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Optimisation of fed-batch culture of hybridoma cells using genetic algorithms

机译:利用遗传算法优化杂交瘤细胞的分批补料培养

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摘要

In this paper, a program describing a genetic algorithm is used for optimising fed-batch culture hybridoma cells to obtain the highest yield over certain time period. Optimal feed rate trajectories for a single feed stream containing both glucose and glutamine, and separate feed streams of glucose and glutamine are determined via the genetic algorithm. As compared to the optimal constant feed rate regime, optimal varying feed rate trajectories improve the final monoclonal antibodies concentration by 10% for the single feed rate case and by 39% for the multi feed rate case in this simulation. In comparsion with a dynamic programming, GA calculated feed trajectories yield a much higher level of monoclonal antibodies concentration.
机译:在本文中,使用描述遗传算法的程序来优化补料分批培养杂交瘤细胞,以在一定时间内获得最高产量。通过遗传算法确定包含葡萄糖和谷氨酰胺的单一进料流以及单独的葡萄糖和谷氨酰胺的进料流的最佳进料速率轨迹。与最佳恒定进料速率方案相比,在此模拟中,最佳进料速率变化轨迹将单次进料速率情况的最终单克隆抗体浓度提高了10%,将多进料速率情况的最终单克隆抗体浓度提高了39%。与动态编程相比,GA计算的进料轨迹可产生更高水平的单克隆抗体浓度。

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