Ramzi Ahmad Bazli, Baharum Syarul Nataqain, Bunawan Hamidun, Scrutton Nigel S
Institute of Systems Biology (INBIOSIS), Universiti Kebangsaan Malaysia, Bangi, Malaysia.
EPSRC/BBSRC Future Biomanufacturing Research Hub, BBSRC/EPSRC Synthetic Biology Research Centre, Manchester Institute of Biotechnology and School of Chemistry, The University of Manchester, Manchester, United Kingdom.
Front Bioeng Biotechnol. 2020 Dec 21;8:608918. doi: 10.3389/fbioe.2020.608918. eCollection 2020.
Increasing demands for the supply of biopharmaceuticals have propelled the advancement of metabolic engineering and synthetic biology strategies for biomanufacturing of bioactive natural products. Using metabolically engineered microbes as the bioproduction hosts, a variety of natural products including terpenes, flavonoids, alkaloids, and cannabinoids have been synthesized through the construction and expression of known and newly found biosynthetic genes primarily from model and non-model plants. The employment of omics technology and machine learning (ML) platforms as high throughput analytical tools has been increasingly leveraged in promoting data-guided optimization of targeted biosynthetic pathways and enhancement of the microbial production capacity, thereby representing a critical debottlenecking approach in improving and streamlining natural products biomanufacturing. To this end, this mini review summarizes recent efforts that utilize omics platforms and ML tools in strain optimization and prototyping and discusses the beneficial uses of omics-enabled discovery of plant biosynthetic genes in the production of complex plant-based natural products by bioengineered microbes.
对生物制药供应的需求不断增加,推动了用于生物制造生物活性天然产物的代谢工程和合成生物学策略的发展。利用代谢工程改造的微生物作为生物生产宿主,通过构建和表达主要来自模式植物和非模式植物的已知和新发现的生物合成基因,已经合成了包括萜类、黄酮类、生物碱和大麻素在内的多种天然产物。组学技术和机器学习(ML)平台作为高通量分析工具的应用越来越多地被用于促进靶向生物合成途径的数据引导优化和提高微生物生产能力,从而成为改善和简化天然产物生物制造的关键去瓶颈方法。为此,本综述总结了最近在菌株优化和原型设计中利用组学平台和ML工具的工作,并讨论了通过组学实现的植物生物合成基因发现对生物工程微生物生产复杂植物源天然产物的有益用途。