High-throughput metabolomics for the design and validation of a diauxic shift model
Journal article, 2023

Saccharomyces cerevisiae is a very well studied organism, yet ∼20% of its proteins remain poorly characterized. Moreover, recent studies seem to indicate that the pace of functional discovery is slow. Previous work has implied that the most probable path forward is via not only automation but fully autonomous systems in which active learning is applied to guide high-throughput experimentation. Development of tools and methods for these types of systems is of paramount importance. In this study we use constrained dynamical flux balance analysis (dFBA) to select ten regulatory deletant strains that are likely to have previously unexplored connections to the diauxic shift. We then analyzed these deletant strains using untargeted metabolomics, generating profiles which were then subsequently investigated to better understand the consequences of the gene deletions in the metabolic reconfiguration of the diauxic shift. We show that metabolic profiles can be utilised to not only gaining insight into cellular transformations such as the diauxic shift, but also on regulatory roles and biological consequences of regulatory gene deletion. We also conclude that untargeted metabolomics is a useful tool for guidance in high-throughput model improvement, and is a fast, sensitive and informative approach appropriate for future large-scale functional analyses of genes. Moreover, it is well-suited for automated approaches due to relative simplicity of processing and the potential to make massively high-throughput.

Author

Daniel Brunnsåker

Chalmers, Life Sciences, Systems and Synthetic Biology

Gabriel Reder

Chalmers, Life Sciences, Systems and Synthetic Biology

Nikulkumar Soni

Chalmers, Life Sciences, Systems and Synthetic Biology

Otto Savolainen

University of Eastern Finland

Chalmers, Life Sciences, Systems and Synthetic Biology

Alexander Gower

Chalmers, Life Sciences, Systems and Synthetic Biology

Ievgeniia Tiukova

Royal Institute of Technology (KTH)

Chalmers, Life Sciences, Systems and Synthetic Biology

Ross King

Alan Turing Institute

Chalmers, Life Sciences, Systems and Synthetic Biology

University of Cambridge

NPJ systems biology and applications

20567189 (eISSN)

Vol. 9 1 11-

Subject Categories

Biochemistry and Molecular Biology

Bioinformatics (Computational Biology)

Bioinformatics and Systems Biology

Genetics

DOI

10.1038/s41540-023-00274-9

PubMed

37029131

Related datasets

High-throughput metabolomics for the design and validation of a diauxic shift model [dataset]

DOI: 10.5281/zenodo.7105588

More information

Latest update

9/21/2023