Department of Biopharmaceutical Process Science, Boehringer Ingelheim Pharma GmbH & Co. KG, 88397, Biberach an der Riss, Germany,
Adv Biochem Eng Biotechnol. 2012;127:133-63. doi: 10.1007/10_2010_98.
Development of efficient bioprocesses is essential for cost-effective manufacturing of recombinant therapeutic proteins. To achieve further process improvement and process rationalization comprehensive data analysis of both process data and phenotypic cell-level data is essential. Here, we present a framework for advanced bioprocess data analysis consisting of multivariate data analysis (MVDA), metabolic flux analysis (MFA), and pathway analysis for mapping of large-scale gene expression data sets. This data analysis platform was applied in a process development project with an IgG-producing Chinese hamster ovary (CHO) cell line in which the maximal product titer could be increased from about 5 to 8 g/L.Principal component analysis (PCA), k-means clustering, and partial least-squares (PLS) models were applied to analyze the macroscopic bioprocess data. MFA and gene expression analysis revealed intracellular information on the characteristics of high-performance cell cultivations. By MVDA, for example, correlations between several essential amino acids and the product concentration were observed. Also, a grouping into rather cell specific productivity-driven and process control-driven processes could be unraveled. By MFA, phenotypic characteristics in glycolysis, glutaminolysis, pentose phosphate pathway, citrate cycle, coupling of amino acid metabolism to citrate cycle, and in the energy yield could be identified. By gene expression analysis 247 deregulated metabolic genes were identified which are involved, inter alia, in amino acid metabolism, transport, and protein synthesis.
开发高效的生物工艺对于降低重组治疗蛋白的制造成本至关重要。为了进一步改进和合理化工艺,全面分析工艺数据和表型细胞水平数据是必不可少的。在这里,我们提出了一个包含多元数据分析(MVDA)、代谢通量分析(MFA)和途径分析的高级生物工艺数据分析框架,用于映射大规模基因表达数据集。该数据分析平台应用于一个 IgG 产生的中国仓鼠卵巢(CHO)细胞系的工艺开发项目中,可将最大产物滴度从约 5 提高到 8 g/L。主成分分析(PCA)、k-均值聚类和偏最小二乘(PLS)模型被用于分析宏观生物工艺数据。MFA 和基因表达分析揭示了高产细胞培养的细胞内信息。例如,通过 MVDA 观察到几种必需氨基酸与产物浓度之间的相关性。此外,还可以揭示出细胞特异性生产力驱动和工艺控制驱动的分组。通过 MFA,可以鉴定糖酵解、谷氨酰胺分解、戊糖磷酸途径、柠檬酸循环、氨基酸代谢与柠檬酸循环的偶联以及能量产生中的表型特征。通过基因表达分析,鉴定了 247 个失调的代谢基因,这些基因参与氨基酸代谢、运输和蛋白质合成等过程。