Hu Xianyu, Wang Zhenglin, Wang Qing, Chen Ke, Han Qijun, Bai Suwen, Du Juan, Chen Wei
Department of General Surgery, The First Affiliated Hospital of Anhui Medical University, Hefei, Anhui Province 230022, PR China.
Department of Biliary-Pancreatic Minimally Invasive Surgery, The First Affiliated Hospital of Shantou University Medical College, Shantou, Guangdong Province 515000, PR China.
Biomed Pharmacother. 2021 Dec;144:112222. doi: 10.1016/j.biopha.2021.112222. Epub 2021 Oct 1.
Globally, gastric cancer (GC) is the fifth most common tumor. It is necessary to identify novel molecular subtypes to guide patient selection for specific target therapeutic benefits.
Multi-omics data, including transcriptomics RNA-sequencing (mRNA, LncRNA, miRNA), DNA methylation, and gene mutations in the TCGA-STAD cohort were used for the clustering. Ten classical clustering algorithms were executed to recognize patients with different molecular features using the "MOVICS" package in R. The activated signaling pathways were evaluated using the single-sample gene set enrichment analysis. The differential distribution of gene mutations, copy number alterations, and tumor mutation burden was compared, and potential responses to immunotherapy and chemotherapy were also assessed.
Two molecular subtypes (CS1 and CS2) were recognized by ten clustering algorithms with consensus ensembles. Patients in the CS1 group had a shorter average overall survival time (28.5 vs. 68.9 months, P = 0.016), and progression-free survival (19.0 vs. 63.9 months, P = 0.008) as compared to those in the CS2 group. Extracellular associated biological process activation was higher in the CS1 group, while the CS2 group displayed the enhanced activation of cell cycle-associated pathways. Significantly higher total mutation numbers and neoantigens were observed in the CS2 group, along with specific mutations in TTN, MUC16, and ARID1A. Higher infiltration of immunocytes was also observed in the CS2 group, reflective of the potential immunotherapeutic benefits. Moreover, the CS2 group could also respond to 5-fluorouracil, cisplatin, and paclitaxel. The similar diversity in clinical outcomes between CS1 and CS2 groups was successfully validated in the external cohorts, GSE62254, GSE26253, GSE15459, and GSE84437.
The findings provided novel insights into the GC subtypes through integrative analysis of five -omics data by ten clustering algorithms. These could provide potential clinical therapeutic targets based on the specific molecular features.
在全球范围内,胃癌(GC)是第五大常见肿瘤。有必要识别新的分子亚型,以指导患者选择特定的靶向治疗方案从而获得治疗益处。
利用多组学数据,包括TCGA-STAD队列中的转录组学RNA测序(mRNA、LncRNA、miRNA)、DNA甲基化和基因突变进行聚类分析。使用R语言中的“MOVICS”软件包执行十种经典聚类算法,以识别具有不同分子特征的患者。使用单样本基因集富集分析评估激活的信号通路。比较基因突变、拷贝数改变和肿瘤突变负担的差异分布,并评估对免疫治疗和化疗的潜在反应。
通过十种聚类算法和共识集成识别出两种分子亚型(CS1和CS2)。与CS2组相比,CS1组患者的平均总生存时间较短(28.5个月对68.9个月,P = 0.016),无进展生存期也较短(19.0个月对63.9个月,P = 0.008)。CS1组细胞外相关生物学过程的激活程度较高,而CS2组显示细胞周期相关通路的激活增强。CS2组观察到显著更高的总突变数和新抗原,以及TTN、MUC16和ARID1A中的特定突变。CS2组还观察到免疫细胞浸润更高,这反映了潜在的免疫治疗益处。此外,CS2组对5-氟尿嘧啶、顺铂和紫杉醇也有反应。CS1组和CS2组在临床结局上的相似差异在外部队列GSE62254、GSE26253、GSE15459和GSE84437中得到成功验证。
这些发现通过十种聚类算法对五组学数据的综合分析,为胃癌亚型提供了新的见解。这些发现可以根据特定的分子特征提供潜在的临床治疗靶点。