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A gene-based risk score model for predicting recurrence-free survival in patients with hepatocellular carcinoma

机译:一种基于基因的风险评分模型,用于预测肝细胞癌患者的复发生存率

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Abstract Background Hepatocellular carcinoma (HCC) remains the most frequent liver cancer, accounting for approximately 90% of primary liver cancers worldwide. The recurrence-free survival (RFS) of HCC patients is a critical factor in devising a personal treatment plan. Thus, it is necessary to accurately forecast the prognosis of HCC patients in clinical practice. Methods Using The Cancer Genome Atlas (TCGA) dataset, we identified genes associated with RFS. A robust likelihood-based survival modeling approach was used to select the best genes for the prognostic model. Then, the GSE76427 dataset was used to evaluate the prognostic model’s effectiveness. Results We identified 1331 differentially expressed genes associated with RFS. Seven of these genes were selected to generate the prognostic model. The validation in both the TCGA cohort and GEO cohort demonstrated that the 7-gene prognostic model can predict the RFS of HCC patients. Meanwhile, the results of the multivariate Cox regression analysis showed that the 7-gene risk score model could function as an independent prognostic factor. In addition, according to the time-dependent ROC curve, the 7-gene risk score model performed better in predicting the RFS of the training set and the external validation dataset than the classical TNM staging and BCLC. Furthermore, these seven genes were found to be related to the occurrence and development of liver cancer by exploring three other databases. Conclusion Our study identified a seven-gene signature for HCC RFS prediction that can be used as a novel and convenient prognostic tool. These seven genes might be potential target genes for metabolic therapy and the treatment of HCC.
机译:摘要背景肝细胞癌(HCC)仍然是最常见的肝癌,占全球原发性肝癌的约90%。 HCC患者的复发存活(RFS)是设计个人待遇计划的关键因素。因此,有必要准确地预测HCC患者在临床实践中的预后。方法使用癌症基因组阿特拉斯(TCGA)数据集,我们鉴定了与RFS相关的基因。基于稳健的基于可能性的存活建模方法用于选择预后模型的最佳基因。然后,GSE76427数据集用于评估预后模型的有效性。结果我们鉴定了与RFS相关的1331个差异表达的基因。选择七种这些基因以产生预后模型。 TCGA队列和地理群体的验证表明,7-基因预后模型可以预测HCC患者的RF。同时,多元COX回归分析的结果表明,7-基因风险评分模型可以作为独立的预后因素。另外,根据时间依赖的ROC曲线,7-基因风险评分模型在预测训练集的RF和外部验证数据集中比经典的TNM暂存和BCLC更好。此外,发现这七种基因与探索其他三个数据库进行肝癌的发生和发展有关。结论我们的研究确定了HCC RFS预测的七基因签名,可用作新颖和方便的预后工具。这七种基因可能是代谢治疗和HCC治疗的潜在靶基因。

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