生物生产
代谢工程
合成生物学
管道(软件)
生化工程
酿酒酵母
计算生物学
生产(经济)
酵母
计算机科学
系统生物学
合理设计
生物
生物技术
基因
工程类
遗传学
宏观经济学
经济
程序设计语言
作者
Iván Domenzain,Yao Lü,Haoyu Wang,Junling Shi,Hongzhong Lu,Jens Nielsen
标识
DOI:10.1073/pnas.2417322122
摘要
Development of efficient cell factories that can compete with traditional chemical production processes is complex and generally driven by case-specific strategies, based on the product and microbial host of interest. Despite major advancements in the field of metabolic modeling in recent years, prediction of genetic modifications for increased production remains challenging. Here, we present a computational pipeline that leverages the concept of protein limitations in metabolism for prediction of optimal combinations of gene engineering targets for enhanced chemical bioproduction. We used our pipeline for prediction of engineering targets for 103 different chemicals using Saccharomyces cerevisiae as a host. Furthermore, we identified sets of gene targets predicted for groups of multiple chemicals, suggesting the possibility of rational model-driven design of platform strains for diversified chemical production.
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