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Engineering of High Performance Microbial Secreted Expression Systems for Improved Antibody Expression in the Host

机译:高性能微生物分泌表达系统的改进抗体表达的工程

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The expression of monoclonal antibodies in microbial hosts has gained increasing interest for analytical and therapeutic applications due to their simplicity and speed. In this work, we describe a secreted approach to develop the expression systems with combinations of different promoters and signal peptides for enhanced Fab fragments expression in E. coli. We also develop a high-throughput screening method using ELISA to isolate the high expression clones by screening more than thousand clones. The effects of different hosts in Fab production were also investigated. The top clone Fab products are purified with affinity resin and further characterized by LC/MS and LC/MS/MS for identity, ELISA for antigen affinity, and CD for higher order structure. The best clone was then fermented in a scale-down model by parallel 250ml mini-bioreactors to find out the optimized process conditions for future 2~5 liter bioreactor scale-up process. Our recent result show that more than 70% Fab is secreted into the culture medium. This would be beneficial to the purification process by avoiding cell disruption, cell debris removal, and reduce loading of host cell protein, and host cell DNA impurities. The integrated platform makes us gain high quality product for pre-clinical test in six months possible.
机译:由于其简单性和速度,微生物宿主中单克隆抗体在微生物宿主中的表达已经获得了分析和治疗应用的兴趣。在这项工作中,我们描述了一种分泌的方法,以通过不同的启动子和信号肽的组合开发表达系统,用于增强的Fab片段在大肠杆菌中表达。我们还使用ELISA开发出高通量的筛选方法,以通过筛选千以上克隆来分离高表达克隆。还研究了不同宿主在Fab生产中的影响。顶部克隆Fab产物用亲和性树脂纯化,并进一步以LC / MS和LC / MS / MS / MS为特征,用于抗原亲和力的ELISA,以及用于更高阶结构的CD。然后通过平行250mL迷你生物反应器在缩减模型中发酵最佳克隆,以找出未来2〜5升生物反应器放大过程的优化工艺条件。我们最近的结果表明,超过70%的Fab分泌到培养基中。这将通过避免细胞破坏,细胞碎片去除和减少宿主细胞蛋白和宿主细胞DNA杂质来利用纯化过程。集成平台使我们在六个月内获得高质量的临床测试产品。

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