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Robust parameter estimation during logistic modeling of batch and fed‐batch culture kinetics
Authors:Chetan T Goudar  Konstantinov B Konstantinov  James M Piret
Institution:1. Cell Culture Development, Global Biologics Development, Bayer HealthCare, 800 Dwight Way, Berkeley, CA 94710;2. Genzyme Corporation, 45 New York Ave, Framingham, MA 01701;3. Michael Smith Laboratories and Dept. of Chemical and Biological Engineering, University of British Columbia, Vancouver, BC V6T 1Z3, Canada
Abstract:Methods for robust logistic modeling of batch and fed‐batch mammalian cell cultures are presented in this study. Linearized forms of the logistic growth, logistic decline, and generalized logistic equation were derived to obtain initial estimates of the parameters by linear least squares. These initial estimates facilitated subsequent determination of refined values by nonlinear optimization using three different algorithms. Data from BHK, CHO, and hybridoma cells in batch or fed‐batch cultures at volumes ranging from 100 mL–300 L were tested with the above approach and solution convergence was obtained for all three nonlinear optimization approaches for all data sets. This result, despite the sensitivity of logistic equations to parameter variation because of their exponential nature, demonstrated that robust estimation of logistic parameters was possible by this combination of linearization followed by nonlinear optimization. The approach is relatively simple and can be implemented in a spreadsheet to robustly model mammalian cell culture batch or fed‐batch data. © 2009 American Institute of Chemical Engineers Biotechnol. Prog., 2009
Keywords:batch  fed‐batch  mammalian cell culture  nonlinear optimization  logistic equation  modeling
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