Chen Xiaowei, Zhang Dawei, Jiang Fei, Shen Yan, Li Xin, Hu Xueju, Wei Pingmin, Shen Xiaobing
Key Laboratory of Environmental Medicine Engineering, Ministry of Education, School of Public Health, Southeast University, Nanjing, China.
Department of Epidemiology and Health Statistics, School of Public Health, Southeast University, Nanjing, China.
Front Mol Biosci. 2020 Sep 4;7:570702. doi: 10.3389/fmolb.2020.570702. eCollection 2020.
With characteristic self-renewal and multipotent differentiation, cancer stem cells (CSCs) have a crucial influence on the metastasis, relapse and drug resistance of gastric cancer (GC). However, the genes that participates in the stemness of GC stem cells have not been identified.
The mRNA expression-based stemness index (mRNAsi) was analyzed with differential expressions in GC. The weighted gene co-expression network analysis (WGCNA) was utilized to build a co-expression network targeting differentially expressed genes (DEG) and discover mRNAsi-related modules and genes. We assessed the association between the key genes at both the transcription and protein level. Gene Expression Omnibus (GEO) database was used to validate the expression levels of the key genes. The risk model was established according to the least absolute shrinkage and selection operator (LASSO) Cox regression analysis. Furthermore, we determined the prognostic value of the model by employing Kaplan-Meier (KM) plus multivariate Cox analysis.
GC tissues exhibited a substantially higher mRNAsi relative to the healthy non-tumor tissues. Based on WGCNA, 17 key genes (ARHGAP11A, BUB1, BUB1B, C1orf112, CENPF, KIF14, KIF15, KIF18B, KIF4A, NCAPH, PLK4, RACGAP1, RAD54L, SGO2, TPX2, TTK, and XRCC2) were identified. These key genes were clearly overexpressed in GC and validated in the GEO database. The protein-protein interaction (PPI) network as assessed by STRING indicated that the key genes were tightly connected. After LASSO analysis, a nine-gene risk model (BUB1B, NCAPH, KIF15, RAD54L, KIF18B, KIF4A, TTK, SGO2, C1orf112) was constructed. The overall survival in the high-risk group was relatively poor. The area under curve (AUC) of risk score was higher compared to that of clinicopathological characteristics. According to the multivariate Cox analysis, the nine-gene risk model was a predictor of disease outcomes in GC patients (HR, 7.606; 95% CI, 3.037-19.051; < 0.001). We constructed a prognostic nomogram with well-fitted calibration curve based on risk score and clinical data.
The 17 mRNAsi-related key genes identified in this study could be potential treatment targets in GC treatment, considering that they can inhibit the stemness properties. The nine-gene risk model can be employed to predict the disease outcomes of the patients.
癌症干细胞(CSCs)具有独特的自我更新和多能分化能力,对胃癌(GC)的转移、复发和耐药性具有关键影响。然而,参与GC干细胞干性的基因尚未被鉴定出来。
分析基于mRNA表达的干性指数(mRNAsi)在GC中的差异表达。利用加权基因共表达网络分析(WGCNA)构建针对差异表达基因(DEG)的共表达网络,发现与mRNAsi相关的模块和基因。我们在转录和蛋白质水平评估关键基因之间的关联。使用基因表达综合数据库(GEO)验证关键基因的表达水平。根据最小绝对收缩和选择算子(LASSO)Cox回归分析建立风险模型。此外,我们通过Kaplan-Meier(KM)加多元Cox分析确定模型的预后价值。
相对于健康的非肿瘤组织,GC组织表现出显著更高的mRNAsi。基于WGCNA,鉴定出17个关键基因(ARHGAP11A、BUB1、BUB1B、C1orf112、CENPF、KIF14、KIF15、KIF18B、KIF4A、NCAPH、PLK4、RACGAP1、RAD54L、SGO2、TPX2、TTK和XRCC2)。这些关键基因在GC中明显过表达,并在GEO数据库中得到验证。STRING评估的蛋白质-蛋白质相互作用(PPI)网络表明关键基因紧密相连。经过LASSO分析,构建了一个九基因风险模型(BUB1B、NCAPH、KIF15、RAD54L、KIF18B、KIF4A、TTK、SGO2、C1orf112)。高风险组的总生存期相对较差。风险评分的曲线下面积(AUC)高于临床病理特征。根据多元Cox分析,九基因风险模型是GC患者疾病预后的一个预测指标(HR,7.606;95%CI,3.037-19.051;P<0.001)。我们基于风险评分和临床数据构建了具有良好拟合校准曲线的预后列线图。
本研究中鉴定出的17个与mRNAsi相关的关键基因可能是GC治疗的潜在靶点,因为它们可以抑制干性特性。九基因风险模型可用于预测患者的疾病预后。