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Accurate and cost-effective prediction of HBsAg titer in industrial scale fermentation process of recombinant Pichia pastoris by using neural network based soft sensor

机译:基于神经网络的软传感器的重组PICHIA牧场的工业规模发酵过程中的HBsAg滴度准确且经济高效地预测

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摘要

In the current work, the attempt was made to apply best-fitted artificial neural network (ANN) architecture and the respective training process for predicting final titer of hepatitis B surface antigen (HBsAg), produced intracellularly by recombinant Pichia pastoris Mut(+) in the commercial scale. For this purpose, in large-scale fed-batch fermentation, using methanol for HBsAg induction and cell growth, three parameters of average specific growth rate, biomass yield, and dry biomass concentration-in the definite integral form with respect to fermentation time-were selected as input vectors; the final concentration of HBsAg was selected for the ANN output. Used dataset consists of 38 runs from previous batches; feed-forward ANN 3:5:1 with training algorithm of backpropagation based on a Bayesian regularization was trained and tested with a high degree of accuracy. Implementing the verified ANN for predicting the HBsAg titer of the five new fermentation runs, excluded from the dataset, in the full-scale production, the coefficient of regression and root-mean-square error were found to be 0.969299 and 2.716774, respectively. These results suggest that this verified soft sensor could be an excellent alternative for the current relatively expensive and time-intensive analytical techniques such as enzyme-linked immunosorbent assay in the biopharmaceutical industry.
机译:在当前的工作中,尝试应用最佳拟合的人工神经网络(ANN)架构和预测乙型肝炎表面抗原(HBsAg)最终滴度的各自的培训方法,通过重组Pichia Pastoris mut(+)产生的细胞内产生商业规模。为此目的,在大规模的喂食批量发酵中,使用甲醇用于HBsAg诱导和细胞生长,相对于发酵时间的三个平均比生长速率,生物质产率和干生物量的三参数。选择为输入向量;选择HBsAg的最终浓度为ANN输出。二手数据集由38个来自之前批次的运行组成;前馈ANN 3:5:1采用基于贝叶斯正规化的训练算法进行了培训,并以高精度进行了测试和测试。实施已验证的ANN用于预测从数据集中排除的五个新发酵运行的HBsAg滴度,在全规模的生产中,发现回归系数和根均方误差分别为0.969299和2.716774。这些结果表明,该经过验证的软传感器可以是当前相对昂贵和时间密集的分​​析技术的优异替代方案,例如生物制药工业中的酶联免疫吸附测定。

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