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首页> 外文期刊>Biotechnology Journal: Healthcare,Nutrition,Technology >Examination of a genetic algorithm for the application in high-throughput downstream process development
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Examination of a genetic algorithm for the application in high-throughput downstream process development

机译:遗传算法在高通量下游工艺开发中的应用研究

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Compared to traditional strategies, application of high-throughput experiments combined with optimization methods can potentially speed up downstream process development and increase our understanding of processes. In contrast to the method of Design of Experiments in combination with response surface analysis (RSA), optimization approaches like genetic algorithms (GAs) can be applied to identify optimal parameter settings in multidimensional optimizations tasks. In this article the performance of a GA was investigated applying parameters applicable in high-throughput downstream process development. The influence of population size, the design of the initial generation and selection pressure on the optimization results was studied. To mimic typical experimental data, four mathematical functions were used for an In silico evaluation. The influence of GA parameters was minor on landscapes with only one optimum. On landscapes with several optima, parameters had a significant impact on GA performance and success in finding the global optimum. Premature convergence increased as the number of parameters and noise increased. RSA was shown to be comparable or superior for simple systems and low to moderate noise. For complex systems or high noise levels, RSA failed, while GA optimization represented a robust tool for process optimization. Finally, the effect of different objective functions is shown ex-emplarily for a refolding optimization of lysozyme.
机译:与传统策略相比,将高通量实验与优化方法相结合可以潜在地加快下游流程的开发并提高我们对流程的理解。与结合响应面分析(RSA)的实验设计方法相比,可以将遗传算法(GA)等优化方法应用于多维优化任务中的最佳参数设置。在本文中,使用适用于高通量下游工艺开发的参数研究了遗传算法的性能。研究了种群大小,初始代的设计和选择压力对优化结果的影响。为了模拟典型的实验数据,对Insilico评估使用了四个数学函数。 GA参数对景观的影响很小,只有一个最优值。在具有多个最优值的景观上,参数对GA性能和寻找全局最优值的成功有重大影响。参数和噪声数量的增加会导致过早收敛。 RSA被证明在简单系统和低至中等噪声方面具有可比性或优越性。对于复杂的系统或高噪声水平,RSA失败了,而GA优化则代表了用于过程优化的强大工具。最后,示例性地显示了不同目标函数的作用,以实现溶菌酶的重折叠优化。

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