Department of Biosystems Science and Engineering, ETH Zurich, 4058 Basel, Switzerland.
Sci Signal. 2013 May 28;6(277):ra41. doi: 10.1126/scisignal.2003621.
Predictive dynamical models are critical for the analysis of complex biological systems. However, methods to systematically develop and discriminate among systems biology models are still lacking. We describe a computational method that incorporates all hypothetical mechanisms about the architecture of a biological system into a single model and automatically generates a set of simpler models compatible with observational data. As a proof of principle, we analyzed the dynamic control of the transcription factor Msn2 in Saccharomyces cerevisiae, specifically the short-term mechanisms mediating the cells' recovery after release from starvation stress. Our method determined that 12 of 192 possible models were compatible with available Msn2 localization data. Iterations between model predictions and rationally designed phosphoproteomics and imaging experiments identified a single-circuit topology with a relative probability of 99% among the 192 models. Model analysis revealed that the coupling of dynamic phenomena in Msn2 phosphorylation and transport could lead to efficient stress response signaling by establishing a rate-of-change sensor. Similar principles could apply to mammalian stress response pathways. Systematic construction of dynamic models may yield detailed insight into nonobvious molecular mechanisms.
预测动力学模型对于分析复杂的生物系统至关重要。然而,系统地开发和区分系统生物学模型的方法仍然缺乏。我们描述了一种计算方法,该方法将关于生物系统结构的所有假设机制纳入单个模型中,并自动生成一组与观测数据兼容的更简单模型。作为原理验证,我们分析了转录因子 Msn2 在酿酒酵母中的动态控制,特别是介导细胞从饥饿压力释放后恢复的短期机制。我们的方法确定了 192 个可能模型中有 12 个与可用的 Msn2 定位数据兼容。在模型预测和合理设计的磷酸化蛋白质组学和成像实验之间进行迭代,在 192 个模型中确定了具有相对概率为 99%的单个电路拓扑。模型分析表明,通过建立变化率传感器,Msn2 磷酸化和运输中的动态现象的耦合可以导致有效的应激反应信号。类似的原则可能适用于哺乳动物应激反应途径。动态模型的系统构建可能会深入了解不明显的分子机制。