基因
生物
蛋白质表达
计算机科学
人工智能
计算生物学
机器学习
生物化学
作者
Zundan Ding,Feifei Guan,Guoshun Xu,Yuchen Wang,Yaru Yan,Wei Zhang,Ningfeng Wu,Bin Yao,Huoqing Huang,Tamir Tuller,Jian Tian
标识
DOI:10.1016/j.csbj.2022.02.030
摘要
The expression of proteins in Escherichia coli is often essential for their characterization, modification, and subsequent application. Gene sequence is the major factor contributing expression. In this study, we used the expression data from 6438 heterologous proteins under the same expression condition in E. coli to construct a deep learning classifier for screening high- and low-expression proteins. In conjunction with conserved residue analysis to minimize functional disruption, a mutation predictor for enhanced protein expression (MPEPE) was proposed to identify mutations conducive to protein expression. MPEPE identified mutation sites in laccase 13B22 and the glucose dehydrogenase FAD-AtGDH, that significantly increased both expression levels and activity of these proteins. Additionally, a significant correlation of 0.46 between the predicted high level expression propensity with the constructed models and the protein abundance of endogenous genes in E. coli was also been detected. Therefore, the study provides foundational insights into the relationship between specific amino acid usage, codon usage, and protein expression, and is essential for research and industrial applications.
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