Bioengineering (Oct 2021)

Integrated Process Model Applications Linking Bioprocess Development to Quality by Design Milestones

  • Christopher Taylor,
  • Lukas Marschall,
  • Marco Kunzelmann,
  • Michael Richter,
  • Frederik Rudolph,
  • Judith Vajda,
  • Beate Presser,
  • Thomas Zahel,
  • Joey Studts,
  • Christoph Herwig

DOI
https://doi.org/10.3390/bioengineering8110156
Journal volume & issue
Vol. 8, no. 11
p. 156

Abstract

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Maximizing the value of each available data point in bioprocess development is essential in order to reduce the time-to-market, lower the number of expensive wet-lab experiments, and maximize process understanding. Advanced in silico methods are increasingly being investigated to accomplish these goals. Within this contribution, we propose a novel integrated process model procedure to maximize the use of development data to optimize the Stage 1 process validation work flow. We generate an integrated process model based on available data and apply two innovative Monte Carlo simulation-based parameter sensitivity analysis linearization techniques to automate two quality by design activities: determining risk assessment severity rankings and establishing preliminary control strategies for critical process parameters. These procedures are assessed in a case study for proof of concept on a candidate monoclonal antibody bioprocess after process development, but prior to process characterization. The evaluation was successful in returning results that were used to support Stage I process validation milestones and demonstrated the potential to reduce the investigated parameters by up to 24% in process characterization, while simultaneously setting up a strategy for iterative updates of risk assessments and process controls throughout the process life-cycle to ensure a robust and efficient drug supply.

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