Department of General Surgery, First Affiliated Hospital of Nanchang University, Nanchang, Jiangxi Province, China.
Nanchang University, Nanchang, Jiangxi Province, China.
BMC Cancer. 2023 Jan 31;23(1):108. doi: 10.1186/s12885-022-10332-w.
As the dominant component of the tumor microenvironment, cancer-associated fibroblasts (CAFs), play a vital role in tumor progression. An increasing number of studies have confirmed that CAFs are involved in almost every aspect of tumors including tumorigenesis, metabolism, invasion, metastasis and drug resistance, and CAFs provide an attractive therapeutic target. This study aimed to explore the feature genes of CAFs for potential therapeutic targets and reliable prediction of prognosis in patients with gastric cancer (GC). Bioinformatic analysis was utilized to identify the feature genes of CAFs in GC by performing an integrated analysis of single-cell and transcriptome RNA sequencing using R software. Based on these feature genes, a CAF-related gene signature was constructed for prognostic prediction by LASSO. Simultaneously, survival analysis and nomogram were performed to validate the prognostic predictive value of this gene signature, and qRT-PCR and immunohistochemical staining verified the expression of the feature genes of CAFs. In addition, small molecular drugs for gene therapy of CAF-related gene signatures in GC patients were identified using the connectivity map (CMAP) database. A combination of nine CAF-related genes was constructed to characterize the prognosis of GC, and the prognostic potential and differential expression of the gene signature were initially validated. Additionally, three small molecular drugs were deduced to have anticancer properties on GC progression. By integrating single-cell and bulk RNA sequencing analyses, a novel gene signature of CAFs was constructed. The results provide a positive impact on future research and clinical studies involving CAFs for GC.
作为肿瘤微环境的主要组成部分,癌症相关成纤维细胞(CAFs)在肿瘤进展中起着至关重要的作用。越来越多的研究证实,CAFs 参与肿瘤的几乎所有方面,包括肿瘤发生、代谢、侵袭、转移和耐药性,并且 CAFs 提供了有吸引力的治疗靶点。本研究旨在探讨 CAFs 的特征基因,为胃癌(GC)患者的潜在治疗靶点和可靠预后预测提供依据。通过使用 R 软件对单细胞和转录组 RNA 测序进行综合分析,进行生物信息学分析以确定 GC 中 CAFs 的特征基因。基于这些特征基因,通过 LASSO 构建 CAF 相关基因特征用于预后预测。同时,进行生存分析和诺莫图验证该基因特征的预后预测价值,并通过 qRT-PCR 和免疫组织化学染色验证 CAFs 特征基因的表达。此外,使用连接图谱(CMAP)数据库鉴定 GC 患者 CAF 相关基因特征的基因治疗小分子药物。构建了九个 CAF 相关基因的组合,以描述 GC 的预后,初步验证了基因特征的预后潜力和差异表达。此外,推断出三种小分子药物对 GC 进展具有抗癌特性。通过整合单细胞和批量 RNA 测序分析,构建了一种新的 CAFs 基因特征。这些结果对未来涉及 GC 的 CAFs 的研究和临床研究具有积极影响。