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Design Space Toolbox V2: Automated Software Enabling a Novel Phenotype-Centric Modeling Strategy for Natural and Synthetic Biological Systems

机译:Design Space Toolbox V2:自动化软件为自然和合成生物系统启用新型表型为中心的建模策略

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摘要

Mathematical models of biochemical systems provide a means to elucidate the link between the genotype, environment, and phenotype. A subclass of mathematical models, known as mechanistic models, quantitatively describe the complex non-linear mechanisms that capture the intricate interactions between biochemical components. However, the study of mechanistic models is challenging because most are analytically intractable and involve large numbers of system parameters. Conventional methods to analyze them rely on local analyses about a nominal parameter set and they do not reveal the vast majority of potential phenotypes possible for a given system design. We have recently developed a new modeling approach that does not require estimated values for the parameters initially and inverts the typical steps of the conventional modeling strategy. Instead, this approach relies on architectural features of the model to identify the phenotypic repertoire and then predict values for the parameters that yield specific instances of the system that realize desired phenotypic characteristics. Here, we present a collection of software tools, the Design Space Toolbox V2 based on the System Design Space method, that automates (1) enumeration of the repertoire of model phenotypes, (2) prediction of values for the parameters for any model phenotype, and (3) analysis of model phenotypes through analytical and numerical methods. The result is an enabling technology that facilitates this radically new, phenotype-centric, modeling approach. We illustrate the power of these new tools by applying them to a synthetic gene circuit that can exhibit multi-stability. We then predict values for the system parameters such that the design exhibits 2, 3, and 4 stable steady states. In one example, inspection of the basins of attraction reveals that the circuit can count between three stable states by transient stimulation through one of two input channels: a positive channel that increases the count, and a negative channel that decreases the count. This example shows the power of these new automated methods to rapidly identify behaviors of interest and efficiently predict parameter values for their realization. These tools may be applied to understand complex natural circuitry and to aid in the rational design of synthetic circuits.
机译:生化系统的数学模型提供了一种方法,以阐明基因型,环境和表型之间的联系。数学模型的一个子类,称为机械模型,定量描述了复杂的非线性机制,这些机制捕获了生化成分之间的复杂相互作用。但是,机械模型的研究具有挑战性,因为大多数模型在分析上都是棘手的,并且涉及大量系统参数。分析它们的常规方法依赖于对标称参数集的局部分析,并且它们没有揭示给定系统设计可能的绝大多数潜在表型。我们最近开发了一种新的建模方法,该方法最初不需要参数的估计值,并且可以颠倒常规建模策略的典型步骤。取而代之的是,此方法依赖于模型的体系结构特征来识别表型库,然后预测参数的值,这些参数会产生实现所需表型特征的系统特定实例。在这里,我们展示了一套软件工具,即基于System Design Space方法的Design Space Toolbox V2,该工具可以自动(1)枚举模型表型库,(2)预测任何模型表型的参数值, (3)通过分析和数值方法分析模型表型。结果是一种促成技术,可促进这种全新的,以表型为中心的建模方法。我们通过将这些新工具应用于可以表现出多重稳定性的合成基因电路来说明它们的强大功能。然后,我们预测系统参数的值,以使设计呈现2、3和4个稳定的稳态。在一个示例中,对吸引盆的检查表明,通过两个输入通道之一的瞬态刺激,电路可以在三个稳定状态之间进行计数:一个增加计数的正通道和一个减少计数的负通道。此示例显示了这些新的自动化方法的功能,可以快速识别感兴趣的行为并有效地预测参数值以实现这些行为。这些工具可用于理解复杂的自然电路并有助于合成电路的合理设计。

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