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Identifying the preferred subset of enzymatic profiles in nonlinear kinetic metabolic models via multiobjective global optimization and pareto filters

机译:通过多目标全局优化和帕累托滤波器识别非线性动力学代谢模型中酶促谱的优选子集

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摘要

Optimization models in metabolic engineering and systems biology focus typically on optimizing a unique criterion, usually the synthesis rate of a metabolite of interest or the rate of growth. Connectivity and non-linear regulatory effects, however, make it necessary to consider multiple objectives in order to identify useful strategies that balance out different metabolic issues. This is a fundamental aspect, as optimization of maximum yield in a given condition may involve unrealistic values in other key processes. Due to the difficulties associated with detailed non-linear models, analysis using stoichiometric descriptions and linear optimization methods have become rather popular in systems biology. However, despite being useful, these approaches fail in capturing the intrinsic nonlinear nature of the underlying metabolic systems and the regulatory signals involved. Targeting more complex biological systems requires the application of global optimization methods to non-linear representations. In this work we address the multi-objective global optimization of metabolic networks that are described by a special class of models based on the power-law formalism: the generalized mass action (GMA) representation. Our goal is to develop global optimization methods capable of efficiently dealing with several biological criteria simultaneously. In order to overcome the numerical difficulties of dealing with multiple criteria in the optimization, we propose a heuristic approach based on the epsilon constraint method that reduces the computational burden of generating a set of Pareto optimal alternatives, each achieving a unique combination of objectives values. To facilitate the post-optimal analysis of these solutions and narrow down their number prior to being tested in the laboratory, we explore the use of Pareto filters that identify the preferred subset of enzymatic profiles. We demonstrate the usefulness of our approach by means of a case study that optimizes the ethanol production in the fermentation of Saccharomyces cerevisiae.
机译:代谢工程和系统生物学中的优化模型通常专注于优化唯一标准,通常是目标代谢物的合成速率或生长速率。然而,连通性和非线性调节作用使得有必要考虑多个目标,以找出平衡不同代谢问题的有用策略。这是一个基本方面,因为在给定条件下优化最大产量可能会在其他关键过程中涉及不切实际的价值。由于与详细的非线性模型相关的困难,使用化学计量描述和线性优化方法进行分析已在系统生物学中变得非常流行。然而,尽管有用,但这些方法未能捕获潜在的新陈代谢系统和所涉及的调节信号的固有非线性性质。针对更复杂的生物系统,需要将全局优化方法应用于非线性表示。在这项工作中,我们解决了新的代谢网络的多目标全局优化问题,这是由一类基于幂律形式主义的特殊模型描述的:广义质量作用(GMA)表示。我们的目标是开发能够同时有效处理多种生物学标准的全局优化方法。为了克服在优化中处理多个标准的数值困难,我们提出了一种基于epsilon约束方法的启发式方法,该方法减少了生成一组Pareto最优替代方案的计算负担,每个替代方案均实现了目标值的唯一组合。为便于对这些解决方案进行优化后分析,并在实验室进行测试之前缩小其数量,我们探索使用帕累托过滤器来识别酶学特性的优选子集。我们通过案例研究证明了我们方法的有效性,该案例优化了酿酒酵母发酵中乙醇的生产。

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