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CamOptimus: a tool for exploiting complex adaptive evolution to optimize experiments and processes in biotechnology

机译:Camoptimus:一种用于利用复杂的自适应演进的工具,以优化生物技术的实验和过程

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Multiple interacting factors affect the performance of engineered biological systems in synthetic biology projects. The complexity of these biological systems means that experimental design should often be treated as a multiparametric optimization problem. However, the available methodologies are either impractical, due to a combinatorial explosion in the number of experiments to be performed, or are inaccessible to most experimentalists due to the lack of publicly available, user-friendly software. Although evolutionary algorithms may be employed as alternative approaches to optimize experimental design, the lack of simple-to-use software again restricts their use to specialist practitioners. In addition, the lack of subsidiary approaches to further investigate critical factors and their interactions prevents the full analysis and exploitation of the biotechnological system. We have addressed these problems and, here, provide a simple‐to‐use and freely available graphical user interface to empower a broad range of experimental biologists to employ complex evolutionary algorithms to optimize their experimental designs. Our approach exploits a Genetic Algorithm to discover the subspace containing the optimal combination of parameters, and Symbolic Regression to construct a model to evaluate the sensitivity of the experiment to each parameter under investigation. We demonstrate the utility of this method using an example in which the culture conditions for the microbial production of a bioactive human protein are optimized. CamOptimus is available through: ( https://doi.org/10.17863/CAM.10257 ).
机译:多种交互因素影响合成生物项目中工程生物系统的性能。这些生物系统的复杂性意味着实验设计通常应该被视为多体优化问题。然而,由于在要执行的实验数量的组合爆炸中,可行方法是不切实际的,因为由于缺乏公开的,用户友好的软件,大多数实验主义者无法访问。尽管可以采用进化算法作为优化实验设计的替代方法,但缺乏易用软件再次限制他们对专业从业者的用途。此外,缺乏附属方法进一步调查关键因素及其相互作用可以防止生物技术系统的全部分析和开发。我们已经解决了这些问题,在这里,提供了一种简单和自由的图形用户界面,以赋予广泛的实验生物学家来采用复杂的进化算法来优化其实验设计。我们的方法利用遗传算法来发现包含参数最佳组合的子空间和符号回归,构建模型以评估在调查中对每个参数的实验的敏感性。我们使用该实例证明了该方法的效用,其中优化了生物活性人蛋白的微生物产生的培养条件。 Camoptimus可通过:( https://doi.org/10.17863/cam.10257)。

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