Huang Zi-Li, Xu Bin, Li Ting-Ting, Xu Yong-Hua, Huang Xin-Yu, Huang Xiu-Yan
Department of General Surgery, Shanghai Jiaotong University Affiliated Sixth People's Hospital, Shanghai, China.
Department of Radiology, Xuhui District Central Hospital of Zhongshan Hospital, Fudan University, Shanghai, China.
Front Oncol. 2022 May 30;12:878923. doi: 10.3389/fonc.2022.878923. eCollection 2022.
Hepatocellular carcinoma (HCC) is a leading cause of cancer-related mortality worldwide, but effective early detection and prognostication methods are lacking.
The Cox regression model was built to stratify the HCC patients. The single-cell RNA sequencing data analysis and gene set enrichment analysis were employed to investigate the biological function of identified markers. PLCB1 gain- or loss-of-function experiments were performed, and obtained HCC samples were analyzed using quantitative real-time PCR and immunohistochemistry assay to validate the biological function of identified markers.
In this study, we developed a model using optimized markers for HCC recurrence prediction. Specifically, we screened out 8 genes through a series of data analyses, and built a multivariable Cox model based on their expression. The risk stratifications using the Eight-Gene Cox (EGC) model were closely associated with the recurrence-free survivals (RFS) in both training and three validation cohorts. We further demonstrated that this risk stratification could serve as an independent predictor in predicting HCC recurrence, and that the EGC model could outperform other models. Moreover, we also investigated the cell-type-specific expression patterns of the eight recurrence-related genes in tumor microenvironment using single-cell RNA sequencing data, and interpreted their functional roles from correlation and gene set enrichment analyses, and experiments. Particularly, PLCB1 and SLC22A7 were predominantly expressed in malignant cells, and they were predicted to promote angiogenesis and to help maintain normal metabolism in liver, respectively. In contrast, both FASLG and IL2RB were specifically expressed in T cells, and were highly correlated with T cell marker genes, suggesting that these two genes might assist in maintaining normal function of T cell-mediated immune response in tumor tissues.
In conclusion, the EGC model and eight identified marker genes could not only facilitate the accurate prediction of HCC recurrence, but also improve our understanding of the mechanisms behind HCC recurrence.
肝细胞癌(HCC)是全球癌症相关死亡的主要原因,但缺乏有效的早期检测和预后方法。
构建Cox回归模型对HCC患者进行分层。采用单细胞RNA测序数据分析和基因集富集分析来研究已鉴定标志物的生物学功能。进行了PLCB1功能获得或缺失实验,并使用定量实时PCR和免疫组织化学分析对获得的HCC样本进行分析,以验证已鉴定标志物的生物学功能。
在本研究中,我们开发了一个使用优化标志物预测HCC复发的模型。具体而言,我们通过一系列数据分析筛选出8个基因,并基于它们的表达构建了多变量Cox模型。在训练队列和三个验证队列中,使用八基因Cox(EGC)模型进行的风险分层与无复发生存期(RFS)密切相关。我们进一步证明,这种风险分层可作为预测HCC复发的独立预测因子,且EGC模型优于其他模型。此外,我们还利用单细胞RNA测序数据研究了肿瘤微环境中8个复发相关基因的细胞类型特异性表达模式,并通过相关性和基因集富集分析以及实验来解释它们的功能作用。特别是,PLCB1和SLC22A7主要在恶性细胞中表达,预计它们分别促进血管生成和帮助维持肝脏正常代谢。相反,FASLG和IL2RB均在T细胞中特异性表达,且与T细胞标志物基因高度相关,表明这两个基因可能有助于维持肿瘤组织中T细胞介导的免疫反应的正常功能。
总之,EGC模型和8个已鉴定的标志物基因不仅有助于准确预测HCC复发,还能增进我们对HCC复发背后机制的理解。