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A genome-scale metabolic network model and machine learning predict amino acid concentrations in Chinese Hamster Ovary cell cultures

机译:基因组级代谢网络模型和机器学习预测中国仓鼠卵巢细胞培养中的氨基酸浓度

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摘要

The control of nutrient availability is critical to large-scale manufacturing of biotherapeutics. However, the quantification of proteinogenic amino acids is time-consuming and thus is difficult to implement for real-time in situ bioprocess control. Genome-scale metabolic models describe the metabolic conversion from media nutrients to proliferation and recombinant protein production, and therefore are a promising platform for in silico monitoring and prediction of amino acid concentrations. This potential has not been realized due to unresolved challenges: (1) the models assume an optimal and highly efficient metabolism, and therefore tend to underestimate amino acid consumption, and (2) the models assume a steady state, and therefore have a short forecast range. We address these challenges by integrating machine learning with the metabolic models. Through this we demonstrate accurate and time-course dependent prediction of individual amino acid concentration in culture medium throughout the production process. Thus, these models can be deployed to control nutrient feeding to avoid premature nutrient depletion or provide early predictions of failed bioreactor runs.
机译:营养可用性的控制对于Biothyapeutics的大规模制造至关重要。然而,蛋白质酸氨基酸的定量是耗时的,因此难以用于实时的原位生物处理控制。基因组级代谢模型描述了培养基营养成分的代谢转化和重组蛋白质产生,因此是在硅监测和预测氨基酸浓度的有前途平台。由于未解决的挑战,这种潜力尚未实现:(1)模型假设最佳且高效的新陈代谢,因此倾向于低估氨基酸消耗,并且(2)模型假设稳定状态,因此具有短期预测范围。通过将机器学习与代谢模型集成来解决这些挑战。通过这一点,我们证明了在整个生产过程中培养培养基中单个氨基酸浓度的准确和时程依赖性预测。因此,可以部署这些模型以控制营养饲料以避免早熟的营养消耗或提供失败的生物反应器运行的早期预测。

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