The analysis of tumor-infiltrating immune cell and ceRNA networks in laryngeal squamous cell carcinoma

竞争性内源性RNA 医学 免疫系统 生存分析 肿瘤科 比例危险模型 基因 细胞 内科学 小RNA 癌症研究 免疫学 生物 核糖核酸 遗传学 长非编码RNA
作者
Dan Li,Kaifeng Dong,Jing Su,Haitao Xue,Junhai Tian,Yongfeng Wu,Jingtian Wang
出处
期刊:Medicine [Ovid Technologies (Wolters Kluwer)]
卷期号:101 (31): e29555-e29555
标识
DOI:10.1097/md.0000000000029555
摘要

Laryngeal squamous cell carcinoma (LSCC) is one of the most common forms of head and neck cancers. However, few studies have focused on the correlation between competing endogenous RNA (ceRNAs) and immune cells in LSCC.RNAseq expression of LSCC and adjacent tissues were downloaded from The Cancer Genome Atlas to establish a ceRNA network. The key gene in ceRNA was screened by the cox regression analysis to establish a prognostic risk assessment model. The CIBERSORT algorithm was then used to screen important tumor-infiltrating cells related to LSCC. Finally, co-expression analysis was applied to explore the relationship between key genes in the ceRNA network and tumor-infiltrating cells. The external datasets were used to validate critical biomarkers.We constructed a prognostic risk assessment model of key genes in the ceRNA network. As it turned out, Kaplan-Meier survival analysis showed significant differences in overall survival rates between high-risk and low-risk groups (P < .001). The survival rate of the high-risk group was drastically lower than that of the low-risk group, and the AUC of 1 year, 3 years, and 5 years were all above 0.7. In addition, some immune infiltrating cells were also found to be related to LSCC. In the co-expression analysis, there is a negative correlation between plasma cells and TUBB3 (r = -0.33, P = .0013). External dataset validation also supports this result.In this study, we found that some key genes (SLC35C1, CLDN23, HOXB7, STC2, TMEM158, TNFRSF4, TUBB3) and immune cells (plasma cells) may correspond to the prognosis of LSCC.

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