Zou Qiyuan, Lv Yufeng, Gan Zuhuan, Liao Shulan, Liang Zhonghui
Department of Gastroenterology, Foresea Life Insurance Guangxi Hospital, Nanning, China.
Center of Oncology, Foresea Life Insurance Guangxi Hospital, Nanning, China.
Front Cell Dev Biol. 2021 Oct 18;9:720649. doi: 10.3389/fcell.2021.720649. eCollection 2021.
The aim of the present study was to construct a polygenic risk score (PRS) for poor survival among patients with stomach adenocarcinoma (STAD) based on expression of malignant cell markers. Integrated analyses of bulk and single-cell RNA sequencing (scRNA-seq) of STAD and normal stomach tissues were conducted to identify malignant and non-malignant markers. Analyses of the scRNA-seq profile from early STAD were used to explore intratumoral heterogeneity (ITH) of the malignant cell subpopulations. Dimension reduction, cell clustering, pseudotime, and gene set enrichment analyses were performed. The marker genes of each malignant tissue and cell clusters were screened to create a PRS using Cox regression analyses. Combined with the PRS and routine clinicopathological characteristics, a nomogram tool was generated to predict prognosis of patients with STAD. The prognostic power of the PRS was validated in two independent external datasets. The malignant and non-malignant cells were identified according to 50 malignant and non-malignant cell markers. The malignant cells were divided into nine clusters with different marker genes and biological characteristics. Pseudotime analysis showed the potential differentiation trajectory of these nine malignant cell clusters and identified genes that affect cell differentiation. Ten malignant cell markers were selected to generate a PRS: RGS1, AADAC, NPC2, COL10A1, PRKCSH, RAMP1, PRR15L, TUBA1A, CXCR6, and UPP1. The PRS was associated with both overall and progression-free survival (PFS) and proved to be a prognostic factor independent of routine clinicopathological characteristics. PRS could successfully divide patients with STAD in three datasets into high- or low-risk groups. In addition, we combined PRS and the tumor clinicopathological characteristics into a nomogram tool to help predict the survival of patients with STAD. We revealed limited but significant intratumoral heterogeneity in STAD and proposed a malignant cell subset marker-based PRS through integrated analysis of bulk sequencing and scRNA-seq data.
本研究的目的是基于恶性细胞标志物的表达构建胃腺癌(STAD)患者生存不良的多基因风险评分(PRS)。对STAD和正常胃组织进行批量和单细胞RNA测序(scRNA-seq)的综合分析,以鉴定恶性和非恶性标志物。利用早期STAD的scRNA-seq图谱分析来探索恶性细胞亚群的肿瘤内异质性(ITH)。进行了降维、细胞聚类、伪时间和基因集富集分析。使用Cox回归分析筛选每个恶性组织和细胞簇的标志物基因,以创建PRS。结合PRS和常规临床病理特征,生成了一个列线图工具来预测STAD患者的预后。PRS的预后能力在两个独立的外部数据集中得到验证。根据50个恶性和非恶性细胞标志物鉴定恶性和非恶性细胞。恶性细胞被分为九个具有不同标志物基因和生物学特征的簇。伪时间分析显示了这九个恶性细胞簇的潜在分化轨迹,并鉴定了影响细胞分化的基因。选择了十个恶性细胞标志物来生成PRS:RGS1、AADAC、NPC2、COL10A1、PRKCSH、RAMP1、PRR15L、TUBA1A、CXCR6和UPP1。PRS与总生存期和无进展生存期(PFS)均相关,并被证明是一个独立于常规临床病理特征的预后因素。PRS能够成功地将三个数据集中的STAD患者分为高风险或低风险组。此外,我们将PRS与肿瘤临床病理特征结合到一个列线图工具中,以帮助预测STAD患者的生存情况。我们揭示了STAD中有限但显著的肿瘤内异质性,并通过对批量测序和scRNA-seq数据的综合分析,提出了一种基于恶性细胞亚群标志物的PRS。