| Literature DB >> 26399784 |
Michael Sokolov1, Miroslav Soos1, Benjamin Neunstoecklin1, Massimo Morbidelli1, Alessandro Butté1, Riccardo Leardi2, Thomas Solacroup3, Matthieu Stettler3, Hervé Broly3.
Abstract
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.Entities:
Keywords: cell culture process; multivariate data analysis; partial least squares regression; principal component analysis; quality by design
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Year: 2015 PMID: 26399784 DOI: 10.1002/btpr.2174
Source DB: PubMed Journal: Biotechnol Prog ISSN: 1520-6033