Modeling Networks of Evolving Populations

S. Elliott
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Abstract

The goal of this research is to devise a method of differential equation based modeling of evolution that can scale up to capture complex dynamics by enabling the inclusion of many—potentially thousands—of biological characteristics. Towards that goal, a mathematical model for evolution based on the well-established Fisher-Eigen process is built with a unique and efficient structure. The Fisher-Eigen partial differential equation (PDE) describes the evolution of a probability density function representing the distribution of a population over a phenotype space. This equation depends on the choice of a fitness function representing the likelihood of reproductive success at each point in the phenotype space. The Fisher-Eigen model has been studied analytically for simple fitness functions, but in general no analytic solution is known. Furthermore, with traditional numerical methods, the equation becomes exponentially complex to simulate as the dimensionality of the problem expands to include more phenotypes. For this research, a network model is synthesized and a set of ordinary differential equations (ODEs) is extracted based on the Fisher-Eigen PDE to describe the dynamic behavior of the system. It is demonstrated that, when juxtaposed with full numerical PDE simulations, this ODE model finds well-matched transient and precise equilibrium solutions. This prototype method makes modeling of high-dimensional data possible, allowing researchers to examine and even predict complex dynamic behavior based on a snapshot of a population. KEYWORDS: Evolutionary Modeling; Mathematical Biology; Network Dynamics; Ordinary Differential Equations; Partial Differential Equations; Fisher-Eigen model; Phenotype; Fitness Function
进化种群的网络建模
这项研究的目标是设计一种基于微分方程的进化建模方法,该方法可以通过包含许多——可能是数千个——生物特征来放大以捕捉复杂的动力学。为了实现这一目标,建立了一个基于公认的Fisher特征过程的进化数学模型,该模型具有独特而有效的结构。Fisher特征偏微分方程(PDE)描述了概率密度函数的演化,该函数表示种群在表型空间上的分布。该方程取决于适应度函数的选择,该适应度函数表示表型空间中每个点的繁殖成功的可能性。对于简单的适应度函数,已经对Fisher特征模型进行了解析研究,但通常还不知道解析解。此外,使用传统的数值方法,随着问题的维度扩展到包括更多表型,方程的模拟变得指数复杂。在本研究中,综合了一个网络模型,并基于Fisher特征PDE提取了一组常微分方程(ODE)来描述系统的动态行为。结果表明,当与全数值PDE模拟并置时,该ODE模型可以找到匹配良好的瞬态和精确的平衡解。这种原型方法使高维数据的建模成为可能,使研究人员能够根据人群的快照来检查甚至预测复杂的动态行为。关键词:进化建模;数学生物学;网络动力学;常微分方程;偏微分方程;Fisher-Eigen模型;表型;健身功能
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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