Reproductive Medicine Center, Yue Bei People's Hospital, Shantou University Medical College, 133 Huimin South Road, Shaoguan, 512025, China.
Medical Research Center, Yue Bei People's Hospital, Shantou University Medical College, Shaoguan, 512025, China.
BMC Cancer. 2022 Mar 31;22(1):352. doi: 10.1186/s12885-022-09449-9.
This study aims to construct a new prognostic gene signature in survival prediction and risk stratification for patients with Head and neck squamous cell carcinoma (HNSCC).
The transcriptome profiling data and hallmark gene sets in the Molecular Signatures Database was used to explore the cancer hallmarks most relevant to the prognosis of HNSCC patients. Differential gene expression analysis, weighted gene co-expression network analysis, univariate COX regression analysis, random forest algorithm and multiple combinatorial screening were used to construct the prognostic gene signature. The predictive ability of gene signature was verified in the TCGA HNSCC cohort as the training set and the GEO HNSCC cohorts (GSE41613 and GSE42743) as the validation sets, respectively. Moreover, the correlations between risk scores and immune infiltration patterns, as well as risk scores and genomic changes were explored.
A total of 3391 differentially expressed genes in HNSCC were screened. Glycolysis and hypoxia were screened as the main risk factors for OS in HNSCC. Using univariate Cox analysis, 97 prognostic candidates were identified (P < 0.05). Top 10 important genes were then screened out by random forest. Using multiple combinatorial screening, a combination with less genes and more significant P value was used to construct the prognostic gene signature (RNF144A, STC1, P4HA1, FMNL3, ANO1, BASP1, MME, PLEKHG2 and DKK1). Kaplan-Meier analysis showed that patients with higher risk scores had worse overall survival (p < 0.001). The ROC curve showed that the risk score had a good predictive efficiency (AUC > 0.66). Subsequently, the predictive ability of the risk score was verified in the validation sets. Moreover, the two-factor survival analysis combining the cancer hallmarks and risk scores suggested that HNSCC patients with the high hypoxia or glycolysis & high risk-score showed the worst prognosis. Besides, a nomogram based on the nine-gene signature was established for clinical practice. Furthermore, the risk score was significantly related to tumor immune infiltration profiles and genome changes.
This nine-gene signature associated with glycolysis and hypoxia can not only be used for prognosis prediction and risk stratification, but also may be a potential therapeutic target for patients with HNSCC.
本研究旨在构建一个新的用于预测头颈部鳞状细胞癌(HNSCC)患者生存和风险分层的预后基因特征。
使用分子特征数据库中的转录组谱数据和标志性基因集,探讨与 HNSCC 患者预后最相关的癌症特征。差异基因表达分析、加权基因共表达网络分析、单因素 COX 回归分析、随机森林算法和多组合筛选用于构建预后基因特征。基因特征的预测能力分别在 TCGA HNSCC 队列作为训练集和 GEO HNSCC 队列(GSE41613 和 GSE42743)作为验证集进行验证。此外,还探讨了风险评分与免疫浸润模式以及风险评分与基因组变化之间的相关性。
筛选出 HNSCC 中 3391 个差异表达基因。糖酵解和缺氧被筛选为 HNSCC 中 OS 的主要危险因素。使用单因素 Cox 分析,确定了 97 个预后候选基因(P<0.05)。然后通过随机森林筛选出前 10 个重要基因。通过多组合筛选,使用基因更少且 P 值更显著的组合构建预后基因特征(RNF144A、STC1、P4HA1、FMNL3、ANO1、BASP1、MME、PLEKHG2 和 DKK1)。Kaplan-Meier 分析显示,风险评分较高的患者总生存率较差(p<0.001)。ROC 曲线显示风险评分具有良好的预测效率(AUC>0.66)。随后,在验证集中验证了风险评分的预测能力。此外,结合癌症特征和风险评分的两因素生存分析表明,具有高缺氧或高糖酵解和高风险评分的 HNSCC 患者预后最差。此外,还建立了基于九个基因特征的列线图,用于临床实践。此外,风险评分与肿瘤免疫浸润谱和基因组变化显著相关。
该与糖酵解和缺氧相关的九个基因特征不仅可用于预后预测和风险分层,而且可能成为 HNSCC 患者的潜在治疗靶点。