Hybrid modeling for biopharmaceutical processes: advantages, opportunities, and implementation

IF 2.5 Q3 BIOTECHNOLOGY & APPLIED MICROBIOLOGY Frontiers in chemical engineering Pub Date : 2023-05-15 DOI:10.3389/fceng.2023.1157889
H. Narayanan, M. von Stosch, F. Feidl, M. Sokolov, M. Morbidelli, A. Butté
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引用次数: 3

Abstract

Process models are mathematical formulations (essentially a set of equations) that try to represent the real system/process in a digital or virtual form. These are derived either based on fundamental physical laws often combined with empirical assumptions or learned based on data. The former has been existing for several decades in chemical and process engineering while the latter has recently received a lot of attention with the emergence of several artificial intelligence/machine learning techniques. Hybrid modeling is an emerging modeling paradigm that explores the synergy between existing these two paradigms, taking advantage of the existing process knowledge (or engineering know-how) and information disseminated by the collected data. Such an approach is especially suitable for systems and industries where data generation is significantly resource intensive while at the same time fundamentally not completely deciphered such as the processes involved in the biopharmaceutical pipeline. This technology could, in fact, be the enabler to meeting the demands and goals of several initiatives such as Quality by design, Process Analytical tools, and Pharma 4.0. In addition, it can aid in different process applications throughout process development and Chemistry, Manufacturing, and Control (CMC) to make it more strategic and efficient. This article focuses on providing a step-by-step guide to the different considerations to be made to develop a reliable and applicable hybrid model. In addition, the article aims at highlighting the need for such tools in the biopharmaceutical industry and summarizes the works that advocate its implications. Subsequently, the key qualities of hybrid modeling that make it a key enabler in the biopharmaceutical industry are elaborated with reference to the literature demonstrating such qualities.
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生物制药过程的混合建模:优势、机会和实现
过程模型是试图以数字或虚拟形式表示真实系统/过程的数学公式(本质上是一组方程)。它们要么是基于基本的物理定律(通常与经验假设相结合),要么是根据数据得出的。前者在化学和过程工程中已经存在了几十年,而后者最近随着几种人工智能/机器学习技术的出现而受到广泛关注。混合建模是一种新兴的建模范式,它探索现有这两种范式之间的协同作用,利用现有的过程知识(或工程技术诀窍)和通过收集的数据传播的信息。这种方法特别适用于数据生成非常资源密集型的系统和行业,同时基本上不能完全破译,例如生物制药管道中涉及的过程。事实上,这项技术可以成为满足一些计划的需求和目标的推动者,例如质量设计、过程分析工具和制药4.0。此外,它还可以在整个过程开发和化学、制造和控制(CMC)的不同过程应用中提供帮助,使其更具战略性和效率。本文重点介绍了开发可靠且适用的混合模型时需要考虑的不同事项。此外,本文旨在强调生物制药行业对此类工具的需求,并总结了倡导其含义的作品。随后,参考文献阐述了混合建模的关键品质,使其成为生物制药行业的关键推动者。
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来源期刊
CiteScore
3.50
自引率
0.00%
发文量
0
审稿时长
13 weeks
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