Zhao Xibo, Cong Shanshan, Guo Qiuyan, Cheng Yan, Liang Tian, Wang Jing, Zhang Guangmei
Department of Gynecology, The First Affiliated Hospital, Harbin Medical University, Harbin, China.
Front Cell Dev Biol. 2021 Apr 23;9:653357. doi: 10.3389/fcell.2021.653357. eCollection 2021.
With the highest case-fatality rate among women, the molecular pathological alterations of ovarian cancer (OV) are complex, depending on the diversity of genomic alterations. Increasing evidence supports that immune infiltration in tumors is associated with prognosis. Therefore, we aim to assess infiltration in OV using multiple methods to capture genomic signatures regulating immune events to identify reliable predictions of different outcomes. A dataset of 309 ovarian serous cystadenocarcinoma patients with overall survival >90 days from The Cancer Genome Atlas (TCGA) was analyzed. Multiple estimations and clustering methods identified and verified two immune clusters with component differences. Functional analyses pointed out immune-related alterations underlying internal genomic variables potentially. After extracting immune genes from a public database, the LASSO Cox regression model with 10-fold cross-validation was used for selecting genes associated with overall survival rate significantly, and a risk score model was then constructed. Kaplan-Meier survival and Cox regression analyses among cohorts were performed systematically to evaluate prognostic efficiency among the risk score model and other clinical pathological parameters, establishing a predictive ability independently. Furthermore, this risk score model was compared among identified signatures in previous studies and applied to two external cohorts, showing better prediction performance and generalization ability, and also validated as robust in association with immune cell infiltration in bulk tissues. Besides, a transcription factor regulation network suggested upper regulatory mechanisms in OV. Our immune risk score model may provide gyneco-oncologists with predictive values for the prognosis and treatment management of patients with OV.
卵巢癌(OV)在女性中具有最高的病死率,其分子病理改变复杂,取决于基因组改变的多样性。越来越多的证据支持肿瘤中的免疫浸润与预后相关。因此,我们旨在使用多种方法评估OV中的浸润情况,以捕捉调节免疫事件的基因组特征,从而确定对不同预后的可靠预测。分析了来自癌症基因组图谱(TCGA)的309例总生存期>90天的卵巢浆液性囊腺癌患者的数据集。多种估计和聚类方法识别并验证了两个具有成分差异的免疫簇。功能分析潜在地指出了内部基因组变量背后的免疫相关改变。从公共数据库中提取免疫基因后,使用具有10倍交叉验证的LASSO Cox回归模型来显著选择与总生存率相关的基因,然后构建风险评分模型。系统地对队列进行Kaplan-Meier生存分析和Cox回归分析,以评估风险评分模型和其他临床病理参数之间的预后效率,独立建立预测能力。此外,将该风险评分模型与先前研究中确定的特征进行比较,并应用于两个外部队列,显示出更好的预测性能和泛化能力,并且在与大块组织中的免疫细胞浸润相关方面也被验证为稳健。此外,一个转录因子调控网络提示了OV中的上游调控机制。我们的免疫风险评分模型可能为妇科肿瘤学家提供OV患者预后和治疗管理的预测价值。