Literature DB >> 28159368

Estimation of adsorption isotherm and mass transfer parameters in protein chromatography using artificial neural networks.

Gang Wang1, Till Briskot1, Tobias Hahn2, Pascal Baumann1, Jürgen Hubbuch3.   

Abstract

Mechanistic modeling has been repeatedly successfully applied in process development and control of protein chromatography. For each combination of adsorbate and adsorbent, the mechanistic models have to be calibrated. Some of the model parameters, such as system characteristics, can be determined reliably by applying well-established experimental methods, whereas others cannot be measured directly. In common practice of protein chromatography modeling, these parameters are identified by applying time-consuming methods such as frontal analysis combined with gradient experiments, curve-fitting, or combined Yamamoto approach. For new components in the chromatographic system, these traditional calibration approaches require to be conducted repeatedly. In the presented work, a novel method for the calibration of mechanistic models based on artificial neural network (ANN) modeling was applied. An in silico screening of possible model parameter combinations was performed to generate learning material for the ANN model. Once the ANN model was trained to recognize chromatograms and to respond with the corresponding model parameter set, it was used to calibrate the mechanistic model from measured chromatograms. The ANN model's capability of parameter estimation was tested by predicting gradient elution chromatograms. The time-consuming model parameter estimation process itself could be reduced down to milliseconds. The functionality of the method was successfully demonstrated in a study with the calibration of the transport-dispersive model (TDM) and the stoichiometric displacement model (SDM) for a protein mixture.
Copyright © 2017 The Author(s). Published by Elsevier B.V. All rights reserved.

Keywords:  Artificial neural networks; Ion-exchange chromatography; Parameter estimation; Protein chromatography modeling

Mesh:

Substances:

Year:  2017        PMID: 28159368     DOI: 10.1016/j.chroma.2017.01.068

Source DB:  PubMed          Journal:  J Chromatogr A        ISSN: 0021-9673            Impact factor:   4.759


  3 in total

1.  Digital Twins in Biomanufacturing.

Authors:  Steffen Zobel-Roos; Axel Schmidt; Lukas Uhlenbrock; Reinhard Ditz; Dirk Köster; Jochen Strube
Journal:  Adv Biochem Eng Biotechnol       Date:  2021       Impact factor: 2.635

2.  Prediction of the performance of pre-packed purification columns through machine learning.

Authors:  Qihao Jiang; Sohan Seth; Theresa Scharl; Tim Schroeder; Alois Jungbauer; Simone Dimartino
Journal:  J Sep Sci       Date:  2022-03-20       Impact factor: 3.614

Review 3.  White paper on high-throughput process development for integrated continuous biomanufacturing.

Authors:  Mariana N São Pedro; Tiago C Silva; Rohan Patil; Marcel Ottens
Journal:  Biotechnol Bioeng       Date:  2021-04-02       Impact factor: 4.530

  3 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.