利用偏振全同步荧光光谱仪 (pTSFS) 和同步光散射 (SyLS) 监测用于培养基开发的小规模生物反应器研究。

IF 4.1 2区 生物学 Q2 BIOTECHNOLOGY & APPLIED MICROBIOLOGY Journal of biotechnology Pub Date : 2024-10-09 DOI:10.1016/j.jbiotec.2024.10.002
Bernard O. Boateng, Alan G. Ryder
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引用次数: 0

摘要

生物制药工艺开发通常需要使用小规模生物反应器(SSBR)来优化培养基配方和工艺条件,以便将规模扩大到商业化生产。用于 SSBR 研究的两个关键工艺参数 (CPP) 是蛋白质滴度和存活细胞密度 (VCD)。在此,我们探讨了平行偏振全同步荧光光谱(TSFS|||)和同步光散射(SyLS|||)在大规模细胞培养基优化 SSBR 研究中定性监测这些 CPP 和定量预测滴度和 VCD 的功效。该研究涉及 71 种不同的培养基配方(每种配方含有 50 多种成分),生物工艺运行 13 天或更长时间。在设定时间(第 0、3、9 和 13 天)提取样品并离心澄清。在生物处理过程中,TSFS||光谱显示出显著的发射变化以及光散射的增加。SyLS||测量结果与动态光散射法获得的粒度数据密切相关,但与 VCD 的相关性不高,这可能是由于样品制备采用了离心法。对 pTSFS 数据进行的统计和主成分分析(PCA)表明,不同培养基配方之间的光谱差异比生物过程的变化更大。这阻碍了针对培养基性能开发精确的全局预测模型(例如,根据第 0 天测量的培养基光谱预测第 9 天的产品滴度)。不过,分类方法已成功用于根据光谱相似性选择定量预测准确性更高的培养基子集。基于支持向量机的实用二元(高性能/低性能)分类模型被用于培养基配方筛选。将发射和散射测量与多元数据分析相结合,提供了一种更全面、多属性的生物过程监测方法,最大限度地减少了使用不同离线分析方法的需要。这种方法可用于监测工艺轨迹和偏差,并最终用于预测生产规模工艺的生物工艺 CPP,因为生产规模工艺中介质成分的变化要小得多。我们相信,SSBR-pTSFS/SyLS 方法将为开发设计/参数空间提供宝贵的资源,以便从早期阶段的工艺/介质开发研究开始,对生产规模的工艺进行监控。
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Monitoring small-scale bioreactor studies for media development using polarized total synchronous fluorescence spectroscopy (pTSFS) and synchronous light scattering (SyLS)
Biopharmaceutical process development often involves the use of small-scale bioreactors (SSBR) for optimizing media formulations and process conditions during scale up to commercial scale production. Two key process parameters (CPP) used in SSBR studies are protein titre and viable cell density (VCD). Here, we explore the efficacy of parallel polarized total synchronous fluorescence spectroscopy (TSFS||) and Synchronous Light Scattering (SyLS||) to qualitatively monitor these CPPs and quantitatively predict titre and VCD for a large-scale cell culture media optimization SSBR study. The study involved 71 different media formulations (50+ components each), and the bioprocess was run for 13 days or more. Samples were extracted at set times (Day 0, 3, 9, and 13) and clarified by centrifugation. TSFS|| spectra showed significant emission changes along with increased light scatter over the course of the bioprocess. SyLS|| measurements strongly correlated with particle size data obtained from Dynamic Light Scattering but did not correlate well with VCD probably because of the centrifugation-based sample preparation. Statistical and principal component analysis (PCA) of the pTSFS data showed that spectral variation was greater between media formulations than due to the evolving bioprocess. This prevented the development of accurate global prediction models for media performance (e.g., predicting product titre at day 9 from media spectra measured at day 0). However, classification methods were successfully used to select media subsets with better quantitative prediction accuracy based on spectral similarities. A practical binary (high/low performance) classification model based on Support Vector Machines was generated for media formulation screening. Combining emission and scatter measurements with multivariate data analysis provides a more holistic, multi-attribute bioprocess monitoring method that minimizes the need to use different offline analytical methods. This methodology can be used to monitor process trajectories and deviations, and ultimately be used to predict bioprocess CPPs when implemented on production scale processes where there is much less compositional variation in the media. We believe this SSBR-pTSFS/SyLS approach will provide a valuable resource to develop the design/parameter space for in-process monitoring at production scale from early-stage process/media development studies.
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来源期刊
Journal of biotechnology
Journal of biotechnology 工程技术-生物工程与应用微生物
CiteScore
8.90
自引率
2.40%
发文量
190
审稿时长
45 days
期刊介绍: The Journal of Biotechnology has an open access mirror journal, the Journal of Biotechnology: X, sharing the same aims and scope, editorial team, submission system and rigorous peer review. The Journal provides a medium for the rapid publication of both full-length articles and short communications on novel and innovative aspects of biotechnology. The Journal will accept papers ranging from genetic or molecular biological positions to those covering biochemical, chemical or bioprocess engineering aspects as well as computer application of new software concepts, provided that in each case the material is directly relevant to biotechnological systems. Papers presenting information of a multidisciplinary nature that would not be suitable for publication in a journal devoted to a single discipline, are particularly welcome.
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