Tan Guobin, Wu Aiming, Li Zhiqin, Chen Guangming, Wu Yonglu, Huang Shuitong, Chen Xianxi, Li Guanjun
Department of Urology, Maoming People's Hospital, Maoming, China.
Transl Androl Urol. 2021 Aug;10(8):3440-3455. doi: 10.21037/tau-21-560.
To construct a prognostic model based on immune-autophagy-related long noncoding RNA (IArlncRNAs), mainly to predict the overall survival rate (OS) of bladder cancer patients and investigate its possible mechanisms.
Transcriptome and clinical data were obtained from The Cancer Genome Atlas (TCGA) database. We identified the IArlncRNA by co-expression analysis, differential expression analysis, and Venn analysis. Then, we identified the independent prognostic IArlncRNAs by univariate Cox regression, LASSO regression, and multivariate Cox regression analysis. Moreover, we constructed the prognostic model based on the independent prognostic IArlncRNAs and clinical features. The proportion of 22 immune cell subtypes was analyzed by the CIBERSORT algorithm. Besides, we identified the differential proportion of 22 immune cell subtypes between the high- and low-risk groups. In addition, we identified the correlation between immune-infiltrating cells (screened by univariate Cox regression and multivariate Cox regression analysis) and IArlncRNAs by Pearson correlation analysis. Finally, we estimated the half-maximal inhibitory concentration (IC) of chemotherapeutic drugs in patients with bladder cancer based on the pRRophetic algorithm.
Four IArlncRNAs were identified as independent prognostic factors, including AL136084.3, AC006270.1, Z84484.1, and AL513218.1. The OS of patients in the high-risk group was significantly worse compared to the low-risk group. The nomogram showed an excellent predictive effect with the C-index of 0.64. The calibration chart showed a good actual . predicted probability. B cells naïve, T cells CD8, T cells CD4 memory resting, T cells follicular helper, macrophages M1, dendritic resting and activated cells had higher infiltrations in the low-risk group and lower infiltration of macrophages M2. The fraction of macrophages M2 was positively associated with AL136084.3. The fraction of T cells CD8 was positively associated with Z84484.1. The fraction of M + macrophages M0 was negatively associated with Z84484.1. Further, we identified the differential IC of 24 chemotherapeutic drugs between the high- and low-risk groups.
The prognostic model based on 4 IArlncRNAs showed an excellent predictive effect. Furthermore, we reasonably speculated that IArlncRNAs are directly or indirectly involved in the immune regulation of the tumor microenvironment (TME), as well as autophagy.
构建基于免疫自噬相关长链非编码RNA(IArlncRNAs)的预后模型,主要用于预测膀胱癌患者的总生存率(OS)并探究其可能机制。
从癌症基因组图谱(TCGA)数据库获取转录组和临床数据。通过共表达分析、差异表达分析和韦恩分析鉴定IArlncRNA。然后,通过单因素Cox回归、LASSO回归和多因素Cox回归分析鉴定独立预后IArlncRNAs。此外,基于独立预后IArlncRNAs和临床特征构建预后模型。采用CIBERSORT算法分析22种免疫细胞亚型的比例。此外,我们还确定了高风险组和低风险组之间22种免疫细胞亚型的差异比例。另外,通过Pearson相关分析确定免疫浸润细胞(经单因素Cox回归和多因素Cox回归分析筛选)与IArlncRNAs之间的相关性。最后,基于pRRophetic算法估计膀胱癌患者化疗药物的半数抑制浓度(IC)。
4种IArlncRNAs被鉴定为独立预后因素,包括AL136084.3、AC006270.1、Z84484.1和AL513218.1。高风险组患者的OS明显低于低风险组。列线图显示出良好的预测效果,C指数为0.64。校准图显示实际预测概率良好。幼稚B细胞、CD8 + T细胞、静息记忆CD4 + T细胞、滤泡辅助性T细胞、M1巨噬细胞、静息树突状细胞和活化树突状细胞在低风险组中的浸润较高,而M2巨噬细胞的浸润较低。M2巨噬细胞的比例与AL136084.3呈正相关。CD8 + T细胞的比例与Z84484.1呈正相关。M0 + M巨噬细胞的比例与Z84484.1呈负相关。此外,我们还确定了高风险组和低风险组之间24种化疗药物的差异IC。
基于4种IArlncRNAs的预后模型显示出良好的预测效果。此外,我们合理推测IArlncRNAs直接或间接参与肿瘤微环境(TME)的免疫调节以及自噬过程。