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Global Sensitivity Analysis as Good Modelling Practices tool for the identification of the most influential process parameters of the primary drying step during freeze-drying

机译:全球敏感性分析作为良好的建模实践工具,用于识别冻干期间初级干燥步骤最具影响力的过程参数

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摘要

Pharmaceutical batch freeze-drying is commonly used to improve the stability of biological therapeutics. The primary drying step is regulated by the dynamic settings of the adaptable process variables, shelf temperature Ts and chamber pressure Pc. Mechanistic modelling of the primary drying step leads to the optimal dynamic combination of these adaptable process variables in function of time. According to Good Modelling Practices, a Global Sensitivity Analysis (GSA) is essential for appropriate model building. In this study, both a regression-based and variance-based GSA were conducted on a validated mechanistic primary drying model to estimate the impact of several model input parameters on two output variables, the product temperature at the sublimation front Ti and the sublimation rate View the MathML source. Ts was identified as most influential parameter on both Ti and View the MathML source, followed by Pc and the dried product mass transfer resistance αRp for Ti and View the MathML source, respectively. The GSA findings were experimentally validated for View the MathML source via a Design of Experiments (DoE) approach. The results indicated that GSA is a very useful tool for the evaluation of the impact of different process variables on the model outcome, leading to essential process knowledge, without the need for time-consuming experiments (e.g., DoE).
机译:药物分批冻干通常用于改善生物治疗剂的稳定性。初级干燥步骤由适应性过程变量,搁架温度Ts和室压力PC的动态设置调节。主要干燥步骤的机械建模导致这些适应性过程变量的最佳动态组合在时间的时间内。根据良好的建模实践,全局敏感性分析(GSA)对于适当的模型建筑至关重要。在该研究中,对基于回归和基于方差的GSA进行了在验证的机制初级干燥模型上进行,以估计多个模型输入参数对两个输出变量的影响,升华前Ti的产品温度和升华率视图mathml源。 TS在TI上被识别为大多数有影响力的参数,并查看Mathml源,然后是PC和干燥的产品质量传递电阻αrp分别进行Ti并查看Mathml源。通过实验(DOE)方法设计,通过设计进行了实验验证的GSA调查结果。结果表明,GSA是评估不同过程变量对模型结果的影响的非常有用的工具,导致基本的过程知识,而无需耗时的实验(例如,DOE)。

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