Department of Blood Transfusion, the First Affiliated Hospital of Zhengzhou University, Zhengzhou, China.
Department of Medical Laboratory, Zhengzhou University Third Affiliated Hospital, Zhengzhou, China.
BMC Cancer. 2022 Oct 28;22(1):1103. doi: 10.1186/s12885-022-10195-1.
The specific differentiation potential, unlimited proliferation, and self-renewal capacity of cancer stem cells (CSCs) are closely related to the occurrence, recurrence, and drug resistance of hepatocellular carcinoma (HCC), as well as hypoxia. Therefore, an in-depth analysis of the relationship between HCC stemness, oxygenation status, and the effectiveness of immunotherapy is necessary to improve the poor prognosis of HCC patients.
The weighted gene co-expression network analysis (WGCNA) was utilized to find hypoxia-related genes, and the stemness index (mRNAsi) was evaluated using the one-class logistic regression (OCLR) technique. Based on stemness-hypoxia-related genes (SHRGs), population subgroup categorization using NMF cluster analysis was carried out. The relationship between SHRGs and survival outcomes was determined using univariate Cox regression. The LASSO-Cox regression strategy was performed to investigate the quality and establish the classifier associated with prognosis. The main effect of risk scores on the tumor microenvironment (TME) and its response to immune checkpoint drugs was also examined. Finally, qRT-PCR was performed to explore the expression and prognostic value of the signature in clinical samples.
After identifying tumor stemness- and hypoxia-related genes through a series of bioinformatics analyses, we constructed a prognostic stratification model based on these SHRGs, which can be effectively applied to the prognostic classification of HCC patients and the prediction of immune checkpoint inhibitors (ICIs) efficacy. Independent validation of the model in the ICGC cohort yielded good results. In addition, we also constructed hypoxic cell models in Herp3B and Huh7 cells to verify the expression of genes in the prognostic model and found that C7, CLEC1B, and CXCL6 were not only related to the tumor stemness but also related to hypoxia. Finally, we found that the constructed signature had a good prognostic value in the clinical sample.
We constructed and validated a stemness-hypoxia-related prognostic signature that can be used to predict the efficacy of ICIs therapy. We also verified that C7, CLEC1B, and CXCL6 are indeed associated with stemness and hypoxia through a hypoxic cell model, which may provide new ideas for individualized immunotherapy.
癌症干细胞(CSC)的特定分化潜能、无限增殖和自我更新能力与肝细胞癌(HCC)的发生、复发和耐药性以及缺氧密切相关。因此,深入分析 HCC 干性、氧合状态与免疫治疗效果之间的关系,对于改善 HCC 患者的预后不良具有重要意义。
利用加权基因共表达网络分析(WGCNA)寻找与缺氧相关的基因,并采用单类逻辑回归(OCLR)技术评估干性指数(mRNAsi)。基于干性-缺氧相关基因(SHRGs),采用非负矩阵分解聚类分析(NMF)进行人群亚组分类。采用单因素 Cox 回归分析 SHRGs 与生存结局的关系。采用 LASSO-Cox 回归策略进行预后相关标志物的质量筛选和分类器构建。进一步探讨风险评分对肿瘤微环境(TME)及其对免疫检查点药物反应的主要影响。最后,通过 qRT-PCR 检测临床样本中该signature 的表达及其预后价值。
通过一系列生物信息学分析,我们鉴定了肿瘤干性和缺氧相关基因,并基于这些 SHRGs 构建了一个预后分层模型,该模型可有效应用于 HCC 患者的预后分类和免疫检查点抑制剂(ICIs)疗效预测。在 ICGC 队列中的独立验证也取得了良好的结果。此外,我们还在 Herp3B 和 Huh7 细胞中构建了缺氧细胞模型,以验证预后模型中基因的表达,发现 C7、CLEC1B 和 CXCL6 不仅与肿瘤干性有关,而且与缺氧有关。最后,我们发现构建的signature 在临床样本中具有良好的预后价值。
我们构建并验证了一个与干性和缺氧相关的预后 signature,可用于预测 ICIs 治疗的疗效。我们还通过缺氧细胞模型验证了 C7、CLEC1B 和 CXCL6 确实与干性和缺氧有关,这可能为个体化免疫治疗提供新的思路。