Biomanufacturing Harvest Optimization with Small Data
Bo Wang, Wei Xie, Tugce Martagan, Alp Akcay, Bram van Ravenstein

TL;DR
This paper presents a Bayesian decision-making framework for optimizing fermentation harvesting in biomanufacturing under model risk due to limited data, leading to improved output and reduced variability.
Contribution
It introduces a stochastic model combined with a Bayesian approach and Markov decision process to better handle model risk in fermentation harvesting decisions with small data.
Findings
Higher average output achieved in case studies.
Lower batch-to-batch variability demonstrated.
Improved decision-making under data scarcity.
Abstract
In biopharmaceutical manufacturing, fermentation processes play a critical role in productivity and profit. A fermentation process uses living cells with complex biological mechanisms, leading to high variability in the process outputs, namely, the protein and impurity levels. By building on the biological mechanisms of protein and impurity growth, we introduce a stochastic model to characterize the accumulation of the protein and impurity levels in the fermentation process. However, a common challenge in the industry is the availability of only a very limited amount of data, especially in the development and early stages of production. This adds an additional layer of uncertainty, referred to as model risk, due to the difficulty of estimating the model parameters with limited data. In this paper, we study the harvesting decision for a fermentation process (i.e., when to stop the…
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Taxonomy
TopicsViral Infectious Diseases and Gene Expression in Insects · Animal Disease Management and Epidemiology · Crystallization and Solubility Studies
