Zhang Jiaxin, Chen Guang, Zhang Jiaying, Zhang Peng, Ye Yong'an
Dongzhimen Hospital, Beijing University of Chinese Medicine Beijing, China.
Institute of Liver Diseases, Beijing University of Chinese Medicine Beijing, China.
Am J Transl Res. 2020 Sep 15;12(9):5108-5130. eCollection 2020.
This study aimed to develop a prognostic model for hepatocellular carcinoma (HCC) based on immune-related genes and to identify new potential small-molecule drugs. A differential gene expression analysis of high-throughput microarray data from The Cancer Genome Atlas (TCGA) was performed to identify immune-related genes. By comparison with an immune-related genome, nine genes with important prognostic value for HCC were identified. The prognostic characteristics were established based on univariate and multivariate COX and Lasso regression analyzes. Subsequently, immune-related HCC risk signatures were constructed based on these identified nine immune-related genes and patients were classified as being at high or low risk according to these signatures. The overall survival (OS) time of high-risk patients was significantly shorter than that of low-risk patients. When studied as an independent prognostic factor of HCC, the significant prognostic value of this feature can be seen in the stratified cohorts. For clinical application, it was developed a nomogram that includes nine clinical risk factors and the prognostic model built based on the identified immune-related genes. Internal and external verification on 243 HCC tissues through International Cancer Genome Consortium (ICGC) database were performed to make this model more accurate and reliable. In addition, it was observed a positive regulation between the identified immune-related genes and their transcription factors found in HCC patients. Moreover, physiological function and signaling pathway of identified immune-related genes were studied by GO and KEGG enrichment analysis. Finally, several new small molecular drugs with potential for the treatment of HCC have been identified in the CMap database.
本研究旨在基于免疫相关基因开发肝细胞癌(HCC)的预后模型,并识别新的潜在小分子药物。对来自癌症基因组图谱(TCGA)的高通量微阵列数据进行差异基因表达分析,以识别免疫相关基因。通过与免疫相关基因组进行比较,确定了9个对HCC具有重要预后价值的基因。基于单变量和多变量COX及套索回归分析确定预后特征。随后,基于这些鉴定出的9个免疫相关基因构建免疫相关的HCC风险特征,并根据这些特征将患者分为高风险或低风险。高风险患者的总生存(OS)时间明显短于低风险患者。当作为HCC的独立预后因素进行研究时,在分层队列中可以看到该特征具有显著的预后价值。为了临床应用,开发了一种列线图,其中包括9个临床风险因素以及基于鉴定出的免疫相关基因构建的预后模型。通过国际癌症基因组联盟(ICGC)数据库对243个HCC组织进行内部和外部验证,以使该模型更加准确和可靠。此外,在HCC患者中观察到鉴定出的免疫相关基因与其转录因子之间存在正调控。此外,通过GO和KEGG富集分析研究了鉴定出的免疫相关基因的生理功能和信号通路。最后,在CMap数据库中鉴定出几种具有治疗HCC潜力的新小分子药物。