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首页> 外文期刊>Biotechnology and Bioengineering >The simplex algorithm for the rapid identification of operating conditions during early bioprocess development: Case studies in FAb' precipitation and multimodal chromatography
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The simplex algorithm for the rapid identification of operating conditions during early bioprocess development: Case studies in FAb' precipitation and multimodal chromatography

机译:在早期生物过程开发过程中快速识别操作条件的单纯形算法:FAb沉淀和多峰色谱的案例研究

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This study describes a data-driven algorithm as a rapid alternative to conventional Design of Experiments (DoE) approaches for identifying feasible operating conditions during early bioprocess development. In general, DoE methods involve fitting regression models to experimental data, but if model fitness is inadequate then further experimentation is required to gain more confidence in the location of an optimum. This can be undesirable during very early process development when feedstock is in limited supply and especially if a significant percentage of the tested conditions are ultimately found to be sub-optimal. An alternative approach involves focusing solely upon the feasible regions by using the knowledge gained from each condition to direct the choice of subsequent test locations that lead towards an optimum. To illustrate the principle, this study describes the application of the Simplex algorithm which uses accumulated knowledge from previous test points to direct the choice of successive conditions towards better regions. The method is illustrated by two case studies; a two variable precipitation example investigating how salt concentration and pH affect FAb' recovery from E. coli homogenate and a three-variable chromatography example identifying the optimal pH and concentrations of two salts in an elution buffer used to recover ovine antibody bound to a multimodal cation exchange matrix. Two-level and face-centered central composite regression models were constructed for each study and statistical analysis showed that they provided a poor fit to the data, necessitating additional experimentation to confirm the robust regions of the search space. By comparison, the Simplex algorithm identified a good operating point using 50% and 70% fewer conditions for the precipitation and chromatography studies, respectively. Hence, data-driven approaches have significant potential for early process development when material supply is at a premium.
机译:这项研究描述了一种数据驱动算法,可作为常规实验设计(DoE)方法的快速替代方案,用于在早期生物过程开发过程中识别可行的操作条件。通常,DoE方法涉及将回归模型拟合到实验数据,但是如果模型适用性不足,则需要进行进一步的实验以获得对最佳位置的更多信心。在原料供应有限的非常早期的工艺开发过程中,尤其是如果最终发现很大比例的测试条件不理想时,这可能是不希望的。一种替代方法涉及通过使用从每种条件获得的知识来仅关注可行区域,以指导选择导致最佳状态的后续测试位置。为了说明该原理,本研究描述了单纯形算法的应用,该算法使用来自先前测试点的累积知识将连续条件的选择引向更好的区域。通过两个案例研究说明了该方法。一个两个变量沉淀的例子,研究盐浓度和pH如何影响从大肠杆菌匀浆中回收FAb',另一个三个变量色谱的例子,确定洗脱缓冲液中用于回收与多峰阳离子结合的绵羊抗体的最佳pH和两种盐的浓度交换矩阵。为每项研究构建了两级且以面部为中心的中央复合回归模型,统计分析表明它们不能很好地拟合数据,因此需要进行额外的实验来确认搜索空间的稳固区域。相比之下,Simplex算法通过减少50%和70%的沉淀和色谱研究条件分别确定了良好的工作点。因此,当材料供应非常宝贵时,数据驱动的方法对于早期工艺开发具有巨大的潜力。

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