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A computational framework for qualitative simulation of nonlinear dynamical models of gene-regulatory networks

机译:基因调控网络非线性动力学模型定性仿真的计算框架

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Background Due to the huge amount of information at genomic level made recently available by high-throughput experimental technologies, networks of regulatory interactions between genes and gene products, the so-called gene-regulatory networks , can be uncovered. Most networks of interest are quite intricate because of both the high dimension of interacting elements and the complexity of the kinds of interactions between them. Then, mathematical and computational modeling frameworks are a must to predict the network behavior in response to environmental stimuli. A specific class of Ordinary Differential Equations (ODE) has shown to be adequate to describe the essential features of the dynamics of gene-regulatory networks. But, deriving quantitative predictions of the network dynamics through the numerical simulation of such models is mostly impracticable as they are currently characterized by incomplete knowledge of biochemical reactions underlying regulatory interactions, and of numeric values of kinetic parameters. Results This paper presents a computational framework for qualitative simulation of a class of ODE models, based on the assumption that gene regulation is threshold-dependent, i.e. only effective above or below a certain threshold. The simulation algorithm we propose assumes that threshold-dependent regulation mechanisms are modeled by continuous steep sigmoid functions, unlike other simulation tools that considerably simplifies the problem by approximating threshold-regulated response functions by step functions discontinuous in the thresholds. The algorithm results from the interplay between methods to deal with incomplete knowledge and to study phenomena that occur at different time-scales. Conclusion The work herein presented establishes the computational groundwork for a sound and a complete algorithm capable to capture the dynamical properties that depend only on the network structure and are invariant for ranges of values of kinetic parameters. At the current state of knowledge, the exploitation of such a tool is rather appropriate and useful to understand how specific activity patterns derive from given network structures, and what different types of dynamical behaviors are possible.
机译:背景技术由于高通量实验技术最近提供了在基因组水平上的大量信息,因此可以发现基因与基因产物之间的调控相互作用网络,即所谓的基因调控网络。由于交互元素的高维度和它们之间交互类型的复杂性,大多数感兴趣的网络都非常复杂。然后,必须有数学和计算建模框架来预测网络响应环境刺激的行为。一类特殊的常微分方程(ODE)已显示出足以描述基因调控网络动力学的基本特征。但是,通过这种模型的数值模拟得出网络动力学的定量预测在大多数情况下是不可行的,因为它们目前的特征是对调节相互作用下的生化反应和动力学参数的数值不完全了解。结果本文基于基因调节是阈值依赖性的假设(即仅在高于或低于某个阈值时才有效)的假设,为一类ODE模型提供了一个定性模拟的计算框架。我们提出的仿真算法假设,阈值相关的调节机制是通过连续的陡峭S形函数建模的,这与其他仿真工具不同,该工具通过用阈值中不连续的阶跃函数来近似阈值调节的响应函数,从而大大简化了问题。该算法源于方法之间的相互作用,以处理不完整的知识并研究在不同时间范围内发生的现象。结论本文提出的工作建立了声音的计算基础,并且建立了完整的算法,能够捕获仅依赖于网络结构并且动力学参数值范围不变的动力学特性。在目前的知识状态下,使用这种工具相当合适,对于了解特定活动模式如何从给定的网络结构中派生以及哪些不同类型的动态行为是很有用的。

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