The Advanced Centre of Biochemical Engineering, Department of Biochemical Engineering, University College London, London, UK.
Bioprocess Development Data Science & Modelling, AstraZeneca, Cambridge, UK.
Biotechnol J. 2022 Jun;17(6):e2100609. doi: 10.1002/biot.202100609. Epub 2022 Apr 7.
Data Integrity (DI) in the highly regulated biopharmaceutical sector is of paramount importance to ensure decisions on meeting product specifications are accurate and hence assure patient safety and product quality. The challenge of ensuring DI within this sector is becoming more complex with the growing amount of data generated given increasing adoption of process analytical technology (PAT), advanced automation, high throughput microscale studies, and managing data models created by machine learning (ML) tools. This paper aims to identify DI risks and mitigation strategies in biopharmaceutical manufacturing facilities as the sector moves towards Industry 4.0. To achieve this, the paper examines common DI violations and links them to the ALCOA+ principles used across the FDA, EMA, and MHRA. The relevant DI guidelines from the ISPE's GAMP5 and ISA-95 standards are also discussed with a focus on the role of validated computerised and automated manufacturing systems to avoid DI risks and generate compliant data. The paper also highlights the importance of DI whilst using data analytics to ensure the developed models meet the required regulatory standards for process monitoring and control. This includes a discussion on possible mitigation strategies and methodologies to ensure data integrity is maintained for smart manufacturing operations such as the use of cloud platforms to facilitate the storage and transfer of manufacturing data, and migrate away from paper-based records.
数据完整性(DI)在高度监管的生物制药行业至关重要,可确保满足产品规格的决策准确无误,从而确保患者安全和产品质量。鉴于越来越多的采用过程分析技术(PAT)、先进的自动化、高通量微尺度研究以及管理由机器学习(ML)工具创建的数据模型,确保该行业内数据完整性的挑战变得更加复杂。本文旨在确定生物制药制造设施中的 DI 风险和缓解策略,因为该行业正在向工业 4.0 迈进。为了实现这一目标,本文审查了常见的 DI 违规行为,并将其与 FDA、EMA 和 MHRA 广泛使用的 ALCOA+原则联系起来。还讨论了 ISPE 的 GAMP5 和 ISA-95 标准的相关 DI 指南,重点是经过验证的计算机化和自动化制造系统在避免 DI 风险和生成合规数据方面的作用。本文还强调了在使用数据分析时确保开发的模型满足过程监测和控制所需监管标准的重要性。这包括讨论确保智能制造操作(例如使用云平台来促进制造数据的存储和传输,并从纸质记录迁移)的数据完整性得到维护的可能缓解策略和方法。