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Smart process development: Application of machine-learning and integrated process modeling for inclusion body purification processes
Authors:Cornelia Walther  Martin Voigtmann  Elena Bruna  Ali Abusnina  Anne-Luise Tscheließnig  Michael Allmer  Hermann Schuchnigg  Cécile Brocard  Alexandra Föttinger-Vacha  Georg Klima
Institution:1. Process Science, Boehringer-Ingelheim RCV GmbH & CoKG, Wien, Austria;2. Process Science, Boehringer-Ingelheim RCV GmbH & CoKG, Wien, Austria

Contribution: Conceptualization (equal), ?Investigation (equal), Writing - original draft (equal);3. BI X GmbH, Ingelheim, Germany

Contribution: Conceptualization (equal), ?Investigation (equal), Writing - original draft (equal), Writing - review & editing (equal);4. BI X GmbH, Ingelheim, Germany

Aramco, Dhahran, Saudi Arabia

Contribution: Conceptualization (equal), ?Investigation (equal);5. Process Science, Boehringer-Ingelheim RCV GmbH & CoKG, Wien, Austria

Takeda Pharmaceuticals, Vienna, Austria

Contribution: Conceptualization (equal), Supervision (equal), Writing - review & editing (equal);6. Process Science, Boehringer-Ingelheim RCV GmbH & CoKG, Wien, Austria

Contribution: Conceptualization (equal), ?Investigation (supporting), Supervision (equal), Writing - review & editing (supporting);7. Process Science, Boehringer-Ingelheim RCV GmbH & CoKG, Wien, Austria

Contribution: Conceptualization (equal), Supervision (supporting), Writing - review & editing (supporting);8. Process Science, Boehringer-Ingelheim RCV GmbH & CoKG, Wien, Austria

Contribution: Supervision (equal), Writing - review & editing (equal);9. Process Science, Boehringer-Ingelheim RCV GmbH & CoKG, Wien, Austria

Contribution: Writing - review & editing (supporting);10. Process Science, Boehringer-Ingelheim RCV GmbH & CoKG, Wien, Austria

Contribution: Writing - review & editing (equal)

Abstract:The development of a biopharmaceutical production process usually occurs sequentially, and tedious optimization of each individual unit operation is very time-consuming. Here, the conditions established as optimal for one-step serve as input for the following step. Yet, this strategy does not consider potential interactions between a priori distant process steps and therefore cannot guarantee for optimal overall process performance. To overcome these limitations, we established a smart approach to develop and utilize integrated process models using machine learning techniques and genetic algorithms. We evaluated the application of the data-driven models to explore potential efficiency increases and compared them to a conventional development approach for one of our development products. First, we developed a data-driven integrated process model using gradient boosting machines and Gaussian processes as machine learning techniques and a genetic algorithm as recommendation engine for two downstream unit operations, namely solubilization and refolding. Through projection of the results into our large-scale facility, we predicted a twofold increase in productivity. Second, we extended the model to a three-step model by including the capture chromatography. Here, depending on the selected baseline-process chosen for comparison, we obtained between 50% and 100% increase in productivity. These data show the successful application of machine learning techniques and optimization algorithms for downstream process development. Finally, our results highlight the importance of considering integrated process models for the whole process chain, including all unit operations.
Keywords:downstream process  genetic algorithm  inclusion body  integrated process model  machine learning
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