AI Article Synopsis

  • Biopharmaceutical production is challenged by the need for shorter development times and lower costs, prompting the integration of digital tools.
  • This study presents an automated model calibration process for purifying multi-component mixtures using linear gradient ion exchange chromatography, simplifying data acquisition.
  • The procedure successfully calibrated a three-component protein mixture model with minimal experiments and demonstrated effectiveness under optimized conditions, marking progress toward the automation of biopharmaceutical development.

Article Abstract

The current landscape of biopharmaceutical production necessitates an ever-growing set of tools to meet the demands for shorter development times and lower production costs. One path towards meeting these demands is the implementation of digital tools in the development stages. Mathematical modelling of process chromatography, one of the key unit operations in the biopharmaceutical downstream process, is one such tool. However, obtaining parameter values for such models is a time-consuming task that grows in complexity with the number of compounds in the mixture being purified. In this study, we tackle this issue by developing an automated model calibration procedure for purification of a multi-component mixture by linear gradient ion exchange chromatography. The procedure was implemented using the Orbit software (Lund University, Department of Chemical Engineering), which both generates a mathematical model structure and performs the experiments necessary to obtain data for model calibration. The procedure was extended to suggest operating points for the purification of one of the components in the mixture by means of multi-objective optimization using three different objectives. The procedure was tested on a three-component protein mixture and was able to generate a calibrated model capable of reproducing the experimental chromatograms to a satisfactory degree, using a total of six assays. An additional seventh experiment was performed to validate the model response under one of the suggested optimum conditions, respecting a 95 % purity requirement. All of the above was automated and set in motion by the push of a button. With these results, we have taken a step towards fully automating model calibration and thus accelerating digitalization in the development stages of new biopharmaceuticals.

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http://dx.doi.org/10.1016/j.chroma.2024.464805DOI Listing

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