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使用多元贝叶斯方法对酿酒酵母发酵生产治疗性重组蛋白过程的表征。

Characterization of a Saccharomyces cerevisiae fermentation process for production of a therapeutic recombinant protein using a multivariate Bayesian approach.

作者信息

Fu Zhibiao, Baker Daniel, Cheng Aili, Leighton Julie, Appelbaum Edward, Aon Juan

机构信息

Microbial and Cell Culture Development, Research and Development, GlaxoSmithKline, 709 Swedeland Road, King of Prussia, PA 19406, USA.

Global Manufacturing and Supply, GlaxoSmithKline, 893 River Road, Conshohocken, PA, 19428, USA.

出版信息

Biotechnol Prog. 2016 May;32(3):799-812. doi: 10.1002/btpr.2264. Epub 2016 Apr 20.

Abstract

The principle of quality by design (QbD) has been widely applied to biopharmaceutical manufacturing processes. Process characterization is an essential step to implement the QbD concept to establish the design space and to define the proven acceptable ranges (PAR) for critical process parameters (CPPs). In this study, we present characterization of a Saccharomyces cerevisiae fermentation process using risk assessment analysis, statistical design of experiments (DoE), and the multivariate Bayesian predictive approach. The critical quality attributes (CQAs) and CPPs were identified with a risk assessment. The statistical model for each attribute was established using the results from the DoE study with consideration given to interactions between CPPs. Both the conventional overlapping contour plot and the multivariate Bayesian predictive approaches were used to establish the region of process operating conditions where all attributes met their specifications simultaneously. The quantitative Bayesian predictive approach was chosen to define the PARs for the CPPs, which apply to the manufacturing control strategy. Experience from the 10,000 L manufacturing scale process validation, including 64 continued process verification batches, indicates that the CPPs remain under a state of control and within the established PARs. The end product quality attributes were within their drug substance specifications. The probability generated with the Bayesian approach was also used as a tool to assess CPP deviations. This approach can be extended to develop other production process characterization and quantify a reliable operating region. © 2016 American Institute of Chemical Engineers Biotechnol. Prog., 32:799-812, 2016.

摘要

质量源于设计(QbD)原则已广泛应用于生物制药生产过程。工艺表征是实施QbD概念以建立设计空间并定义关键工艺参数(CPP)的已验证可接受范围(PAR)的关键步骤。在本研究中,我们使用风险评估分析、实验设计(DoE)的统计方法以及多变量贝叶斯预测方法对酿酒酵母发酵过程进行了表征。通过风险评估确定了关键质量属性(CQA)和CPP。利用DoE研究的结果并考虑CPP之间的相互作用,为每个属性建立了统计模型。使用传统的重叠等高线图和多变量贝叶斯预测方法来确定所有属性同时满足其规格的工艺操作条件区域。选择定量贝叶斯预测方法来定义适用于生产控制策略的CPP的PAR。来自10000 L生产规模工艺验证(包括64个持续工艺验证批次)的经验表明,CPP仍处于受控状态且在既定的PAR范围内。最终产品的质量属性在其原料药规格范围内。贝叶斯方法产生的概率也用作评估CPP偏差的工具。这种方法可扩展用于开发其他生产工艺表征并量化可靠的操作区域。© 2016美国化学工程师学会生物技术进展,32:799 - 812,2016。

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