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使用拉曼光谱对哺乳动物细胞生物工艺进行性能监测。

Performance monitoring of a mammalian cell based bioprocess using Raman spectroscopy.

机构信息

Nanoscale Biophotonics Laboratory, School of Chemistry, National University of Ireland, Galway, Galway, Ireland.

出版信息

Anal Chim Acta. 2013 Sep 24;796:84-91. doi: 10.1016/j.aca.2013.07.058. Epub 2013 Aug 6.

DOI:10.1016/j.aca.2013.07.058
PMID:24016587
Abstract

Being able to predict the final product yield at all stages in long-running, industrial, mammalian cell culture processes is vital for both operational efficiency, process consistency, and the implementation of quality by design (QbD) practices. Here we used Raman spectroscopy to monitor (in terms of glycoprotein yield prediction) a fed-batch fermentation from start to finish. Raman data were collected from 12 different time points in a Chinese hamster ovary (CHO) based manufacturing process and across 37 separate production runs. The samples comprised of clarified bioprocess broths extracted from the CHO cell based process with varying amounts of fresh and spent cell culture media. Competitive adaptive reweighted sampling (CoAdReS) and ant colony optimization (ACO) variable selection methods were used to enhance the predictive ability of the chemometric models by removing unnecessary spectral information. Using CoAdReS accurate prediction models (relative error of predictions between 2.1% and 3.3%) were built for the final glycoprotein yield at every stage of the bioprocess from small scale up to the final 5000 L bioreactor. This result reinforces our previous studies which indicate that media quality is one of the most significant factors determining the efficiency of industrial CHO-cell processes. This Raman based approach could thus be used to manage production in terms of selecting which small scale batches are progressed to large-scale manufacture, thus improving process efficiency significantly.

摘要

能够在长期运行的、工业规模的哺乳动物细胞培养过程的所有阶段预测最终产品的产率,对于提高运营效率、保持过程一致性以及实施质量源于设计(QbD)实践都是至关重要的。在这里,我们使用拉曼光谱法从开始到结束监测分批补料发酵过程(以糖蛋白产率预测为指标)。从基于中国仓鼠卵巢(CHO)的制造过程中的 12 个不同时间点和 37 个单独的生产运行中收集了拉曼数据。这些样本包括从基于 CHO 细胞的过程中提取的澄清生物工艺培养液,其中含有不同量的新鲜和用过的细胞培养基。竞争自适应重加权采样(CoAdReS)和蚁群优化(ACO)变量选择方法用于通过去除不必要的光谱信息来提高化学计量模型的预测能力。使用 CoAdReS,我们为生物工艺的每个阶段从小规模到最终的 5000L 生物反应器建立了准确的最终糖蛋白产率预测模型(预测值的相对误差在 2.1%到 3.3%之间)。这一结果证实了我们之前的研究,即培养基质量是决定工业 CHO 细胞过程效率的最重要因素之一。因此,这种基于拉曼的方法可用于根据选择哪些小批量进入大规模生产来管理生产,从而显著提高过程效率。

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