Selecting Optimal Models Based on Efficiency and Robustness in Multi-valued Biological Networks

Hooman Sedghamiz, Wenxiang Chen, Mark Rice, L. D. Whitley, G. Broderick
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引用次数: 8

Abstract

In this paper, we propose an optimization algorithm for literature-derived model and parameter identification in multi-valued biological regulatory networks. Our approach is a multi-objective optimization method where the objectives are inspired from structural Efficiency, dynamical Robustness and biological selectivity of cells in their actions. Given an incomplete model derived from literature and partially instrumented clinical observations, our method identifies the optimal model parameterization by maximizing structural Efficiency, dynamical Robustness and Selectivity. As the parameterization space is super exponential, we implemented our method in a constraint satisfaction framework by defining logical equivalences of the dynamical features. The implemented framework is then solved with a lazy clause solver known as Chuffed. We apply our method on female Hypothalamic-Pituitary-Gonadal axis (HPG) and demonstrate how it is able to identify a model that reproduces the complex menstrual cycle. The algorithm found a structure and parameterization for the 5 node 14 edge (~50% edge density) HPG model with a normalized length cost and robustness of 1.46 and 0.35 respectively in 713 seconds on an Intel core i7 machine.Our method discovered that there are at least 6 more regulatory interactions that must be added to the commonly accepted HPG basic model in order to reproduce the menstrual cycle efficiently and robustly. The discovery of additional interactions suggest that our algorithm provides new insight to the biological model identification by combining the information from literature, clinical measurements and dynamical parameters.
基于效率和鲁棒性的多值生物网络最优模型选择
本文提出了一种多值生物调控网络中文献衍生模型和参数识别的优化算法。我们的方法是一种多目标优化方法,其目标受到细胞在其行动中的结构效率,动态鲁棒性和生物选择性的启发。考虑到从文献和部分仪器临床观察中得出的不完整模型,我们的方法通过最大化结构效率、动态稳健性和选择性来确定最佳模型参数化。由于参数化空间是超指数空间,我们通过定义动态特征的逻辑等价,在约束满足框架中实现了我们的方法。然后使用称为Chuffed的惰性子句求解器对实现的框架进行求解。我们将我们的方法应用于女性下丘脑-垂体-性腺轴(HPG),并展示了它如何能够识别一个复制复杂月经周期的模型。该算法为5节点14边(~50%边密度)HPG模型找到了一种结构和参数化,该模型在Intel core i7机器上的归一化长度成本和鲁棒性分别为1.46和0.35,耗时为713秒。我们的方法发现,为了有效和稳健地再现月经周期,至少有6种以上的调节相互作用必须添加到普遍接受的HPG基本模型中。其他相互作用的发现表明,我们的算法通过结合文献、临床测量和动力学参数的信息,为生物模型识别提供了新的见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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