Zhang Meng-Yu, Huo Chen, Liu Jian-Yu, Shi Zhuang-E, Zhang Wen-Di, Qu Jia-Jia, Yue Yue-Liang, Qu Yi-Qing
Department of Pulmonary and Critical Care Medicine, Qilu Hospital, Cheeloo College of Medicine, Shandong University; Shandong Key Laboratory of Infectious Respiratory Diseases, Jinan, China.
Department of Pulmonary and Critical Care Medicine, Qilu Hospital of Shandong University; Shandong Key Laboratory of Infectious Respiratory Diseases, Jinan, China.
Front Cell Dev Biol. 2021 Nov 18;9:756911. doi: 10.3389/fcell.2021.756911. eCollection 2021.
Autophagy plays an important role in lung adenocarcinoma (LUAD). In this study, we aimed to explore the autophagy-related gene (ARG) expression pattern and to identify promising autophagy-related biomarkers to improve the prognosis of LUAD. The gene expression profiles and clinical information of LUAD patients were downloaded from the Cancer Genome Atlas (TCGA), and validation cohort information was extracted from the Gene Expression Omnibus database. The Human Autophagy Database (HADb) was used to extract ARGs. Gene expression data were analyzed using the limma package and visualized using the ggplot2 package as well as the pheatmap package in R software. Functional enrichment analysis was also performed for the differentially expressed ARGs (DEARGs). Then, consensus clustering revealed autophagy-related tumor subtypes, and differentially expressed genes (DEGs) were screened according to the subtypes. Next, the univariate Cox and multivariate Cox regression analyses were used to identify independent prognostic ARGs. After overlapping DEGs and the independent prognostic ARGs, the predictive risk model was established and validated. Correlation analyses between ARGs and clinicopathological variables were also explored. Finally, the TIMER and TISIDB databases were used to further explore the correlation analysis between immune cell infiltration levels and the risk score as well as clinicopathological variables in the predictive risk model. A total of 222 genes from the HADb were identified as ARGs, and 28 of the 222 genes were pooled as DEARGs. The most significant GO term was autophagy ( = 3.05E-07), and KEGG analysis results indicated that 28 DEARGs were significantly enriched in the ErbB signaling pathway ( < 0.001). Then, consensus clustering analysis divided the LUAD into two clusters, and a total of 168 DEGs were identified according to cluster subtypes. Then univariate and multivariate Cox regression analyses were used to identify 12 genes that could serve as independent prognostic indicators. After overlapping 168 DEGs and 12 genes, 10 genes (ATG4A, BAK1, CAPNS1, CCR2, CTSD, EIF2AK3, ITGB1, MBTPS2, SPHK1, ST13) were selected for the further exploration of the prognostic pattern. Survival analysis results indicated that this risk model identified the prognosis ( = 4.379E-10). Combined with the correlation analysis results between ARGs and clinicopathological variables, five ARGs were screened as prognostic genes. Among them, SPHK1 expression levels were positively correlated with CD4 T cells and dendritic cell infiltration levels. In this study, we constructed a predictive risk model and identified a five autophagy subtype-related gene expression pattern to improve the prognosis of LUAD. Understanding the subtypes of LUAD is helpful to accurately characterize the LUAD and develop personalized treatment.
自噬在肺腺癌(LUAD)中起着重要作用。在本研究中,我们旨在探索自噬相关基因(ARG)的表达模式,并识别有前景的自噬相关生物标志物以改善LUAD的预后。从癌症基因组图谱(TCGA)下载LUAD患者的基因表达谱和临床信息,并从基因表达综合数据库中提取验证队列信息。使用人类自噬数据库(HADb)提取ARGs。使用limma软件包分析基因表达数据,并使用R软件中的ggplot2软件包和pheatmap软件包进行可视化。还对差异表达的ARGs(DEARGs)进行了功能富集分析。然后,共识聚类揭示了自噬相关的肿瘤亚型,并根据亚型筛选差异表达基因(DEGs)。接下来,使用单变量Cox和多变量Cox回归分析来识别独立的预后ARGs。在重叠DEGs和独立预后ARGs之后,建立并验证了预测风险模型。还探索了ARGs与临床病理变量之间的相关性分析。最后,使用TIMER和TISIDB数据库进一步探索免疫细胞浸润水平与预测风险模型中的风险评分以及临床病理变量之间的相关性分析。共从HADb中鉴定出222个基因作为ARGs,222个基因中的28个被汇总为DEARGs。最显著的基因本体(GO)术语是自噬(= 3.05E - 07),京都基因与基因组百科全书(KEGG)分析结果表明,28个DEARGs在表皮生长因子受体(ErbB)信号通路中显著富集(< 0.001)。然后,共识聚类分析将LUAD分为两个簇,并根据簇亚型鉴定出总共168个DEGs。然后使用单变量和多变量Cox回归分析来鉴定12个可作为独立预后指标的基因。在重叠168个DEGs和12个基因之后,选择10个基因(ATG4A、BAK1、CAPNS1、CCR2、CTSD、EIF2AK3、ITGB1、MBTPS2、SPHK1、ST13)进一步探索预后模式。生存分析结果表明,该风险模型可识别预后(= 4.379E - 10)。结合ARGs与临床病理变量之间的相关性分析结果,筛选出5个ARGs作为预后基因。其中,SPHK1表达水平与CD4 T细胞和树突状细胞浸润水平呈正相关。在本研究中,我们构建了一个预测风险模型,并识别出一种与自噬亚型相关的五个基因的表达模式以改善LUAD的预后。了解LUAD的亚型有助于准确表征LUAD并制定个性化治疗方案。