2024
DOI: 10.1002/biot.202400080
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Novel calibration design improves knowledge transfer across products for the characterization of pharmaceutical bioprocesses

Laura M. Helleckes,
Claus Wirnsperger,
Jakub Polak
et al.

Abstract: Modern machine learning has the potential to fundamentally change the way bioprocesses are developed. In particular, horizontal knowledge transfer methods, which seek to exploit data from historical processes to facilitate process development for a new product, provide an opportunity to rethink current workflows. In this work, we first assess the potential of two knowledge transfer approaches, meta learning and one‐hot encoding, in combination with Gaussian process (GP) models. We compare their performance wit… Show more

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