Pan Mengmeng, Yang Pingping, Wang Fangce, Luo Xiu, Li Bing, Ding Yi, Lu Huina, Dong Yan, Zhang Wenjun, Xiu Bing, Liang Aibin
Department of Hematology, Tongji Hospital, Tongji University School of Medicine, Shanghai, China.
National Research Center for Translational Medicine at Shanghai, Ruijin Hospital Affiliated to Shanghai Jiao Tong University School of Medicine, Shanghai, China.
Front Genet. 2021 Jun 9;12:648800. doi: 10.3389/fgene.2021.648800. eCollection 2021.
With the improvement of clinical treatment outcomes in diffuse large B cell lymphoma (DLBCL), the high rate of relapse in DLBCL patients is still an established barrier, as the therapeutic strategy selection based on potential targets remains unsatisfactory. Therefore, there is an urgent need in further exploration of prognostic biomarkers so as to improve the prognosis of DLBCL.
The univariable and multivariable Cox regression models were employed to screen out gene signatures for DLBCL overall survival (OS) prediction. The differential expression analysis was used to identify representative genes in high-risk and low-risk groups, respectively, where student test and fold change were implemented. The functional difference between the high-risk and low-risk groups was identified by the gene set enrichment analysis.
We conducted a systematic data analysis to screen the candidate genes significantly associated with OS of DLBCL in three NCBI Gene Expression Omnibus (GEO) datasets. To construct a prognostic model, five genes (, , , , and ) were then screened and tested using the multivariable Cox model and the stepwise regression method. Kaplan-Meier curve confirmed the good predictive performance of this five-gene Cox model. Thereafter, the prognostic model and the expression levels of the five genes were validated by means of an independent dataset. High expression levels of these five genes were significantly associated with favorable prognosis in DLBCL, both in training and validation datasets. Additionally, further analysis revealed the independent value and superiority of this prognostic model in risk prediction. Functional enrichment analysis revealed some vital pathways responsible for unfavorable outcome and potential therapeutic targets in DLBCL.
We developed a five-gene Cox model for the clinical outcome prediction of DLBCL patients. Meanwhile, potential drug selection using this model can help clinicians to improve the clinical practice for the benefit of patients.
随着弥漫性大B细胞淋巴瘤(DLBCL)临床治疗效果的改善,DLBCL患者的高复发率仍是一个既定障碍,因为基于潜在靶点的治疗策略选择仍不尽人意。因此,迫切需要进一步探索预后生物标志物,以改善DLBCL的预后。
采用单变量和多变量Cox回归模型筛选用于DLBCL总生存(OS)预测的基因特征。差异表达分析分别用于识别高危和低危组中的代表性基因,其中实施了学生检验和倍数变化。通过基因集富集分析确定高危和低危组之间的功能差异。
我们进行了系统的数据分析,以筛选在三个NCBI基因表达综合数据库(GEO)数据集中与DLBCL的OS显著相关的候选基因。为构建预后模型,随后使用多变量Cox模型和逐步回归方法筛选并测试了五个基因(、、、和)。Kaplan-Meier曲线证实了这个五基因Cox模型具有良好的预测性能。此后,通过一个独立数据集验证了预后模型和这五个基因的表达水平。在训练和验证数据集中,这五个基因的高表达水平均与DLBCL的良好预后显著相关。此外,进一步分析揭示了该预后模型在风险预测中的独立价值和优势。功能富集分析揭示了一些导致DLBCL不良结局的重要通路和潜在治疗靶点。
我们开发了一个用于预测DLBCL患者临床结局的五基因Cox模型。同时,使用该模型进行潜在药物选择可帮助临床医生改善临床实践,造福患者。