Center for Process Engineering and Technology, Department of Chemical and Biochemical Engineering, Technical University of Denmark, DK 2800 Kgs. Lyngby, Denmark.
Biotechnol Adv. 2011 Nov-Dec;29(6):575-99. doi: 10.1016/j.biotechadv.2011.03.007. Epub 2011 Apr 19.
With the continuous development, in the last decades, of analytical techniques providing complex information at single cell level, the study of cell heterogeneity has been the focus of several research projects within analytical biotechnology. Nonetheless, the complex interplay between environmental changes and cellular responses is yet not fully understood, and the integration of this new knowledge into the strategies for design, operation and control of bioprocesses is far from being an established reality. Indeed, the impact of cell heterogeneity on productivity of large scale cultivations is acknowledged but seldom accounted for. In order to include population heterogeneity mechanisms in the development of novel bioprocess control strategies, a reliable mathematical description of such phenomena has to be developed. With this review, we search to summarize the potential of currently available methods for monitoring cell population heterogeneity as well as model frameworks suitable for describing dynamic heterogeneous cell populations. We will furthermore underline the highly important coordination between experimental and modeling efforts necessary to attain a reliable quantitative description of cell heterogeneity, which is a necessity if such models are to contribute to the development of improved control of bioprocesses.
随着分析技术的不断发展,在过去几十年中,这些技术能够提供单细胞水平的复杂信息,因此细胞异质性的研究成为了分析生物技术领域的几个研究项目的重点。尽管如此,环境变化和细胞响应之间的复杂相互作用仍未被完全理解,并且将这些新知识整合到生物工艺的设计、操作和控制策略中还远未成为现实。事实上,细胞异质性对大规模培养生产力的影响已经得到认可,但很少被考虑在内。为了在新型生物工艺控制策略的开发中纳入群体异质性机制,必须开发出对这些现象的可靠数学描述。通过这篇综述,我们试图总结目前用于监测细胞群体异质性的方法的潜力,以及适合描述动态异质细胞群体的模型框架。我们还将强调在获得细胞异质性的可靠定量描述方面,实验和建模工作之间的高度重要协调,这是必要的,如果这些模型能够有助于改进生物工艺的控制。