首页> 外文期刊>The Canadian Journal of Chemical Engineering >Artificial neural network-genetic algorithm (ANN-GA) based medium optimization for the production of human interferon gamma (hIFN-gamma) in Kluyveromyces lactis cell factory
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Artificial neural network-genetic algorithm (ANN-GA) based medium optimization for the production of human interferon gamma (hIFN-gamma) in Kluyveromyces lactis cell factory

机译:基于人工神经网络 - 遗传算法(Ann-Ga)克鲁苜蓿乳酸乳乳乳乳菇(HIFN-Gamma)生产中的培养基优化

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In the current investigation, we have adapted response surface methodology (RSM) and artificial neural network-genetic algorithm (ANN-GA) based optimization to develop a defined medium for maximizing human interferon gamma production from recombinant Kluyveromyces lactis (K. lactis). In the initial screening studies, sorbitol and glycine emerged as a carbon and nitrogen source respectively having higher influence on hIFN-gamma production. Substrate inhibition studies were performed by varying the initial substrate concentration, and we found maximum hIFN-gamma concentration at 50 g L-1 of sorbitol. Inhibition kinetics studies were carried out using 3 and 4-parametric models. Among the estimated models, the Moser model was observed as the best fitted model followed by the Luong model with R-2 values of 0.882 and 0.75, respectively. The model acceptability test was carried out using the extra sum of squares F-test and Akaike information criterion (AIC). The Plackett-Burman multifactorial design identified sorbitol, glycine, Na2HPO4, and MgSO4.7H(2)O as the parameters significantly influencing the hIFN-gamma production. Further, the Box-Behnken design (BBD) followed by the artificial neural network coupled with genetic algorithm (ANN-GA) was employed for the precise optimization of medium components. With ANN-GA a maximum hIFN-gamma yield of 2.1 +/- 0.3 mg L-1 in shake flask level and 3.5 +/- 0.1 mg L-1 in reactor level was achieved. The findings of this study serve as a model for a process development strategy (bench scale to reactor scale) to achieve a high productivity of the desired protein from a microbial cell factory.
机译:在当前的调查中,我们具有基于响应表面方法(RSM)和人工神经网络 - 遗传算法(Ann-Ga)的优化,以开发用于最大化来自重组Kluyveromyces乳酸(K.Lactis)的人干扰素γ产生的定义培养基。在初始筛选研究中,山梨糖醇和甘氨酸作为碳和氮源出现,分别对HIFN-Gamma生产具有较高影响。通过改变初始衬底浓度来进行底物抑制研究,并且我们发现在山梨糖醇的50g L-1处的最大HIFN-Gamma浓度。使用3和4个参数模型进行抑制动力学研究。在估计的模型中,将被观察到MOSER模型作为最佳拟合模型,然后是Luong模型分别为0.882和0.75的R-2值。使用额外的方块F-Test和Akaike信息标准(AIC)进行模型可接受性测试。 Plackett-Burman Multifactorial设计鉴定了山梨糖醇,甘氨酸,Na2HPO4和MgSO4.7H(2)O作为显着影响HIFN-Gamma生产的参数。此外,采用与遗传算法(Ann-Ga)耦合的人工神经网络的Box-Behnken设计(BBD)用于培养基组分的精确优化。达到Ann-Ga的Ann-Ga最大HIFN-GAMMA产率为2.1 +/- 0.3mg L-1,在反应器水平中达到3.5 +/- 0.1mg L-1。本研究的结果用作过程开发策略(基准尺度与反应堆量表)的模型,以实现来自微生物细胞厂的所需蛋白质的高生产率。

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