Comprehensive Analyses of Single-Cell and Bulk RNA Sequencing Data From M2 Macrophages to Elucidate the Immune Prognostic Signature in Patients with Gastric Cancer Peritoneal Metastasis.

IF 6.2 Q1 IMMUNOLOGY
ImmunoTargets and Therapy Pub Date : 2025-04-04 eCollection Date: 2025-01-01 DOI:10.2147/ITT.S506143
Qiao Tang, Liang Tang, Xiaofeng Wang, Yongxin Zhang, Wenwei Liu, Ting Yang, Yuxin Wu, Yuanchen Ma, Tianxiang Lei, Wu Song
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引用次数: 0

Abstract

Purpose: The peritoneum is a common site of metastasis in gastric cancer (GC), associated with poor prognosis and significant morbidity. The proclivity of GCs to metastasize to the peritoneum has been hypothesized to occur due the latter's immunosuppressive microenvironment, such as stromal infiltration and M2 macrophage enrichment, which are associated with increased risk of PM. As far as we know, a model that can effectively predict the prognosis of patients with GCPM is still lacking. Consequently, we constructed a prognostic risk model based on M2 macrophages associated with gastric cancer peritoneal metastasis, aiming to enhance predictive precision and guide tailored therapeutic interventions.

Methods: M2 macrophage-associated genes were identified in combination with marker genes from single-cell RNA sequencing (scRNA-seq) and modular genes from weighted gene coexpression network analysis (WGCNA). A prognostic model was constructed via LASSO analysis and validated in internal and external cohorts. We further compared the immune microenvironment, immune checkpoints, and chemotherapeutic drug sensitivity between patient groups stratified by risk to clarify the immune landscape in the GCPM.

Results: Our study identified 38 M2 macrophage-related genes via single-cell and bulk RNA sequencing. We developed a prognostic model based on the expression levels of 4 signature genes: DAB2, SPARC, PLTP, and FOLR2. The feasibility of the model was validated with internal and external validation sets (TCGA, GSE62254 and IMvigor210). The model also supported the prediction results of prognosis on the basis of the immunohistochemical results. Notably, patients with higher risk scores had a lower proportion of MSI-H and TMB, a higher prevalence of stages III-IV, and a lower likelihood of responding favorably to immunotherapy.

Conclusion: Our prognostic risk model could effectively predict the prognosis and response to chemo-immune therapy in patients with GCPM. The risk score is a promising independent prognostic factor that is closely correlated with the immune microenvironment and clinicopathological characteristics.

综合分析来自M2巨噬细胞的单细胞和大量RNA测序数据以阐明胃癌腹膜转移患者的免疫预后特征
目的:腹膜是胃癌最常见的转移部位,预后差,发病率高。据推测,胃癌向腹膜转移的倾向是由于腹膜的免疫抑制微环境,如基质浸润和M2巨噬细胞富集,这些微环境与PM风险增加有关。据我们所知,目前还缺乏一个能够有效预测GCPM患者预后的模型。因此,我们构建了基于M2巨噬细胞与胃癌腹膜转移相关的预后风险模型,旨在提高预测精度并指导针对性的治疗干预。方法:结合单细胞RNA测序(scRNA-seq)的标记基因和加权基因共表达网络分析(WGCNA)的模块化基因,对M2巨噬细胞相关基因进行鉴定。通过LASSO分析构建预后模型,并在内部和外部队列中进行验证。我们进一步比较了按风险分层的患者组之间的免疫微环境、免疫检查点和化疗药物敏感性,以阐明GCPM的免疫景观。结果:我们的研究通过单细胞和大量RNA测序鉴定了38个M2巨噬细胞相关基因。我们建立了一个基于4个特征基因表达水平的预后模型:DAB2、SPARC、PLTP和FOLR2。采用内部和外部验证集(TCGA、GSE62254和IMvigor210)验证模型的可行性。该模型还支持基于免疫组化结果的预后预测结果。值得注意的是,风险评分较高的患者MSI-H和TMB的比例较低,III-IV期的患病率较高,对免疫治疗反应良好的可能性较低。结论:我们的预后风险模型能有效预测GCPM患者的预后和对化疗免疫治疗的反应。风险评分与免疫微环境和临床病理特征密切相关,是一个有前景的独立预后因素。
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来源期刊
CiteScore
16.50
自引率
0.00%
发文量
7
审稿时长
16 weeks
期刊介绍: Immuno Targets and Therapy is an international, peer-reviewed open access journal focusing on the immunological basis of diseases, potential targets for immune based therapy and treatment protocols employed to improve patient management. Basic immunology and physiology of the immune system in health, and disease will be also covered.In addition, the journal will focus on the impact of management programs and new therapeutic agents and protocols on patient perspectives such as quality of life, adherence and satisfaction.
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