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早期胃癌相关DNA甲基化驱动基因的预后模型开发及免疫格局分析

Development of a prognostic model for early-stage gastric cancer-related DNA methylation-driven genes and analysis of immune landscape.

作者信息

Su Chen, Lin Zeyang, Ye Zhijian, Liang Jing, Yu Rong, Wan Zheng, Hou Jingjing

机构信息

The School of Clinical Medical, Fujian Medical University, Fuzhou, Fujian, China.

Department of Gastrointestinal Surgery, Zhongshan Hospital of Xiamen University, School of Medicine, Xiamen University, Xiamen, China.

出版信息

Front Mol Biosci. 2024 Oct 30;11:1455890. doi: 10.3389/fmolb.2024.1455890. eCollection 2024.

Abstract

BACKGROUND AND AIMS

This study aimed to develop a prognostic model based on DNA methylation-driven genes for patients with early-stage gastric cancer and to examine immune infiltration and function across varying risk levels.

METHODS

We analyzed data from stage I/II gastric cancer patients in The Cancer Genome Atlas which included clinical details, mRNA expression profiles, and level 3 DNA methylation array data. Using the empirical Bayes method of the limma package, we identified differentially expressed genes (DEGs), and the MethylMix package facilitated the identification of DNA methylation-driven genes (DMGs). Univariate Cox regression and LASSO (least absolute shrinkage and selector operation) analyses were utilized to pinpoint critical genes. A risk score prediction model was formulated using two genes that demonstrated the most significant hazard ratios (HRs). Model performance was evaluated within the initial cohort and verified in the GSE84437 cohort; a nomogram was also constructed based on these genes. We further examined 50 methylation sites associated with three CpG islands in C1orf35 and 14 methylation sites linked to one CpG island in FAAH. The CIBERSORT package was employed to identify immune cell clusters in the prediction model.

RESULTS

A total of 176 DNA methylation-driven genes were refined down to a four-gene signature (ZC3H12A was hypermethylated; GATA3, C1orf35, and FAAH were hypomethylated), which exhibited a significant correlation with overall survival (OS), as evidenced by -values below 0.05 following univariate Cox regression and LASSO analysis. Specifically, for the risk score prediction model, C1orf35, which had the highest hazard ratio (HR = 2.035, = 0.028), and FAAH, with the lowest hazard ratio (HR = 0.656, = 0.012), were selected. The Kaplan-Meier analysis demonstrated distinct survival outcomes between the high-risk and low-risk score groups. The model's predictive accuracy was confirmed with an area under the curve (AUC) of 0.611 for 3-year survival and 0.564 for 5-year survival. Notably, the hypomethylation of the three CpG islands in C1orf35 and the single CpG island in FAAH was significantly different in stage I/II gastric cancer patients compared to normal tissues. Additionally, the high-risk score group showed a notable association with resting CD4 memory T cells.

CONCLUSION

Promoter hypomethylation of C1orf35 and FAAH in early-stage gastric cancer underscores their potential as biomarkers for accurate diagnosis and treatment. The developed predictive model employing genes affected by DNA methylation serves as a crucial independent prognostic factor in early-stage gastric cancer.

摘要

背景与目的

本研究旨在为早期胃癌患者开发一种基于DNA甲基化驱动基因的预后模型,并研究不同风险水平下的免疫浸润和功能。

方法

我们分析了癌症基因组图谱中I/II期胃癌患者的数据,其中包括临床细节、mRNA表达谱和3级DNA甲基化阵列数据。使用limma软件包的经验贝叶斯方法,我们鉴定了差异表达基因(DEG),MethylMix软件包则有助于鉴定DNA甲基化驱动基因(DMG)。采用单因素Cox回归和LASSO(最小绝对收缩和选择算子)分析来确定关键基因。使用两个显示出最显著危险比(HR)的基因构建了风险评分预测模型。在初始队列中评估模型性能,并在GSE84437队列中进行验证;还基于这些基因构建了列线图。我们进一步研究了与C1orf35中三个CpG岛相关的50个甲基化位点以及与FAAH中一个CpG岛相关的14个甲基化位点。使用CIBERSORT软件包在预测模型中识别免疫细胞簇。

结果

总共176个DNA甲基化驱动基因被精简为一个四基因特征(ZC3H12A甲基化;GATA3、C1orf35和FAAH甲基化不足),单因素Cox回归和LASSO分析后p值低于0.05,表明其与总生存期(OS)显著相关。具体而言,对于风险评分预测模型,选择了危险比最高的C1orf35(HR = 2.035,p = 0.028)和危险比最低的FAAH(HR = 0.656,p = 0.012)。Kaplan-Meier分析显示高风险和低风险评分组之间存在明显的生存差异。该模型的预测准确性得到证实,3年生存率的曲线下面积(AUC)为0.611,5年生存率的AUC为0.564。值得注意的是,与正常组织相比,I/II期胃癌患者中C1orf35的三个CpG岛和FAAH的单个CpG岛的低甲基化存在显著差异。此外,高风险评分组与静息CD4记忆T细胞有显著关联。

结论

早期胃癌中C1orf35和FAAH启动子低甲基化突出了它们作为准确诊断和治疗生物标志物的潜力。所开发的采用受DNA甲基化影响基因的预测模型是早期胃癌中一个关键的独立预后因素。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/dda1/11579923/2a8366cb0d12/fmolb-11-1455890-g001.jpg

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