Departamento de Física, Universidade Federal de Viçosa, Viçosa, Minas Gerais, Brazil.
PLoS One. 2013 Jul 26;8(7):e69008. doi: 10.1371/journal.pone.0069008. Print 2013.
A Boolean dynamical system integrating the main signaling pathways involved in cancer is constructed based on the currently known protein-protein interaction network. This system exhibits stationary protein activation patterns--attractors--dependent on the cell's microenvironment. These dynamical attractors were determined through simulations and their stabilities against mutations were tested. In a higher hierarchical level, it was possible to group the network attractors into distinct cell phenotypes and determine driver mutations that promote phenotypic transitions. We find that driver nodes are not necessarily central in the network topology, but at least they are direct regulators of central components towards which converge or through which crosstalk distinct cancer signaling pathways. The predicted drivers are in agreement with those pointed out by diverse census of cancer genes recently performed for several human cancers. Furthermore, our results demonstrate that cell phenotypes can evolve towards full malignancy through distinct sequences of accumulated mutations. In particular, the network model supports routes of carcinogenesis known for some tumor types. Finally, the Boolean network model is employed to evaluate the outcome of molecularly targeted cancer therapies. The major find is that monotherapies were additive in their effects and that the association of targeted drugs is necessary for cancer eradication.
基于目前已知的蛋白质-蛋白质相互作用网络,构建了一个整合癌症相关主要信号通路的布尔动力系统。该系统表现出依赖于细胞微环境的静止蛋白激活模式——吸引子。通过模拟确定了这些动态吸引子及其对突变的稳定性,并在更高的层次上,将网络吸引子分为不同的细胞表型,并确定促进表型转变的驱动突变。我们发现,驱动节点不一定是网络拓扑中的中心节点,但至少它们是中央组件的直接调节剂,这些中央组件汇聚或通过它们进行不同的癌症信号通路的串扰。预测的驱动因素与最近针对几种人类癌症进行的多种癌症基因普查所指出的驱动因素一致。此外,我们的结果表明,细胞表型可以通过不同的突变积累序列进化为完全恶性。特别是,该网络模型支持一些肿瘤类型已知的致癌发生途径。最后,该布尔网络模型被用于评估针对特定分子的癌症治疗的效果。主要发现是单药治疗的效果是相加的,而靶向药物的联合使用是癌症根除所必需的。