未来的CPV:生物反应器过程的人工智能持续过程验证。

Q3 Medicine
Andrej Ondracka, Arnau Gasset, Xavier García-Ortega, David Hubmayr, Joeri B G van Wijngaarden, José Luis Montesinos-Seguí, Francisco Valero, Toni Manzano
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引用次数: 0

摘要

根据FDA的标准指南,生物制药生产中的工艺验证包括三个阶段组成的生命周期:工艺设计(PD),工艺确认(PQ)和持续工艺验证(CPV)。CPV期间采用的分析方法的有效性和效率需要广泛的过程知识。然而,对于新工艺和新药,这些知识通常无法从工艺性能确认和验证(PPQV)中获得。在有限的历史数据下,研究了基于机器学习/人工智能(ML/AI)的CPV方法在毕赤酵母(Komagataella phaffii)生物过程监测和细胞生理控制中的适用性。特别是,在缺氧条件下分批培养的重组念珠菌脂肪酶1 (Crl1)的生产被认为是一个案例研究。利用常氧和缺氧条件下不同基因剂量的补料批生物过程数据,对有监督和无监督机器学习模型进行了评估。首先,将多变量异常检测(隔离森林)模型应用于生物过程的批处理阶段。其次,评估了在低氧条件下半自动进料批阶段所需操作员控制动作的监督随机森林模型,以保持呼吸商(RQ)在最大化特定生产率(qP)的期望范围内。这些模型的性能在历史数据上进行了测试,由过程控制工程师(主题专家- sme)对过程进行了独立评估,并在手动动作预测的情况下对实时数据进行了测试,其中模型被实施以指导生物过程的控制。这里提出的工作构成了一个概念证明,基于机器学习的多元分析方法可以成为实时监测和控制生物制药生产生物过程的有价值的工具,以提高其效率并确保产品质量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
CPV of the Future: AI-Powered Continued Process Verification for Bioreactor Processes.

According to the standard guidelines by the FDA, process validation in biopharma manufacturing encompasses a life cycle consisting of three stages: process design (PD), process qualification (PQ), and continued process verification (CPV). The validity and efficiency of the analytics methods employed during the CPV require extensive knowledge of the process. However, for new processes and new drugs, such knowledge is often not available from Process performance qualification and Validation (PPQV). In this work, the suitability of methods based on machine learning/artificial intelligence (ML/AI) for the CPV applied in bioprocess monitoring and cell physiological control of the yeast Pichia pastoris (Komagataella phaffii) was studied with limited historical data. In particular, the production of recombinant Candida rugosa lipase 1 (Crl1) under hypoxic conditions in fed-batch cultures was considered as a case study. Supervised and unsupervised machine learning models using data from fed-batch bioprocesses with different gene dosage clones under normoxic and hypoxic conditions were evaluated. Firstly, a multivariate anomaly detection (isolation forest) model was applied to the batch phase of the bioprocess. Secondly, a supervised random forest model for prediction of required operator's control actions during the semiautomated fed-batch phase under hypoxic conditions was assessed to maintain the respiratory quotient (RQ) within the desired range for maximizing the specific production rate (qP ). The performance of these models was tested on historical data using independent evaluation of the process by the process control engineer (subject matter expert-SME), and on real-time data in the case of manual action prediction, where the model was implemented to guide the control of the bioprocess. The work presented here constitutes a proof-of-concept that multivariate analytics methods, based on machine learning, can be a valuable tool for real-time monitoring and control of biopharma manufacturing bioprocesses to improve its efficiency and to assure product quality.

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来源期刊
CiteScore
1.90
自引率
0.00%
发文量
34
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