A metabolic modeling platform for the computation of microbial ecosystems in time and space (COMETS)
Genome-scale stoichiometric modeling of metabolism has become a standard systems biology tool for modeling cellular physiology and growth. Extensions of this approach are emerging as a valuable avenue for predicting, understanding and designing microbial communities. Computation of microbial ecosyst...
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Veröffentlicht in: | Nature protocols 2021-11, Vol.16 (11), p.5030-5082 |
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Sprache: | eng |
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Zusammenfassung: | Genome-scale stoichiometric modeling of metabolism has become a standard systems biology tool for modeling cellular physiology and growth. Extensions of this approach are emerging as a valuable avenue for predicting, understanding and designing microbial communities. Computation of microbial ecosystems in time and space (COMETS) extends dynamic flux balance analysis to generate simulations of multiple microbial species in molecularly complex and spatially structured environments. Here we describe how to best use and apply the most recent version of COMETS, which incorporates a more accurate biophysical model of microbial biomass expansion upon growth, evolutionary dynamics and extracellular enzyme activity modules. In addition to a command-line option, COMETS includes user-friendly Python and MATLAB interfaces compatible with the well-established COBRA models and methods, as well as comprehensive documentation and tutorials. This protocol provides a detailed guideline for installing, testing and applying COMETS to different scenarios, generating simulations that take from a few minutes to several days to run, with broad applicability to microbial communities across biomes and scales.
This protocol explains how to use and apply COMETS (computation of microbial ecosystems in time and space), which extends dynamic flux balance analysis to generate simulations of multiple microbial species in molecularly complex and spatially structured environments. |
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ISSN: | 1754-2189 1750-2799 1750-2799 |
DOI: | 10.1038/s41596-021-00593-3 |