was also significantly different between high- and low-abundance immune subtypes. The correlation analysis showed the close relationship between TMB and the estimate score. The differentially expressed immune-related genes between high- and low-abundance immune subtypes were enriched in multiple immune-related pathways. Some immune checkpoints (PDL1, PD1, and CTLA-4) were overexpressed in the high-abundance immune subtype. Furthermore, the five-immune-related-gene-signature prognostic model (CCL18, CXCL13, HLA-DOB, HLA-DPB2, and TNFRSF17)-based high-risk and low-risk groups were significantly related to OC overall survival.
Immune-related genes were the promising predictors of prognosis and survival, and the comprehensive landscape of tumor microenvironmental cells of OC has potential for therapeutic schedule monitoring.
越来越多的证据表明,肿瘤微环境细胞在预测临床结果和治疗疗效方面发挥着重要作用。我们旨在开发一种可靠的免疫相关基因特征,用于预测卵巢癌(OC)的预后。
采用免疫基因集的单样本基因集富集分析(ssGSEA)来量化免疫细胞浸润的相对丰度,并对308例OC样本进行高、低丰度免疫亚型分类。计算OC组织中浸润性基质/免疫细胞的存在情况作为估计分数。我们估计了免疫亚型、临床病理特征、免疫分数、免疫细胞分布和肿瘤突变负荷(TMB)之间的相关系数。通过套索回归分析,进一步利用高、低丰度免疫亚型之间差异表达的免疫相关基因构建OC预后模型的基因特征。
ssGSEA分析根据免疫细胞浸润的丰度将OC样本分为高、低丰度免疫亚型,这与估计分数和临床特征显著相关。高、低丰度免疫亚型之间的免疫细胞分布也有显著差异。相关性分析显示TMB与估计分数密切相关。高、低丰度免疫亚型之间差异表达的免疫相关基因在多个免疫相关途径中富集。一些免疫检查点(PDL1、PD1和CTLA-4)在高丰度免疫亚型中过度表达。此外,基于五免疫相关基因特征预后模型(CCL18、CXCL13、HLA-DOB、HLA-DPB2和TNFRSF17)的高风险和低风险组与OC总生存期显著相关。
免疫相关基因是预后和生存的有前景的预测指标,OC肿瘤微环境细胞的综合情况在治疗方案监测方面具有潜力。