Dietrich Annabelle, Heim Luca, Hubbuch Jürgen
Institute of Process Engineering in Life Sciences, Section IV: Biomolecular Separation Engineering, Karlsruhe Institute of Technology (KIT), Karlsruhe, Germany.
Front Bioeng Biotechnol. 2025 Aug 21;13:1631807. doi: 10.3389/fbioe.2025.1631807. eCollection 2025.
Spectroscopic soft sensors are developed by combining spectral data with chemometric modeling, and offer as Process Analytical Technology (PAT) tools powerful insights into biopharmaceutical processing. In this study, soft sensors based on Raman spectroscopy and linear or partial least squares (PLS) regression were developed and successfully transferred to a filtration-based recovery step of precipitated virus-like particles (VLPs). For near real-time monitoring of product accumulation and precipitant depletion, the dual-stage cross-flow filtration (CFF) set-up was equipped with an on-line loop in the second membrane stage. With this set-up, spectral data from three CFF runs were collected, differing in initial product concentration and process parameters. Under the scope of multi-attribute monitoring, a comprehensive investigation of the sensor sensitivity towards protein and precipitant and their Raman spectral features was carried out. This study reveals much higher sensitivity towards the precipitant ammonium sulfate (AMS) than the VLPs and the need for attribute-specific spectral preprocessing. To enhance the detector's sensitivity towards proteins, a higher exposure time was applied during CFF processing than during model building from pure-component stock solutions. As a result of this increased exposure time, the predominant sulfate band exhibited oversaturation effects, which otherwise could have been used for AMS quantification via linear regression. Nevertheless, AMS prediction using purpose-driven preprocessing operations and PLS models was achieved with normalization and a data-driven variable selection technique, next to baseline correction and signal smoothing. For VLP monitoring, a novel pre-cropping approach improved spectral appearance after further preprocessing in protein-associated wavenumber regions. However, fluctuations in prediction were much higher for VLPs than for AMS, and prediction accuracy was especially limited in low protein concentration ranges. These results highlight the potential of Raman-based PAT sensors for real-time monitoring of biopharmaceutical processes, while underscoring the general importance of attribute-specific selections of sensors, preprocessing operations, and models for PAT tool development.
光谱软传感器是通过将光谱数据与化学计量学建模相结合而开发的,作为过程分析技术(PAT)工具,能为生物制药过程提供强大的洞察。在本研究中,基于拉曼光谱和线性或偏最小二乘(PLS)回归的软传感器被开发出来,并成功应用于沉淀病毒样颗粒(VLP)基于过滤的回收步骤。为了近实时监测产物积累和沉淀剂消耗,双级错流过滤(CFF)装置在第二个膜阶段配备了一个在线回路。通过这种设置,收集了三次CFF运行的光谱数据,初始产物浓度和工艺参数各不相同。在多属性监测范围内,对传感器对蛋白质和沉淀剂的灵敏度及其拉曼光谱特征进行了全面研究。这项研究表明,传感器对沉淀剂硫酸铵(AMS)的灵敏度比对VLP的灵敏度高得多,并且需要针对特定属性进行光谱预处理。为了提高检测器对蛋白质的灵敏度,在CFF处理过程中应用的曝光时间比从纯组分储备溶液构建模型时更长。由于曝光时间增加,主要的硫酸根谱带出现了过饱和效应,否则这些效应可用于通过线性回归对AMS进行定量。尽管如此,通过归一化以及数据驱动的变量选择技术,结合基线校正和信号平滑,利用目标驱动的预处理操作和PLS模型实现了AMS预测。对于VLP监测,一种新颖的预裁剪方法在蛋白质相关波数区域进一步预处理后改善了光谱外观。然而,VLP预测的波动比AMS的波动要高得多,并且在低蛋白质浓度范围内预测准确性尤其有限。这些结果突出了基于拉曼的PAT传感器在生物制药过程实时监测中的潜力,同时强调了在PAT工具开发中针对特定属性选择传感器、预处理操作和模型的普遍重要性。