Brown Kevin S, Sethna James P
Laboratory of Atomic and Solid State Physics (LASSP), Clark Hall, Cornell University, Ithaca, New York 14853-2501, USA.
Phys Rev E Stat Nonlin Soft Matter Phys. 2003 Aug;68(2 Pt 1):021904. doi: 10.1103/PhysRevE.68.021904. Epub 2003 Aug 12.
Models of biochemical regulation in prokaryotes and eukaryotes, typically consisting of a set of first-order nonlinear ordinary differential equations, have become increasingly popular of late. These systems have large numbers of poorly known parameters, simplified dynamics, and uncertain connectivity: three key features of a class of problems we call sloppy models, which are shared by many other high-dimensional multiparameter nonlinear models. We use a statistical ensemble method to study the behavior of these models, in order to extract as much useful predictive information as possible from a sloppy model, given the available data used to constrain it. We discuss numerical challenges that emerge in using the ensemble method for a large system. We characterize features of sloppy model parameter fluctuations by various spectral decompositions and find indeed that five parameters can be used to fit an elephant. We also find that model entropy is as important to the problem of model choice as model energy is to parameter choice.
原核生物和真核生物中的生化调节模型通常由一组一阶非线性常微分方程组成,近年来越来越受欢迎。这些系统有大量参数未知、动力学简化且连接性不确定:这是我们称为“草率模型”的一类问题的三个关键特征,许多其他高维多参数非线性模型也有这些特征。我们使用统计系综方法来研究这些模型的行为,以便在给定用于约束它的可用数据的情况下,从一个草率模型中提取尽可能多的有用预测信息。我们讨论了在将系综方法用于大型系统时出现的数值挑战。我们通过各种谱分解来表征草率模型参数波动的特征,确实发现五个参数可以用来拟合一头大象。我们还发现,模型熵对于模型选择问题的重要性与模型能量对于参数选择的重要性相当。