Department of Chemistry and Applied Biosciences, Institute of Chemical and Bioengineering, ETH Zürich, Switzerland.
DataHow AG, Zurich, Switzerland.
Biotechnol Prog. 2020 Sep;36(5):e3012. doi: 10.1002/btpr.3012. Epub 2020 May 22.
Multivariate latent variable methods have become a popular and versatile toolset to analyze bioprocess data in industry and academia. This work spans such applications from the evaluation of the role of the standard process variables and metabolites to the metabolomics level, that is, to the extensive number metabolic compounds detectable in the extracellular and intracellular domains. Given the substantial effort currently required for the measurement of the latter groups, a tailored methodology is presented that is capable of providing valuable process insights as well as predicting the glycosylation profile based on only four experiments measured over 12 cell culture days. An important result of the work is the possibility to accurately predict many of the glycan variables based on the information of three experiments. An additional finding is that such predictive models can be generated from the more accessible process and extracellular information only, that is, without including the more experimentally cumbersome intracellular data. With regards to the incorporation of omics data in the standard process analytics framework in the future, this works provides a comprehensive data analysis pathway which can efficiently support numerous bioprocessing tasks.
多元潜变量方法已经成为一种流行且功能强大的工具集,可用于分析工业和学术界中的生物工艺数据。这项工作涵盖了从评估标准过程变量和代谢物的作用到代谢组学水平(即检测细胞外和细胞内区域中可检测到的大量代谢化合物)的应用。鉴于目前对后一组群的测量需要大量的工作,因此提出了一种定制的方法,该方法能够提供有价值的工艺见解,并能够仅基于 12 个细胞培养天内测量的四个实验来预测糖基化特征。这项工作的一个重要结果是,基于三个实验的信息,有可能准确预测许多聚糖变量。另一个发现是,可以仅从更易于访问的过程和细胞外信息生成此类预测模型,也就是说,无需包括更繁琐的细胞内数据。就未来在标准过程分析框架中纳入组学数据而言,这项工作提供了一种全面的数据分析途径,可有效地支持众多生物加工任务。