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φ-evo: A program to evolve phenotypic models of biological networks

机译:φ-evo:进化生物网络表型模型的程序

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Molecular networks are at the core of most cellular decisions, but are often difficult to comprehend. Reverse engineering of network architecture from their functions has proved fruitful to classify and predict the structure and function of molecular networks, suggesting new experimental tests and biological predictions. We present φ-evo, an open-source program to evolve in silico phenotypic networks performing a given biological function. We include implementations for evolution of biochemical adaptation, adaptive sorting for immune recognition, metazoan development (somitogenesis, hox patterning), as well as Pareto evolution. We detail the program architecture based on C, Python 3, and a Jupyter interface for project configuration and network analysis. We illustrate the predictive power of φ-evo by first recovering the asymmetrical structure of the lac operon regulation from an objective function with symmetrical constraints. Second, we use the problem of hox-like embryonic patterning to show how a single effective fitness can emerge from multi-objective (Pareto) evolution. φ-evo provides an efficient approach and user-friendly interface for the phenotypic prediction of networks and the numerical study of evolution itself.
机译:分子网络是大多数细胞决策的核心,但通常难以理解。从网络结构的功能进行逆向工程已被证明可以有效地对分子网络的结构和功能进行分类和预测,从而提出了新的实验测试和生物学预测。我们提出了φ-evo,这是一个开放源程序,可在执行给定生物学功能的计算机表型网络中发展。我们包括生化适应性进化,免疫识别适应性分类,后生动物发育(体发生,霍克斯模式)以及帕累托进化的实现。我们详细介绍了基于C,Python 3和Jupyter接口的程序体系结构,用于项目配置和网络分析。我们通过首先从具有对称约束的目标函数中恢复lac操纵子调控的不对称结构,来说明φ-evo的预测能力。其次,我们使用类似hox的胚胎图案问题来说明如何从多目标(帕累托)进化中产生一种有效的适应度。 φ-evo为网络的表型预测和进化本身的数值研究提供了一种有效的方法和用户友好的界面。

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