Systems modelled in the context of molecular and cellular biology are difficult to represent with a single calibrated numerical model. Flux optimisation hypotheses have shown tremendous promise to accurately predict bacterial metabolism but they require a precise understanding of metabolic reactions occurring in the considered species. Unfortunately, this information may not be available for more complex organisms or non-cultured microorganisms such as those evidenced in microbiomes with metagenomic techniques. In both cases, flux optimisation techniques may not be applicable to elucidate systems functioning. In this context, we describe how automatic reasoning allows relevant features of an unconventional biological system to be identified despite a lack of data. A particular focus is put on the use of Answer Set Programming, a logic programming paradigm with combinatorial optimisation functionalities. We describe its usage to over-approximate metabolic responses of biological systems and solve gap-filling problems. In this review, we compare steady-states and Boolean abstractions of metabolic models and illustrate their complementarity via applications to the metabolic analysis of macro-algae. Ongoing applications of this formalism explore the emerging field of systems ecology, notably elucidating interactions between a consortium of microbes and a host organism. As the first step in this field, we will illustrate how the reduction in microbiotas according to expected metabolic phenotypes can be addressed with gap-filling problems.
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June 2020
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SMAD-dependent and SMAD-independent BMP9 signalling pathways during osteogenesis. For more information, see the article by Liu and colleagues in this issue (pp. 1269–1268). The image was provided by Dingming Huang.
Review Article|
May 07 2020
Using automated reasoning to explore the metabolism of unconventional organisms: a first step to explore host–microbial interactions
Clémence Frioux;
Clémence Frioux
1Univ Rennes, Inria, CNRS, IRISA, 35000 Rennes, France
2Inria Bordeaux Sud-Ouest, 33405 Talence, France
3Quadram Institute, Norwich Research Park, Norwich, Norfolk NR4 7UQ, U.K.
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Simon M. Dittami;
Simon M. Dittami
4Integrative Biology of Marine Models, Sorbonne Université/CNRS, Station Biologique de Roscoff, UMR 8227, CS 90074 Roscoff, France
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Anne Siegel
1Univ Rennes, Inria, CNRS, IRISA, 35000 Rennes, France
Correspondence: Anne Siegel (anne.siegel@irisa.fr)
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Publisher: Portland Press Ltd
Received:
January 16 2020
Revision Received:
April 01 2020
Accepted:
April 03 2020
Online ISSN: 1470-8752
Print ISSN: 0300-5127
© 2020 The Author(s). Published by Portland Press Limited on behalf of the Biochemical Society
2020
Biochem Soc Trans (2020) 48 (3): 901–913.
Article history
Received:
January 16 2020
Revision Received:
April 01 2020
Accepted:
April 03 2020
Citation
Clémence Frioux, Simon M. Dittami, Anne Siegel; Using automated reasoning to explore the metabolism of unconventional organisms: a first step to explore host–microbial interactions. Biochem Soc Trans 30 June 2020; 48 (3): 901–913. doi: https://doi.org/10.1042/BST20190667
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