Gianmarco Barberi, Antonio Benedetti, Paloma Diaz-Fernandez, Daniel C. Sévin, Johanna Vappiani, Gary Finka, Fabrizio Bezzo, Pierantonio Facco
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引用次数: 0
摘要
鉴定高产细胞系对于开发用于生产治疗性单克隆抗体(mAbs)的生物工艺至关重要。代谢组学数据为细胞系的选择提供了宝贵的信息,并有助于研究 mAb 生产率与产品质量属性之间的关系。我们提出了一种新颖稳健的机器学习程序,该程序利用 Ambr®15 规模的动态代谢组学数据,支持在生物制药生物工艺开发和放大过程中选择高产细胞系。通过代谢组动态图谱,可以在实验的早期阶段就识别出高产的细胞系,以及与 mAb 产率最相关的生物标志物,同时还能找到区分 mAb 产率的关键代谢途径。具体来说,三羧酸循环途径在培养的早期阶段占主导地位,而氨基和核苷酸糖途径则在培养的晚期阶段产生影响。
Productive CHO cell lines selection in biopharm process development through machine learning on metabolomic dynamics
The identification of highly productive cell lines is crucial in the development of bioprocesses for the production of therapeutic monoclonal antibodies (mAbs). Metabolomics data provide valuable information for cell line selection and allow the study of the relationship with mAb productivity and product quality attributes. We propose a novel robust machine learning procedure which, exploiting dynamic metabolomic data from the Ambr®15 scale, supports the selection of highly productive cell lines during biopharmaceutical bioprocess development and scale-up. The metabolomic profiles dynamics allows to identify the cell lines with high productivity, already in the early stages of experimentation, and the biomarkers that are the most related to mAb productivity, finding at the same time the key metabolic pathways for discriminating mAb productivity. Specifically, tricarboxylic acid cycle pathways are predominant in the early stages of the cultivation, while amino and nucleotide sugar pathways influence in the late stages of the culture.
期刊介绍:
The AIChE Journal is the premier research monthly in chemical engineering and related fields. This peer-reviewed and broad-based journal reports on the most important and latest technological advances in core areas of chemical engineering as well as in other relevant engineering disciplines. To keep abreast with the progressive outlook of the profession, the Journal has been expanding the scope of its editorial contents to include such fast developing areas as biotechnology, electrochemical engineering, and environmental engineering.
The AIChE Journal is indeed the global communications vehicle for the world-renowned researchers to exchange top-notch research findings with one another. Subscribing to the AIChE Journal is like having immediate access to nine topical journals in the field.
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