Sun Renliang, Xu Yizhou, Zhang Hang, Yang Qiangzhen, Wang Ke, Shi Yongyong, Wang Zhuo
Bio-X Institutes, Key Laboratory for the Genetics of Developmental Neuropsychiatric Disorders (Ministry of Education), Shanghai Jiao Tong University, Shanghai, China.
Front Genet. 2020 Dec 23;11:595242. doi: 10.3389/fgene.2020.595242. eCollection 2020.
Hepatocellular carcinoma (HCC) is the predominant form of liver cancer and has long been among the top three cancers that cause the most deaths worldwide. Therapeutic options for HCC are limited due to the pronounced tumor heterogeneity. Thus, there is a critical need to study HCC from a systems point of view to discover effective therapeutic targets, such as through the systematic study of disease perturbation in both regulation and metabolism using a unified model. Such integration makes sense for cancers as it links one of the dominant physiological features of cancers (growth, which is driven by metabolic networks) with the primary available omics data source, transcriptomics (which is systematically integrated with metabolism through the regulatory-metabolic network model). Here, we developed an integrated transcriptional regulatory-metabolic model for HCC molecular stratification and the prediction of potential therapeutic targets. To predict transcription factors (TFs) and target genes affecting tumorigenesis, we used two algorithms to reconstruct the genome-scale transcriptional regulatory networks for HCC and normal liver tissue. which were then integrated with corresponding constraint-based metabolic models. Five key TFs affecting cancer cell growth were identified. They included the regulator , which has been associated with poor prognosis. Comprehensive personalized metabolic analysis based on models generated from data of liver HCC in The Cancer Genome Atlas revealed 18 genes essential for tumorigenesis in all three subtypes of patients stratified based on the non-negative matrix factorization method and two other genes ( and ) that have been strongly correlated with lower overall survival subtype. Among these 20 genes, 11 are targeted by approved drugs for cancers or cancer-related diseases, and six other genes have corresponding drugs being evaluated experimentally or investigationally. The remaining three genes represent potential targets. We also validated the stratification and prognosis results by an independent dataset of HCC cohort samples (LIRI-JP) from the International Cancer Genome Consortium database. In addition, microRNAs targeting key TFs and genes were also involved in established cancer-related pathways. Taken together, the multi-scale regulatory-metabolic model provided a new approach to assess key mechanisms of HCC cell proliferation in the context of systems and suggested potential targets.
肝细胞癌(HCC)是肝癌的主要形式,长期以来一直位列全球致死率最高的三大癌症之中。由于肿瘤异质性显著,HCC的治疗选择有限。因此,迫切需要从系统角度研究HCC,以发现有效的治疗靶点,例如通过使用统一模型对调控和代谢中的疾病扰动进行系统研究。这种整合对于癌症来说是有意义的,因为它将癌症的一个主要生理特征(由代谢网络驱动的生长)与主要的可用组学数据源转录组学联系起来(转录组学通过调控-代谢网络模型与代谢系统地整合在一起)。在此,我们开发了一个用于HCC分子分层和潜在治疗靶点预测的整合转录调控-代谢模型。为了预测影响肿瘤发生的转录因子(TFs)和靶基因,我们使用两种算法重建了HCC和正常肝组织的基因组规模转录调控网络,然后将其与相应的基于约束的代谢模型整合。确定了五个影响癌细胞生长的关键TFs。其中包括与预后不良相关的调节因子。基于来自癌症基因组图谱中肝癌数据生成的模型进行的综合个性化代谢分析显示,在基于非负矩阵分解方法分层的所有三种患者亚型中,有18个基因对肿瘤发生至关重要,另外还有两个基因(和)与较低的总生存亚型密切相关。在这20个基因中,11个是已获批用于癌症或癌症相关疾病的药物的靶点,另外6个基因有相应药物正在进行实验性或研究性评估。其余三个基因代表潜在靶点。我们还通过国际癌症基因组联盟数据库中HCC队列样本的独立数据集(LIRI-JP)验证了分层和预后结果。此外,靶向关键TFs和基因的微小RNA也参与了已确立的癌症相关途径。综上所述,多尺度调控-代谢模型提供了一种在系统背景下评估HCC细胞增殖关键机制的新方法,并提出了潜在靶点。