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基于多组学的方法研究在宫颈鳞癌和腺癌患者中与坏死性凋亡相关的 mRNA 的预后和免疫影响。

A multi-omics-based investigation of the prognostic and immunological impact of necroptosis-related mRNA in patients with cervical squamous carcinoma and adenocarcinoma.

机构信息

Shandong University of Traditional Chinese Medicine, Jinan, 250014, Shandong, China.

Department of Traditional Chinese Medicine, Qilu Hospital of Shandong University, Jinan, 250012, China.

出版信息

Sci Rep. 2022 Oct 6;12(1):16773. doi: 10.1038/s41598-022-20566-0.

Abstract

Necroptosis is a kind of programmed necrosis mode that plays a double-edged role in tumor progression. However, the role of necroptosis-related Messenger RNA (mRNA) in predicting the prognosis and immune response of cervical squamous carcinoma and adenocarcinoma (CESC) has not been fully studied. Firstly, the incidence of somatic mutation rate and copy number variation for 74 necroptosis-related mRNAs (NRmRNAs) were analyzed. Secondly, CESC patients were divided into four stable clusters based on the consensus clustering results and analyzed for correlations with a series of clinical factors. Subsequently, a total of 291 The Cancer Genome Atlas samples were randomly divided into either training or validation cohorts. A Cox proportional hazard model consisting of three NRmRNAs (CXCL8, CLEC9A, and TAB2) was constructed by univariate, least absolute shrinkage and selection operator and multivariate COX regression analysis to identify the prognosis and immune response. Its performance and stability were further validated in another testing dataset (GSE44001) from Gene Expression Omnibus database. The results of the receiver operating characteristic curve, principal component analysis, t-SNE, and nomogram indicated that the prognostic model we constructed can serve as an independent prognostic factor. The combination of the prognostic model and the classic TNM staging system could improve the performance in predicting the survival of CESC patients. In addition, differentially expressed genes from high and low-risk patients are screened by R software for functional analysis and pathway enrichment analysis. Besides, single-sample gene set enrichment analysis revealed that tumor-killing immune cells were reduced in the high-risk group. Moreover, patients in the low-risk group are more likely to benefit from immune checkpoint inhibitors. The analysis of tumor immune dysfunction and exclusion scores, M6A-related genes, stem cell correlation and Tumor mutational burden data with clinical information has quantified the expression levels of NRmRNAs between the two risk subgroups. According to tumor immune microenvironment scores, Spearman's correlation analysis, and drug sensitivity, immunotherapy may have a higher response rate and better efficacy in patients of the low-risk subgroup. In conclusion, we have reported the clinical significance of NRmRNAs for the prognosis and immune response in CESC patients for the first time. Screening of accurate and effective prognostic markers is important for designing a multi-combined targeted therapeutic strategy and the development of individualized precision medicine.

摘要

细胞程序性坏死是一种在肿瘤进展中具有双重作用的坏死模式。然而,细胞程序性坏死相关信使 RNA(mRNA)在预测宫颈鳞癌和腺癌(CESC)的预后和免疫反应中的作用尚未得到充分研究。首先,分析了 74 种细胞程序性坏死相关 mRNA(NRmRNAs)的体细胞突变率和拷贝数变异。其次,根据共识聚类结果将 CESC 患者分为四个稳定的聚类,并分析与一系列临床因素的相关性。随后,将 291 个 TCGA 样本随机分为训练或验证队列。通过单因素、最小绝对收缩和选择算子以及多因素 COX 回归分析,构建了一个包含三个 NRmRNAs(CXCL8、CLEC9A 和 TAB2)的 Cox 比例风险模型,以鉴定预后和免疫反应。在来自基因表达综合数据库的另一个测试数据集(GSE44001)中进一步验证了该预后模型的性能和稳定性。受试者工作特征曲线、主成分分析、t-SNE 和列线图的结果表明,我们构建的预后模型可以作为一个独立的预后因素。预后模型与经典的 TNM 分期系统的结合可以提高预测 CESC 患者生存的性能。此外,通过 R 软件筛选高低风险患者的差异表达基因进行功能分析和通路富集分析。此外,单样本基因集富集分析显示,高危组中肿瘤杀伤免疫细胞减少。此外,低危组患者更有可能从免疫检查点抑制剂中获益。结合临床信息分析肿瘤免疫功能障碍和排除评分、M6A 相关基因、干细胞相关性和肿瘤突变负荷数据,定量分析了两个风险亚组之间 NRmRNAs 的表达水平。根据肿瘤免疫微环境评分、Spearman 相关性分析和药物敏感性,免疫治疗可能对低风险亚组患者具有更高的反应率和更好的疗效。总之,我们首次报道了 NRmRNAs 对 CESC 患者预后和免疫反应的临床意义。筛选准确有效的预后标志物对于设计多联合靶向治疗策略和开发个体化精准医学具有重要意义。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/31dd/9537508/180928254ed1/41598_2022_20566_Fig1_HTML.jpg

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