Islam R S, Tisi D, Levy M S, Lye G J
The Advanced Centre for Biochemical Engineering, Department of Biochemical Engineering, University College London, Torrington Place, London WC1E 7JE, U.K.
Biotechnol Prog. 2007 Jul-Aug;23(4):785-93. doi: 10.1021/bp070059a. Epub 2007 Jun 26.
A major bottleneck in drug discovery is the production of soluble human recombinant protein in sufficient quantities for analysis. This problem is compounded by the complex relationship between protein yield and the large number of variables which affect it. Here, we describe a generic framework for the rapid identification and optimization of factors affecting soluble protein yield in microwell plate fermentations as a prelude to the predictive and reliable scaleup of optimized culture conditions. Recombinant expression of firefly luciferase in Escherichia coli was used as a model system. Two rounds of statistical design of experiments (DoE) were employed to first screen (D-optimal design) and then optimize (central composite face design) the yield of soluble protein. Biological variables from the initial screening experiments included medium type and growth and induction conditions. To provide insight into the impact of the engineering environment on cell growth and expression, plate geometry, shaking speed, and liquid fill volume were included as factors since these strongly influence oxygen transfer into the wells. Compared to standard reference conditions, both the screening and optimization designs gave up to 3-fold increases in the soluble protein yield, i.e., a 9-fold increase overall. In general the highest protein yields were obtained when cells were induced at a relatively low biomass concentration and then allowed to grow slowly up to a high final biomass concentration, >8 g.L-1. Consideration and analysis of the model results showed 6 of the original 10 variables to be important at the screening stage and 3 after optimization. The latter included the microwell plate shaking speeds pre- and postinduction, indicating the importance of oxygen transfer into the microwells and identifying this as a critical parameter for subsequent scale translation studies. The optimization process, also known as response surface methodology (RSM), predicted there to be a distinct optimum set of conditions for protein expression which could be verified experimentally. This work provides a generic approach to protein expression optimization in which both biological and engineering variables are investigated from the initial screening stage. The application of DoE reduces the total number of experiments needed to be performed, while experimentation at the microwell scale increases experimental throughput and reduces cost.
药物研发中的一个主要瓶颈是生产出足够数量的可溶性人重组蛋白用于分析。蛋白质产量与大量影响因素之间的复杂关系使这个问题更加复杂。在此,我们描述了一个通用框架,用于在微孔板发酵中快速识别和优化影响可溶性蛋白产量的因素,作为优化培养条件的预测性和可靠放大的前奏。萤火虫荧光素酶在大肠杆菌中的重组表达被用作模型系统。采用两轮实验设计(DoE)统计方法,首先进行筛选(D - 最优设计),然后进行优化(中心复合表面设计)以提高可溶性蛋白产量。初始筛选实验中的生物学变量包括培养基类型、生长和诱导条件。为了深入了解工程环境对细胞生长和表达的影响,将平板几何形状、振荡速度和液体填充体积作为因素纳入,因为这些因素强烈影响氧气向孔内的传递。与标准参考条件相比,筛选和优化设计均使可溶性蛋白产量提高了至多3倍,即总体提高了9倍。一般来说,当细胞在相对较低的生物量浓度下诱导,然后缓慢生长至较高的最终生物量浓度(>8 g.L-1)时,可获得最高的蛋白质产量。对模型结果的考量和分析表明,最初的10个变量中有6个在筛选阶段很重要,优化后有3个重要。后者包括诱导前后微孔板的振荡速度,这表明氧气向微孔内传递的重要性,并将其确定为后续规模转化研究的关键参数。优化过程,也称为响应面方法(RSM),预测存在一组独特的蛋白质表达最佳条件,这可以通过实验验证。这项工作提供了一种通用的蛋白质表达优化方法,其中从初始筛选阶段就对生物学和工程变量进行研究。DoE的应用减少了需要进行的实验总数,而微孔规模的实验提高了实验通量并降低了成本。