Jervis Adrian J, Carbonell Pablo, Vinaixa Maria, Dunstan Mark S, Hollywood Katherine A, Robinson Christopher J, Rattray Nicholas J W, Yan Cunyu, Swainston Neil, Currin Andrew, Sung Rehana, Toogood Helen, Taylor Sandra, Faulon Jean-Loup, Breitling Rainer, Takano Eriko, Scrutton Nigel S
Manchester Synthetic Biology Research Centre for Fine and Speciality Chemicals (SYNBIOCHEM), Manchester Institute of Biotechnology and School of Chemistry , University of Manchester , Manchester M1 7DN , United Kingdom.
Strathclyde Institute of Pharmacy and Biomedical Sciences , Strathclyde University , 161 Cathedral Street , Glasgow G4 0RE , United Kingdom.
ACS Synth Biol. 2019 Jan 18;8(1):127-136. doi: 10.1021/acssynbio.8b00398. Epub 2019 Jan 7.
The field of synthetic biology aims to make the design of biological systems predictable, shrinking the huge design space to practical numbers for testing. When designing microbial cell factories, most optimization efforts have focused on enzyme and strain selection/engineering, pathway regulation, and process development. In silico tools for the predictive design of bacterial ribosome binding sites (RBSs) and RBS libraries now allow translational tuning of biochemical pathways; however, methods for predicting optimal RBS combinations in multigene pathways are desirable. Here we present the implementation of machine learning algorithms to model the RBS sequence-phenotype relationship from representative subsets of large combinatorial RBS libraries allowing the accurate prediction of optimal high-producers. Applied to a recombinant monoterpenoid production pathway in Escherichia coli, our approach was able to boost production titers by over 60% when screening under 3% of a library. To facilitate library screening, a multiwell plate fermentation procedure was developed, allowing increased screening throughput with sufficient resolution to discriminate between high and low producers. High producers from one library did not translate during scale-up, but the reduced screening requirements allowed rapid rescreening at the larger scale. This methodology is potentially compatible with any biochemical pathway and provides a powerful tool toward predictive design of bacterial production chassis.
合成生物学领域旨在使生物系统的设计具有可预测性,将巨大的设计空间缩小到可用于测试的实际数量。在设计微生物细胞工厂时,大多数优化工作都集中在酶和菌株的选择/工程改造、途径调控以及工艺开发上。用于细菌核糖体结合位点(RBS)和RBS文库预测设计的计算机工具现在允许对生化途径进行翻译调控;然而,需要能够预测多基因途径中最佳RBS组合的方法。在此,我们展示了机器学习算法的应用,以从大型组合RBS文库的代表性子集中对RBS序列-表型关系进行建模,从而能够准确预测最佳高产菌株。将我们的方法应用于大肠杆菌中的重组单萜类化合物生产途径,在筛选文库的3%时,产量提高了60%以上。为了便于文库筛选,我们开发了一种多孔板发酵程序,能够在提高筛选通量的同时,具备足够的分辨率来区分高产和低产菌株。来自一个文库的高产菌株在放大过程中产量未得到保持,但筛选要求的降低使得能够在更大规模上快速重新筛选。这种方法可能与任何生化途径兼容,并为细菌生产底盘的预测设计提供了一个强大的工具。