Department of Orthopedics, The First Affiliated Hospital of Chongqing Medical University, Yuzhong, Chongqing, China.
Comput Math Methods Med. 2022 Jan 27;2022:8798624. doi: 10.1155/2022/8798624. eCollection 2022.
Ewing sarcoma (ES) is the second most common pediatric bone tumor with a high rate of metastasis, high recurrence, and low survival rate. Therefore, the identification of new biomarkers which can improve the prognosis of ES patients is urgently needed.
Here, GSE17679 dataset was downloaded from GEO databases. WGCNA method was used to identify one module associating with OVS (overall vital survival) and event. cytoHubba was used to screen out 50 hub genes from the module genes. Then, GSE17679 dataset was randomly divided into train cohort and test cohort. Next, univariate Cox analysis, LASSO regression analysis, and multivariate Cox analysis were conducted on 50 hub genes combined with train cohort data to select pivotal genes. Finally, an optimal 7-gene-based risk assessment model was established, which was verified by test cohort, entire GSE17679, and two independent datasets (GSE63157 and TCGA-SARC).
The results of the functional enrichment analysis revealed that the OVS and event-associated module were mainly enriched in the protein transcription, cell proliferation, and cell-cycle control. And the train cohort was divided into high-risk and low-risk subgroups based on the median risk score; the results showed that the survival of the low-risk subgroup was significantly longer than high-risk. ROC analysis revealed that AUC values of 1, 3, and 5-year survival were 0.85, 0.94, and 0.88, and Kaplan-Meier analysis also revealed that value < 0.0001, indicating that this model was accurate, which was also verified in the test, entire cohort, and two independent datasets (GSE63157 and TCGA-SARC). Then, we performed a comprehensive analysis (differential expression analysis, correlation analysis and survival analysis) of seven pivotal genes, and found that four genes (NCAPG, KIF4A, NUF2 and CDC20) plays a more crucial role in the prognosis of ES.
Taken together, this study established an optimal 7-gene-based risk assessment model and identified 4 potential therapeutic targets, to improve the prognosis of ES patients.
尤因肉瘤(ES)是第二大常见的儿童骨肿瘤,具有高转移率、高复发率和低生存率。因此,迫切需要鉴定新的生物标志物,以改善 ES 患者的预后。
在这里,从 GEO 数据库中下载了 GSE17679 数据集。使用 WGCNA 方法识别与 OVS(总体生存)和事件相关的一个模块。通过 cytoHubba 从模块基因中筛选出 50 个枢纽基因。然后,将 GSE17679 数据集随机分为训练队列和测试队列。接下来,对 50 个枢纽基因与训练队列数据进行单变量 Cox 分析、LASSO 回归分析和多变量 Cox 分析,以选择关键基因。最后,建立了一个基于 7 个基因的最佳风险评估模型,并通过测试队列、整个 GSE17679 数据集和两个独立数据集(GSE63157 和 TCGA-SARC)进行验证。
功能富集分析的结果表明,OVS 和事件相关模块主要富集在蛋白质转录、细胞增殖和细胞周期控制中。根据中位风险评分,将训练队列分为高风险和低风险亚组;结果表明,低风险亚组的生存率明显更长。ROC 分析显示,1、3 和 5 年生存率的 AUC 值分别为 0.85、0.94 和 0.88,Kaplan-Meier 分析也显示值<0.0001,表明该模型具有较高的准确性,在测试、整个队列和两个独立数据集(GSE63157 和 TCGA-SARC)中也得到了验证。然后,我们对七个关键基因进行了全面分析(差异表达分析、相关性分析和生存分析),发现四个基因(NCAPG、KIF4A、NUF2 和 CDC20)在 ES 的预后中发挥了更关键的作用。
综上所述,本研究建立了一个最佳的 7 基因风险评估模型,并确定了 4 个潜在的治疗靶点,以改善 ES 患者的预后。