Zhou Wenting, Bai Chen, Long Chaojun, Hu Li, Zheng Yanfei
School of Traditional Chinese Medicine, Beijing University of Chinese Medicine, Beijing, China.
Front Oncol. 2021 Aug 27;11:720400. doi: 10.3389/fonc.2021.720400. eCollection 2021.
Lung adenocarcinoma (LUAD) is one type of the malignant tumors with high morbidity and mortality. The molecular mechanism of LUAD is still unclear. Studies demonstrate that lncRNAs play crucial roles in LUAD tumorigenesis and can be used as prognosis biomarkers. Thus, in this study, to identify more robust biomarkers of LUAD, we firstly constructed LUAD-related lncRNA-TF network and performed topological analyses for the network. Results showed that the network was a scale-free network, and some hub genes with high clinical values were identified, such as lncRNA RP11-173A16 and TF ZBTB37. Module analysis on the network revealed one close lncRNA module, which had good prognosis performance in LUAD. Furthermore, through integrating ceRNAs strategy and TF regulatory information, we identified some lncRNA-TF positive feedback loops. Prognostic analysis revealed that ELK4- and BDP1-related feedback loops were significant. Secondly, we constructed the lncRNA-m6A regulator network by merging all the high correlated lncRNA-m6A regulator pairs. Based on the network analysis results, some key m6A-related lncRNAs were identified, such as MIR497HG, FENDRR, and RP1-199J3. We also investigated the relationships between these lncRNAs and immune cell infiltration. Results showed that these m6A-related lncRNAs were high correlated with tumor immunity. All these results provide a new perspective for the diagnostic biomarker and therapeutic target identification of LUAD.
肺腺癌(LUAD)是发病率和死亡率较高的恶性肿瘤之一。LUAD的分子机制仍不清楚。研究表明,lncRNAs在LUAD肿瘤发生中起关键作用,可作为预后生物标志物。因此,在本研究中,为了鉴定更可靠的LUAD生物标志物,我们首先构建了与LUAD相关的lncRNA-TF网络,并对该网络进行了拓扑分析。结果表明,该网络是一个无标度网络,并鉴定出一些具有高临床价值的枢纽基因,如lncRNA RP11-173A16和TF ZBTB37。对该网络的模块分析揭示了一个紧密的lncRNA模块,其在LUAD中具有良好的预后性能。此外,通过整合ceRNAs策略和TF调控信息,我们鉴定出一些lncRNA-TF正反馈环。预后分析表明,ELK4和BDP1相关的反馈环具有显著性。其次,我们通过合并所有高度相关的lncRNA-m6A调节因子对构建了lncRNA-m6A调节因子网络。基于网络分析结果,鉴定出一些关键的与m6A相关的lncRNAs,如MIR497HG、FENDRR和RP1-199J3。我们还研究了这些lncRNAs与免疫细胞浸润之间的关系。结果表明,这些与m6A相关的lncRNAs与肿瘤免疫高度相关。所有这些结果为LUAD的诊断生物标志物和治疗靶点鉴定提供了新的视角。