Chen Yu, Chen Dong, Zou Xiufen
School of Science, Wuhan University of Technology, Wuhan, Hubei 430070, China.
School of Mathematics and Statistics, Wuhan University, Wuhan, Hubei 430072, China.
Comput Math Methods Med. 2017;2017:3020326. doi: 10.1155/2017/3020326. Epub 2017 May 21.
Inference of the biochemical systems (BSs) via experimental data is important for understanding how biochemical components in vivo interact with each other. However, it is not a trivial task because BSs usually function with complex and nonlinear dynamics. As a popular ordinary equation (ODE) model, the S-System describes the dynamical properties of BSs by incorporating the power rule of biochemical reactions but behaves as a challenge because it has a lot of parameters to be confirmed. This work is dedicated to proposing a general method for inference of S-Systems by experimental data, using a biobjective optimization (BOO) model and a specially mixed-variable multiobjective evolutionary algorithm (mv-MOEA). Regarding that BSs are sparse in common sense, we introduce binary variables indicating network connections to eliminate the difficulty of threshold presetting and take data fitting error and the -norm as two objectives to be minimized in the BOO model. Then, a selection procedure that automatically runs tradeoff between two objectives is employed to choose final inference results from the obtained nondominated solutions of the mv-MOEA. Inference results of the investigated networks demonstrate that our method can identify their dynamical properties well, although the automatic selection procedure sometimes ignores some weak connections in BSs.
通过实验数据推断生化系统(BSs)对于理解体内生化成分如何相互作用至关重要。然而,这并非易事,因为生化系统通常具有复杂的非线性动力学。作为一种流行的常微分方程(ODE)模型,S - 系统通过纳入生化反应的幂律来描述生化系统的动力学特性,但由于它有许多参数需要确定,因此面临挑战。这项工作致力于提出一种通过实验数据推断S - 系统的通用方法,使用双目标优化(BOO)模型和一种特殊的混合变量多目标进化算法(mv - MOEA)。鉴于生化系统在常识上是稀疏的,我们引入表示网络连接的二元变量以消除阈值预设的困难,并将数据拟合误差和 - 范数作为双目标优化模型中要最小化的两个目标。然后,采用一种在两个目标之间自动进行权衡的选择过程,从mv - MOEA获得的非支配解中选择最终的推断结果。对所研究网络的推断结果表明,我们的方法能够很好地识别其动力学特性,尽管自动选择过程有时会忽略生化系统中的一些弱连接。