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构建与接受免疫治疗的胃癌患者预后相关的基因模型,并探索 COX7A1 基因功能。

Construction of a gene model related to the prognosis of patients with gastric cancer receiving immunotherapy and exploration of COX7A1 gene function.

机构信息

Department of Oncology, The First People's Hospital of Yibin, No. 65, Wenxing Street, Cuiping District, Yibin, 644000, China.

The First Hospital of Jilin University, Changchun, 130000, China.

出版信息

Eur J Med Res. 2024 Mar 17;29(1):180. doi: 10.1186/s40001-024-01783-x.

Abstract

BACKGROUND

GC is a highly heterogeneous tumor with different responses to immunotherapy, and the positive response depends on the unique interaction between the tumor and the tumor microenvironment (TME). However, the currently available methods for prognostic prediction are not satisfactory. Therefore, this study aims to construct a novel model that integrates relevant gene sets to predict the clinical efficacy of immunotherapy and the prognosis of GC patients based on machine learning.

METHODS

Seven GC datasets were collected from the Gene Expression Omnibus (GEO) database, The Cancer Genome Atlas (TCGA) database and literature sources. Based on the immunotherapy cohort, we first obtained a list of immunotherapy related genes through differential expression analysis. Then, Cox regression analysis was applied to divide these genes with prognostic significancy into protective and risky types. Then, the Single Sample Gene Set Enrichment Analysis (ssGSEA) algorithm was used to score the two categories of gene sets separately, and the scores differences between the two gene sets were used as the basis for constructing the prognostic model. Subsequently, Weighted Correlation Network Analysis (WGCNA) and Cytoscape were applied to further screen the gene sets of the constructed model, and finally COX7A1 was selected for the exploration and prediction of the relationship between the clinical efficacy of immunotherapy for GC. The correlation between COX7A1 and immune cell infiltration, drug sensitivity scoring, and immunohistochemical staining were performed to initially understand the potential role of COX7A1 in the development and progression of GC. Finally, the differential expression of COX7A1 was verified in those GC patients receiving immunotherapy.

RESULTS

First, 47 protective genes and 408 risky genes were obtained, and the ssGSEA algorithm was applied for model construction, showing good prognostic discrimination ability. In addition, the patients with high model scores showed higher TMB and MSI levels, and lower tumor heterogeneity scores. Then, it is found that the COX7A1 expressions in GC tissues were significantly lower than those in their corresponding paracancerous tissues. Meanwhile, the patients with high COX7A1 expression showed higher probability of cancer invasion, worse clinical efficacy of immunotherapy, worse overall survival (OS) and worse disease-free survival (DFS).

CONCLUSIONS

The ssGSEA score we constructed can serve as a biomarker for GC patients and provide important guidance for individualized treatment. In addition, the COX7A1 gene can accurately distinguish the prognosis of GC patients and predict the clinical efficacy of immunotherapy for GC patients.

摘要

背景

GC 是一种高度异质性的肿瘤,对免疫治疗的反应不同,阳性反应取决于肿瘤与肿瘤微环境(TME)之间的独特相互作用。然而,目前可用的预后预测方法并不令人满意。因此,本研究旨在构建一种新的模型,该模型基于机器学习,整合相关基因集来预测免疫治疗的临床疗效和 GC 患者的预后。

方法

从基因表达综合数据库(GEO)数据库、癌症基因组图谱(TCGA)数据库和文献来源中收集了 7 个 GC 数据集。基于免疫治疗队列,我们首先通过差异表达分析获得了一组免疫治疗相关基因。然后,应用 Cox 回归分析将这些具有预后意义的基因分为保护型和危险型。然后,分别使用单样本基因集富集分析(ssGSEA)算法对这两类基因集进行评分,两个基因集之间的评分差异作为构建预后模型的基础。随后,应用加权相关网络分析(WGCNA)和 Cytoscape 进一步筛选构建模型的基因集,最后选择 COX7A1 来探索和预测 GC 免疫治疗的临床疗效。对 COX7A1 与免疫细胞浸润、药物敏感性评分和免疫组织化学染色之间的关系进行了相关性分析,初步了解 COX7A1 在 GC 发生和发展中的潜在作用。最后,验证了接受免疫治疗的 GC 患者中 COX7A1 的差异表达。

结果

首先,获得了 47 个保护性基因和 408 个危险基因,并应用 ssGSEA 算法进行模型构建,具有良好的预后判别能力。此外,高模型评分的患者表现出更高的 TMB 和 MSI 水平,以及更低的肿瘤异质性评分。然后,发现 GC 组织中的 COX7A1 表达明显低于其相应的癌旁组织。同时,高 COX7A1 表达的患者具有更高的癌症侵袭概率、更差的免疫治疗临床疗效、更差的总生存期(OS)和更差的无病生存期(DFS)。

结论

我们构建的 ssGSEA 评分可以作为 GC 患者的生物标志物,为个体化治疗提供重要指导。此外,COX7A1 基因可以准确区分 GC 患者的预后,并预测 GC 患者免疫治疗的临床疗效。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/2932/11337786/56e27ebc083b/40001_2024_1783_Fig1_HTML.jpg

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