Intravacc, Antonie van Leeuwenhoeklaan 9, 3721 MA Bilthoven, the Netherlands.
Exputec GmbH, Mariahilferstraße 147/2/2D, 1150 Vienna, Austria; Vienna University of Technology, Research Area Biochemical Engineering, Gumpendorferstrasse 1a, 1060 Vienna, Austria.
Vaccine. 2019 Nov 8;37(47):7081-7089. doi: 10.1016/j.vaccine.2019.07.026. Epub 2019 Jul 20.
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.
生物工艺开发会从不同的单元操作和来源(例如时间序列、质量测量)生成大量数据集。通过评估实验设计过程中生成的所有数据,可以加速此类工艺的开发。这只能通过明确定义数据记录和分析策略来实现。本文档介绍了后者。它由基于特征的方法与主成分分析和偏最小二乘回归相结合组成。通过在一个上游处理 (USP) 案例研究中应用此组合策略来说明其应用。评估了无动物成分的 Sabin 灭活脊髓灰质炎疫苗 (sIPV) USP 开发和优化过程中的数据。在工艺开发过程中,在 2.3 至 16 L 的规模范围内进行了 26 次生物反应器运行。对多个操作参数进行了调整,并按照实验设计 (DoE) 方法对数据进行了常规分析。使用这里描述的策略,可以在单个数据研究中仔细检查 26 次运行的所有数据。这包括 DoE 响应参数、生物反应器控制系统生成的所有数据、所有离线数据及其衍生计算。这使得对影响生物反应器性能的最重要参数有了更详细、可靠和准确的了解。在这个案例研究中,该策略用于分析之前生产的数据。进一步的开发将使用此数据分析方法来持续增强和加速工艺开发、强化 DoE 和集成工艺建模。