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首页> 外文期刊>Biotechnology Progress >Fingerprint Detection and Process Prediction by Multivariate Analysis of Fed-Batch Monoclonal Antibody Cell Culture Data
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Fingerprint Detection and Process Prediction by Multivariate Analysis of Fed-Batch Monoclonal Antibody Cell Culture Data

机译:补料分批单克隆抗体细胞培养数据的多元分析指纹检测和过程预测

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摘要

This work presents a sequential data analysis path, which was successfully applied to identify important patterns (fingerprints) in mammalian cell culture process data regarding process variables, time evolution and process response. The data set incorporates 116 fed-batch cultivation experiments for the production of a Fc-Fusion protein. Having precharacterized the evolutions of the investigated variables and manipulated parameters with univariate analysis, principal component analysis (PCA) and partial least squares regression (PLSR) are used for further investigation. The first major objective is to capture and understand the interaction structure and dynamic behavior of the process variables and the titer (process response) using different models. The second major objective is to evaluate those models regarding their capability to characterize and predict the titer production. Moreover, the effects of data unfolding, imputation of missing data, phase separation, and variable transformation on the performance of the models are evaluated. (C) 2015 American Institute of Chemical Engineers
机译:这项工作提出了一种顺序数据分析路径,该路径已成功应用于识别哺乳动物细胞培养过程数据中有关过程变量,时间演变和过程响应的重要模式(指纹)。该数据集包含116个分批补料培养实验,用于生产Fc融合蛋白。通过单变量分析预先表征了研究变量和操纵参数的演变,将主成分分析(PCA)和偏最小二乘回归(PLSR)用于进一步研究。第一个主要目标是使用不同的模型来捕获和理解过程变量和效价(过程响应)的相互作用结构和动态行为。第二个主要目标是评估这些模型表征和预测效价生产的能力。此外,评估了数据展开,缺失数据的插补,相分离和变量转换对模型性能的影响。 (C)2015美国化学工程师学会

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