首页> 外文期刊>Biotechnology and Bioengineering >Predicting industrial-scale cell culture seed trains-A Bayesian framework for model fitting and parameter estimation, dealing with uncertainty in measurements and model parameters, applied to a nonlinear kinetic cell culture model, using an MCMC method
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Predicting industrial-scale cell culture seed trains-A Bayesian framework for model fitting and parameter estimation, dealing with uncertainty in measurements and model parameters, applied to a nonlinear kinetic cell culture model, using an MCMC method

机译:预测工业规模的细胞培养种子列车 - 一种用于模型拟合和参数估计的贝叶斯框架,处理测量和模型参数的不确定性,使用MCMC方法应用于非线性动力学细胞培养模型

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摘要

For production of biopharmaceuticals in suspension cell culture, seed trains are required to increase cell number from cell thawing up to production scale. Because cultivation conditions during the seed train have a significant impact on cell performance in production scale, seed train design, monitoring, and development of optimization strategies is important. This can be facilitated by model-assisted prediction methods, whereby the performance depends on the prediction accuracy, which can be improved by inclusion of prior process knowledge, especially when only few high-quality data is available, and description of inference uncertainty, providing, apart from a "best fit"-prediction, information about the probable deviation in form of a prediction interval. This contribution illustrates the application of Bayesian parameter estimation and Bayesian updating for seed train prediction to an industrial Chinese hamster ovarian cell culture process, coppled with a mechanistic model. It is shown in which way prior knowledge as well as input uncertainty (e.g., concerning measurements) can be included and be propagated to predictive uncertainty. The impact of available information on prediction accuracy was investigated. It has been shown that through integration of new data by the Bayesian updating method, process variability (i.e., batch-to-batch) could be considered. The implementation was realized using a Markov chain Monte Carlo method.
机译:对于悬浮细胞培养的生物制药生产,需要种子列车来增加从释放到生产规模的细胞中的细胞数。由于种子火车期间的栽培条件对生产规模中的细胞性能产生了重大影响,种子列车设计,监测和优化策略的发展是重要的。这可以通过模型辅助预测方法促进,从而性能取决于预测精度,这可以通过包括先前的过程知识来提高,尤其是当只有很少的高质量数据,以及推理不确定性的描述,提供,除了“最佳拟合” - 预测中,有关预测间隔形式的可能偏差的信息。这种贡献说明了贝叶斯参数估计和贝叶斯更新对种子训练对工业中国仓鼠卵巢细胞培养过程的应用,用机械模型进行了交流。示出了以哪种方式先验知识以及输入不确定性(例如,关于测量)可以包括并被传播到预测性不确定性。研究了可用信息对预测准确性的影响。已经表明,通过贝叶斯更新方法的新数据集成,可以考虑处理变异性(即批量批次)。使用马尔可夫链蒙特卡罗方法实现了实现。

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