Department of Respiratory Medicine, Shanghai Tenth People's Hospital, Tongji University School of Medicine, Shanghai, China.
Department of Rheumatology and Immunology, Tongren Hospital, School of Medicine, Shanghai Jiao Tong University, Shanghai, China.
J Cell Mol Med. 2024 Jun;28(12):e18373. doi: 10.1111/jcmm.18373.
Gastric cancer (GC) remains a prominent malignancy that poses a significant threat to human well-being worldwide. Despite advancements in chemotherapy and immunotherapy, which have effectively augmented patient survival rates, the mortality rate associated with GC remains distressingly high. This can be attributed to the elevated proliferation and invasive nature exhibited by GC. Our current understanding of the drivers behind GC cell proliferation remains limited. Hence, in order to reveal the molecular biological mechanism behind the swift advancement of GC, we employed single-cell RNA-sequencing (scRNA-seq) to characterize the tumour microenvironment in this study. The scRNA-seq data of 27 patients were acquired from the Gene Expression Omnibus database. Differential gene analysis, Gene Ontology, Kyoto Encyclopedia of Genes and Genomes and Gene Set Enrichment Analysis were employed to investigate 38 samples. The copy number variation level exhibited by GC cells was determined using InferCNV. The CytoTRACE, Monocle and Slingshot analysis were used to discern the cellular stemness and developmental trajectory of GC cells. The CellChat package was utilized for the analysis of intercellular communication crosstalk. Moreover, the findings of the data analysis were validated through cellular functional tests conducted on the AGS cell line and SGC-7901 cell line. Finally, this study constructed a risk scoring model to evaluate the differences of different risk scores in clinical characteristics, immune infiltration, immune checkpoints, functional enrichment, tumour mutation burden and drug sensitivity. Within the microenvironment of GC, we identified the presence of 8 cell subsets, encompassing NK_T cells, B_Plasma cells, epithelial cells, myeloid cells, endothelial cells, mast cells, fibroblasts, pericytes. By delving deeper into the characterization of GC cells, we identified 6 specific tumour cell subtypes: C0 PSCA+ tumour cells, C1 CLDN7+ tumour cells, C2 UBE2C+ tumour cells, C3 MUC6+ tumour cells, C4 CHGA+ tumour cells and C5 MUC2+ tumour cells. Notably, the C2 UBE2C+ tumour cells demonstrated a close association with cell mitosis and the cell cycle, exhibiting robust proliferative capabilities. Our findings were fortified through enrichment analysis, pseudotime analysis and cell communication analysis. Meanwhile, knockdown of the transcription factor CREB3, which is highly active in UBE2C+ tumour cells, significantly impedes the proliferation, migration and invasion of GC cells. And the prognostic score model constructed with CREB3-related genes showcased commendable clinical predictive capacity, thus providing valuable guidance for patients' prognosis and clinical treatment decisions. We have identified a highly proliferative cellular subgroup C2 UBE2C+ tumour cells in GC for the first time. The employment of a risk score model, which is based on genes associated with UBE2C expression, exhibits remarkable proficiency in predicting the prognosis of GC patients. In our investigation, we observed that the knockdown of the transcription factor CREB3 led to a marked reduction in cellular proliferation, migration and invasion in GC cell line models. Implementing a stratified treatment approach guided by this model represents a judicious and promising methodology.
胃癌(GC)仍然是一种突出的恶性肿瘤,对全球人类健康构成重大威胁。尽管化疗和免疫疗法的进展有效地提高了患者的生存率,但 GC 的死亡率仍然高得令人痛苦。这可以归因于 GC 表现出的高增殖和侵袭性。我们目前对 GC 细胞增殖背后的驱动因素的了解仍然有限。因此,为了揭示 GC 迅速发展的分子生物学机制,我们在这项研究中使用单细胞 RNA 测序(scRNA-seq)来描绘肿瘤微环境。从基因表达综合数据库中获取了 27 名患者的 scRNA-seq 数据。使用差异基因分析、基因本体论、京都基因与基因组百科全书和基因集富集分析对 38 个样本进行了研究。使用 InferCNV 确定 GC 细胞的拷贝数变异水平。使用 CytoTRACE、Monocle 和 Slingshot 分析来辨别 GC 细胞的细胞干性和发育轨迹。使用 CellChat 包分析细胞间通讯串扰。此外,通过在 AGS 细胞系和 SGC-7901 细胞系上进行细胞功能测试来验证数据分析的结果。最后,本研究构建了一个风险评分模型,以评估不同风险评分在临床特征、免疫浸润、免疫检查点、功能富集、肿瘤突变负荷和药物敏感性方面的差异。在 GC 的微环境中,我们确定了存在 8 种细胞亚群,包括 NK_T 细胞、B_浆细胞、上皮细胞、髓样细胞、内皮细胞、肥大细胞、成纤维细胞和周细胞。通过深入研究 GC 细胞的特征,我们确定了 6 种特定的肿瘤细胞亚型:C0 PSCA+肿瘤细胞、C1 CLDN7+肿瘤细胞、C2 UBE2C+肿瘤细胞、C3 MUC6+肿瘤细胞、C4 CHGA+肿瘤细胞和 C5 MUC2+肿瘤细胞。值得注意的是,C2 UBE2C+肿瘤细胞与细胞有丝分裂和细胞周期密切相关,表现出强大的增殖能力。我们的发现通过富集分析、伪时间分析和细胞通讯分析得到了加强。同时,敲低在 UBE2C+肿瘤细胞中高度活跃的转录因子 CREB3,显著抑制 GC 细胞的增殖、迁移和侵袭。并且,基于 CREB3 相关基因构建的预后评分模型表现出出色的临床预测能力,为患者的预后和临床治疗决策提供了有价值的指导。我们首次在 GC 中鉴定出一个具有高增殖能力的细胞亚群 C2 UBE2C+肿瘤细胞。基于与 UBE2C 表达相关基因的风险评分模型在预测 GC 患者的预后方面表现出出色的性能。在我们的研究中,我们观察到转录因子 CREB3 的敲低导致 GC 细胞系模型中的细胞增殖、迁移和侵袭明显减少。基于该模型实施分层治疗方法是一种明智且有前途的方法。