Zhang Yili, Smolen Paul, Baxter Douglas A, Byrne John H
Department of Neurobiology and Anatomy, The University of Texas Medical School at Houston, Houston, Texas, United States of America.
PLoS Comput Biol. 2014 Mar 20;10(3):e1003524. doi: 10.1371/journal.pcbi.1003524. eCollection 2014 Mar.
Cellular functions and responses to stimuli are controlled by complex regulatory networks that comprise a large diversity of molecular components and their interactions. However, achieving an intuitive understanding of the dynamical properties and responses to stimuli of these networks is hampered by their large scale and complexity. To address this issue, analyses of regulatory networks often focus on reduced models that depict distinct, reoccurring connectivity patterns referred to as motifs. Previous modeling studies have begun to characterize the dynamics of small motifs, and to describe ways in which variations in parameters affect their responses to stimuli. The present study investigates how variations in pairs of parameters affect responses in a series of ten common network motifs, identifying concurrent variations that act synergistically (or antagonistically) to alter the responses of the motifs to stimuli. Synergism (or antagonism) was quantified using degrees of nonlinear blending and additive synergism. Simulations identified concurrent variations that maximized synergism, and examined the ways in which it was affected by stimulus protocols and the architecture of a motif. Only a subset of architectures exhibited synergism following paired changes in parameters. The approach was then applied to a model describing interlocked feedback loops governing the synthesis of the CREB1 and CREB2 transcription factors. The effects of motifs on synergism for this biologically realistic model were consistent with those for the abstract models of single motifs. These results have implications for the rational design of combination drug therapies with the potential for synergistic interactions.
细胞功能和对刺激的反应由复杂的调控网络控制,这些网络包含大量不同的分子成分及其相互作用。然而,由于这些网络的规模和复杂性,要直观理解它们的动力学特性和对刺激的反应受到阻碍。为了解决这个问题,调控网络分析通常聚焦于简化模型,这些模型描绘了被称为基序的独特且反复出现的连接模式。先前的建模研究已开始刻画小基序的动力学,并描述参数变化影响其对刺激反应的方式。本研究调查了参数对在一系列十个常见网络基序中的反应的成对变化如何影响反应,识别出协同(或拮抗)作用以改变基序对刺激反应的并发变化。协同(或拮抗)作用使用非线性混合度和加性协同作用进行量化。模拟确定了使协同作用最大化的并发变化,并研究了它受刺激方案和基序结构影响的方式。只有一部分结构在参数成对变化后表现出协同作用。然后该方法被应用于一个描述控制CREB1和CREB2转录因子合成的连锁反馈环的模型。对于这个生物学现实模型,基序对协同作用的影响与单个基序的抽象模型的影响一致。这些结果对具有协同相互作用潜力的联合药物疗法的合理设计具有启示意义。