肝癌药物代谢相关预后亚型及基因特征分析。

IF 1 4区 生物学 Q4 BIOCHEMISTRY & MOLECULAR BIOLOGY
Yue Zhang, Jun Chen, Chengru Hu, Xiangzhong Huang, Yan Li
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引用次数: 0

摘要

肝癌具有高度异质性,预后较差。我们旨在确定药物代谢相关的预后亚型和基因标记,作为肝癌患者预后和治疗选择的参考。患者信息从在线数据库中收集。药物代谢相关基因从先前的研究中获得,并用于筛选差异表达的预后基因。将患者分为不同的组,分析组间临床特征、免疫、通路和治疗反应的差异。采用LASSO分析确定最佳预后基因,建立风险评分模型。最后,研究不同亚型的风险评分分布。共鉴定出54个预后基因,将患者分为第1类和第2类。第1类患者的生存率低于第2类患者,第1类患者的恶性程度也较高。此外,第1类患者对紫杉醇、吉西他滨和喜树碱的TIDE评分较高,IC50反应较低,表明第1类患者可能从免疫治疗中获得更多益处,而从化疗中获得的益处较少。基于六个最佳预后基因的风险评分显示有足够的预后能力。高危组生存率较差;同时,聚类1包含了大多数高风险样本。我们的结果对肝癌患者的预后和特异性治疗有一定的指导意义。具有第1类特征且高风险评分较高的患者生存率往往较差。此外,免疫治疗可能更适合第1类患者,而化疗可能更适合第2类患者。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analysis for drug metabolism-related prognostic subtypes and gene signature in liver cancer.

Liver cancer is highly heterogeneous and has a poor prognosis. We aimed to identify a drug metabolism-related prognostic subtype and a gene signature as references for prognosis and therapy options for patients with liver cancer. Patient information was collected from online databases. Drug metabolism-related genes were obtained from previous studies and were used to screen differentially expressed prognostic genes. The patients were divided into different clusters and differences in clinical features, immunity, pathways and therapy responses between the clusters were analyzed. LASSO analysis was performed to identify the optimal prognostic genes and establish a risk score model. Finally, the risk score distribution in different subtypes was investigated. A total of 54 prognostic genes were identified to categorize the patients into cluster 1 and cluster 2. Cluster 1 showed worse survival than cluster 2, and cluster 1 also showed high levels of malignancy. Furthermore, cluster 1 exhibited a higher TIDE (tumor immune dysfunction and exclusion) score and lower IC50 response to paclitaxel, gemcitabine and camptothecin, indicating that cluster 1 individuals may derive more benefit from immunotherapy but less benefit from chemotherapy. The risk score, based on the six optimal prognostic genes, demonstrated an adequate prognostic capability. The high-risk group showed worse survival; meanwhile, cluster 1 contained the majority of high-risk samples. Our results should be useful for prognosis and specific therapy for patients with liver cancer. Patients with the features of cluster 1 and a high risk score will tend to exhibit worse survival. Furthermore, immunotherapy may be more suitable for cluster 1-type patients while chemotherapy may be more suitable for cluster 2 patients.

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来源期刊
Genes & genetic systems
Genes & genetic systems 生物-生化与分子生物学
CiteScore
1.50
自引率
0.00%
发文量
22
审稿时长
>12 weeks
期刊介绍: Genes & Genetic Systems , formerly the Japanese Journal of Genetics , is published bimonthly by the Genetics Society of Japan.
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