Literature DB >> 30563328

Machine Learning of Designed Translational Control Allows Predictive Pathway Optimization in Escherichia coli.

Adrian J Jervis1, Pablo Carbonell1, Maria Vinaixa1, Mark S Dunstan1, Katherine A Hollywood1, Christopher J Robinson1, Nicholas J W Rattray2, Cunyu Yan1, Neil Swainston1, Andrew Currin1, Rehana Sung1, Helen Toogood1, Sandra Taylor1, Jean-Loup Faulon1,3, Rainer Breitling1, Eriko Takano1, Nigel S Scrutton1.   

Abstract

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.

Entities:  

Keywords:  machine learning; pathway engineering; ribosome binding site; synthetic biology; terpenoids; translational tuning

Mesh:

Year:  2019        PMID: 30563328     DOI: 10.1021/acssynbio.8b00398

Source DB:  PubMed          Journal:  ACS Synth Biol        ISSN: 2161-5063            Impact factor:   5.110


  18 in total

1.  Setting Up an Automated Biomanufacturing Laboratory.

Authors:  Marilene Pavan
Journal:  Methods Mol Biol       Date:  2021

2.  SpeedyGenesXL: an Automated, High-Throughput Platform for the Preparation of Bespoke Ultralarge Variant Libraries for Directed Evolution.

Authors:  Joanna C Sadler; Neil Swainston; Mark S Dunstan; Andrew Currin; Douglas B Kell
Journal:  Methods Mol Biol       Date:  2022

3.  Synthetic Biology Meets Machine Learning.

Authors:  Brendan Fu-Long Sieow; Ryan De Sotto; Zhi Ren Darren Seet; In Young Hwang; Matthew Wook Chang
Journal:  Methods Mol Biol       Date:  2023

Review 4.  Microbial production of advanced biofuels.

Authors:  Jay Keasling; Hector Garcia Martin; Taek Soon Lee; Aindrila Mukhopadhyay; Steven W Singer; Eric Sundstrom
Journal:  Nat Rev Microbiol       Date:  2021-06-25       Impact factor: 60.633

5.  Large-scale DNA-based phenotypic recording and deep learning enable highly accurate sequence-function mapping.

Authors:  Simon Höllerer; Laetitia Papaxanthos; Anja Cathrin Gumpinger; Katrin Fischer; Christian Beisel; Karsten Borgwardt; Yaakov Benenson; Markus Jeschek
Journal:  Nat Commun       Date:  2020-07-15       Impact factor: 14.919

6.  In silico design and automated learning to boost next-generation smart biomanufacturing.

Authors:  Pablo Carbonell; Rosalind Le Feuvre; Eriko Takano; Nigel S Scrutton
Journal:  Synth Biol (Oxf)       Date:  2020-10-17

Review 7.  Machine Learning Applications for Mass Spectrometry-Based Metabolomics.

Authors:  Ulf W Liebal; An N T Phan; Malvika Sudhakar; Karthik Raman; Lars M Blank
Journal:  Metabolites       Date:  2020-06-13

8.  Rapid prototyping of microbial production strains for the biomanufacture of potential materials monomers.

Authors:  Christopher J Robinson; Pablo Carbonell; Adrian J Jervis; Cunyu Yan; Katherine A Hollywood; Mark S Dunstan; Andrew Currin; Neil Swainston; Reynard Spiess; Sandra Taylor; Paul Mulherin; Steven Parker; William Rowe; Nicholas E Matthews; Kirk J Malone; Rosalind Le Feuvre; Philip Shapira; Perdita Barran; Nicholas J Turner; Jason Micklefield; Rainer Breitling; Eriko Takano; Nigel S Scrutton
Journal:  Metab Eng       Date:  2020-04-23       Impact factor: 9.783

Review 9.  Emerging molecular biology tools and strategies for engineering natural product biosynthesis.

Authors:  Wei Xu; Evaldas Klumbys; Ee Lui Ang; Huimin Zhao
Journal:  Metab Eng Commun       Date:  2019-11-09

Review 10.  Repositioning microbial biotechnology against COVID-19: the case of microbial production of flavonoids.

Authors:  Tobias Goris; Álvaro Pérez-Valero; Igor Martínez; Dong Yi; Luis Fernández-Calleja; David San León; Uwe T Bornscheuer; Patricia Magadán-Corpas; Felipe Lombó; Juan Nogales
Journal:  Microb Biotechnol       Date:  2020-10-13       Impact factor: 5.813

View more

北京卡尤迪生物科技股份有限公司 © 2022-2023.