| Literature DB >> 31754859 |
Mao Zou1, Zi-Wei Zhou2, Li Fan1, Wei-Jian Zhang1, Liang Zhao1, Xu-Ping Liu1, Hai-Bin Wang3, Wen-Song Tan4.
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.Keywords: Chinese hamster ovary cells; Medium optimization; Nonparametric regression with Gaussian kernel; Variable selection
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Year: 2019 PMID: 31754859 DOI: 10.1007/s10295-019-02248-5
Source DB: PubMed Journal: J Ind Microbiol Biotechnol ISSN: 1367-5435 Impact factor: 3.346