基于模型的生物工艺开发路线图。

IF 12.1 1区 工程技术 Q1 BIOTECHNOLOGY & APPLIED MICROBIOLOGY
Khadija Mu'azzam , Francisco Vitor Santos da Silva , Jason Murtagh , Maria Jose Sousa Gallagher
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引用次数: 0

摘要

生物加工业的质量保证方法正在发生重大转变,从传统的测试质量(QbT)转变为设计质量(QbD)。QbD 是一种系统的工艺开发质量方法,在监管框架的指导下,将质量融入工艺设计和控制中。这种模式的转变能够提高运营效率,缩短上市时间,并确保产品的一致性。QbD 的实施围绕着一些关键要素,如定义质量目标产品简介 (QTPP)、确定关键质量属性 (CQA)、开发设计空间 (DS)、建立控制策略 (CS) 以及保持持续改进。本批判性分析深入探讨了每个要素的复杂性,强调了它们在确保产品质量稳定和符合法规方面的作用。工业 4.0 和 5.0 技术(包括人工智能 (AI)、机器学习 (ML)、物联网 (IoT) 和数字孪生 (DTs))的整合正在极大地改变生物加工行业。这些创新技术实现了实时数据分析、预测建模和流程优化,这些都是实施 QbD 的关键要素。其中,DTs 概念的显著特点是能够促进双向数据通信,实现实时调整,从而优化流程。然而,DTs 在实施过程中面临着系统集成、数据安全和软硬件兼容性等挑战。这些挑战正在通过人工智能、虚拟现实/增强现实(VR/AR)和改进的通信技术的进步得到解决。DT 功能的核心是开发和应用各种不同类型的模型--机械模型、经验模型和混合模型。这些模型是 DT 的智力支柱,为解释和预测物理对应物的行为提供了框架。这些模型的选择和开发对 DTs 的准确性和有效性至关重要,使其能够反映和预测生物处理系统的实时动态。作为对这些模型的补充,自由浮动无线传感器和光谱传感器等数据收集技术的进步增强了 DTs 的监测和控制能力,使人们能够更全面、更细致地了解生物处理环境。本综述对该行业基于模型的生物处理开发的当前趋势进行了批判性分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A roadmap for model-based bioprocess development

The bioprocessing industry is undergoing a significant transformation in its approach to quality assurance, shifting from the traditional Quality by Testing (QbT) to Quality by Design (QbD). QbD, a systematic approach to quality in process development, integrates quality into process design and control, guided by regulatory frameworks. This paradigm shift enables increased operational efficiencies, reduced market time, and ensures product consistency. The implementation of QbD is framed around key elements such as defining the Quality Target Product Profile (QTPPs), identifying Critical Quality Attributes (CQAs), developing Design Spaces (DS), establishing Control Strategies (CS), and maintaining continual improvement. The present critical analysis delves into the intricacies of each element, emphasizing their role in ensuring consistent product quality and regulatory compliance.

The integration of Industry 4.0 and 5.0 technologies, including Artificial Intelligence (AI), Machine Learning (ML), Internet of Things (IoT), and Digital Twins (DTs), is significantly transforming the bioprocessing industry. These innovations enable real-time data analysis, predictive modelling, and process optimization, which are crucial elements in QbD implementation. Among these, the concept of DTs is notable for its ability to facilitate bi-directional data communication and enable real-time adjustments and therefore optimize processes. DTs, however, face implementation challenges such as system integration, data security, and hardware-software compatibility. These challenges are being addressed through advancements in AI, Virtual Reality/ Augmented Reality (VR/AR), and improved communication technologies.

Central to the functioning of DTs is the development and application of various models of differing types – mechanistic, empirical, and hybrid. These models serve as the intellectual backbone of DTs, providing a framework for interpreting and predicting the behaviour of their physical counterparts. The choice and development of these models are vital for the accuracy and efficacy of DTs, enabling them to mirror and predict the real-time dynamics of bioprocessing systems. Complementing these models, advancements in data collection technologies, such as free-floating wireless sensors and spectroscopic sensors, enhance the monitoring and control capabilities of DTs, providing a more comprehensive and nuanced understanding of the bioprocessing environment.

This review offers a critical analysis of the prevailing trends in model-based bioprocessing development within the sector.

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来源期刊
Biotechnology advances
Biotechnology advances 工程技术-生物工程与应用微生物
CiteScore
25.50
自引率
2.50%
发文量
167
审稿时长
37 days
期刊介绍: Biotechnology Advances is a comprehensive review journal that covers all aspects of the multidisciplinary field of biotechnology. The journal focuses on biotechnology principles and their applications in various industries, agriculture, medicine, environmental concerns, and regulatory issues. It publishes authoritative articles that highlight current developments and future trends in the field of biotechnology. The journal invites submissions of manuscripts that are relevant and appropriate. It targets a wide audience, including scientists, engineers, students, instructors, researchers, practitioners, managers, governments, and other stakeholders in the field. Additionally, special issues are published based on selected presentations from recent relevant conferences in collaboration with the organizations hosting those conferences.
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