A network modeling approach to elucidate drug resistance mechanisms and predict combinatorial drug treatments in breast cancer.

Cancer convergence Pub Date : 2017-01-01 Epub Date: 2017-12-29 DOI:10.1186/s41236-017-0007-6
Jorge Gómez Tejeda Zañudo, Maurizio Scaltriti, Réka Albert
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Abstract

Background: Mechanistic models of within-cell signal transduction networks can explain how these networks integrate internal and external inputs to give rise to the appropriate cellular response. These models can be fruitfully used in cancer cells, whose aberrant decision-making regarding their survival or death, proliferation or quiescence can be connected to errors in the state of nodes or edges of the signal transduction network.

Results: Here we present a comprehensive network, and discrete dynamic model, of signal transduction in ER+ breast cancer based on the literature of ER+, HER2+, and PIK3CA-mutant breast cancers. The network model recapitulates known resistance mechanisms to PI3K inhibitors and suggests other possibilities for resistance. The model also reveals known and novel combinatorial interventions that are more effective than PI3K inhibition alone.

Conclusions: The use of a logic-based, discrete dynamic model enables the identification of results that are mainly due to the organization of the signaling network, and those that also depend on the kinetics of individual events. Network-based models such as this will play an increasing role in the rational design of high-order therapeutic combinations.

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采用网络建模方法阐明乳腺癌的耐药机制并预测联合用药治疗方案。
背景:细胞内信号转导网络的机理模型可以解释这些网络如何整合内部和外部输入以产生适当的细胞反应。这些模型在癌细胞中的应用卓有成效,癌细胞关于生存或死亡、增殖或静止的异常决策可能与信号转导网络节点或边缘状态的错误有关:在此,我们根据ER+、HER2+和PIK3CA突变乳腺癌的文献资料,提出了ER+乳腺癌信号转导的综合网络和离散动态模型。该网络模型再现了已知的 PI3K 抑制剂耐药机制,并提出了其他可能的耐药机制。该模型还揭示了比单独使用 PI3K 抑制剂更有效的已知和新型组合干预措施:结论:使用基于逻辑的离散动态模型可以识别主要由信号网络组织造成的结果,以及那些也取决于单个事件动力学的结果。这种基于网络的模型将在高阶治疗组合的合理设计中发挥越来越大的作用。
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