弥漫性大B细胞淋巴瘤
列线图
比例危险模型
肿瘤科
间质细胞
肿瘤微环境
国际预后指标
单变量
淋巴瘤
基因
基因签名
单变量分析
医学
生物
内科学
计算生物学
癌症研究
癌症
基因表达
多元分析
多元统计
计算机科学
遗传学
机器学习
作者
Tao Pan,Yizi He,Huan Chen,Junfei Pei,Yajun Li,Ruolan Zeng,Jiliang Xia,Yilang Zuo,Liping Qin,Siwei Chen,Ling Xiao,Hui Zhou
标识
DOI:10.3389/fonc.2021.614211
摘要
Diffuse large B-cell lymphoma (DLBCL) is an extremely heterogeneous tumor entity, which makes prognostic prediction challenging. The tumor microenvironment (TME) has a crucial role in fostering and restraining tumor development. Consequently, we performed a systematic investigation of the TME and genetic factors associated with DLBCL to identify prognostic biomarkers for DLBCL. Data for a total of 1,084 DLBCL patients from the Gene Expression Omnibus database were included in this study, and patients were divided into a training group, an internal validation group, and two external validation groups. We calculated the abundance of immune–stromal components of DLBCL and found that they were related to tumor prognosis and progression. Then, differentially expressed genes were obtained based on immune and stromal scores, and prognostic TME‐related genes were further identified using a protein–protein interaction network and univariate Cox regression analysis. These genes were analyzed by the least absolute shrinkage and selection operator Cox regression model to establish a seven-gene signature, comprising TIMP2 , QKI , LCP2 , LAMP2 , ITGAM , CSF3R , and AAK1 . The signature was shown to have critical prognostic value in the training and validation sets and was also confirmed to be an independent prognostic factor. Subgroup analysis also indicated the robust prognostic ability of the signature. A nomogram integrating the seven-gene signature and components of the International Prognostic Index was shown to have value for prognostic prediction. Gene set enrichment analysis between risk groups demonstrated that immune-related pathways were enriched in the low-risk group. In conclusion, a novel and reliable TME relevant gene signature was proposed and shown to be capable of predicting the survival of DLBCL patients at high risk of poor survival.
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