Gangwar Neelesh, Balraj Keerthiveena, Rathore Anurag S
School of Interdisciplinary Research, Indian Institute of Technology Delhi, New Delhi, India.
Yardi School of Artificial Intelligence, Indian Institute of Technology Delhi, New Delhi, India.
Biotechnol Prog. 2025 Aug 11:e70056. doi: 10.1002/btpr.70056.
As per the quality by design (QbD) paradigm, manufacturers are expected to identify critical raw materials that can contribute to variability in process performance and product quality. Further, manufacturers should be able to characterize and monitor the quality of these critical raw materials. Cell culture medium is universally accepted to be one such critical raw material for monoclonal antibody production. It is complex and comprises hundreds of components in varying proportions that are known to impact a multitude of critical quality attributes of a biotherapeutic product, particularly the post-translational modifications. In this study, a near-infrared (NIR) spectroscopy-based quantification method has been developed for media additives that are known to be potential glycan modulators. A one-dimensional convolution neural network (1D-CNN)-based chemometric model has been developed for estimating galactose and uridine concentrations in the various media formulations. Employing the advantage of data augmentation, the proposed 1D-CNN model delivers excellent prediction statistics (test R > 0.9) for predicting both analytes in real time. Further, this model has been used in combination with DoE-based experimental design for prediction of glycosylation using concentrations of media additives as input. In summary, predicted glycosylation distributions were in accordance with actual distribution without significant differences (p > 0.9) in the investigated media formulation. The proposed method and tool can play a critical role in facilitating real-time characterization and control of mammalian cell culture raw materials.
根据质量源于设计(QbD)范式,制造商应识别可能导致工艺性能和产品质量变异性的关键原材料。此外,制造商应能够表征和监测这些关键原材料的质量。细胞培养基被公认为是单克隆抗体生产中的一种关键原材料。它很复杂,由数百种比例不同的成分组成,已知这些成分会影响生物治疗产品的众多关键质量属性,特别是翻译后修饰。在本研究中,针对已知为潜在聚糖调节剂的培养基添加剂,开发了一种基于近红外(NIR)光谱的定量方法。已开发出一种基于一维卷积神经网络(1D-CNN)的化学计量学模型,用于估计各种培养基配方中的半乳糖和尿苷浓度。利用数据增强的优势,所提出的1D-CNN模型在实时预测两种分析物方面具有出色的预测统计数据(测试R>0.9)。此外,该模型已与基于实验设计(DoE)的实验设计相结合,以培养基添加剂浓度作为输入来预测糖基化。总之,在研究的培养基配方中,预测的糖基化分布与实际分布一致,无显著差异(p>0.9)。所提出的方法和工具在促进哺乳动物细胞培养原材料的实时表征和控制方面可发挥关键作用。