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一种基于非参数回归和高斯核算法的新方法确定了 CHO 培养基和补料优化中的关键成分。

A novel method based on nonparametric regression with a Gaussian kernel algorithm identifies the critical components in CHO media and feed optimization.

机构信息

State Key Laboratory of Bioreactor Engineering, East China University of Science and Technology, 200237, Shanghai, China.

Shanghai Bioengine Sci-Tech Co. Ltd, 201203, Shanghai, China.

出版信息

J Ind Microbiol Biotechnol. 2020 Jan;47(1):63-72. doi: 10.1007/s10295-019-02248-5. Epub 2019 Nov 21.

Abstract

As the composition of animal cell culture medium becomes more complex, the identification of key variables is important for simplifying and guiding the subsequent medium optimization. However, the traditional experimental design methods are impractical and limited in their ability to explore such large feature spaces. Therefore, in this work, we developed a NRGK (nonparametric regression with Gaussian kernel) method, which aimed to identify the critical components that affect product titres during the development of cell culture media. With this nonparametric model, we successfully identified the important components that were neglected by the conventional PLS (partial least squares regression) method. The superiority of the NRGK method was further verified by ANOVA (analysis of variance). Additionally, it was proven that the selection accuracy was increased with the NRGK method because of its ability to model both the nonlinear and linear relationships between the medium components and titres. The application of this NRGK method provides new perspectives for the more precise identification of the critical components that further enable the optimization of media in a shorter timeframe.

摘要

随着动物细胞培养基成分的日趋复杂,确定关键变量对于简化并指导后续的培养基优化非常重要。然而,传统的实验设计方法在探索如此庞大的特征空间方面并不实用,也受到限制。因此,在这项工作中,我们开发了一种 NRGK(带高斯核的非参数回归)方法,旨在识别细胞培养基开发过程中影响产物滴度的关键成分。通过这种非参数模型,我们成功地识别了传统 PLS(偏最小二乘回归)方法忽略的重要成分。NRGK 方法的优越性还通过方差分析(ANOVA)得到了进一步验证。此外,由于 NRGK 方法能够模拟培养基成分和滴度之间的非线性和线性关系,因此证明了其选择准确性得到了提高。NRGK 方法的应用为更精确地识别关键成分提供了新的视角,进一步实现了在更短的时间内优化培养基。

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