Integrated analysis of N6-methyladenosine- and 5-methylcytosine-related long non-coding RNAs for predicting prognosis in cervical cancer

IF 2.7 3区 生物学
Jie Gao, Xiuling Zhang, Anqi Xu, Wei Li, HaiYan Gao
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引用次数: 0

Abstract

N6-methyladenosine (m6A) and 5-methylcytosine (m5C) play a role in modifying long non-coding RNAs (lncRNAs) implicated in tumorigenesis and progression. This study was performed to evaluate prognostic value of m6A- and m5C-related lncRNAs and develop an efficient model for prognosis prediction in cervical cancer (CC). Using gene expression data of TCGA set, we identified m6A- and m5C-related lncRNAs. Consensus Clustering Analysis was performed for samples subtyping based on survival-related lncRNAs, followed by analyzing tumor infiltrating immune cells (TIICs). Optimal signature lncRNAs were obtained using lasso Cox regression analysis for constructing a prognostic model and a nomogram to predict prognosis. We built a co-expression network of 23 m6A-related genes, 15 m5C-related genes, and 62 lncRNAs. Based on 9 m6A- and m5C-related lncRNAs significantly associated with overall survival (OS) time, two molecular subtypes were obtained, which had significantly different OS time and fractions of TIICs. A prognostic model based on six m6A- and m5C-related signature lncRNAs was constructed, which could dichotomize patients into two risk subgroups with significantly different OS time. Prognostic power of the model was successfully validated in an independent dataset. We subsequently constructed a nomogram which could accurately predict survival probabilities. Drug sensitivity analysis found preferred chemotherapeutic agents for high and low-risk patients, respectively. Our study reveals that m6A- and m5C-related lncRNAs are associated with prognosis and immune microenvironment of CC. The m6A- and m5C-related six-lncRNA signature may be a useful tool for survival stratification in CC and open new avenues for individualized therapies.
综合分析 N6-甲基腺苷和 5-甲基胞嘧啶相关长非编码 RNA 预测宫颈癌预后
N6-甲基腺苷(m6A)和5-甲基胞嘧啶(m5C)在改变与肿瘤发生和发展有关的长非编码RNA(lncRNA)中发挥作用。本研究旨在评估与m6A和m5C相关的lncRNA的预后价值,并建立一个有效的宫颈癌(CC)预后预测模型。利用TCGA集的基因表达数据,我们鉴定了m6A和m5C相关lncRNA。根据与生存相关的lncRNAs对样本进行了共识聚类分析,然后分析了肿瘤浸润免疫细胞(TIICs)。我们利用拉索-考克斯回归分析(lasso Cox regression analysis)获得了最佳特征lncRNA,从而构建了预后模型和预测预后的提名图。我们建立了一个由23个m6A相关基因、15个m5C相关基因和62个lncRNA组成的共表达网络。根据9个与m6A和m5C相关的lncRNA与总生存(OS)时间的显著相关性,我们得出了两种分子亚型,它们的OS时间和TIICs比例有显著差异。根据六个与m6A和m5C相关的标志性lncRNA构建了一个预后模型,该模型可将患者分为两个风险亚组,其OS时间有明显差异。该模型的预后能力在一个独立数据集中得到了成功验证。随后,我们构建了一个能准确预测生存概率的提名图。药物敏感性分析发现了高风险和低风险患者分别首选的化疗药物。我们的研究发现,m6A和m5C相关lncRNA与CC的预后和免疫微环境有关。m6A和m5C相关的六种lncRNA特征可能是对CC患者进行生存分层的有用工具,并为个体化治疗开辟了新途径。
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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来源期刊
Hereditas
Hereditas Biochemistry, Genetics and Molecular Biology-Genetics
CiteScore
3.80
自引率
3.70%
发文量
0
期刊介绍: For almost a century, Hereditas has published original cutting-edge research and reviews. As the Official journal of the Mendelian Society of Lund, the journal welcomes research from across all areas of genetics and genomics. Topics of interest include human and medical genetics, animal and plant genetics, microbial genetics, agriculture and bioinformatics.
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