Department of Bioengineering, University of California, San Diego, La Jolla, CA, 92093, USA.
Novo Nordisk Foundation Center for Biosustainability at the University of California, San Diego, School of Medicine, La Jolla, CA, 92093, USA.
Nat Commun. 2020 Jan 2;11(1):68. doi: 10.1038/s41467-019-13867-y.
In mammalian cells, >25% of synthesized proteins are exported through the secretory pathway. The pathway complexity, however, obfuscates its impact on the secretion of different proteins. Unraveling its impact on diverse proteins is particularly important for biopharmaceutical production. Here we delineate the core secretory pathway functions and integrate them with genome-scale metabolic reconstructions of human, mouse, and Chinese hamster ovary cells. The resulting reconstructions enable the computation of energetic costs and machinery demands of each secreted protein. By integrating additional omics data, we find that highly secretory cells have adapted to reduce expression and secretion of other expensive host cell proteins. Furthermore, we predict metabolic costs and maximum productivities of biotherapeutic proteins and identify protein features that most significantly impact protein secretion. Finally, the model successfully predicts the increase in secretion of a monoclonal antibody after silencing a highly expressed selection marker. This work represents a knowledgebase of the mammalian secretory pathway that serves as a novel tool for systems biotechnology.
在哺乳动物细胞中,超过 25%的合成蛋白质通过分泌途径输出。然而,该途径的复杂性掩盖了其对不同蛋白质分泌的影响。揭示其对不同蛋白质的影响对于生物制药生产尤为重要。在这里,我们描绘了核心分泌途径的功能,并将其与人类、小鼠和中国仓鼠卵巢细胞的基因组规模代谢重建整合在一起。由此产生的重建使我们能够计算每个分泌蛋白的能量成本和机械需求。通过整合其他组学数据,我们发现高度分泌的细胞已经适应于减少其他昂贵的宿主细胞蛋白的表达和分泌。此外,我们预测了生物治疗性蛋白质的代谢成本和最大生产力,并确定了对蛋白质分泌影响最大的蛋白质特征。最后,该模型成功预测了沉默高表达选择标记后单克隆抗体分泌量的增加。这项工作代表了哺乳动物分泌途径的知识库,可作为系统生物技术的新工具。