Zhang Yongjian, Huang Wei, Chen Dejia, Zhao Yue, Sun Fusheng, Wang Zhiqiang, Lou Ge
Department of Gynecology Oncology, Harbin Medical University Cancer Hospital, Harbin, China.
Front Genet. 2022 Jun 8;13:823082. doi: 10.3389/fgene.2022.823082. eCollection 2022.
Ovarian cancer is one of the most common gynecological malignancies in women, with a poor prognosis and high mortality. With the expansion of single-cell RNA sequencing technologies, the inner biological mechanism involved in tumor recurrence should be explored at the single-cell level, and novel prognostic signatures derived from recurrence events were urgently identified. In this study, we identified recurrence-related genes for ovarian cancer by integrating two Gene Expression Omnibus datasets, including an ovarian cancer single-cell RNA sequencing dataset (GSE146026) and a bulk expression dataset (GSE44104). Based on these recurrence genes, we further utilized the merged expression dataset containing a total of 524 ovarian cancer samples to identify prognostic signatures and constructed a 13-gene risk model, named RMGS (recurrence marker gene signature). Based on the RMGS score, the samples were stratified into high-risk and low-risk groups, and these two groups displayed significant survival difference in two independent validation cohorts including The Cancer Genome Atlas (TCGA). Also, the RMGS score remained significantly independent in multivariate analysis after adjusting for clinical factors, including the tumor grade and stage. Furthermore, there existed close associations between the RMGS score and immune characterizations, including checkpoint inhibition, EMT signature, and T-cell infiltration. Finally, the associations between RMGS scores and molecular subtypes revealed that samples with mesenchymal subtypes displayed higher RMGS scores. In the meanwhile, the genomics characterization from these two risk groups was also identified. In conclusion, the recurrence-related RMGS model we identified could provide a new understanding of ovarian cancer prognosis at the single-cell level and offer a reference for therapy decisions for patient treatment.
卵巢癌是女性最常见的妇科恶性肿瘤之一,预后较差,死亡率高。随着单细胞RNA测序技术的发展,应在单细胞水平探索肿瘤复发所涉及的内在生物学机制,并迫切需要从复发事件中鉴定出新的预后特征。在本研究中,我们通过整合两个基因表达综合数据库,包括一个卵巢癌单细胞RNA测序数据集(GSE146026)和一个批量表达数据集(GSE44104),鉴定了卵巢癌的复发相关基因。基于这些复发基因,我们进一步利用包含总共524个卵巢癌样本的合并表达数据集来鉴定预后特征,并构建了一个名为RMGS(复发标记基因特征)的13基因风险模型。根据RMGS评分,将样本分为高风险组和低风险组,这两组在包括癌症基因组图谱(TCGA)在内的两个独立验证队列中显示出显著的生存差异。此外,在调整包括肿瘤分级和分期在内的临床因素后,RMGS评分在多变量分析中仍具有显著的独立性。此外,RMGS评分与免疫特征之间存在密切关联,包括检查点抑制、上皮-间质转化特征和T细胞浸润。最后,RMGS评分与分子亚型之间的关联表明,间充质亚型的样本显示出较高的RMGS评分。同时,还确定了这两个风险组的基因组特征。总之,我们鉴定的复发相关RMGS模型可以在单细胞水平上为卵巢癌预后提供新的认识,并为患者治疗的治疗决策提供参考。