Wang Gaowei, Luo Xiaolin, Liang Yan, Kaneko Kota, Li Hairi, Fu Xiang-Dong, Feng Gen-Sheng
Department of Pathology, Division of Biological Sciences, Moores Cancer Center, University of California San Diego, La Jolla, CA 92093.
Department of Cellular and Molecular Medicine, University of California San Diego, La Jolla, CA 92093.
Proc Natl Acad Sci U S A. 2019 Dec 26;116(52):26873-26880. doi: 10.1073/pnas.1911193116. Epub 2019 Dec 16.
Primary liver cancer develops from multifactorial etiologies, resulting in extensive genomic heterogeneity. To probe the common mechanism of hepatocarcinogenesis, we interrogated temporal gene expression profiles in a group of mouse models with hepatic steatosis, fibrosis, inflammation, and, consequently, tumorigenesis. Instead of anticipated progressive changes, we observed a sudden molecular switch at a critical precancer stage, by developing analytical platform that focuses on transcription factor (TF) clusters. Coarse-grained network modeling demonstrated that an abrupt transcriptomic transition occurred once changes were accumulated to reach a threshold. Based on the experimental and bioinformatic data analyses as well as mathematical modeling, we derived a tumorigenic index (TI) to quantify tumorigenic signal strengths. The TI is powerful in predicting the disease status of patients with metabolic disorders and also the tumor stages and prognosis of liver cancer patients with diverse backgrounds. This work establishes a quantitative tool for triage of liver cancer patients and also for cancer risk assessment of chronic liver disease patients.
原发性肝癌由多因素病因引起,导致广泛的基因组异质性。为了探究肝癌发生的共同机制,我们在一组具有肝脂肪变性、纤维化、炎症以及肿瘤发生的小鼠模型中研究了时间基因表达谱。我们没有观察到预期的渐进性变化,而是通过开发专注于转录因子(TF)簇的分析平台,在一个关键的癌前阶段观察到了突然的分子转变。粗粒度网络建模表明,一旦变化积累到阈值,就会发生突然的转录组转变。基于实验和生物信息数据分析以及数学建模,我们得出了一个致瘤指数(TI)来量化致瘤信号强度。TI在预测代谢紊乱患者的疾病状态以及不同背景的肝癌患者的肿瘤分期和预后方面很强大。这项工作建立了一种定量工具,用于对肝癌患者进行分类,也用于慢性肝病患者的癌症风险评估。