Gu Lei, Ding Dan, Wei Cuicui, Zhou Donglei
Department of General Surgery, Shanghai Tenth People's Hospital, School of Medicine, Tongji University, Shanghai, China.
Department of Gastroenterology, Changhai Hospital, Navy/Second Military Medical University, Shanghai, China.
Front Oncol. 2023 Jun 19;13:1158863. doi: 10.3389/fonc.2023.1158863. eCollection 2023.
Cancer-associated fibroblasts (CAFs) are essential tumoral components of gastric cancer (GC), contributing to the development, therapeutic resistance and immune-suppressive tumor microenvironment (TME) of GC. This study aimed to explore the factors related to matrix CAFs and establish a CAF model to evaluate the prognosis and therapeutic effect of GC.
Sample information from the multiply public databases were retrieved. Weighted gene co-expression network analysis was used to identify CAF-related genes. EPIC algorithm was used to construct and verify the model. Machine-learning methods characterized CAF risk. Gene set enrichment analysis was employed to elucidate the underlying mechanism of CAF in the development of GC.
A three-gene ( and ) prognostic CAF model was established, and patients were markedly divided according to the riskscore of CAF model. The high-risk CAF clusters had significantly worse prognoses and less significant responses to immunotherapy than the low-risk group. Additionally, the CAF risk score was positively associated with CAF infiltration in GC. Moreover, the expression of the three model biomarkers were significantly associated with the CAF infiltration. GSEA revealed significant enrichment of cell adhesion molecules, extracellular matrix receptors and focal adhesions in patients at a high risk of CAF.
The CAF signature refines the classifications of GC with distinct prognosis and clinicopathological indicators. The three-gene model could effectively aid in determining the prognosis, drug resistance and immunotherapy efficacy of GC. Thus, this model has promising clinical significance for guiding precise GC anti-CAF therapy combined with immunotherapy.
癌症相关成纤维细胞(CAFs)是胃癌(GC)的重要肿瘤组成部分,有助于胃癌的发展、治疗抵抗和免疫抑制性肿瘤微环境(TME)。本研究旨在探索与基质CAFs相关的因素,并建立一个CAF模型来评估胃癌的预后和治疗效果。
检索多个公共数据库的样本信息。采用加权基因共表达网络分析来识别CAF相关基因。使用EPIC算法构建并验证模型。机器学习方法对CAF风险进行特征分析。采用基因集富集分析来阐明CAF在胃癌发展中的潜在机制。
建立了一个三基因( 和 )预后CAF模型,并根据CAF模型的风险评分对患者进行了明显分组。高风险CAF簇的预后明显比低风险组差,对免疫治疗的反应也不明显。此外,CAF风险评分与胃癌中CAF浸润呈正相关。而且,三种模型生物标志物的表达与CAF浸润显著相关。基因集富集分析显示,在CAF高风险患者中,细胞粘附分子、细胞外基质受体和粘着斑显著富集。
CAF特征细化了具有不同预后和临床病理指标的胃癌分类。三基因模型可以有效地帮助确定胃癌的预后、耐药性和免疫治疗效果。因此,该模型对于指导精确的胃癌抗CAF治疗联合免疫治疗具有广阔的临床意义。