Accelerating bioprocess development by analysis of all available data: A USP case study.

Vaccine

Intravacc, Antonie van Leeuwenhoeklaan 9, 3721 MA Bilthoven, the Netherlands. Electronic address:

Published: November 2019

AI Article Synopsis

  • Bioprocess development creates large datasets from various operations, making it essential to have a clear data logging and analysis strategy for effective evaluation.* -
  • This manuscript outlines a combined approach using feature-based methods, principal component analysis, and partial least square regression to analyze data from a case study involving the production of an animal component-free vaccine.* -
  • By evaluating 26 bioreactor runs through this strategy, the researchers were able to gain a comprehensive understanding of key performance parameters, improving process development and future experimental designs.*

Article Abstract

Bioprocess development generates extensive datasets from different unit operations and sources (e.g. time series, quality measurements). The development of such processes can be accelerated by evaluating all data generated during the experimental design. This can only be achieved by having a clearly defined data logging and analysis strategy. The latter is described in this manuscript. It consists in a combination of a feature based approach along with principal component analysis and partial least square regression. Application of this combined strategy is illustrated by applying it in an upstream processing (USP) case study. Data from the development and optimization of an animal component free USP of Sabin inactivated poliovirus vaccine (sIPV) was evaluated. During process development, 26 bioreactor runs at scales ranging from 2.3 to 16 L were performed. Several operational parameters were varied, and data was routinely analyzed following a design of experiments (DoE) methodology. With the strategy described here, it became possible to scrutinize all data from the 26 runs in a single data study. This included the DoE response parameters, all data generated by the bioreactor control systems, all offline data, and its derived calculations. This resulted in a more detailed, reliable and exact view on the most important parameters affecting bioreactor performance. In this case study, the strategy was applied for the analysis of previously produced data. Further development will use this data analysis methodology for continuous enhancing and accelerating process development, intensified DoE and integrated process modelling.

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Source
http://dx.doi.org/10.1016/j.vaccine.2019.07.026DOI Listing

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