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单细胞和批量RNA测序数据的综合分析揭示了抗原呈递和加工成纤维细胞,并建立了胃癌预测模型。

Comprehensive analysis of single-cell and bulk RNA sequencing data unveils antigen-presenting and processing fibroblasts and establishes a predictive model in gastric cancer.

作者信息

Zhang Chenggang, Chen Fangqi, Li Jie, He Yixuan, Sun Juan, Zheng Zicheng, Liu Guanmo, Wang Yihua, Kang Weiming, Ye Xin

机构信息

Department of General Surgery, Peking Union Medical College Hospital, Chinese Academy of Medical Sciences & Peking Union Medical College, Beijing, 100730, China.

Hospital for Skin Diseases, Institute of Dermatology, Chinese Academy of Medical Sciences and Peking Union Medical College, Nanjing, 210042, China.

出版信息

Cancer Cell Int. 2025 Jun 21;25(1):225. doi: 10.1186/s12935-025-03878-9.

Abstract

BACKGROUND

Antigen-presenting and processing fibroblasts (APPFs) have emerged as pivotal regulators of antitumor immunity. However, the predictive value of APPF-related genes (APPFRGs) in the prognosis and tumor immune status of gastric cancer (GC) remains largely unexplored.

METHODS

Bioinformatics analysis was conducted using single-cell and bulk RNA sequencing datasets of GC retrieved from the Gene Expression Omnibus (GEO) and The Cancer Genome Atlas (TCGA) databases. The APPFs were identified using AUCell algorithm based on APP-associated genes obtained from the InnateDB database. CellChat algorithm was utilized to evaluate interactions between cells. The non-negative matrix factorization (NMF) clustering analysis was performed to identify APPF-related subgroups based on TCGA‑stomach adenocarcinoma cohort. LASSO and multivariate Cox regression analysis were conducted to establish the predictive model. Immunohistochemistry of GC tissue microarrays was performed to validate the model.

RESULTS

Compared to non-APPFs, APPFs exhibited more interactions with myeloid cells, endothelial cells, and lymphocytes via MHC-II signaling network. The two APPF-related subgroups clustered by NMF demonstrated significant differences in prognosis and immune cell infiltration. Five APPFRGs (CPVL, ZNF331, TPP1, LGALS9, TNFAIP2) were identified to establish the predictive model and stratify GC patients based on risk score. The prognosis was significantly different between the two risk groups and was validated using GEO datasets. A nomogram that efficiently predicted the overall survival of GC patients was established by integrating the risk score with age, T stage, N stage, and M stage. Furthermore, the high-risk group exhibited reduced infiltration of activated CD4 T cell and increased infiltration of Treg cells, higher resistance to chemotherapy and immunotherapy, and lower tumor mutation burden. Finally, the immunohistochemical results of GC tissue microarrays revealed higher expression of CPVL, ZNF331, and TPP1, and lower expression of LGALS9 and TNFAIP2 in GC compared to adjacent normal tissues. Additionally, higher risk score in GC samples was relevant with poor differentiation, positive nerve invasion, advanced T and TNM stages, and higher expression of FOXP3.

CONCLUSIONS

APPFs may play an important role in the regulation of tumor immune microenvironment in GC and warrant further exploration. The predictive model based on APPFRGs effectively predicts the prognosis and tumor immune status of GC.

摘要

背景

抗原呈递与加工成纤维细胞(APPFs)已成为抗肿瘤免疫的关键调节因子。然而,APPF相关基因(APPFRGs)在胃癌(GC)预后及肿瘤免疫状态中的预测价值仍 largely未被探索。

方法

使用从基因表达综合数据库(GEO)和癌症基因组图谱(TCGA)数据库检索到的GC单细胞和批量RNA测序数据集进行生物信息学分析。基于从InnateDB数据库获得的APP相关基因,使用AUCell算法鉴定APPFs。利用CellChat算法评估细胞间相互作用。基于TCGA-胃腺癌队列进行非负矩阵分解(NMF)聚类分析以鉴定APPF相关亚组。进行LASSO和多变量Cox回归分析以建立预测模型。对GC组织微阵列进行免疫组织化学以验证该模型。

结果

与非APPFs相比,APPFs通过MHC-II信号网络与髓样细胞、内皮细胞和淋巴细胞表现出更多相互作用。通过NMF聚类的两个APPF相关亚组在预后和免疫细胞浸润方面表现出显著差异。鉴定出五个APPFRGs(CPVL、ZNF331、TPP1、LGALS9、TNFAIP2)以建立预测模型并根据风险评分对GC患者进行分层。两个风险组之间的预后有显著差异,并使用GEO数据集进行了验证。通过将风险评分与年龄、T分期、N分期和M分期相结合,建立了一个有效预测GC患者总生存期的列线图。此外,高风险组中活化CD4 T细胞浸润减少,调节性T细胞浸润增加,对化疗和免疫治疗的抗性更高,肿瘤突变负担更低。最后,GC组织微阵列的免疫组织化学结果显示,与相邻正常组织相比,GC中CPVL、ZNF331和TPP1的表达较高,而LGALS9和TNFAIP2的表达较低。此外,GC样本中较高的风险评分与低分化、神经侵犯阳性、T和TNM分期较晚以及FOXP3表达较高相关。

结论

APPFs可能在GC肿瘤免疫微环境的调节中起重要作用,值得进一步探索。基于APPFRGs的预测模型有效预测了GC的预后和肿瘤免疫状态。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/1e3f/12182674/0c9a1f5493ed/12935_2025_3878_Fig1_HTML.jpg

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