de Duve Institute, Université catholique de Louvain, Brussels, Belgium.
de Duve Institute, Université catholique de Louvain, Brussels, Belgium; Earth and Life Institute, Université catholique de Louvain, Louvain-la-Neuve, Belgium.
J Hepatol. 2019 Aug;71(2):323-332. doi: 10.1016/j.jhep.2019.03.024. Epub 2019 Apr 4.
BACKGROUND & AIMS: Alterations of individual genes variably affect the development of hepatocellular carcinoma (HCC). Thus, we aimed to characterize the function of tumor-promoting genes in the context of gene regulatory networks (GRNs).
Using data from The Cancer Genome Atlas, from the LIRI-JP (Liver Cancer - RIKEN, JP project), and from our transcriptomic, transfection and mouse transgenic experiments, we identify a GRN which functionally links LIN28B-dependent dedifferentiation with dysfunction of β-catenin (CTNNB1). We further generated and validated a quantitative mathematical model of the GRN using human cell lines and in vivo expression data.
We found that LIN28B and CTNNB1 form a GRN with SMARCA4, Let-7b (MIRLET7B), SOX9, TP53 and MYC. GRN functionality is detected in HCC and gastrointestinal cancers, but not in other cancer types. GRN status negatively correlates with HCC prognosis, and positively correlates with hyperproliferation, dedifferentiation and HGF/MET pathway activation, suggesting that it contributes to a transcriptomic profile typical of the proliferative class of HCC. The mathematical model predicts how the expression of GRN components changes when the expression of another GRN member varies or is inhibited by a pharmacological drug. The dynamics of GRN component expression reveal distinct cell states that can switch reversibly in normal conditions, and irreversibly in HCC. The mathematical model is available via a web-based tool which can evaluate the GRN status of HCC samples and predict the impact of therapeutic agents on the GRN.
We conclude that identification and modelling of the GRN provide insights into the prognosis of HCC and the mechanisms by which tumor-promoting genes impact on HCC development.
Hepatocellular carcinoma (HCC) is a heterogeneous disease driven by the concomitant deregulation of several genes functionally organized as networks. Here, we identified a gene regulatory network involved in a subset of HCCs. This subset is characterized by increased proliferation and poor prognosis. We developed a mathematical model which uncovers the dynamics of the network and allows us to predict the impact of a therapeutic agent, not only on its specific target but on all the genes belonging to the network.
个体基因的改变可导致肝细胞癌(HCC)的发生。因此,我们旨在从基因调控网络(GRN)的角度来描述促癌基因的功能。
利用来自癌症基因组图谱(TCGA)的数据、来自 LIRI-JP(日本理化学研究所-肝脏癌症项目)的数据以及我们的转录组学、转染和小鼠转基因实验数据,我们确定了一个功能性地将 LIN28B 依赖性去分化与 β-连环蛋白(CTNNB1)功能障碍联系起来的 GRN。我们进一步使用人类细胞系和体内表达数据生成并验证了该 GRN 的定量数学模型。
我们发现 LIN28B 和 CTNNB1 与 SMARCA4、Let-7b(MIRLET7B)、SOX9、TP53 和 MYC 形成了一个 GRN。该 GRN 功能在 HCC 和胃肠道癌中被检测到,但在其他癌症类型中未被检测到。GRN 状态与 HCC 预后呈负相关,与过度增殖、去分化和 HGF/MET 通路激活呈正相关,提示其有助于形成 HCC 增殖类的转录组特征。该数学模型预测了当另一个 GRN 成员的表达发生变化或被药物抑制时,GRN 成分的表达如何变化。GRN 成分表达的动态揭示了在正常条件下可可逆切换的不同细胞状态,以及在 HCC 中不可逆的细胞状态。该数学模型可通过一个基于网络的工具获得,该工具可评估 HCC 样本的 GRN 状态并预测治疗药物对 GRN 的影响。
我们的结论是,GRN 的鉴定和建模为 HCC 的预后以及促癌基因对 HCC 发生的影响机制提供了新的认识。
肝细胞癌(HCC)是一种由多个基因协同失调而导致的异质性疾病,这些基因被组织成功能网络。在这里,我们鉴定了一个参与 HCC 子集的基因调控网络。该亚组的特点是增殖增加和预后不良。我们开发了一个数学模型,该模型揭示了网络的动态,并使我们能够预测治疗药物的影响,不仅针对其特定靶点,还针对属于网络的所有基因。