用于卵巢癌患者分层和定向治疗的免疫相关基因甲基化预后工具,迈向先进的 3PM 方法

IF 6.5 2区 医学 Q1 Medicine Epma Journal Pub Date : 2024-04-27 DOI:10.1007/s13167-024-00359-3
Wenshuang Jia, Na Li, Jingjing Wang, Xiaoxia Gong, Serge Yannick Ouedraogo, Yan Wang, Junkai Zhao, Godfrey Grech, Liang Chen, Xianquan Zhan
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引用次数: 0

摘要

背景DNA甲基化是表观遗传学的一个重要机制,可改变基因的转录能力,与卵巢癌(OC)的发病机制密切相关。我们假设,与对照组相比,卵巢癌患者的DNA甲基化存在显著差异。特定的DNA甲基化状态可作为OC的生物标志物,针对这些甲基化模式和DNA甲基转移酶的靶向药物可能具有更好的治疗效果。研究OC患者免疫相关基因(IRGs)的关键DNA甲基化位点,并研究这些甲基化位点对免疫微环境的影响,可为进一步探索OC的发病机制、实现OC的早期发现和有效监测、确定DNA甲基化亚型的有效生物标志物和药物靶点、提高靶向药物的疗效或克服耐药性,以及更好地应用于OC的预测性诊断、预防和个性化医疗(PPPM;3PM)提供新的方法。方法根据IRGs中不同甲基化位点的丰度在OCs中建立高甲基化亚型(群1)和低甲基化亚型(群2)。分析了OC样本中不同甲基化亚型在免疫评分、免疫检查点、免疫细胞和总生存率方面的差异。富集了IRGs中已识别甲基化位点的重要通路、基因本体(GO)和蛋白-蛋白相互作用(PPI)网络。此外,还通过多元回归分析构建了免疫相关甲基化特征。结果 共鉴定出 120 个 IRGs,其中有 142 个差异甲基化位点(DMSs)。这些差异甲基化位点被分为高水平甲基化群组(群组 1)和低水平甲基化群组(群组 2)。重要的通路和 GO 分析显示了许多免疫相关和癌症相关的富集。构建了基于IRGs的甲基化位点特征,包括RORC|cg25112191、S100A13|cg14467840、TNF|cg04425624、RLN2|cg03679581和IL1RL2|cg22797169。所有五个基因的甲基化位点在 OC 中均呈低甲基化,其中 RORC|cg25112191、S100A13|cg14467840 和 TNF|cg04425624 的甲基化位点差异有统计学意义(p <0.05)。该研究根据IRGs的甲基化位点为OC患者提供了不同的甲基化亚型。此外,它还有助于建立甲基化与免疫微环境之间的关系,并显示了两个亚组在生物信号通路、基因组变化和免疫机制方面的具体差异。这些数据为深入了解免疫相关甲基化基因对 OC 发生和发展的影响机制提供了依据。甲基化位点特征也为 OC 治疗提供了新的可能性。这些数据是对 OC 患者进行分层和有针对性治疗的宝贵资源,有助于采用先进的 3PM 方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Immune-related gene methylation prognostic instrument for stratification and targeted treatment of ovarian cancer patients toward advanced 3PM approach

Background

DNA methylation is an important mechanism in epigenetics, which can change the transcription ability of genes and is closely related to the pathogenesis of ovarian cancer (OC). We hypothesize that DNA methylation is significantly different in OCs compared to controls. Specific DNA methylation status can be used as a biomarker of OC, and targeted drugs targeting these methylation patterns and DNA methyltransferase may have better therapeutic effects. Studying the key DNA methylation sites of immune-related genes (IRGs) in OC patients and studying the effects of these methylation sites on the immune microenvironment may provide a new method for further exploring the pathogenesis of OC, realizing early detection and effective monitoring of OC, identifying effective biomarkers of DNA methylation subtypes and drug targets, improving the efficacy of targeted drugs or overcoming drug resistance, and better applying it to predictive diagnosis, prevention, and personalized medicine (PPPM; 3PM) of OC.

Method

Hypermethylated subtypes (cluster 1) and hypomethylated subtypes (cluster 2) were established in OCs based on the abundance of different methylation sites in IRGs. The differences in immune score, immune checkpoints, immune cells, and overall survival were analyzed between different methylation subtypes in OC samples. The significant pathways, gene ontology (GO), and protein-protein interaction (PPI) network of the identified methylation sites in IRGs were enriched. In addition, the immune-related methylation signature was constructed with multiple regression analysis. A methylation site model based on IRGs was constructed and verified.

Results

A total of 120 IRGs with 142 differentially methylated sites (DMSs) were identified. The DMSs were clustered into a high-level methylation group (cluster 1) and a low-level methylation group (cluster 2). The significant pathways and GO analysis showed many immune-related and cancer-associated enrichments. A methylation site signature based on IRGs was constructed, including RORC|cg25112191, S100A13|cg14467840, TNF|cg04425624, RLN2|cg03679581, and IL1RL2|cg22797169. The methylation sites of all five genes showed hypomethylation in OC, and there were statistically significant differences among RORC|cg25112191, S100A13|cg14467840, and TNF|cg04425624 (p < 0.05). This prognostic model based on low-level methylation and high-level methylation groups was significantly linked to the immune microenvironment as well as overall survival in OC.

Conclusions

This study provided different methylation subtypes for OC patients according to the methylation sites of IRGs. In addition, it helps establish a relationship between methylation and the immune microenvironment, which showed specific differences in biological signaling pathways, genomic changes, and immune mechanisms within the two subgroups. These data provide ones to deeply understand the mechanism of immune-related methylation genes on the occurrence and development of OC. The methylation-site signature is also to establish new possibilities for OC therapy. These data are a precious resource for stratification and targeted treatment of OC patients toward an advanced 3PM approach.

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来源期刊
Epma Journal
Epma Journal Medicine-Biochemistry (medical)
CiteScore
11.30
自引率
23.10%
发文量
0
期刊介绍: PMA Journal is a journal of predictive, preventive and personalized medicine (PPPM). The journal provides expert viewpoints and research on medical innovations and advanced healthcare using predictive diagnostics, targeted preventive measures and personalized patient treatments. The journal is indexed by PubMed, Embase and Scopus.
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