Gormley Padhraig, Li Kang, Irwin George W
School of Electronics, Electrical Engineering and Computer Science, Queen's University Belfast, Belfast, BT9 5AH, UK,
Syst Synth Biol. 2007 Aug;1(3):145-60. doi: 10.1007/s11693-008-9012-5. Epub 2008 Mar 4.
In systems biology, molecular interactions are typically modelled using white-box methods, usually based on mass action kinetics. Unfortunately, problems with dimensionality can arise when the number of molecular species in the system is very large, which makes the system modelling and behavior simulation extremely difficult or computationally too expensive. As an alternative, this paper investigates the identification of two molecular interaction pathways using a black-box approach. This type of method creates a simple linear-in-the-parameters model using regression of data, where the output of the model at any time is a function of previous system states of interest. One of the main objectives in building black-box models is to produce an optimal sparse nonlinear one to effectively represent the system behavior. In this paper, it is achieved by applying an efficient iterative approach, where the terms in the regression model are selected and refined using a forward and backward subset selection algorithm. The method is applied to model identification for the MAPK signal transduction pathway and the Brusselator using noisy data of different sizes. Simulation results confirm the efficacy of the black-box modelling method which offers an alternative to the computationally expensive conventional approach.
在系统生物学中,分子相互作用通常使用白盒方法进行建模,通常基于质量作用动力学。不幸的是,当系统中分子种类的数量非常大时,可能会出现维度问题,这使得系统建模和行为模拟极其困难或计算成本过高。作为一种替代方法,本文研究了使用黑盒方法识别两条分子相互作用途径。这种类型的方法使用数据回归创建一个参数线性模型,其中模型在任何时候的输出都是先前感兴趣的系统状态的函数。构建黑盒模型的主要目标之一是生成一个最优的稀疏非线性模型,以有效地表示系统行为。在本文中,这是通过应用一种有效的迭代方法来实现的,其中使用向前和向后子集选择算法选择和细化回归模型中的项。该方法应用于使用不同大小的噪声数据对MAPK信号转导途径和布鲁塞尔振子进行模型识别。仿真结果证实了黑盒建模方法的有效性,该方法为计算成本高昂的传统方法提供了一种替代方案。