Sabouri-Ghomi Mohsen, Ciliberto Andrea, Kar Sandip, Novak Bela, Tyson John J
Department of Biological Sciences, Virginia Polytechnic Institute and State University, M.C. 0406, Blacksburg, VA 24061, USA.
J Theor Biol. 2008 Jan 7;250(1):209-18. doi: 10.1016/j.jtbi.2007.09.001. Epub 2007 Sep 12.
A protein interaction network (PIN) is a set of proteins that modulate one another's activities by regulated synthesis and degradation, by reversible binding to form complexes, and by catalytic reactions (e.g., phosphorylation and dephosphorylation). Most PINs are so complex that their dynamical characteristics cannot be deduced accurately by intuitive reasoning alone. To predict the properties of such networks, many research groups have turned to mathematical models (differential equations based on standard biochemical rate laws, e.g., mass-action, Michaelis-Menten, Hill). When using Michaelis-Menten rate expressions to model PINs, care must be exercised to avoid making inconsistent assumptions about enzyme-substrate complexes. We show that an appealingly simple model of a PIN that functions as a bistable switch is compromised by neglecting enzyme-substrate intermediates. When the neglected intermediates are put back into the model, bistability of the switch is lost. The theory of chemical reaction networks predicts that bistability can be recovered by adding specific reaction channels to the molecular mechanism. We explore two very different routes to recover bistability. In both cases, we show how to convert the original 'phenomenological' model into a consistent set of mass-action rate laws that retains the desired bistability properties. Once an equivalent model is formulated in terms of elementary chemical reactions, it can be simulated accurately either by deterministic differential equations or by Gillespie's stochastic simulation algorithm.
蛋白质相互作用网络(PIN)是一组通过调控合成与降解、可逆结合形成复合物以及催化反应(如磷酸化和去磷酸化)来相互调节活性的蛋白质。大多数PIN非常复杂,以至于仅凭直观推理无法准确推断其动力学特征。为了预测此类网络的特性,许多研究小组转向了数学模型(基于标准生化速率定律的微分方程,如质量作用定律、米氏方程、希尔方程)。在使用米氏速率表达式对PIN进行建模时,必须小心避免对酶-底物复合物做出不一致的假设。我们表明,一个作为双稳态开关的PIN的看似简单的模型因忽略酶-底物中间体而存在缺陷。当将被忽略的中间体放回模型中时,开关的双稳态就会丧失。化学反应网络理论预测,可以通过向分子机制中添加特定的反应通道来恢复双稳态。我们探索了两条截然不同的恢复双稳态的途径。在这两种情况下,我们都展示了如何将原始的“现象学”模型转换为一组一致的质量作用速率定律,该定律保留了所需的双稳态特性。一旦根据基本化学反应构建了等效模型,就可以通过确定性微分方程或吉莱斯皮的随机模拟算法进行准确模拟。